DOI QR코드

DOI QR Code

Exact Outage Probability of Two-Way Decode-and-Forward NOMA Scheme with Opportunistic Relay Selection

  • Received : 2017.12.27
  • Accepted : 2019.07.18
  • Published : 2019.12.31

Abstract

In this paper, we propose a two-way relaying scheme using non-orthogonal multiple access (NOMA) technology. In this scheme, two sources transmit packets with each other under the assistance of the decode-and-forward (DF) relays, called as a TWDFNOMA protocol. The cooperative relays exploit successive interference cancellation (SIC) technique to decode sequentially the data packets from received summation signals, and then use the digital network coding (DNC) technique to encrypt received data from two sources. A max-min criterion of end-to-end signal-to-interference-plus-noise ratios (SINRs) is used to select a best relay in the proposed TWDFNOMA protocol. Outage probabilities are analyzed to achieve exact closed-form expressions and then, the system performance of the proposed TWDFNOMA protocol is evaluated by these probabilities. Simulation and analysis results discover that the system performance of the proposed TWDFNOMA protocol is improved when compared with a conventional three-timeslot two-way relaying scheme using DNC (denoted as a TWDNC protocol), a four-timeslot two-way relaying scheme without using DNC (denoted as a TWNDNC protocol) and a two-timeslot two-way relaying scheme with amplify-and-forward operations (denoted as a TWANC protocol). Particularly, the proposed TWDFNOMA protocol achieves best performances at two optimal locations of the best relay whereas the midpoint one is the optimal location of the TWDNC and TWNDNC protocols. Finally, the probability analyses are justified by executing Monte Carlo simulations.

Keywords

1. Introduction

 In recent years, wireless networks have become one of the most common communication methods due to its flexibility in different environments. With the development of smart devices, internet services and advanced multimedia applications such as mobile TV and online game have surged to increase amounts of wireless connections [1-5]. To advance the data rate and the consumed energy in the next generation of wireless communications, non-orthogonal multiple access (NOMA) has been recently received great considerations from the researches in wireless systems as a promising technology to improve spectrum efficiency. The power domain NOMA is one of the popular operation methods where multiple-access users are allocated with different transmit powers although the same time and frequency [1]. Transmit signals of source users are combined by superposition coding, and destination users apply successive interference cancellation (SIC) to subtract co-channel interferences and decode desired data [6]. The authors in [1, 6] showed that the NOMA technology helps to improve the system throughput and to decrease transmission latency in wireless communications.

 In order to deploy NOMA in a range of wireless systems, it is needed to combine with cooperative communications. In recent years, there are a lot of researches about cooperative communications to improve diversity capacity, and hence to increase the coverage and rate of wireless networks [7-10]. In the first timeslot, the sources broadcast their data to the relays while in the second timeslot, the relays assist the sources to transfer the received signals to the destinations by solutions as amplify-and-forward (AF) and decode-and-forward (DF) relaying techniques [11-14]. The opeartion of the DF technique is to decode data from received signals and forward re-coded data to the intended destinations whereas the relays in the AF technique only amplify the received data-carried signals and forward all to the destinations. As a result, the AF technique avoids the difficulty of the decoding operations but experiences from the noise addition caused by the amplification of both desired data-carried signals and noise. A combination of cooperative communications and NOMA is researched in [15-23]. J. B. Kim and I. H. Lee studied achievable average rate analyses of NOMA-applied relaying schemes [15]. S. Lee et al. in [18] investigated the system performance of NOMA-based AF relaying schemes in which the partial relay selection is used to obtain the best cooperative relay.

 Two-way relaying protocols in [24-26] are investigated to improve the spectral utilization efficiency and enlarge the radio coverage of the wireless networks in which the sources interchange data via middle relays. The physical network coding such as digital network coding (DNC) and analog network coding (ANC) is a modern signal combination to decrease the number of transmission timeslots in the two-way cooperation protocols. Therefore, the physical network coding enhances bandwidth exploitation efficiency. In the DNC, the cooperative relays mix received data from the sources in the first and second timeslot by XOR procedure before forwarding coded data back to these sources in the third timeslot [24-25]. Whereas the relays in the ANC only use two timeslots and simply amplify received data-carried signals of the sources in the first timeslot, then these sources decode the desired data from the amplified version at the remaining timeslot [26]. The authors in [27-32] researched the two-way DF relaying networks and analyzed the system performances in terms of bit error rate (BER) [27], symbol error rate (SER) [28], block-error-rate (BLER) [29], maximum achievable sum-rate [30], frame error rate [31] and (sum) outage probability [32]. Opportunistic relay selections have been considered in [31-32] with different operating conditions to achieve maximum end-to-end signal quality. P. N. Son and H. Y. Kong in [33] investigated the performance improvements of two-way DF schemes by a combination of energy harvesting and DNC relays. A few researches for considering the NOMA technology two-way cooperative communications have been discussed to increase spectrum utilization efficiency [34-35]. However, the authors in these researches only use a relaying node to support packet transmission between two sources.

 Encouraged by the above discussed problems, in this paper, we propose a two-way cooperative NOMA scheme with multi DF relays to enhance the spectral utilization efficiency where the best relay owning a maximum end-to-end signal-to-interference-noise ratio (SINR) is selected (called as a TWDFNOMA protocol) to assist two sources and using the SIC and DNC technology solutions to decode and encode received data from these sources.

 The highlight contributions of our paper are given as the following results. Firstly, we propose the TWDFNOMA protocol where the best relay is found by the opportunistic relay selection method considering end-to-end SINRs. Secondly, exact closed-form expressions of (sum) outage probabilities are solved and then are validated by Monte Carlo simulations. Thirdly, the proposed TWDFNOMA protocol is better than a conventional three-timeslot two-way relaying scheme using DNC (called as a TWDNC protocol), a four-timeslot two-way relaying scheme without using DNC (called as a TWNDNC protocol) and a two-timeslot two-way relaying scheme with AF operations (called as a TWANC protocol). In addition, the system performance of the proposed TWDFNOMA protocol is improved when we have more cooperative relays.

 The organization of this paper is showed as follows. Section 2 describes a multi-relay two-way system model and operation principle of the proposed TWDFNOMA protocol; The exact closed-form outage probability expressions of the proposed TWDFNOMA protocol are performed in Section 3; the simulation results of the proposed TWDFNOMA protocol and existing comparison protocols TWDNC, TWNDNC and TWANC are presented in Section 4; and our conclusions are summarized in Section 5.

 

2. System model

 Fig. 1 presents a system model of a two-way relaying NOMA scheme with multi-wireless DF relays denoted as \(\mathrm{R}_{\mathrm{i}}(\mathrm{i}=1,2, \ldots, \mathrm{M})\), called as the TWDFNOMA protocol. In this figure, two sources S1 and S2 transmit their packets x1 and x2, respectively, to each other through the intermediate relays Ri. To achieve optimal packet transmission, a best relay Rb using the NOMA technology is selected to exchange packets between two sources. We have some initial assumptions as 1) sources S1, S2 and relays R are configured with a single antenna; 2) variances of zero-mean Additive White Gaussian Noises (AWGN) are identical, denoted as N0; and 3) all channels are suffered to flat and block Rayleigh fadings and do not change during one transmission timeslot.

E1KOBZ_2019_v13n12_5862_f0001.png 이미지

Fig. 1. System model of a two-way relaying NOMA scheme

 In Fig. 1\(\left(h_{S_{1} R_{i}}, d_{1}\right),\left(h_{S_{2} R_{i}}, d_{2}\right),\left(h_{R, S_{1}}, d_{1}\right) \text { and }\left(h_{R, S_{2}}, d_{2}\right)\) are Rayleigh fading channel coefficients and normalized distances of links \(\mathrm{S}_{1}-\mathrm{R}_{\mathrm{i}}, \mathrm{S}_{2}-\mathrm{R}_{\mathrm{i}}, \mathrm{R}_{\mathrm{i}}-\mathrm{S}_{1} \text { and } \mathrm{R}_{\mathrm{i}}-\mathrm{S}_{2}\) respectively. Hence, the random variables (RVs)  and  have exponential distributions with the same parameter , where \(\beta\)  is the path-loss exponent, and \(k \in\{1,2\}\) . The cumulative distribution function (CDF) and probability density function (pdf) of the RVs \(g_{S_{k} R_{i}} \text { and } g_{R_{i} S_{k}} \)are expressed as \(F_{g_{S, k_{i}}}(x)=F_{g_{R S_{k}}}(x)=1-e^{-\lambda_{k} x}\)  and \(f_{g_{g_{k} R_{i}}}(x)=f_{g_{R, s_{k}}}(x)=\lambda_{k} e^{-\lambda_{k} x}\) , respectively.

 Prior to transmitting packets x1 and x2, the source node S1 establishes a connection phase to all relays and the source node S2 by the media access control (MAC) protocol [2-3].  Firstly, the source nodes S1 and S2 send in turn to request-to-send (RTS) messages to all relays Ri\(i \in\{1,2, \dots M\}\)  . Next, from receiving the RTS messages, each relay node Ri can estimate the \(h_{S_{k} R_{i}}\) , and then broadcasts a helper-ready-to-send (HTS) message which contains the \(h_{S_{k} R_{i}}\)  to the sources S1 and S2. After receiving the RTS and HTS messages, the source node S2 can estimate the  and then sends a clear-to-send (CTS) message which comprises these fading channel coefficients. Relying on the reception of the messages HTS and CTS of all relays Ri and the source S2, the source S1 can estimate \(h_{R, S_{1}}\) and detect the fading channel coefficients  \(h_{S_{k} R_{i}} \text { and } h_{R, S_{2}}\) . Hence, the source node S1 knows all necessary channel state information to select a best relay Rb. Finally, the source node S1 broadcasts its CTS message to the source node S2 and the relays to inform the selected best relay and establish a two-way route from S1 to S2 and vice versa through that the best relay in the transmission phase.

 The operation of the TWDFNOMA protocol occurs in two timeslots as follows. In the first timeslot, the sources S1 and S2 transmit their packets x1 and x2 to the best-selected relay Rb. In the last timeslot, with knowledge about the channel gains, the best relay Rb employs the NOMA technology to receive sequentially x1 and x2, and then mixing these packets x1 and x2 to create a coded packet x as \(x=x_{1} \oplus x_{2}\)  (XOR operation in the DNC) before transmitting the packet x back to the sources S1 and S2.

 In this paper, we compare the proposed TWDFNOMA protocol with three protocols studied in [14, 31-32]. The details are discussed as follows. The first protocol in [14], denoted as TWANC, considered the two-timeslot two-way relaying transmission with the ANC solution. The TWANC protocol also operates in two timeslots as the proposed TWDFNOMA protocol but a best relay chosen by making the most of end-to-end SINRs amplifies all received signals at the same time. The second protocol in [31], called as TWDNC, displayed the two-way relaying scheme with the DNC solution and three-timeslot operation. In the first and second timeslots, the source nodes S1 and S2 broadcast the packets x1 and x2 to all relays, respectively. In the third timeslot, a best relay selected based on the opportunity relay selection method transmits the mixed packet to the sources S1 and S2 by using the XOR method as the operation of the proposed TWDFNOMA protocol. The last comparison protocol in [32], denoted as TWNDNC, combines two one-way relaying transmissions to create the two-way relaying transmission between two source nodes. Therefore, the operation procedure of the TWNDNC protocol is considered into four timeslots. In the first and second timeslot, a packet x1 is sent from the source S1 to the best relay, and from the best relay to the source S2. In the third and fourth timeslot, a packet x2 is transmitted in the opposite direction from the source S2 to the source S1 through another best relay.

 

3. Outage Probability Analysis

 Without loss of generality, we assume that the transmit powers of the sources S1, S2 and the relays Ri are identical (denoted as P), and a node successfully decodes the desired packet if its achievable data rate is larger than or equal a target data rate Rt.

 At the first timeslot, the received signal at the relay Ri from the sources S1 and S2 are presented as

\(y_{R_{i}}=\sqrt{P} h_{S_{1} R_{i}} x_{1}+\sqrt{P} h_{S_{2} R_{i}} x_{2}+n_{R_{i}},\)       (1)

where \(n_{R_{i}}\) refer to the AWGNs at the relays Ri with the identical variance N0,   ( \(E\left\{\left|x_{1}\right|^{2}\right\}=E\left\{\left|x_{2}\right|^{2}\right\}=1(E\{\chi\}\)  is written for the expectation procedure of   X ).

 Based on researches about the NOMA with the SIC in [15-23], in a case \(g_{S_{1} R_{i}}>g_{S_{2} R_{i}}\) , firstly, the relay Rb decodes x1 in (1), then the component \(\sqrt{P} h_{S_{I R_{i}}} x_{1}\) in (1) will be subtracted to decode x2. In the first timeslot, the received SINRs \(\gamma_{S_{1} R_{i} | g_{S_{1} R_{i}}>g_{S_{2} R_{i}}}\) and signal–to–noise ratios (SNRs) \(\gamma_{S_{2} R_{i} | g_{S_{1} R_{i}}>g_{S_{2} R_{i}}}\)  at the relay Ri for decoding the data x1 and x2 are obtained, respectively, as follows

\(\gamma_{S_{1} R_{i} | g_{S_1 R_{i}}>g_{S_{2} R_{i}}}=\frac{P\left|h_{S_{1} R_{i}}\right|^{2}}{P\left|h_{S_{2} R_{i}}\right|^{2}+N_{0}}=\frac{\gamma g_{S_{1} R_{i}}}{\gamma g_{S_{2} R_{i}}+1}\)       (2)

\(\gamma_{S_{2} R_{i}|g_{S_{1} R_{i}}, g_{S_{2} R_{i}}}=\frac{P\left|h_{S_{2} R_{i}}\right|^{2}}{N_{0}}=\gamma g_{S_{2} R_{i}},\)       (3)

where \(\gamma\)  is defined as a transmit SNR, \(\gamma=\frac{P}{N_{0}}\) .

 In the second timeslot, the received signals at the source nodes S1 and S2 are expressed as

\(y_{S_{j}}=\sqrt{P} h_{R_{i} S_{j}} x+n_{S_{j}},\)       (4)

where \(n_{S_{j}} \) refer to the AWGNs at the source nodes Sj with the identical variance N0.

 The received SNRs \(\gamma_{R_{i} S_{1} | g_{S_{1} R_{i}}>g_{S_{2} R_{i}}}\) and \(\gamma_{R_{i} S_{2} | g_{S_{1} R_{i}}>g_{S_{2} R_{i}}}\)  at the source nodes S1 and S2 for decoding the data \(x\left(x=x_{1} \oplus x_{2}\right)\) are solved, respectively, as

\(\gamma_{R_i S_{1} | g_{S_1 R_{i}, Q} g_{S_{1} R_{i}}}=\frac{P\left|h_{R_i S_{1}}\right|^{2}}{N_{0}}=\gamma g_{R_i S_{1}}\)       (5)

\(\gamma_{R_i S_{2} | g_{S_1 R_{i}, Q} g_{S_{2} R_{i}}}=\frac{P\left|h_{R_i S_{2}}\right|^{2}}{N_{0}}=\gamma g_{R_i S_{2}}\)       (6)

 In the proposed TWDFNOMA protocol, a best relay   is decided on a criterion as follows 

\(R_{b}=\arg \underset{{i \in\{1,2, \ldots, M\}}}{\max} \min \left(\gamma_{R_i S_{1} | g_{S_1 R_{i}}>g_{S_{2} R_{i}}}, \gamma_{R_i S_{2} | g_{S_1 R_{i}}>g_{S_{2} R_{i}}}\right)=\arg \underbrace{\max _{i \in\{1,2, \ldots, M\}} \min \underbrace{\left(\gamma g_{R_i S_{1}}, \gamma g_{R_i S_{2}}\right)}_{w_{i}}}_{w_b}.\)       (7)

 

3.1 The outage probability of the source S1 in the case 

 The outage probability of the source S1 in the TWDFNOMA protocol occurs when the source S1 does not decode the data packet x2 from the source S2 in the case \(g_{S_{1} R_{b}}>g_{S_{2} R_{b_{b}}}\) , and is expressed as

\(P_{S_{1} | g_{5} \Omega_{2}>g_{5}, 2 \beta_{5}}=\underbrace{\operatorname{Pr}\left[R_{S_{2} R_{6} | 8_{5}, \underline{2},>8_{5}, p_{6}}<R_{1}\right]}_{\mathbb{P}_{2}}]+\underbrace{\operatorname{Pr}\left[R_{\left.S_{2} R_{6}\left|g_{3}\right| \varepsilon_{2}\right\rangle g_{5} | h_{6}} \geq R_{1}, R_{R_{5} S | \sin _{8}>g_{5}, \mathbb{Z}_{3}}<R_{f}\right]}\)      (8)

where \(R_{S_{2} R_{b} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\) and \(R_{R_{b} S_{1} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\)  are achievable data rates of connections S2-Rb and Rb-S1, and are obtained as

\(R_{S_{2} R_{b} | g_{S_1 R_{b}}>g_{S_{2} R_{b}}}=\frac{1}{2} \log _{2}\left(1+\gamma_{S_{2} R_{b} | g_{S_1R_{b}}>g_{S_{2} R_{b}}}\right)=\frac{1}{2} \log _{2}\left(1+\gamma g_{S_{2} R_{b}}\right).\)       (9)

\(R_{R_{b} S_{1} | g_{S_1R_{b}}>g_{S_{2} R_{b}}}=\frac{1}{2} \log _{2}\left(1+\gamma_{R_{b} S_{1} | g_{S_1R_{b}}>g_{S_{2} R_{b}}}\right)=\frac{1}{2} \log _{2}\left(1+\gamma g_{R_{b} S_{1}}\right).\)       (10)  

 We note that \(\gamma_{S_{2} R_{b} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\)  in (9) and \(\gamma_{R_{b} S_{1} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\) in (10) are obtained from (3) and (5), respectively.

 Base on [32, Eq. (51)], Pr1.1 in (8) is expressed by

\(\operatorname{Pr} 1.1=\int_{0}^{\infty} \frac{\partial \operatorname{Pr}\left[g_{s, R_{b}}<\theta / \gamma, g_{s, R_{b}}>g_{s_{2} R_{b}}, \min \left(\gamma g_{R_{s}, s_{1}}, \gamma g_{R, S_{2}}\right)<x\right]}{\partial x} \times \frac{f_{w_{b}}(x)}{f_{w_{i}}(x)} d x\)       (11)

where \(\theta=2^{2 R_{t}}-1\)

 To solve the Pr1.1 in (11), we use two Lemmas as following.

 Lemma 1: A relation of pdf of wb and pdf of wi  is obtained as

\(\frac{f_{w_{b}}(x)}{f_{w_{i}}(x)}=M\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1}\)       (12)

 Proof: See in Appendix A

Lemma 2: The following expression is valid of  \(\frac{\partial \Omega_{1.1}}{\partial x}\) :

\(\frac{\partial \Omega_{1.1}}{\partial x}=\frac{\lambda_{2}}{\gamma}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right) e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\)       (13)

 Proof: Provided in Appendix B.

 The exact expression of the outage probability Pr1.1 is provided by the Theorem 1 as

 Theorem 1: The probability Pr1.1 is solved by the closed-form expression as

\(\operatorname{Pr} 1.1=M \lambda_{2}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right) \times \frac{1}{\lambda_{1}+\lambda_{2}} \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}.\)       (14)

 Proof: Substituting Lemma 1 and Lemma 2 into (11), Pr1.1 obtained as

\(\begin{aligned}\operatorname{Pr} 1.1 &=\int_{0}^{\infty} \frac{\lambda_{2}}{\gamma}-\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right) e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma} \times M\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x \\&=\frac{M \lambda_{2}}{\gamma} -\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right) \int_{0}^{\infty} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma} \times\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x\\&=\frac{M \lambda_{2}}{\gamma}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right) \times \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \int_{0}^{\infty} e^{-\left[\left(\lambda_{1}+\lambda_{2}\right)(t+1) x / \gamma\right.} d x,\end{aligned}\)       (15)

where 

 By solving (15), the Theorem 1 is proven successfully.

 Similar as Pr1.1 in (11), the Pr1.2 in (8) is obtained as

\(\operatorname{Pr}_{1,2}=\int_{0}^{\infty} \frac{\partial \operatorname{Pr}\left[g_{S, R_{0}} \geq \theta / \gamma, g_{S R_{0}}>g_{S, R_{6}}, \min \left(\gamma g_{R, S_{1}}, \gamma g_{R, S_{2}}\right)<x, g_{R, S_{1}}<\theta / \gamma\right]}{\partial x} \times \frac{f_{m_{0}}(x)}{f_{m}(x)} d x\)       (16)

 In order to solve the probability Pr1.2 in (16), we also base on Lemma 1 and Lemma 3 where Lemma 3 is presented as follows:

 Lemma 3: A derivation of \(\Omega_{1,2}\) versus x is given as

\(\frac{\partial \Omega_{1.2}}{\partial x}=\left\{\begin{array}{l}0& , x \geq \theta\\\lambda_{2}\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta(\gamma)}\right)\left(\frac{\left(\lambda_{1}+\lambda_{2}\right)}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-\frac{\lambda_{2}}{\gamma} e^{-\lambda_{1} \theta / \gamma-\lambda_{2} x / \gamma}\right)&,x<\theta.\end{array}\right.\)       (17)

 Proof: Given in Appendix C

 Theorem 2: A following closed-form expression is valid for the  probability:     

\(\begin{array}{lc}\operatorname{Pr} 1.2=\lambda_{2} M\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right)\\\times\left(\begin{array}{l}\sum_{t-0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}\left(1-e^{-\left[\left(\lambda_{1}+\lambda_{2}\right)(t+1)\right] \theta / \gamma}\right) \\-\lambda_{2} e^{-\lambda_{1} \theta / \gamma} \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}}\left(1-e^{-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}\right] \theta / \gamma}\right)\end{array}\right).\end{array}\)       (18)

 Proof: Substituting Lemma 1 and Lemma 3 into Pr1.2 in (16), the probability Pr1.2 is expressed as

\(\begin{array}{lc}\operatorname{Pr} 1.2=\frac{\lambda_{2}}{\gamma} M\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right)\\\times \int_{0}^{\theta}\left(\left(\lambda_{1}+\lambda_{2}\right) e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-\lambda_{2} e^{-\lambda_{1} \theta / \gamma-\lambda_{2} x / \gamma}\right) \times\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x\\=\frac{\lambda_{2}}{\gamma} M\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right) \times \left(\begin{array}{l}\left(\lambda_{1}+\lambda_{2}\right) \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \int_{0}^{\theta} e^{-\left[\left(\lambda_{1}+\lambda_{2}\right)(t+1)\right] x / \gamma} d x \\-\lambda_{2} e^{-\lambda_{1} \theta / \gamma} \sum_{t=}^{M-1}(-1)^{t} C_{M-1}^{t} \int_{0}^{\theta} e^{-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}\right] x / \gamma} d x\end{array}\right).\end{array}\)       (19)

 By solving (19) with only two single integrals, we prove the Theorem 2 successfully.

 From Theorem 1 in (14) and Theorem 2 in (18), the outage probability \(P_{S_{1} | g_{S, R_{b}}>g_{S_{R} R_{b}}}=\operatorname{Pr} 1.1+\operatorname{Pr} 1.2\)  is solved in the closed-form expression.

 

3.2 The outage probability of the source S2 in the case \(g_{S_{1} R_{b}}>g_{S_{2} R_{b_{b}}}\)

 The outage probability of the source S2 in the TWDFNOMA protocol occurs when the source S2 does not decode the data x1 from the source S1 with the case  \(g_{S_{1} R_{b}}>g_{S_{2} R_{b_{b}}}\), denoted as \(P_{S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\). Similar as the outage probability \(P_{S_{1} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\) of the source node S1 in the case  in the section 3.1, the probability   is achieved as \(g_{S_{1} R_{b}}>g_{S_{2} R_{b_{b}}}\)

\(P_{S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}=\underbrace{\operatorname{Pr}\left[R_{S_{1} R_{b} | g_{\left.S, R_{0}\right\rangle}}>g_{S_{2} R_{b}}<R_{t}\right]}_{P_{5} / 1}+\underbrace{\operatorname{Pr}\left[R_{S_{1} R_{b}, B_{S, R_{b}}>g_{S_{2} R_{b}}} \geq R_{t}, R_{R_{b} S_{2}\left[g_{S, R_{b}>g_{S_{B} R_{b}}}\right.}<R_{t}\right]}_{P_{F}>2}]\)      (20)

where \(R_{S_{1} R_{b} | g_{S, R_{b}}>g_{S_{2} R_{b}}}\) and \(R_{R_{b} S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\)  are achievable data rates of connections S1-Rb and Rb-S2, and are related to the received SINRs \(\gamma_{S_{1} R_{b} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\) and SNR \(\gamma_{R_{b}} S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}\)  as

\(R_{S_1 R_{b} | g_{S_1 R_{b}}, g_{S_{2} R_{b}}}=\frac{1}{2} \log _{2}\left(1+\gamma_{S_{1} R_{b} | g_{S_2 R_{b}}>g_{S_{2} R_{b}}}\right)=\frac{1}{2} \log _{2}\left(1+\frac{\gamma g_{S_{1} R_{b}}}{\gamma g_{S_{2} R_{b}}+1}\right)\)       (21)                                       

\(R_{R_{b} S_{2} | g_{S, R_{b}}>g_{S_{2} R_{b}}}=\frac{1}{2} \log _{2}\left(1+\gamma_{R_{b} S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\right)=\frac{1}{2} \log _{2}\left(1+\gamma g_{R_{b} S _{2}}\right)\)       (22)

 As result in [32, Eq. (51)], Pr2.1 is shown as

\(\operatorname{Pr} 2.1=\int_{0}^{\infty} \frac{\partial \operatorname{Pr}\left[g_{s, R_{b}}>g_{S_{2} R_{b}}, g_{S_{1} R_{b}}<\theta g_{S_{2} R_{b}}+\theta / \gamma, \min \left(\gamma g_{R_{b} S_{1}}, \gamma g_{R_{b} S_{2}}\right)<x\right]}{\partial x} \times \frac{f_{w_{b}}(x)}{f_{w_{i}}(x)} d x\)    (23)

 Lemma 4: A derivation of  versus x is solved as

\(\frac{\partial \Omega_{2.1}}{\partial x}=\left\{\begin{array}{lc}\left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{2} e^{-\lambda_{1} \theta / \gamma}}{\lambda_{2}+\lambda_{1} \theta}\right) \times\left(\frac{\lambda_{1}+\lambda_{2}}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right), &1-\theta \leq 0\\\left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)-\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta}\left(e^{-\lambda_{1} \theta / \gamma}-e^{-\lambda_{1} \theta / \gamma-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)\right),\\\times\left(\frac{\lambda_{1}+\lambda_{2}}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right),& 1-\theta>0\end{array}\right.\)       (24)

where \(a=\frac{\theta}{(1-\theta) \gamma}\)  .

 Proof: as given in Appendix D

 Theorem 3: The probability Pr2.1 in (23) is obtained by the closed-form expression in two cases as

 -When \(\theta \geq 1\) :

\(\operatorname{Pr} 2.1=\left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{2} e^{-\lambda_{1} \theta / \gamma}}{\lambda_{2}+\lambda_{1} \theta}\right) \times M \sum_{t=0}^{M-1} \frac{(-1)^{t}}{(t+1)} C_{M-1}^{t}\)       (25a)

 -When \( \theta<1\)

\(\operatorname{Pr} 2.1=\left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)-\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta}\right.\left.\left(e^{-\lambda_{1} \theta / \gamma}-e^{-\lambda_{1} \theta / \gamma-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)\right) \times M \sum_{t=0}^{M-1} \frac{(-1)^{t}}{(t+1)} C_{M-1}^{t}\)       (25b) 

 Proof: Substituting Lemma 1 in (12) and Lemma 4 in (24) into (23), Theorem 3 is achieved as

\(\begin{array}{lc} \operatorname{Pr} 2.1=\left\{ \begin{array}{lc} \int_{0}^{\infty}\left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{2} e^{-\lambda_{1} \theta / \gamma}}{\lambda_{2}+\lambda_{1} \theta}\right) \times\times\left(\frac{\lambda_{1}+\lambda_{2}}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right) \times M\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x,&1-\theta \leq 0\\ \int_{0}^{\infty}\left(\begin{array}{l} \left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)-\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta}\left(e^{-\lambda_{1} \theta / \gamma}-e^{-\lambda_{1} \theta / \gamma-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)\right) \\ \times\left(\frac{\lambda_{1}+\lambda_{2}}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right) \times M\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x \end{array}\right),&1-\theta>0 \end{array} \right.\\ =\left\{ \begin{array}{lc} \left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{2} e^{-\lambda_{1} \theta / \gamma}}{\lambda_{2}+\lambda_{1} \theta}\right) \times \frac{\lambda_{1}+\lambda_{2}}{\gamma} \times M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \int_{0}^{\infty} e^{-\left(\lambda_{1}+\lambda_{2}\right)(t+1) x / \gamma} d x,&1-\theta \leq 0\\ \left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)-\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta}\left(e^{-\lambda_{1} \theta / \gamma}-e^{-\lambda_{1} \theta / \gamma-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)\right)\\ \times M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \times \frac{\lambda_{1}+\lambda_{2}}{\gamma} \int_{0}^{\infty} e^{-\left(\lambda_{1}+\lambda_{2}\right)(t+1) x / \gamma} d x,&1-\theta>0 \end{array} \right. \end{array}\)       (26)

 By solving (26), the Theorem 3 is obtained successfully.

 Similarly, Pr2.2 is provided as following

\(\operatorname{Pr} 2.2=\int_{0}^{\infty} \frac{\partial \operatorname{Pr}\left[\begin{array}{c} g_{S, R_{b}}>g_{S, R_{b}}, g_{S, R_{b}} \\ \min \left(\gamma g_{R_{b}, S_{1}}, \gamma g_{R_{b} S_{2}}\right)<x, g_{R_{b} S_{2}}<\theta / \gamma \end{array}\right]}{\partial x} \times \frac{f_{w_{b}}(x)}{f_{w_{i}}(x)} d x\)     (27)

 Lemma 5: A derivation of \(\Omega_{2.2}\) versus x is shown in two cases as

 -When \( x \geq \theta\)

\(\frac{\partial \Omega_{22}}{\partial x}=0.\)       (28)

 -When \(x \leq \theta\)

\(\frac{\partial \Omega_{2,2}}{\partial x}=\left\{ \begin{array}{lc} \frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma} \times\left(\frac{\left(\lambda_{1}+\lambda_{2}\right)}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-\frac{\lambda_{1}}{\gamma} e^{-\lambda_{2} \theta / \gamma} e^{-\lambda_{1} x / \gamma}\right) ,& 1-\theta \leq 0\\ \left(\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma}\left(1-e^{-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)+\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)\\ \times\left(\frac{\left(\lambda_{1}+\lambda_{2}\right)}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-\frac{\lambda_{2}}{\gamma} e^{-\lambda_{2} \theta / \gamma} e^{-\lambda_{1}x / \gamma}\right),& 1-\theta>0 \end{array} \right.\)       (29)

 Proof: Given in Appendix E

 Theorem 4: The probability Pr2.2 is obtained by the closed-form expression in two cases as

 -When \(\theta \geq 1\)  :

\(\operatorname{Pr} 2.2=\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma} \times \left(\begin{array}{l} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}\left(1-e^{-\left(\lambda_{1}+\lambda_2\right)(t+1) \theta / \gamma}\right) \\ -\lambda_{1} e^{-\lambda_{2} \theta / \gamma} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{1}}\left(1-e^{-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}\right][\theta / \gamma}\right) \end{array}\right).\)       (30a)

 -When \( \theta<1\)  :

\(\begin{array}{lc} \operatorname{Pr} 2.2=\left(\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma}\left(1-e^{-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)+\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)\\ \times\left(\begin{array}{l} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right)(t+1) \theta / \gamma}\right) \\ -\lambda_{1} e^{-\lambda_{2} \theta / \gamma} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{1}}\left(1-e^{\left.-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{1}\right]\right] \theta / \gamma}\right) \end{array}\right). \end{array} \)       (30b)

 Proof: Substituting Lemma1 in (12) and Lemma 5 in (29) into (27), Pr2.2 is addressed in two cases  \(\theta \geq 1 \text { and } \theta<1\) as

 -For the case \(\theta \geq 1\) :

\(\begin{array}{lc} \operatorname{Pr} 2.2=\int_{0}^{\theta}\left(\begin{array}{lc} \frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma} \times\left(\frac{\left(\lambda_{1}+\lambda_{2}\right)}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-\frac{\lambda_{1}}{\gamma} e^{-\lambda_{2} \theta / \gamma} e^{-\lambda_{1} x / \gamma}\right) \\ \times M\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} \end{array}\right) d x\\ =\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma} \times\left(\begin{array}{c} M \frac{\left(\lambda_{1}+\lambda_{2}\right)}{\gamma} \int_{0}^{\theta} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x \\ -M \frac{\lambda_{1}}{\gamma} e^{-\lambda_{2} \theta / \gamma} \int_{0}^{\theta} e^{-\lambda_{1} x / \gamma}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x \end{array}\right). \end{array} \)       (31a)

 By calculating (31a), Pr2.2 in (30a) is solved successfully.

 -For the case \( \theta<1\) :

\(\begin{array}{lc} \operatorname{Pr} 2.2=\int_{0}^{\theta}\left(\left(\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma}\left(1-e^{-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)+\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)\right.\\ \left.\times\left(\frac{\left(\lambda_{1}+\lambda_{2}\right)}{\gamma} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-\frac{\lambda_{1}}{\gamma} e^{-\lambda_{2} \theta / \gamma} e^{-\lambda_{1} x / \gamma}\right) \times M\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1}\right) d x\\ =\left(\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma}\left(1-e^{-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)+\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)\\ \times\left(\begin{array}{c} M \frac{\left(\lambda_{1}+\lambda_{2}\right)}{\gamma} \int_{0}^{\theta} e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x \\ -M \frac{\lambda_{1}}{\gamma} e^{-\lambda_{2} \theta / \gamma} \int_{0}^{\theta} e^{-\lambda_{1} x / \gamma}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right)^{M-1} d x \end{array}\right). \end{array}\)       (31b)

 Through solving (31b), Pr2.2 in (30b) is proven successfully.

 Hence, from Theorem 3 and Theorem 4, the outage probability  is calculated in the closed-form expression.

 

3.3 The outage probabilities of the sources S1 and S2 in the remaining case \(g_{S_{2} R_{b}}>g_{S_{1} R_{b_{b}}}\) .

 Because the system model of the proposed TWDFNOMA protocol is symmetric, thus the outage probabilities of the sources S1 and S2 in the remaining case \(\mathcal{G}_{S_{2} R_{b}}\) > \(\mathcal{G}_{S_{1} R_{b}}\), denoted as \(P_{S_{1} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}\) and \(P_{S_{2} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}\) , are inferred respectively from the outage probabilities \(P_{S_{1} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\) and \(P_{S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\) of the sources S1 and S2 in the analyzed case   \(\mathcal{G}_{S_{2} R_{b}}\) > \(\mathcal{G}_{S_{1} R_{b}}\)  by changing parameters as \(\lambda_{1} \leftrightarrow \lambda_{2}\) .

 From the expressions of the \(P_{S_{1} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}\) by (14) and (18), the outage probability \(P_{S_{1} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}\) of the source node S1 in the remaining case   \(\mathcal{G}_{S_{2} R_{b}}\) > \(\mathcal{G}_{S_{1} R_{b}}\)  is obtained in the closed-form expressions with two cases as

 -When \(\theta \geq 1\)

\(\begin{array}{lc} P_{S_{1} | g_{S_2 R_{6}}>g_{S_1 R_b}}=\left(\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{1} e^{-\lambda_{2} \theta / \gamma}}{\lambda_{1}+\lambda_{2} \theta}\right) \times M \sum_{t=0}^{M-1} \frac{(-1)^{t}}{(t+1)} C_{M-1}^{t}\\ +\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2} \theta} e^{-\lambda_{2} \theta / \gamma} \times\left(\begin{array}{l} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right)(t+1) \theta / \gamma}\right) \\ -\lambda_{2} e^{-\lambda_{1} \theta / \gamma} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}} \\ \times\left(1-e^{\left.-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}\right)\right] \theta / \gamma}\right) \end{array}\right). \end{array}\)       (32a)

 -When \( \theta<1\)  :

\(P_{S_{1} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}=\ \left( \begin{array}{lc} \left(\begin{array}{c} \frac{\lambda_{1}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right) \\ -\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2} \theta}\left(e^{-\lambda_{2} \theta / \gamma}-e^{-\lambda_{2} \theta / \gamma-\left(\lambda_{1}+\lambda_{2} \theta\right) a}\right) \end{array}\right)\times M \sum_{t=0}^{M-1} \frac{(-1)^{t}}{(t+1)} C_{M-1}^{t}\\ +\left(\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2} \theta} e^{-\lambda_{2} \theta / \gamma}\right.\left.\left(1-e^{-\left(\lambda_{1}+\lambda_{2} \theta\right) a}\right)+\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)\\ \times\left(\begin{array}{l} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right)(t+1) \theta / \gamma}\right) \\ -\lambda_{2} e^{-\lambda_{1} \theta / \gamma} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}}\left(1-e^{\left.-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}\right)\right] \theta / \gamma}\right) \end{array}\right) \end{array} \right).\)       (32b)

 In the same way, the outage probability \(P_{S_{1} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}\)  is quickly solved from \(P_{S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}\)  and is obtained in two cases as

 -When \(\theta \geq 1\) :

\(\begin{array}{lc} P_{S_{2} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}=\left(\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{1} e^{-\lambda_{2} \theta / \gamma}}{\lambda_{1}+\lambda_{2} \theta}\right) \times M \sum_{t=0}^{M-1} \frac{(-1)^{t}}{(t+1)} C_{M-1}^{t}\\ +\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2} \theta} e^{-\lambda_{2} \theta / \gamma} \times\left(\begin{array}{l} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right)(t+1) \theta / \gamma}\right) \\ -\lambda_{2} e^{-\lambda_{1} \theta / \gamma} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}}\left(1-e^{\left.-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}\right)\right] \theta / \gamma}\right) \end{array}\right). \end{array} \)       (33a)

 -When \( \theta<1\)  :

\(P_{S_{2} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}= \left( \begin{array}{lc} M \sum_{t=0}^{M-1} \frac{(-1)^{t}}{(t+1)} C_{M-1}^{t} \times\left(\begin{array}{l} \frac{\lambda_{1}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right) \\ -\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2} \theta}\left(e^{-\lambda_{2} \theta / \gamma}-e^{-\lambda_{2} \theta / \gamma-\left(\lambda_{1}+\lambda_{2} \theta\right) a}\right) \end{array}\right)\\ +\left(\frac{\lambda_{1}}{\lambda_{1}+\lambda_{2} \theta} e^{-\lambda_{2} \theta / \gamma}\left(1-e^{-\left(\lambda_{1}+\lambda_{2} \theta\right) a}\right)+\frac{\lambda_{1}}{\lambda_{2}+\lambda_{1}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)\\ \times\left(\begin{array}{l} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{(t+1)}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right)(t+1) \theta / \gamma}\right) \\ -\lambda_{2} e^{-\lambda_{1} \theta / \gamma} M \sum_{t=0}^{M-1}(-1)^{t} C_{M-1}^{t} \frac{1}{\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}}\left(1-e^{\left.-\left[\left(\lambda_{1}+\lambda_{2}\right) t+\lambda_{2}\right)\right] \theta / \gamma}\right) \end{array}\right) \end{array} \right)\)       (33b)

 At this time, we have \(P_{S_{1} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}, P_{S_{1} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}, P_{S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}} \text { and } P_{S_{2} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}\)  and  on the hand and in order to analyze two-way relaying transmission between the sources S1 and S2, the sum-outage probability of the proposed TWDFNOMA protocol is inferred as following

\(P_{T W D F N O M A}^{s u m}=P_{S_{1}}+P_{S_{2}}=P_{S_{1} | g_{S_{1}, R_{b}}>g_{S_1 R_{b}} }+P_{S_{1} | g_{S_{2} R_{b}}>g_{S_{1} R_{b}}}+P_{S_{2} | g_{S_{1} R_{b}}>g_{S_{2} R_{b}}}+P_{S_{2} | g_{S_{2} R_{b}}>g_{S_1 R_{b}}}.\)       (34)

 

4. Simulation Results

 In this section, we present analysis and simulation results of the outage performances of the proposed TWDFNOMA protocol. These results are also used to compare with the TWDNC protocol [31] , the TWNDNC protocol [32], and the TWANC protocol [14] . The simulation model is considered in the two-dimensional plane with the coordinates as S1 (0, 0), S2 (1, 0) and Ri (x, y), where 0 < x < 1 and  . Therefore, \(d_{1}=\sqrt{x^{2}+y^{2}}\) and \(d_{2}=\sqrt{(1-x)^{2}+y^{2}}\) . For fair comparisons, the total energy of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC are identical, denoted as E. Based on the operation principle of the protocols TWDFNOMA, TWANC, TWDNC and TWNDNC which are described in the section 2, the transmit powers are addressed as \(P_{T W D F N O M A}=P_{T W A N C}=P_{T W D N C}=E / 3 T, P_{\text {TWNDNC}}=E / 4 T\)where T is the period of a timeslot.  The establishment of transmit powers for fair comparisons between these protocols has been considered in [4-5]. Furthermore, the path-loss parameter  is set to 3 during simulation operations.

 Fig. 2 shows the sum-outage probability of the TWDFNOMA protocol versus E/No (dB) when the asymmetric network is considered with x = 0.2, y=0, and (bit/s/Hz). In Fig. 2, the sum-outage probability of the proposed TWDFNOMA protocol decreases when the E/No increase. This can be explained by the fact that applying the NOMA technology and the opportunistic relay selection as in formulas (2), (3) and (7), the received SINRs and SNRs at the best relay Rb, the source nodes S1 and S2 achieve higher values at large E/No regions as formulas (3), (5) and (6). Hence, the decoding capacities at the nodes S1, S2 and Rb become better at the larger E/No regions. Furthermore, the proposed TWDFNOMA protocol with Rt = 0.5 (bit/s/Hz) is better than with Rt = 1 (bit/s/Hz). Finally, the theoretical analyses are valid by the suitability of the theoretical values and the simulation values.

E1KOBZ_2019_v13n12_5862_f0002.png 이미지

Fig. 2. The sum-outage probability of the proposed TWDFNOMA protocol versus E/No (dB) when x=0.2, y=0, Rt is considered at 0.5 and 1 (bit/s/Hz)

 Fig. 3 presents the sum-outage probabilities of the protocols TWDFNOMA, TWANC,  TWDNC and TWNDNC versus E/No (dB) when M=3, Rt = 1 (bit/s/Hz) and the asymmetric network is also considered with x = 0.2, y=0. From Fig. 3, the sum-outage probabilities decline in increasing E/No regions for the reason that of high transmit powers. Furthermore, the proposed TWDFNOMA protocol does better than the conventional protocols TWDNC, TWNDNC and TWANC because the proposed TWDFNOMA protocol combines technologies NOMA and DNC to cancel interferences from the stronger signals by the SIC solution and increase the bandwidth utilization efficiency by the XOR operation. We note that all protocols have the same energy for transmitting two signals.

E1KOBZ_2019_v13n12_5862_f0003.png 이미지

Fig. 3. The sum-outage probabilities of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC as a function of E/No (dB) when M=3, x=0.2, y=0, Rt= 1 (bit/s/Hz).

 Fig. 4 presents the sum-outage probabilities of the protocols TWDFNOMA, TWANC, TWDNC and TWNDNC as a function of the locations x of the relays on x-axis when y=0.1, M=3, E/No = 7(dB), Rt = 1 (bit/s/Hz), and x is set to move between 0.1 and 0.9. As shown in Fig. 4, the TWDFNOMA protocol also has the smaller sum-outage probabilities when comparing with the protocols TWDNC, TWNDNC and TWANC. Particularly, the proposed TWDFNOMA protocol achieves best performances at two optimal locations x=0.3 and x=0.7 whereas the midpoint x=0.5 is the optimal location of the TWDNC and TWNDNC protocols. Hence, the NOMA technology is an effective selection for the asymmetric two-way relaying networks, i.e. the optimal locations x=0.3 and x=0.7 of the cooperative relays.  

E1KOBZ_2019_v13n12_5862_f0004.png 이미지

Fig. 4. The sum-outage probabilities of all protocols as a function of the locations x of the relays on x-axis, when M=3, y=0.1,  E/No = 7 (dB),  Rt = 1 (bit/s/Hz).

 Fig. 5 presents the sum-outage probabilities of the protocols TWDFNOMA, TWANC, TWDNC and TWNDNC as a function of the locations y of the relays on y-axis when M=3, E/No = 7(dB), Rt = 1 (bit/s/Hz), x is fixed at x=0.2 (the asymmetric two-way relaying networks), and y is set to move between 0.1 and 0.9. In Fig. 5, the proposed TWDFNOMA protocol achieves a better sum-outage performance than the existing protocols TWDNC, TWNDNC and TWANC. It can be seen that when the relays move further on the direction y-axis, the system performance of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC declines, and then goes towards the worst ranges (about  ) because of decreasing cooperative operations. All protocols TWDFNOMA, TWANC, TWDNC and TWNDNC perform better when the best relay is set at near locations to the sources S1 and S2 (y=0.1) whereas x is fixed to 0.2.

E1KOBZ_2019_v13n12_5862_f0005.png 이미지

Fig. 5. The sum-outage probabilities of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC versus the locations y of the relays on y-axis when x = 0.2, M=3, E/No = 7 (dB),  Rt = 1 (bit/s/Hz).

 Fig. 6 and Fig 7 show analysis and simulation results of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC in which transmit powers of the nodes S1, S2 and relays Ri,  are set to identical values, denoted as  . The proposed TWDFNOMA protocol and the TWANG protocol use the least number of timeslots with only two timeslots whereas the protocols TWDNC and TWNDNC operate with three and four timeslots, respectively. The evaluations with identical transmit powers and different timeslots have been considered in [24], [32]. Fig. 6 presents the sum-outage probabilities of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC as versus P/No (dB) when x = 0.2, y=0, M=3 and Rt=0.5(bit/s/Hz). As observed from Fig. 6, the sum-outage performances of these protocols decrease when P/No increase and we can also see that the proposed TWDFNOMA protocol also achieves the smallest sum-outage probabilities. These results prove that the proposed TWDFNOMA protocol gains better performances whereas using the least number of timeslots (two timeslots). It is implied that the proposed TWDFNOMA protocol is essential to enhance the performance of the cooperative two-way scheme. Simulations results verify again the tight accuracy of the derived theoretical analyses.

E1KOBZ_2019_v13n12_5862_f0006.png 이미지

Fig. 6. The sum-outage probabilities of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC versus P/No (dB) when x = 0.2, y=0, M=3, Rt=0.5(bit/s/Hz).

 Fig. 7 shows the sum-outage probabilities of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC  as a function of Rt when x = 0.2, y=0, M=3 and  P/No is fixed at 10 (dB). From Fig. 7, the rates Rt increase, the system performance of all considering protocols decreases. In addition, the proposed TWDFNOMA protocol achieves better performances when comparing with the protocols TWDNC, TWNDNC and TWANC in the condition of identical transmit powers. In this case, we note that the proposed TWDFNOMA protocol only operates in the two timeslots.

E1KOBZ_2019_v13n12_5862_f0007.png 이미지

Fig. 7. The sum-outage probabilities of the protocols TWDFNOMA, TWDNC, TWNDNC and TWANC versus Rt when x = 0.2, y=0, M=3, P/No = 10 (dB).

 

5. Conclusion

 In this paper, we proposed the two-way relaying scheme with multiple wireless relays in which the best relay is obtained by the opportunistic relay selection method, called as the TWDFNOMA protocol. The best relay applied the SIC to decode the sequence of the received signals and used the DNC solution to encrypt received data from two sources. We analyzed and evaluated the outage performances by the exact closed-form expressions. Simulation and analysis results presented distributions as follows. The proposed TWDFNOMA protocol achieves better performances when compared with the conventional three-timeslot two-way relaying scheme using DNC (denoted as the TWDNC protocol), the four-timeslot two-way relaying scheme without using DNC (denoted as the  TWNDNC protocol) and the two-timeslot two-way relaying scheme with AF operations (denoted as the TWANC protocol). The TWDFNOMA protocol reaches the smallest sum-outage probabilities when the cooperative relays form the asymmetric two-way relaying network and are moved to two optimal locations between two source nodes. Furthermore, the proposed TWDFNOMA protocol is improved as the increasing number of relaying nodes. Finally, the outage probability analyses in terms of the closed-form expressions are justified by executing Monte Carlo simulations.

Appendix

Appendix A: Verification of Lemma 1

 From denotation of  in (7), the CDF of  is obtained as

\(\begin{aligned} F_{w_{i}}(x) &=\operatorname{Pr}\left(w_{i}<x\right)=\operatorname{Pr}\left[\min \left(\gamma g_{R, S_{1}}, \gamma g_{R, S_{2}}<x\right)\right] \\ &=1-\operatorname{Pr}\left[\min \left(\gamma g_{R, S_{1}}, \gamma g_{R, S_{2}} \geq x\right)\right]=1-\operatorname{Pr}\left(\gamma g_{R, S_{1}} \geq x\right) \times \operatorname{Pr}\left(\gamma g_{R, S_{2}} \geq x\right) \\ &=1-\left(1-F_{g_{R_{9}}}(x / \gamma)\right) \times\left(1-F_{g_{R, 5}}(x / \gamma)\right)=1-e^{-\left(\lambda_{1}+\hat{z}_{2}\right) x / \gamma} \end{aligned}\)    (A.1)

 The CDF of wb  is given from (7) as

\(f_{w_{b}}(x)=\frac{\partial F_{w_{s}}(x)}{\partial x}=M \times\left[1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right]^{M-1} \times f_{w_{i}}(x)\)       (A.2)

 The pdf of  is inferred as

\(f_{w_{b}}(x)=\frac{\partial F_{w_{b}}(x)}{\partial x}=M \times\left[1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right]^{M-1} \times f_{w_{i}}(x).\)       (A.3)

 Hence, proof of Lemma 1 is solved completely.

 

Appendix B: Proof of Lemma 2

 To solve Lemma 2, we calculate \(\Omega_{1.1}\) in (11) as follows:

\(\begin{aligned} \Omega_{1.1}=& \operatorname{Pr}\left[g_{S_{2} R_{b}}<\theta / \gamma, g_{S, R_{b}}>g_{S_{2} R_{b}}\right] \times \operatorname{Pr}\left[\min \left(\gamma g_{R_{S} S_{1}}, \gamma g_{R_{S} S_{2}}\right)<x\right] \\ =& \int_{0}^{\theta l y} f_{g_{S, R_{b}}}(y)\left(1-F_{g_{S, R_{b}}}(y)\right) d y \times\left\{\operatorname{Pr}\left[g_{R_{b}, S_{1}}<x / \gamma, g_{R_{b}, S_{1}}<g_{R_{f}, S_{2}}\right]\right.\\ &\left.+\operatorname{Pr}\left[g_{R_{b}, S_{2}}<x / \gamma, g_{R_{b}, S_{2}}<g_{R_{b}, S_{1}}\right]\right\} \end{aligned}\)    (B.1)

 Applying the pdf of the RVs \(g_{S_{2} R_{b}}, \quad g_{R_{b} S_{1}}\)  and \(g_{R_{b} S_{2}}\) and the CDF of the RVs  and \(\mathcal{G}_{R_{b} S_{\mathrm{l}}}\) into (B.1), \(\Omega_{1.1}\)  is addressed as

\(\begin{aligned} \Omega_{1.1} &=\int_{0}^{\theta / \gamma} \lambda_{2} e^{-\lambda_{2} y} e^{-\lambda_{1} y} d y \times\left(\int_{0}^{x / \gamma} \lambda_{1} e^{-\lambda_{1} y} e^{-\lambda_{2} y} d y+\int_{0}^{x / \gamma}\lambda_{2} e^{-\lambda_{2} y} e^{-\lambda_{1} y} d y\right)\\ &=\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right) \times\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right). \end{aligned}\)       (B.2)

 Performing a derivation of  in (B.2) versus x, the proof of Lemma 2 is completed.

 

Appendix C: Proof of Lemma 3

 From the definition of  \(\Omega_{1,2}\) in (16),  \(\Omega_{1,2}\) is calculated as follows:

\(\begin{aligned} &\Omega_{1,2}=\operatorname{Pr}\left[g_{S_{2} R_{b}} \geq \theta / \gamma, g_{S_{1} R_{b}}>g_{S_{2} R_{b}}\right] \times \operatorname{Pr}\left[\min \left(\gamma g_{R, S_{1}}, \gamma g_{R_{b}, S_{2}}\right)<x, g_{R_{f}, s_{1}}<\theta / \gamma\right]\\ &=\left(\operatorname{Pr}\left[g_{R, S_{1}}<\theta / \gamma\right]-\operatorname{Pr}\left[\min \left(\gamma g_{R, S_{1}}, \gamma g_{R, S_{2}}\right)>x, g_{R, S_{1}}<\theta / \gamma\right]\right) \times \int_{\partial_{1} \gamma}^{\infty} f_{g_{5,4}}(y)\left(1-F_{g_{5,8}}(y)\right) d y\\ &=\underbrace{\operatorname{Pr}\left[g_{R, S_{1}}<\theta / \gamma\right] \times \int_{\theta | \gamma}^{\infty} f_{g_{5,2,6}}(y)\left(1-F_{g_{5,63}}(y)\right) d y}_{\Omega_{121}}\\ &\underbrace{-\operatorname{Pr}\left[x / \gamma<g_{R, S_{1}}<\theta / \gamma\right] \times \operatorname{Pr}\left[g_{R, S_{2}}>x / \gamma\right] \times \int_{\theta_{1} \gamma}^{\infty} f_{8,5,6}(y)\left(1-F_{8_{12}}(y)\right) d y}_{\Omega_{122}} \end{aligned}\)   (C.1)

 Firstly, we calculate the component \(\Omega_{1,2.1}\) in (C.1) as

\(\Omega_{1.2 .1}=\left(1-e^{-\lambda_{1} \theta / \gamma}\right) x\times \int_{\theta / \gamma}^{\infty} \lambda_{2} e^{-\lambda_{2} y} e^{-\lambda_{1} y} d y=\lambda_{2}\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right)\left(1-e^{-\lambda_{1} \theta / \gamma}\right).\)       (C.2)

 Next, the component \(\Omega_{1,2.2}\) in (C.1) is calculated as

\(\Omega_{1,22}=-\underbrace{\operatorname{Pr}\left[x / \gamma<g_{R, s_{1}}<\theta / \gamma\right]}_{\Omega_{1,22}} \times \operatorname{Pr}\left[g_{R_{0}, s_{2}}>x / \gamma\right] \times \int_{\theta | \gamma}^{\infty} f_{g_{5,3,3}}(y)\left(1-F_{8_{5,8}}(y)\right) d y\)   (C.3)

 To solve \(\Omega_{1,2.2}\) in (C.3), \(\Omega_{1,2 \cdot 2 \cdot 1}\)  need to calculate and the result is obtained as follows:

\(\Omega_{1,22,1}=\left\{\begin{array}{l} 0 \\ \operatorname{Pr}\left[x / \gamma<g_{R, S_{1}}<\theta / \gamma\right], x<\theta \end{array}=\left\{\begin{array}{l} 0 \\ F_{g_{n s, 1}}(\theta / \gamma)-F_{g_{n s}, 1}(x / \gamma), x<\theta \end{array}, x \geq \theta\right.\right.\)     (C.4)

 Substituting (C.4) into (C.3),  is obtained as

\(\Omega_{1.2 .2}=\left\{ \begin{array}{lc} 0,&x\geq \theta\\ -\left(F_{g_{R_{b}{ S_{1}}}}(\theta / \gamma)-F_{g_{R_{b}{ S_{1}}}}(x / \gamma)\right) \times \operatorname{Pr}\left[g_{R_{b} S_{2}}>x / \gamma\right]\\ \times \int_{\theta / \gamma}^{\infty} f_{g_{S_{2} R_{b}}}(y)\left(1-F_{g_{S_1 R_{b}}}(y)\right) d y,&x<\theta. \end{array} \right.\)       (C.5)

 Substituting the pdf of the RV ,and the CDF of the RV  \(g_{S_{1} R_{b}}\) into (C.5),  \(\Omega_{1.2 .2}\) is addressed in two cases as

 -When  : \(x \geq \theta: \quad \Omega_{1,2,2}=0\)

 -When  : \(x<\theta:\)

\(\begin{aligned} &\Omega_{1,2.2}=-\left(e^{-\lambda_{1} x / \gamma}-e^{-\lambda_{1} \theta / \gamma}\right) \times\left(e^{-\lambda_{2} x / \gamma}\right)\times \int_{\theta / \gamma}^{\infty} \lambda_{2} e^{-\lambda_{2} y} e^{-\lambda_{1} y} d y\\ &=-\lambda_{2}\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right)\left(e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-e^{-\lambda_{1} \theta / \gamma-\lambda_{2} x / \gamma}\right). \end{aligned}\)       (C.6)               

 Substituting (C.2) and (C.6) into (C.1), \(\Omega_{1,2}\)  is obtained as

\(\Omega_{1,2}=\Omega_{1.2 .1}+\Omega_{1.2 .2}=\left\{ \begin{array}{lc} \lambda_{2}\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right)\left(1-e^{-\lambda_{1} \theta / \gamma}\right),&x \geq \theta\\ \lambda_{2}\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right)\left(1-e^{-\lambda_{1} \theta / \gamma}\right),&x<\theta \\ -\lambda_{2}\left(\frac{1}{\lambda_{1}+\lambda_{2}} e^{-\left(\lambda_{1}+\lambda_{2}\right) \theta / \gamma}\right)\left(e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}-e^{-\lambda_{1} \theta / \gamma-\lambda_{2} x / \gamma}\right). \end{array} \right.\)       (C.7)

 Performing a derivation of  in (C.7) versus x, Lemma 3 is proven completely.

 

Appendix D: Proof of Lemma 4

 To resolve Lemma 4, we calculate in \(\Omega_{2.1}\) (25a) as      

\(\Omega_{2.1}=\overbrace{\operatorname{Pr}\left[g_{S_{2} R_{b}}<g_{S, R_{b}}<\theta g_{S_{2} R_{b}}+\theta / \gamma\right]} \times \overbrace{\operatorname{Pr}\left[\min \left(\gamma g_{R_{b} S_{1}}, \gamma g_{R_{b} S_{2}}\right)<x\right]}\)     (D.1)

 Firstly, \(\phi_{1}\) in (D.1) is calculated as follows

\(\begin{aligned} \phi_{1} &=\operatorname{Pr}\left[g_{S_{2} R_{b}}<g_{S_{1} R_{b}}<\theta g_{S_{2} R_{b}}+\theta / \gamma\right] \\ &=\left\{\begin{array}{ll} ^{\infty} & 1-\theta \leq 0 \\ \int_{0}^{a} f_{g_{5,2 b}}(y)\left(-F_{g_{5, R_{b}}}(x)+F_{g_{5, R_{b}}}(\theta x+\theta / \gamma)\right) d x & & (y)\left(-F_{g_{5, R_{b}}}(x)+F_{g_{5, R_{b}}}(\theta x+\theta / \gamma)\right) d x, \quad 1-\theta>0 \end{array}\right. \end{aligned}\)   (D.2)

 where \(a=\frac{\theta}{(1-\theta) \gamma}\) .

 Applying the pdf of the RV  and the CDF of the RV \(\mathcal{G}_{S_{1} R_{b}}\)  into (D.2), \(\phi_{1}\)  is resolved as

\(\phi_{1}=\left\{\begin{array}{l} \int_{0}^{\infty}\lambda_{2} e^{-\lambda_{2} x}\left(e^{-\lambda_{1} x}-e^{-\lambda_{1}(\theta x+\theta / \gamma)}\right) d x=\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{2} e^{-\lambda_{1}\theta /{\gamma}}}{\lambda_{2}+\lambda_{1} \theta} ,& 1-\theta \leq 0 \\ \int_{0}^{a}\lambda_{2} e^{-\lambda_{2} x}\left(e^{-\lambda_{1} x}-e^{-\lambda_{1}(\theta x+\theta / \gamma)}\right) d x \\ =\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right)-\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta}\left(e^{-\lambda_{1} \theta / \gamma}-e^{-\lambda_{1} \theta / \gamma-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right),&1-\theta>0. \end{array}\right.\)       (D.3)

 Next, \(\phi_{2}\) in (D.1) is obtained as

\(\begin{aligned} \phi_{2} &=\operatorname{Pr}\left[\min \left(\gamma g_{R_{b} S_{1}}, \gamma g_{R_{b} S_{2}}\right)<x\right]=1-\operatorname{Pr}\left[\min \left(\gamma g_{R_{b} S_{1}}, \gamma g_{R_{b} S_{2}}\right) \geq x\right] \\ &=1-\operatorname{Pr}\left[\gamma g_{R_{b} S_{1}} \geq x\right] \times \operatorname{Pr}\left[\gamma g_{R_{b} S_{2}} \geq x\right]=1-\left(1-F_{g_{R}, 5_{1}}(x / \gamma)\right) \times\left(1-F_{R_{b} S_{2}}(x / \gamma)\right.\\ &=1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma} \end{aligned}\)    (D.4)

 Substituting (D.2) and (D.4) into (D.1),  is obtained as follows:

\(\Omega_{2.1}=\left\{\begin{array}{l} \left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}-\frac{\lambda_{2} e^{-\lambda_{1} \theta /{\gamma}}}{\lambda_{2}+\lambda_{1} \theta}\right) \times\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x/\gamma}\right) , &1-\theta \leq 0\\ \left(\frac{\lambda_{2}}{\lambda_{1}+\lambda_{2}}\left(1-e^{-\left(\lambda_{1}+\lambda_2\right) a}\right)-\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta}\left(e^{-\lambda_{1} \theta / \gamma}-e^{-\lambda_{1} \theta\left(\tau-\left(\lambda_{2}+\lambda_{1} \theta\right) a\right.}\right)\right) \\ \times\left(1-e^{-\left(\lambda_{1}+\lambda_{2}\right) x / \gamma}\right),&1-\theta>0. \end{array}\right.\)       (D.5)

 Performing a derivation of \(\Omega_{2.1}\) in (D.5) versus x, the proof of the Lemma 4 is solved completely.

 

Appendix E: Proof of Lemma 5

 To resolve Lemma 5, we express \(\Omega_{2.2}\) in (27) as                     

\(\begin{aligned} \Omega_{2.2}=& \operatorname{Pr}\left[g_{S_{1} R_{b}}>g_{S_{2} R_{b}}, g_{S_{1} R_{b}} \geq \theta g_{S_{2} R_{b}}+\theta / \gamma\right] \\ & \times \operatorname{Pr}\left[\min \left(\gamma g_{R_{b}, S_{1}}, \gamma g_{R_{b} S_{2}}\right)<x, g_{R_{b} S_{2}}<\theta / \gamma\right] \end{aligned}\)     (E.1)

 Firstly, \(\phi_{3}\) in (E.1) is calculated as

\(\begin{array}{lc} \phi_{3}=\left\{ \begin{array}{lc} \operatorname{Pr}\left[g_{S_{1} R_{b}} \geq \theta g_{S_{2} R_{b}}+\theta / \gamma\right],&1-\theta \leq 0\\ \left(\begin{array}{l} \operatorname{Pr}\left[g_{S_{1} R_{6}} \geq \theta g_{S_{2} R_{6}}+\theta / \gamma, g_{S_{2} R_{6}}<\theta g_{S_{1} R_{6}}+\theta / \gamma\right] \\ +\operatorname{Pr}\left[g_{S_{1} R_{6}}>g_{S_{2} R_{6}}, g_{S_{2} R_{6}} \geq \theta g_{S_{2} R_{6}}+\theta / \gamma\right] \end{array}\right),&1-\theta>0 \end{array} \right.\\ =\left\{ \begin{array}{lc} \int_{0}^{\infty} f_{g_{s_{2} R_{6}}}(y)\left(1-F_{g_{g_1R_b}}(\theta y+\theta / \gamma) d y\right.,&1-\theta \leq 0\\ \left(\begin{array}{l} \int_{0}^{a} f_{g_{S_2 R_{b}}}(y)\left(1-F_{g_{S_1 R_{b}}}(\theta y+\theta / \gamma)\right) d y \\ +\int_{a}^{\infty} f_{g_{S_{2} R_{b}}}(y)\left(1-F_{g_{S_{1} R_{b}}}(y)\right) d y \end{array}\right),&1-\theta>0. \end{array} \right. \end{array} \)       (E.2)

 Applying the pdf of the RV \(\mathcal{G}_{S_{2} R_{b}}\)  and the CDF of the RV \(\mathcal{G}_{S_{1} R_{b}}\)  into (E.2), \(\phi_{3}\)  is addressed as

\(=\left\{\begin{array}{l} \int_{0}^{\infty} \lambda_{2} e^{-\lambda_{2} y} e^{-\lambda_{1}(\theta y+\theta / \gamma)} d y=\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma} \quad, \quad 1-\theta \leq 0 \\ \int_{0}^{a} \lambda_{2} e^{-\lambda_{2} y} e^{-\lambda_{1}(\theta y+\theta / \gamma)} d y+\int_{a}^{\infty} \lambda_{2} e^{-\lambda_{2} y} e^{-\lambda_{1} y} d y \\ =\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma}\left(1-e^{-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)+\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}, 1-\theta>0. \end{array}\right.\)       (E.3)

 Similarly,  \(\phi_{4}\) in (E.1) is solved as following

\(\begin{aligned} \phi_{4} &=\operatorname{Pr}\left[g_{R_{p}, S_{2}}<\theta / \gamma\right]-\operatorname{Pr}\left[\min \left(\gamma g_{R_{6}, S_{1}}, \gamma g_{R_{6} S_{2}}\right)>x, g_{R_{5} S_{2}}<\theta / \gamma\right] \\ &=\operatorname{Pr}\left[g_{R_{6}, S_{2}}<\theta / \gamma\right]-\operatorname{Pr}\left[x / \gamma<g_{R_{6} S_{2}}<\theta / \gamma\right] \times \operatorname{Pr}\left[g_{R_{6}, S_{1}}>x / \gamma\right] \\ &=\left\{\begin{array}{ll} \left(1-e^{-\lambda_{2} \theta / \gamma}\right)-\left(e^{-\lambda_{2} x / \gamma}-e^{-\lambda_{2} \theta / \gamma}\right) \times\left(e^{-\lambda_{4} x / \gamma}\right) & , x<\theta \\ \left(1-e^{-\lambda_{2} \theta / \gamma}\right) & , x \geq \theta \end{array}\right. \end{aligned}\)    (E.4)

 From (E3) and (E4), it is easy to show that when \(x \geq \theta, \Omega_{2,2}\)  is not a function of x, then derivation of \(\Omega_{2.2}\) versus x equals to 0.

 -When \(x<\theta\) , substituting (E.3) and (E.4) into (E.1), \(\Omega_{2.2}\) is obtained as follows:

\(\Omega_{2.2}=\left\{\begin{array}{l} \frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma} \times\left[\left(1-e^{-\lambda_{2} \theta / \gamma}\right)-\left(e^{-\lambda_{2} x / \gamma}-e^{-\lambda_{2} \theta / \gamma}\right) \times\left(e^{-\lambda_{1} x / \gamma}\right)\right], \theta \geq 1\\ {\left[\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1} \theta} e^{-\lambda_{1} \theta / \gamma}\right.}\left.\left(1-e^{-\left(\lambda_{2}+\lambda_{1} \theta\right) a}\right)+\frac{\lambda_{2}}{\lambda_{2}+\lambda_{1}} e^{-\left(\lambda_{1}+\lambda_{2}\right) a}\right] \\ \times\left[\left(1-e^{-\lambda_{2} \theta / \gamma}\right)-\right.\left.\left(e^{-\lambda_{2} x / \gamma}-e^{-\lambda_{2} \theta / \gamma}\right) \times\left(e^{-\lambda_{1} x / \gamma}\right)\right] \quad, \quad \theta<1 \end{array}\right.\)       (E.5)

 Performing a derivation of \(\Omega_{2.2}\) in (E.5) versus x, we solved the proof of the Lemma 5 successfully.

 

Acknowledgments

 This work was supported by the grant SGS reg. No. SP2019/41 conducted at VSB Technical University of Ostrava, Czech Republic and was partially funded by Ho Chi Minh City University of Technology and Education under grant number T2019-51TĐ.

References

  1. L. Zhang, J. Liu, M. Xiao, G. Wu, Y. C. Liang and S. Li, "Performance Analysis and Optimization in Downlink NOMA Systems With Cooperative Full-Duplex Relaying," IEEE Journal on Selected Areas in Communications, vol. 35, no. 10, pp. 2398-2412, Oct. 2017. https://doi.org/10.1109/JSAC.2017.2724678
  2. L. Pei, T. Zhifeng, L. Zinan, E. Erkip and S. Panwar, "Cooperative wireless communications: a cross-layer approach," IEEE on Wireless Communications, vol. 13, no. 4, pp. 84-92, Aug. 2006. https://doi.org/10.1109/MWC.2006.1678169
  3. P. N. Son and H. Y. Kong, "Exact outage analysis of Energy Harvesting Underlay Cooperative Cognitive Networks," IEICE Transactions on Communications, vol. E98-B, no. 4, pp. 661-672, Apr. 2015. https://doi.org/10.1587/transcom.E98.B.661
  4. M. Ju, I. Kim and D. I. Kim, "Joint Relay Selection and Relay Ordering for DF-Based Cooperative Relay Networks," IEEE Transactions on Communications, vol. 60, no. 4, pp. 908-915, April 2012. https://doi.org/10.1109/TCOMM.2012.030712.1001762
  5. P. N. Son and H. Y. Kong, "Performance Analysis of Decode-and-Forward Scheme with Relay Ordering for Secondary Spectrum Access," Wireless Personal Communications (WPC), vol. 79, no. 1, pp. 85-103, Nov. 2014. https://doi.org/10.1007/s11277-014-1842-8
  6. R. Jiao, L. Dai, J. Zhang, R. MacKenzie, and M. Hao, "On the Performance of NOMA-Based Cooperative Relaying Systems over Rician Fading Channels," IEEE Transactions on Vehicular Technology , vol. 66, no.12, pp.11409-11413, Jul. 2017. https://doi.org/10.1109/TVT.2017.2728608
  7. K. H. Liu, "Performance Analysis of Relay Selection for Cooperative Relays Based on Wireless Power Transfer With Finite Energy Storage," IEEE Transactions on Vehicular Technology, vol. 65, pp. 5110-5121, 2016. https://doi.org/10.1109/TVT.2015.2469300
  8. K. Senthil Kumar and R. Amutha, "An Algorithm for Energy Efficient Cooperative Communication in Wireless Sensor Networks," KSII Transactions on Internet and Information Systems, vol. 10, no. 7, pp. 3080-3099, 2016. https://doi.org/10.3837/tiis.2016.07.012
  9. F. Wang, S. Guo, Y. Yang and B. Xiao, "Relay Selection and Power Allocation for Cooperative Communication Networks With Energy Harvesting," IEEE Systems Journal, vol. 12, vol. 1, pp. 735 - 746, March 2018. https://doi.org/10.1109/JSYST.2016.2524634
  10. S. Touati, H. Boujemaa, M. A. Al Hussain, F. Alturki and N. Abed, "Cooperative HARQ protocols using semi-blind relays for underlay cognitive radio networks," Telecommunication Systems, vol. 63, no. 2, pp. 287-295, Oct. 2016. https://doi.org/10.1007/s11235-015-0120-8
  11. D. Li, "Amplify-and-Forward Relay Sharing for Both Primary and Cognitive Users," IEEE Transactions on Vehicular Technology, Vol. 65, no. 4, p. 2796-2801, Apr. 2016. https://doi.org/10.1109/TVT.2015.2418779
  12. C. Zhang, J. Ge, J. Li, Y. Rui and M. Guizani, "A Unified Approach for Calculating the Outage Performance of Two-Way AF Relaying Over Fading Channels," IEEE Transactions on Vehicular Technology, vol. 64, no. 3, pp. 1218-1229, Mar. 2015. https://doi.org/10.1109/TVT.2014.2329853
  13. Jianrong Bao, Bin Jiang, Chao Liu, Xianyang Jiang and Minhong Sun, "Optimized Relay Selection and Power Allocation by an Exclusive Method in Multi-Relay AF Cooperative Networks," KSII Transactions on Internet and Information Systems, vol. 11, no. 7, pp. 3524-3542, 2017. https://doi.org/10.3837/tiis.2017.07.012
  14. L. Song, "Relay Selection for Two-Way Relaying With Amplify-and-Forward Protocols," IEEE Transactions on Vehicular Technology, vol. 60, no. 4, pp. 1954-1959, May 2011. https://doi.org/10.1109/TVT.2011.2123120
  15. J. B. Kim and I. H. Lee, "Capacity Analysis of Cooperative Relaying Systems Using Non-Orthogonal Multiple Access," IEEE Communications Letters, vol. 19, no. 11, pp. 1949-1952, Nov. 2015. https://doi.org/10.1109/LCOMM.2015.2472414
  16. Z. Ding, M. Peng and H. V. Poor, "Cooperative Non-Orthogonal Multiple Access in 5G Systems," IEEE Communications Letters, vol. 19, no. 8, pp. 1462-1465, Aug. 2015. https://doi.org/10.1109/LCOMM.2015.2441064
  17. H. Chingoska, Z. Hadzi-Velkov, I. Nikoloska and N. Zlatanov, "Resource Allocation in Wireless Powered Communication Networks With Non-Orthogonal Multiple Access," IEEE Wireless Communications Letters, vol. 5, no. 6, pp. 684-687, Dec. 2016. https://doi.org/10.1109/LWC.2016.2615616
  18. S. Lee, D. Benevides da Costa and T. Q. Duong, "Outage probability of non-orthogonal multiple access schemes with partial relay selection," in Proc. of IEEE 27th Annual International Symposium on Personal, Indoor, and Mobile Radio Communications (PIMRC), pp. 1-6, Sep. 2016.
  19. Y. Liu, G. Pan, H. Zhang and M. Song, "Hybrid Decode-Forward & Amplify-Forward Relaying With Non-Orthogonal Multiple Access," IEEE Access, vol. 4, pp. 4912-4921, 2016. https://doi.org/10.1109/ACCESS.2016.2604341
  20. W. Duan, M. Wen, Z. Xiong and M. H. Lee, "Two-Stage Power Allocation for Dual-Hop Relaying Systems With Non-Orthogonal Multiple Access," IEEE Access, vol. 5, pp. 2254-2261, 2017. https://doi.org/10.1109/ACCESS.2017.2655138
  21. J. Zhu, J. Wang, Y. Huang, S. He, X. You and L. Yang, "On Optimal Power Allocation for Downlink Non-Orthogonal Multiple Access Systems," IEEE Journal on Selected Areas in Communications, vol. 35, no. 12, pp. 2744 - 2757, Dec. 2017. https://doi.org/10.1109/jsac.2017.2725618
  22. L. Lv, J. Chen, Q. Ni and Z. Ding, "Design of Cooperative Non-Orthogonal Multicast Cognitive Multiple Access for 5G Systems: User Scheduling and Performance Analysis," IEEE Transactions on Communications, vol. 65, no. 6, pp. 2641-2656, June 2017. https://doi.org/10.1109/TCOMM.2017.2677942
  23. Peng Lan, Lizhen Chenl, Guowei Zhang and Fenggang Sun, "Optimal Power Allocation and Relay Selection for Cognitive Relay Networks using Non-orthogonal Cooperative Protocol," KSII Transactions on Internet and Information Systems, vol. 10, no. 5, pp. 2047-2066, 2016. https://doi.org/10.3837/tiis.2016.05.006
  24. T. T Duy and H. Y Kong, "Exact outage probability of cognitive two-way relaying scheme with opportunistic relay selection under interference constraint," IET Communications, vol. 6, no. 16, pp. 2750-2759, Nov. 2012. https://doi.org/10.1049/iet-com.2012.0235
  25. F. Fan, X. Lei, H. Chen and W. Zhou, "Impact of channel estimation error on fixed-gain two-way relay network with user/antenna selection," Transactions on Emerging Telecommunications Technologies, vol. 25, no. 5, pp. 490-495, 2014.
  26. P. Popovski and H. Yomo, "Physical network coding in two-way wireless relay channels," in Proc. of IEEE International Conference on Communications, pp. 707-712, Aug. 2007.
  27. A. Sheikh and A. Olfat, "New Beamforming and Relay Selection for Two-Way Decode-and-Forward Relay Networks," IEEE Transactions on Vehicular Technology, vol. 65, no. 3, pp. 1354-1366, March 2016. https://doi.org/10.1109/TVT.2015.2408992
  28. Q.F. Zhou, W.H. Mow, S. Zhang and D. Toumpakaris, "Two-Way Decode-and-Forward for Low-Complexity Wireless Relaying: Selective Forwarding Versus One-Bit Soft Forwarding," IEEE Transactions on Wireless, vol. 15, no. 3, p. 1866-1880, Mar. 2016. https://doi.org/10.1109/TWC.2015.2496949
  29. C. Peng, F. Li and H. Liu, "Optimal Power Splitting in Two-Way Decode-and-Forward Relay Networks," IEEE Communications Letters, vol. 21, no. 9, pp. 2009-2012, Sept. 2017. https://doi.org/10.1109/LCOMM.2017.2671363
  30. R. Cao, H. Gao, T. Lv, S. Yang and S. Huang, "Phase-Rotation-Aided Relay Selection in Two-Way Decode-and-Forward Relay Networks," IEEE Transactions on Vehicular Technology, vol. 65, no. 5, pp. 2922-2935, May 2016. https://doi.org/10.1109/TVT.2015.2442622
  31. Q. F. Zhou, Y. Li, F. C. M. Lau and B. Vucetic, "Decode-and-Forward Two-Way Relaying with Network Coding and Opportunistic Relay Selection," IEEE Transactions on Communications, vol. 58, no. 11, pp. 3070-3076, November 2010. https://doi.org/10.1109/TCOMM.2010.100510.090258
  32. P. N. Son and H. Y. Kong, "Exact outage probability of two-way decode-and-forward scheme with opportunistic relay selection under physical layer security," Wireless personal communications, vol. 77, no. 4, pp. 2889-2917, 2014. https://doi.org/10.1007/s11277-014-1674-6
  33. P. N. Son and H. Y. Kong, "Improvement of the two-way decode-and-forward scheme by energy harvesting and digital network coding relay," Transactions on Emerging Telecommunications Technologies (ETT), vol. 28, no. 3, pp. 1-14, March 2017.
  34. X. Wang, M. Jia, I. W.-H. Ho, Q. Guo and F. C. M. Lau, "Exploiting fullduplex two-Way relay cooperative non-orthogonal multiple access," IEEE Transactions on Communications, vol. 67, no. 4, pp. 2716-2729, April 2019. https://doi.org/10.1109/TCOMM.2018.2890264
  35. X. Yue, Y. Liu, S. Kang, A. Nallanathan and Y. Chen, "Modeling and analysis of two-way relay non-orthogonal multiple access systems," IEEE Transactions on Communications, vol. 66, no. 9, pp. 3784-3796, Sept. 2018. https://doi.org/10.1109/TCOMM.2018.2816063

Cited by

  1. Cancel-Decode-Encode Processing on Two-Way Cooperative NOMA Schemes in Realistic Conditions vol.2021, 2019, https://doi.org/10.1155/2021/8828443
  2. A Spectral Efficient NOMA-based Two-Way Relaying Scheme for Wireless Networks with Two Relays vol.15, pp.1, 2021, https://doi.org/10.3837/tiis.2021.01.020