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Application of Joint Electro-Chemical Detection for Gas Insulated Switchgear Fault Diagnosis

  • Li, Liping (Dept. of Electrical and Electronic Engineering, Chongqing University) ;
  • Tang, Ju (Dept. of Electrical and Electronic Engineering, Chongqing University) ;
  • Liu, Yilu (Dept. of Electrical and Electronic Engineering, University of Tennessee (Knoxville))
  • 투고 : 2014.12.28
  • 심사 : 2015.02.27
  • 발행 : 2015.07.01

초록

The integrity of the gas insulated switchgear (GIS) is vital to the safety of an entire power grid. However, there are some limitations on the techniques of detecting and diagnosing partial discharge (PD) induced by insulation defects in GIS. This paper proposes a joint electro-chemical detection method to resolve the problems of incomplete PD data source and also investigates a new unique fault diagnosis method to enhance the reliability of data processing. By employing ultra-high frequency method for online monitoring and the chemical method for detecting SF6 decomposition offline, the acquired data can form a more complete interpretation of PD signals. By utilizing DS evidence theory, the diagnostic results with tests on the four typical defects show the validity of the new fault diagnosis system. With higher accuracy and lower computation cost, the present research provides a promising way to make a more accurate decision in practical application.

키워드

1. Introduction

Gas insulated switchgear (GIS) is a multipart equipment that combines busbars, disconnectors, circuit-breakers, instrument transformers, cable terminations and joints in an earthed enclosure filled with SF6 gas. GIS offers advantages such as higher reliability, less maintenance, and more compact size. However, service experience also indicates incidents of GIS failure in recent years [1]. The operation of GIS equipment does not only affect its own stability of functioning but also has a direct impact on the power grid, causing economic losses to industry and inconvenience to people’s daily life. In the urgent need are the effective and efficient procedure of dielectric detection and diagnosis to accurately recognize the partial discharge (PD) induced by insulation defects before they lead to any kind of damage.

There are a variety of diagnostic approaches based on pulse current, acoustic, chemical, and ultra-high frequency (UHF) detection techniques [2-10]. However, each of these approaches can be performed effectively to some extent with its own limitations. Furthermore, none of these detection methods can be used independently to completely eliminate the interface from the surrounding because PD signals obtained via each detection method contain only certain aspects of information. The pulse current technique has a weak capacity in resisting interference. Being easily confounded by noise, the ultrasonic detection technique can result in inaccurate PD detection and recognition. A major limitation encountered by UHF is the problem of discharge calibration. Lastly, more studies are needed for the chemical method of detecting SF6 decomposition under PDs as it is a relatively new area. On the other hand, the diagnostic algorithms have not been completely resolved, despite their use for fault diagnosis, such as artificial neural networks (NN) [11], support vector machine (SVM) [12]. The diagnostic algorithms are quite inconvenient for artificial diagnosis and onsite quick diagnosis, resulting in limited applicability for field use.

In order to acquire a complete perceptive interpretation of PD signals, a joint electro-chemical detection method is proposed in this paper. For GIS population in service, ultra-high frequency (UHF) detection method is most frequently employed for online monitoring due to their higher reliability and sensitivity. As for the chemical method of detecting the SF6 decomposition products in GIS, it is an indispensable way for offline measurement since it’s rarely affected by noise and electromagnetic interferences. The two complementary aspects of PD signals can provide rich electromagnetic and sufficient chemical information for fault diagnosis. Pertaining to these aspects, a new diagnostic method based on Dempster-Shafer (DS) evidence theory [13, 14] is proposed to enhance accuracy and ability of error tolerance.

The rest of the paper is organized as follow: Section 2 briefly introduces experimental setup and procedure for the joint electro-chemical detection method. Section 3 outlines the classic clustering algorithm for fault diagnosis under UHF method and chemical method respectively. Following the description of the principles of DS evidence theory, Section 4 illustrates a new diagnostic approach with the joint detection method. Conclusions are noted in Section 5.

 

2. Joint Electro-Chemical Detection Method

Service experience indicates that the main defects in real GIS in service include four typical ones, namely, metallic protrusion, free metallic particle, contamination on the surface of the spacer, and the gap at electrode/epoxy interface [1]. These four typical insulation defects are established for UHF and chemical detection.

2.1 UHF online detection

Most commonly used for online detection of PD, a UHF sensor with a bandwidth of 500MHz to 3 GHz and centered about 930MHz was employed to obtain the PD signals. The experiment was carried out on a real three-phase 110kV GIS (ZF10-126) in one tank type in a metallic shield high voltage test hall at Shandong Taikai High Voltage Switchgear Co. Ltd. A brief schematic diagram of testing and detection circuit is shown in Fig. 1.

Fig. 1.Schematic diagram of PD detection circuit

In Fig. 1, T1 is a column type voltage regulator, T2 is a power frequency testing transformer (YDTCW-1000/2 × 500) without partial discharge, C1/C2 are power frequency capacitor divider & coupling capacitor (TAWF-1000/600), R is a power frequency protecting resistance (GR1000-1/6), and the oscilloscope is Tektronix DPO7104 with a bandwidth of 1GHz and 20GS/s sampling rate. The main equipment is shown in Fig. 2.

Fig. 2.The main equipment for online detection

Four artificial insulation defects were implemented in the GIS, as shown in Fig. 3. The protrusion defect S1 was simulated with a 2mm diameter copper wire tied on the HV conductor with a distance of 40 mm to the inwall of the chamber (Fig. 3a). The free particles defect S2 was simulated in some 2mm*2mm aluminum sheets placed on the bottom of the busbar tube (Fig. 3b). The surface contamination defect S3 was simulated with a 2mm diameter copper wire with a distance of 15mm to the HV pole and 35mm to the inwall of the chamber adhered to the surface of an insulating spacer (Fig. 3c). A bad support insulator with a flaw of about 43mm caused by pressure overload was taken as void in insulating spacer defect S4 and (Fig. 3d). Distribution of the four defects is shown in Fig. 2, the protrusion defect S1 and surface contamination defect S3 were respectively installed in two separate gas chambers near insulating spacer C1. S1 and S2 were installed in busbar tube II.

Fig. 3.Four artificial defects in a real GIS

In order to mitigate the effects of attenuation, refraction and reflection, the UHF sensor was placed at spacer C1 for detection of S1 and S3 defects, while placed at spacer C10 for S2 and S4 defects.

With the oscilloscope, a single phase resolved partial discharge (PRPD) sample is composed of PD signals in sequential 50 power cycles (50Hz in China). The sampling rate was set at 50MS/s, and the maximum value of each interval was remained by 2778:1 resampling, which means that a signal data is of 360 points corresponding to a power frequency cycle.

2.2 Chemical method offline

When PD occurs in SF6 gas, a portion of SF6 molecules is decomposed and reacts with H2O and O2, which are impurities in SF6. Many kinds of chemical products are generated, such as SOF4, SOF2, SO2F2, SF4, SO2, CF4, CO2, HF [9], and so forth. These decomposition products can indicate PD in GIS, allowing for the PD recognition by analyzing SF6 decomposition products.

However, in practical application, it does not allow gas extraction from gas chambers of GIS in service. To simulate the process of SF6 decomposition, an effective simulation assembly was established in the lab. As shown in Fig. 4, artificial defects were placed in the gas chamber filled with pressurized SF6. High voltage was applied to the artificial defects and PD was generated to decompose SF6, whose decomposition products were detected by a gas chromatograph (Varian CP-3800).

Fig. 4.Schematic diagram of chemical detection system

The four corresponding artificial defects were designed for the simulation of offline measurement. Fig. 5(a) illustrates the protrusion defect S1 simulated by a needle-plane electrode. The particle defect S2 consisted of a sphere electrode, a hemisphere electrode, and copper cuttings that could move freely in the hemisphere electrode, as shown in Fig. 5(b). To simulate the contamination defect S3, some copper cuttings were adhered on the surface of an epoxy block as shown in Fig. 5(c). To create a void defects S4, an epoxy block was inserted between two plane electrodes, as shown in Fig. 5(d). There was a small gap between the epoxy and the upper electrode. To make the simulation more practical, the high-voltage electrodes were made of aluminum and the ground electrodes were made of steel, which is similar to real GIS.

Fig. 5.Four kinds of artificial defect models (unit: mm)

2.3 Experimental procedure

To rapidly simulate the development of defect or different serious states, the step stress test method was adopted both for UHF and chemical methods. First, gradually increase the test voltage until the first PD signal occurred. The voltage applied on the defect at this moment was the PD inception voltage. Several test voltages higher than the inception voltage were selected to generate PD signals. For UHF detection, each experiment lasted for 2h to obtain the information. And for chemical method each one lasted for 96h and the concentrations of four typical decomposition were detected every 4h by the gas chromatograph in chemical method.

2.4 PD signals acquisition

As shown in Fig. 6, typical PRPD mode of PD signals obtained with the UHF sensor. For each defect, 100 PRPD sample sets were collected respectively.

Fig. 6.PRPD data for (a) Protrusion S1; (b) Free particles S2; (c) Surface contamination S3; (d) Void in insulating spacer S4.

For chemical detection method under each defect, 72 samples for the concentrations of SO2F2, SOF2, CF4 and CO2 were detected every 4h by the gas chromatograph.

 

3. Fault Diagnosis using Single Method

Conventional clustering algorithm, such as NN and SVM, is a kind of hard partition algorithm, which is not able to directly differentiate defect types due to the complex features of PD signals. As an unsupervised classification, fuzzy C-means (FCM) clustering algorithm [15, 16] can be used to examine the intermediary nature of the sample, to reflect the PD natural attributes objectively, and even to classify the samples with a fuzzy property. The algorithm is applicable for diagnosis with UHF method as well as the chemical method.

3.1 Basic FCM theory

The theory of FCM is as follows.

Let R be the set of real numbers and Rs be the d-dimensional vector space over the real numbers. The sample set is X = {x1, x2,..., xn} ∈ Rs , and c represents the number of categories. The objective function of FCM is shown in Eq. (1).

where V = [vk]c×s is the cluster matrix, vk is the cluster of class k, 1 ≤ k ≤ c ≤n, U = [uik] c×s represents the membership degree matrix, uik is the membership degree of xi belonging to class k ; uik ∈ [0,1], , m ∈ [1, ∞] is the weighting coefficient; and dik represents the distance between sample xi and the cluster vk:

To find the optimal U = [uik] and vk that minimize J (U,V), the objective function can be solved by the Lagrange multiplier:

The optimal condition of Eq. (3) is:

By solving Eq. (4), we can get uik and vk shown in Eq. (5-6):

FCM clustering algorithm is presented as follows:

1) Determine X, m, c and generate the initial membership matrix U(0) = [u(0)ik] randomly ; 2) Compute the cluster center of each class by Eq. (6); 3) Calculate the new membership degree matrix by Eq. (5); 4) If the distance between the membership degree matrixes of the two successive iterations satisfies ∥Ul−Ul−1∥ ≤ 10−4, stop the calculation. Otherwise, continue the calculation from step 3).

3.2 Fault diagnosis with UHF method

With comparison of typical PRPD spectrums shown in Fig.6, it can be found that PRPD for either S1 or S2 show strong regularity with quite similar spectrums as applied voltage changes and PD develops, while the other two are dissimilar and fickle. For field application, it’s hard for the engineer to get the diagnostic results directly from the analysis of PRPD.

For better diagnostic results, feature extraction needs to be done first. A classic feature extraction method based on statistical theory [17] was employed, and all the extracted features are shown in Table 1.

Table 1.*Sk is skewness, Ku is kurtosis, Q is discharge factor, cc is modified cross correlation factor; m is for amplitude, n is for PD number; + − respectively means the positive and negative half of power frequency cycle.

As shown in Table 1, the complex features of PRPD data are of 16-dimension, making it difficult to classify the similarity between the categories and objects. Thus the FCM algorithm is introduced to find the intermediary nature of the PRPD data samples. To avoid attributes existed in greater numeric ranges which may dominate over those in smaller numeric ranges and to limit numerical difficulties, typical normalization method was applied. Take the normalization result as the input variable X, set c=4, m=2. The diagnostic results with UHF method based on FCM clustering algorithm are shown in Table 2.

Table 2.Diagnostic results with UHF method

It can be easily concluded that the overall accuracy of FCM diagnosis with UHF method is 85.8%, including a higher accuracy of S1 and S2 defect. As for surface contamination defect S3 and void in spacer S4, the results show a less satisfactory accuracy due to the variation on shapes, size, ageing degree of the two defects.

3.3 Fault diagnosis with chemical method

Obviously, the concentration data of SF6 decomposition products under four typical defects have no strict boundary, the fuzzy property of which FCM can deal with. Similar to the three-ratio method widely used in the fault diagnosis of transformers [18, 19], selecting concentration ratio of SF6 decomposition products as the characteristic quantity may be a more preferred method.

After analyzing the mechanism of chemical reaction process [20], three representative concentration ratios with distinct values and clear physical significance are chosen as features for diagnosis with chemical method. c(SOF2)/c(SO2F2) is the indication of discharge energy of PD for they are the main products when SF6 is decomposed under PD, c(CF4)/c(CO2) indicates structures of different defects for they are the reaction products of carbon atoms in the high temperature region of the electrode and epoxy resin with O2, and c(CF4+CO2)/c(SOF2+SO2F2) has a positive correlation with the degradation degree of insulation materials or electrodes. In this paper, 72 samples of SF6 decomposition products were collected from chemical offline experiments on four typical defects respectively. The distribution of the samples in the three-dimensional space is shown in Fig. 7.

Fig. 7.Distribution of concentration ratio samples

Take the three concentration ratio as the input variable X, set c=4, m=2. The diagnostic results with chemical method based on FCM clustering algorithm are shown in Table 3.

Table 3.Diagnostic results with chemical method

The overall accuracy of diagnostic results with chemical method is 77.8%. The diagnostic result indicates the lowest accuracy for the particle defect S2 because the particle can move freely under the electric field resulting more randomness. As shown above, diagnostic performance for different defects with UHF and chemical methods differ greatly, which may cause misclassification. Especially when prior knowledge is lacked in field application, getting a conclusion is almost impossible.

 

4. Fault Diagnosis Based on Joint Detection Method and DS Evidence Theory

In order to enhance the integrality, accuracy, fault tolerance and availability of the diagnostic results, a complete perceptive description and interpretation of the objects (PD) should be constructed according to the internal rules and relation. By employing DS evidence theory, the incomplete, uncertainty, fuzzy even conflicting information can be processed to obtain more reliable information, resulting in better diagnostic results. The synthetic diagnosis method based on DS evidential theory and the joint electro-chemical method is presented in this paper.

4.1 Evidence Theory

In DS evidence theory, the belief function (Bel) is introduced to measure uncertainty which satisfies weak axiom of probability and the plausibility function (Pl) is introduced to deal with uncertainty which is caused by “Do not know”; compared with other method, the evidence theory can distinguish between uncertainty and “Do not know” when the prior probability is difficult but must be given, so the evidence theory has great flexibility. The DS theory defines a frame of discernment, denoted as Θ. A basic hypothesis (singleton) in Θ is denoted as Ai . The hypotheses in Θ are assumed to be mutually exclusive and exhaustive. All the possible results are corresponding to protrusion defect, free particles defect, void in insulating spacer defect, surface contamination defect and the uncertainty θ.

The impact of each distinct piece of evidence on the subsets of Θ is represented by a function called a basic probability assignment (BPA). The BPA function must satisfy the following formulae.

Here, refers to the degree of belief held by an observer regarding a certain defect and there are two pieces of evidence from UHF method and chemical method, and four types of defects with uncertainty θ. Define as the BPA function of the i-th evidence for the j-th defect, then it can be calculated in formula as follows:

Oj represents the jth output of the neural network, obviously, , satisfying the definition of function m.

When all the BPA functions have been calculated with the combination rules, PD types of the unknown insulation defect can be judged with the following three rules.

Rule I, m(Amax 1) = max {m(Ai), Ai ⊂ Θ} , meaning that the judged PD type should have a maximum BPA.

Rule II, m(Amax 1) =m(θ) ; meaning that the BPA of the judged PD type should be larger than the uncertainty θ.

Rule III, m(Amax 1) − m(Amax 2) > ε ;

Where, m(Amax2) is the second largest BPA, and ε is a threshold larger than 0. The value of ε depends on the attributes of information samples, practical application. Only when the judged PD type satisfies all the three rules can the fusion decision-making system make the final discriminant of the PD type with the largest BPA.

4.2 Fault diagnosis with joint electro-chemical method

To evaluate the performance of the proposed diagnosis system for tests with data samples, PD samples with joint method are selected randomly for each defect. In a practical application, Bel(A), Pl(A) or a value between them can be considered as the reliability coefficient. Here, let α represent the average diagnostic accuracy. The diagnostic results shown in Table 4 are obtained based on DS theory as shown above.

Table 4.Diagnostic results with joint method

After fusing the two diagnostic results based on DS evidence theory, the new diagnostic method has a higher accuracy than the other two, with diagnostic result for each defect type reaching 96% at least. Furthermore, it’s found that there’s few undetermined samples. Maybe the information provided by the two evidences produces serious conflicts, which results in no final decision or even false diagnosis. The introduction of uncertainty θ in DS evidence theory makes the diagnostic results more reliable, while the common methods adopts the competitive output rules which simply make a decision between “belong to” or “not”, reducing the reliability. In field application where the defects always are not included in the database due to the lack of prior knowledge, the uncertainty θ is of great practical significance.

Actually, another possible fault diagnostic way can be obtained with the characteristic quantity of joint electro-chemical method directly combined into a 19-dimensional features after the normalization, which can be taken as the input of FCM algorithm. Whereas, more extracted features bring in computational complexity of the system and slow down the speed of data processing. The diagnostic results and the time-taken for FCM and FCM-DS method are shown in Table 5.

Table 5.Comparison of FCM and FCM-DS

From Table 5 above, the diagnostic accuracy by taking the total 19-dimensional features as input vector of FCM is no enhanced remarkably compared to the results shown in Table 2 and Table 3. Firstly, the competitive output rules of FCM cause information underprivileged samples lost. Secondly, the comprehensive input makes FCM hard to identify the redundancy and validity of the information. In the end, the higher dimensional features increase the difficulty of recognition, leading to a longer time-taken as well. As for the FCM-DS method which combines the outputs of two FCM classifiers based on DS theory, the original features are processed in parallel, and hence effectively reducing the calculation complexity and accelerating the computation speed.

 

5. Conclusion

The precision and reliability of fault diagnosis with PD measurement plays an essential role in condition assessment of GIS, which is mostly determined by both data source and data processing ability. In this paper, a more complete interpretation of PD data is formed with the proposed joint electro-chemical detection method, and decision making of classifying PD types is also solved by DS evidence theory by fusing two diagnostic results with UHF and chemical method respectively. The performance of fault diagnosis with every single detection alongside the joint detection method are described and compared carefully. Diagnostic results under direct combination of two kinds of features are also compared with that with fusion of FCM results. Obtained results show that the proposed diagnosis system based on joint detection method and DS evidence theory has significantly improved the accuracy with a more credible decision, which significantly reduces the possibility of erroneous diagnosis and enhances the fault tolerance. To reduce the calculation complexity, the original features are processed with FCM algorithm in parallel, resulting in accelerated the computation speed and a shorter time-taken. Last, but not least, the ability of handling uncertainty θ makes it promising way to give a relatively credible prediction of some uncertain defect in filed application without sufficient prior knowledge.

In brief, this paper investigates a new fault diagnosis system to resolve the problems of incomplete PD data source and the reliability of data processing. Results of tests on the four typical defects show that it provides a promising way to make a more accurate decision with more practical application for condition assessment of GIS.

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