• Title/Summary/Keyword: smart fish farm

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An Implementation of DAQ and Monitoring System for a Smart Fish Farm Using Circulation Filtration System

  • Jeon, Joo Hyeon;Lee, Na Eun;Lee, Yoon Ho;Jang, Jea Moon;Joo, Moon Gab;Yoo, Byung Hwa;Yu, Jae Do
    • Journal of Information Processing Systems
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    • v.17 no.6
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    • pp.1179-1190
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    • 2021
  • A data acquisition and monitoring system was developed for an automated system of a smart fish farm. The fish farm is located in Jang Hang, South Korea, and was designed as circulation filtration system. Information of every aquaculture pool was automatically measured by pH sensors, dissolved oxygen sensors, and water temperature sensors and the data were stored in the database in a remoted server. Modbus protocol was used for gathering the data which were further used to optimize the pool water quality to predict the rate of growth and death of fish, and to deliver food automatically as planned by the fish farmer. By using JSON protocol, the collected data was delivered to the user's PC and mobile phone for analysis and easy monitoring. The developed monitoring system allowed the fish farmers to improve fish productivity and maximize profits.

An Implementation of System for Control of Dissolved Oxygen and Temperature in the pools of Smart Fish Farm (스마트 양식장 수조 내 용존 산소 및 온도 제어를 위한 시스템 구현)

  • Jeon, Joo-Hyeon;Lee, Yoon-Ho;Lee, Na-Eun;Joo, Moon G.
    • IEMEK Journal of Embedded Systems and Applications
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    • v.16 no.6
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    • pp.299-305
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    • 2021
  • Dissolved oxygen, pH, and temperature are the most important factors for fish farming because they affect fish growth and mass mortality of the fish. Therefore, fish farm workers must always check all pools on the farm, but this is very difficult in reality. That's why we developed a control system for smart fish farms. This system includes a gateway, sensor gatherers, and a PC program using LabVIEW. One sensor gatherer can cover up to four pools. The sensor gatherers are connected to the gateway in the form of a bus. For the gateway, the ATmega2560 is used as the main processor for communication and the STM32F429 is used as a sub-processor for displaying LCD. For the sensor gatherer, ATmega2560 is used as the main processor for communication. MQTT (Message Queuing Telemetry Transport), RS-485, and Zigbee are used as the communication protocols in the control system. The users can control the temperature and the dissolved oxygen using the PC program. The commands are transferred from the PC program to the gateway through the MQTT protocol. When the gateway gets the commands, it transfers the commands to the appropriate sensor gatherer through RS-485 and Zigbee.

A Study on the Construction Plan of Smart Fish Farm Platform in the Future (미래 스마트 양식 플랫폼의 구축방안에 대한 연구)

  • Choi, Joowon;Lee, Jongsub;Kim, Youngae;Shin, Yongtae
    • KIPS Transactions on Computer and Communication Systems
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    • v.9 no.7
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    • pp.157-164
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    • 2020
  • As the consumption of fishery products continues to increase, aquaculture industry has emerged instead of fishing industry facing limitations of fish stock resources. Recently, smart fish farming industry has rapidly developed through convergence with 4th Industrial Revolution technology. Accordingly, it is important to derive a future model of smart fish farming platforms in order to secure the superiority of the aquaculture industry and the technology standard hegemony. In this study, the future direction of smart fish farm platform was derived through the analysis of environment related to politics, economy, society, and technology related to smart fish farming by applying PEST methodology of macro-environment analysis. It is expected that it will help the public and industrial circles in planning and implementing related projects by including the entire process of value chain of aquaculture industry of breeding, production, management and distribution, and by presenting advanced models based on artificial intelligence and digital twin.

Automatic Fish Size Measurement System for Smart Fish Farm Using a Deep Neural Network (심층신경망을 이용한 스마트 양식장용 어류 크기 자동 측정 시스템)

  • Lee, Yoon-Ho;Jeon, Joo-Hyeon;Joo, Moon G.
    • IEMEK Journal of Embedded Systems and Applications
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    • v.17 no.3
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    • pp.177-183
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    • 2022
  • To measure the size and weight of the fish, we developed an automatic fish size measurement system using a deep neural network, where the YOLO (You Only Look Once)v3 model was used. To detect fish, an IP camera with infrared function was installed over the fish pool to acquire image data and used as input data for the deep neural network. Using the bounding box information generated as a result of detecting the fish and the structure for which the actual length is known, the size of the fish can be obtained. A GUI (Graphical User Interface) program was implemented using LabVIEW and RTSP (Real-Time Streaming protocol). The automatic fish size measurement system shows the results and stores them in a database for future work.

Implementation of Water Depth Indicator using Contactless Smart Sensors (비접촉식 스마트센서 기반 수위측정 방법 구현)

  • Kim, Minhwan;Lee, Jinhee;Song, Giltae
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.23 no.6
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    • pp.733-739
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    • 2019
  • Water level measurement is highly demanding in IoT monitoring areas such as smart factory, smart farm, and smart fish farm. However, existing water level indicators are limited to be used in industrial fields as commercial products due to the high cost of sensors and the complexity of algorithms used. In order to solve these problems, our paper proposed methods using an infrared distance sensor as well as a hall sensor for the water level measurement, both of which are contactless smart sensors. Data errors caused by the inaccuracy of existing sensors were decreased by applying new simple structures so that versatility is enhanced. The performance of our method was validated using experiments based on simulations. We expect that our new water depth indicator can be extended to a general-purpose water level monitoring system based on IoT technology.

Estimation of Fish Habitat Suitability Index for Stream Water Quality - Case Species of Zacco platypus - (하천 수질에 대한 어류의 서식처적합도지수 산정 - 피라미를 대상으로 -)

  • Hong, Rokgi;Park, Jinseok;Jang, Seongju;Song, Inhong
    • Journal of The Korean Society of Agricultural Engineers
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    • v.63 no.6
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    • pp.89-100
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    • 2021
  • The conservation of stream habitats has been gaining more public attention and fish habitat suitability index (HSI) is an important measure for ecological stream habitat assessment. The fish habitat preference is affected not only by physical stream conditions but also by water quality of which HSI was not available due to the lack of field data. The purpose of this study is to estimate the HSI of Zacco platypus for water quality parameters of water temperature, dissolved oxygen (DO), and biochemical oxygen demand (BOD) using the water environment monitoring data provided by the Ministry of Environment (ME). Fish population data merged with water quality were constructed by spatio-temporal matching of nationwide water quality monitoring data with bio-monitoring data of the ME. Two types of the HSI were calculated by the Instream Flow and Aquatic Systems Group (IFASG) method and probability distribution (Weibull) fitting for the four major river basins. Both the HSIs by the IFASG and Weibull fitting appeared to represent the overall distribution and magnitude of fish population and this can be used in stream fish habitat evaluation considering water quality.

Design of Drone for Underwater Monitoring and Net Cleaning for Aquaculture Farm (양식장 수중 모니터링 및 그물망 청소용 드론 설계)

  • Kim, Jin-Ha;Kim, Eung-Kon
    • The Journal of the Korea institute of electronic communication sciences
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    • v.13 no.6
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    • pp.1379-1386
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    • 2018
  • Conventional underwater cameras used in fish farms can only shoot limited areas and are vulnerable to underwater contamination. There is also a problem with contaminated farms as surplus residues are deposited as a result of feed supply to farms' nets. This paper proposes underwater drones for underwater monitoring of fish farms and cleaning nets. If underwater drones are used for management of fish farms, underwater imaging, monitoring and cleaning of fish farms' nets can be possible. By using this technology, data can be collected by detecting changes in the environment of a fish farm and responding to changes that occur within a fish farm based on the data. In addition, the establishment of an integrated control system will enable to build efficient and stable smart farms.

Smart Fish Farm Depth Control System (스마트 양식장 깊이 제어 시스템)

  • Kim, Kyeong-Su;Kim, Eun-Hye;Lee, Yong-Baek
    • Proceedings of the Korean Society of Computer Information Conference
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    • 2019.01a
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    • pp.229-230
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    • 2019
  • 본 논문에서는 해수면 온도에 따라 양식장의 깊이를 연장하여 어족자원을 보호하기 위한 스마트 양식장 깊이 제어 시스템을 제안한다. 가두리 양식장의 경우 이상 고온현상에 의하여 해수면 온도가 상승하면 어족자원의 집단폐사를 가져온다. 해수면 온도가 어족자원의 폐사를 유발할 수 있는 온도에 이르면 사용자에게 통지하고 양식장의 깊이를 5m 연장시켜 어족자원이 뜨거운 해수면을 피할 수 있도록 하며, 어족자원의 수확을 필요로 할 때에는 양식장을 해수면방향으로 당길 수 있는 시스템이다.

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Deep Learning based Fish Object Detection and Tracking for Smart Aqua Farm (스마트 양식을 위한 딥러닝 기반 어류 검출 및 이동경로 추적)

  • Shin, Younghak;Choi, Jeong Hyeon;Choi, Han Suk
    • The Journal of the Korea Contents Association
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    • v.21 no.1
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    • pp.552-560
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    • 2021
  • Currently, the domestic aquaculture industry is pursuing smartization, but it is still proceeding with human subjective judgment in many processes in the aquaculture stage. The prerequisite for the smart aquaculture industry is to effectively grasp the condition of fish in the farm. If real-time monitoring is possible by identifying the number of fish populations, size, pathways, and speed of movement, various forms of automation such as automatic feed supply and disease determination can be carried out. In this study, we proposed an algorithm to identify the state of fish in real time using underwater video data. The fish detection performance was compared and evaluated by applying the latest deep learning-based object detection models, and an algorithm was proposed to measure fish object identification, path tracking, and moving speed in continuous image frames in the video using the fish detection results. The proposed algorithm showed 92% object detection performance (based on F1-score), and it was confirmed that it effectively tracks a large number of fish objects in real time on the actual test video. It is expected that the algorithm proposed in this paper can be effectively used in various smart farming technologies such as automatic feed feeding and fish disease prediction in the future.

Fish Activity State based an Intelligent Automatic Fish Feeding Model Using Fuzzy Inference (퍼지추론을 이용한 어류 활동상태 기반의 지능형 자동급이 모델)

  • Choi, Han Suk;Choi, Jeong Hyeon;Kim, Yeong-ju;Shin, Younghak
    • The Journal of the Korea Contents Association
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    • v.20 no.10
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    • pp.167-176
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    • 2020
  • The automated fish feed system currently used in Korea supplies a certain amounts of feed to water tanks at a certain time. This automated system can reduce the labor cost of managing aqua farms, but it is very difficult to control intelligently and appropriately the amount of expensive feed that is critical to aqua farm productivity. In this paper, we propose the FIIFF Inference Model( Fuzzy Inference-based Intelligent Fish Feeding Model) that can solves the problems of these existing automatic fish feeding devices and maximizes the efficiency of feed supply while properly maintaining the growth rate of fish in aqua farms. The proposed FIIFF inference model has the advantage of being able to control feed amounts appropriately since it computes the amount of feed using the current water environments and fish activity state of the aqua farms. The result of the feed amount yield experiment with the proposed FIIFF Inference Model represents the effect of saving 14.8% over the eight months of actual feed amount in the aqua farm.