• Title/Summary/Keyword: 양식장 환경 데이터

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Monitoring System for Aqua Farm Through Auto-sensing of Water Quality and Environment Data (수질 환경 데이터 자동센싱을 통한 수산 양식장 모니터링 시스템)

  • Cho, je-bong;Yoon, geon-ju;Choi, han-suk
    • Proceedings of the Korea Contents Association Conference
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    • 2019.05a
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    • pp.415-416
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    • 2019
  • 본 연구에서는 수산 양식에 커다란 영향을 미치는 수질 환경 데이터를 자동으로 센싱 수집하고, 지능적으로 수질 환경 데이터를 분석하기위하여 양식장의 수질환경을 효율적으로 관리하고, 양식장 연료비를 최소화할 수 있는 스마트 아쿠아 양식장 통합관제 모니터링 시스템을 제안한다.

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Design of the Environmental Data Monitoring and Prediction System for the Fish Farms (양식장 환경 데이터 모니터링 및 예측 시스템의 설계)

  • Rijayanti, Rita;Kadam, Ashwini;Wahyutama, Aria B.;Lee, Bonyeong;Hwang, Mintae
    • Proceedings of the Korean Institute of Information and Commucation Sciences Conference
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    • 2021.05a
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    • pp.178-180
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    • 2021
  • In this paper, we design a system to monitor environmental data in fish farms in real-time and provide machine learning-based prediction services to prevent damage on fish farms caused by changes in the sea environment. The proposed system will install an IoT device module consisting of sensors that can measure hydrogen concentration, salinity, dissolved oxygen, and water temperature, which can be transferred to Cloud DB using LTE or LoRa communication technology and then monitor the real-time condition through a web or mobile application. In addition, it has a function to prepare for changes within the environment of fish farms by applying machine learning-based prediction technology using collected data.

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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.

Unmanned fish-farm management system using IoT and AI (IoT와 AI를 이용한 무인 양식장 관리 시스템)

  • Jeong, Hye-Ri;Kim, Hye-Min;Choi, Sang-Min;Kwon, Lam;Park, Eun-Chan
    • Proceedings of the Korea Information Processing Society Conference
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    • 2019.05a
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    • pp.711-713
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    • 2019
  • 본 논문은 기존의 단순 감지 센서형 양식장 관리 시스템을 벗어나기 위해 IoT와 AI기술을 이용한 무인 양식장 관리 시스템 개발에 관한 것이다. 국내 양식장 상황에 맞는 유해 조류와 한국형 어선 이미지를 학습시켜 실시간 카메라 영상을 통해 유해 및 무해 물체를 판단하도록 하였으며 이에 따라 적절한 퇴치 기능을 수행하도록 하였다. 또한 현존하는 양식장 관리 시스템이 환경 관리 시스템과 감시 및 퇴치 시스템으로 이분화 된 경향을 보여 하나로 통합하는 과정의 필요성이 대두되었다. 따라서 감시 및 퇴치 기능 수행뿐만 아니라 양식장 내 환경 데이터를 실시간으로 받아오고 사용자가 단말기를 통해 양식장 상황을 확인 및 관리가 가능하도록 구현하고자 하였다.

Implementation and Performance Evaluation of Environmental Data Monitoring System for the Fish Farm (양식장 환경 데이터 모니터링 시스템의 구현 및 성능 평가)

  • Wahyutama, Aria Bisma;Hwang, Mintae
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.26 no.5
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    • pp.743-754
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    • 2022
  • This paper contains the results of the development and performance evaluation of the environmental data monitoring system for the fish farm. For the hardware development, the analogue sensor is used to collect dissolved oxygen, pH, salinity, and temperature of the fish farm water, and the digital sensor is used for collecting ambient temperature, humidity, and location information via a GPS module to be sent to cloud-based Firebase DB. A set of LoRa transmitters and receivers is used as a communication module to upload the collected data. The data stored in Firebase is retrieved as a graph on a web and mobile application to monitor the environmental data changes in real-time. A notification will be delivered if the collected data is outside the determined optimal value. To evaluate the performance of the developed system, a response time from hardware modules to web and mobile applications is ranging from 6.2 to 6.85 seconds, which indicates satisfactory results.

Application of Bayesian network for farmed eel safety inspection in the production stage (양식뱀장어 생산단계 안전성 조사를 위한 베이지안 네트워크 모델의 적용)

  • Seung Yong Cho
    • Food Science and Preservation
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    • v.30 no.3
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    • pp.459-471
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    • 2023
  • The Bayesian network (BN) model was applied to analyze the characteristic variables that affect compliance with safety inspections of farmed eel during the production stage, using the data from 30,063 cases of eel aquafarm safety inspection in the Integrated Food Safety Information Network (IFSIN) from 2012 to 2021. The dataset for establishing the BN model included 77 non-conforming cases. Relevant HACCP data, geographic information about the aquafarms, and environmental data were collected and mapped to the IFSIN data to derive explanatory variables for nonconformity. Aquafarm HACCP certification, detection history of harmful substances during the last 5 y, history of nonconformity during the last 5 y, and the suitability of the aquatic environment as determined by the levels of total coliform bacteria and total organic carbon were selected as the explanatory variables. The highest achievable eel aquafarm noncompliance rate by manipulating the derived explanatory variables was 24.5%, which was 94 times higher than the overall farmed eel noncompliance rate reported in IFSIN between 2017 and 2021. The established BN model was validated using the IFSIN eel aquafarm inspection results conducted between January and August 2022. The noncompliance rate in the validation set was 0.22% (15 nonconformances out of 6,785 cases). The precision of BN model prediction was 0.1579, which was 71.4 times higher than the non-compliance rate of the validation set.

Water quality data analysis for development of artificial intelligence-based fish farm management system (인공지능 기반(ML) 양식장 관리시스템 개발을 위한 수질 데이터 분석)

  • Hyun Sim;Heung Sup Sim
    • Proceedings of the Korean Society of Computer Information Conference
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    • 2023.01a
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    • pp.205-208
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    • 2023
  • 양식장에서 최적의 생육환경을 유지할 수 있는 제어시스템 개발을 위해 수질에 영향을 미치는 요인들의 상관관계 분석을 위한 머신러닝 모델을 개발하고자 한다. 데이터간의 상관관계 분석 및 예측모델 생성을 위해 알고리즘의 결정계수와 MSE, RMSE 등의 수치를 통하여 데이터의 적합성을 검증하고자 한다.

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The Comparative Analysis of Water Quality Environment Data of Wando Onshore Seawater Farm and Tidal Observatory (완도 육상 해수 양식장과 조위관측소의 수질 환경 데이터 비교 분석)

  • Ye, Seoung-Bin;Kwon, In-Yeong;Kim, Tae-Ho;Park, Jeong-Seon;Han, Soon-Hee;Ceong, Hee-Taek
    • The Journal of the Korea institute of electronic communication sciences
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    • v.16 no.5
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    • pp.957-968
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    • 2021
  • To improve the data on reliability of the onshore fish farm water quality monitoring system and operate the system efficiently, the water quality data of the onshore seawater fish farms which are progressing test operation, and the marine environmental information network(Wando tidal station) were compared and analyzed. Furthermore, data validation, data range filters, and data displacement checks were applied to analyze the data in a way that eliminates the data errors in water quality monitoring systems and increases the reliability of measurement data.

A study on machine learning-based anomaly detection algorithm using current data of fish-farm pump motor (양식장 펌프 모터 전류 데이터를 이용한 머신러닝 기반 이상 감지 알고리즘에 관한 연구)

  • Sae-yong Park;Tae Uk chang;Taeho Im
    • Journal of Internet Computing and Services
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    • v.24 no.2
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    • pp.37-45
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    • 2023
  • In line with the 4th Industrial Revolution, facility maintenance technologies for building smart factories are receiving attention and are being advanced. In addition, technology is being applied to smart farms and smart fisheries following smart factories. Among them, in the case of a recirculating aquaculture system, there is a motor pump that circulates water for a stable quality environment in the tank. Motor pump maintenance activities for recirculating aquaculture system are carried out based on preventive maintenance and data obtained from vibration sensor. Preventive maintenance cannot cope with abnormalities that occur before prior planning, and vibration sensors are affected by the external environment. This paper proposes an anomaly detection algorithm that utilizes ADTK, a Python open source, for motor pump anomaly detection based on data collected through current sensors that are less affected by the external environment than noise, temperature and vibration sensors.

Statistical Analysis of Water Quality in a Land-based Fish Farm (육상 수조식 양식장 수질 환경의 통계적 분석)

  • Kim, Hae-Ran;Ceong, Hee-Taek
    • The Journal of the Korea institute of electronic communication sciences
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    • v.5 no.6
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    • pp.637-644
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    • 2010
  • The purpose of this study is to analyze characteristics of water quality factor scientifically and develop the multiple regression model predicting dissolved oxygen to save periodic replacement costs for dissolved oxygen sensor. Correlation analysis using the environmental data obtained from 2 different land-based fish farms of the Geogeum-do, Geheung-gun coastal area during the periods from November 2008 to January 2009 shows that water temperature was negatively correlated with dissolved oxygen and pH butpH was positively correlated with salinity and dissolved oxygen. The information of Keumho fish farm in 2009 is presented by the tables which are monthly statistics of water quality factors and seasonable difference by the Duncan's post-test. Also we developed multiple regression model predicting dissolved oxygen, the usefulness of which was verified by the comparison graph between estimates and actual observations. The developed regression model shows that seawater temperature and salinity give negative affect to dissolved oxygen while pH gives positive affect to it. Lastly the seawater temperature has much higher explanatory power than pH factor.