IoT-based prediction model for aquaponic fish pond water quality using multiscale feature fusion with convolutional autoencoder and GRU networks
The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of providing efficient solutions through communication technologies. IoT systems are used for enabling connection between various devices based on the...
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| Vydané v: | Scientific reports Ročník 15; číslo 1; s. 1925 - 21 |
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| Hlavní autori: | , , , , , , |
| Médium: | Journal Article |
| Jazyk: | English |
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London
Nature Publishing Group UK
14.01.2025
Nature Publishing Group Nature Portfolio |
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| ISSN: | 2045-2322, 2045-2322 |
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| Abstract | The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of providing efficient solutions through communication technologies. IoT systems are used for enabling connection between various devices based on the ability to gather and collect information. Furthermore, IoT systems are designed to address the environment and the automation industry. The threats associated with aquaponics farming are managed through an IoT-based smart water monitoring framework, which has become increasingly relevant in recent days. Therefore, this approach is crucial for achieving a remarkable improvement in order to increase the productivity rate and yield. The quality of water directly affects the rate of growth, efficiency of feed, and the overall health rate of the fish, plants, and bacteria. Insufficient knowledge about species selection poses a significant challenge in aquaponics farming, as it heavily relies on the water quality parameters. To address the challenges of conventional models, we have developed an effective IoT-based water quality prediction model, more specifically designed for aquaponic fish ponds. The data needed to perform the developed water quality prediction model will be acquired from “a simple dataset of aquaponic fish pond IoT” database. After that, these data are forwarded to the feature extraction phase. The weighted features, DBN (Deep Belief Network) features, and the original features are achieved in the feature extraction stage. The weighted features are obtained using the Revamped Fitness-based Mother Optimization Algorithm (RF-MOA). Subsequently, these extracted features are fed into the Multi-Scale feature fusion-based Convolutional Autoencoder with a Gated Recurrent Unit (MS-CAGRU) network for predicting the water quality. Thus, the water quality predicted data is obtained. The proposed model integrates GRU networks with a convolutional autoencoder to improve water quality prediction by capturing trends and managing temporal dependencies. It enhances accuracy by analysing key parameters and employing techniques to reduce overfitting. The effectiveness of the proposed system is evaluated in comparison to the traditional models using some evaluation measures. |
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| AbstractList | The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of providing efficient solutions through communication technologies. IoT systems are used for enabling connection between various devices based on the ability to gather and collect information. Furthermore, IoT systems are designed to address the environment and the automation industry. The threats associated with aquaponics farming are managed through an IoT-based smart water monitoring framework, which has become increasingly relevant in recent days. Therefore, this approach is crucial for achieving a remarkable improvement in order to increase the productivity rate and yield. The quality of water directly affects the rate of growth, efficiency of feed, and the overall health rate of the fish, plants, and bacteria. Insufficient knowledge about species selection poses a significant challenge in aquaponics farming, as it heavily relies on the water quality parameters. To address the challenges of conventional models, we have developed an effective IoT-based water quality prediction model, more specifically designed for aquaponic fish ponds. The data needed to perform the developed water quality prediction model will be acquired from "a simple dataset of aquaponic fish pond IoT" database. After that, these data are forwarded to the feature extraction phase. The weighted features, DBN (Deep Belief Network) features, and the original features are achieved in the feature extraction stage. The weighted features are obtained using the Revamped Fitness-based Mother Optimization Algorithm (RF-MOA). Subsequently, these extracted features are fed into the Multi-Scale feature fusion-based Convolutional Autoencoder with a Gated Recurrent Unit (MS-CAGRU) network for predicting the water quality. Thus, the water quality predicted data is obtained. The proposed model integrates GRU networks with a convolutional autoencoder to improve water quality prediction by capturing trends and managing temporal dependencies. It enhances accuracy by analysing key parameters and employing techniques to reduce overfitting. The effectiveness of the proposed system is evaluated in comparison to the traditional models using some evaluation measures.The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of providing efficient solutions through communication technologies. IoT systems are used for enabling connection between various devices based on the ability to gather and collect information. Furthermore, IoT systems are designed to address the environment and the automation industry. The threats associated with aquaponics farming are managed through an IoT-based smart water monitoring framework, which has become increasingly relevant in recent days. Therefore, this approach is crucial for achieving a remarkable improvement in order to increase the productivity rate and yield. The quality of water directly affects the rate of growth, efficiency of feed, and the overall health rate of the fish, plants, and bacteria. Insufficient knowledge about species selection poses a significant challenge in aquaponics farming, as it heavily relies on the water quality parameters. To address the challenges of conventional models, we have developed an effective IoT-based water quality prediction model, more specifically designed for aquaponic fish ponds. The data needed to perform the developed water quality prediction model will be acquired from "a simple dataset of aquaponic fish pond IoT" database. After that, these data are forwarded to the feature extraction phase. The weighted features, DBN (Deep Belief Network) features, and the original features are achieved in the feature extraction stage. The weighted features are obtained using the Revamped Fitness-based Mother Optimization Algorithm (RF-MOA). Subsequently, these extracted features are fed into the Multi-Scale feature fusion-based Convolutional Autoencoder with a Gated Recurrent Unit (MS-CAGRU) network for predicting the water quality. Thus, the water quality predicted data is obtained. The proposed model integrates GRU networks with a convolutional autoencoder to improve water quality prediction by capturing trends and managing temporal dependencies. It enhances accuracy by analysing key parameters and employing techniques to reduce overfitting. The effectiveness of the proposed system is evaluated in comparison to the traditional models using some evaluation measures. Abstract The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of providing efficient solutions through communication technologies. IoT systems are used for enabling connection between various devices based on the ability to gather and collect information. Furthermore, IoT systems are designed to address the environment and the automation industry. The threats associated with aquaponics farming are managed through an IoT-based smart water monitoring framework, which has become increasingly relevant in recent days. Therefore, this approach is crucial for achieving a remarkable improvement in order to increase the productivity rate and yield. The quality of water directly affects the rate of growth, efficiency of feed, and the overall health rate of the fish, plants, and bacteria. Insufficient knowledge about species selection poses a significant challenge in aquaponics farming, as it heavily relies on the water quality parameters. To address the challenges of conventional models, we have developed an effective IoT-based water quality prediction model, more specifically designed for aquaponic fish ponds. The data needed to perform the developed water quality prediction model will be acquired from “a simple dataset of aquaponic fish pond IoT” database. After that, these data are forwarded to the feature extraction phase. The weighted features, DBN (Deep Belief Network) features, and the original features are achieved in the feature extraction stage. The weighted features are obtained using the Revamped Fitness-based Mother Optimization Algorithm (RF-MOA). Subsequently, these extracted features are fed into the Multi-Scale feature fusion-based Convolutional Autoencoder with a Gated Recurrent Unit (MS-CAGRU) network for predicting the water quality. Thus, the water quality predicted data is obtained. The proposed model integrates GRU networks with a convolutional autoencoder to improve water quality prediction by capturing trends and managing temporal dependencies. It enhances accuracy by analysing key parameters and employing techniques to reduce overfitting. The effectiveness of the proposed system is evaluated in comparison to the traditional models using some evaluation measures. The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of providing efficient solutions through communication technologies. IoT systems are used for enabling connection between various devices based on the ability to gather and collect information. Furthermore, IoT systems are designed to address the environment and the automation industry. The threats associated with aquaponics farming are managed through an IoT-based smart water monitoring framework, which has become increasingly relevant in recent days. Therefore, this approach is crucial for achieving a remarkable improvement in order to increase the productivity rate and yield. The quality of water directly affects the rate of growth, efficiency of feed, and the overall health rate of the fish, plants, and bacteria. Insufficient knowledge about species selection poses a significant challenge in aquaponics farming, as it heavily relies on the water quality parameters. To address the challenges of conventional models, we have developed an effective IoT-based water quality prediction model, more specifically designed for aquaponic fish ponds. The data needed to perform the developed water quality prediction model will be acquired from “a simple dataset of aquaponic fish pond IoT” database. After that, these data are forwarded to the feature extraction phase. The weighted features, DBN (Deep Belief Network) features, and the original features are achieved in the feature extraction stage. The weighted features are obtained using the Revamped Fitness-based Mother Optimization Algorithm (RF-MOA). Subsequently, these extracted features are fed into the Multi-Scale feature fusion-based Convolutional Autoencoder with a Gated Recurrent Unit (MS-CAGRU) network for predicting the water quality. Thus, the water quality predicted data is obtained. The proposed model integrates GRU networks with a convolutional autoencoder to improve water quality prediction by capturing trends and managing temporal dependencies. It enhances accuracy by analysing key parameters and employing techniques to reduce overfitting. The effectiveness of the proposed system is evaluated in comparison to the traditional models using some evaluation measures. |
| ArticleNumber | 1925 |
| Author | Selvarajan, Shitharth Selvam, Sinthia Panneer Manogaran, Nalini Seerangan, Koteeswaran Sundararajan, Suma Christal Mary Shankar, Yamini Bhavani Natesan, Deepa |
| Author_xml | – sequence: 1 givenname: Suma Christal Mary surname: Sundararajan fullname: Sundararajan, Suma Christal Mary organization: Department of Information Technology, Panimalar Engineering College – sequence: 2 givenname: Yamini Bhavani surname: Shankar fullname: Shankar, Yamini Bhavani organization: Department of Networking and Communications, School of Computing, College of Engineering and Technology, SRM Institute of Science and Technology (SRMIST) – sequence: 3 givenname: Sinthia Panneer surname: Selvam fullname: Selvam, Sinthia Panneer organization: Department of Biomedical Engineering, Saveetha Engineering College – sequence: 4 givenname: Nalini surname: Manogaran fullname: Manogaran, Nalini organization: S.A. Engineering College (Autonomous) – sequence: 5 givenname: Koteeswaran surname: Seerangan fullname: Seerangan, Koteeswaran organization: S.A. Engineering College (Autonomous) – sequence: 6 givenname: Deepa surname: Natesan fullname: Natesan, Deepa organization: Department of Networking and Communication, School of Computing, SRM Institute of Science and Technology – sequence: 7 givenname: Shitharth surname: Selvarajan fullname: Selvarajan, Shitharth email: ShitharthS@kdu.edu.et organization: Department of Computer Science, Kebri Dehar University, Department of Computer Science and Engineering, Chennai Institute of Technology, Centre for Research Impact & Outcome, Chitkara University |
| BackLink | https://www.ncbi.nlm.nih.gov/pubmed/39809886$$D View this record in MEDLINE/PubMed |
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| CitedBy_id | crossref_primary_10_1016_j_aquaculture_2025_742779 crossref_primary_10_1038_s41598_025_00269_y crossref_primary_10_3390_fi17050199 |
| Cites_doi | 10.1109/TEVC.2008.927706 10.1007/978-3-319-93025-1_4 10.1109/CSCI.2017.55 10.1109/ACCESS.2020.2971253 10.1109/ICNN.1995.488968 10.1109/HNICEM54116.2021.9731946 10.1007/978-981-19-7346-8_27 10.1515/jisys-2022-0017 10.1109/ACCESS.2021.3100490 10.1007/978-94-015-7744-1 10.1109/ACCESS.2023.3260089 10.1109/JIOT.2022.3171294 10.1109/ACCESS.2022.3221430 10.1016/j.aquaeng.2020.102122 10.1016/j.dib.2022.108400 10.1109/ACCESS.2022.3152818 10.1016/j.micpro.2023.104930 10.1016/j.compag.2020.105955 10.21203/rs.3.rs-2823925/v1 10.1109/ACCESS.2022.3180482 10.1109/ACCESS.2019.2949034 10.1109/MCI.2006.329691 10.1007/s11227-023-05389-8 10.1088/1742-6596/2559/1/012010 10.1109/ACCESS.2021.3102044 10.1109/JIOT.2021.3078166 10.1109/JSEN.2022.3227195 10.1016/j.mex.2023.102436 10.1016/j.istruc.2020.03.033 10.1109/ACCESS.2020.3001685 |
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| Keywords | Internet of things Aquaponic fish ponds Water quality prediction Multi-scale feature fusion-based convolutional autoencoder with gated recurrent unit Revamped fitness-based mother optimization algorithm |
| Language | English |
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| Snippet | The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means of... Abstract The Internet of Things (IoT)-based smart solutions have been developed to predict water quality and they are becoming an increasingly important means... |
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| SubjectTerms | 639/166 639/705 Animals Aquaculture - methods Aquaponic fish ponds Aquaponics Autoencoder Automation Convolutional Neural Networks Environmental Monitoring - methods Fish ponds Fishes Humanities and Social Sciences Internet of Things Multi-scale feature fusion-based convolutional autoencoder with gated recurrent unit multidisciplinary Ponds Prediction models Revamped fitness-based mother optimization algorithm Science Science (multidisciplinary) Water monitoring Water quality Water Quality - standards Water quality prediction |
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| Title | IoT-based prediction model for aquaponic fish pond water quality using multiscale feature fusion with convolutional autoencoder and GRU networks |
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