An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor Networks

Water quality monitoring using Wireless Sensor Networks (WSNs) is essential in aquaculture water quality management. In the field of water quality monitoring, dissolved oxygen (DO) is a key parameter, and its prediction can provide decision support for aquaculture production, thereby reducing farmin...

Full description

Bibliographic Details
Main Authors: Liang Kuang, Pei Shi, Chi Hua, Beijing Chen, Hui Zhu
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9238033/
id doaj-4173606a22e5466fa8475e44b1c9ae28
record_format Article
spelling doaj-4173606a22e5466fa8475e44b1c9ae282021-03-30T04:05:23ZengIEEEIEEE Access2169-35362020-01-01819873019873910.1109/ACCESS.2020.30334559238033An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor NetworksLiang Kuang0https://orcid.org/0000-0002-2808-1688Pei Shi1https://orcid.org/0000-0002-1899-0810Chi Hua2Beijing Chen3Hui Zhu4School of IoT Engineering, Jiangsu Vocational College of Information Technology, Wuxi, ChinaBinjiang College, Nanjing University of Information Science & Technology, Wuxi, ChinaSchool of IoT Engineering, Jiangsu Vocational College of Information Technology, Wuxi, ChinaSchool of Computer and Software, Nanjing University of Information Science & Technology, Nanjing, ChinaSchool of Electronic and Information Engineering, South China University of Technology, Guangzhou, ChinaWater quality monitoring using Wireless Sensor Networks (WSNs) is essential in aquaculture water quality management. In the field of water quality monitoring, dissolved oxygen (DO) is a key parameter, and its prediction can provide decision support for aquaculture production, thereby reducing farming risk. However, it is difficult to build a precise prediction model, and existing methods of DO prediction neglect the importance of analyzing DO content. To address this problem, this study proposes a hybrid DO prediction model, named KIG-ELM, which is composed of K-means, improved genetic algorithm (IGA), and extreme learning machine (ELM). This model is based on edge computing architecture, in which data acquisition, processing and dissolved oxygen prediction are distributed in sensing nodes, routing nodes and server respectively. Sensing technique and clustering operation are applied in the process of data acquisition and processing. Meanwhile, an optimized extreme learning machine is implemented for DO prediction. We evaluate the efficiency and accuracy of proposed prediction approach in a practical aquaculture on massive water quality data. Experimental results show that the hybrid model achieves significant prediction results and can meet the needs of practical production and management.https://ieeexplore.ieee.org/document/9238033/Sensor networksdissolved oxygen predictionedge computingwater quality monitoringextreme learning machine
collection DOAJ
language English
format Article
sources DOAJ
author Liang Kuang
Pei Shi
Chi Hua
Beijing Chen
Hui Zhu
spellingShingle Liang Kuang
Pei Shi
Chi Hua
Beijing Chen
Hui Zhu
An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor Networks
IEEE Access
Sensor networks
dissolved oxygen prediction
edge computing
water quality monitoring
extreme learning machine
author_facet Liang Kuang
Pei Shi
Chi Hua
Beijing Chen
Hui Zhu
author_sort Liang Kuang
title An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor Networks
title_short An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor Networks
title_full An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor Networks
title_fullStr An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor Networks
title_full_unstemmed An Enhanced Extreme Learning Machine for Dissolved Oxygen Prediction in Wireless Sensor Networks
title_sort enhanced extreme learning machine for dissolved oxygen prediction in wireless sensor networks
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Water quality monitoring using Wireless Sensor Networks (WSNs) is essential in aquaculture water quality management. In the field of water quality monitoring, dissolved oxygen (DO) is a key parameter, and its prediction can provide decision support for aquaculture production, thereby reducing farming risk. However, it is difficult to build a precise prediction model, and existing methods of DO prediction neglect the importance of analyzing DO content. To address this problem, this study proposes a hybrid DO prediction model, named KIG-ELM, which is composed of K-means, improved genetic algorithm (IGA), and extreme learning machine (ELM). This model is based on edge computing architecture, in which data acquisition, processing and dissolved oxygen prediction are distributed in sensing nodes, routing nodes and server respectively. Sensing technique and clustering operation are applied in the process of data acquisition and processing. Meanwhile, an optimized extreme learning machine is implemented for DO prediction. We evaluate the efficiency and accuracy of proposed prediction approach in a practical aquaculture on massive water quality data. Experimental results show that the hybrid model achieves significant prediction results and can meet the needs of practical production and management.
topic Sensor networks
dissolved oxygen prediction
edge computing
water quality monitoring
extreme learning machine
url https://ieeexplore.ieee.org/document/9238033/
work_keys_str_mv AT liangkuang anenhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT peishi anenhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT chihua anenhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT beijingchen anenhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT huizhu anenhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT liangkuang enhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT peishi enhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT chihua enhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT beijingchen enhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
AT huizhu enhancedextremelearningmachinefordissolvedoxygenpredictioninwirelesssensornetworks
_version_ 1724182397573922816