Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor Network

In this paper, we propose an energy-saving framework for Wireless Sensor Networks (WSN) using machine learning techniques and meta-heuristics according to environmental states. Unlike conventional topology-based energy-saving methods, we focus on the energy savings of the sensor node in the WSN itse...

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Main Authors: Jaewoong Kang, Jongmo Kim, Minhwan Kim, Mye Sohn
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9060934/
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spelling doaj-1bcbd04aac1e4cc381e6351ddef5d59c2021-03-30T01:49:50ZengIEEEIEEE Access2169-35362020-01-018693596936710.1109/ACCESS.2020.29865079060934Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor NetworkJaewoong Kang0https://orcid.org/0000-0002-7194-5920Jongmo Kim1Minhwan Kim2Mye Sohn3https://orcid.org/0000-0002-1951-3493Department of Industrial Engineering, Sungkyunkwan University, Suwon, South KoreaDepartment of Industrial Engineering, Sungkyunkwan University, Suwon, South KoreaDepartment of Industrial Engineering, Sungkyunkwan University, Suwon, South KoreaDepartment of Industrial Engineering, Sungkyunkwan University, Suwon, South KoreaIn this paper, we propose an energy-saving framework for Wireless Sensor Networks (WSN) using machine learning techniques and meta-heuristics according to environmental states. Unlike conventional topology-based energy-saving methods, we focus on the energy savings of the sensor node in the WSN itself. We attempt two-phase energy savings on the sensor nodes. First, network-level energy saving, called N1-energy saving, is achieved by finding the minimum sensor nodes needed to ensure the performance of the WSN. To find the minimum sensor nodes, we apply hybrid filter-wrapper feature selection, a typical machine learning method, to find the best feature subsets. Second, we achieve energy savings of the WSNs by manipulating the sampling rate and the transmission interval of the sensor nodes to achieve node-level energy saving, which is referred to as N2-energy saving. To do so, we propose an optimization method based on Simulated Annealing (SA), which is an efficient method that can find the approximate global optimum in datasets where it is difficult to collect precise values due to noise problems, such as sensor data. Some numerical examples are shown with respect to several control parameters. We conduct several experiments with real-world sensor data in a smart home to prove the superiority of the proposed method. Through these experiments, the sensor nodes are shown to be selected by a method performing N1-energy savings effectively while minimizing the loss of performance compared to the original WSN. In addition, we demonstrate that N2-energy savings can be achieved while maintaining the QoS of the WSN through an optimal sampling rate and transmission interval determined by the SA.https://ieeexplore.ieee.org/document/9060934/Wireless sensor networkenergy-savingmachine learninghybrid filter-wrapper method
collection DOAJ
language English
format Article
sources DOAJ
author Jaewoong Kang
Jongmo Kim
Minhwan Kim
Mye Sohn
spellingShingle Jaewoong Kang
Jongmo Kim
Minhwan Kim
Mye Sohn
Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor Network
IEEE Access
Wireless sensor network
energy-saving
machine learning
hybrid filter-wrapper method
author_facet Jaewoong Kang
Jongmo Kim
Minhwan Kim
Mye Sohn
author_sort Jaewoong Kang
title Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor Network
title_short Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor Network
title_full Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor Network
title_fullStr Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor Network
title_full_unstemmed Machine Learning-Based Energy-Saving Framework for Environmental States-Adaptive Wireless Sensor Network
title_sort machine learning-based energy-saving framework for environmental states-adaptive wireless sensor network
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description In this paper, we propose an energy-saving framework for Wireless Sensor Networks (WSN) using machine learning techniques and meta-heuristics according to environmental states. Unlike conventional topology-based energy-saving methods, we focus on the energy savings of the sensor node in the WSN itself. We attempt two-phase energy savings on the sensor nodes. First, network-level energy saving, called N1-energy saving, is achieved by finding the minimum sensor nodes needed to ensure the performance of the WSN. To find the minimum sensor nodes, we apply hybrid filter-wrapper feature selection, a typical machine learning method, to find the best feature subsets. Second, we achieve energy savings of the WSNs by manipulating the sampling rate and the transmission interval of the sensor nodes to achieve node-level energy saving, which is referred to as N2-energy saving. To do so, we propose an optimization method based on Simulated Annealing (SA), which is an efficient method that can find the approximate global optimum in datasets where it is difficult to collect precise values due to noise problems, such as sensor data. Some numerical examples are shown with respect to several control parameters. We conduct several experiments with real-world sensor data in a smart home to prove the superiority of the proposed method. Through these experiments, the sensor nodes are shown to be selected by a method performing N1-energy savings effectively while minimizing the loss of performance compared to the original WSN. In addition, we demonstrate that N2-energy savings can be achieved while maintaining the QoS of the WSN through an optimal sampling rate and transmission interval determined by the SA.
topic Wireless sensor network
energy-saving
machine learning
hybrid filter-wrapper method
url https://ieeexplore.ieee.org/document/9060934/
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