4.7 Review

Machine Learning for Advanced Wireless Sensor Networks: A Review

Journal

IEEE SENSORS JOURNAL
Volume 21, Issue 11, Pages 12379-12397

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2020.3035846

Keywords

Wireless sensor networks; Sensors; Supervised learning; Unsupervised learning; Support vector machines; Neural networks; Security; Wireless sensor networks; machine learning; deep learning

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Wireless sensor networks face technical challenges when deployed in real environments, with machine learning techniques, particularly deep learning, being applied recently to address dynamic situations. ML techniques offer benefits such as reduced computational complexity and increased energy efficiency, but large training time and dataset can lead to high energy consumption.
Wireless sensor networks (WSNs) are typically used with dynamic conditions of task-related environments for sensing(monitoring) and gathering of raw sensor data for subsequent forwarding to a base station. In order to deploy WSNs in real environments, a variety of technical challenges must be addressed. With traditional techniques developed for a specific task, it is hard to react in dynamic situations beyond the scope of the intended task. As a solution to this problem, machine learning (ML) techniques that are able to handle dynamic situations with successful learning process have been applied lately in WSNs. Particularly, deep learning (DL) techniques, a class of ML techniques characterized by the use of deep neural network, are used for WSNs to extract higher level features from raw sensor data. A range of benefits obtained from ML techniques applied to WSNs can be described as reduced computational complexity, increased feasibility in finding optimal solutions, increased energy efficiency, etc. On the other hand, it is found from our survey that large training time and large dataset to get acceptable performance are accompanied with large energy consumption which is not favorable for resource-restrained WSNs. Reviews on the applications of ML techniques in WSNs appeared in the literature. However, few reviews have dealt with the applications of DL techniques in WSNs. In this review, recent developments of ML techniques for WSNs are presented with much emphasis on DL techniques. The DL techniques developed for various applications in WSNs are addressed together with their respective deep neural network architectures.

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