Machine learning algorithms for wireless sensor networks: A survey

•The survey of machine learning algorithms for WSNs from the period 2014 to March 2018.•Machine learning (ML) for WSNs with their advantages, features and limitations.•A statistical survey of ML-based algorithms for WSNs.•Reasons to choose a ML techniques to solve issues in WSNs.•The survey proposes...

Full description

Saved in:
Bibliographic Details
Published in:Information fusion Vol. 49; pp. 1 - 25
Main Authors: Praveen Kumar, D., Amgoth, Tarachand, Annavarapu, Chandra Sekhara Rao
Format: Journal Article
Language:English
Published: Elsevier B.V 01-09-2019
Subjects:
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:•The survey of machine learning algorithms for WSNs from the period 2014 to March 2018.•Machine learning (ML) for WSNs with their advantages, features and limitations.•A statistical survey of ML-based algorithms for WSNs.•Reasons to choose a ML techniques to solve issues in WSNs.•The survey proposes a discussion on open issues. Wireless sensor network (WSN) is one of the most promising technologies for some real-time applications because of its size, cost-effective and easily deployable nature. Due to some external or internal factors, WSN may change dynamically and therefore it requires depreciating dispensable redesign of the network. The traditional WSN approaches have been explicitly programmed which make the networks hard to respond dynamically. To overcome such scenarios, machine learning (ML) techniques can be applied to react accordingly. ML is the process of self-learning from the experiences and acts without human intervention or re-program. The survey of the ML techniques for WSNs is presented in [1], covering period of 2002–2013. In this survey, we present various ML-based algorithms for WSNs with their advantages, drawbacks, and parameters effecting the network lifetime, covering the period from 2014–March 2018. In addition, we also discuss ML algorithms for synchronization, congestion control, mobile sink scheduling and energy harvesting. Finally, we present a statistical analysis of the survey, the reasons for selection of a particular ML techniques to address an issue in WSNs followed by some discussion on the open issues.
ISSN:1566-2535
1872-6305
1872-6305
DOI:10.1016/j.inffus.2018.09.013