无线传感器网络机器学习算法概述

Pritam Nanda, Sasmita Tripathy
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引用次数: 0

摘要

无线传感器网络(WSN)体积小、成本低、安装简单,因此特别适合实时应用。然而,WSN 可能会因各种内部或外部情况而需要修改或重新设计,这对于传统的、明确规划的 WSN 系统来说是难以管理的。机器学习(ML)方法可用于解决这一问题。ML 使网络从经验中学习并适应环境成为可能,而无需重新编程或人工干预。在此次修订的研究中,我们回顾了 2014 年至 2018 年 3 月期间基于 ML 的 WSN 算法,强调了它们的优点、缺点以及对网络寿命的影响。我们还讨论了用于能量收集、拥塞控制、移动汇调度和同步的机器学习技术。调查讨论了针对特定 WSN 困难选择某些机器学习方法的原因,并对所获得的数据进行了统计分析。我们还讨论了该领域的一些未决问题。关键词无线传感器网络 机器学习 能源效率 网络寿命 数据聚合
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AN OVERVIEW OF MACHINE LEARNING ALGORITHMS FOR WIRELESS SENSOR NETWORKS
Wireless sensor networks (WSNs) are particularly desirable for real-time applications because of their small size, low cost, and simplicity of installation. Nevertheless, WSNs may need to be modified or redesigned due to a variety of internal or external circumstances, which is difficult for conventional, explicitly planned WSN systems to manage. Machine learning (ML) approaches can be used to solve this problem. ML makes it possible for networks to learn from their experiences and adapt without requiring reprogramming or human intervention.A prior investigation [1] examined machine learning methods for WSNs between 2002 and 2013. We review ML-based algorithms for WSNs from 2014 to March 2018 in this revised study, stressing their advantages, drawbacks, and effects on network lifetime. We also discuss machine learning techniques for energy harvesting, congestion control, mobile sink scheduling, and synchronization. The survey discusses why certain ML approaches are selected for particular WSN difficulties and offers a statistical analysis of the data obtained. We also talk about some outstanding issues in the sector. Keywords: Wireless sensor networks, Machine learning, Energy efficiency, Network lifetime, Data aggregation
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