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Machine Learning for Advanced Wireless Sensor Networks: A Review

机译:高级无线传感器网络的机器学习:评论

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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.
机译:无线传感器网络(WSN)通常与任务相关环境的动态条件一起使用,用于感测(监视)和收集原始传感器数据,以便随后转发到基站。为了在真实环境中部署WSN,必须解决各种技术挑战。通过为特定任务开发的传统技术,很难在超出预期任务范围的动态情况下反应。作为解决这个问题的解决方案,能够在WSN中最近应用能够处理具有成功学习过程的动态情况的机器学习(ML)技术。特别地,深度学习(DL)技术,一类通过深神经网络的使用表征的ML技术,用于WSN从原始传感器数据中提取更高的级别特征。从应用于WSN的ML技术获得的一系列益处可被描述为降低的计算复杂性,增加了寻找最佳解决方案的可行性,另一方面,我们从我们的调查中找到了大型培训时间和大型数据集的调查获得可接受的性能伴随着大量的能耗,这对资源受限的WSN不利。文学中出现了WSN中ML技术的应用。但是,很少有评论已处理DL技术在WSN中的应用。在本文中,最新的WSN ML技术的开发是在重点上强调DL技术。为WSN中的各种应用开发的DL技术与各自的深神经网络架构一起解决。

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