A Survey of Machine Learning for Information Processing and Networking

Anna Recchi
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引用次数: 3

Abstract

The developments in hardware and wireless networks have brought humans to the brink of a new era in which small, wire-free devices will give them access to data at any time and any location and significantly contribute to the building of smart surroundings. Wireless Sensor Network (WSN) sensors collect data on the parameters they are used to detect. However, the performance of these sensors is constrained due to power and bandwidth limitations. In order to get beyond these limitations, they may use Machine Learning (ML) techniques. WSNs have witnessed a steady rise in the use of advanced ML techniques to distribute and improve network performance over the last decade. ML enthuses a plethora of real-world applications that maximize resource use and extend the network's life span. Furthermore, WSN designers have agreed that ML paradigms may be used for a broad range of meaningful tasks, such as localization and data aggregation as well as defect detection and security. This paper presents a survey of the ML models, as well as application in wireless networking and information processing. In addition, this paper evaluates the open challenges and future research directions of ML for WSNs.
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面向信息处理和网络的机器学习综述
硬件和无线网络的发展将人类带到了一个新时代的边缘,在这个新时代中,小型、无线设备将使他们能够随时随地访问数据,并为智能环境的建设做出重大贡献。无线传感器网络(WSN)传感器收集用于检测的参数的数据。然而,由于功率和带宽的限制,这些传感器的性能受到限制。为了超越这些限制,他们可能会使用机器学习(ML)技术。在过去的十年里,无线传感器网络在使用先进的机器学习技术来分发和提高网络性能方面稳步增长。ML激发了大量现实世界的应用程序,这些应用程序可以最大限度地利用资源并延长网络的生命周期。此外,WSN设计者已经同意ML范例可以用于广泛的有意义的任务,例如本地化和数据聚合以及缺陷检测和安全性。本文综述了机器学习模型及其在无线网络和信息处理中的应用。此外,本文还评估了面向wsn的机器学习存在的挑战和未来的研究方向。
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