无线传感器网络中的机器学习:回顾

Aina Mehta, Jasminder Kaur Sandhu, Luxmi Sapra
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引用次数: 4

摘要

无线传感器网络由空间分散的自主传感器节点组成,这些节点从环境中收集数据并转发给另一个网关进行处理。这些网络控制着随时间频繁变化的动态环境。这种有效的行为是由温度、声音、光线、事件等外部参数创建或初始化的。为了适应这种情况,这些网络采用了机器学习技术。在本文中,介绍了可以应用于这些网络的机器学习技术。这些网络由于其低成本、微小和移动性等特点,在一些实际应用中是最受欢迎的技术。此外,建议网络设计者为必要的应用开发适当的机器学习解决方案的相关指南。
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Machine Learning in Wireless Sensor Networks: A Retrospective
Wireless Sensor Networks consist of spatially dispersed autonomous sensor nodes which collect data from the environment and forward to the other gateway for processing. These network controls the dynamic environment that changes frequently with time. This effectual behavior is created or initialized by outward parameters such as temperature, sound, light, events. To adjust with such situations these networks follow Machine Learning techniques. In this paper, a review on the Machine Learning techniques that can be applied on these networks is presented. These networks are the most trending technologies for some real applications because of its features such as low-cost, tiny and mobility. Further, a relative guide to the network designers is suggested for developing appropriate Machine Learning solutions for requisite application.
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