Development of Energy-efficient Sensor Networks by Minimizing Sensors Numbers with a Machine Learning Model

Zhishu Shen, K. Yokota, A. Tagami, T. Higashino
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引用次数: 3

Abstract

With the increasing demand to construct sensor networks for a smart IoT (Internet of Things) world, numerous sensors with sensing and communication capabilities are expected to be deployed in the future. Thanks to the development of hardware manufacture technology, relatively small IoT smart sensors are now commercially available and cost-effective. However, the total power required by operating these sensors is expected to be enormous, due to their large number and frequent activity. Removing “unneeded sensors” is the most direct way to reduce the power consumption of sensor networks. Here, “unneeded sensors” refers to those that can be placed in sleep mode, or even be removed from the network topology entirely, without serious impact on the overall networks data processing performance. In this paper, we report the development of an energy-efficient sensor network by using a machine learning model to determine the actual necessity of all the sensors in a sensor network. Machine learning model is introduced to identify unneeded sensors by comparing the data from neighboring sensors to that from the potentially unneeded ones. For identifying unneeded sensors, different strategies with different computational complexity are also proposed. Numerical experiments conducted in two real indoor environments verify that our proposed scheme can reduce the total number of active sensors by around 1/3, while maintaining more than 90% of the original high monitoring performance of the sensor network.
基于机器学习模型最小化传感器数量的节能传感器网络开发
随着构建智能物联网(IoT)世界传感器网络的需求不断增加,预计未来将部署大量具有传感和通信功能的传感器。由于硬件制造技术的发展,相对较小的物联网智能传感器现在已经商业化并且具有成本效益。然而,由于这些传感器数量众多且活动频繁,因此运行这些传感器所需的总功率预计将是巨大的。去除“不需要的传感器”是降低传感器网络功耗的最直接方法。这里的“不需要的传感器”是指可以将其置于休眠模式,甚至完全从网络拓扑中移除,而不会对整体网络数据处理性能产生严重影响的传感器。在本文中,我们报告了一个节能传感器网络的发展,通过使用机器学习模型来确定传感器网络中所有传感器的实际必要性。引入机器学习模型,通过比较相邻传感器和潜在不需要传感器的数据来识别不需要的传感器。对于识别不需要的传感器,提出了不同计算复杂度的策略。在两个真实室内环境中进行的数值实验验证了我们提出的方案可以将有源传感器总数减少约1/3,同时保持传感器网络原有高监控性能的90%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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