In this paper, based on the spatio-temporal correlation of sensor nodes in the Internet of Things (IoT), a Spatio-temporal Scope information model (SSIM) is proposed to quantify the scope valuable information of sensor data, which decays with space and time, to guide the system for efficient decision making in the sensed region. A simple sensor monitoring system containing three sensor nodes is considered, and two optimal scheduling decision mechanisms, single-step optimal and long-term optimal decision mechanisms, are proposed for the optimization problem. For the single-step mechanism, the scheduling results are analyzed theoretically, and approximate numerical bounds on the node layout between some of the scheduling results are obtained, consistent with the simulation results. For the long-term mechanism, the scheduling results with different node layouts are obtained using the Q-learning algorithm. The performance of the two mechanisms is verified by conducting experiments using the relative humidity dataset, and the differences in performance of the two mechanisms are discussed; in addition, the limitations of the model are summarized.
翻译:本文根据物联网传感器节点(IoT)的时空关系,建议采用Spatio-时空范围信息模型(SSIM)来量化随时间和空间衰减的传感器数据的范围,指导在感测区域高效决策系统;考虑采用一个包含三个感应节点的简单传感器监测系统,并为优化问题提出两个最佳时间安排决定机制,即单步最佳和长期最佳决策机制;对于单步机制,根据模拟结果,对时间安排结果进行了理论分析,并获得了某些列表结果节点布局的大致数字界限;对于长期机制,采用Q-学习算法获得不同节点布局的时间安排结果;通过使用相对湿度数据集进行实验,对两种机制的性能进行验证,并讨论了两种机制的性能差异;此外,还概述了模型的局限性。