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Data fusion of multi-sensor for IOT precise measurement based on improved PSO algorithms

机译:基于改进PSO算法的物联网精确测量多传感器数据融合

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摘要

This work proposes an improved particle swarm optimization (PSO) method to increase the measurement precision of multi-sensors data fusion in the Internet of Things (IOT) system. Critical IOT technologies consist of a wireless sensor network, RFID, various sensors and an embedded system. For multi-sensor data fusion computing systems, data aggregation is a main concern and can be formulated as a multiple dimensional based on particle swarm optimization approaches. The proposed improved PSO method can locate the minimizing solution to the objective cost function in multiple dimensional assignment themes, which are considered in particle swarm initiation, cross rules and mutation rules. The optimum seclusion can be searched for efficiently with respect to reducing the search range through validated candidate measures. Experimental results demonstrate that the proposed improved PSO method for multi-sensor data fusion is highly feasible for IOT system applications.
机译:这项工作提出了一种改进的粒子群优化(PSO)方法,以提高物联网(IOT)系统中多传感器数据融合的测量精度。关键的物联网技术包括无线传感器网络,RFID,各种传感器和嵌入式系统。对于多传感器数据融合计算系统,数据聚合是一个主要问题,可以基于粒子群优化方法将其表示为多维。提出的改进的粒子群优化算法可以在多维粒子群分配主题,交叉规则和变异规则中考虑多维分配主题中目标成本函数的最小化解。相对于通过验证的候选度量来减小搜索范围,可以有效地搜索最佳隔离。实验结果表明,提出的改进的PSO方法用于多传感器数据融合对于IOT系统应用是高度可行的。

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