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Deep Mining of Redundant Data in Wireless Sensor Network Based on Genetic Algorithm

机译:基于遗传算法的无线传感器网络中冗余数据的深度挖掘

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摘要

Mining effective data from wireless sensor network node data is one of the main subjects in studies concerning wireless sensor network data processing. Wireless sensor network data are muli-dimensional and dynamic. Generally, data mining technology cannot satisfy the requirements of wireless sensor network. A large amount of accumulated and redundant wireless sensor network monitoring data reduces the efficiency of data processing. To solve the above problems, this study proposed a data mining algorithm, which integrated rough set algorithm and genetic algorithm to mine redundant data in node network data. The results of the simulated calculation based on MATLAB platform suggested that the identification rate, false accept rate and reject rate of the proposed algorithm were 94.65, 1.753 and 2.331%; compared to network data mining algorithm based on improved genetic algorithm, it has higher efficiency and accuracy in data mining. The algorithm could effectively excavate redundant data in wireless sensor network and optimize the operation environment of wireless sensor network. The application of the rough set and genetic algorithm based data mining algorithm in wireless network has a promising prospect.
机译:来自无线传感器网络节点数据的挖掘有效数据是关于无线传感器网络数据处理的研究中的主要科目之一。无线传感器网络数据是Muli维和动态的。通常,数据挖掘技术不能满足无线传感器网络的要求。大量累计和冗余的无线传感器网络监控数据降低了数据处理的效率。为了解决上述问题,本研究提出了一种数据挖掘算法,其集成粗糙集算法和遗传算法在节点网络数据中挖掘冗余数据。基于MATLAB平台的模拟计算结果表明,所提出的算法的识别率,假接受率和抑制率为94.65,1.753和2.331%;与基于改进遗传算法的网络数据挖掘算法相比,数据挖掘的效率和准确性较高。该算法可以有效地挖掘无线传感器网络中的冗余数据,并优化无线传感器网络的操作环境。基于粗糙集和遗传算法的无线网络中的数据挖掘算法的应用具有很有希望的前景。

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