氯气监测无线传感器网络预警模型的数据挖掘研究

Wang Rongxin, Xiu Debin, Zhou Yushan, Liu Congning, Shi Yunbo
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引用次数: 0

摘要

氯气监测网络中存储着大量的历史数据。因此,利用数据挖掘的预测算法对历史数据进行挖掘,不仅可以使冗余数据得到重用,而且可以预测网络趋势,改进网络预警模型。本文设计了基于ZigBee的氯气监测无线传感器网络。然后加入Fletcher-Reeves算法,挖掘网络中的历史数据,预测网络趋势,改进预警模型。利用数据挖掘模型对氯离子浓度预测数据进行训练。预测浓度与实测值的最大相对误差为11.08%,最大平均误差为7.36%。可以满足实际要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Mining Research in Early Warning Model of Chlorine Gas Monitoring Wireless Sensor Network
Massive historical data are stored in chlorine gas monitoring network. So that prediction algorithm of data mining is used to dig historical data not only can make the redundant data reused, but also can forecast the network trend and improve the network early warning model. The chlorine gas monitoring wireless sensor network based on ZigBee was designed in this paper. Then Fletcher-Reeves algorithm was added to dig historical data in the network, forecast the network trend and improve the early warning model. The predicted concentration of chlorine data were trained by data mining model. The maximum relative error between predicted concentration and measured concentration was 11.08%, and the maximum average error was 7.36%. And it can satisfy actual requirements.
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