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New Algorithm to Determine Prediction Accuracy on Wireless Sensor Networks

机译:新算法确定无线传感器网络预测精度

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The development of the use of wireless sensor network technology is developing very rapidly, especially in the fields of monitoring, tracking, disasters, and others. One of the uses of WSN is monitoring potential flood disasters. Information provided by wireless sensors is very useful in disaster early warning and management in dealing with post-disaster. The distribution of wireless sensors that are not evenly distributed in flood-prone areas requires grouping sensors based on specific locations so that the information obtained is fast and accurate. This study develops the method of grouping wireless sensors and predicts the potential for flood disasters in river areas. This method uses a combination of the k-mean algorithm and decision tree. The k-mean method is used to clustering the position of wireless sensors in the upstream, middle and downstream of the river flow. After clustering the position of the wireless sensor. Data on each wireless sensor grouping is taken to predict potential flooding in each upstream, middle and downstream area of the river. The results of this study obtained the position accuracy of wireless sensors which obtained an accuracy of 94%. While the average error in predicting flood potential is 3.3%.
机译:使用无线传感器网络技术的发展非常迅速,特别是在监测,跟踪,灾害等领域。 WSN的一个用途是监测潜在的洪灾灾害。无线传感器提供的信息对于处理后灾后的灾难预警和管理非常有用。无线传感器的分布在普通区域中均匀分布,需要基于特定位置对传感器进行分组,以便获得的信息快速准确。本研究开发了分组无线传感器的方法,并预测河流区域的洪水灾害潜力。该方法使用k均值算法和决策树的组合。 K-Mean方法用于聚类无线传感器在河流流动的上游,中下游的位置。在聚类无线传感器的位置之后。对每个无线传感器分组的数据被采用河流的每个上游,中下游区域的潜在洪水。该研究的结果获得了无线传感器的定位精度,其精度为94%。预测洪水潜力的平均误差是3.3%。

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