分布式自间断故障离群点识别技术

B. S. Gouda, Sudhakar Das, T. Panigrahi
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引用次数: 0

摘要

本文提出了一种基于分布式自间歇故障外部识别(DISF)算法的分布式k均值策略,用于异常值故障的识别。它利用传感器网络中的间歇故障和聚类机制来定位问题节点。所描述的模型,传感器节点,通过使用基于中位数的K-mean方法来收集指定环境内附近传感器的数据,从而考虑所有聚类区域的平均值。该方法经过了严格的测试,并假定簇头是可靠地提供正确数据的可信节点。在考虑了来自分散簇头的数据后,确定了正确性。对于不同的参数是用来预测数据的准确性,故障正确率和故障报警率在数据传输。提出的模型与其他已在使用的模型进行了对比。统计分析的结果表明,与传统或现有的方法相比,所提出的方法产生了准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Self Intermittent Fault outlier identification technique for WSN s
In this research paper, we provide a distributed K-mean strategy based on distributed Self Intermittent fault outer identification (DISF) algorithm for identifying the fault due to outlier. It deals with locating problematic nodes by using intermittent faults and clustering mechanisms in the sensor network. The described model, sensor node, takes into account the average of all the cluster regions by using the median-based K-mean approach to gather the data from nearby sensors within the specified environment. The proposed method is rigorously tested, with the cluster head presumed to be the trustworthy node that reliably supplies the right data. The correctness is determined after taking into account the data from the dispersed cluster heads. With regard to the different parameters are to use for predicting the accuracy of data, fault positive rate and fault alarm ratio over the data transmission. This proposed model is contrasted with other ones already in use. The outcomes of the statistical analysis show that the proposed methodology produces an accurate result as compared to the traditional or existing approaches.
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