A Novel Approach for Faulty Sensor Detection and Data Correction in Wireless Sensor Network

A. Farruggia, S. Vitabile
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引用次数: 6

Abstract

The main Wireless Sensor Networks purpose is represented by areas of interest monitoring. Even if the Wireless sensor network is properly initialized, errors can occur during its monitoring tasks. The present work describes an approach for detecting faulty sensors in Wireless Sensor Network and for correcting their corrupted data. The approach is based on the assumption that exist a spatio-temporal cross-correlations among sensors. Two sequential mathematical tools are used. The first stage is a probabilistic tools, namely Markov Random Field, for a two-fold sensor classification (working or damaged). The last stage is represented by the Locally Weighted Regression model, a learning techniques modelling each sensor on the basis of its neighbours. If the sensor is working, the approach actives a learning phase and the sensor model is trained, while if the sensor is damaged, a correction phase starts and the related corrupted data are replaced with the data produced by the learned model. The effectiveness of the proposed approach has been proved using real data obtained from the Intel Berkeley Research Laboratory, over which different classes of faults were artificially superimposed. The proposed architecture achieves satisfactory results, since it successfully corrects faulty data produced by sensors.
无线传感器网络中故障传感器检测与数据校正的新方法
无线传感器网络的主要目的是通过感兴趣的监测领域来表示。即使正确初始化了无线传感器网络,在其监视任务期间也可能出现错误。本文介绍了一种检测无线传感器网络中故障传感器并对其损坏数据进行校正的方法。该方法基于传感器之间存在时空相互关系的假设。使用了两个顺序数学工具。第一阶段是利用概率工具,即马尔可夫随机场,对传感器进行双重分类(工作或损坏)。最后一个阶段由局部加权回归模型表示,这是一种基于相邻传感器建模的学习技术。如果传感器正常工作,则该方法启动学习阶段并训练传感器模型,而如果传感器损坏,则开始校正阶段,并将相关损坏的数据替换为学习模型产生的数据。利用英特尔伯克利研究实验室获得的真实数据证明了该方法的有效性,并在这些数据上人为地叠加了不同类型的故障。该结构成功地修正了传感器产生的错误数据,取得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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