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Distributed Fault Detection for Wireless Sensor Networks Based on Support Vector Regression

机译:基于支持向量回归的无线传感器网络分布式故障检测

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Because the existing approaches for diagnosing sensor networks lead to low precision and high complexity, a new fault detection mechanism based on support vector regression and neighbor coordination is proposed in this work. According to the redundant information about meteorological elements collected by a multisensor, a fault prediction model is built using a support vector regression algorithm, and it achieves residual sequences. Then, the node status is identified by mutual testing among reliable neighbor nodes. Simulations show that when the sensor fault probability in wireless sensor networks is 40%, the detection accuracy of the proposed algorithm is over 87%, and the false alarm ratio is below 7%. The detection accuracy is increased by up to 13%, in contrast to other algorithms. This algorithm not only reduces the communication to sensor nodes but also has a high detection accuracy and a low false alarm ratio. The proposed algorithm is suitable for fault detection in meteorological sensor networks with low node densities and high failure ratios.
机译:由于现有的传感器网络诊断方法精度低,复杂度高,因此提出了一种基于支持向量回归和邻居协调的故障检测机制。根据多传感器收集的有关气象要素的冗余信息,利用支持向量回归算法建立故障预测模型,并获得残差序列。然后,通过可靠邻居节点之间的相互测试来识别节点状态。仿真结果表明,当无线传感器网络中的传感器故障概率为40%时,该算法的检测精度可达87%以上,虚警率低于7%。与其他算法相比,检测精度最多可提高13%。该算法不仅减少了与传感器节点的通信,而且具有较高的检测精度和较低的误报率。该算法适用于节点密度低,故障率高的气象传感器网络的故障检测。

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