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Wireless Sensor-Networks Conditions Monitoring and Fault Diagnosis Using Neighborhood Hidden Conditional Random Field

机译:使用邻域隐藏条件随机场的无线传感器网络状态监测和故障诊断

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This paper formulates wireless sensor networks (WSNs) fault diagnosis problem as a pattern-classification problem and introduces a newly developed algorithm, neighborhood hidden conditional random field (NHCRF), for determining hidden states between sensors. The health conditions of WSN are determined by using the NHCRF model to estimate the posterior probability of different faulty scenarios. The NHCRF model can improve the WSN fault diagnosis, because it has relaxed the independence assumption of the hidden Markov model. To enhance the robustness and antinoise ability of the NHCRF, the concept of nearest neighbors is used when estimating dependencies. In this paper, a 200-sensor-node WSN is used to show that the proposed NHCRF method can deliver excellent and effective results for WSN-health diagnosis. Our study also presents thorough results on different types of WSN traffic, the free traffic, light traffic, and heavy traffic. Comparative results indicate that our method can deliver superior classification performance compared with other methods.
机译:本文将无线传感器网络(WSNs)故障诊断问题描述为模式分类问题,并介绍了一种新开发的算法,即邻域隐藏条件随机场(NHCRF),用于确定传感器之间的隐藏状态。通过使用NHCRF模型估计不同故障场景的后验概率,可以确定WSN的健康状况。 NHCRF模型简化了隐马尔可夫模型的独立性假设,因此可以改善WSN故障诊断。为了增强NHCRF的鲁棒性和抗噪能力,在估计依赖性时使用最近邻居的概念。在本文中,使用200个传感器节点的WSN来表明所提出的NHCRF方法可以为WSN健康诊断提供出色而有效的结果。我们的研究还针对不同类型的WSN流量,免费流量,轻流量和重流量提供了详尽的结果。比较结果表明,与其他方法相比,我们的方法可以提供出色的分类性能。

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