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首页> 外文期刊>Transactions of the Institute of Measurement and Control >Hidden Gaussian Markov model for distributed fault detection in wireless sensor networks
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Hidden Gaussian Markov model for distributed fault detection in wireless sensor networks

机译:无线传感器网络中分布式故障检测的隐藏高斯马尔可夫模型

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Wireless sensor networks are based on a large number of sensor nodes used to measure information like temperature, acceleration, displacement, or pressure. The measurements are used to estimate the state of the monitored system or area. However, the quality of the measurements must be guaranteed to ensure the reliability of the estimated state of the system. Actually, sensors can be used in a hostile environment such as, on a battle field in the presence of fires, floods, earthquakes. In these environments as well as in normal operation, sensors can fail. The failure of sensor nodes can also be caused by other factors like: the failure of a module (such as the sensing module) due to the fabrication process models, loss of battery power and so on. A wireless sensor network must be able to identify faulty nodes. Therefore, we propose a probabilistic approach based on the Hidden Markov Model to identify faulty sensor nodes. Our proposed approach predicts the future state of each node from its actual state, so the fault could be detected before it occurs. We use an aided judgment of neighbour sensor nodes in the network. The algorithm analyses the correlation of the sensors' data with respect to its neighbourhood. A systematic approach to divide a network on cliques is proposed to fully draw the neighbourhood of each node in the network. After drawing the neighbourhood of each node (cliques), damaged cliques are identified using the Gaussian distribution theorem. Finally, we use the Hidden Markov Model to identify faulty nodes in the identified damaged cliques by calculating the probability of each node to stay in its normal state. Simulation results demonstrate our algorithm is efficient even for a huge wireless sensor network unlike previous approaches.
机译:无线传感器网络基于大量传感器节点,用于测量温度,加速度,位移或压力等信息。测量用于估计监控系统或区域的状态。但是,必须保证测量的质量以确保系统估计状态的可靠性。实际上,传感器可以在敌对的环境中使用,例如在火灾,洪水,地震存在下的战斗领域。在这些环境以及正常操作中,传感器可能会失败。传感器节点的故障也可能是由其他因素引起的:模块(例如传感模块)由于制造过程模型,电池电量损失等因素而引起的。无线传感器网络必须能够识别错误的节点。因此,我们提出了一种基于隐马尔可夫模型的概率方法来识别故障传感器节点。我们所提出的方法从其实际状态预测每个节点的未来状态,因此在发生故障之前可以检测到故障。我们在网络中使用邻居传感器节点的辅助判断。该算法分析了传感器数据相对于其邻域的相关性。提出了一种在批变中划分网络的系统方法来完全绘制网络中每个节点的邻域。在绘制每个节点(Cliques)的附近之后,使用高斯分布定理识别损坏的批量。最后,我们使用隐马尔可夫模型通过计算每个节点以保持正常状态的概率来识别所识别的损坏群体中的故障节点。仿真结果表明,即使对于以前的方法,我们的算法甚至是巨大的无线传感器网络。

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