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首页> 外文期刊>Mathematical Problems in Engineering >Least-Squares Filtering Algorithm in Sensor Networks with Noise Correlation and Multiple Random Failures in Transmission
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Least-Squares Filtering Algorithm in Sensor Networks with Noise Correlation and Multiple Random Failures in Transmission

机译:具有噪声相关性和传输中多个随机故障的传感器网络最小二乘滤波算法

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This paper addresses the least-squares centralized fusion estimation problem of discrete-time random signals from measured outputs, which are perturbed by correlated noises. These measurements are obtained by different sensors, which send their information to a processing center, where the complete set of data is combined to obtain the estimators. Due to random transmission failures, some of the data packets processed for the estimation may either contain only noise (uncertain observations), be delayed (randomly delayed observations), or even be definitely lost (random packet dropouts). These multiple random transmission uncertainties are modelled by sequences of independent Bernoulli random variables with different probabilities for the different sensors. By an innovation approach and using the last observation that successfully arrived when a packet is lost, a recursive algorithm is designed for the filtering estimation problem. The proposed algorithm is easily implemented and does not require knowledge of the signal evolution model, as only the first- and second-order moments of the processes involved are used. A numerical simulation example illustrates the feasibility of the proposed estimators and shows how the probabilities of the multiple random failures influence their performance.
机译:本文针对来自相关输出干扰的,来自测量输出的离散时间随机信号的最小二乘集中式融合估计问题。这些测量值是由不同的传感器获得的,这些传感器将其信息发送到处理中心,在处理中心,将完整的数据集组合在一起以获得估算器。由于随机传输失败,为进行估计而处理的某些数据包可能仅包含噪声(不确定的观测值),被延迟(随机延迟的观测值),甚至肯定会丢失(随机数据包丢失)。这些多重随机传输不确定性是由独立伯努利随机变量序列模拟的,这些变量对于不同的传感器具有不同的概率。通过一种创新方法,并使用在丢失数据包时成功到达的最后一个观察结果,设计了一种用于过滤估计问题的递归算法。所提出的算法易于实现,并且不需要信号演化模型的知识,因为仅使用所涉及过程的一阶和二阶矩。数值模拟示例说明了所提出的估计器的可行性,并显示了多个随机故障的概率如何影响其性能。

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