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Stochastic approximation based methods for computing the optimal thresholds in remote-state estimation with packet drops

机译:基于随机近似的丢包远程状态估计中最佳阈值计算方法

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A remote-state estimation system consisting of a sensor and an estimator is considered. The sensor observes a scalar Gauss-Markov process and at each time determines whether or not to transmit the state of the process. The transmission takes place over a packet drop channel. Previous results have established that the optimal transmission strategies are threshold based and optimal estimation strategies are Kalman-like. We propose stochastic approximation algorithms to compute the optimal thresholds for two setups: a Keifer-Wolfowitz based algorithm for the case when there is a cost associated with each transmission and a Robbins-Monro based algorithm for the case when there is a constraint on the expected number of transmissions. The results are verified by comparing against existing results for the no packet drop case.
机译:考虑由传感器和估计器组成的远程状态估计系统。传感器观察标量高斯-Markov过程,并且每次确定是否传输过程的状态。传输在数据包丢弃通道上进行。以前的结果已经确定,最佳传输策略是基于阈值的,并且最佳估计策略是卡尔曼样。我们提出了随机近似算法来计算两种设置的最佳阈值:当存在与每个传输的成本和基于robbins-monro的算法有关的情况时,基于keifer-wolfowitz的算法在预期的约束时变速数。通过与无数据包放样案例的现有结果进行比较来验证结果。

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