We consider a fundamental remote state estimation problem of discrete-time linear time-invariant (LTI) systems. A smart sensor forwards its local state estimate to a remote estimator over a time-correlated $M$-state Markov fading channel, where the packet drop probability is time-varying and depends on the current fading channel state. We establish a necessary and sufficient condition for mean-square stability of the remote estimation error covariance as $\rho^2(\mathbf{A})\rho(\mathbf{DM})<1$, where $\rho(\cdot)$ denotes the spectral radius, $\mathbf{A}$ is the state transition matrix of the LTI system, $\mathbf{D}$ is a diagonal matrix containing the packet drop probabilities in different channel states, and $\mathbf{M}$ is the transition probability matrix of the Markov channel states. To derive this result, we propose a novel estimation-cycle based approach, and provide new element-wise bounds of matrix powers. The stability condition is verified by numerical results, and is shown more effective than existing sufficient conditions in the literature. We observe that the stability region in terms of the packet drop probabilities in different channel states can either be convex or concave depending on the transition probability matrix $\mathbf{M}$. Our numerical results suggest that the stability conditions for remote estimation may coincide for setups with a smart sensor and with a conventional one (which sends raw measurements to the remote estimator), though the smart sensor setup achieves a better estimation performance.
翻译:我们认为离散时间线性时变( LTI) 系统存在根本性的远程状态估算问题。 一个智能传感器将其本地状态估算向远端估计器转发给与时间相关的时间相关时间相关 $M$美元 Markov 淡化频道的远程估算器, 包装下降概率是时间变化的, 取决于当前淡化频道状态。 我们为远程估算差差差差的平均值稳定性设定了一个必要和充分的条件 $rho2 (\ mathbf{A})\rho (\mathbf{DM}) < 1$, 其中, 美元(cdot) 将当地状态估算结果转发给远端估算器, 美元(cdod) 美元表示光谱半径半径, $\mathbf{A} 美元是LTI 系统的状况过渡矩阵, $mathff{D} 美元是包含在不同频道状态的基数下降概率, $math f{M} 美元是马尔多的过渡模型。 我们建议以智能周期性模型为基础的估算法方法, 提供了新的稳定度, 以新的基数的基数显示的基数的基数的稳定性条件, 显示的基数值的基数值的基数的稳定性是比值, 我们的基数的基数的基数的基数的基数的基数, 显示的基数的基数的基数, 显示的基数的基数, 度的基数的基数可能显示的基数, 度的稳定性的基数的基数的基数的基数的基数的基数的基数的基数可以更好地显示的基数, 度可以显示的基数。