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Networked Estimation using Sparsifying Basis Prediction

机译:使用稀疏基础预测的网络估计

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We present a framework for networked state estimation, where systems encode their (possibly high dimensional) state vectors using a mutually agreed basis between the system and the estimator (in a remote monitoring unit). The basis sparsifies the state vectors, i.e., it represents them using vectors with few non-zero components, and as a result, the systems might need to transmit only a fraction of the original information to be able to recover the non-zero components of the transformed state vector. Hence, the estimator can recover the state vector of the system from an under-determined linear set of equations. We use a greedy search algorithm to calculate the sparsifying basis. Then, we present an upper bound for the estimation error. Finally, we demonstrate the results on a numerical example.
机译:我们为网络状态估计提出了一个框架,其中系统在系统和估算器之间使用相互约定的基础(在远程监控单元中)编码它们的(可能的高维)状态向量。基础缩小了状态向量,即它代表它们使用较少的非零分量的载体表示它们,因此,系统可能需要仅发送原始信息的一小部分能够恢复非零组件变换状态矢量。因此,估计器可以从确定的一定线性方程组恢复系统的状态向量。我们使用贪婪的搜索算法来计算稀疏化。然后,我们为估计误差呈现一个上限。最后,我们在数值例子上展示了结果。

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