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Coordinated One-Step Optimal Distributed State Prediction for a Networked Dynamical System

机译:网络动力系统的协调式单步最优分布式状态预测

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摘要

A new recursive one-step state prediction procedure is derived for a networked dynamic system. Under the coordination of a collaboration unit that provides optimal update gains for each individual subsystem utilizing merely system parameters, this predictor estimates plant's local states based only on local system output measurements. This estimator can be easily realized in a distributed way, and can also be simply scaled to systems with a large amount of subsystems, provided it has enough communication and storage capacities. It is proved that when prediction error variances are adopted in performance comparisons, the optimal gain matrix is usually unique. Recursive and explicit expressions are derived for both this optimal gain matrix and the covariance matrix of the corresponding prediction errors. The optimal gain matrix for every subsystem in this distributed recursive predictor has been shown to be equal to that of the well known Kalman filter utilizing only local system output measurements, which makes it possible to robustify this state predictor using a sensitivity penalization approach. Numerical simulation results illustrate that prediction accuracy of the suggested procedure may sometimes be as good as that of the lumped Kalman filter.
机译:为网络动态系统推导了一种新的递归单步状态预测程序。在仅使用系统参数为每个子系统提供最佳更新增益的协作单元的协调下,此预测器仅基于本地系统输出测量值来估计工厂的本地状态。如果估算器具有足够的通信和存储能力,则它可以轻松地以分布式方式实现,也可以简单地扩展到具有大量子系统的系统。证明了在性能比较中采用预测误差方差时,最佳增益矩阵通常是唯一的。为此最佳增益矩阵和相应预测误差的协方差矩阵都导出了递归表达式和显式表达式。已经表明,该分布式递归预测器中每个子系统的最佳增益矩阵等于仅利用本地系统输出测量值的众所周知的卡尔曼滤波器的最优增益矩阵,这使得可以使用灵敏度惩罚方法来增强该状态预测器的鲁棒性。数值模拟结果表明,所建议程序的预测精度有时可能与集总卡尔曼滤波器的预测精度一样好。

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