SYSYJul 27, 2016

Robust Causal Transform Coding for LQG Systems with Delay Loss in Communications

arXiv:1607.082091 citations
Originality Incremental advance
AI Analysis

For control engineers designing networked control systems, this work addresses the problem of communication delay loss with a novel coding scheme, though the results are incremental.

The paper proposes a causal transform coding scheme for networked control systems with random delay loss, achieving robust communication and optimal LQG controller design. Numerical results demonstrate effectiveness for Gauss-Markov sources and LQG systems.

A networked controlled system (NCS) in which the plant communicates to the controller over a channel with random delay loss is considered. The channel model is motivated by recent development of tree codes for NCS, which effectively translates an erasure channel to one with random delay. A causal transform coding scheme is presented which exploits the plant state memory for efficient communications (compression) and provides robustness to channel delay loss. In this setting, we analyze the performance of linear quadratic Gaussian (LQG) closed-loop systems and the design of the optimal controller. The design of the transform code for LQG systems is posed as a channel optimized source coding problem of minimizing a weighted mean squared error over the channel. The solution is characterized in two steps of obtaining the optimized causal encoding and decoding transforms and rate allocation across a set of transform coding quantizers. Numerical and simulation results for Gauss-Markov sources and an LQG system demonstrate the effectiveness of the proposed schemes.

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