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Jointly optimal quantization, estimation, and control of hidden Markov chains

机译:隐马尔可夫链的联合最优量化,估计和控制

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It is of interest to understand the tradeoff between the communication resource consumption and the achievable system performance in networked control systems. In this paper we explore a general framework for tradeoff analysis and decision making in such systems by studying joint quantization, estimation, and control of a hidden Markov chain. Dynamic programming is used to find the optimal quantization and control scheme that minimizes a weighted combination of different cost terms including the communication cost, the delay, the estimation error, and the running cost. Simulation and analysis based on example problems show that this approach is able to capture the tradeoffs among competing objectives by adjusting the cost weights.
机译:有趣的是要了解网络控制系统中通信资源消耗与可实现的系统性能之间的折衷。在本文中,我们通过研究隐马尔可夫链的联合量化,估计和控制,探索了在此类系统中进行权衡分析和决策的通用框架。使用动态编程来找到最佳的量化和控制方案,该方案可以最小化包括通信成本,延迟,估计误差和运行成本在内的不同成本项的加权组合。基于示例问题的仿真和分析表明,该方法能够通过调整成本权重来捕获竞争目标之间的折衷。

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