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Robust control policy for semi-Markov decision processes with dependent uncertain parameters

Hao Tang, Xiangjun Liang,Jun Gao, Chun Liu

Proceedings of the World Congress on Intelligent Control and Automation (WCICA)(2004)

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摘要
Recent researches by Cao indicate that the concept of Markov performance potential plays an important role in the study of Markov or semi-Markov systems. If system parameters are known with certainty, many effective potential-based optimization methods may be developed for semi-Markov decision processes (SMDPs) by using the equivalent infinitesimal generator, which is defined by Cao for the first time and by Yin later in a different way. Unfortunately, some of the parameters are often difficult to derive or even slowly time-varying, which leads to the uncertainty of the equivalent infinitesimal transition rates. Under these cases, we focus on the solution of the optimal robust control policy for both average- and discounted-cost SMDPs with dependent parameters, which are represented as compact sets. Potential-based solution techniques such as gradient methods are discussed for designing robust decision schemes.
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关键词
Markov processes,control system synthesis,decision theory,gradient methods,optimal control,optimisation,robust control,uncertain systems,Markov systems,control system synthesis,dependent uncertain parameters,equivalent infinitesimal generator,equivalent infinitesimal transition rates,gradient methods,optimal robust control policy,potential based optimization methods,semiMarkov decision process,semiMarkov systems,
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