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Approximation of Constrained Average Cost Markov Control Processes

机译:约束平均成本马尔可夫控制过程的逼近

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This paper considers discrete-time constrained Markov control processes (MCPs) under the long-run expected average cost optimality criterion. For Borel state and action spaces a two-step method is presented to numerically approximate the optimal value of this constrained MCPs. The proposed method employs the infinite-dimensional linear programming (LP) representation of the constrained MCPs. In particular, we establish a bridge from the infinite-dimensional LP characterization to a finite LP consisting of a first asymptotic step and a second step that provides explicit bounds on the approximation error. Finally, the applicability and performance of the theoretical results are demonstrated on an LQG example.
机译:本文考虑了长期期望平均成本最优准则下的离散时间马尔可夫控制过程。对于Borel状态空间和动作空间,提出了一种两步方法来在数值上逼近此约束MCP的最佳值。所提出的方法采用了约束MCP的无穷维线性规划(LP)表示。特别是,我们建立了从无限维LP表征到有限LP的桥梁,该桥梁由第一渐近步长和第二步组成,为近似误差提供了明确的界限。最后,在一个LQG实例上论证了理论结果的适用性和性能。

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