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Optimization of Constrained Stochastic Linear-Quadratic Control on an Infinite Horizon: A Direct-Comparison Based Approach

机译:无限地平线上约束随机线性 - 二次控制的优化:基于直接比较的方法

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In this paper we study the optimization of the discrete-time stochastic linear-quadratic (LQ) control problem with conic control constraints on an infinite horizon, considering multiplicative noises. Stochastic control systems can be formulated as Markov Decision Problems (MDPs) with continuous state spaces and therefore we can apply the direct-comparison based optimization approach to solve the problem. We first derive the performance difference formula for the LQ problem by utilizing the state separation property of the system structure. Based on this, we successfully derive the optimality conditions and the stationary optimal feedback control. By introducing the optimization, we establish a general framework for infinite horizon stochastic control problems. The direct-comparison based approach is applicable to both linear and nonlinear systems. Our work provides a new perspective in LQ control problems; based on this approach, learning based algorithms can be developed without identifying all of the system parameters.
机译:在本文中,考虑到乘法噪声,研究了在无限地平线上的圆锥控制约束的离散时间随机线性二次(LQ)控制问题的优化。随机控制系统可以配制成具有连续状态空间的马尔可夫决策问题(MDP),因此我们可以应用基于直接的基于的优化方法来解决问题。我们首先通过利用系统结构的状态分离属性来派生LQ问题的性能差分公式。基于此,我们成功推出了最优条件和静止最佳反馈控制。通过介绍优化,我们为无限的地平随机控制问题建立了一般框架。基于直接比较的方法适用于线性和非线性系统。我们的工作在LQ控制问题中提供了一种新的视角;基于这种方法,可以在不识别所有系统参数的情况下开发基于学习的算法。

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