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Data-driven policy iteration algorithm for continuous-time stochastic linear-quadratic optimal control problems

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arxiv 2209.14490 v1 pith:ZM2XHSZ3 submitted 2022-09-29 math.OC

Data-driven policy iteration algorithm for continuous-time stochastic linear-quadratic optimal control problems

classification math.OC
keywords algorithmstochasticcontinuous-timecontroldata-driveniterationlinear-quadraticoptimal
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This paper studies a continuous-time stochastic linear-quadratic (SLQ) optimal control problem on infinite-horizon. A data-driven policy iteration algorithm is proposed to solve the SLQ problem. Without knowing three system coefficient matrices, this algorithm uses the collected data to iteratively approximate a solution of the corresponding stochastic algebraic Riccati equation (SARE). A simulation example is provided to illustrate the effectiveness and applicability of the algorithm.

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