A Fokker–Planck control framework for multidimensional stochastic processes

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摘要

An efficient framework for the optimal control of probability density functions (PDFs) of multidimensional stochastic processes is presented. This framework is based on the Fokker–Planck equation that governs the time evolution of the PDF of stochastic processes and on tracking objectives of terminal configuration of the desired PDF. The corresponding optimization problems are formulated as a sequence of open-loop optimality systems in a receding-horizon control strategy. Many theoretical results concerning the forward and the optimal control problem are provided. In particular, it is shown that under appropriate assumptions the open-loop bilinear control function is unique. The resulting optimality system is discretized by the Chang–Cooper scheme that guarantees positivity of the forward solution. The effectiveness of the proposed computational framework is validated with a stochastic Lotka–Volterra model and a noised limit cycle model.

论文关键词:35K57,60H25,49K20,65M55,65C20,Fokker–Planck equation,Multidimensional stochastic process,Probability density function,Optimal control theory,Model predictive control

论文评审过程:Received 15 April 2011, Revised 4 November 2011, Available online 18 June 2012.

论文官网地址:https://doi.org/10.1016/j.cam.2012.06.019