A decomposition algorithm for Mean-Variance Economic Model Predictive Control of stochastic linear systems

Intelligent Control(2014)

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摘要
This paper presents a decomposition algorithm for solving the optimal control problem (OCP) that arises in Mean-Variance Economic Model Predictive Control of stochastic linear systems. The algorithm applies the alternating direction method of multipliers to a reformulation of the OCP that decomposes into small independent subproblems. We test the decomposition algorithm using a simple power management case study, in which the OCP is formulated as a convex quadratic program. Simulations show that the decomposition algorithm scales linearly in the number of uncertainty scenarios. Moreover, a parallel implementation of the algorithm is several orders of magnitude faster than state-of-the-art convex quadratic programming algorithms, provided that the number of uncertainty scenarios is large.
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关键词
convex programming,linear systems,optimal control,parallel algorithms,predictive control,quadratic programming,stochastic systems,OCP reformulation,convex quadratic programming algorithms,decomposition algorithm,mean-variance economic model predictive control,multipliers alternating direction method,optimal control problem,parallel algorithm,power management,stochastic linear systems,subproblems
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