Combining stochastic programming and optimal control to decompose multistage stochastic optimization problems

被引:0
|
作者
Diana Barro
Elio Canestrelli
机构
[1] Ca’ Foscari University Venice,Department of Economics
来源
OR Spectrum | 2016年 / 38卷
关键词
Stochastic programming; Discrete time control; Decomposition methods; Iterative scheme; 90C15; 49M27; 90C06; 90C46; C61; C63;
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摘要
The paper suggests a possible cooperation between stochastic programming and optimal control for the solution of multistage stochastic optimization problems. We propose a decomposition approach for a class of multistage stochastic programming problems in arborescent form (i.e. formulated with implicit non-anticipativity constraints on a scenario tree). The objective function of the problem can be either linear or nonlinear, while we require that the constraints are linear and involve only variables from two adjacent periods (current and lag 1). The approach is built on the following steps. First, reformulate the stochastic programming problem into an optimal control one. Second, apply a discrete version of Pontryagin maximum principle to obtain optimality conditions. Third, discuss and rearrange these conditions to obtain a decomposition that acts both at a time stage level and at a nodal level. To obtain the solution of the original problem we aggregate the solutions of subproblems through an enhanced mean valued fixed point iterative scheme.
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页码:711 / 742
页数:31
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