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首页> 外文期刊>Operations Research: The Journal of the Operations Research Society of America >Dantzig-Wolfe Decomposition for Solving Multistage Stochastic Capacity-Planning Problems
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Dantzig-Wolfe Decomposition for Solving Multistage Stochastic Capacity-Planning Problems

机译:用于解决多阶段随机容量规划问题的Dantzig-Wolfe分解

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We describe a multistage, stochastic, mixed-integer programming model for planning capacity expansion of production facilities. A scenario tree represents uncertainty in the model; a general mixed-integer program defines the operational submodel at each scenario-tree node, and capacity-expansion decisions link the stages. We apply "variable splitting" to two model variants, and solve those variants using Dantzig-Wolfe decomposition. The Dantzig-Wolfe master problem can have a much stronger linear programming relaxation than is possible without variable splitting, over 700% stronger in one case. The master problem solves easily and tends to yield integer solutions, obviating the need for a full branch-and-price solution procedure. For each scenario-tree node, the decomposition defines a subproblem that may be viewed as a single-period, deterministic, capacity-planning problem. An effective solution procedure results as long as the subproblems solve efficiently, and the procedure incorporates a good "duals stabilization method." We present computational results for a model to plan the capacity expansion of an electricity distribution network in New Zealand, given uncertain future demand. The largest problem we solve to optimality has six stages and 243 scenarios, and corresponds to a deterministic equivalent with a quarter of a million binary variables.
机译:我们描述了一个用于规划生产设施产能扩展的多阶段,随机,混合整数编程模型。方案树表示模型中的不确定性;一个通用的混合整数程序在每个方案树节点定义了操作子模型,而容量扩展决策则将各个阶段联系在一起。我们将“变量拆分”应用于两个模型变量,并使用Dantzig-Wolfe分解解决这些变量。与没有变量拆分的情况相比,Dantzig-Wolfe主问题可以具有更强的线性规划松弛度,在一种情况下,线性规划松弛度可以提高700%以上。主问题很容易解决,并且倾向于产生整数解,从而不需要完整的分支价格定价过程。对于每个方案树节点,分解定义一个子问题,该子问题可以视为一个单周期,确定性的容量规划问题。只要子问题得到有效解决,就会产生有效的求解过程,并且该过程采用了良好的“对偶稳定方法”。我们给出了模型的计算结果,该模型可在不确定的未来需求的情况下规划新西兰配电网络的容量扩展。我们为最优性解决的最大问题有六个阶段和243种情况,并且对应于确定性等价项,即四分之一百万二进制变量。

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