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An improved L-shaped method for two-stage convex 0-1 mixed integer nonlinear stochastic programs

机译:两阶段凸0-1混合整数非线性随机程序的一种改进的L形方法

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In this paper, we propose an improved L-shaped method to solve large-scale two-stage convex 0–1 mixed-integer nonlinear stochastic programs with mixed-integer variables in both first and second stage decisions and with relatively complete recourse. To address the difficulties in solving large problems, we propose a Benders-like decomposition algorithm that includes both (strengthened) Benders cuts and Lagrangean cuts in the Benders master problem. The proposed algorithm is applied to solve a batch plant design problem under demand uncertainty, and a planning problem under demand and price uncertainty. It is shown that the proposed algorithm outperforms the commercial solvers, DICOPT, SBB, Alpha-ECP, and BARON, for the problems with a large number of scenarios. Also, although the proposed algorithm cannot close the duality gap, it is proved that it can yield a lower bound that is at least as tight as the one from Lagrangean decomposition.
机译:在本文中,我们提出了一种改进的L形方法来解决在第一阶段和第二阶段决策中具有混合整数变量的大规模两阶段凸0–1混合整数非线性随机程序。为了解决解决大型问题的困难,我们提出了一种类似于Benders的分解算法,该算法在Benders主问题中同时包含(增强的)Benders割和Lagrangean割。该算法用于解决需求不确定情况下的批量工厂设计问题,以及需求和价格不确定情况下的计划问题。结果表明,针对多种场景的问题,该算法优于商业求解器DICOPT,SBB,Alpha-ECP和BARON。而且,尽管所提出的算法不能消除对偶间隙,但是证明了它可以产生至少与拉格朗日分解法产生的下限一样严格的下限。

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