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首页> 外文期刊>Journal of Global Optimization >The decomposition-based outer approximation algorithm for convex mixed-integer nonlinear programming
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The decomposition-based outer approximation algorithm for convex mixed-integer nonlinear programming

机译:凸混合整数非线性编程的分解基外逼近算法

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This paper presents a new two-phase method for solving convex mixed-integer nonlinear programming (MINLP) problems, called Decomposition-based Outer Approximation Algorithm (DECOA). In the first phase, a sequence of linear integer relaxed sub-problems (LP phase) is solved in order to rapidly generate a good linear relaxation of the original MINLP problem. In the second phase, the algorithm solves a sequence of mixed integer linear programming sub-problems (MIP phase). In both phases the outer approximation is improved iteratively by adding new supporting hyperplanes by solving many easier sub-problems in parallel. DECOA is implemented as a part of Decogo (Decomposition-based Global Optimizer), a parallel decomposition-based MINLP solver implemented in Python and Pyomo. Preliminary numerical results based on 70 convex MINLP instances up to 2700 variables show that due to the generated cuts in the LP phase, on average only 2-3 MIP problems have to be solved in the MIP phase.
机译:本文提出了一种新的两相方法,用于求解凸混合整数非线性编程(MINLP)问题,称为基于分解的外近似算法(DecoA)。在第一阶段中,求解一系列线性整数松弛子问题(LP相位),以便快速产生原始MINLP问题的良好线性松弛。在第二阶段,该算法解决了一系列混合整数线性编程子问题(MIP阶段)。在两个阶段中,通过在并行解决许多更简单的子问题来通过添加新的支持超平面来改进外近似。 DecoA实现为DecoGo(基于分解的全局优化器)的一部分,该域在Python和Pyomo实现的并行分解的MINLP求解器。基于70凸的MINLP实例的初步数值结果高达2700变量,显示由于LP阶段中的切割,平均仅在MIP阶段中求出2-3个MIP问题。

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