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首页> 外文期刊>Mathematical Programming >Outer approximation algorithms for separable nonconvex mixed-integer nonlinear programs
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Outer approximation algorithms for separable nonconvex mixed-integer nonlinear programs

机译:可分离非凸混合整数非线性程序的外逼近算法

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摘要

A rigorous decomposition approach to solve separable mixed-integer nonlinear programs where the participating functions are nonconvex is presented. The proposed algorithms consist of solving an alternating sequence of Relaxed Master Problems (mixed-integer linear program) and two nonlinear programming problems (NLPs). A sequence of valid nondecreasing lower bounds and upper bounds is generated by the algorithms which converge in a finite number of iterations. A Primal Bounding Problem is introduced, which is a convex NLP solved at each iteration to derive valid outer approximations of the nonconvex functions in the continuous space. Two decomposition algorithms are presented in this work. On finite termination, the first yields the global solution to the original nonconvex MINLP and the second finds a rigorous bound to the global solution. Convergence and optimality properties, and refinement of the algorithms for efficient implementation are presented. Finally, numerical results are compared with currently available algorithms for example problems, illuminating the potential benefits of the proposed algorithm.
机译:提出了一种严格的分解方法,用于求解可分解的混合整数非线性程序,其中参与函数为非凸函数。所提出的算法包括求解交替的松弛主问题序列(混合整数线性程序)和两个非线性规划问题(NLP)。由算法生成的一系列有效的不递减的下限和上限,这些算法以有限的迭代次数收敛。引入了原始边界问题,它是在每次迭代中求解的凸NLP,以得出连续空间中非凸函数的有效外部逼近。在这项工作中提出了两种分解算法。在有限终止上,第一个产生原始非凸MINLP的全局解,第二个找到对全局解的严格约束。提出了收敛性和最优性,以及改进算法的有效实现方法。最后,将数值结果与当前可用的算法(例如问题)进行比较,阐明了所提出算法的潜在优势。

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