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Tightening McCormick Relaxations for Nonlinear Programs via Dynamic Multivariate Partitioning

机译:通过动态多变量分区收紧非线性程序的McCormick放松

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In this work, we propose a two-stage approach to strengthen piecewise McCormick relaxations for mixed-integer nonlinear programs (MINLP) with multi-linear terms. In the first stage, we exploit Constraint Programing (CP) techniques to contract the variable bounds. In the second stage we partition the variables domains using a dynamic multivariate partitioning scheme. Instead of equally partitioning the domains of variables appearing in multi-linear terms, we construct sparser partitions yet tighter relaxations by iteratively partitioning the variable domains in regions of interest. This approach decouples the number of partitions from the size of the variable domains, leads to a significant reduction in computation time, and limits the number of binary variables that are introduced by the partitioning. We demonstrate the performance of our algorithm on well-known benchmark problems from MINLPLIB and discuss the computational benefits of CP-based bound tightening procedures.
机译:在这项工作中,我们提出了一种双阶段方法,以加强分段麦克米克放松,以具有多线性术语的混合整数非线性程序(MINLP)。在第一阶段,我们利用约束编程(CP)技术来收缩可变界限。在第二阶段,我们使用动态多变量分区方案分区变量域。而不是同等地划分以多线性术语出现的变量域,而不是通过迭代区域中的可变域来构建稀疏分区但更严格的放松。该方法从可变域的大小解耦了分区的数量,导致计算时间显着降低,并限制分区引入的二进制变量的数量。我们展示了我们算法对来自Minlplib的众所周知基准问题的算法,并讨论基于CP的绑定过程的计算优势。

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