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Global optimization of mixed-integer nonlinear programs: A theoretical and computational study

机译:混合整数非线性程序的全局优化:理论和计算研究

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This work addresses the development of an efficient solution strategy for obtaining global optima of continuous, integer, and mixed-integer nonlinear programs. Towards this end, we develop novel relaxation schemes, range reduction tests, and branching strategies which we incorporate into the prototypical branch-and-bound algorithm. In the theoretical/algorithmic part of the paper, we begin by developing novel strategies for constructing linear relaxations of mixed-integer nonlinear programs and prove that these relaxations enjoy quadratic convergence properties. We then use Lagrangian/linear programming duality to develop a unifying theory of domain reduction strategies as a consequence of which we derive many range reduction strategies currently used in nonlinear programming and integer linear programming. This theory leads to new range reduction schemes, including a learning heuristic that improves initial branching decisions by relaying data across siblings in a branch-and-bound tree. Finally, we incorporate these relaxation and reduction strategies in a branch-and-bound algorithm that incorporates branching strategies that guarantee finiteness for certain classes of continuous global optimization problems. In the computational part of the paper, we describe our implementation discussing, wherever appropriate, the use of suitable data structures and associated algorithms. We present computational experience with benchmark separable concave quadratic programs, fractional 0–1 programs, and mixed-integer nonlinear programs from applications in synthesis of chemical processes, engineering design, just-in-time manufacturing, and molecular design.
机译:这项工作致力于开发一种有效的解决方案策略,以获取连续,整数和混合整数非线性程序的全局最优值。为此,我们开发了新颖的松弛方案,范围缩小测试和分支策略,将其合并到典型的分支定界算法中。在本文的理论/算法部分,我们从开发构造混合整数非线性程序的线性松弛的新颖策略开始,并证明这些松弛具有二次收敛性。然后,我们使用拉格朗日/线性规划对偶性来发展域约简策略的统一理论,因此,我们得出了当前在非线性规划和整数线性规划中使用的许多范围约简策略。该理论导致了新的范围缩减方案,包括一种学习启发式方法,该方法通过在分支定界树中的同级中中继数据来改进初始分支决策。最后,我们将这些松弛和归约策略合并到分支定界算法中,该算法结合了分支策略,可为某些类别的连续全局优化问题保证有限性。在本文的计算部分,我们描述了在适当情况下讨论适当的数据结构和相关算法的使用的实现。我们介绍了基准可分离凹二次程序,分数0–1程序以及混合整数非线性程序的计算经验,这些程序来自化学过程合成,工程设计,即时制造和分子设计中的应用。

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