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Method for solving generalized convex nonsmooth mixed-integer nonlinear programming problems

机译:广义凸非光滑混合整数非线性规划问题的求解方法

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摘要

In this paper, we generalize the extended supporting hyperplane algorithm for a convex continuously differentiable mixed-integer nonlinear programming problem to solve a wider class of nonsmooth problems. The generalization is made by using the subgradients of the Clarke subdifferential instead of gradients. Consequently, all the functions in the problems are assumed to be locally Lipschitz continuous. The algorithm is shown to converge to a global minimum of an MINLP problem if the objective function is convex and the constraint functions are f degrees-pseudoconvex. With some additional assumptions, the constraint functions may be f degrees-quasiconvex.
机译:在本文中,我们针对凸连续可微混合整数非线性规划问题推广了扩展支持超平面算法,以解决更广泛的一类非光滑问题。通过使用Clarke次微分的次梯度而不是梯度来进行概括。因此,假设问题中的所有功能都是局部Lipschitz连续的。如果目标函数是凸函数且约束函数是f度-伪凸,则该算法将收敛到MINLP问题的全局最小值。在一些附加假设下,约束函数可以是f度-拟凸。

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