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Outer-approximation algorithms for nonsmooth convex MINLP problems

机译:非逼近算法用于非光滑凸微型问题

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In this work, we combine outer-approximation (OA) and bundle method algorithms for dealingwithmixed-integer non-linear programming (MINLP) problems with nonsmooth convex objective and constraint functions. As the convergence analysis of OA methods relies strongly on the differentiability of the involved functions, OA algorithms may fail to solve general nonsmooth convex MINLP problems. In order to obtain OA algorithms that are convergent regardless the structure of the convex functions, we solve the underlying OA's non-linear subproblems by a specialized bundle method that provides necessary information to cut off previously visited (non-optimal) integer points. This property is crucial for proving (finite) convergence of OA algorithms. We illustrate the numerical performance of the given proposal on a class of hybrid robust and chanceconstrained problems that involve a random variable with finite support.
机译:在这项工作中,我们将外逼近(OA)和束法算法组合使用非光滑凸面和约束函数的方式处理整数 - 整数非线性编程(MINLP)问题。 由于OA方法的收敛性分析强烈依赖于所涉及的功能的可差异,因此OA算法可能无法解决通用非光滑凸微型问题。 为了获得昂贵的OA算法,无论凸函数的结构如何,我们都通过专用捆绑方法解决了底层的OA的非线性子问题,该方法提供了以前访问的(非最佳)整数点的必要信息。 此属性对于证明(有限)OA算法的融合至关重要。 我们说明了对一类混合鲁棒和ChanceConstroin的问题的数值表现,涉及随机变量与有限支持。

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