A D.C. approximation approach for optimization with probabilistic constraints based on Chen–Harker–Kanzow–Smale smooth plus function

IF 0.9 4区 数学 Q3 MATHEMATICS, APPLIED Mathematical Methods of Operations Research Pub Date : 2024-04-16 DOI:10.1007/s00186-024-00859-y
Yonghong Ren, Yuchao Sun, Dachen Li, Fangfang Guo
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Abstract

Many important practical problems can be formulated as probabilistic constrained optimization problem (PCOP), which is challenging to solve since it is usually non-convex and non-smooth. Effective methods for (PCOP) mostly focus on approximation techniques. This paper aims at studying the D.C. (difference of two convex functions) approximation techniques. A D.C. approximation is explored to solve the probabilistic constrained optimization problem based on Chen–Harker–Kanzow–Smale (CHKS) smooth plus function. A smooth approximation to probabilistic constraint function is proposed and the corresponding D.C. approximation problem is established. It is proved that the approximation problem is equivalent to the original one under certain conditions. Sequential convex approximation (SCA) algorithm is implemented to solve the D.C. approximation problem. Sample average approximation method is applied to solve the convex subproblem. Numerical results suggest that D.C. approximation technique is effective for optimization with probabilistic constraints.

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基于 Chen-Harker-Kanzow-Smale 平滑加函数的概率约束优化 D.C. 近似方法
许多重要的实际问题都可以表述为概率约束优化问题(PCOP),由于它通常是非凸和非平滑的,因此解决起来具有挑战性。PCOP 的有效方法大多集中在近似技术上。本文旨在研究 D.C.(两个凸函数之差)近似技术。基于 Chen-Harker-Kanzow-Smale (CHKS) 平滑加函数,探索了一种 D.C. 近似方法来解决概率约束优化问题。提出了概率约束函数的平滑近似值,并建立了相应的 D.C. 近似问题。证明了近似问题在一定条件下等价于原始问题。实现了序列凸近似(SCA)算法来解决 D.C. 近似问题。抽样平均逼近法用于解决凸子问题。数值结果表明,D.C.近似技术对于带有概率约束的优化是有效的。
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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
36
审稿时长
>12 weeks
期刊介绍: This peer reviewed journal publishes original and high-quality articles on important mathematical and computational aspects of operations research, in particular in the areas of continuous and discrete mathematical optimization, stochastics, and game theory. Theoretically oriented papers are supposed to include explicit motivations of assumptions and results, while application oriented papers need to contain substantial mathematical contributions. Suggestions for algorithms should be accompanied with numerical evidence for their superiority over state-of-the-art methods. Articles must be of interest for a large audience in operations research, written in clear and correct English, and typeset in LaTeX. A special section contains invited tutorial papers on advanced mathematical or computational aspects of operations research, aiming at making such methodologies accessible for a wider audience. All papers are refereed. The emphasis is on originality, quality, and importance.
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