Optimality Conditions in Control Problems with Random State Constraints in Probabilistic or Almost Sure Form

IF 1.4 3区 数学 Q2 MATHEMATICS, APPLIED Mathematics of Operations Research Pub Date : 2024-07-15 DOI:10.1287/moor.2023.0177
Caroline Geiersbach, René Henrion
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Abstract

In this paper, we discuss optimality conditions for optimization problems involving random state constraints, which are modeled in probabilistic or almost sure form. Although the latter can be understood as the limiting case of the former, the derivation of optimality conditions requires substantially different approaches. We apply them to a linear elliptic partial differential equation with random inputs. In the probabilistic case, we rely on the spherical-radial decomposition of Gaussian random vectors in order to formulate fully explicit optimality conditions involving a spherical integral. In the almost sure case, we derive optimality conditions and compare them with a model based on robust constraints with respect to the (compact) support of the given distribution.Funding: The authors thank the Deutsche Forschungsgemeinschaft [Projects B02 and B04 in the “Sonderforschungsbereich/Transregio 154 Mathematical Modelling, Simulation and Optimization Using the Example of Gas Networks”] for support. C. Geiersbach acknowledges support from the Deutsche Forschungsgemeinschaft [Germany’s Excellence Strategy–the Berlin Mathematics Research Center MATH+ Grant EXC-2046/1, Project 390685689]. R. Henrion acknowledges support from the Fondation Mathématique Jacques Hadamard [Program Gaspard Monge in Optimization and Operations Research, including support to this program by Electricité de France].
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具有概率或几乎确定形式随机状态约束的控制问题中的最优性条件
本文讨论了涉及随机状态约束的优化问题的最优性条件,这些约束是以概率或几乎确定的形式建模的。虽然后者可以理解为前者的极限情况,但最优化条件的推导需要本质上不同的方法。我们将它们应用于具有随机输入的线性椭圆偏微分方程。在概率情况下,我们依靠高斯随机向量的球面-径向分解来制定涉及球面积分的完全明确的最优性条件。在几乎确定的情况下,我们推导出最优条件,并与基于给定分布(紧凑)支持的稳健约束的模型进行比较:作者感谢德国联邦科学基金会 ["Sonderforschungsbereich/Transregio "项目中的 B02 和 B04 [以天然气网络为例的 154 数学建模、仿真和优化]] 的支持。C. Geiersbach 感谢德国科学基金会[德国卓越战略-柏林数学研究中心 MATH+ 资助 EXC-2046/1,项目 390685689]的支持。R. Henrion 感谢 Fondation Mathématique Jacques Hadamard [优化与运筹学 Gaspard Monge 计划,包括法国电力公司对该计划的支持]的资助。
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来源期刊
Mathematics of Operations Research
Mathematics of Operations Research 管理科学-应用数学
CiteScore
3.40
自引率
5.90%
发文量
178
审稿时长
15.0 months
期刊介绍: Mathematics of Operations Research is an international journal of the Institute for Operations Research and the Management Sciences (INFORMS). The journal invites articles concerned with the mathematical and computational foundations in the areas of continuous, discrete, and stochastic optimization; mathematical programming; dynamic programming; stochastic processes; stochastic models; simulation methodology; control and adaptation; networks; game theory; and decision theory. Also sought are contributions to learning theory and machine learning that have special relevance to decision making, operations research, and management science. The emphasis is on originality, quality, and importance; correctness alone is not sufficient. Significant developments in operations research and management science not having substantial mathematical interest should be directed to other journals such as Management Science or Operations Research.
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