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Autori principali: Ren, Xiaoxing, Moreschini, Alessio, Chu, Zhongda, Gao, Yulong, Parisini, Thomas
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.22075
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author Ren, Xiaoxing
Moreschini, Alessio
Chu, Zhongda
Gao, Yulong
Parisini, Thomas
author_facet Ren, Xiaoxing
Moreschini, Alessio
Chu, Zhongda
Gao, Yulong
Parisini, Thomas
contents In this paper, we develop a two-stage data-driven approach to address the adjustable robust optimization problem, where the uncertainty set is adjustable to manage infeasibility caused by significant or poorly quantified uncertainties. In the first stage, we synthesize an uncertainty set to ensure the feasibility of the problem as much as possible using the collected uncertainty samples. In the second stage, we find the optimal solution while ensuring that the constraints are satisfied under the new uncertainty set. This approach enlarges the feasible state set, at the expense of the risk of possible constraint violation. We analyze two scenarios: one where the uncertainty is non-stochastic, and another where the uncertainty is stochastic but with unknown probability distribution, leading to a distributionally robust optimization problem. In the first case, we scale the uncertainty set and find the best subset that fits the uncertainty samples. In the second case, we employ the Wasserstein metric to quantify uncertainty based on training data, and for polytope uncertainty sets, we further provide a finite program reformulation of the problem. The effectiveness of the proposed methods is demonstrated through an optimal power flow problem.
format Preprint
id arxiv_https___arxiv_org_abs_2505_22075
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Data-Driven Adjustable Robust Optimization
Ren, Xiaoxing
Moreschini, Alessio
Chu, Zhongda
Gao, Yulong
Parisini, Thomas
Optimization and Control
In this paper, we develop a two-stage data-driven approach to address the adjustable robust optimization problem, where the uncertainty set is adjustable to manage infeasibility caused by significant or poorly quantified uncertainties. In the first stage, we synthesize an uncertainty set to ensure the feasibility of the problem as much as possible using the collected uncertainty samples. In the second stage, we find the optimal solution while ensuring that the constraints are satisfied under the new uncertainty set. This approach enlarges the feasible state set, at the expense of the risk of possible constraint violation. We analyze two scenarios: one where the uncertainty is non-stochastic, and another where the uncertainty is stochastic but with unknown probability distribution, leading to a distributionally robust optimization problem. In the first case, we scale the uncertainty set and find the best subset that fits the uncertainty samples. In the second case, we employ the Wasserstein metric to quantify uncertainty based on training data, and for polytope uncertainty sets, we further provide a finite program reformulation of the problem. The effectiveness of the proposed methods is demonstrated through an optimal power flow problem.
title Data-Driven Adjustable Robust Optimization
topic Optimization and Control
url https://arxiv.org/abs/2505.22075