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Auteurs principaux: Pettersson, Per, Krumscheid, Sebastian, Gasda, Sarah
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2406.07711
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author Pettersson, Per
Krumscheid, Sebastian
Gasda, Sarah
author_facet Pettersson, Per
Krumscheid, Sebastian
Gasda, Sarah
contents We propose a novel framework for optimizing injection strategies in large-scale CO$_2$ storage combining multi-agent models with multi-objective optimization, and reservoir simulation. We investigate whether agents should form coalitions for collaboration to maximize the outcome of their storage activities. In multi-agent systems, it is typically assumed that the optimal strategy for any given coalition structure is already known, and it remains to identify which coalition structure is optimal according to some predefined criterion. For any coalition structure in this work, the optimal CO$_2$ injection strategy is not a priori known, and needs to be found by a combination of reservoir simulation and a multi-objective optimization problem. The multi-objective optimization problems all come with the numerical challenges of repeated evaluations of complex-physics models. We use versatile evolutionary algorithms to solve the multi-objective optimization problems, where the solution is a set of values, e.g., a Pareto front. The Pareto fronts are first computed using the so-called weighted sum method that transforms the multi-objective optimization problem into a set of single-objective optimization problems. Results based on two different Pareto front selection criteria are presented. Then a truly multi-objective optimization method is used to obtain the Pareto fronts, and compared to the previous weighted sum method. We demonstrate the proposed framework on the Bjarmeland formation, a pressure-limited prospective storage site in the Barents Sea. The problem is constrained by the maximum sustainable pressure buildup and a supply of CO$_2$ that can vary over time. In addition to identifying the optimal coalitions, the methodology shows how distinct suboptimal coalitions perform in comparison to the optimum.
format Preprint
id arxiv_https___arxiv_org_abs_2406_07711
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-objective optimization for multi-agent injection strategies in subsurface CO$_2$ storage
Pettersson, Per
Krumscheid, Sebastian
Gasda, Sarah
Numerical Analysis
We propose a novel framework for optimizing injection strategies in large-scale CO$_2$ storage combining multi-agent models with multi-objective optimization, and reservoir simulation. We investigate whether agents should form coalitions for collaboration to maximize the outcome of their storage activities. In multi-agent systems, it is typically assumed that the optimal strategy for any given coalition structure is already known, and it remains to identify which coalition structure is optimal according to some predefined criterion. For any coalition structure in this work, the optimal CO$_2$ injection strategy is not a priori known, and needs to be found by a combination of reservoir simulation and a multi-objective optimization problem. The multi-objective optimization problems all come with the numerical challenges of repeated evaluations of complex-physics models. We use versatile evolutionary algorithms to solve the multi-objective optimization problems, where the solution is a set of values, e.g., a Pareto front. The Pareto fronts are first computed using the so-called weighted sum method that transforms the multi-objective optimization problem into a set of single-objective optimization problems. Results based on two different Pareto front selection criteria are presented. Then a truly multi-objective optimization method is used to obtain the Pareto fronts, and compared to the previous weighted sum method. We demonstrate the proposed framework on the Bjarmeland formation, a pressure-limited prospective storage site in the Barents Sea. The problem is constrained by the maximum sustainable pressure buildup and a supply of CO$_2$ that can vary over time. In addition to identifying the optimal coalitions, the methodology shows how distinct suboptimal coalitions perform in comparison to the optimum.
title Multi-objective optimization for multi-agent injection strategies in subsurface CO$_2$ storage
topic Numerical Analysis
url https://arxiv.org/abs/2406.07711