2020
DOI: 10.1109/tpwrs.2020.2993070
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Inverse Equilibrium Analysis of Oligopolistic Electricity Markets

Abstract: Inverse equilibrium modeling fits parameters of an equilibrium model to observations. This allows investigation of whether market structures fit observed outcomes and it has predictive power. We introduce a methodology that leverages relaxed stationarity conditions from Karush-Kuhn-Tucker conditions to set up inverse equilibrium problems. This facilitates reframing of existing equilibrium approaches on power systems into inverse equilibrium programs. We illustrate the methodology on network-constrained and unc… Show more

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Cited by 10 publications
(4 citation statements)
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“…Under mild assumptions, the equilibria of these multi-player games can be described using variational inequalities and KKT conditions. To infer the {θ i } N i=1 terms, Bertsimas et al [29] considers a data-driven inverse VI approach while Ratliff et al [122] and Risanger et al [124] apply a data-driven inverse KKT approach. Allen et al [13] extends the inverse KKT approach to generalized Nash equilibria, where player decisions not only affect each other's objectives but also each other's feasible regions, for example, by sharing a joint capacity constraint ( N i=1 x i ≤ µ).…”
Section: Additional Applicationsmentioning
confidence: 99%
“…Under mild assumptions, the equilibria of these multi-player games can be described using variational inequalities and KKT conditions. To infer the {θ i } N i=1 terms, Bertsimas et al [29] considers a data-driven inverse VI approach while Ratliff et al [122] and Risanger et al [124] apply a data-driven inverse KKT approach. Allen et al [13] extends the inverse KKT approach to generalized Nash equilibria, where player decisions not only affect each other's objectives but also each other's feasible regions, for example, by sharing a joint capacity constraint ( N i=1 x i ≤ µ).…”
Section: Additional Applicationsmentioning
confidence: 99%
“…However, for an optimization model, these three variables cannot be uniquely determined without additional constraints provided, which means that multiple solutions will occur. That is the weakness of the inverse optimization methodology in its nature [33].…”
Section: Model Reformation To Avoid Multi-solutionmentioning
confidence: 99%
“…The inverse model is also driven by data but does not need to be trained repeatedly with plenty of data as some other data-driven methods need [32]. Furthermore, it is more interpretable than ANN-based methods [33].…”
Section: Introductionmentioning
confidence: 99%
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