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Joint Model of Probabilistic-Robust (Probust) Constraints Applied to Gas Network Optimization

Dennis Adelhütte, Denis Aßmann, Tatiana González Grandón, Martin Gugat, Holger Heitsch, René Henrion, Frauke Liers, Sabrina Nitsche, Rüdiger Schultz, Michael Stingl, David Wintergerst

2020Vietnam Journal of Mathematics15 citationsDOIOpen Access PDF

Abstract

Abstract Optimization problems under uncertain conditions abound in many real-life applications. While solution approaches for probabilistic constraints are often developed in case the uncertainties can be assumed to follow a certain probability distribution, robust approaches are usually applied in case solutions are sought that are feasible for all realizations of uncertainties within some predefined uncertainty set. As many applications contain different types of uncertainties that require robust as well as probabilistic treatments, we deal with a class of joint probabilistic/robust constraints. Focusing on complex uncertain gas network optimization problems, we show the relevance of this class of problems for the task of maximizing free booked capacities in an algebraic model for a stationary gas network. We furthermore present approaches for finding their solution. Finally, we study the problem of controlling a transient system that is governed by the wave equation. The task consists in determining controls such that a certain robustness measure remains below some given upper bound with high probability.

Topics & Concepts

Probabilistic logicRobust optimizationRobustness (evolution)Mathematical optimizationOptimization problemMathematicsJoint probability distributionProbability distributionUpper and lower boundsAlgebraic numberComputer scienceBiochemistryStatisticsMathematical analysisGeneChemistryProcess Optimization and IntegrationAdvanced Control Systems OptimizationRisk and Portfolio Optimization