Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
ROmodel: modeling robust optimization problems in Pyomo
This paper introduces ROmodel, an open source Python package extending the modeling capabilities of the algebraic modeling language Pyomo to robust optimization problems. ROmodel helps practitioners transition from deterministic to robust optimization through modeling objects which allow formulating robust models in close analogy to their mathematical formulation. ROmodel contains a library of commonly used uncertainty sets which can be generated using their matrix representations, but it also allows users to define custom uncertainty sets using Pyomo constraints. ROmodel supports adjustable variables via linear decision rules. The resulting models can be solved using ROmodels solvers which implement both the robust reformulation and cutting plane approach. ROmodel is a platform to implement and compare custom uncertainty sets and reformulations. We demonstrate ROmodel’s capabilities by applying it to six case studies. We implement custom uncertainty sets based on (warped) Gaussian processes to show how ROmodel can integrate data-driven models with optimization.
ROmodel: modeling robust optimization problems in Pyomo
This paper introduces ROmodel, an open source Python package extending the modeling capabilities of the algebraic modeling language Pyomo to robust optimization problems. ROmodel helps practitioners transition from deterministic to robust optimization through modeling objects which allow formulating robust models in close analogy to their mathematical formulation. ROmodel contains a library of commonly used uncertainty sets which can be generated using their matrix representations, but it also allows users to define custom uncertainty sets using Pyomo constraints. ROmodel supports adjustable variables via linear decision rules. The resulting models can be solved using ROmodels solvers which implement both the robust reformulation and cutting plane approach. ROmodel is a platform to implement and compare custom uncertainty sets and reformulations. We demonstrate ROmodel’s capabilities by applying it to six case studies. We implement custom uncertainty sets based on (warped) Gaussian processes to show how ROmodel can integrate data-driven models with optimization.
ROmodel: modeling robust optimization problems in Pyomo
Optim Eng
Wiebe, Johannes (Autor:in) / Misener, Ruth (Autor:in)
Optimization and Engineering ; 23 ; 1873-1894
01.12.2022
22 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
On solution sets for robust optimization problems
British Library Online Contents | 2016
|On nonsmooth optimality theorems for robust multiobjective optimization problems
British Library Online Contents | 2015
|Robust design optimization of TMDs in vehicle–bridge coupled vibration problems
Online Contents | 2016
|