Feasibility robust optimization techniques solve optimization problems with uncertain parameters that appear only in their constraint functions. Solving such problems requires finding an optimal solution that is feasible for all realizations of the uncertain parameters. This paper presents a new feasibility robust optimization approach involving uncertain parameters defined on continuous domains without any known probability distributions. The proposed approach integrates a new sampling-based scenario generation scheme with a new scenario reduction approach in order to solve feasibility robust optimization problems. An analysis of the computational cost of the proposed approach was performed to provide worst case bounds on its computational cost. The new proposed approach was applied to three test problems and compared against other scenario-based robust optimization approaches. A test was conducted on one of the test problems to demonstrate that the computational cost of the proposed approach does not significantly increase as additional uncertain parameters are introduced. The results show that the proposed approach converges to a robust solution faster than conventional robust optimization approaches that discretize the uncertain parameters.
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ASME 2018 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference
August 26–29, 2018
Quebec City, Quebec, Canada
Conference Sponsors:
- Design Engineering Division
- Computers and Information in Engineering Division
ISBN:
978-0-7918-5176-0
PROCEEDINGS PAPER
Feasibility Robust Optimization via Scenario Generation and Reduction
Eliot Rudnick-Cohen,
Eliot Rudnick-Cohen
University of Maryland, College Park, MD
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Jeffrey W. Herrmann,
Jeffrey W. Herrmann
University of Maryland, College Park, MD
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Shapour Azarm
Shapour Azarm
University of Maryland, College Park, MD
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Eliot Rudnick-Cohen
University of Maryland, College Park, MD
Jeffrey W. Herrmann
University of Maryland, College Park, MD
Shapour Azarm
University of Maryland, College Park, MD
Paper No:
DETC2018-85990, V02BT03A059; 10 pages
Published Online:
November 2, 2018
Citation
Rudnick-Cohen, E, Herrmann, JW, & Azarm, S. "Feasibility Robust Optimization via Scenario Generation and Reduction." Proceedings of the ASME 2018 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference. Volume 2B: 44th Design Automation Conference. Quebec City, Quebec, Canada. August 26–29, 2018. V02BT03A059. ASME. https://doi.org/10.1115/DETC2018-85990
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