A survey of nonlinear robust optimization

Robust optimization (RO) has attracted much attention from the optimization community over the past decade. RO is dedicated to solving optimization problems subject to uncertainty: design constraints must be satisfied for all the values of the uncertain parameters within a given uncertainty set. Unc...

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Bibliographic Details
Published inINFOR. Information systems and operational research Vol. 58; no. 2; pp. 342 - 373
Main Authors Leyffer, Sven, Menickelly, Matt, Munson, Todd, Vanaret, Charlie, Wild, Stefan M.
Format Journal Article
LanguageEnglish
Published United States Taylor & Francis 01.01.2020
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Summary:Robust optimization (RO) has attracted much attention from the optimization community over the past decade. RO is dedicated to solving optimization problems subject to uncertainty: design constraints must be satisfied for all the values of the uncertain parameters within a given uncertainty set. Uncertainty sets may be modeled as deterministic sets (boxes, polyhedra, ellipsoids), in which case the RO problem may be reformulated via worst-case analysis, or as families of distributions. The challenge of RO is to reformulate or approximate robust constraints so that the uncertain optimization problem is transformed into a tractable deterministic optimization problem. Most reformulation methods assume linearity of the robust constraints or uncertainty sets of favorable shape, which represents only a fraction of real-world applications. This survey addresses nonlinear RO and includes problem formulations and applications, solution approaches, and available software with code samples.
Bibliography:AC02-06CH11357
USDOE Office of Science (SC), Advanced Scientific Computing Research (ASCR)
ISSN:0315-5986
1916-0615
DOI:10.1080/03155986.2020.1730676