2018
DOI: 10.26434/chemrxiv.6195176.v1
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Chimera: Enabling Hierarchy Based Multi-Objective Optimization for Self-Driving Laboratories

Abstract: <div><div>We introduce Chimera, a general purpose achievement scalarizing function (ASF) for multi-objective optimization problems in experiment design. Chimera combines concepts of a priori scalarizing with ideas from lexicographic approaches. It constructs a single merit-based function which implicitly accounts for a provided hierarchy in the objectives. The performance of the suggested ASF is demonstrated on several well-established analytic multi-objective benchmark sets using different single-… Show more

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