2023
DOI: 10.1515/auto-2023-0017
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Latin hypercubes for constrained design of experiments for data-driven models

Fabian Schneider,
Ralph J. Hellmig,
Oliver Nelles

Abstract: The quality of data used for data-driven modeling affects the model performance significantly. Thus, design of experiments (DoE) is an important part during model development. The design space is constrained in many applications. In this work, the constrained case is investigated. An Latin hypercube based approach is applied and analyzed for strongly constrained design spaces. Contrary to commonly used optimization techniques, an incremental procedure is proposed. In every step, new data are added to the desig… Show more

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