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Nelles, Mathematics 9 (2021).","chicago":"Voigt, Tim, Martin Kohlhase, and Oliver Nelles. “Incremental DoE and Modeling Methodology with Gaussian Process Regression: An Industrially Applicable Approach to Incorporate Expert Knowledge.” <i>Mathematics</i> 9, no. 19 (2021). <a href=\"https://doi.org/10.3390/math9192479\">https://doi.org/10.3390/math9192479</a>."},"publisher":"MDPI AG","date_updated":"2026-03-17T15:28:49Z","intvolume":"         9","doi":"10.3390/math9192479"}]
