Towards Design Rule Extraction from Large Computational Datasets by Causal Correlation Analysis

Authors

Aron Szucs
ABB Large Motors and Generators, Technology Centre
https://orcid.org/0000-0001-6539-2154
Juhani Mantere
ABB Large Motors and Generators, Technology Centre
Jan Westerlund
ABB Large Motors and Generators, Technology Centre

Synopsis

Intuitive interpretation of the results from multi- objective numerical optimization of magnetically non-linear electrical machines is very challenging. The resulting designs are typically used “as they are” or tuned by trial and error, due to  lack of deeper understanding needed for the tuning in the multi- objective Optimum Design Space (ODS). The results consisting of large sets of generic and optimum designs contain invaluable information on the emerging design rules. We recommend causal correlation analysis for design rule extraction.

Author Biographies

Aron Szucs, ABB Large Motors and Generators, Technology Centre

Helsinki, Finland. E-mail: aron.szucs@fi.abb.com

Juhani Mantere, ABB Large Motors and Generators, Technology Centre

Helsinki, Finland. E-mail: juhani.mantere@fi.abb.com

Jan Westerlund, ABB Large Motors and Generators, Technology Centre

Helsinki, Finland. E-mai: jan.westerlund@fi.abb.com

Downloads

Published

May 14, 2025

How to Cite

Szucs, A., Mantere, J., & Westerlund, J. (2025). Towards Design Rule Extraction from Large Computational Datasets by Causal Correlation Analysis. In M. P. Martin Petrun, A. Demenko, W. Pietrowski, & C. Dobler (Eds.), & D. Loukrezis & M. Graeser, XXVIII. Symposium Electromagnetic Phenomena in Nonlinear Circuits (EPNC 2024): Conference Proceedings (pp. 191-198). University of Maribor Press. https://press.um.si/index.php/ump/catalog/book/963/chapter/479