Title:Optimising linear regression for modelling the dynamic thermal behaviour of electrical machines using NSGA-II, NSGA-III and MOEA/D.Author(s):Tiwonge Msulira Banda, Ciprian Zavoianu, Andrei Petrovski, Daniel Wöckinger, Gerd BramerdorferAbstract:For engineers to create durable and effective electri cal assemblies, modelling and controlling heat transfer in rotating electrical machines (such as motors) is crucial. In this paper, we compare the performance of three multi-objective evolutionary algorithms, namely NSGA-II, NSGA-III, and MOEA/D in find ing the best trade-offs between data collection costs/effort and expected modelling errors when creating low-complexity Linear Regression (LR) models that can accurately estimate key motor component temperatures under various operational scenarios. The algorithms are integrated into a multi-objective thermal modelling strategy that aims to guide the discovery of models that are suitable for microcontroller deployment. Our findings show that while NSGA-II and NSGA-III yield comparably good optimisation outcomes, with a slight, but statistically significant edge for NSGA-II, the results achieved by MOEA/D for this use case are below par.Booktitle:Proceedings of the 25th International symposium on symbolic and numeric algorithms for scientific computing (SYNASC 2023)Page Reference:9 page(s)Publishing:2024