贝叶斯优化
高斯过程
计算机科学
克里金
贝叶斯概率
过程(计算)
回归
人工智能
机器学习
数学优化
高斯分布
数学
统计
量子力学
操作系统
物理
作者
Johannes Roßmann,Maarten J. Kamper,Christoph M. Hackl
标识
DOI:10.1109/tec.2025.3544330
摘要
Duringthe design of electrical machines, multiple performance objectives need to be considered. Although stochastic optimization algorithms are extensively employed for this purpose, a primary drawback is the time-consuming and substantial number of design evaluations. Bayesian optimization (BO) presents an alternative that can address multi-objective optimization in particular for objective functions which are expensive to evaluate. Probabilistic surrogate models based on Gaussian process regression (GPR) form its basis. The high accuracy of Gaussian processes and their uncertainty estimation render Bayesian optimization extremely efficient and effective. Nevertheless, Bayesian optimization is hardly used in the field of electric machine design. Consequently, this study explores, analyses and evaluates the application of global multi-objective Bayesian optimization for machine design. Employing four distinct Bayesian acquisition functions, the study conducts a three-objective design optimization of a reluctance synchronous machine characterized by 14 design variables. A comprehensive comparison with the most common NSGA-II reveals that significantly superior outcomes are achievable within a considerably shorter time.
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