To read this content please select one of the options below:

Multi-objective optimization and uncertainty quantification for inductors based on neural network

Xiaohan Kong (Graduate School of Information Science and Technology, Hokkaido University, Sapporo, Japan)
Shuli Yin (Graduate School of Information Science and Technology, Hokkaido University, Sapporo, Japan)
Yunyi Gong (Graduate School of Information Science and Technology, Hokkaido University, Sapporo, Japan)
Hajime Igarashi (Graduate School of Information Science and Technology, Hokkaido University, Sapporo, Japan)

Abstract

Purpose

The prolonged training time of the neural network (NN) has sparked considerable debate regarding their application in the field of optimization. The purpose of this paper is to explore the beneficial assistance of NN-based alternative models in inductance design, with a particular focus on multi-objective optimization and uncertainty analysis processes.

Design/methodology/approach

Under Gaussian-distributed manufacturing errors, this study predicts error intervals for Pareto points and select robust solutions with minimal error margins. Furthermore, this study establishes correlations between manufacturing errors and inductance value discrepancies, offering a practical means of determining permissible manufacturing errors tailored to varying accuracy requirements.

Findings

The NN-assisted methods are demonstrated to offer a substantial time advantage in multi-objective optimization compared to conventional approaches, particularly in scenarios where the trained NN is repeatedly used. Also, NN models allow for extensive data-driven uncertainty quantification, which is challenging for traditional methods.

Originality/value

Three objectives including saturation current are considered in the multi-optimization, and the time advantages of the NN are thoroughly discussed by comparing scenarios involving single optimization, multiple optimizations, bi-objective optimization and tri-objective optimization. This study proposes direct error interval prediction on the Pareto front, using extensive data to predict the response of the Pareto front to random errors following a Gaussian distribution. This approach circumvents the compromises inherent in constrained robust optimization for inductance design and allows for a direct assessment of robustness that can be applied to account for manufacturing errors with complex distributions.

Keywords

Citation

Kong, X., Yin, S., Gong, Y. and Igarashi, H. (2024), "Multi-objective optimization and uncertainty quantification for inductors based on neural network", COMPEL - The international journal for computation and mathematics in electrical and electronic engineering, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/COMPEL-11-2023-0552

Publisher

:

Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

Related articles