IET Power Electronics (Aug 2024)

Multi‐objectives optimization of parameter design for LLC converter based on data‐driven surrogate model

  • Buxiang Zhou,
  • Miao Zhang,
  • Huan Luo,
  • Yiwei Qiu,
  • Shi Chen,
  • Tianlei Zang,
  • Yi Zhou,
  • Xiang Zhou

DOI
https://doi.org/10.1049/pel2.12525
Journal volume & issue
Vol. 17, no. 10
pp. 1200 – 1215

Abstract

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Abstract Due to high computation complexity, traditional design methods for LLC converter usually consider limited kinds of performance, and the process for searching the optimal parameter scheme is discrete, which might cause the missing of real optimal solution. In order to solve these problems, a multi‐objectives optimization design method for the LLC converter is proposed in this paper. According to the numerical calculation method, a closed parameter space for resonant parameters is established under the constraints of operation mode, switching frequency, zero voltage switching (ZVS), and voltage stress of resonant capacitor. Besides, the root‐mean‐square (RMS) value of resonant current and secondary current, as well as the core loss of the transformer, are selected as the optimization objectives. Non‐dominated sorting genetic algorithm (NSGA‐II) is utilized to deal with these multi‐objective formulations. In order to reduce the computation complexity, a data‐driven method, called adaptive polynomial approximation (APA), is selected to obtain the explicit expressions of the parameter space and the optimization objectives. Then, by substituting this simplified surrogate model into the NSGA‐II algorithm, the optimal parameter scheme is obtained. The comprehensive comparison analysis is performed, and a 400 W/48 V experimental prototype was built to verify the theoretical analysis, which shows that the proposed method features the highest efficiency of 95%.

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