Artificial-Intelligence-Based Design for Circuit Parameters of Power Converters
X. Li, X. Zhang, F. Lin, F. Blaabjerg

TL;DR
This paper introduces an AI-driven method for designing power converter parameters that automates analysis and optimization, reducing human effort and increasing accuracy, validated through hardware experiments on a buck converter.
Contribution
The paper proposes a novel AI-based design approach that automates both analysis and optimization in power converter parameter design, improving efficiency and accuracy over traditional methods.
Findings
AI-D approach achieves high accuracy in parameter design
Automation reduces manual analysis effort
Validated with hardware experiments on a buck converter
Abstract
Parameter design is significant in ensuring a satisfactory holistic performance of power converters. Generally, circuit parameter design for power converters consists of two processes: analysis and deduction process and optimization process. The existing approaches for parameter design consist of two types: traditional approach and computer-aided optimization (CAO) approach. In the traditional approaches, heavy human-dependence is required. Even though the emerging CAO approaches automate the optimization process, they still require manual analysis and deduction process. To mitigate human-dependence for the sake of high accuracy and easy implementation, an artificial-intelligence-based design (AI-D) approach is proposed in this article for the parameter design of power converters. In the proposed AI-D approach, to achieve automation in the analysis and deduction process, simulation…
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