Cosimulation Approach for High-Frequency Magnetic Component Modeling in DC-DC Converters
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Date
2024-12
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Western Michigan University
Abstract
This dissertation aims to evaluate the efficacy of a novel methodology to support the
transient analysis and electromagnetic design of high-frequency transformers and inductors in
power converters. By integrating finite element method (FEM)-based tools with dynamic analysis
techniques, the proposed methodology accurately reflects the physical characteristics of high-
frequency magnetic components under both steady-state and transient conditions in power
converters. This approach addresses the stresses generated by the extensive integration of power
electronic-interfaced sources, loads, and storage units in various power electronic topologies.
High-frequency transformers and inductors are highlighted as crucial elements for the next
generation of energy systems, driven by advancements in distributed power generation, DC power
grids, energy storage, and sensitive electronic loads. High-frequency transformers offer benefits
such as galvanic isolation, high power density, small size, low cost, high efficiency, output
regulation, and improved electromagnetic compatibility performance, making them vital for
modern energy applications. High-frequency inductors, on the other hand, enhance the efficiency
of energy transfer, stabilize voltage regulation, and minimize switching losses in power converters,
significantly improving the performance of photovoltaic power systems, electric drives, and
adjustable power supplies. The proposed methodology is implemented through cosimulation
between COMSOL Multiphysics® and MATLAB/Simulink®, demonstrating its potential to
advance the design and analysis of high-frequency magnetic components.
Description
Keywords
High-frequency Transformers, Distributed Power Generation, finite element method (FEM)-based, dynamic analysis, design, analysis
Citation
Alyami, Faraj. Western Michigan University ProQuest Dissertations & Theses, 2024. 31635724.