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Parallel Frameworks for Robust Optimization of Medium-Frequency Transformers

机译:用于中频变压器的强大优化的并行框架

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Current optimization methods for medium-frequency transformers (MFTs) within power electronic converters yield unrealistic results in the multiphysics framework. Comparing the optimal design to an experimental setup for a 3.5-kW MFT, the core loss is underestimated by 28%, which results in the experimental steady-state temperatures being 10 degrees C greater than the analytically optimized model. To counteract these disadvantages, an optimization procedure, using the aggressive space mapping (ASM) technique, is experimentally verified and compared with the previous state-of-the-art (SOA) method. It is shown that the ASM design produces more realistic and feasible experimental outcomes than the SOA design. The core losses are accurately predicted to within 10%, which, in turn, vastly improves the thermal modeling accuracy. The ASM method accurately predicts the core hot spot temperature and the average core temperature. This work also introduces a robust optimization method to the MFT design process to handle variations from both converter-level attributes and manufacturing tolerances to create a potential design region, which contains 97.725% of possible design outcomes. This method replaces the nominal design optimization that is used to produce the optimized MFTs in the SOA and ASM methods.
机译:电力电子转换器中的中频变换器(MFT)的电流优化方法产生多体框架中的不切实际的结果。将最佳设计与3.5千瓦MFT的实验设置进行比较,核心损失低估了28%,这导致实验稳态温度大于分析优化的模型10℃。为了抵消这些缺点,使用激进空间映射(ASM)技术的优化过程是通过先前的最先进的(SOA)方法进行实验验证的。结果表明,ASM设计产生比SOA设计更现实和可行的实验结果。核心损失准确预测到10%以内,这反过来又会大大提高了热建模精度。 ASM方法精确地预测核心热点温度和平均核心温度。这项工作还向MFT设计过程引入了强大的优化方法,以处理来自转换器级属性和制造公差的变化,以创建潜在的设计区域,其中包含97.725%的可能的设计结果。此方法替换了标称设计优化,用于在SOA和ASM方法中产生优化的MFT。

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