基于深度学习的开关电源传导辐射暂态识别

Mattia Simonazzi, L. Sandrolini, Marcello Iotti, A. Mariscotti
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引用次数: 1

摘要

由开关模式电源(smps)引起的传导发射(CE)在很宽的频率范围内呈现谐波和谐波间畸变,并且通常表现出非平稳行为。这需要长期和复杂的措施,以确保所有的瞬态组件被正确评估。采用人工神经网络(ANN)对SMPS CE进行分析和分类,目的是区分受瞬态分量强烈影响的测量扰动部分,并突出CE谱的最相关特征。因此,后续的频率分析可以在较小的数据集上执行,从而节省了时间和计算工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-Learning Based Transient Identification in Switched-Mode Power Supplies Conducted Emissions
Conducted emissions (CE) caused by Switched-Mode Power Supplies (SMPSs) present harmonic and interharmonic distortion that occur in a wide range of frequencies and usually reveal a nonstationary behaviour. This requires long and complicated measures to ensure all the transient components to be correctly assessed. The analysis and classification of SMPS CE is addressed by employing an artificial neural network (ANN), with the aim of discriminate the part of the measured disturbance that is strongly affected by transient components and highlight the most relevant features of the CE spectrum. Thus, the subsequent frequency analysis can be performed on a smaller data set, allowing savings in time and computational efforts.
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