根据en55032基于深度神经网络的辐射发射实验预测及最终测量过程优化

Hussam Elias, Ninovic Perez, H. Hirsch
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引用次数: 0

摘要

电磁干扰(EMI)是指存在不需要的电磁发射,它有可能引起电子和电子设备的干扰。因此,任何设备都必须通过EMC (electromagnetic compatibility)认证。为了满足这些要求,设备必须在经过认证的EMC测试公司进行传导和辐射发射测试。大多数测试都很耗时,因此在进行EMI测试时,成本和测试时间是很大的挑战。本文提出了一种方法,利用开发的测量软件和深度神经网络(DNN),在30MHz至1GHz范围内,根据en55032标准,在EMI测量的最后测量阶段有效地找到关键频率的有价值位置。首先,利用一维卷积神经网络(1D CNN)模型结构相对简单、数据特征提取能力强的优势,对满足最大辐射发射水平的位置进行预测。由于CNN对高输入方差发射水平的有效性和预测精度较低,因此采用CNN与长短期记忆(LSTM)相结合的混合深度学习神经网络框架来预测高输入方差发射水平的最坏情况。dnn是在德国埃森的Cetecom GmbH公司的半消声室(SAC)中对不同类型的被测设备(EUTs)进行的真实EMI测量进行训练的。其次,将我们开发的软件的结果与罗德与施瓦茨EMC32软件的目标标记结果进行比较,以评估我们提出的测量方法。通过预测转台的方位角和天线的高度来确定有价值的位置,有效地减少了执行最终测量阶段所需的时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experimental Prediction of the Radiated Emission and Final Measurement Process Optimization based on Deep Neural Networks According to EN 55032
Electromagnetic interference (EMI) is the presence of unwanted electromagnetic emission which has the potential to cause disturbances in electronic and electronic devices. Therefore, any equipment must be certified that it meets electromagnetic compatibility (EMC) requirements. To meet these requirements the equipment must be tested for conducted and radiated emissions in a certified EMC testing company. Most of these tests are time-consuming, thus cost and test time are big challenges when performing an EMI test. In this paper, an approach is proposed to find effectively the worth-case positions during the final measurement phase on critical frequencies in EMI measurements according to the norm EN 55032 in the range 30MHz to 1GHz by using a developed measurement software and deep neural networks (DNN). Firstly, because of its advantage of relatively simple model structure and strong data features extraction, a one-dimensional convolution neural network (1D CNN) was used to predict the positions that meet the maximum radiation emission level. The effectiveness and prediction accuracy of CNNs for the high input variance emission levels were low, therefore a hybrid deep learning neural network framework, that combines CNN with long short term memory(LSTM) was adopted to forecast the worst-case of the high variance emission levels. The DNNs were trained using real EMI measurements for different types of equipment under test (EUTs) in a Semi Anechoic Chamber (SAC) by Cetecom GmbH in Essen, Germany. Secondly, the results from our developed software were compared with the target labeled results from Rode& Schwarz EMC32 Software to evaluate our proposed measurement. By determining the worth-case position by predicting the azimuth of the turntable and the height of the antenna, the required time to perform the final measurement phase is effectively decreased.
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