Increasing the metrological characteristics of anechoic chambers due to a posteriori analysis based on artificial neural networks

Yuliya S. Harshkova, Sergey V. Maly, A. Tkachenia, I. Kheidorov
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Abstract

This article considers the possibility of improving the metrological characteristics of an anechoic chamber due to a posteriori processing of measurement results based on a generative adversarial model of an artificial neural network in order to reduce the influence on the distribution of the electromagnetic field in the measuring zone of waves reflected from the outer boundaries of the chamber and the equipment located in it. The training of the neural network was carried out on a data set obtained as part of a computational experiment and including the distribution of the electromagnetic field in the anechoic region for the model of an anechoic chamber and free space for given source layouts. The distributions of the real and imaginary parts of the electric component of the electromagnetic field were encoded with colour images. On the example of two-dimensional models of anechoic chambers, the practical feasibility of the proposed approach to a posteriori processing of measurement results is shown. Methods for estimating the accuracy of a posteriori processing of measurement results based on the metrics used to assess the quality of graphic images and calculating the errors in the amplitudes of the electric component of the electromagnetic field are given. The possibility of implementing the proposed method of a posteriori analysis in the framework of natural microwave measurements in anechoic chambers is assessed.
基于人工神经网络的后验分析提高了暗室的计量特性
本文考虑了利用人工神经网络生成对抗模型对暗室测量结果进行后验处理的可能性,以减少从暗室外边界和暗室内设备反射的波对测量区内电磁场分布的影响。神经网络的训练是在作为计算实验的一部分获得的数据集上进行的,该数据集包括暗室模型的消声区域中的电磁场分布和给定源布局的自由空间。用彩色图像对电磁场电分量的实部和虚部分布进行编码。以暗室二维模型为例,说明了该方法对测量结果进行后验处理的实际可行性。给出了基于图形图像质量评价指标和电磁场电分量幅值误差计算的测量结果后验处理精度估计方法。评估了在暗室自然微波测量框架中实施所提出的后验分析方法的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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