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Neural Networks for the Estimation of Low-Order Statistical Moments of a Stochastic Dielectric

机译:用于估计随机电介质的低阶统计矩的神经网络

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We present two different machine learning strategies to estimate the two lowest-order statistical moments of a two-dimensional inhomogeneous dielectric medium with stochastic variations, which have a Gaussian distribution for every point in the measurement region and a Gaussian auto-covariance function. In particular, we consider and compare (i) a fully-connected neural network and (ii) an affine model. These are trained to predict the pointwise mean and standard deviation of the underlying stochastic dielectric based on the scattering parameters, which are computed at the ports of four sensors that are placed around the circumference of the two-dimensional measurement region. We use the mean and variance of the real and imaginary part of the scattering parameters in a feature-extraction step before training. It is demonstrated that both machine learning strategies predict the mean permittivity well. However, the neural network outperforms the affine model for the prediction of the standard deviation. In addition, this article reviews the workflow for training, validating and testing a neural network in the context of measurement applications, where the ambition is to give an introduction to practitioners who would like to explore neural networks for their measurement application.
机译:我们展示了两种不同的机器学习策略来估计具有随机变化的二维不均匀介电介质的两个最低阶统计矩,这对于测量区域中的各个点和高斯自动协方差函数具有高斯分布。特别是,我们考虑并比较(i)一个完全连接的神经网络和(ii)仿射模型。训练这些以基于散射参数预测底层随机电介质的点均值和标准偏差,其在四个传感器的端口处计算在围绕二维测量区域的圆周。在训练之前,我们在特征提取步骤中使用散射参数的实数和虚部的均值和虚部的平均值和方差。证明这两种机器学习策略都预测了平均介电常验。然而,神经网络优于预测标准偏差的仿射模型。此外,本文审查了在测量应用程序的背景下进行培训,验证和测试神经网络的工作流程,其中野心是向从业者介绍,他们希望探索其测量应用的神经网络。

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