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首页> 外文期刊>International journal of materials & product technology >A new predictive neural architecture for modelling electric field patterns in microwave-heating processes
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A new predictive neural architecture for modelling electric field patterns in microwave-heating processes

机译:一种新型的预测神经体系结构,用于建模微波加热过程中的电场模式

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摘要

In this work, a learning architecture based on neural networks has been employed for modelling the electric field pattern along an axis of a multimode microwave-heating cavity that contains dielectric materials. The multilevel configuration of this architecture, based on Radial Basis Functions (RBF) and polynomial structures, allows the fitting of the electric field as a function of the dielectric parameters (i.e. ε~* = ε′—jε″) along one axis (x) of the cavity as well as inside the sample. In the learning stage, different samples have trained the neural architecture, by means of the mapping between (ε′,ε″) and the absolute value of the electric field pattern, generated with a 2D simulation platform based on the Finite Elements Method (FEM). The results obtained with conventional samples, such as polyester, epoxy, silicon crystal or beef steak, show that the proposed neural model is able to accurately predict the electric field spatial distribution under appropriate training processes.
机译:在这项工作中,已经采用了基于神经网络的学习架构来对包含电介质材料的多模微波加热腔的轴上的电场模式进行建模。基于径向基函数(RBF)和多项式结构的这种体系结构的多级配置允许沿着一个轴(x)拟合电场,将其作为介电参数(即ε〜* =ε'-jε'')的函数)以及样品内部。在学习阶段,不同的样本通过(ε',ε'')与电场模式的绝对值之间的映射来训练神经结构,该映射是基于有限元方法(FEM)的2D仿真平台生成的)。使用常规样品(例如聚酯,环氧树脂,硅晶体或牛排)获得的结果表明,所提出的神经模型能够在适当的训练过程下准确预测电场的空间分布。

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