人工神经网络和热探针法在绝热材料热参数测定中的应用。第二部分:神经网络的应用

S. Chudzik, W. Minkina, S. Gryś
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引用次数: 6

摘要

本文第一部分基于二维热传导模型,建立了热探针和辅助温度计在材料样品中非稳态热流过程的离散模型。在Matlab环境下,采用有限元方法建立模型。论文的第二部分主要讨论了利用神经网络确定热参数的可能性。利用人工神经网络(ANN)估计固体反热传导问题的系数。该网络根据热探头和辅助温度计的温度响应确定有效导热系数和有效热扩散系数的值。在选择最优人工神经网络结构的过程中,对几种构型进行了评估。分析了测量不确定度对热参数辨识值的影响。在Matlab环境下进行了训练过程和仿真分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application of the artificial neural network and hot probe method in thermal parameters determination of heat insulation materials Part 2 - application of the neural network
In part 1 of the paper, the discrete model of a nonstationary heat flow process in the sample of material with a hot probe and an auxiliary thermometer based on a two-dimensional heat-conduction model was presented. To create the model the finite element method (FEM) implemented in the Matlab environment was used. The part two of the paper is concentrated on possibility of using a neural network for the thermal parameters determination. The artificial neural network (ANN) is used to estimate the coefficients of the inverse heat conduction problem for solid. The network determines the value of the effective thermal conductivity and the effective thermal diffusivity on the basis of temperature responses of the hot probe and the auxiliary thermometer. During selection of optimal ANN architecture several configurations were evaluated. The influence of measurands uncertainty on identified values of the thermal parameters was also analyzed. Training process and simulation analysis were conducted in the Matlab environment.
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