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Prediction of Physical Properties of Steels Using Artificial Neural Networks for Numerical Simulation of Electrical Installations

机译:用人工神经网络预测电气装置数值模拟钢材的物理性质

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摘要

For modern electric installations to be competitive, they should be supported by numerical simulations of high quality and accuracy. In turn, to improve the accuracy of numerical simulation of electric installations, it is required to take into account the thermal-physical, electromagnetic, and mechanical properties of materials as much as possible. This article discusses the possibility of predicting the properties of carbon steels on the basis of their chemical composition for a wide temperature range using a set of artificial neural networks as exemplified by electrical resistivity. Training and verification of neural networks have been based on experimental data from reference books and databases. The methods have been applied so as to avoid retraining of neural networks, as well as to use initial data more completely. The training results of neural networks are given, the error level is evaluated, and the potential is determined of applying neural networks to production of material properties and, as a consequence, improving simulation quality.
机译:对于现代电气装置具有竞争力,应通过高质量和准确性的数值模拟来支持它们。反过来,为了提高电气装置数值模拟的准确性,需要尽可能地考虑材料的热物理,电磁和机械性能。本文讨论了在其使用一组人工神经网络的基于宽温度范围的化学组合物来预测碳钢的性能的可能性,如电阻率所示。神经网络的培训和验证基于来自参考书和数据库的实验数据。已经应用了这些方法,以避免重新再培训神​​经网络,以及更完整地使用初始数据。给出了神经网络的训练结果,评估了误差水平,并且确定了将神经网络应用于材料特性的生产,并且因此提高了模拟质量。

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