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Combination of inverse problem and neural network for thermal behaviour calculation of mould process based on temperature measurements in plant trial

机译:在工厂试验中基于温度测量的反问题和神经网络相结合的模具过程热行为计算

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摘要

Heat transfer between mould and strand has a critical influence on billet quality, caster productivity and operating safety. It is very important to obtain the correct distributions of temperature and heat flux, and many studies are made on the calculation methods of heat transfer between strand and mould, aiming to reduce the computation time and improve the calculation accuracy. In the present paper, based on measured data of temperature and heat flux during round billet continuous casting, the calculation method which combines the online measurement data and numerical simulation was investigated. Through identifying the local thermal resistance and its distribution between the mould and the strand by an inverse heat transfer model, the heat flux and shell thickness profiles were calculated. To avoid the iterative solution by inverse model, a faster alternative model using an artificial neural network was developed to predict the thermal resistance from the measured temperature. After training, there is an exact correspondence between the observed temperature values and the thermal resistance. The calculation results obtained by the combination of neural network and numerical simulation can correctly reflect the characteristics of non-uniform heat transfer around the mould circumference, which provides a worthwhile and applicable method for online calculation and visual technology of heat transfer and solidification in continuous casting mould.
机译:模具和铸坯之间的热传递对坯料质量,连铸机生产率和操作安全性具有至关重要的影响。获得正确的温度和热通量分布非常重要,并且对线与模具之间传热的计算方法进行了很多研究,以减少计算时间,提高计算精度。本文基于圆坯连铸过程中的温度和热通量实测数据,研究了将在线实测数据与数值模拟相结合的计算方法。通过逆传热模型识别局部热阻及其在模具和铸坯之间的分布,可以计算出热通量和壳厚分布。为避免通过逆模型进行迭代求解,开发了一种使用人工神经网络的较快替代模型,以根据测得的温度预测热阻。训练后,观察到的温度值和热阻之间存在精确的对应关系。通过神经网络和数值模拟相结合得到的计算结果可以正确反映结晶器周围传热不均匀的特征,为连铸过程中传热与凝固的在线计算和可视化技术提供了一种有价值的适用方法。模子。

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