人工神经网络建模以验证实验室规模ROT的实验数据

P. Biswas, K. Chakraborty, Pratik Kumar Raha, P. Mandal
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引用次数: 0

摘要

在冶金行业中,废钢台架(rot)是生产独特钢种的关键。冷却速率控制着钢的精细组织,而精细组织受许多因素的影响,如对流换热系数、平均膜温度和许多其他因素。因此,要获得一种新的钢种,就必须将所有这些因素最佳地结合起来。在离实验装置预设的上下喷嘴距离处,利用实验室数据,如对流换热系数、平均膜温度和冷却剂的质量流量,获得了冷却速率作为钢特性的函数。利用三个人工神经网络程序对实验装置的性能进行了验证和检查,以优化冷却速率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling of Artificial Neural Network to Validate the Experimental Data of a Laboratory Scale ROT
Run Out Tables (ROTs) are critical in the metallurgical sector for producing unique steel grade. The cooling rate controls the fine structure of steel, which is influenced by a number of factors such as the convective heat transfer coefficient, mean film temperature and many others. As a result, achieving a new steel grade necessitates the optimum combination of all of these factors. The cooling rate as a function of steel characteristics is obtained employing laboratory data such as convective heat transfer coefficient, mean film temperature, and mass flow rate of coolant at preset upper and lower nozzle distances from the experimental setup. Three Artificial Neural Network programs have been used to validate and check the performance of the experimental setup for optimize the cooling rate.
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