Prediction of Mechanical Properties of Seamless Steel Tubes Using Artificial Neural Networks

Ramon Santos Correa, Patricia Teixeira Sampaio, R. Braga, Victor Alberto Lambertucci, G. M. Almeida, A. Braga
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Abstract

A bottleneck of laboratory analysis in process industries including steelmaking plants is the low sampling rate. Inference models using only variables measured online have then been used to made such information available in advance. This study develops predictive models for key mechanical properties of seamless steel tubes, by strength, ultimate tensile strength and hardness. A plant in Brazil was used as the case study. The sample sizes of some steel tube families given namely, yield a particular property are discrepant and sometimes very small. To overcome this sample imbalance and lack of representativeness, committees of predictive neural network models based on bagging predictors, a type of ensemble method, were adopted. As a result, all steel families for all properties have been satisfactorily described showing the correlations between targets and model estimates close to 99%. These results were compared to multiple linear regression, support vector machine and a simpler neural network. Such information available in advance favors corrective actions before complete tube production mitigating rework costs in general.
基于人工神经网络的无缝钢管力学性能预测
包括炼钢厂在内的过程工业实验室分析的一个瓶颈是采样率低。仅使用在线测量的变量的推理模型被用来提前提供这些信息。本研究通过强度、极限抗拉强度和硬度建立了无缝钢管关键力学性能的预测模型。巴西的一家工厂被用作案例研究。给定的某些钢管系列的样本量是不同的,即产生特定的性能,有时非常小。为了克服这种样本不平衡和缺乏代表性的问题,采用了基于bagging预测因子的预测神经网络模型委员会,这是一种集成方法。结果,所有属性的所有钢族都得到了令人满意的描述,表明目标和模型估计之间的相关性接近99%。这些结果与多元线性回归、支持向量机和更简单的神经网络进行了比较。提前获得这些信息有利于在完整管生产前采取纠正措施,从而降低返工成本。
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