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首页> 外文期刊>Journal of Materials Engineering and Performance >Prediction of Mechanical Properties of Steel Tubes Using a Machine Learning Approach
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Prediction of Mechanical Properties of Steel Tubes Using a Machine Learning Approach

机译:用机器学习方法预测钢管机械性能

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摘要

Steel tubes produced in steelmaking plants are generally subjected to severe in-service conditions. Hence, quality control plays a key role in this process. The bottleneck is that this information is made available only after tube production from laboratory analysis. Given process complexity and current data availability, this work employs a series of machine learning techniques, namely neural networks, random forests and gradient boosting trees, to predict critical mechanical properties for steel tubes, namely yield strength, ultimate tensile strength and hardness. The model performance was kept high by combining different variable selection procedures. The prediction error was less than the inherent variability of each mechanical property, i.e., it is equal to 20 MPa for yield strength and ultimate tensile strength, and to 2 HRC, for hardness. This information in advance allows interventions before complete tube production contributing to more stable operations and, ultimately, to reduce rework and customer lead time. In sequence, an optimization problem for set point definition is illustrated. The neural predictive model previously identified for the yield strength was used in this application, exploring its predictive capabilities. The optimal solution yielded to lower amount of molybdenum and tube exit temperature from the tempering furnace, while keeping quality aspects, which means reduction in material and energy costs. Concluding, steelmaking processes, which are complex by nature, can strongly benefit from data-driven approaches, since data availability and computational processing are no longer a problem.
机译:炼钢厂生产的钢管通常要经受严酷的使用条件。因此,质量控制在这一过程中起着关键作用。瓶颈在于,只有在通过实验室分析生产管子后,才能获得这些信息。考虑到工艺的复杂性和当前的数据可用性,这项工作采用了一系列机器学习技术,即神经网络、随机森林和梯度增强树,来预测钢管的关键机械性能,即屈服强度、极限拉伸强度和硬度。通过组合不同的变量选择程序,模型性能保持较高。预测误差小于每个机械性能的固有变异性,即屈服强度和极限抗拉强度等于20 MPa,硬度等于2 HRC。这些信息可以在管道生产完成之前进行干预,从而有助于更稳定的运行,并最终减少返工和客户交付周期。接着,本文给出了一个设定点定义的优化问题。在此应用中使用了之前确定的屈服强度神经预测模型,探索其预测能力。最佳的解决方案是降低钼含量和回火炉管出口温度,同时保持质量,这意味着降低材料和能源成本。总之,由于数据可用性和计算处理不再是一个问题,本质上很复杂的炼钢过程可以从数据驱动的方法中受益匪浅。

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