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Artificial neural network predictors for mechanical properties of cold rolling products

机译:人工神经网络预测冷轧产品力学性能的指标

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Controlling product mechanical properties is an important stage in steel production lines. Conventionally, direct tensile tests are employed for this purpose; but their disadvantage is their high cost. The main objective of this paper is to develop an intelligent indirect method based on Artificial Neural Networks (ANN) for monitoring product mechanical properties without the need for expensive laboratory tests. The inputs into the proposed intelligent system include a wide variety of parameters from all production stages which it uses to predict such properties as Yield Strength (YS), Ultimate Tensile Strength (UTS), and Elongation (EL) as output. Moreover sensitivity analysis is performed based on using ANNs trained by data from three different grades because changing domains of input parameters is wider in these sets of data. Results show that the reduction in skin pass, the thickness after tandem and the ratio of Nitrogen to Aluminum are the effective parameters for all three mechanical properties among other inputs. Also, the thickness reduction in tandem affects the YS and EL values significantly, but UTS is not sensitive to this parameter noticeably. The variation of Vanadium content changes UTS value considerably.
机译:控制产品的机械性能是钢铁生产线的重要阶段。通常,为此目的采用直接拉伸试验。但是它们的缺点是成本高。本文的主要目的是开发一种基于人工神经网络(ANN)的智能间接方法,用于监测产品的机械性能,而无需进行昂贵的实验室测试。拟议中的智能系统的输入包括来自各个生产阶段的各种参数,用于预测诸如屈服强度(YS),极限拉伸强度(UTS)和伸长率(EL)之类的特性。此外,由于使用了来自三个不同等级的数据训练的人工神经网络,因此进行了灵敏度分析,因为在这些数据集中,输入参数的变化范围更广。结果表明,除其他输入外,减少皮纹,串联后的厚度以及氮铝比是所有三种机械性能的有效参数。而且,串联厚度的减小会显着影响YS和EL值,但UTS对此参数并不明显敏感。钒含量的变化会大大改变UTS值。

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