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Modelling of lateral flow in a Hot Strip Mill (HSM) using adaptive techniques

机译:使用自适应技术对热轧机(HSM)中的横向流进行建模

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During the last years, data mining models have proven to be a promising approach to improve hot rolling processes. In the present research we propose a model for prediction of lateral flow. In hot rolling mills this will lead to exact predictions of the strip width after rolling, which reduces cut-offs and scrapped material. Any reduction of the cut-offs implies important economical and environmental benefits. Physically based models were developed some years ago, but they require simplifications, need data that is difficult to achieve online or include experimental parameters that have to be optimized. Adaptive techniques can contribute widely to the improvement of the diagnostics. For this work, production data was gathered from a Hot Strip Mill (HSM) and a nonlinear model was built using a data-mining methodology based on multivariate adaptive regression splines (MARS). The agreement of the MARS model with observed data confirmed its good performance.
机译:在过去的几年中,数据挖掘模型已被证明是改善热轧过程的一种有前途的方法。在本研究中,我们提出了一种预测侧向流动的模型。在热轧机中,这将导致准确预测轧制后的带钢宽度,从而减少切屑和废料。削减任何分界线都意味着重要的经济和环境利益。基于物理的模型是在几年前开发的,但是它们需要简化,需要难以在线实现的数据或必须进行优化的实验参数。自适应技术可以为诊断的改进做出广泛贡献。对于这项工作,从热轧机(HSM)收集生产数据,并使用基于多元自适应回归样条(MARS)的数据挖掘方法建立非线性模型。 MARS模型与观测数据的一致性证实了其良好的性能。

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