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Modelling hot rolling manufacturing process using soft computing techniques

机译:使用软计算技术对热轧制造过程进行建模

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摘要

Steel making industry is becoming more competitive due to the high demand. In order to protect the market share, automation of the manufacturing industrial process is vital and represents a challenge. Empirical mathematical modelling of the process was used to design mill equipment, ensure productivity and service quality. This modelling approach shows many problems associated to complexity and time consumption. Evolutionary computing techniques show significant modelling capabilities on handling complex non-linear systems modelling. In this research, symbolic regression modelling via genetic programming is used to develop relatively simple mathematical models for the hot rolling industrial non-linear process. Three models are proposed for the rolling force, torque and slab temperature. A set of simple mathematical functions which represents the dynamical relationship between the input and output of these models shall be presented. Moreover, the performance of the symbolic regression models is compared to the known empirical models for the hot rolling system. A comparison with experimental data collected from the Eregli Iron and Steel Factory in Turkey is conducted for the verification of the promising model performance. Genetic programming shows better performance results compared to other soft computing approaches, such as neural networks and fuzzy logic.
机译:由于需求旺盛,炼钢行业竞争日趋激烈。为了保护市场份额,制造工业过程的自动化至关重要且构成挑战。该过程的经验数学建模用于设计轧机设备,以确保生产率和服务质量。这种建模方法显示出许多与复杂性和时间消耗相关的问题。进化计算技术在处理复杂的非线性系统建模方面显示出显着的建模能力。在这项研究中,通过遗传程序设计的符号回归建模被用于为热轧工业非线性过程开发相对简单的数学模型。针对轧制力,扭矩和板坯温度,提出了三种模型。一组简单的数学函数将代表这些模型的输入和输出之间的动力学关系。此外,将符号回归模型的性能与热轧系统的已知经验模型进行了比较。与土耳其Eregli钢铁厂收集的实验数据进行了比较,以验证有希望的模型性能。与其他软计算方法(例如神经网络和模糊逻辑)相比,遗传编程显示出更好的性能结果。

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