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首页> 外文期刊>Journal of Mechanical Science and Technology >Prediction of deformations of steel plate by artificial neural network in forming process with induction heating
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Prediction of deformations of steel plate by artificial neural network in forming process with induction heating

机译:感应加热成形过程中人工神经网络预测钢板变形

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摘要

To control a heat source easily in the forming process of steel plate with heating, the electro-magnetic induction process has been used as a substitute of the flame heating process. However, only few studies have analyzed the deformation of a workpiece in the induction heating process by using a mathematical model. This is mainly due to the difficulty of modeling the heat flux from the inductor traveling on the conductive plate during the induction process. In this study, the heat flux distribution over a steel plate during the induction process is first analyzed by a numerical method with the assumption that the process is in a quasi-stationary state around the inductor and also that the heat flux itself greatly depends on the temperature of the workpiece. With the heat flux, heat flow and thermo-mechanical analyses on the plate to obtain deformations during the heating process are then performed with a commercial FEM program for 34 combinations of heating parameters. An artificial neural network is proposed to build a simplified relationship between deformations and heating parameters that can be easily utilized to predict deformations of steel plate with a wide range of heating parameters in the heating process. After its architecture is optimized, the artificial neural network is trained with the deformations obtained from the FEM analyses as outputs and the related heating parameters as inputs. The predicted outputs from the neural network are compared with those of the experiments and the numerical results. They are in good agreement.
机译:为了在加热的钢板成形过程中容易地控制热源,已使用电磁感应过程代替火焰加热过程。然而,只有很少的研究通过使用数学模型来分析感应加热过程中工件的变形。这主要是由于难以对感应过程中感应器在导电板上传播的热通量进行建模。在这项研究中,首先通过数值方法分析钢板在感应过程中的热通量分布,并假设该过程处于感应器周围的准平稳状态,并且热通量本身很大程度上取决于感应器。工件温度。然后,利用商业通行的FEM程序,利用热通量,对板上的热流和热机械分析进行分析,以获取加热过程中的变形,以获取34种加热参数组合。提出了一种人工神经网络来建立变形和加热参数之间的简化关系,该关系可以轻松地用于预测在加热过程中具有多种加热参数的钢板的变形。优化其架构后,将使用从FEM分析获得的变形作为输出并以相关的加热参数作为输入来训练人工神经网络。将神经网络的预测输出与实验和数值结果进行比较。他们非常同意。

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