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Shrinkage porosity prediction empowered by physics-based and data-driven hybrid models

机译:基于物理和数据驱动的混合模型支持的收缩孔隙率预测

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摘要

Several defects might affect a casting part and degrade its quality and the process efficiency. Porosity formation is one of the major defects that can appear in the resulting product. Thus, several research studies aimed at investigating methods that minimize this anomaly. In the present work, a porosity prediction procedure is proposed to assist users at optimizing porosity distribution according to their application. This method is based on a supervised learning approach to predict shrinkage porosity from thermal history. Learning data are generated by a casting simulation software operating for different process parameters. Machine learning was coupled with a modal representation to interpolate thermal history time series for new parameters combinations. By comparing the predicted values of local porosity to the simulated results, it was demonstrated that the proposed model is efficient and can open perspectives in the casting process optimization.
机译:一些缺陷可能会影响铸件并降低其质量和工艺效率。孔隙形成是所得产品中可能出现的主要缺陷之一。因此,一些研究旨在研究将这种异常最小化的方法。在本工作中,提出了一种孔隙度预测程序,以帮助用户根据其应用优化孔隙度分布。该方法基于监督学习方法,可根据热历史预测收缩孔隙率。学习数据由针对不同工艺参数运行的铸造模拟软件生成。机器学习与模态表示相结合,为新参数组合插值热历史时间序列。通过将局部孔隙率的预测值与仿真结果进行对比,证明了所提模型的有效性,能够为铸造工艺优化提供开辟新的视角。

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