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Gathering of Process Data through Numerical Simulation for the Application of Machine Learning Prognosis Algorithms

机译:通过数值模拟来利用机器学习预后算法的数值模拟

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In recent years, FEA simulation of forming processes has increasingly developed as a good alternative to complex experimental work in the determination of process parameters and product properties. However, detailed material data (e.g. flow curves) are necessary for the execution of FEA simulations, which are often not available to manufacturers and users in the early stages of the product development. In this paper, a method is shown by which application it is possible, that only on the basis the general mechanical properties (e.g. tensile strength, sheet thickness) and the use of data-based prognosis models of supervised machine learning to predict directly a result regarding suitable process parameters as well as expected forming result properties. Thereby an extensive technological database was generated for the joining by forming process self-pierce riveting (SPR) by means of numerical simulation. Subsequently, different learning algorithms are trained using these numerical data and their prediction quality is compared.
机译:近年来,FEA的形成过程模拟越来越多地发展成为在测定过程参数和产品特性方面复杂的实验工作的良好替代方案。然而,详细的材料数据(例如流程曲线)是执行FEA模拟所必需的,这通常不适用于产品开发的早期阶段的制造商和用户。在本文中,通过该方法示出了可以应用,即仅基于一般机械性能(例如拉伸强度,片材厚度)和使用受监督机器学习的数据的预测模型直接预测结果关于合适的过程参数以及预期的形成结果属性。因此,通过数值模拟形成过程自刺穿铆接(SPR)来为加工产生广泛的技术数据库。随后,使用这些数值数据训练不同的学习算法,并比较它们的预测质量。

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