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Data Mining and Machine Learning Methods Applied to A Numerical Clinching Model

机译:数据挖掘与机器学习方法应用于数值铆接模型

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摘要

Numerical mechanical models used for design of structures and processes are very complex and high-dimensionally parametrised.The understanding of the model characteristics is of interest for engineering tasks and subsequently for an efficient design.Multiple analysis methods are known and available to gain insight into existing models.In this contribution,selected methods from various fields are applied to a real world mechanical engineering example of a currently developed clinching process.The selection of introduced methods comprises techniques of machine learning and data mining,in which the utilization is aiming at a decreased numerical effort.The methods of choice are basically discussed and references are given as well as challenges in the context of meta-modelling and sensitivities are shown.An incremental knowledge gain is provided by a step-bystep application of the numerical methods,whereas resulting consequences for further applications are highlighted.Furthermore,a visualisation method aiming at an easy design guideline is proposed.These visual decision maps incorporate the uncertainty coming from the reduction of dimensionality and can be applied in early stage of design.
机译:用于设计结构和过程的数值机械模型非常复杂和高尺寸的参数化。了解模型特性的理解对于工程任务感兴趣,随后用于有效的设计..已知且可以获得进入现有的洞察力模型。在此贡献中,来自各种领域的所选方法应用于当前开发的临床过程的真实世界机械工程例。介绍的方法的选择包括机器学习和数据挖掘技术,其中利用率旨在减少数值努力。基本上讨论了选择方法,并给出了参考文献以及所显示的中文背景和敏感性的挑战。通过数值方法的逐步应用来提供增量知识增益,而导致后果有关进一步的应用,请突出显示.Furthere,A Visuali提出了一种旨在简单设计指南的状态方法。这些视觉决策地图包含来自减少维度的不确定性,并且可以在设计的早期阶段应用。

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