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Deep Learning in Sheet Metal Bending With a Novel Theory-Guided Deep Neural Network

机译:用新型理论引导的深神经网络弯曲金属板弯曲的深度学习

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Sheet metal forming technologies have been intensively studied for decades to meet the increasing demand for lightweight metal components.To surmount the springback occurring in sheet metal forming processes,numerous studies have been performed to develop compensation methods.However,for most existing methods,the development cycle is still considerably time-consumptive and demands high computational or capital cost.In this paper,a novel theory-guided regularization method for training of deep neural networks(DNNs),implanted in a learning system,is introduced to learn the intrinsic relationship between the workpiece shape after springback and the required process parameter,e.g.,loading stroke,in sheet metal bending processes.By directly bridging the workpiece shape to the process parameter,issues concerning springback in the process design would be circumvented.The novel regularization method utilizes the well-recognized theories in material mechanics,Swift’s law,by penalizing divergence from this law throughout the network training process.The regularization is implemented by a multi-task learning network architecture,with the learning of extra tasks regularized during training.The stress-strain curve describing the material properties and the prior knowledge used to guide learning are stored in the database and the knowledge base,respectively.One can obtain the predicted loading stroke for a new workpiece shape by importing the target geometry through the user interface.In this research,the neural models were found to outperform a traditional machine learning model,support vector regression model,in experiments with different amount of training data.Through a series of studies with varying conditions of training data structure and amount,workpiece material and applied bending processes,the theory-guided DNN has been shown to achieve superior generalization and learning consistency than the data-driven DNNs,especially when only scarce and scattered experiment data are available for training which is often the case in practice.The theory-guided DNN could also be applicable to other sheet metal forming processes.It provides an alternative method for compensating springback with significantly shorter development cycle and less capital cost and computational requirement than traditional compensation methods in sheet metal forming industry.
机译:钣金成型技术已经集中研究了数十年来满足对轻质金属部件的不断增长的需求。要超越在金属板形成过程中发生的回弹,已经进行了许多研究以开发补偿方法。但是,对于大多数现有方法,开发循环仍然很大的时间消耗和需求高计算或资本成本。本文介绍了一种新颖的理论引导正规化方法,用于培养在学习系统中的深度神经网络(DNN),以学习内在的关系回弹后的工件形状和所需的工艺参数,例如加载行程,在金属板弯曲过程中。通过将工件形状直接桥接到工艺参数,将规避过程设计中的回弹问题。新颖的正则化方法利用了通过惩罚Divergenc来识别材料力学,Swift的法律的理论e在整个网络训练过程中的这种法律。正规化由多任务学习网络架构实施,在训练期间,学习额外的任务。描述材料属性的应力 - 应变曲线和用于引导学习的现有知识存储在数据库和知识库中,可以通过用户界面导入目标几何来获取新工件形状的预测加载笔划。在本研究中,发现神经模型优于传统的机器学习模型,支持向量回归模型,在具有不同量的训练数据的实验中。通过不同条件的训练数据结构和金额,工件材料和应用弯曲过程进行了一系列研究,已经显示了理论引导的DNN来实现卓越的泛化和学习一致性而不是数据驱动的DNN,尤其是只有稀缺和分散的实验数据a可用于培训,往往是在实践中的情况。理论引导的DNN也可以适用于其他金属板形成过程。它提供了一种替代方法,用于补偿显着较短的开发周期和较少的资本成本和计算要求而不是传统的回弹。金属板形成工业中的补偿方法。

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