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Experimental Implementation of Neural Network Springback Control for Sheet Metal Forming

机译:钣金成形的神经网络回弹控制的实验实现

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摘要

The forming of sheet metal into a desired and functional shape is a process, which requires an understanding of materials, mechanics, and manufacturing principles. Furthermore, producing consistent sheet metal components is challenging due to the nonlinear interactions of various material and process parameters. One of the major causes for the fabrication of inconsistent sheet metal parts is springback, the elastic strain recovery in the material after the tooling is removed. In this paper, springback of a steel channel forming process is controlled using an artificial neural network and a stepped binder force trajectory. Punch trajectory, which reflects variations in material properties, thickness and friction condition, was used as the key control parameter in the neural network. Consistent springback angles were obtained in experiments using this control scheme.
机译:将钣金成形为所需的功能形状是一个过程,需要了解材料,力学和制造原理。此外,由于各种材料和工艺参数之间的非线性相互作用,要生产出一致的钣金零件具有挑战性。产生不一致的钣金零件的主要原因之一是回弹,在移除工具后材料中的弹性应变恢复。在本文中,使用人工神经网络和阶梯式结合力轨迹来控制钢通道形成过程的回弹。反映材料特性,厚度和摩擦条件变化的冲压轨迹被用作神经网络中的关键控制参数。使用此控制方案在实验中获得了一致的回弹角。

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