首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >Study on the Generalized Holo-Factors Mathematical Model of Dimension-Error and Shape-Error for Sheet Metal in Stamping Based on the Back Propagation (BP) Neural Network
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Study on the Generalized Holo-Factors Mathematical Model of Dimension-Error and Shape-Error for Sheet Metal in Stamping Based on the Back Propagation (BP) Neural Network

机译:基于背部传播(BP)神经网络的尺寸误差尺寸误差和形状误差的尺寸误差和形状误差的数学模型研究

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Precision improvement in sheet metal stamping has been the concern that the stamping researchers have engaged in. In order to improve the forming precision of sheet metal in stamping, this paper devoted to establish the generalized holo-factors mathematical model of dimension-error and shape-error for sheet metal in stamping based on BP neural network. Factors influencing the forming precision of stamping sheet metal were divided, altogether ten factors, and the generalized holo-factors mathematical model of dimension-error and shape-error for sheet metal in stamping was established using the back-propagation algorithm of error based on BP neural network. The undetermined coefficients of the model previously established were soluble according to the simulation data of sheet punching combined with the specific shape based on the BP neural network. With this mathematical model, the forecast data compared with the validate data could be obtained, so as to verify the fine practicability that the previously established mathematical model had, and then, it was shown that the generalized holo-factors mathematical model of size error and shape-error had fine practicality and versatility. Based on the generalized holo-factors mathematical model of error exemplified by the cylindrical parts, a group of process parameters could be selected, in which forming thickness was between 0.713mm and 1.335 mm, major strain was between 0.085 and 0.519, and minor strain was between -0.596 and 0.319 from the generalized holo-factors mathematical model prediction, at the same time, the forming thickness, the major strain, and the minor strain were in good condition.
机译:钣金冲压的精确改善是印章研究人员所订的担忧。为了提高冲压钣金的成型精度,本文致力于建立尺寸误差和形状的广义全能数学模型 - 基于BP神经网络的冲压钣金误差。影响冲压板金属的成形精度的因素分开,共同十种因素,以及尺寸误差和形状误差的尺寸误差和形状误差的数学模型是使用基于BP的误差的反传播算法建立了冲压的神经网络。根据基于BP神经网络的基于特定形状,先前建立的模型的未确定系数可溶解。利用该数学模型,可以获得与验证数据相比的预测数据,以验证先前建立的数学模型具有的精细实用性,然后,据证明了尺寸误差的总体数学模型的数学模型形状错误具有精细的实用性和多功能性。基于圆柱形部分示例的误差的通用空穴因素数学模型,可以选择一组工艺参数,其中形成厚度在0.713mm和1.335mm之间,主要菌株为0.085和0.519,并且诱导菌株来自广义的全温因子数学模型预测的-0.596和0.319之间,同时形成成形厚度,主要菌株和次要菌株状况良好。

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