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An Adaptive-Network-Based Fuzzy Inference System for Predicting Springback of U-Bending

机译:基于自适应网络的模糊推理系统,用于预测U型弯曲的回弹

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Springback will occur when the external force is removed after bending process in sheet metal forming. This paper proposed an adaptive-network-based fuzzy inference system (ANFIS) model for prediction the springback angle of the SPCC material after U-bending. Three parameters were selected as the main factors of affecting the springback after bending, including the die clearance, the punch radius, and the die radius. The training data were obtained from results of U-bending experiment. The training data with four different membership functions – triangular, trapezoidal, bell, and Gaussian functions –were employed in the ANFIS to construct a predictive model for the springback of the U-bending. After the comparison of the predicted value with the checking data, we found that the triangular membership function has the best accuracy, which make it the best function to predict the springback angle of sheet metals after U-bending.
机译:当弯曲过程中弯曲过程中的外力在金属板成形后移除时,会发生回弹。本文提出了一种基于自适应网络的模糊推理系统(ANFIS)模型,用于在U型弯曲之后预测SPCC材料的回弹角。选择三个参数作为影响弯曲后的回弹的主要因素,包括模具间隙,冲头半径和管芯半径。培训数据是从U弯曲实验的结果获得的。具有四种不同隶属函数的培训数据 - 三角形,梯形,钟声和高斯函数 - 在ANFI中使用,以构建用于U型弯曲的回弹的预测模型。在将预测值与检查数据进行比较之后,我们发现三角形隶属函数具有最佳精度,这使其成为预测U型弯曲后纸张金属的回弹角度的最佳功能。

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