基于多尺度注意机制的材料去除状态预测方法

Zhihang Li, Qian Tang, Y. Liu, X. Li
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引用次数: 0

摘要

砂带磨削中物料的准确去除决定了工件的最终加工质量。但在实际加工中,受砂带磨损、加工误差等因素的影响,物料的去除状态难以确定。为此,提出了一种基于位移数据分析的多尺度注意卷积神经网络材料去除状态预测方法。首先,对位移数据采用一阶差分法和滑动窗口展开法,使位移数据能够进行深度学习,这是材料去除状态预测的前提。然后,利用多尺度卷积神经网络提取位移数据的重要特征;由于不同特征的重要程度不同,采用基于损失函数的挤压激励网络对特征的重要程度进行独立分配,使模型更加关注主要特征而忽略次要特征,提高了模型的收敛速度和预测精度。实验结果的K6交叉验证表明,该方法能够准确预测物料去除状态,平均预测准确率为87.9%,可实际应用于工业加工中物料去除状态的在线预测,进一步控制加工质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Material Removal State Prediction Method Based on Multi-Scale Attention Mechanism
The exact removal of material in abrasive belt grinding determines the final machining quality of the workpiece. However, it is difficult to determine the removal state of materials in actual processing, which is affected by factors such as abrasive belt wear and processing errors. Therefore, a multi-scale attention convolutional neural network for material removal state prediction method is proposed based on the analysis of displacement data. First, the first-order difference and sliding-window expansion methods for displacement data are adopted, making it possible to use displacement data for deep learning, which is the premise of material removal state prediction. Then, the multi-scale convolutional neural network is Employed to extract important features of the displacement data. Due to the different importance of different features, Squeeze-and-Excitation Networks are used to independently assign the importance of features based on the loss function, so that the model pays more attention to those main features and ignores the secondary features, which can improve the convergence speed and prediction accuracy of the model. The K6 cross-validation of experiment results shows that this method can accurately predict the material removal state with an average prediction accuracy of 87.9%, which can be practically applied to the online prediction of the material removal state in industrial processing to further control the processing quality.
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