Precision prediction in grinding processes based on displacement signal conversion into recurrent plot

X. Li, Qian Tang, Longlong Li, Yushuan Wu, Yihua Cheng
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Abstract

The processing of grinding data and the prediction of accuracy are extremely complex; this paper proposes a novel prediction method to ensure the machining accuracy of computer numerical control (CNC) grinding machines. It consists of two components, namely the filter decomposition recurrence plot (RP) transformation (FDRP) and the deep inverted residual attention network (DIRAN). A pipeline named FDRP has been designed to address the issues in the processing of data and the shortcomings of RP. Firstly, the displacement signals undergo filtering to preserve essential grinding information while effectively removing noise. Secondly, long-time series signals are decomposed and augmented based on the characteristics of the machining process. Lastly, an RP transformation is applied to one-dimensional time series data, resulting in the generation of images that accurately represent the grinding process. Furthermore, this paper proposes a novel machining accuracy prediction model. The DIRAN uses a multi-layer inverse residual network structure combined with attention mechanism to extract the features of two-dimensional RP, and its performance is better than other typical prediction methods. It can be applied to predict the polar angle of the workpiece in industrial processing and reduce the defect rate.
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基于将位移信号转换为循环图的磨削过程精度预测
磨削数据的处理和精度预测极为复杂;本文提出了一种新型预测方法,以确保计算机数控(CNC)磨床的加工精度。它由两个部分组成,即滤波分解递归图(RP)变换(FDRP)和深度反转残差注意网络(DIRAN)。为了解决数据处理中的问题和 RP 的缺陷,设计了一个名为 FDRP 的管道。首先,对位移信号进行滤波处理,以保留基本的研磨信息,同时有效去除噪声。其次,根据加工过程的特点对长时间序列信号进行分解和增强。最后,对一维时间序列数据进行 RP 变换,生成能准确反映磨削过程的图像。此外,本文还提出了一种新颖的加工精度预测模型。DIRAN 采用多层反残差网络结构,结合注意力机制,提取二维 RP 的特征,其性能优于其他典型预测方法。它可用于预测工业加工中工件的极角,降低缺陷率。
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