Indirect Prediction of Spindle Rotation Error Through Vibration Signal Based On Supervised Local Mean Decomposition Filter Fusion and Bi-LSTM Classification Network

Jianhong Liang, Li-Ping Wang, Guang Yu, Jun Wu, Dong Wang, Lin Song
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Abstract

Spindle rotation error directly correlates with the quality of mechanical processing. Currently, the error was mainly converted through measuring the distance information of standard component installed at the tool position, and it can't complete the normal machining because the tool is occupied. Therefore, a novel self-adaptive supervised learning method through easy-collected vibration signal that don't affect the machining to indirect predict the error. This method includes three steps: Firstly, the original vibration signal is decomposed by LMD method to obtain two critical components; Subsequently, the two components are fused as a signal by a weighted-average approach; Finally, the fused signal and corresponding error are self-adaptive supervised trained by the setting termination condition to modify fusion coefficient and network parameters. The method is used to analyze the data-set of spindle platform, which has collected the experimental data at speeds 1000, 2000, 3000, and 4000 more than 170 groups, and the indirect prediction accuracy reached 94.12%, 92.35%, 97.68% and 90.59% respectively. Additionally, the experimental results were compared and demonstrated by three aspects with current different algorithms.
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基于监督局部均值分解滤波器融合和 Bi-LSTM 分类网络,通过振动信号间接预测主轴旋转误差
主轴旋转误差直接关系到机械加工的质量。目前,误差主要通过测量安装在刀具位置的标准件的距离信息进行换算,由于刀具被占用,无法完成正常加工。因此,一种新颖的自适应监督学习方法通过轻松采集不影响加工的振动信号来间接预测误差。该方法包括三个步骤:首先,通过 LMD 方法对原始振动信号进行分解,得到两个关键分量;然后,通过加权平均方法将两个分量融合为一个信号;最后,通过设置终止条件修改融合系数和网络参数,对融合信号和相应误差进行自适应监督训练。该方法用于分析主轴平台的数据集,收集了转速为 1000、2000、3000 和 4000 的实验数据 170 多组,间接预测精度分别达到 94.12%、92.35%、97.68% 和 90.59%。此外,实验结果还从三个方面与当前不同的算法进行了比较和论证。
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