基于支持向量回归的加工误差时间序列预测

Deh Wu
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引用次数: 2

摘要

提出了一种基于支持向量回归(SVR)的加工误差时间序列预测方法。并介绍了设计步骤和学习算法。由于SVR具有较强的泛化能力,并能保证给定训练数据的全局最小值,因此认为SVR对于加工误差的时间序列具有较好的处理效果。进行了典型的轴承外滚道切削加工工艺,并用实测数据进行了对比试验。实验结果验证了将支持向量回归算法应用于加工误差预测的可行性,证明了支持向量回归算法适用于小批量加工过程分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Series Prediction for Machining Errors Using Support Vector Regression
A time series prediction method using support vector regression (SVR) for machining errors is presented in this paper. The design steps and learning algorithm are also addressed. Since SVR have greater generalization ability and guarantee global minima for given training data, it is believed that SVR will perform well for time series for machining errors. A typical machining process of cutting bearing outer race is carried out and the real measured data are used to contrast experiment. The experimental results demonstrate the feasibility of applying SVR in machining errors prediction and prove that SVR is applicable and performs well for small-batch machining process analysis.
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