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An Effective and Novel Weighted Support Vector Machine Method for Control Chart Pattern Recognition

机译:用于控制图表模式识别的有效和新的加权支持向量机方法

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Control chart pattern recognition is the method to realize quality online monitoring and diagnosis of production process. For the conditions that the number of existing normal mode products is much higher than the abnormal ones during the actual manufacturing process, we proposed a method about WSVM (Weighted Support Vector Machines) for dynamic process of abnormal pattern recognition based on PCA (Principal Component Analysis). We put the proposed method into our experiment, the experimental simulation results show that this method proposed in this paper has a big advantage over the existing SVM (Support Vector Machine) on highly imbalanced classification problem, which suitable for quality monitoring and diagnosis of dynamic production process.
机译:控制图表模式识别是实现高质量在线监测和诊断生产过程的方法。对于现有的正常模式产品的数量远高于实际制造过程中的异常的条件,我们提出了一种关于WSVM(加权支持向量机)的方法,用于基于PCA的异常模式识别的动态过程(主成分分析)。我们将提出的方法置于我们的实验中,实验模拟结果表明,本文提出的这种方法在现有的SVM(支持向量机)上具有很大的优势,在高度不平衡的分类问题上,适用于质量监测和动态生产的诊断过程。

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