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Support Vector Machines in Fault Tolerance Control

机译:容错控制中的支持向量机

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摘要

This paper presents a new approach for quality monitoring of on-line molded parts in the context of an injection molding problem using Support Vector Machines (SVMs). While the main goal in the industrial framework is to automatically calculate the setpoints, a less important task is to classify plastic molded parts defects efficiently in order to assess multiple quality characteristics. The paper presents a comparison of the performance assessment of SVMs and RBF neural networks as part quality monitoring tools by analyzing complete data patterns. Results show that the classification model using SVMs presents slightly better performance than RBF neural networks mainly due to the superior generalization of the SVMs in high-dimensional spaces. Particularly, when RBF kernels are used, the accuracy of the task increases thus leading to smaller error rates. Besides, the optimization method is a constrained quadratic programming, which is a well studied and understood mathematical programming technique.
机译:本文介绍了一种使用支持​​向量机(SVM)在注塑成型问题中对在线成型零件进行质量监控的新方法。工业框架的主要目标是自动计算设定值,而次要任务是有效地对塑料成型零件的缺陷进行分类,以评估多种质量特征。本文通过分析完整的数据模式,对作为部分质量监控工具的SVM和RBF神经网络的性能评估进行了比较。结果表明,使用支持向量机的分类模型表现出比RBF神经网络更好的性能,这主要是由于支持向量机在高维空间中的优越性。特别是,当使用RBF内核时,任务的准确性会提高,从而导致较小的错误率。此外,该优化方法是约束二次规划,它是一种经过充分研究和理解的数学编程技术。

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