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Long Term Prediction of Product Quality in a Glass Manufacturing Process Using a Kernel Based Approach

机译:使用基于内核的方法在玻璃制造过程中的产品质量的长期预测

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In this paper we report the results obtained using a kernel-based approach to predict the temporal development of four response signals in the process control of a glass melting tank with 16 input parameters. The data set is a revised version from the modelling challenge in EUNITE-2003. The central difficulties are: large time-delays between changes in the inputs and the outputs, large number of data, and a general lack of knowledge about the relevant variables that intervene in the process. The methodology proposed here comprises Support Vector Machines (SVM) and Regularization Networks (RN). We use the idea of sparse approximation both as a means of regularization and as a means of reducing the computational complexity. Furthermore, we will use an incremental approach to add new training examples to the kernel-based method and efficiently update the current solution. This allows us to use a sophisticated learning scheme, where we iterate between prediction and training, with good computational efficiency and satisfactory results.
机译:在本文中,我们报告了使用基于内核的方法获得的结果来预测具有16个输入参数的玻璃熔炉的过程控制中的四个响应信号的时间开发。数据集是来自Eunite-2003中的建模挑战的修订版本。中央困难是:输入输入和输出的变化之间的大延迟,大量数据以及关于在过程中干预的相关变量的普遍缺乏了解。这里所提出的方法包括支持向量机(SVM)和正则化网络(RN)。我们使用稀疏近似的想法,无论是正规化手段还是降低计算复杂度的手段。此外,我们将使用增量方法为基于内核的方法添加新的培训示例,并有效更新当前解决方案。这使我们能够使用复杂的学习方案,我们在预测和训练之间迭代,具有良好的计算效率和令人满意的结果。

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