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Parsimonious Support Vector Machines Modelling for Set Points in Industrial Processes Based on Genetic Algorithm Optimization

机译:基于遗传算法优化的工业过程中设定点的解析支持向量机建模

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An optimization based on genetic algorithms for both feature selection and model tuning is presented to improve the prediction of set points in industrial lines. The objective is the development of an automatic procedure that efficiently generates parsimonious prediction models with higher generalisation capacity. These models can achieve higher accuracy in predictions, maintaining the high quality of products while working with continual changes in the production cycle. The proposed method deals with three strict restrictions: few individuals per population, low number of holds and runs in model validation procedure and a reduced number of maximum generations. To fullfill these restrictions, we propose to include in the optimization the reranking of the individuals by their complexity when no significant difference is found between the values of their fitness functions. The method is applied to develop support vector machines for predicting three temperature set points in the annealing furnace of a continuous hot-dip galvanising line. The results demonstrate the rerank makes more efficiently and easily the process of obtaining parsimonious models without reducing performance.
机译:提出了基于特征选择和模型调谐的基于遗传算法的优化,以改善工业线中设定点的预测。目标是开发自动过程,其有效地产生具有更高概括容量的解析预测模型。这些模型可以在预测中获得更高的准确性,维持高质量的产品,同时在生产周期的持续变化。拟议的方法涉及三项严格限制:每人少数人,持有的少数持有和在模型验证程序中运行,并减少最大数量的数量。为了填充这些限制,我们建议在优化它们在其健身功能的值之间没有显着差异时通过它们的复杂性来包括复杂性。该方法应用于开发用于预测连续热浸镀锌线的退火炉中的三个温度设定点的支持向量机。结果表明重年更有效,并且易于获得在不降低性能的情况下获得定量模型的过程。

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