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FLSOM with individual kernel radii formation and application to optimization of a pickling line

机译:具有单个核半径的FLSOM及其在酸洗生产线优化中的应用

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Updating individually the kernel radii of the neurons according to Van Hulle's approach in the Fuzzy Labeled Self-Organizing Map (FLSOM) algorithm can produce a significant reduction of the mean quantization error as it is demonstrated in this paper using four datasets. The algorithm takes advantage of the available classification of the instances of the dataset since FLSOM is a version of SOM algorithm where the prototype vectors are influenced by the labeling data vectors that define the clusters of the dataset. In this work, the proposed modified version of the FLSOM is able to achieve a better approximation to the numerical variables by means of decreasing the mean quantization error using an individual adaptation of the kernel radii. The aim of this paper is to apply this idea to a pickling line of the steel industry to obtain a model trained with categorical and numerical process variables preserving the topological distribution of the output space in order to reach a visualization of the industrial process and estimate the optimum line speed that minimizes the pickling defects over the steel strip.
机译:根据Van Hulle的方法在模糊标记的自组织映射(FLSOM)算法中分别更新神经元的内核半径,可以显着降低平均量化误差,这在本文中使用四个数据集进行了验证。该算法利用了数据集实例的可用分类优势,因为FLSOM是SOM算法的一种版本,其中原型矢量受定义数据集聚类的标记数据矢量的影响。在这项工作中,FLSOM的修改版能够通过使用内核半径的单独调整来降低平均量化误差,从而更好地近似数值变量。本文的目的是将这一思想应用于钢铁行业的酸洗生产线,以获得经过分类和数值过程变量训练的模型,以保留输出空间的拓扑分布,从而实现工业过程的可视化并估算最佳的生产线速度,可最大程度地减少钢带上的酸洗缺陷。

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