基于数据驱动建模的铝挤压工艺推荐系统的基础

M. Perzyk, Andrzej Kocha�ski, Jacek Koz�owski
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引用次数: 0

摘要

本文简要介绍了铝型材的挤压过程,并给出了历史自动记录的数据。使用统计方法,如连续变量和分类(离散)变量的相关分析、“逆”方差分析和Kruskal-Wallis方法,对重要的、被广泛理解的过程参数进行初步选择。这些选定的过程变量作为mlp型神经模型的输入,其中两个主要产品缺陷作为数值输出,值为0和1。采用多变量开发程序对神经网络进行开发,利用最佳神经网络模型寻找工艺参数对产品质量的特征影响。研究的最终结果是一个重要过程参数推荐系统的基础,该系统使用了以前案例和神经模型的信息组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fundamentals of a recommendation system for the aluminum extrusion process based on data-driven modeling
: The aluminum profile extrusion process is briefly characterized in the paper, together with the presentation of historical, au - tomatically recorded data. The initial selection of the important, widely understood, process parameters was made using statistical methods such as correlation analysis for continuous and categorical (discrete) variables and ‘inverse’ ANOVA and Kruskal–Wallis methods. These selected process variables were used as inputs for MLP-type neural models with two main product defects as the numerical outputs with values 0 and 1. A multi-variant development program was applied for the neural networks and the best neural models were utilized for finding the characteristic influence of the process parameters on the product quality. The final result of the research is the basis of a recommendation system for the significant process parameters that uses a combination of information from previous cases and neural models.
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