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CUTTING CONDITION DECISION METHODOLOGY BASED ON DATA-MINING OF TOOL CATALOG DATA

机译:基于工具目录数据的数据挖掘的条件决定方法

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Data-mining methods were used to support decisions about reasonable cutting conditions. The aim of our research was to extract new knowledge by applying data-mining techniques to a tool catalog. We used both hierarchical and non-hierarchical clustering of catalog data and also used applied multiple regression analysis. We focused on the shape element of catalog data and we visually grouped end mills from the viewpoint of tool shape, which here meant the ratio of dimensions, by using the k-means method. We then decreased the number of variables by using hierarchical cluster analysis. We also found an expression for calculating the best cutting conditions, and we compared the calculated values with the catalog values. We did 15 minutes of cutting work using three kinds of cutting conditions: conditions recommended in the catalog, conditions derived by data-mining, and proven cutting conditions for die machining (rough processing).
机译:数据挖掘方法用于支持有关合理切削条件的决策。我们研究的目的是通过将数据挖掘技术应用于工具目录来提取新知识。我们既使用了目录数据的分层聚类,也使用了非分层聚类,还使用了多元回归分析。我们着重于目录数据的形状元素,并从刀具形状的角度对端铣刀进行了可视化分组,在此,这是指使用k-means方法的尺寸比。然后,我们通过使用层次聚类分析来减少变量的数量。我们还找到了用于计算最佳切削条件的表达式,并将计算出的值与目录值进行了比较。我们使用三种切削条件进行了1​​5分钟的切削工作:目录中推荐的条件,通过数据挖掘得出的条件以及用于模具加工(粗加工)的可靠切削条件。

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