Data Mining From Endmill Tool Catalog Information Based on the Use of a Machine Learning Method

Akihito Asakura, T. Hirogaki, E. Aoyama, Hiroyuki Kodama
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Abstract

In recent years, the needs associated with the development of new technologies in the manufacturing industry that utilize big data typified by the Internet-of-Things (IoT) and artificial intelligence (AI) have been increasing. Recent computer-aided manufacturing (CAM) systems have evolved so that unskilled technicians can create tool paths relatively easily with numerically controlled (NC) programs, but tool-cutting conditions used for machining cannot be automatically determined. Therefore, many unskilled technicians often set the cutting conditions based on the recommended conditions described in the tool catalog. However, given that the catalog contains large-scale data on machining technology, setting the proper conditions becomes a time-consuming and inefficient process. In this study, we aimed to construct a system to support unskilled technicians to determine the optimum machining conditions. To this end, we constructed a prediction model using a random forest machine learning method to predict the cutting conditions. It was confirmed that the prediction with the random forest method can be performed with high accuracy based on the cutting conditions recommended by the tool maker. Thus, the effectiveness of this method was verified.
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基于机器学习方法的立铣刀刀具目录信息数据挖掘
近年来,以物联网(IoT)和人工智能(AI)为代表的制造业利用大数据的新技术发展的需求不断增加。最近的计算机辅助制造(CAM)系统已经发展到使不熟练的技术人员可以通过数控(NC)程序相对容易地创建刀具路径,但用于加工的刀具切削条件不能自动确定。因此,许多不熟练的技术人员经常根据刀具目录中描述的推荐条件来设置切削条件。然而,由于该目录包含大量的加工技术数据,设置适当的条件成为一个耗时且低效的过程。在这项研究中,我们的目的是建立一个系统,以支持非熟练的技术人员确定最佳的加工条件。为此,我们利用随机森林机器学习方法构建了预测模型来预测采伐条件。结果表明,随机森林方法可以根据刀具制造商推荐的切削条件进行高精度预测。从而验证了该方法的有效性。
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