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Consideration of manufacturing data to apply machine learning methods for predictive manufacturing

机译:考虑制造数据以将机器学习方法应用于预测制造

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According to the recent development of internet of things and big data, the serious tries of implementing smart factory have been increased. To realize the smart factory, firstly predictive manufacturing system should be implemented. As a first step of predictive manufacturing, this paper focuses on solving the simple but time consuming and high cost task in the predictive manner. The target problem of this paper is predicting CNC tool wear compensation offset using machine learning methods based on the data. To apply machine learning methods, we should understand the characteristics of the data and find the most suitable method according to the data characteristics. Thus, this paper discusses the characteristics of manufacturing data and compares various cases of applying machine learning methods.
机译:随着物联网和大数据的最新发展,实施智能工厂的严肃尝试有所增加。为了实现智能工厂,首先应实施预测制造系统。作为预测性制造的第一步,本文着重于以预测性方式解决简单但耗时且成本高的任务。本文的目标问题是使用基于数据的机器学习方法来预测CNC刀具的磨损补偿偏置。要应用机器学习方法,我们应该了解数据的特征,并根据数据的特征找到最合适的方法。因此,本文讨论了制造数据的特征,并比较了应用机器学习方法的各种情况。

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