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A decision-making tool based on decision trees for roughness prediction in face milling

机译:基于决策树的粗糙度预测粗糙度预测的决策工具

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摘要

The selection of the right cutting tool in manufacturing process design is always an open question, especially when different tools are available on the market with similar characteristics, but marked differences in price, ranging from low-cost to high-performance cutting tools. The ultimate decision of the engineer will depend on previous experience with the life cycle of the tool and its performance, but without the support of a systematic knowledge base. This research presents a decision-making system based on soft-computing techniques. First, several experiments were carried out with four different cutting tools: two flat-milling low-cost tools without any surface treatment or coating and two high-performance, high-cost cutting tools (in both cases with four cutting edges, similar geometrical features and diameters). Three different measures of tool wear are considered in the context of real workshop conditions: on-line power consumption, cutting length and volume of cut material. Finally, decision trees have been selected as the most suitable technique for building a decision-making system for two reasons: these trees show higher accuracy for the prediction of roughness in terms of tool wear and tool type. They also provide useful visual feedback on the information that is extracted from the real data, which can be directly used by the process engineer.
机译:在制造过程设计中选择右切削工具始终是一个开放性问题,特别是当市场上有不同特性的不同工具,但价格差异显着,从低成本到高性能切削工具。工程师的最终决定将取决于以前的工具生命周期的经验及其性能,但没有支持系统知识库。本研究提出了一种基于软计算技术的决策系统。首先,使用四种不同的切削工具进行了几个实验:两个平铣削低成本工具,无需任何表面处理或涂层和两种高性能,高成本的切削工具(在两种切割边缘,类似的几何特征和直径)。在实际车间条件的背景下,考虑了三种不同的工具磨损措施:在线功耗,切割长度和切割材料体积。最后,已经选择了决策树作为构建决策系统的最合适的技术,其中有两个原因:这些树在工具磨损和工具类型方面对粗糙度预测的预测更高的准确性。它们还提供有关从真实数据中提取的信息的有用的视觉反馈,可以直接由过程工程师使用。

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