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A machine learning approach to tool wear behavior operational zones

机译:一种机器学习的工具磨损行为操作区方法

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The range of permitted temperature and stress produced during a machining process is related to the metallurgical properties for each tool material and can be empirically determined. For each combination of tool and workpiece material, particular constants are approximated to prescribe the relationship between the temperature-stress combination and the feed rate-speed combination. Using this concept an operational zone for each tool-workpiece combination can be defined. This paper proposes a machine learning algorithm to determine this operational zone. Instead of relying totally on empirical testing, a learning algorithm is used to incrementally define the operational zone with the related parameters described above. Once determined, the operational zone is then used to enhance machining control.
机译:在加工过程中产生的允许温度和应力范围与每种工具材料的冶金性能有关,可以凭经验确定。对于工具和工件材料的每种组合,近似特定的常数可规定温度-应力组合与进给速度-速度组合之间的关系。使用此概念,可以定义每个工具-工件组合的操作区域。本文提出了一种机器学习算法来确定该操作区域。并非完全依赖经验测试,而是使用学习算法来逐步定义具有上述相关参数的操作区域。确定后,即可使用操作区来增强加工控制。

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