提出了一种将机床执行数据与数控代码对齐的映射方法

Laetitia V. Monnier, William Z. Bemstein, S. Foufou
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引用次数: 3

摘要

数字线程和智能制造的愿景提高了将下游数据与上游设计决策联系起来的潜力。然而,迄今为止,在相关数据表示之间进行健壮映射的工具和方法明显缺乏。为此,我们提出了一种用于标准制造数据表示的映射技术。具体来说,我们专注于以MTConnect的形式从加工工具中关联控制器数据,MTConnect是一种新兴标准,定义了词汇和语义以及执行数据的通信协议,G-Code是最广泛使用的数控(NC)指令标准。我们通过一种误差测量技术来评估我们的映射方法的有效性,该技术可以判断两个数据表示之间的对齐质量。然后,我们将建议的方法与案例研究联系起来,案例研究包括经过验证的过程计划和实际执行数据,这些数据来自国家标准与技术研究所托管的智能制造系统测试平台。
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A proposed mapping method for aligning machine execution data to numerical control code
The visions of the digital thread and smart manufacturing have boosted the potential of relating downstream data to upstream decisions in design. However, to date, the tools and methods to robustly map across the related data representations is significantly lacking. In response, we propose a mapping technique for standard manufacturing data representations. Specifically, we focus on relating controller data from machining tools in the form of MTConnect, an emerging standard that defines the vocabulary and semantics as well as communications protocols for execution data, and G-Code, the most widely used standard for numerical control (NC) instructions. We evaluate the efficacy of our mapping methodology through an error measurement technique that judges the alignment quality between the two data representations. We then relate the proposed methodology to a case study, that includes verified process plans and real execution data, derived from the Smart Manufacturing Systems Test Bed hosted at the National Institute of Standards and Technology.
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