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BROACHING TOOL DEGRADATION CHARACTERIZATION BASED ON FUNCTIONAL DESCRIPTORS

机译:基于功能描述符的拉伸刀具劣化表征

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摘要

With rapid advancements in sensing technologies and computation capabilities, high-resolution machine vision data have become available for various manufacturing processes. For machining, the use of machine vision data has shown great promise in machining tool condition monitoring, a critical factor for final product quality. Extensive research has been performed on wear characterization using intensity-based methods, but limited work has made use of process knowledge for image processing phases. Additionally, previous work focuses on single cutting edge machining tools, but no methods have been proposed for multiple cutting edge machining tools, such as broaches. In this paper, a process knowledge-based image filtering method is proposed to eliminate within-image and between-image noise to obtain effective wear region(s) for each cutting edge on a broach. In addition, these wear regions across multiple cutting edges are jointly described by fitting their relationship with each cutting edge's respective chip load. Finally, the extracted model parameters are used for unsupervised learning to determine the entire tool's degradation levels from a training dataset. A case study is introduced to show the effectiveness of the proposed methodology using a hexagonal broach.
机译:随着传感技术和计算能力的快速进步,高分辨率的机器视觉数据已经可用于各种制造过程。对于加工,机器视觉数据的使用在加工工具状态监测方面表现出了很大的希望,最终产品质量的关键因素。使用基于强度的方法进行了广泛的研究,但使用强度的方法进行了有限的工作已经利用了图像处理阶段的过程知识。此外,以前的工作侧重于单个切削刃加工工具,但没有提出用于多个切削刃加工工具的方法,例如拉刀。在本文中,提出了一种基于过程知识的图像滤波方法,以消除图像内和图像噪声之间的图像噪声,以获得用于拉刀上的每个切削刃的有效磨损区域。另外,通过与每个切削刃的相应芯片负载配合它们的关系,共同描述多个切削刃的这些磨损区域。最后,提取的模型参数用于无监督学习,以确定来自训练数据集的整个工具的劣化水平。引入案例研究以表明使用六角形建议的方法的有效性。

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