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A Virtual Sensor for Online Fault Detection of Multitooth-Tools

机译:用于多齿工具在线故障检测的虚拟传感器

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摘要

The installation of suitable sensors close to the tool tip on milling centres is not possible in industrial environments. It is therefore necessary to design virtual sensors for these machines to perform online fault detection in many industrial tasks. This paper presents a virtual sensor for online fault detection of multitooth tools based on a Bayesian classifier. The device that performs this task applies mathematical models that function in conjunction with physical sensors. Only two experimental variables are collected from the milling centre that performs the machining operations: the electrical power consumption of the feed drive and the time required for machining each workpiece. The task of achieving reliable signals from a milling process is especially complex when multitooth tools are used, because each kind of cutting insert in the milling centre only works on each workpiece during a certain time window. Great effort has gone into designing a robust virtual sensor that can avoid re-calibration due to, e.g., maintenance operations. The virtual sensor developed as a result of this research is successfully validated under real conditions on a milling centre used for the mass production of automobile engine crankshafts. Recognition accuracy, calculated with a k-fold cross validation, had on average 0.957 of true positives and 0.986 of true negatives. Moreover, measured accuracy was 98%, which suggests that the virtual sensor correctly identifies new cases.
机译:在工业环境中,无法在铣削中心的刀尖附近安装合适的传感器。因此,有必要为这些机器设计虚拟传感器,以在许多工业任务中执行在线故障检测。本文提出了一种基于贝叶斯分类器的用于多齿工具在线故障检测的虚拟传感器。执行此任务的设备将应用数学模型,该数学模型与物理传感器一起运行。从执行加工操作的铣削中心仅收集两个实验变量:进给驱动器的电能消耗和加工每个工件所需的时间。当使用多齿刀具时,从铣削过程中获得可靠信号的任务特别复杂,因为铣削中心中的每种切削刀片仅在特定时间段内对每个工件起作用。设计坚固的虚拟传感器已经付出了巨大的努力,该传感器可以避免由于维护操作等原因而进行重新校准。通过这项研究开发的虚拟传感器在真实条件下成功地在用于汽车发动机曲轴的批量生产的铣削中心上得到了验证。通过k倍交叉验证计算得出的识别准确度平均为0.957的真实阳性和0.986的真实阴性。此外,测得的准确性为98%,这表明虚拟传感器可以正确识别新病例。

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