Digital Twin-Based Tool State Prognosis Model for Drilling Machines

Sunidhi Dayam, K. A. Desai
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Abstract

Digital Twin technology can be effectively employed for prognosis and predictive maintenance tasks by establishing interconnections between manufacturing equipment and its virtual counterpart. This paper presents the Tool State Prognosis (TSP) model based on Digital Twin philosophy to perceive the state of a twist drill during the drilling operation. The TSP model estimates the state of a twist drill viz. initial, intermediate, or worn during the operation rather than obtaining the precise wear value. The Digital Twin collects input information as time-series data by establishing an appropriate connection protocol with a drilling machine using vibration and acoustic emission sensors. The Root Mean Square (RMS) approach and Quadratic Support Vector Machine (QSVM) are employed for feature extraction and recognizing the twist drill status with Remaining Useful Life (RUL) prediction from the time-series data. The model also includes integrating a Human Machine Interface (HMI) unit for displaying tool status and RUL information to assist operators in tool replacement decisions. The developed model can be integrated as an edge-level solution with manual and CNC drilling machines without significant hardware changes for perceiving the status of a twist drill. The prediction abilities of the digital twin are corroborated by performing a set of drilling experiments for various cutting tool-workpiece combinations. The confusion matrices demonstrated the effectiveness and generalization abilities of the developed model by comparing predicted and actual classes for each combination. The developed Digital Twin model can quickly respond to tool status and failure with enhanced man-machine interactions and improved prognosis abilities for the drilling machines.
基于双元的钻床刀具状态预测模型
通过在制造设备和虚拟设备之间建立互连,数字孪生技术可以有效地用于预测和预测性维护任务。提出了一种基于数字孪生(Digital Twin)思想的工具状态预测(TSP)模型,用以感知麻花钻在钻井作业中的状态。TSP模型估计麻花钻在操作过程中的初始、中间或磨损状态,而不是获得精确的磨损值。Digital Twin通过使用振动和声发射传感器与钻床建立适当的连接协议,将输入信息收集为时间序列数据。采用均方根(RMS)方法和二次支持向量机(QSVM)对麻花钻进行特征提取和状态识别,并对麻花钻的剩余使用寿命(RUL)进行预测。该模型还包括集成一个人机界面(HMI)单元,用于显示工具状态和RUL信息,以协助操作员进行工具更换决策。开发的模型可以与手动和数控钻床集成为边缘级解决方案,无需显着的硬件更改即可感知麻花钻的状态。通过对各种刀具-工件组合进行一组钻孔实验,证实了数字孪生的预测能力。混淆矩阵通过比较每种组合的预测类和实际类来证明所开发模型的有效性和泛化能力。开发的Digital Twin模型可以快速响应工具状态和故障,增强了人机交互,提高了钻机的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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