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Digital Twin-based Prediction for CNC Machines Inspection using Blockchain for Industry 4.0

机译:数码双基于CNC机器检查使用区块链的预测4.0

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The rapid growth and advancement of technology in industries provide a better quality of services to the end-user in the industrial Internet of Things (IIoT). The digital twin (DT) is an innovative technology recently developed in Industry 4.0 to provide a virtual representation of physical components, products, or equipment such as computer numerical control (CNC) machines. It can be used to run simulations before manufacturing. However, traditional DT platforms lack data privacy, traceability, immutability, authentication of stakeholders. Moreover, manual prediction of the wearing of the tool condition of the CNC machine is challenging. Motivated from these gaps, in this paper, we propose a six-layered architecture for DT of CNC, which predicts CNC tool wear detection using a novel ensemble technique based soft voted prediction model consisting of XGBoost, random forest, and AdaBoost models. The proposed architecture also incorporates the public Ethereum blockchain (BC) to maintain the aforementioned issues of authentication, traceability, and transparency through constraints and automation programmed into the smart contracts (SC) developed. We evaluate the proposed scheme’s performance through simulation and compare it with other traditional approaches concerning several performance parameters (accuracy, F1-score, precision, and recall). The result shows that the proposed approach outperforms the traditional approaches on these same performance parameters such as accuracy, F1-score, precision, and recall.
机译:行业技术的快速增长和推进为最终用户提供了更好的服务质量(IIT)。数字双胞胎(DT)是一项最近在工业4.0中开发的创新技术,提供了物理组件,产品或设备等设备的虚拟表示。它可以用来在制造之前运行模拟。但是,传统的DT平台缺乏数据隐私,可追溯性,不变性,利益相关者的认证。此外,手动预测CNC机器的磨损件的磨损是具有挑战性的。在本文中,我们提出了一种用于CNC的DT的六层架构,其使用基于XGBoost,随机林和Adaboost模型的基于新的集合技术的软投票预测模型预测了CNC工具磨损检测。拟议的架构还包括公共Ethereum区块链(BC),以通过编程到开发的智能合同(SC)的约束和自动化来维持上述认证,可追溯性和透明度问题。我们通过仿真评估所提出的方案的性能,并将其与其他关于几种性能参数的其他传统方法进行比较(准确性,F1分数,精度和召回)。结果表明,所提出的方法优于这些相同的性能参数的传统方法,例如准确性,F1分数,精度和召回。

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