Cyber–Physical Systems for High-Performance Machining of Difficult to Cut Materials in I5.0 Era—A Review

Hossein Gohari, Mahmoud Hassan, Bin Shi, Ahmad Sadek, Helmi Attia, Rachid M’Saoubi
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Abstract

The fifth Industrial revolution (I5.0) prioritizes resilience and sustainability, integrating cognitive cyber-physical systems and advanced technologies to enhance machining processes. Numerous research studies have been conducted to optimize machining operations by identifying and reducing sources of uncertainty and estimating the optimal cutting parameters. Virtual modeling and Tool Condition Monitoring (TCM) methodologies have been developed to assess the cutting states during machining processes. With a precise estimation of cutting states, the safety margin necessary to deal with uncertainties can be reduced, resulting in improved process productivity. This paper reviews the recent advances in high-performance machining systems, with a focus on cyber-physical models developed for the cutting operation of difficult-to-cut materials using cemented carbide tools. An overview of the literature and background on the advances in offline and online process optimization approaches are presented. Process optimization objectives such as tool life utilization, dynamic stability, enhanced productivity, improved machined part quality, reduced energy consumption, and carbon emissions are independently investigated for these offline and online optimization methods. Addressing the critical objectives and constraints prevalent in industrial applications, this paper explores the challenges and opportunities inherent to developing a robust cyber–physical optimization system.
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面向 I5.0 时代难切削材料高性能加工的网络物理系统--综述
第五次工业革命(I5.0)将复原力和可持续性放在首位,将认知网络-物理系统和先进技术相结合,以改进加工过程。为了通过识别和减少不确定性来源以及估算最佳切削参数来优化加工操作,已经开展了大量研究。虚拟建模和刀具状态监测(TCM)方法已被开发出来,用于评估加工过程中的切削状态。有了对切削状态的精确估计,就可以减少应对不确定性所需的安全系数,从而提高加工生产率。本文回顾了高性能加工系统的最新进展,重点介绍了针对使用硬质合金刀具加工难切削材料的切削操作而开发的网络物理模型。本文概述了离线和在线工艺优化方法的文献和背景进展。针对这些离线和在线优化方法,分别研究了刀具寿命利用率、动态稳定性、提高生产率、改善加工零件质量、降低能耗和碳排放等工艺优化目标。针对工业应用中普遍存在的关键目标和制约因素,本文探讨了开发稳健的网络物理优化系统所面临的挑战和机遇。
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