Bofill Jherson, Abisado Mideth, Villaverde Jocelyn, Sampedro Gabriel Avelino
Research and Development Center, Philippine Coding Camp, Manila 1004, Philippines.
College of Computing and Information Technologies, National University, Manila 1008, Philippines.
Sensors (Basel). 2023 Aug 10;23(16):7087. doi: 10.3390/s23167087.
High efficiency and safety are critical factors in ensuring the optimal performance and reliability of systems and equipment across various industries. Fault monitoring (FM) techniques play a pivotal role in this regard by continuously monitoring system performance and identifying the presence of faults or abnormalities. However, traditional FM methods face limitations in fully capturing the complex interactions within a system and providing real-time monitoring capabilities. To overcome these challenges, Digital Twin (DT) technology has emerged as a promising solution to enhance existing FM practices. By creating a virtual replica or digital copy of a physical equipment or system, DT offers the potential to revolutionize fault monitoring approaches. This paper aims to explore and discuss the diverse range of predictive methods utilized in DT and their implementations in FM across industries. Furthermore, it will showcase successful implementations of DT in FM across a wide array of industries, including manufacturing, energy, transportation, and healthcare. The utilization of DT in FM enables a comprehensive understanding of system behavior and performance by leveraging real-time data, advanced analytics, and machine learning algorithms. By integrating physical and virtual components, DT facilitates the monitoring and prediction of faults, providing valuable insights into the system's health and enabling proactive maintenance and decision making.
高效性和安全性是确保各行业系统和设备实现最佳性能与可靠性的关键因素。故障监测(FM)技术在这方面发挥着关键作用,通过持续监测系统性能并识别故障或异常情况的存在。然而,传统的FM方法在全面捕捉系统内复杂的相互作用以及提供实时监测能力方面存在局限性。为克服这些挑战,数字孪生(DT)技术应运而生,成为增强现有FM实践的一个有前景的解决方案。通过创建物理设备或系统的虚拟复制品或数字副本,DT为彻底变革故障监测方法提供了潜力。本文旨在探讨和讨论DT中使用的各种预测方法及其在各行业FM中的应用。此外,还将展示DT在包括制造业、能源、交通运输和医疗保健等众多行业的FM中的成功应用。DT在FM中的应用通过利用实时数据、先进分析和机器学习算法,能够全面了解系统行为和性能。通过整合物理和虚拟组件,DT有助于故障的监测和预测,为系统健康状况提供有价值的见解,并实现主动维护和决策制定。