工业网络物理系统可持续性诊断:从人工智能的角度

Jiusi Zhang;Jilun Tian;Hao Luo;Shimeng Wu;Shen Yin;Okyay Kaynak
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摘要

随着工业网络物理系统(ICPS)在新的工业模式中发挥着越来越关键的作用,其可持续性已成为当前的研究重点。剩余使用寿命(RUL)预测,也称为预报预测,对 ICPS 的可持续发展至关重要。预报涉及利用 ICPS 内的过程监控设备获取实时运行数据。根据监测数据中观察到的趋势,分析预测潜在的系统故障可能在何时发生。准确的预报可以实时监测系统的健康状况,从而对可能出现的故障和系统可靠性发出预警。本文的主要目的是为读者提供一份及时的调查和综述,揭示 ICPS 中预报预测领域的研究现状、发展趋势和共同挑战。本文从人工智能(AI)的角度,全面评述了基于随机过程、机器学习及其混合应用的预测方法。通过对现有方法的综合比较,本文深入探讨了这些方法的优缺点。此外,面对 ICPS 现有 RUL 预测方法中的一些前沿问题,本文分析了一些已取得重大成果的开创性研究。最后,本文从人工智能的角度探讨了预报预测的机遇和挑战,旨在推动 ICPS 的可持续发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prognostics for the Sustainability of Industrial Cyber-Physical Systems: From an Artificial Intelligence Perspective
As industrial cyber-physical systems (ICPS) play an increasingly pivotal role in the new industrial paradigm, their sustainability has become the current research focus. Remaining useful life (RUL) prediction, also known as prognostics, is critically significant for the sustainability of ICPS. The prognostics involve utilizing process monitoring devices within ICPS to acquire real-time operational data. Based on the trends observed in the monitored data, the analysis predicts when potential system failures may occur. Accurate prognostics allow real-time monitoring of the system's health status, which enables early warning of possible faults and system reliability. The primary objective of this paper is to provide readers with a timely survey and review that reveals the current research status, development trends, and common challenges in the prognostics domain within ICPS. From the perspective of artificial intelligence (AI), the paper comprehensively reviews predictive approaches based on stochastic process, machine learning, and their hybrid applications. Through a comprehensive comparison of existing approaches, the paper delves into the strengths and weaknesses of these approaches. Furthermore, facing some cutting-edge issues in existing RUL prediction approaches for ICPS, this paper analyzes some pioneering investigations that have achieved great results. Finally, the paper explores the opportunities and challenges of prognostics from the perspective of artificial intelligence, which aims to drive the sustainability of ICPS.
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