In an era of intense competition where plant operating efficiencies must be maximized, downtime due to machinery failure has become more costly. To cut operating costs and increase revenues, industries have an urgent need to predict fault progression and remaining lifespan of industrial machines, processes, and systems. An engineer who mounts an acoustic sensor onto a spindle motor wants to know when the ball bearings will wear out without having to halt the ongoing milling processes. A scientist working on sensor networks wants to know which sensors are redundant and can be pruned off to save operational and computational overheads. These scenarios illustrate a need for new and unified perspectives in system analysis and design for engineering applications. Intelligent Diagnosis and Prognosis of Industrial Networked Systems proposes linear mathematical tool sets that can be applied to realistic engineering systems. The book offers an overview of the fundamentals of vectors, matrices, and linear systems theory required for intelligent diagnosis and prognosis of industrial networked systems. Building on this theory, it then develops automated mathematical machineries and formal decision software tools for real-world applications. The book includes portable tool sets for many industrial applications, including: Forecasting machine tool wear in industrial cutting machines Reduction of sensors and features for industrial fault detection and isolation (FDI) Identification of critical resonant modes in mechatronic systems for system design of R&D Probabilistic small-signal stability in large-scale interconnected power systems Discrete event command and control for military applications The book also proposes future directions for intelligent diagnosis and prognosis in energy-efficient manufacturing, life cycle assessment, and systems of systems architecture. Written in a concise and accessible style, it presents tools that are mathematically rigorous but not involved. Bridging academia, research, and industry, this reference supplies the know-how for engineers and managers making decisions about equipment maintenance, as well as researchers and students in the field.
Intelligent Diagnosis and Prognosis of Industrial Networked Systems.
Peter Diggle, Peter J Diggle, Patrick Heagerty, Kung-Yee Liang, Patrick J Heagerty, and Scott Zeger. Analysis of longitudinal data. ... Yu Ding, Dariusz Ceglarek, and Jianjun Shi. Fault diagnosis of multistage manufacturing processes by ...
His current research interests include intelligent diagnosis and prognosis of industrial networked systems, systems design of high-performance engineering systems, high-speed precision motion control, energy-efficient manufacturing ...
... Z.: Intelligent Diagnosis and Prognosis of Industrial Networked Systems. CRC Press (2017) 5. Xiong, R., Sun, F., Chen, Z., He, H.: A data-driven multi-scale extended Kalman filtering based parameter and state estimation approach of ...
Proceedings of International Conference on Robotics and Its Industrial Applications 2019 Janmenjoy Nayak, Valentina E. Balas, Margarita N. ... Pang CK et al (2017) Intelligent diagnosis and prognosis of industrial networked systems.
... Aman Behal; Warren Dixon; Darren M. Dawson; Bin Xian System Modeling and Control with Resource-Oriented Petri Nets, MengChu Zhou; Naiqi Wu Deterministic Learning Theory for Identification, Recognition, and Control, Cong Wang; ...
... Boris J. Lurie and Paul J. Enright Intelligent Diagnosis and Prognosis of Industrial Networked Systems, Chee Khiang Pang, Frank L. Lewis, Tong Heng Lee, and Zhao Yang Dong Synchronization and Control of Multiagent Systems, ...
Pang CK et al (2017) Intelligent diagnosis and prognosis of industrial networked systems. CRC Press 9. Umbrello S, De Bellis AF (2018) A value-sensitive design approach to intelligent agents, Artificial intelligence safety and security.
Subspace Learning of Neural Networks, Jian Cheng; Zhang Yi; Jiliu Zhou Reliable Control and Filtering of Linear Systems ... Zoran Gajic Deterministic Learning Theory for Identification, Recognition, and Control, Cong Wang; David J. Hill ...
Intelligent Diagnosis and Prognosis of Industrial Networked Systems. CRC Press, London (2017) 9. Umbrello, S., De Bellis, A.F.: A Value-Sensitive Design Approach to Intelligent Agents. Artificial Intelligence Safety and ...