Data-Driven Fault Diagnosis for Complex Industrial Processes Data-Driven Fault Diagnosis for Complex Industrial Processes
Engineering Applications of Computational Methods

Data-Driven Fault Diagnosis for Complex Industrial Processes

Towards Fault Prediction, Detection and Identification

Hongpeng Yin und andere
    • CHF 155.00
    • CHF 155.00

Beschreibung des Verlags

This book summarizes techniques of fault prediction, detection, and identification, all included specifically in the data-driven fault diagnosis requirements within industrial processes, drawing from the combination of data science, machine learning, and domain-specific expertise. In the modern industrial processes, where efficiency, productivity, and safety stand as paramount pillars, the pursuit of fault diagnosis has become more crucial than ever. The widespread use of computer systems, along with new sensor hardware, generates significant quantities of real-time process data. It has been frequently asked what could be done with both the real-time and archived historical data, to not only promising efficiency but providing prospect of a brighter, more resilient future. This book starts with the definition, related work, and open test-bed for industrial process fault diagnosis. Then, it presents several data-driven methods on fault prediction (Part I), fault detection (Part II), and fault diagnosis (Part III), with consideration of properties of industrial processes, such as varying operation modes, non-Gaussian, nonlinearity. It distills cutting-edge methodologies and insights which may inspire for industrial practitioners, researchers, and academicians alike.

GENRE
Gewerbe und Technik
ERSCHIENEN
2025
15. April
SPRACHE
EN
Englisch
UMFANG
222
Seiten
VERLAG
Springer Nature Singapore
GRÖSSE
42.5
 MB
Data Science in Air Quality Monitoring Data Science in Air Quality Monitoring
2025
Computational Methods for Blade Icing Detection of Wind Turbines Computational Methods for Blade Icing Detection of Wind Turbines
2025
Welding and Cutting Case Studies with Supervised Machine Learning Welding and Cutting Case Studies with Supervised Machine Learning
2020
Effective Methods for Integrated Process Planning and Scheduling Effective Methods for Integrated Process Planning and Scheduling
2020
Intelligent Optimization and Control of Complex Metallurgical Processes Intelligent Optimization and Control of Complex Metallurgical Processes
2019
Engineering Applications of Discrete Element Method Engineering Applications of Discrete Element Method
2020