Book Details
Format
Kindle
Pages
80
Language
English
Published
Jun 16, 2022
Publisher
CRC Press
ISBN-10
1000594920
ISBN-13
9781000594935
Description
Rui Yang and Maiying Zhong explore the cutting-edge field of machine learning applied to fault diagnosis within industrial engineering systems. With a focus on enhancing precision compensation methods, the authors delve into sophisticated techniques designed to improve system reliability and efficiency. Their approach leverages modern advancements in machine learning to tackle complex diagnostic challenges encountered in various industrial settings.
The book serves as a comprehensive resource for professionals and researchers who seek to understand the intersection of machine learning and industrial engineering. Through detailed case studies and practical applications, it illustrates how these techniques can be implemented to predict and identify faults proactively, ultimately minimizing downtime and operational disruptions.
Readers will discover a wealth of knowledge that not only highlights theoretical foundations but also emphasizes real-world applications. This work is an invaluable contribution to the ongoing conversation about integrating innovative technologies into traditional engineering practices, providing insights that are relevant for the future of the industry.
The book serves as a comprehensive resource for professionals and researchers who seek to understand the intersection of machine learning and industrial engineering. Through detailed case studies and practical applications, it illustrates how these techniques can be implemented to predict and identify faults proactively, ultimately minimizing downtime and operational disruptions.
Readers will discover a wealth of knowledge that not only highlights theoretical foundations but also emphasizes real-world applications. This work is an invaluable contribution to the ongoing conversation about integrating innovative technologies into traditional engineering practices, providing insights that are relevant for the future of the industry.
Genres
Science & Technology