New Generation Artificial Intelligence-Driven Diagnosis and Maintenance Techniques

£149.99

New Generation Artificial Intelligence-Driven Diagnosis and Maintenance Techniques

Advanced Machine Learning Models, Methods and Applications

Production and industrial engineering Security and fire alarm systems Artificial intelligence

Authors: Guangrui Wen, Zihao Lei, Xuefeng Chen, Xin Huang

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Collection: Smart Sensors, Measurement and Instrumentation

Language: English

Published by: Springer

Published on: 28th September 2024

Format: LCP-protected ePub

ISBN: 9789819711765


Introduction

The intelligent diagnosis and maintenance of the machine mainly includes condition monitoring, fault diagnosis, performance degradation assessment and remaining useful life prediction, which plays an important role in protecting people's lives and property. In actual engineering scenarios, machine users always hope to use an automatic method to shorten the maintenance cycle and improve the accuracy of fault diagnosis and prognosis. In the past decade, Artificial Intelligence applications have flourished in many different fields, which also provide powerful tools for intelligent diagnosis and maintenance.

Latest Advances and Techniques

This book highlights the latest advances and trends in new generation artificial intelligence-driven techniques, including knowledge-driven deep learning, transfer learning, adversarial learning, complex network, graph neural network and multi-source information fusion, for diagnosis and maintenance of rotating machinery. Its primary focus is on the utilization of advanced artificial intelligence techniques to monitor, diagnose, and perform predictive maintenance of critical structures and machines, such as aero-engine, gas turbines, wind turbines, and machine tools.

Target Audience and Markets

The main markets of this book include academic and industrial fields, such as academic institutions, libraries of university, industrial research center. This book is essential reading for faculty members of university, graduate students, and industry professionals in the fields of diagnosis and maintenance.

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