Readings Newsletter
Become a Readings Member to make your shopping experience even easier.
Sign in or sign up for free!
You’re not far away from qualifying for FREE standard shipping within Australia
You’ve qualified for FREE standard shipping within Australia
The cart is loading…
Practical and informative, AI and Machine Learning for Mechanical and Electrical Engineering examines how AI is changing the status quo in mechanical engineering, electrical systems, and management. Real-world examples and case studies demonstrate the application of AI in such diverse settings as industry and policymaking. This book illustrates how AI is playing a crucial role in enhancing productivity and innovation in various industries. It discusses transition methods and the ethical implications of using AI in mechanical engineering. Highlights include:
Developing a smart algorithm to integrate fault detection and classification Algorithms to investigate different testing scenarios for various anomalies in electric motors Data fusion to detect and assess electromechanical damage Neural networks for rolling bearing fault diagnosis Evolutionary algorithms to optimize deep learning models for water industry forecasts AI-based anomaly detection and root-cause analysis.
An overarching theme is the transition from traditional mechanical, electrical, and management systems to AI-enabled smart systems. The book helps readers make sense of the challenges of integrating smart systems. It equips engineers with theoretical understanding as well as insight based on hands-on expertise. It shows how to better link and automate systems and improve productivity. This book not only shows how to implement smart solutions now but also shows the way to a more intelligent, productive, and interconnected future.
$9.00 standard shipping within Australia
FREE standard shipping within Australia for orders over $100.00
Express & International shipping calculated at checkout
Practical and informative, AI and Machine Learning for Mechanical and Electrical Engineering examines how AI is changing the status quo in mechanical engineering, electrical systems, and management. Real-world examples and case studies demonstrate the application of AI in such diverse settings as industry and policymaking. This book illustrates how AI is playing a crucial role in enhancing productivity and innovation in various industries. It discusses transition methods and the ethical implications of using AI in mechanical engineering. Highlights include:
Developing a smart algorithm to integrate fault detection and classification Algorithms to investigate different testing scenarios for various anomalies in electric motors Data fusion to detect and assess electromechanical damage Neural networks for rolling bearing fault diagnosis Evolutionary algorithms to optimize deep learning models for water industry forecasts AI-based anomaly detection and root-cause analysis.
An overarching theme is the transition from traditional mechanical, electrical, and management systems to AI-enabled smart systems. The book helps readers make sense of the challenges of integrating smart systems. It equips engineers with theoretical understanding as well as insight based on hands-on expertise. It shows how to better link and automate systems and improve productivity. This book not only shows how to implement smart solutions now but also shows the way to a more intelligent, productive, and interconnected future.