IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

The Potential of Artificial Intelligence in Manufacturing: Preventative Maintenance Explored Through the Use of Machine Learning

The Potential of Artificial Intelligence in Manufacturing: Preventative Maintenance Explored Through the Use of Machine Learning
View Sample PDF
Author(s): Husmiati Yusuf (National Research and Innovation Agency, Indonesia)and Sonal Sisodia (Daly College of Business Management, India)
Copyright: 2026
Pages: 20
Source title: Integrating Digital Innovation and Integrated Frameworks in Manufacturing
Source Author(s)/Editor(s): Siddhartha Paul Tiwari (Google Asia Pacific, Singapore), Eliseo A. Aurellado (Southeast Asia Interdisciplinary Development Institute, Philippines)and Adi Fahrudin (Universitas Bhayangkara Jakarta Raya, Indonesia)
DOI: 10.4018/979-8-3373-1082-4.ch001

Purchase


Abstract

Across the globe, manufacturing is undergoing a digital transformation, and artificial intelligence (AI) has played a pivotal role in the emergence of this new trend. AI technologies are increasingly being integrated into factory operations in order to create more efficient and smarter production processes. Predictive maintenance is one of the most impactful and practical applications of artificial intelligence in manufacturing among the various applications of AI in the field. A predictive maintenance program involves the use of data-driven algorithms and models in order to identify when industrial equipment might need to be repaired or serviced, thus allowing it to be performed proactively before a breakdown occurs as a result of a malfunction. There are two approaches to equipment maintenance in the traditional sense; either you react to equipment failures after the event or you follow a predetermined service schedule regardless of the actual condition of the equipment. The chapter analyzes the potential of artificial intelligence in manufacturing preventative maintenance explored

Related Content

Duggirala Aravind, N. V. Suresh, R. N. Ravikumar, E. Eswara Reddy, Vanathi GopiKrishna, Kasukurthi Aravind. © 2027. 36 pages.
R. Deepa, R. Chiranth, L. K. Shoba, V. K. Kishore, A. Bennet Prabhu. © 2027. 34 pages.
Deepak Gupta, Ergashev Nuriddin, Rano Muradova, Sattarova Mahfuza, Rasulov Avazbek, Muslima Nazarova, Khayrulla Urozboev. © 2027. 28 pages.
Karuturi Sri Mani Krishna, R. Rajesh, B. Surendra. © 2027. 36 pages.
Jeremiah Renagi, Tingneyuc Sekac, Sujoy Kumar Jana. © 2027. 26 pages.
Nelly Rose Gham, Sujoy Kumar Jana, Tingneyuc Sekac, Bikash Ranjan Moharana. © 2027. 22 pages.
Arun Kumar Singh, Boaz Andrews. © 2027. 28 pages.
Body Bottom