학술논문

Predictive Maintenance for Industrial Equipments Using ML & DL
Document Type
Conference
Source
2023 International Conference on Advanced Computing & Communication Technologies (ICACCTech) ICACCTECH Advanced Computing & Communication Technologies (ICACCTech), 2023 International Conference on. :391-396 Dec, 2023
Subject
Computing and Processing
Deep learning
Transforms
Washing machines
Sustainable development
Unsupervised learning
Predictive maintenance
Smart manufacturing
Machine learning
Unsupervised Learning
Defect Identification
Maintenance optimization
Data-driven methods
Sustainability
Language
Abstract
This study explores the impact of artificial intelligence on predictive maintenance (PdM) in smart manufacturing. It provides insights for students, organizations, and academic institutions by examining data-driven PdM approaches. The paper introduces a new PdM framework designed for automatic washing machines, addressing unique research challenges. The study categorizes industrial PdM applications based on machine learning and deep learning methods, with a focus on performance indicators. Recent advancements favor deep learning, revealing innovative algorithms with the potential to transform PdM. The importance of defect identification for cost savings is emphasized, along with the use of unsupervised learning in situations with limited historical data. The solutions discussed aim to reduce downtime, increase equipment availability, and promote sustainability by extending the lifespan of critical machine components. The research highlights the potential of data-driven modeling in monitoring tool wear and bearing failures, showcasing AI's trans formative impact on manufacturing maintenance practices.