Predictive Maintenance for Industrial Equipment’s using Machine Learning
- Version
- Download 43
- File Size 369.12 KB
- File Count 1
- Create Date 21 March 2025
- Last Updated 21 March 2025
Predictive Maintenance for Industrial Equipment’s using Machine Learning
Authors:
RESHMA1, DIVYA.A2, DHARNEESHWARAN3,
ASSISTANT PROFESSOR1, B.SC SS STUDENT 2, 3
SRI KRISHNA COLLEGE OF ARTS AND SCIENCE, COIMBATORE-26
Abstract: Industrial equipment maintenance is a critical aspect of ensuring operational efficiency, safety, and cost-effectiveness in manufacturing and production environments. Traditional maintenance practices, which rely on fixed schedules or reactive responses to equipment failures, often result in unnecessary downtime and increased expenses. This project presents a Predictive Maintenance System leveraging advanced machine learning techniques to forecast equipment failures and optimize maintenance schedules. The system utilizes historical equipment data, sensor readings, and operational parameters to predict the likelihood of component failures. By implementing this predictive approach, industries can transition to a proactive maintenance strategy, reducing unplanned downtimes, extending equipment lifespan, and minimizing operational costs. The system is designed for scalability and adaptability across various industrial domains, fostering a more sustainable and efficient maintenance ecosystem.
KEYWORDS: Industrial automation, predictive maintenance, smart manufacturing, process optimization.
Download