Smart Predictive Maintenance for Energy System performed by Artificial Intelligence
Year 2024,
Volume: 7 Issue: 2, 49 - 70
Sahli Nabil
,
Kechida Sihem
Merzouki Rochdi
Abstract
In the era of digital transformation, artificial intelligence (AI) is emerging as a foundational technology that is driving efficiency and innovation across many industries. One area where AI has had a significant impact is Smart predictive maintenance (SPM). Industries are gradually moving away from old models of reactive maintenance to proactive methods using AI. This shift helps minimize downtime, reduce costs, and improve operational efficiency. This article explores the many benefits, real-world applications, and techniques through which AI is enabling the implementation of SPM. Multi-agent system-based SPM employing machine learning classifiers has been used combined with deep learning proposed algorithms LSTM for optimizing SPM for energy systems at SONELGAZ Algeria. Using the forecast model and analyzing time-series data, LSTM model has obtained good accuracy with almost 97% accuracy. The experimental results showcase remarkable performance, achieving a Score about of 92% for binary classification and an impressive 97% for multiple classifications. Comparative analysis highlights the superiority of the MAS-LSTM hybrid approach in prediction accuracy. Our solution model, SIPM (Smart energy system, Intelligent, Predictive, and Maintenance), implemented in Python, predicts a device failure probability within 30 days as 0.0046.
Ethical Statement
I ACCEPT DECISION OF YOUR JOURNAL COMMITY
Supporting Institution
Laboratoire d'Automatique et Informatique de Guelma (LAIG), Université 8 Mai 1945 de Guelma, Algeria
Project Number
IAM 24 GUELMA UNIVERSITY 7 TH INTERNATIONAL CONFERENCE SELECTED PAPER
Thanks
tHANKS TO ACCEPT SIBMITTING MY RESEARCH ARTICLE SELECTED IN IAM 24 GUELMA UNIVERSITY ALGERIA 2024 7TH INTERNATIONAL CONFERENCE
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