V.Srujan kumar1, D.Akhil2, G.Vikas3,CH.Gopi4
The fault diagnosis and early warning system for coal mine ventilators play a pivotal role in ensuring the safety and efficiency of underground coal mining operations. This review delves into the state-of-the-art techniques, methodologies, and advancements in fault diagnosis and early warning systems specifically tailored for coal mine ventilators.The review encompasses a comprehensive analysis of various approaches, including traditional methods, such as rule-based systems and expert systems, as well as modern techniques like machine learning algorithms, artificial intelligence, and data- driven models. It examines the challenges associated with fault diagnosis in coal mine ventilators, such as the complex and harsh operating environment, limited data availability, and the need for real-time monitoring.Furthermore, the review discusses the importance of early warning systems in mitigating potential hazards and preventing catastrophic incidents in coal mines. It explores the role of sensor technologies, data acquisition systems, and communication protocols in enabling timely detection and notification of abnormalities in ventilator performance.
https://doi.org/10.62226/ijarst20241371
PAGES : 1379-1383 | 4 VIEWS | 2 DOWNLOADS
V.Srujan kumar1, D.Akhil2, G.Vikas3,CH.Gopi4 | Review of Fault Diagnosis and Early Warning of Coal Mine Ventilator | DOI : https://doi.org/10.62226/ijarst20241371
Journal Frequency: | ISSN 2320-1126, Monthly | |
Paper Submission: | Throughout the month | |
Acceptance Notification: | Within 6 days | |
Subject Areas: | Engineering, Science & Technology | |
Publishing Model: | Open Access | |
Publication Fee: | USD 60 USD 50 | |
Publication Impact Factor: | 6.76 | |
Certificate Delivery: | Digital |