Title of article :
A data-driven artificial intelligence approach to predict the remaining useful life of Neuero grain unloaders in Khuzestan ports
Author/Authors :
Zarghami ، Mohammad Ali Department of Engineering Industrial - Islamic Azad University, South Tehran Branch , Raissi ، Sadigh Department of Engineering Industrial - Islamic Azad University, South Tehran Branch , Bamdad ، Shahrooz Department of Engineering Industrial - Islamic Azad University, South Tehran Branch , Tohidi ، Hamid Department of Engineering Industrial - Islamic Azad University, South Tehran Branch
Abstract :
This study aims to enhance equipment management in grain unloading operations at Khuzestan Ports in Iran by predicting the remaining useful life of electric motors used in grain suction systems (neuero). Utilizing LSTM models in conjunction with environmental factors, this research minimizes unexpected costs associated with equipment failures and reduces downtime in unloading and loading processes. Real-world data from Khuzestan ports demonstrates the high accuracy of the LSTM model in predicting failures. The findings support proactive maintenance strategies, thereby improving efficiency and reliability in the port and maritime industry. While challenges such as limited data, incomplete coverage of environmental factors, and reliance on deep learning models exist, this study provides a foundation for future research on optimizing maintenance and management of neuero electric motors in bulk vessels.
Keywords :
Remaining Life Prediction , Failure Process Modeling , Neural Networks , Artificial Intelligence , Data , Driven Approach
Journal title :
International Journal of Maritime Technology
Journal title :
International Journal of Maritime Technology