Real-time train tracking and anomaly detection system
Σύστημα παρακολούθησης αμαξοστοιχιών και ανίχνευσης ανωμαλιών σε πραγματικό χρόνο
Master Thesis
Author
Birmpakos, Georgios
Μπιρμπάκος, Γεώργιος
Date
2024-06View/ Open
Abstract
This project is dedicated to the development of a real-time anomaly detection and monitoring system tailored to optimize railway operations. At its core, the system harnesses the power of the Random Forest model, a flexible machine learning technique, to predict estimated arrival times on train routes. Based on historical arrival and departure data from stations, the system uses GPS coordinates to meticulously calculate train speeds, thus allowing accurate estimates of journey times.