Please use this identifier to cite or link to this item: http://artemis.cslab.ece.ntua.gr:8080/jspui/handle/123456789/19893
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dc.contributor.authorΚυριακόπουλος, Γεώργιος-
dc.date.accessioned2025-11-05T11:40:01Z-
dc.date.available2025-11-05T11:40:01Z-
dc.date.issued2025-10-30-
dc.identifier.urihttp://artemis.cslab.ece.ntua.gr:8080/jspui/handle/123456789/19893-
dc.description.abstractUrban mobility is inherently non-stationary: shifts in weather, demand, and network conditions alter data distributions and degrade model accuracy over time. This diploma thesis designs, implements, and evaluates a drift-aware platform for continuous machine learning in Cooperative, Connected and Automated Mobility (CCAM). The system combines a modular microservice architecture for model serving, online monitoring, multi-detector drift consensus, and automated retraining with hot-swap deployment. A reproducible SUMO-based dataset for central Athens is constructed under normal and adverse-weather scenarios. Concept drift is induced via friction reduction to emulate rain, preserving network topology while yielding measurable shifts (average speed −13.68%, average trip duration +16.74%). Evaluation centers on Estimated Time of Arrival (ETA) prediction with a LightGBM model enriched by domain-specific features, exercised in a time-lapse experiment with an abrupt drift at the midpoint, due to rain conditions. Under drift, baseline errors increase markedly (MAE 30.36 s → 56.93 s and MAPE 13.20% → 19.02%). After detecting drift, the model is retrained using one hour of post-drift data and hot-swapped, recovering performance, when compared to the baseline model (MAE −11.00 s, −25.42% and MAPE −2.34 pp, −13.85%). The platform’s flexible architecture is further evidenced by the evaluation of Fuel Consumption and Number of Stops models, while its dashboard and user interface provide real-time interpretability. Overall, the results demonstrate a practical, closed-loop approach to detecting, responding to, and mitigating concept drift in realistic urban traffic settings.en_US
dc.languageenen_US
dc.subjectContinuous Machine Learningen_US
dc.subjectConcept Driften_US
dc.subjectETA Predictionen_US
dc.subjectSUMOen_US
dc.subjectMLOpsen_US
dc.subjectGradient Boosted Treesen_US
dc.subjectCooperative Connected and Automated Mobilityen_US
dc.subjectUrban Mobilityen_US
dc.titleContinuous Machine Learning for Cooperative, Connected and Automated Mobility applicationsen_US
dc.description.pages101en_US
dc.contributor.supervisorΤσανάκας Παναγιώτηςen_US
dc.departmentΤομέας Τεχνολογίας Πληροφορικής και Υπολογιστώνen_US
Appears in Collections:Διπλωματικές Εργασίες - Theses

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