Kante, Bharadwaj (2025) Digital Twin Architecture for Smart Traffic Systems in the Cloud. Masters thesis, Dublin, National College of Ireland.
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Abstract
The modern city transport networks rely more on low latency, data-driven control mechanisms that are not easily fulfilled by the traditional supervisory systems. To address this challenge, this study designs, implements, and evaluates a cloud-native Digital Twin (DT) architecture that integrates real-time MQTT telemetry, semantic twin modelling, and micro-service analytics to enhance intersection performance. Based on Microsoft Azure IoT Hub, Event Hub, Digital Twins, the prototype maintains a median sensor-to-twin latency of 230 ms and provides an RMSE of 6.3 vehicles per minute using a lightweight rolling-window predictor, and also reaches throughputs in excess of 2000 messages per second using only a single vCPU. Cost analysis indicates that the solution can work comfortably within the average student cloud-credit allocation and thus affirms its cost-effectiveness in case of small-scale research implementation. The experimental results fill critical gaps addressed by recent literature, i.e. real-time synchronisation and elastic scaling of traffic DTs, and provide a replicable template that smart-city authorities can use to deploy at relatively low cost and within a short time frame. Future efforts will add sophisticated predictive models, reinforcement-learning controllers, and twin federation to transform the platform into a full-service smart-city operating layer.
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