DeepTrafficQ is a reinforcement learning-based traffic signal control system that uses Deep Q-Networks (DQN) to minimize vehicle waiting times at a 4-way intersection. By leveraging Q-learning with experience replay and a convolutional neural network (CNN), the agent dynamically adjusts traffic light phases to optimize traffic flow.
reinforcement-learning q-learning cnn sumo convolutional-neural-networks deep-q-network cnn-keras smart-cities smart-mobility traffic-optimization experience-replay adaptive-traffic-light-control traffic-signal-control intelligent-transportation q-learning-algorithm iot-traffic-surveillance dqn-agent intelligent-transportation-system
- Updated
Jun 29, 2025 - C