Decentralized Deep Reinforcement Learning based Real-World Applicable Traffic Signal Optimization
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Updated
Jul 4, 2021 - Python
Decentralized Deep Reinforcement Learning based Real-World Applicable Traffic Signal Optimization
dITC through RL Code Foundation
Analysis of modern network protocols designed to maintain data integrity and availability in adversarial environments.
An open-source Python implementation and evaluation of the Priority Bidding Mechanism (PBM) for adaptive traffic signal control. This is an active collaboration between the Illinois Mathematics and Science Academy and Southern Illinois University, Carbondale.
SynapticGrid is an AI-driven system designed to make cities more efficient, sustainable, and livable by optimizing smart energy grids, waste management, and traffic flow through IoT sensors, real-time data processing, and reinforcement learning algorithms. The modular platform continuously learns and improves, helping urban environments
This project uses reinforcement learning to optimize traffic signals, reducing congestion and improving flow through dynamic adjustments and simulation analysis.
An intelligent traffic optimization system using Deep Reinforcement Learning (DQN & Actor-Critic) to control vehicle speed and lane changes for improved traffic flow and safety.
a prototype dashboard interface for the EV management via traffic and battery SoC, SoH optimisation
A Traffic Optimization system in C++ using a rudimentary ant colony optimization technique.
Analysis of modern network protocols designed to maintain data integrity and availability in adversarial environments.
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