Reinforcement learning algorithms: A brief survey

AK Shakya, G Pillai, S Chakrabarty - Expert Systems with Applications, 2023 - Elsevier
Reinforcement Learning (RL) is a machine learning (ML) technique to learn sequential
decision-making in complex problems. RL is inspired by trial-and-error based human/animal …

[HTML][HTML] Unveiling the dynamics of AI applications: A review of reviews using scientometrics and BERTopic modeling

R Raman, D Pattnaik, L Hughes… - Journal of Innovation & …, 2024 - Elsevier
In a world that has rapidly transformed through the advent of artificial intelligence (AI), our
systematic review, guided by the PRISMA protocol, investigates a decade of AI research …

Efficient and scalable reinforcement learning for large-scale network control

C Ma, A Li, Y Du, H Dong, Y Yang - Nature Machine Intelligence, 2024 - nature.com
The primary challenge in the development of large-scale artificial intelligence (AI) systems
lies in achieving scalable decision-making—extending the AI models while maintaining …

[HTML][HTML] Leveraging reinforcement learning for dynamic traffic control: A survey and challenges for field implementation

Y Han, M Wang, L Leclercq - Communications in Transportation Research, 2023 - Elsevier
In recent years, the advancement of artificial intelligence techniques has led to significant
interest in reinforcement learning (RL) within the traffic and transportation community …

Challenges and opportunities in deep reinforcement learning with graph neural networks: A comprehensive review of algorithms and applications

S Munikoti, D Agarwal, L Das… - IEEE transactions on …, 2023 - ieeexplore.ieee.org
Deep reinforcement learning (DRL) has empowered a variety of artificial intelligence fields,
including pattern recognition, robotics, recommendation systems, and gaming. Similarly …

[HTML][HTML] Fuzzy logic and deep Q learning based control for traffic lights

I Tunc, MT Soylemez - Alexandria Engineering Journal, 2023 - Elsevier
Traffic congestion is a major concern for many metropolises. Although it is difficult to regulate
traffic flow because of numerous complexities and uncertainties, the traffic congestion …

A review of reinforcement learning applications in adaptive traffic signal control

M Miletić, E Ivanjko, M Gregurić… - IET Intelligent Transport …, 2022 - Wiley Online Library
In urban areas, the problem of recurring daily congestion is constantly increasing. A possible
solution is seen in the application of adaptive traffic signal control (ATSC) systems for the …

Prompt to Transfer: Sim-to-Real Transfer for Traffic Signal Control with Prompt Learning

L Da, M Gao, H Mei, H Wei - Proceedings of the AAAI Conference on …, 2024 - ojs.aaai.org
Numerous methods are proposed for the Traffic Signal Control (TSC) tasks aiming to provide
efficient transportation and mitigate congestion waste. In recent, promising results have …

EMVLight: A multi-agent reinforcement learning framework for an emergency vehicle decentralized routing and traffic signal control system

H Su, YD Zhong, JYJ Chow, B Dey, L ** - Transportation Research Part C …, 2023 - Elsevier
Emergency vehicles (EMVs) play a crucial role in responding to time-critical calls such as
medical emergencies and fire outbreaks in urban areas. Existing methods for EMV dispatch …

[PDF][PDF] Llm powered sim-to-real transfer for traffic signal control

L Da, M Gao, H Mei, H Wei - arxiv preprint arxiv:2308.14284, 2023 - researchgate.net
Numerous solutions are proposed for the Traffic Signal Control (TSC) tasks aiming to
provide efficient transportation and mitigate congestion waste. Recently, promising results …