Papers

1

Total Citations

11

H-Index

1

About

Huanyu Zang’s research lies at the intersection of reinforcement learning, decision-making under uncertainty, and intelligent systems. Their most impactful work provides a comprehensive survey on recent advances in deep reinforcement learning (DRL) for solving partially observable Markov decision processes (POMDP) problems—a critical challenge in real-world AI where agents must act with incomplete information. The two-part series, published in 2021, systematically reviews DRL applications across transportation, industries, communications, and networking, offering a valuable roadmap for researchers and practitioners. With 11 citations to date, this work is gaining recognition as a go-to resource for those tackling complex, partially observable environments. Zang’s contributions help bridge theoretical RL frameworks with practical deployment, highlighting how DRL can simulate human-like learning in dynamic, uncertain settings. Their survey not only synthesizes cutting-edge methods but also identifies open challenges, making it an essential reference for students and researchers aiming to push the boundaries of autonomous decision-making. Zang’s work continues to influence the development of robust, adaptive AI systems across multiple domains.

Research Focus

Key Achievements

1
H-Index
1
Papers
11
Total Citations
11
Avg Citations/Paper
🏆 Most Cited Paper
Recent Advances in Deep Reinforcement Learning Applications for Solving Partially Observable Markov Decision Processes (POMDP) Problems Part 2—Applications in Transportation, Industries, Communications and Networking and More Topics
11 citations · 2021
📈 Most Prolific Year: 2021 (1 Papers)
🤝 Key Collaborators: 2
🏛 Institutions: Florida A&M University - Florida State University College of Engineering

Top Papers

  1. 1

Key Collaborators

Contact & Links

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