Flappy Bird AI using Reinforcement Learning
- Version
- Download 7
- File Size 348.17 KB
- File Count 1
- Create Date 30 January 2026
- Last Updated 30 January 2026
Flappy Bird AI using Reinforcement Learning
Mrs.G.Monika, E.Manusha, G.Sathwika, T.Indhu
Assoc. Professor of CSE(AI&ML) of ACE Engineering College1 Students of
Department CSE(AI&ML) of ACE Engineering College2,3,4
Abstract - Reinforcement learning plays a crucial role in solving problems where multiple solutions exist. Flappy Bird AI applies
deep reinforcement learning to train an agent that learns to play Flappy Bird without human intervention. Despite having no prior
knowledge of the bird or pipes, the AI analyzes game states and scores to develop an optimal strategy. A Convolutional Neural
Network (CNN) processes visual input, while Q-learning with Deep Q-Networks (DQN) helps the AI make smart decisions. By
balancing exploration and exploitation, superhuman performance will be attained in navigating obstacles. Enhancements like
experience replay and target networks will improve learning efficiency. Flappy Bird AI will demonstrate the potential of
reinforcement learning in autonomous gaming and intelligent decision-making systems.
Key Words: Flappy Bird AI, Reinforcement Learning, Deep-Q-Network, convolutional Neural Network, Q-Learning,
Autonomous Gaming AI,Game AI.
Download