Analisis Reinforcement Learning pada Game Box Endless Runner 2D

Date
2023Author
Syarif, T. M. Fadzri
Advisor(s)
Herriyance
Ginting, Dewi Sartika Br
Metadata
Show full item recordAbstract
This study aims to compare the effectiveness of three reinforcement learning algorithms, namely
DQN, A2C, and PPO, in optimizing the performance of an agent in the 2D Box Endless Runner
game. The study evaluates the performance of each algorithm by examining the rewards
generated during testing episodes, as well as the generalization of the trained models to different
game environments. The experimental results show that DQN, A2C and PPO produce effective
models for the Endless Box Runner 2D game problem. However, this result should be
considered as a general indication and cannot be directly generalized to other problems.
Furthermore, the trained models in the same initial environment but different algorithms show
good learning abilities in the generalization test.
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- Undergraduate Theses [765]