A Reinforcement Learning Framework for Autonomous Behavior Tree Construction in Door Traversal Tasks

Conference proceedings article


Authors/Editors


Strategic Research Themes


Publication Details

Author listHataitip Paoamnartrit, Kitti Thamrongaphichartkul, Bawornsak Sakulkueakulsuk , Supachai Vongbunyong

Publication year2026

Start page33

End page39

Number of pages7

LanguagesEnglish-United States (EN-US)


Abstract

The intelligent decision-making behavior of autonomous systems has developed to adaptive and well-informedly interact with complicated environments but obtaining intelligent decision-making behavior often comes at the cost of difficulty in condition designing and complexity of the system. In this research, we aims to design and implement a decision-making framework that combines Behavior Tree (BT) and Reinforcement Learning (RL), allowing RL to autonomously construct BTs by learning from the environment and feedback signals from the BT. Additionally, we propose a reward function to address hierarchy problems in a door traversal task. The results presented in this paper demonstrate the effectiveness of the proposed framework and reward function in enhancing the performance of the policies and the constructed BTs.


Keywords

Mobile RobotReinforcement learning


Last updated on 2026-23-01 at 00:00