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Robot Navigation Algorithm in Pedestrian-rich Environment

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Description

This project is part of my MSc thesis research. I developed an OpenAI Gym–based simulation environment consisting of a robot, dynamic pedestrians, and a goal location. The objective of the robot is to reach the destination without colliding with pedestrians whose coordinates change over time. The model is trained using Deep Reinforcement Learning with a Hybrid Proximal Policy Optimization (H-PPO) algorithm.

The repository RLAutonomousRobotNavigation2 (https://github.com/ddharshan/RLAutonomousRobotNavigation2) contains the simulation environment, including the robot model, pedestrian models, and the goal representation.

The repository RLRobotTraining2 (https://github.com/ddharshan/RLRobotTraining2) contains the Deep Neural Network architecture used to train the robot within this environment.

For a detailed explanation of the methodology and results, please refer to my thesis publication: https://papers.ssrn.com/sol3/papers.cfm?abstract_id=5178305

Pls feel free to reach me, if u get any doubts - ddharshan126@gmail.com

Author

Developed by Dhivyadharshan Seetharaman
MSc in Industrial Automation
Original implementation and training by the author.

Citing

If you use this work in research, academic projects, or publications, please cite:

BibTeX

@misc{Ddharshan_RLAutonomousRobotNavigation2,
  author       = {Ddharshan},
  title        = {RLAutonomousRobotNavigation2: Reinforcement Learning-Based Autonomous Robot Navigation},
  year         = {2022},
  publisher    = {GitHub},
  journal      = {GitHub repository},
  url          = {https://github.com/ddharshan/RLAutonomousRobotNavigation2}
}


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