Research on Autonomous Robots Navigation based on Reinforcement Learning
Reinforcement learning continuously optimizes decision-making based on real-time feedback reward signals through continuous interaction with the environment, demonstrating strong adaptive and self-learning capabilities. In recent years, it has become one of the key methods to achieve autonomous navi...
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Zusammenfassung: | Reinforcement learning continuously optimizes decision-making based on
real-time feedback reward signals through continuous interaction with the
environment, demonstrating strong adaptive and self-learning capabilities. In
recent years, it has become one of the key methods to achieve autonomous
navigation of robots. In this work, an autonomous robot navigation method based
on reinforcement learning is introduced. We use the Deep Q Network (DQN) and
Proximal Policy Optimization (PPO) models to optimize the path planning and
decision-making process through the continuous interaction between the robot
and the environment, and the reward signals with real-time feedback. By
combining the Q-value function with the deep neural network, deep Q network can
handle high-dimensional state space, so as to realize path planning in complex
environments. Proximal policy optimization is a strategy gradient-based method,
which enables robots to explore and utilize environmental information more
efficiently by optimizing policy functions. These methods not only improve the
robot's navigation ability in the unknown environment, but also enhance its
adaptive and self-learning capabilities. Through multiple training and
simulation experiments, we have verified the effectiveness and robustness of
these models in various complex scenarios. |
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DOI: | 10.48550/arxiv.2407.02539 |