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Adaptive Quadruped Balance Control for Dynamic Environments Using Maximum-Entropy Reinforcement Learning.

Haoran Sun1, Tingting Fu1, Yuanhuai Ling1

  • 1School of Mechanical Engineering, Southwest Jiaotong University, Chengdu 610031, China.

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|September 10, 2021
PubMed
Summary
This summary is machine-generated.

This study introduces a reinforcement learning approach for quadrupedal robots to maintain balance against unpredictable disturbances. The developed control policy demonstrates effective real-world transferability and robustness to novel conditions.

Keywords:
artificial neural networks (ANN)multi-contact balance controlquadruped robotreinforcement learning (RL)soft actor-critic (SAC)

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Area of Science:

  • Robotics
  • Artificial Intelligence
  • Control Systems

Background:

  • External disturbances are a major challenge for robot balance in dynamic environments.
  • Conventional methods often rely on complex analytical models for robot balancing.
  • Adaptability to unpredictable disturbances remains a key research area in legged robotics.

Purpose of the Study:

  • To develop a learning-based control architecture for quadrupedal self-balancing.
  • To create a system adaptable to unpredictable external disturbances without explicit mathematical modeling.
  • To validate the control policy's performance in both simulation and real-world experiments.

Main Methods:

  • Utilized reinforcement learning and artificial neural networks to avoid complex analytical modeling.
  • Employed a maximum-entropy method (soft actor-critic algorithm) for enhanced exploration and generalization.
  • Developed a control policy mapping proprioceptive signals to action commands via a neural network and Tanh Gaussian policy.

Main Results:

  • The learning-based policy demonstrated effective self-balancing capabilities in simulation and experiments.
  • The control policy showed successful transfer to a real-world quadruped robot with minimal configuration.
  • The policy exhibited robustness to vibration conditions not encountered during training.

Conclusions:

  • A reinforcement learning-based control architecture offers an effective alternative to analytical models for robot balancing.
  • The proposed method enables robust and adaptable quadrupedal self-balancing in dynamic environments.
  • The findings highlight the potential for direct real-world application of learned policies in robotics.