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HACL: History-Aware Curriculum Learning for Fast Locomotion

23 May 2025
Prakhar Mishra
Amir Hossain Raj
Xuesu Xiao
Dinesh Manocha
ArXiv (abs)PDFHTML
Main:6 Pages
3 Figures
Bibliography:2 Pages
3 Tables
Abstract

We address the problem of agile and rapid locomotion, a key characteristic of quadrupedal and bipedal robots. We present a new algorithm that maintains stability and generates high-speed trajectories by considering the temporal aspect of locomotion. Our formulation takes into account past information based on a novel history-aware curriculum Learning (HACL) algorithm. We model the history of joint velocity commands with respect to the observed linear and angular rewards using a recurrent neural net (RNN). The hidden state helps the curriculum learn the relationship between the forward linear velocity and angular velocity commands and the rewards over a given time-step. We validate our approach on the MIT Mini Cheetah,Unitree Go1, and Go2 robots in a simulated environment and on a Unitree Go1 robot in real-world scenarios. In practice, HACL achieves peak forward velocity of 6.7 m/s for a given command velocity of 7m/s and outperforms prior locomotion algorithms by nearly 20%.

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@article{mishra2025_2505.18429,
  title={ HACL: History-Aware Curriculum Learning for Fast Locomotion },
  author={ Prakhar Mishra and Amir Hossain Raj and Xuesu Xiao and Dinesh Manocha },
  journal={arXiv preprint arXiv:2505.18429},
  year={ 2025 }
}
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