TY - JOUR
T1 - Identifying important sensory feedback for learning locomotion skills
AU - Yu, Wanming
AU - Yang, Chuanyu
AU - McGreavy, Christopher
AU - Triantafyllidis, Eleftherios
AU - Bellegarda, Guillaume
AU - Shafiee, Milad
AU - Ijspeert, Auke Jan
AU - Li, Zhibin
N1 - Funding Information:
We gratefully acknowledge Q. Rouxel for providing valuable suggestions to improve the technical quality of the early version of this manuscript.
Publisher Copyright:
© 2023, The Author(s).
PY - 2023/8/21
Y1 - 2023/8/21
N2 - Robot motor skills can be acquired by deep reinforcement learning as neural networks to reflect state–action mapping. The selection of states has been demonstrated to be crucial for successful robot motor learning. However, because of the complexity of neural networks, human insights and engineering efforts are often required to select appropriate states through qualitative approaches, such as ablation studies, without a quantitative analysis of the state importance. Here we present a systematic saliency analysis that quantitatively evaluates the relative importance of different feedback states for motor skills learned through deep reinforcement learning. Our approach provides a guideline to identify the most essential feedback states for robot motor learning. By using only the important states including joint positions, gravity vector and base linear and angular velocities, we demonstrate that a simulated quadruped robot can learn various robust locomotion skills. We find that locomotion skills learned only with important states can achieve task performance comparable to the performance of those with more states. This work provides quantitative insights into the impacts of state observations on specific types of motor skills, enabling the learning of a wide range of motor skills with minimal sensing dependencies.
AB - Robot motor skills can be acquired by deep reinforcement learning as neural networks to reflect state–action mapping. The selection of states has been demonstrated to be crucial for successful robot motor learning. However, because of the complexity of neural networks, human insights and engineering efforts are often required to select appropriate states through qualitative approaches, such as ablation studies, without a quantitative analysis of the state importance. Here we present a systematic saliency analysis that quantitatively evaluates the relative importance of different feedback states for motor skills learned through deep reinforcement learning. Our approach provides a guideline to identify the most essential feedback states for robot motor learning. By using only the important states including joint positions, gravity vector and base linear and angular velocities, we demonstrate that a simulated quadruped robot can learn various robust locomotion skills. We find that locomotion skills learned only with important states can achieve task performance comparable to the performance of those with more states. This work provides quantitative insights into the impacts of state observations on specific types of motor skills, enabling the learning of a wide range of motor skills with minimal sensing dependencies.
UR - https://www.scopus.com/pages/publications/85168542639
U2 - 10.1038/s42256-023-00701-w
DO - 10.1038/s42256-023-00701-w
M3 - Article
AN - SCOPUS:85168542639
SN - 2522-5839
VL - 5
SP - 919
EP - 932
JO - Nature Machine Intelligence
JF - Nature Machine Intelligence
IS - 8
ER -