arXiv Open Access 2026

Load-Aware Locomotion Control for Humanoid Robots in Industrial Transportation Tasks

Lequn Fu Yijun Zhong Xiao Li Yibin Liu Zhiyuan Xu +2 lainnya
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Abstrak

Humanoid robots deployed in industrial environments are required to perform load-carrying transportation tasks that tightly couple locomotion and manipulation. However, achieving stable and robust locomotion under varying payloads and upper-body motions is challenging due to dynamic coupling and partial observability. This paper presents a load-aware locomotion framework for industrial humanoids based on a decoupled yet coordinated loco-manipulation architecture. Lower-body locomotion is controlled via a reinforcement learning policy producing residual joint actions on kinematically derived nominal configurations. A kinematics-based locomotion reference with a height-conditioned joint-space offset guides learning, while a history-based state estimator infers base linear velocity and height and encodes residual load- and manipulation-induced disturbances in a compact latent representation. The framework is trained entirely in simulation and deployed on a full-size humanoid robot without fine-tuning. Simulation and real-world experiments demonstrate faster training, accurate height tracking, and stable loco-manipulation. Project page: https://lequn-f.github.io/LALO/

Topik & Kata Kunci

Penulis (7)

L

Lequn Fu

Y

Yijun Zhong

X

Xiao Li

Y

Yibin Liu

Z

Zhiyuan Xu

J

Jian Tang

S

Shiqi Li

Format Sitasi

Fu, L., Zhong, Y., Li, X., Liu, Y., Xu, Z., Tang, J. et al. (2026). Load-Aware Locomotion Control for Humanoid Robots in Industrial Transportation Tasks. https://arxiv.org/abs/2603.14308

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Tahun Terbit
2026
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en
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arXiv
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Open Access ✓