QuietWalk: Physics-Informed Reinforcement Learning for Ground Reaction Force-Aware Humanoid Locomotion Under Diverse Footwear
Hanze Hu, Luying Feng, Silu Chen, Tianjiang Zheng, Dexin Jiang, Wei Chen, Chi Zhang, Guilin Yang, Yaochu Jin

TL;DR
QuietWalk introduces a physics-informed reinforcement learning approach that estimates ground reaction forces from proprioception, enabling humanoid robots to achieve low-noise locomotion across diverse footwear without force sensors.
Contribution
The paper presents a novel physics-informed neural network integrated into RL to predict ground reaction forces, improving generalization and reducing impact noise in humanoid locomotion.
Findings
Prediction errors reduced by 82%-86% with inverse-dynamics consistency.
Noise levels decreased by over 7 dB in real-world tests.
Robust adaptation demonstrated across footwear types and surfaces.
Abstract
Humanoid robots operating in human-centered environments (e.g., homes, hospitals, and offices) must mitigate foot--ground impact transients, as impact-induced vibration and noise degrade user experience and repeated impacts accelerate hardware wear. However, existing low-noise locomotion training often relies on kinematic proxy objectives or fragile force sensors, and footwear-induced changes in contact dynamics introduce distribution shifts that hinder policy generalization.We present QuietWalk, a physics-informed reinforcement learning framework for ground-reaction-force-aware humanoid locomotion under diverse footwear conditions. QuietWalk employs an inverse-dynamics-constrained physics-informed neural network (PINN) to estimate per-foot vertical ground reaction forces (GRFs) from proprioceptive signals, and integrates the frozen predictor into the RL training loop to penalize…
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