首页 /研究 /Sampling Strategies for Robust Universal Quadrupedal Locomotion Policies
LOCOMOTION

Sampling Strategies for Robust Universal Quadrupedal Locomotion Policies

David Rytz, Kim Tien Ly, Ioannis Havoutis

发表年份
2025
访问权限
开放获取

摘要

This work focuses on sampling strategies of configuration variations for generating robust universal locomotion policies for quadrupedal robots. We investigate the effects of sampling physical robot parameters and joint proportional-derivative gains to enable training a single reinforcement learning policy that generalizes to multiple parameter configurations. Three fundamental joint gain sampling strategies are compared: parameter sampling with (1) linear and polynomial function mappings of mass-to-gains, (2) performance-based adaptive filtering, and (3) uniform random sampling. We improve the robustness of the policy by biasing the configurations using nominal priors and reference models. All training was conducted on RaiSim, tested in simulation on a range of diverse quadrupeds, and zero-shot deployed onto hardware using the ANYmal quadruped robot. Compared to multiple baseline implementations, our results demonstrate the need for significant joint controller gains randomization for robust closing of the sim-to-real gap.

关键词

cs.RO

相关论文

查看 LOCOMOTION 分类全部论文