ROSep 27, 2018

Adaptive Tensegrity Locomotion on Rough Terrain via Reinforcement Learning

arXiv:1809.10710v16 citations
Originality Incremental advance
AI Analysis

This work addresses locomotion challenges for tensegrity robots in rough environments, representing an incremental improvement over prior methods.

The paper tackled the problem of controlling tensegrity robots for locomotion on rough terrain by extending Guided Policy Search to handle non-periodic and adaptive behaviors, achieving reliable traversal in simulation.

The dynamical properties of tensegrity robots give them appealing ruggedness and adaptability, but present major challenges with respect to locomotion control. Due to high-dimensionality and complex contact responses, data-driven approaches are apt for producing viable feedback policies. Guided Policy Search (GPS), a sample-efficient and model-free hybrid framework for optimization and reinforcement learning, has recently been used to produce periodic locomotion for a spherical 6-bar tensegrity robot on flat or slightly varied surfaces. This work provides an extension to non-periodic locomotion and achieves rough terrain traversal, which requires more broadly varied, adaptive, and non-periodic rover behavior. The contribution alters the control optimization step of GPS, which locally fits and exploits surrogate models of the dynamics, and employs the existing supervised learning step. The proposed solution incorporates new processes to ensure effective local modeling despite the disorganized nature of sample data in rough terrain locomotion. Demonstrations in simulation reveal that the resulting controller sustains the highly adaptive behavior necessary to reliably traverse rough terrain.

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