TL;DR
FLORES is a novel wheel-legged robot with a unique front-leg design and a reinforcement learning controller, enabling efficient multi-modal locomotion and superior adaptability across diverse terrains.
Contribution
Introduces FLORES, a wheel-legged robot with a distinctive front-leg configuration and a tailored RL controller for enhanced locomotion versatility.
Findings
Demonstrates improved steering and navigation efficiency.
Enables seamless transition between legged and wheeled modes.
Achieves versatile locomotion across various terrains.
Abstract
Wheel-legged robots integrate leg agility on rough terrain with wheel efficiency on flat ground. However, most existing designs do not fully capitalize on the benefits of both legged and wheeled structures, which limits overall system flexibility and efficiency. We present FLORES, a novel wheel-legged robot design featuring a distinctive front-leg configuration that sets it beyond standard design approaches. Specifically, FLORES replaces the conventional hip-roll degree of freedom (DoF) of the front leg with hip-yaw DoFs, and this allows for efficient movement on flat surfaces while ensuring adaptability when navigating complex terrains. This innovative design facilitates seamless transitions between different locomotion modes (i.e., legged locomotion and wheeled locomotion) and optimizes the performance across varied environments. To fully exploit \flores's mechanical capabilities, we…
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