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simmediumlocomotionmetric · varies

Multi-Objective Algorithms for Learning Open-Ended Robotic Problems

Description

Quadrupedal locomotion is a complex, open-ended problem vital to expanding autonomous vehicle reach. Traditional reinforcement learning approaches often fall short due to training instability and sample inefficiency. We propose a novel method leveraging multi-objective evolutionary algorithms as an automatic curriculum learning mechanism, which we named Multi-Objective Learning (MOL). Our approach significantly enhances the learning process by projecting velocity commands into an objective space

Source

http://arxiv.org/abs/2411.08070v1