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      Learning agile and dynamic motor skills for legged robots

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          Abstract

          Legged robots pose one of the greatest challenges in robotics. Dynamic and agile maneuvers of animals cannot be imitated by existing methods that are crafted by humans. A compelling alternative is reinforcement learning, which requires minimal craftsmanship and promotes the natural evolution of a control policy. However, so far, reinforcement learning research for legged robots is mainly limited to simulation, and only few and comparably simple examples have been deployed on real systems. The primary reason is that training with real robots, particularly with dynamically balancing systems, is complicated and expensive. In the present work, we introduce a method for training a neural network policy in simulation and transferring it to a state-of-the-art legged system, thereby leveraging fast, automated, and cost-effective data generation schemes. The approach is applied to the ANYmal robot, a sophisticated medium-dog–sized quadrupedal system. Using policies trained in simulation, the quadrupedal machine achieves locomotion skills that go beyond what had been achieved with prior methods: ANYmal is capable of precisely and energy-efficiently following high-level body velocity commands, running faster than before, and recovering from falling even in complex configurations.

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          Curriculum learning

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            Resilient machines through continuous self-modeling.

            Animals sustain the ability to operate after injury by creating qualitatively different compensatory behaviors. Although such robustness would be desirable in engineered systems, most machines fail in the face of unexpected damage. We describe a robot that can recover from such change autonomously, through continuous self-modeling. A four-legged machine uses actuation-sensation relationships to indirectly infer its own structure, and it then uses this self-model to generate forward locomotion. When a leg part is removed, it adapts the self-models, leading to the generation of alternative gaits. This concept may help develop more robust machines and shed light on self-modeling in animals.
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              RHex: A Simple and Highly Mobile Hexapod Robot

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                Author and article information

                Journal
                Science Robotics
                Sci. Robot.
                American Association for the Advancement of Science (AAAS)
                2470-9476
                January 16 2019
                January 16 2019
                January 16 2019
                January 16 2019
                : 4
                : 26
                : eaau5872
                Article
                10.1126/scirobotics.aau5872
                33137755
                81e2544c-57e2-4c53-a6ce-a6102cc5c9a3
                © 2019

                http://www.sciencemag.org/about/science-licenses-journal-article-reuse

                History

                Developmental biology,Ecology
                Developmental biology, Ecology

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