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arxiv: 1902.08705 · v2 · submitted 2019-02-22 · 💻 cs.RO · cs.AI· cs.LG· cs.SY

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A General Framework for Structured Learning of Mechanical Systems

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classification 💻 cs.RO cs.AIcs.LGcs.SY
keywords learningmechanicalmethodmodelsystemsavailableblack-boxhigh
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Learning accurate dynamics models is necessary for optimal, compliant control of robotic systems. Current approaches to white-box modeling using analytic parameterizations, or black-box modeling using neural networks, can suffer from high bias or high variance. We address the need for a flexible, gray-box model of mechanical systems that can seamlessly incorporate prior knowledge where it is available, and train expressive function approximators where it is not. We propose to parameterize a mechanical system using neural networks to model its Lagrangian and the generalized forces that act on it. We test our method on a simulated, actuated double pendulum. We show that our method outperforms a naive, black-box model in terms of data-efficiency, as well as performance in model-based reinforcement learning. We also conduct a systematic study of our method's ability to incorporate available prior knowledge about the system to improve data efficiency.

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