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Dynamic Modeling of Robotic Manipulator via an Augmented Deep Lagrangian Network
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作者 Shuangshuang Wu Zhiming Li +1 位作者 wenbai chen Fuchun Sun 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2024年第5期1604-1614,共11页
Learning the accurate dynamics of robotic systems directly from the trajectory data is currently a prominent research focus.Recent physics-enforced networks,exemplified by Hamiltonian neural networks and Lagrangian ne... Learning the accurate dynamics of robotic systems directly from the trajectory data is currently a prominent research focus.Recent physics-enforced networks,exemplified by Hamiltonian neural networks and Lagrangian neural networks,demonstrate proficiency in modeling ideal physical systems,but face limitations when applied to systems with uncertain non-conservative dynamics due to the inherent constraints of the conservation laws foundation.In this paper,we present a novel augmented deep Lagrangian network,which seamlessly integrates a deep Lagrangian network with a standard deep network.This fusion aims to effectively model uncertainties that surpass the limitations of conventional Lagrangian mechanics.The proposed network is applied to learn inverse dynamics model of two multi-degree manipulators including a 6-dof UR-5 robot and a 7-dof SARCOS manipulator under uncertainties.The experimental results clearly demonstrate that our approach exhibits superior modeling precision and enhanced physical credibility. 展开更多
关键词 deep Lagrangian network nonconservative dynamics multi-degree manipulator inverse dynamic modeling
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