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simmediummanipulation-datametric · varies

Data-Driven Dynamic Parameter Learning of manipulator robots

Description

Bridging the sim-to-real gap remains a fundamental challenge in robotics, as accurate dynamic parameter estimation is essential for reliable model-based control, realistic simulation, and safe deployment of manipulators. Traditional analytical approaches often fall short when faced with complex robot structures and interactions. Data-driven methods offer a promising alternative, yet conventional neural networks such as recurrent models struggle to capture long-range dependencies critical for acc

Source

http://arxiv.org/abs/2512.08767v1