Data-Driven Spectral Submanifold Reduction for Nonlinear Optimal Control of High-Dimensional Robots


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Date

2023

Publication Type

Conference Paper

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yes

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Abstract

Modeling and control of high-dimensional, nonlinear robotic systems remains a challenging task. While various model- and learning-based approaches have been proposed to address these challenges, they broadly lack generalizability to different control tasks and rarely preserve the structure of the dynamics. In this work, we propose a new, data-driven approach for extracting control-oriented, low-dimensional models from data using Spectral Submanifold Reduction (SSMR). In contrast to other data-driven methods which fit dynamical models to training trajectories, we identify the dynamics on generic, low-dimensional attractors embedded in the full phase space of the robotic system. This allows us to obtain computationally-tractable models for control which preserve the system's dominant dynamics and better track trajectories radically different from the training data. We demonstrate the superior performance and generalizability of SSMR in dynamic trajectory tracking tasks vis-á-vis the state of the art, including Koopman operator-based approaches.

Publication status

published

Editor

Book title

2023 IEEE International Conference on Robotics and Automation (ICRA)

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Volume

Pages / Article No.

2627 - 2633

Publisher

IEEE

Event

40th IEEE International Conference on Robotics and Automation (ICRA 2023)

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Software

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Organisational unit

03973 - Haller, George / Haller, George check_circle

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