Data-Driven Prediction of Dynamic Interactions Between Robot Appendage and Granular Material
- URL: http://arxiv.org/abs/2506.10875v1
- Date: Thu, 12 Jun 2025 16:43:21 GMT
- Title: Data-Driven Prediction of Dynamic Interactions Between Robot Appendage and Granular Material
- Authors: Guanjin Wang, Xiangxue Zhao, Shapour Azarm, Balakumar Balachandran,
- Abstract summary: An alternative data-driven modeling approach has been proposed to gain insights into robot motion interaction with granular terrain at certain length scales.<n>This approach can be used online and is based on offline data, obtained from the offline collection of high-fidelity simulation data and a set of sparse experimental data.<n>Results are expected to help robot navigation and exploration in unknown and complex terrains during both online and offline phases.
- Score: 2.551529992410986
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: An alternative data-driven modeling approach has been proposed and employed to gain fundamental insights into robot motion interaction with granular terrain at certain length scales. The approach is based on an integration of dimension reduction (Sequentially Truncated Higher-Order Singular Value Decomposition), surrogate modeling (Gaussian Process), and data assimilation techniques (Reduced Order Particle Filter). This approach can be used online and is based on offline data, obtained from the offline collection of high-fidelity simulation data and a set of sparse experimental data. The results have shown that orders of magnitude reduction in computational time can be obtained from the proposed data-driven modeling approach compared with physics-based high-fidelity simulations. With only simulation data as input, the data-driven prediction technique can generate predictions that have comparable accuracy as simulations. With both simulation data and sparse physical experimental measurement as input, the data-driven approach with its embedded data assimilation techniques has the potential in outperforming only high-fidelity simulations for the long-horizon predictions. In addition, it is demonstrated that the data-driven modeling approach can also reproduce the scaling relationship recovered by physics-based simulations for maximum resistive forces, which may indicate its general predictability beyond a case-by-case basis. The results are expected to help robot navigation and exploration in unknown and complex terrains during both online and offline phases.
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