Machine Learning Optimized Approach for Parameter Selection in MESHFREE Simulations
- URL: http://arxiv.org/abs/2403.13672v1
- Date: Wed, 20 Mar 2024 15:29:59 GMT
- Title: Machine Learning Optimized Approach for Parameter Selection in MESHFREE Simulations
- Authors: Paulami Banerjee, Mohan Padmanabha, Chaitanya Sanghavi, Isabel Michel, Simone Gramsch,
- Abstract summary: Meshfree simulation methods are emerging as compelling alternatives to conventional mesh-based approaches.
We provide a comprehensive overview of our research combining Machine Learning (ML) and Fraunhofer's MESHFREE software.
We introduce a novel ML-optimized approach, using active learning, regression trees, and visualization on MESHFREE simulation data.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Meshfree simulation methods are emerging as compelling alternatives to conventional mesh-based approaches, particularly in the fields of Computational Fluid Dynamics (CFD) and continuum mechanics. In this publication, we provide a comprehensive overview of our research combining Machine Learning (ML) and Fraunhofer's MESHFREE software (www.meshfree.eu), a powerful tool utilizing a numerical point cloud in a Generalized Finite Difference Method (GFDM). This tool enables the effective handling of complex flow domains, moving geometries, and free surfaces, while allowing users to finely tune local refinement and quality parameters for an optimal balance between computation time and results accuracy. However, manually determining the optimal parameter combination poses challenges, especially for less experienced users. We introduce a novel ML-optimized approach, using active learning, regression trees, and visualization on MESHFREE simulation data, demonstrating the impact of input combinations on results quality and computation time. This research contributes valuable insights into parameter optimization in meshfree simulations, enhancing accessibility and usability for a broader user base in scientific and engineering applications.
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