Persistent Identifier
|
doi:10.7910/DVN/CAWRXI |
Publication Date
|
2025-02-22 |
Title
| DrivAerNet++: Annotations |
Author
| Elrefaie, MohamedMassachusetts Institute of Technology |
Point of Contact
|
Use email button above to contact.
Elrefaie, Mohamed (Massachusetts Institute of Technology) |
Description
| In addition to the CFD simulation data, our dataset includes detailed annotations for various car components (29 labels), such as wheels, side mirrors, and doors. These annotations are instrumental for a range of machine learning tasks, including classification, semantic segmentation, and object detection. The comprehensive labeling can also facilitate automated CFD meshing processes by providing precise information about different car components. By incorporating these labels, our dataset enhances the utility for developing and testing advanced algorithms in automotive design and analysis.
Strict Licensing Notice: DrivAerNet/DrivAerNet++ is released under the Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0) and is exclusively for non-commercial research and educational purposes. Any commercial use—including, but not limited to, training machine learning models, developing generative AI tools, creating software products, running new simulations using the provided geometries or any derived geometries, or other commercial R&D applications—is strictly prohibited. Unauthorized commercial use of DrivAerNet/DrivAerNet++, or any derived data, will result in enforcement by the MIT Technology Licensing Office (MIT TLO) and may carry legal consequences. |
Subject
| Engineering; Computer and Information Science; Physics; Other |
Keyword
| aerodynamic design, computational fluid dynamics, CFD dataset, automotive aerodynamics, machine learning, geometric deep learning, generative design, surrogate modeling, high-fidelity simulations, car design optimization, aerodynamic drag, wall shear stress, pressure field, volumetric flow fields, data-driven design, neural networks, parametric modeling, design space exploration, engineering simulations, vehicle aerodynamics |
Related Publication
| Elrefaie, M., Morar, F., Dai, A., & Ahmed, F. (2024). DrivAerNet++: A Large-Scale Multimodal Car Dataset with Computational Fluid Dynamics Simulations and Deep Learning Benchmarks. arXiv preprint arXiv:2406.09624. doi 10.48550/arXiv.2406.09624 https://doi.org/10.48550/arXiv.2406.09624 |
Notes
| The data for this project are stored on the Northeast Storage Exchange (NESE). Follow the instructions for large data download found on our website: Downloading data from NESE via Globus: Quick Start
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Depositor
| Elrefaie, Mohamed |
Deposit Date
| 2025-02-22 |