This is a coding part of the final project for the module ELEC70127 Machine Learning for Tackling Climate Change.
Title: HaarUNet: A Novel Method to Accurately Simulate Turbulent Flow in Boiling Liquid
- Jupiter Notebook with code
- Poster with explanation
- Initial research proposal
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[2] Hassan, S. M. S., Feeney, A., Dhruv, A., Kim, J., Suh, Y., Ryu, J., Won, Y., and Chandramowlishwaran, A., “BubbleML: A Multi-Physics Dataset and Benchmarks for Machine Learning,” , 2023. URL https://arxiv.org/abs/2307.14623.
[3] Tripura, T., and Chakraborty, S., “Wavelet Neural Operator for solving parametric partial differential equations in computational mechanics problems,” Computer Methods in Applied Mechanics and Engineering, Vol. 404, 2023, p. 115783. URL https: //www.sciencedirect.com/science/article/pii/S0045782522007393.
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