Data from MIKE 21 models for training and validation of Sparse GP models in "Upskilling low-fidelity hydrodynamic models of flood inundation through spatial analysis and Gaussian Process learning"
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https://melbourne.figshare.com/articles/dataset/Data_from_MIKE_21_models_for_training_and_validation_of_Sparse_GP_models_in_Upskilling_low-fidelity_hydrodynamic_models_of_flood_inundation_through_spatial_analysis_and_Gaussian_Process_learning_/19100996/3
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资源简介:
Data from MIKE 21 models for training and validation of Sparse GP models. The data is used for publication in "Upskilling low-fidelity hydrodynamic models of flood inundation through spatial analysis and Gaussian Process learning" with the Chowilla floodplain as case study.<br> The data is structured in three folders: - The raw data folder contains results for running the hydrodynamic models. One folder for the high-fidelity model (HF) and one for the low-fidelity model (LF). Both folders contain MIKE 21 .dfsu data files. <br> - The managed data folder is structured in three folders. "Classification_Figures" contain figures generated for the publication. "Events_data" contains the MIKE 21 data in binary format as .npz files to be read via the Numpy package in Python. "SPGP_class_models" contains the trained Sparse GP (SPGP) models, EOF analysis data and categories depending on the binary state of the data on cell level. <br> - Boundary data folder contain data for the boundaries of the hydrodynamic models. This data is retrieved from the Bureau of Meteorology's online water data platform: http://www.bom.gov.au/waterdata/<br> Python code is located in the main folder and on https://github.com/nfraehr/Hybrid_LSG_model
提供机构:
University of Melbourne
创建时间:
2022-06-10



