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Global Urban-Rural Floods Dataset

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Zenodo2025-04-18 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.15109426
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Global urban-rural flood occurrence dataset description: This repository provides code to generate and analyze global urban flood patterns. It integrates 10-meter Sentinel-2-based Dynamic World water class with supplementary geospatial datasets, including ESA WorldCover, FABDEM, and GHSL, to compute flood occurrence and extract metrics across both urban and rural areas. This processing pipeline uses both label-based and probability-based Dynamic World water classifications. It applies a sequence of physical and contextual masks to exclude non-floodable or non-observable regions (e.g., semi-permanent and permanent water bodies, steep slopes, areas under roofs). The resulting output is an interpretable flood occurrence image, which is then reduced over pre-defined urban and rural polygons using the ESA CCI 2018 land cover built-up class. Key features of the dataset include: Dynamic World water detection using both label (label = 0) and probability (water > 0.5) layers Masking based on: ESA WorldCover (to exclude permanent water, wetlands, mangroves) FABDEM (to remove steep slopes) GHSL (to mask building footprints) Mean flood occurrences are exported for global urban and rural clusters above 1 sq km This dataset is designed to support multiple sensitivity analyses with minor code changes: Year-specific analysis: Modify the START and END date variables to extract flood occurrence for a single or multi year, or a specific flood event Vegetation inclusion or exclusion: Toggle ESA WorldCover filtering to include or exclude flooded vegetation (e.g., wetlands, mangroves)Major cities vs global analysis: Sort urban or rural polygons by area and limit to the top 1000 largest cities (using the 'Urban_Area' field) Flood mask thresholding: Apply additional limits to final flood fraction values, such as less than 10 percent to avoid building shadows, less than 50 percent to exclude permanent water, or no threshold for single-event flood These configurations are adjustable within the provided Earth Engine script (floodDatasetCreate_GEEscript.rtf). Users can modify these parameters to clip to any region of interest or temporal extent, including single flood events, seasonal or annual composites, or multi-year summaries.   Pre-Created datasets: floods201823_allCitiesMain.csv Contains flood percentage, vegetation, built-up area, location, and population for ~83,000 cities   Supplementary datasets: floods201823_allCitiesMain_Clouds.csv: Urban–rural cloud probability difference floods201823_allCitiesMain_Rain.csv: Urban–rural rainfall difference floods201823_allCitiesMain_vegetation.csv: ESA WorldCover vegetation classes   Sensitivity analysis datasets: flood_analysis_combined_2018_2023_with_countries_largest1000_u50.csv            Top 1000 cities, building-shadow filtered flood_analysis_combined_2018_2023_with_countries_largest1000_u50_nFV.csv            Top 1000 cities, includes flooded vegetation top1000DWflood_citiesNames_<YEAR>_largest1000_u50[_nFV].geojson            Annual flood measurements with/without flooded vegetation filtering   Shapefiles required for analysis (from Natural Earth, provided): worldCitiesNaturalEarth.geojson – City locations and attributes ne_110m_admin_0_countries.zip – Country boundaries ne_10m_coastline.zip – Used to classify cities as coastal or inland   Run analysis on pre-created flood data: UFD_code.ipynb Main analysis notebook: Urban vs. rural flood percentage comparisons Comparisons across Global North vs. South, Coastal vs. Inland, and country-level Vegetation and built-up land cover contrasts Urban population exposure mapping Urban–rural cloud and rainfall differences Mean urban flood rate mapping   UFD_code_rainclouds.ipynb Generates raincloud and violin plots: Urban vs. rural flood differences Global North/South and Coastal/Inland comparisons Vegetation and built-up contrasts by flood tendency (Separated due to plotting library issues)   UFD_code_floodsLargest1000_perYear.ipynb Year-by-year flood analysis for the top 1000 cities (2018–2023)   UFD_code_largest1000_under50Water.ipynb Sensitivity analysis excluding pixels with >50% water occurrence   UFD_code_largest1000_under50Water_noFloodedVeg.ipynb Sensitivity analysis excluding both high water occurrence and flooded vegetation How to use the repository: To create flood data Open floodDatasetCreate_GEEscript.rtf Copy-paste the script into the Google Earth Engine Code Editor (free to use with a Google Earth Engine account) Set your desired region, period, and filtering options in the script Export results as tables or images   To run the analysis Use Google Colab to open the Jupyter notebooks (recommended, free to use with a Google account, most libraries are already installed unless specifically installed in the notebooks) Ensure that the required CSVs are uploaded and paths updated in the notebooks All code blocks will run sequentially and save output figures as PDF files     Expected Runtimes: Creating data:Processing time depends on the number of Sentinel-2 Dynamic World images and the export format (CSV or GeoTIFF). For a single flood event and a small region of interest: a few minutes For full-year or multi-year composites: several hours to a few days, depending on region size and Earth Engine queue times Running analysis on pre-created datasets: Main analysis notebook (UFD_code.ipynb): ~10–15 minutes Raincloud plots (UFD_code_rainclouds.ipynb) and sensitivity analyses: <5 minutes each   Software Versions: Python: 3.10.12 (Google Colab, April 2025) Earth Engine API (April 2025) Installed Python Package Versions: ptitprince: 0.2.6 cartopy: 0.22.0 contextily: 1.4.0 mapclassify: 2.6.1 fuzzywuzzy: 0.18.0
提供机构:
Zenodo
创建时间:
2025-03-30
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