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Repo for code to estimate river spatial scale parameters (e.g., along-river wse covariance/spectra etc) and apply them in a Bayes reconstruction approach to optimize noise-versus-resolution trade-offs using hte multitemporal stack of information from SWOT.
The hydrochron.py script grabs data for the Ocmulgee, Colorado, and Yellowstone rivers and puts them in a pandas dataframe
The process_river_stretch.py script creates the multitemporal stack of multi-reach stretches an runs Bayes reconstruction returning RiverSreatchData product instances.
Hana R. Thurman, George, H. Allen, Brent A. WIlliams, Arnaud Cerbelaud, and Cedric David "SWOT Captures Hydrologic Waves Traveling Down Rivers," Geophysical Research Letters, 2025 (in Review).