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Type: | Resource | |
Storage: | The size of this resource is 64.3 KB | |
Created: | Aug 15, 2025 at 7:34 p.m. (UTC) | |
Last updated: | Aug 15, 2025 at 10:55 p.m. (UTC) | |
Citation: | See how to cite this resource |
Sharing Status: | Public |
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Abstract
This resource contains a Jupyter Notebook that is used to introduce hydrologic data analysis and conservation laws. This resource is part of a HydroLearn Physical Hydrology learning module available at https://edx.hydrolearn.org/courses/course-v1:Utah_State_University+CEE6400+2019_Fall/about
In this activity, the student learns how to (1) navigate public websites and databases, extract key watershed attributes, and perform basic hydrologic data analysis for a watershed of interest; (2) assess, compare, and interpret hydrologic trends in the context of a specific watershed.
Learners use Python to access streamflow data from the U.S. Geological Survey (USGS) through the new modernized USGS API endpoints, which follow Open Geospatial Consortium (OGC) standards, select a USGS streamflow gage, and apply hydrologic data analyses to the watershed of interest. We acknowledge that the material relies on USGS data that are only available within the U.S. For watersheds outside the U.S. or for use with other datasets, additional steps are required to prepare the streamflow data. Once a suitable streamflow time series dataset is obtained, it should be imported into the Python workspace before proceeding with the analyses in this module.
Subject Keywords
Coverage
Spatial
Content
Related Resources
This resource is referenced by | Lane, B. A. & Garousi Nejad, I. (2019), Physical Hydrology, HydroLearn, https://edx.hydrolearn.org/courses/course-v1:Utah_State_University+CEE6400+2019_Fall/about |
The content of this resource is derived from | http://www.hydroshare.org/resource/99de717d26db4ff5bc0f663320b6bc0d |
This resource updates and replaces a previous version | Garousi-Nejad, I., B. Lane (2021). Hydrologic Statistics and Data Analysis (M1), HydroShare, http://www.hydroshare.org/resource/bd0b38fc5d1e4d5c895dc484ceeb2c2a |
Title | Owners | Sharing Status | My Permission |
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Learning Activities for the Physical Hydrology Course on HydroLearn | Irene Garousi-Nejad | Private & Shareable | None |
Credits
Funding Agencies
This resource was created using funding from the following sources:
Agency Name | Award Title | Award Number |
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National Science Foundation (NSF) | Collaborative Research: Improving Student Learning in Hydrology & Water Resources Engineering by Enabling the Development, Sharing and Interoperability of Active Learning Resou | 1726965 |
National Science Foundation (NSF) | Collaborative Research: Improving Student Learning in Hydrology & Water Resources Engineering by Enabling the Development, Sharing and Interoperability of Active Learning Resou | 1725989 |
Utah State University | Open Educational Resources (OER) Grant |
How to Cite
This resource is shared under the Creative Commons Attribution CC BY.
http://creativecommons.org/licenses/by/4.0/
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