IrrMapper: A machine learning approach for high resolution mapping of irrigated agriculture across the Western U.S.

  • David Ketchum
  • , Kelsey Jencso
  • , Marco P. Maneta
  • , Forrest Melton
  • , Matthew O. Jones
  • , Justin Huntington

Research output: Contribution to journalArticlepeer-review

63 Scopus citations

Abstract

High frequency and spatially explicit irrigated land maps are important for understanding the patterns and impacts of consumptive water use by agriculture. We built annual, 30 m resolution irrigation maps using Google Earth Engine for the years 1986-2018 for 11 western states within the conterminous U.S. Our map classifies lands into four classes: irrigated agriculture, dryland agriculture, uncultivated land, and wetlands. We built an extensive geospatial database of land cover from each class, including over 50,000 human-verified irrigated fields, 38,000 dryland fields, and over 500,000 km2 of uncultivated lands. We used 60,000 point samples from 28 years to extract Landsat satellite imagery, as well as climate, meteorology, and terrain data to train a Random Forest classifier. Using a spatially independent validation dataset of 40,000 points, we found our classifier has an overall binary classification (irrigated vs. unirrigated) accuracy of 97.8%, and a four-class overall accuracy of 90.8%. We compared our results to Census of Agriculture irrigation estimates over the seven years of available data and found good overall agreement between the 2832 county-level estimates (r2 = 0.90), and high agreement when estimates are aggregated to the state level (r2 = 0.94). We analyzed trends over the 33-year study period, finding an increase of 15% (15,000 km2) in irrigated area in our study region. We found notable decreases in irrigated area in developing urban areas and in the southern Central Valley of California and increases in the plains of eastern Colorado, the Columbia River Basin, the Snake River Plain, and northern California.

Original languageEnglish
Article number2328
JournalRemote Sensing
Volume12
Issue number14
DOIs
StatePublished - Jul 1 2020

Funding

Funding: This research was primarily funded by the National Science Foundation under Grant No. 1633831, the University of Montana BRIDGES Fellowship. Additional funding was provided by the Montana Climate Office and the OpenET project (https://etdata.org/). Development of OpenET is supported by the S.D. Bechtel, Jr. Foundation; the Gordon and Betty Moore Foundation; the Walton Family Foundation; the Windward Fund; the Water Funder Initiative; the North, Central, and South Delta Water Agencies, and the NASA Applied Sciences Program Western Water Applications Office. In-kind support was provided by partners in the agricultural and water management communities, Google Earth Engine, and the Water Funder Initiative.

FundersFunder number
Montana Climate Office
University of Montana
1633831
National Aeronautics and Space Administration

    Keywords

    • Irrigation
    • Landsat satellite
    • Random forest

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