Annual irrigation dynamics in the US Northern High Plains derived from Landsat satellite data

Deines, JM; Kendall, AD; Hyndman, DW

HERO ID

10287846

Reference Type

Journal Article

Year

2017

Language

English

HERO ID 10287846
In Press No
Year 2017
Title Annual irrigation dynamics in the US Northern High Plains derived from Landsat satellite data
Authors Deines, JM; Kendall, AD; Hyndman, DW
Journal Geophysical Research Letters
Volume 44
Issue 18
Page Numbers 9350-9360
Abstract Sustainable management of agricultural water resources requires improved understanding of irrigation patterns in space and time. We produced annual, high-resolution (30 m) irrigation maps for 1999–2016 by combining all available Landsat satellite imagery with climate and soil covariables in Google Earth Engine. Random forest classification had accuracies from 92 to 100% and generally agreed with county statistics (r2 = 0.88–0.96). Two novel indices that integrate plant greenness and moisture information show promise for improving satellite classification of irrigation. We found considerable interannual variability in irrigation location and extent, including a near doubling between 2002 and 2016. Statistical modeling suggested that precipitation and commodity price influenced irrigated extent through time. High prices incentivized expansion to increase crop yield and profit, but dry years required greater irrigation intensity, thus reducing area in this supply-limited region. Data sets produced with this approach can improve water sustainability by providing consistent, spatially explicit tracking of irrigation dynamics over time.
Doi 10.1002/2017GL074071
Wosid WOS:000413148100030
Is Certified Translation No
Dupe Override No
Is Public Yes
Language Text English
Is Peer Review Yes