Location: Soil and Water Management Research
Title: The Bushland, Texas maize for grain datasetsAuthor
Evett, Steven - Steve | |
Marek, Gary | |
Copeland, Karen | |
Ruthardt, Brice | |
Colaizzi, Paul | |
Brauer, David | |
HOWELL, SR., TERRY - Retired ARS Employee |
Submitted to: Ag Data Commons
Publication Type: Database / Dataset Publication Acceptance Date: 4/14/2022 Publication Date: 4/14/2022 Citation: Evett, S.R., Marek, G.W., Copeland, K.S., Ruthardt, B.B., Colaizzi, P.D., Brauer, D.K., Howell, Sr., T.A. 2022. The Bushland, Texas maize for grain datasets. Ag Data Commons. https://doi.org/10.15482/usda.adc/1526317. DOI: https://doi.org/10.15482/usda.adc/1526317 Interpretive Summary: The scarcity of water resources in the U.S. Southern High Plains is of regional, national and even international concern due to the fact that the region acts as a breadbasket for the nation and world. The majority of agricultural production in this region depends on irrigation, largely dependent on pumping from the Ogallala or High Plains Aquifer, which are yielding less water every year. Grain corn is a crop of major importance in the region. Scientists at the USDA ARS Conservation & Production Research Laboratory at Bushland, Texas, collected data regarding grain corn water use over six seasons to determine the decrease in water use that could be obtained by changing management, cultivar, and irrigation methods. However, these data have not been previously publicly available in a readily useable format. Thus, the scientific team has prepared these unique data sets for sharing with other scientists and the general public on the USDA National Agricultural Library online data sharing library. These data sets have already been used to improve crop growth, water use, and yield models used to forecast grain production nationally and to guide water planning locally and regionally. Public accessibility via the USDA National Agricultural Library will increase their use by other researchers. Technical Abstract: Accurate estimation of crop evapotranspiration (ET) is important for effective irrigation scheduling to improve crop water productivity, irrigation scheme management, long term water resource planning and management, and for use in crop simulation models to improve accuracy of yield estimates. However, all crop ET estimation methods must be tested against ground truth – ET as measured by mass balance in crop fields – and improved so as to estimate ET as accurately as possible. Mass balance measurement of ET depends on solving the soil water balance in which ET is the sum of the change of water stored in the soil profile to well below the root zone, irrigation, precipitation, the sum of any runon and runoff, and any soil water flux into or out of the soil profile. Effective means of measuring the profile change in storage include the neutron probe and large weighing lysimeters. The USDA ARS weighing lysimeter team at Bushland, Texas, measured ET of maize grown for grain in 1989, 1990, 1994, 2013, 2016, and 2018 using both weighing lysimeters and the neutron probe. Along with those measurements, the team measured crop growth and yield, weather, and irrigation applied. These data are presented, along with cropping calendars for each season, as machine readable files available to the public via the USDA ARS National Agriculture Library (NAL) Ag Data Commons internet site. The cropping calendars contain dates of important field operations, including dates, amounts, and kinds of fertilizers and pesticides applied. The weather data include daily sums and averages as well as 15-minute mean data for all days of the year, and include solar irradiance, air temperature and humidity, wind speed, air pressure, and precipitation. Some seasons of the Bushland maize data have already been used by the Agricultural Model Intercomparison and Improvement Project (AgMIP) maize modeling team, the OPENET team, and several universities for projects as varied as testing and improvement of eddy covariance methods of ET estimation, remote sensing based ET estimation, and crop model testing and improvement. |