ArcGIS Agricultural Land Use Maps from the Mississippi Cropland Data Layer



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ArcGIS Agricultural Land Use Maps from the Mississippi Cropland Data Layer Fred L. Shore, Ph.D. Mississippi Department of Agriculture and Commerce Jackson, MS, USA fred_shore@nass.usda.gov Rick Mueller Research and Development Division National Agricultural Statistics Service Fairfax, VA, USA Thomas L. Gregory National Agricultural Statistics Service Jackson, MS, USA Acknowledgements: Commissioner Lester Spell, Jr., D.V.M., MDAC, Dr. Joseph H. McGilberry, Director, Mississippi Cooperative Extension Service, James Brown, Mississippi Department of Transportation, and the USDA Field Enumerators in Mississippi were critical to the success of this project.

The Cropland Data Layer in Mississippi Cropland Data Layer Program Development Based on USDA-NASS programs started in the 1970s LARSYS software from Purdue University Produced state and county acreage estimates for major crops grown in a state Migrated system to a personal computer Mississippi Cropland Data Layer Project A cooperative project of USDA-NASS, Mississippi State University, and the Mississippi Department of Agriculture and Commerce Started in 1999 using the Peditor and RSP software programs of USDA-NASS Began creating the public domain Cropland Data Layer product ESRI ArcGIS Applications Maps for use by the team generating the Cropland Data Layer product Maps to present information to clients

June Agricultural Survey Segment Selection

Mississippi Data Collection

Segment Locator Map

Segment Locator Map and Field Locations

Field/Segment Boundaries on a High Resolution Photo The segment boundary is shown in blue and the field boundaries in red with acres shown for each field.

Field Boundary Digitizing With the help of a Landsat image, training field boundaries are digitized.

MS Landsat Scenes 2005 Each scene, bounded in yellow, is easy to select using the USGS Viewer.

Indian Remote Sensing (IRS) RESOURCESAT-1 Advanced Wide Field Sensor (AWiFS) scene 280-48-A, 9/04/05. Each scene covers 350 km 2 at an average resolution of 56 m (vs. Landsat TM scenes at 185 km 2 and 30 m resolution). Shown as false color IR: Band 5 (SWIR) / Band 3 (red) / and Band 2 (green) as red/green/blue. An additional IR band is also obtained (vs. 7 bands for Landsat TM scenes).

Image Processing Using Multitemporal Scenes for MS CDL, 2004

Image Processing for MS CDL, 2005

CDL vs. NASS Estimate (%) Mississippi Major Crop Planted Acres Estimates, 1999-2005 Cropland Data Layer Value as Percent of the Official Estimate 120.0 110.0 Mean = 98.2 Percent, Standard Deviation = 7.0 Cotton Rice Soybeans 100.0 90.0 80.0 1999 2000 2001 2002 2003 2004 2005 '99-'05 Year

Range of Weeks Shown: 0-12 Weeks Year Cropland Data Layer Indications vs. NASS Official Estimates in Percentages of Official Estimates by Crop, Planted Acres Cotton, Mean = 101.1 %, St. Dev. = 4.8 Rice, Mean = 93.5 %, St. Dev. = 8.4 Soybeans, Mean = 99.9 %, St. Dev. = 8.0 Scene Date vs. Optimum Date (Delta Area) Early Scene Dates, Mean = 3.2 Weeks, St. Dev. = 4.4 Late Scene Dates, Mean = 2.0 Weeks, St. Dev. = 2.0

The Mississippi Cropland Data Layer, 2005 The Cropland Data Layer classifications from satellite images, the June Agricultural Survey, and image processing.

The Mississippi Delta, 2005

Bolivar County Cropland Data Layer, 2005

Locating a Processing Plant

Multiyear Overlays Cotton The variation of land use for cotton in the Delta over a 6 year period is shown in this map. The darker the shade of blue the more years of cotton land use with some land used for cotton every year.

Multiyear Overlays Rice With the three year rotation schedule, comparing two 3-year periods gives similar land use areas. Note that the shade of red color is even indicating a single year of rice land use per location.

Comparing Crop Overlays Cotton and Corn Similar land use patterns are observed for these crops. Corn in the Delta is primarily grown in rotation with cotton.

Comparing Crop Overlays Rice and Soybeans The rotation of land from rice to soybeans is evident. Soybeans are grown in most areas of the Delta.

Crop Overlays by Priority Overlaying soybeans with cotton and then overlaying both with rice reveals that potential rice acreage is nearly equivalent to the cotton acreage.

ArcGIS Agricultural Land-Use Maps from the Cropland Data Layer Conclusions ArcGIS maps are: Help for the Field Enumerators in finding the USDA-NASS study segments. Quality control maps for Supervisors to check the field data vs. Farm Service Agency images and field outlines. Presentation of the Geotiff Cropland Data Layer to determine land use for the year. Displays of overlays of multiple year Cropland Data Layer maps for individual crops allow land suitability and crop rotation determinations. Good public relation tools for Mississippi agriculture. Annual Cropland Data Layers are available on disk from USDA- NASS (800) 727-9540 and on-line at www.mdac.state.ms.us and http://www.nass.usda.gov/research/cropland/sars1a.htm.