Simulating spatial variability of cereal yields from historical yield maps and satellite imagery
Paper
Paper/Presentation Title | Simulating spatial variability of cereal yields from historical yield maps and satellite imagery |
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Presentation Type | Paper |
Authors | Dang, Y. P. (Author), Apan, Armando (Author), Dalal, R. C. (Author), Darr, Shawn Geoffrey (Author), Schmidt, M. (Author) and Pringle, M. (Author) |
Editors | Ostendorf, Bertram, Baldock, Penny, Bruce, David, Burdett, Michael and Corcoran, Paul |
Journal or Proceedings Title | Proceedings of the 2009 Surveying and Spatial Sciences Institute Biennial International Conference: Spatial Diversity (SSC 2009) |
Number of Pages | 12 |
Year | 2009 |
Place of Publication | Adelaide, Australia |
ISBN | 9780958136686 |
Web Address (URL) of Paper | http://www.ssc2009.com/ |
Conference/Event | 2009 Surveying and Spatial Sciences Institute Biennial International Conference (SSC 2009): Spatial Diversity |
Event Details | 2009 Surveying and Spatial Sciences Institute Biennial International Conference (SSC 2009): Spatial Diversity Parent Surveying and Spatial Sciences Institute Biennial International Conference Event Date 28 Sep 2009 to end of 02 Oct 2009 Event Location Adelaide, Australia |
Abstract | [Abstract]: The management of spatial variability of crop yields relies on the availability of affordable and accurate spatial data. Yield maps are a direct measure of the crop yields, however, costs and difficulties in collection and processing to generate yield maps results in poor availability of such data in Australia. In this study, we used historical mid-season normalised difference vegetation index (NDVI), generated from Landsat imagery over 4 years. Using linear regression model, the NDVI was compared to the actual yield map from a 257 ha paddock. The difference between actual and predicted yield showed that 77% and 93% of the paddock area had an error of <20% and <30%, respectively. The linear model obtained in the paddock was used to simulate crop yield for an adjoining paddock of 162 ha. On an average of 4 years, the difference between actual and simulated yield showed that 87% of the paddock had an error of <20%. However, this error varied from season to season. Paddock area with <20% error increased exponentially with decreasing in-crop rainfall between anthesis and crop maturity. Furthermore, the error in simulating crop yield also varied with the soil constraints. Paddock zones with high concentrations of subsoil chloride and surface soil exchangeable sodium percentage generally had higher percent of error in simulating crop yields. Satellite imagery consistently over-predicted cereal yields in areas with subsoil constraints, possibly due to chloride-induced water stress during grain filling. The simulated yield mapping methodology offers an opportunity to identify within-field spatial variability using satellite imagery as a surrogate measure of biomass. However, the ability to successfully simulate crop yields at farm scale or regional scale requires wider evaluation across different soil types and climatic conditions. |
Keywords | spatial variability; crop yields; historical yield maps; satellite imagery |
ANZSRC Field of Research 2020 | 401304. Photogrammetry and remote sensing |
Public Notes | No evidence of copyright restrictions on web site. |
Byline Affiliations | Department of Environment and Resource Management, Queensland |
Department of Surveying and Land Information |
https://research.usq.edu.au/item/9z986/simulating-spatial-variability-of-cereal-yields-from-historical-yield-maps-and-satellite-imagery
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