CEE 6440: GIS in Water Resources Prepared by: Roula Bachour

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Better Estimation of ET for Efficient Irrigation in Delta, UT using GIS CEE 6440: GIS in Water Resources Prepared by: Roula Bachour (Fall, 2011)

Motivation Delta is a major agriculture area in the Sevier River Basin, Central Utah Water in diverted based on requests from the farmers depending on their water shares Accurate ET estimation are important for water management Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Study Area – Delta, Central UT Irrigation from: Sevier River Canal B Main Crops: Alfalfa, Corn, Barley Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Satellite images (Landsat 5 – TM) Jun 11 Jun 27 Jul 29 Aug 14 Aug 30 Sep 15 Oct 1 Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

6-bands LANDSAT Image Using ERDAS Imagine: Stacking bands 4 (NIR) and 3 (RED) for: - June 11 - June 27 - August 30 Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Unsupervised image classification using ArcGIS VALUE CLASS NAME Area (ha) 1 Barley 1,543 2 Corn 1,972 3 Alfalfa 3,346 4 Fallow 3,924 Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Crop Water Requirements (CWR) ETc = ETo * Kc Date ETo (mm/day) May 1-15 4.85 May 16-31 5.78 Jun1-15 6.15 Jun 16-30 8.36 Jul 1-15 8.01 Jul 16-31 7.94 Aug 1-15 7.13 Aug 16-31 6.52 Sept 1-15 4.73 Sept 16-30 4.68 Oct 1-15 2.77 Oct 16-31 2.61 Kc (corn) = 1.37*NDVI – 0.017 Kc (alfalfa) = 1.36*NDVI – 0.031 Kc (Barley) = 1.25*NDVI – 1.37 (Rocha et al., 2010) Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Crop Coefficient For each date NDVI was extracted using GIS image processing Kc from linear relationship with NDVI for each crop Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Actual ETc for each crop ETc=ETo x Kc Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Flow of Canal B Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Results System Efficiency = CWR/Q = 63% Total flow (Q) from canal B for the irrigation season ≈ 49 MCM Total Crop Water Requirement (CWR) for the irrigated area = 31 MCM System Efficiency = CWR/Q = 63% Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Recommendations Use of remotely sensed data to better estimate ET Evaluate the portion of the irrigation efficiency (i.e. conveyance, application efficiency…) Use methods to forecast ET in advance so it helps farmers to estimate their crop water needs. Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS

Thank You! References http://climate.usurf.usu.edu/products/data.php http://glovis.usgs.gov/ http://sevierriver.org/rivers/delta/b-canal/ Rocha. J., A., Perdigao, R. Melo, and C. Henriques (2010). Managing Water in Agriculture through Remote Sensing Applications. Remote Sensing for Science, Education and Natural and Cultural Heritage, 223-230 Thank You! Better Estimation of ET for Efficient Irrigation in Delta, UT Using GIS