Precision Agriculture: The Role of Science Presented by Dr. Eduardo Segarra Department of...

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Precision Agriculture: TheRole of Science

Presented by

Dr. Eduardo Segarra

Department of Agricultural and Applied Economics, Texas Tech University

Purpose of presentation

Highlight the relevancy of “science” based research on agriculture, and highlight the

importance of hedonic pricing

The Agricultural Sector in the 21st. century will be called upon to provide an

abundant, diverse, safe, and of high quality supply of food and fiber at reasonable prices for consumers…. and which is globally competitive, profitable

for producers and processors, and minimizes environmental degradation

Traditional agricultural crop production practices have been based

on broad input utilization prescriptions that ignore site-specific characteristics of crop fields within

farms and/or

across regions

Precision agriculture, precision farming, site-specific management,

or also referred to as remote-sensing farming internalizes

unique features of crop fields to tailor precise input utilization

Specifically, What is Precision Agriculture?

Precision agriculture deals with within-crop field disaggregation of inherent and applied factors of production or other characteristics

which have significant impacts on the overall productivity (amount and quality of output produced) and environmental

implications of crop production

SPATIAL issues addressed by Precision Agriculture practices

• Soil fertility

• Soil water holding capacity

• Weed and pest infestations

• Fertilizer use

• Irrigation water use

• Chemical use (herbicides & insecticides)

• Quality of output produced

• Yield potential

Spatial Variability of Soil Properties

Organic Matter pH Nitrogen Phosphorus Depth to caliche Slope & altitude

Hydraulic properties

Nitrogen Lbs/ANitrogen Lbs/A

Nitrogen

GreenbugDamage

Yield

NO3-N Pre-Season Residual Map from 0 to 12 Inches of Soil Depth,

Gaines County, Texas.

Peanut. NO3-N Pre-Season Residual Map from 0 to 12 Inches of Soil Depth, Gaines County, Texas.

Peanut. Optimal Levels of Spatial Nitrogen Application Map for Precision Farming Practices, Gaines County, Texas.

Spatial Peanut Yield Map for Precision Farming Practices, Gaines County, Texas.

Spatial Peanut Yield Map for Whole-Field Farming Practices,Gaines County, Texas.

Peanut. Spatial Net Revenue Above Nitrogen and Water Costs for Precision Farming Practices, Gaines County, Texas.

Peanut. Spatial Net Revenue Above Nitrogen and Water Costs for Whole-Field Farming Practices, Gaines County, Texas.

Probability Density Function for Peanut Net Revenues Above Nitrogen and Water Costs.

0

0.1

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0 100 200 300 400 500 600 700 800

Pro

b

Cumulative Density Function for Peanut Net Revenues Above Nitrogen and Water Costs.

Corn. NO3-N Pre-Season Residual Map from 0 to 24 Inches of Soil Depth, Halfway, Texas.

Corn. Optimal Levels of Spatial Nitrogen Application Map for Precision Farming Practices on a Per-Year Basis for a Ten-Year Planning Horizon, Halfway, Texas.

Spatial Corn Yield Map for Precision Farming Practices, Halfway, Texas.

Spatial Corn Yield Map for Whole-Field Farming Practices, Halfway, Texas.

Corn. Spatial Net Revenue Above Nitrogen and Water Costs for a Ten-Year Optimization Model for Precision Farming Practices, Halfway, Texas.

Corn. Spatial Net Revenue Above Nitrogen and Water Costs for a Ten-YearOptimization Model for Whole-Field Farming Practices, Halfway, Texas.

0.00 1000.00 2000.00 3000.00 4000.00 5000.00 6000.00 7000.00

Probability Density Function for Corn Net Revenues Above Nitrogen and Water Costs.

0

0.1

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0.9

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0 1000 2000 3000 4000 5000 6000 7000

Pro

b

Cumulative Density Function for Corn Net Revenues AboveNitrogen and Water Costs.

Cotton. NO3-N Pre-Season Residual Map from 0 to 12 Inches of Soil Depth, Lamesa, Texas.

Cotton. Optimal Levels of Spatial Nitrogen Application Map for Precision Farming Practices on a Per-Year Basis for a Ten-Year Planning Horizon, Lamesa, Texas.

Cotton. Spatial Net Revenue Above Nitrogen and Water Costs for a Ten-Year Optimization Model for Precision Farming Practices, Lamesa, Texas.

Cotton. Spatial Net Revenue Above Nitrogen and Water Costs for a Ten-Year Optimization Model for Whole-Field Farming Practices, Lamesa, Texas.

0.00 500.00 1000.00 1500.00 2000.00 2500.00 3000.00

Probability Density Function for Cotton Net Revenues Above Nitrogen and Water Costs, Lamesa, Texas.

0

0.1

0.2

0.3

0.4

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0.9

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0 500 1000 1500 2000 2500 3000

Pro

b

Cumulative Density Function for Cotton Net Revenues Above Nitrogen and Water Costs, Lamesa, Texas.

Derivation of PA Practices

• Determine plant growth conditions on a per unit land area basis

• Understand the interactions of plant stress and applied inputs on output production AND quality

• Use variable rate technology to apply inputs where AND when needed

• Develop decision aids for improved crop management (yield and quality)

TECHNOLOGY TRANSFER •Irrigation and Fertilizer use - according to Best Management Practices (BMP)

•IPM on a per unit land area basis

•Optimization of profits (amount of output produced and its quality)

•Minimization of environmental damage