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2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

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Page 1: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

2014 Agronomy Seedsmanship Conference

Precision Farming Technologies

OverviewDr. Brian Arnall

Oklahoma State University

Page 2: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

About Me

• Oklahoma Native• Precision Nutrient Management

Extension Specialist (since 2008)– Work: On the go VRT Fertilizer to

Basic Nutrient Management (N,P,K,pH)– Crops: Wheat, Canola, Corn, Sorghums,

Sesame, Soybean, Cotton, Sunflower, Bermudagrass

– Teach Sr. level Nutrient Management and Precision Ag Courses at OSU

Page 3: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Info Ag 2013

• Record Attendence• Top Three Topics

#1 Variable Rate Planting

Hybrid and Pop

#2 Unmanned Aerial Vehicles

#3 Agriculture Apps

Page 4: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

The Most Important Thing

• The one thing to ALLWAYS remember about Precision Ag, or Ag in General.

It is Almost IMPOSSIBLE to get two people to agree on how something

should be done.

Page 5: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Survey Question

• How often will two nutrients follow the same trend in a field.

A. Always

B. 75%

C. 50%

D. 25%E. Never

Page 6: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Variability 101

• In many cases data collection is biased.– Zones whether it is soil, yield, or EC based.

• The user has to accept certain assumptions.

• Variability has no limitsTreating variability does

Page 7: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Correlations

• Using 1 factor to determine other factors

P KP

Elevation

Page 8: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Elevation

Shallow EC

Soil pHK

P

Page 9: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Nutrient Perfection

• From the Eyes of a Soil Fertility guy.

http://tiagohoisel.cgsociety.org/gallery/866688/

Page 10: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Perfection P & K

• Immobile P and K Rate Studies in each zone

10 lbs20 lbs30 lbs40 lbs

10 lbs20 lbs30 lbs40 lbs

10 lbs20 lbs30 lbs40 lbs

Page 11: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Perfection P & K

• Understand the Benefits and Limitations of Soil Testing

• Broad sweeping recommendations• Recommendations are Conservative in both

directions• Will recommend only when

likely to respond• Rate will ensure maximum

yield for the majority

Page 12: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Perfection N

• Mobile Nutrients N, S, B• Yield Driven!!

– Make determinations based off Environment and Plant measured in Season

High / Adequate Rate

Page 13: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Perfection N

• Understand the Benefits and Limitations of Soil Testing

• Nitrogen levels in soil are not static– Soil test in August not always relevant in March.

• Dependent upon environment and yield level• Multiple yield potentials in

the field• Recommendation based

on Averages.

Page 14: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Perfection N

• Fields are highly variable– Why apply flat field rate– Why apply even zone level rate

Page 15: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Turning data into Decisions

• Zone Methods• Acceptance

– You are forcing lines in a natural environment

• Zones should not be stagnant if problem solving is occurring.

• Tackle the big issues with zone delineation

extension.missouri.edu

Page 16: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Redrawing lines

• Inherent errors when• Basing sampling locations on one variable

then redrawing lines based on new samples.

Page 17: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Grid

• Independent Layers created • But unless producer is willing to apply

nutrients independently there is little reason to spend the $.

• Next question, grid size.www1.extension.umn.edu

Page 18: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Survey Question

• What is the proper grid sample size

A. 10 ac

B. 7.5 ac

C. 5 ac

D. 2.5 ac

E. 1 ac

Page 19: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University
Page 20: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Turning data into decisions

• The GIS Package is your friend. – To each there own.

• Make it yours. Choose your Nutrient recommendations based on – Region– Goals

• Your limits are based on– Sampling– Equipment– Transfer of data to equipment

Page 21: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Yield Maps

• Identifying Yield Potential and Yield Stability

• What can you do with it?– Identify soil properties….– Identify yield levels and nutrient removal– Variable rate seeding and variable rate N for

starters

Page 22: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

N rate based on Yield

Year Zone 1 Zone 2 Zone 3

2007 120 225 180

2008 140 230 200

2009 130 270 180

2010 150 265 210

2011 90 200 150

Average 126 238 184

Zone 4 Zone 5

120 180

150 100

50 175

200 0

25 150

109 121

Where is the profit made in this field by using VRT.

Page 23: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Protein and Yield

FIGURE 19.3. Map of grain yield (A), map of grain protein concentration (B), and map of critically low protein indicating areas where nitrogen could be deficient for yield (C).

Protein measured on the go with NIRWater stress in corners

GIS Applications in Agriculture, Volume Two: Nutrient Management for Energy Efficiency by David E. Clay and John F. Shanahan (Feb 16, 2011)

Page 24: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Protein and Yield

FIGURE 19.5. Maps of nitrogen removed (A), nitrogen deficit (B), and N required (C). The map of N required can be exported from Surfer as an ESRI Shape File for input to a task controller for variable rate application.

GIS Applications in Agriculture, Volume Two: Nutrient Management for Energy Efficiency by David E. Clay and John F. Shanahan (Feb 16, 2011)

Page 25: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

•Methods (Via Chad Godsey of Godsey Precision Ag. • Created 90’ by 90’ grids and averaged the yield data points within the cell

for each year. • Calculated normalized yield for each cell for each year.

• Normalized yield = Cell average/entire field average• For example in Field 3 in 2006 the lightest color red cells were less than

90% of the field average.• Then averaged the cells for every year I had yield data to determine a

yield stability and classified each cells as:• Low (<90% of field average)• Average-low (90-95% of field average)• Average (95-105% of field average)• Average-high (105-110% of field average)• High (>110% of field average)

• Depending on the stability classification I then assigned a seeding rate for example on Field 3 I assigned seeding rate as follows:

• Low -27,000• Avg-low – 30,000• Avg – 32,000• Avg-high – 33,000• High – 34,000

• Some fields were very consistent so the entire field got 32,000 with the exception of a few cells where populations check strips got placed.

Yield Stability

Page 26: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University
Page 27: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University
Page 28: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Planting

• Variable Rate Seeding Population– What is the right rate– How is it determined– Is it static over environment and Yrs

• Variable Hybrid– Work horse vs Race Horse– Limitation?

• Equipment

Page 29: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Optical Sensors

• Satellite, Aerial, Ground based• Two Targets

– Soil or plant

• Soil Color– Texture and Organic Matter

• Plants– Biomass or Health

Page 30: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

VRT based on imagery

• Herbicide, Pesticide, Regulators, Defoliants.

• Currently the standard is:– Identify the rate for the low area

• Ex Cotton Defoliation 2nd pass, • Low LAI .25 oz AIM/ac

– Identify the rate for the high area• High biomass full rate AIM 1.6 oz/ac

Page 31: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

On the go Defoliant

Page 32: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Optical Sensor and N

• Two primary approaches on Crop Sensors• Three curve styles• Yield Prediction, Response Prediction

– Yield and Total Nitrogen need both vary

• Response Prediction– Yield and Total Nitrogen need does not vary,

but Fertilizer N does.

Page 33: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Curves

Page 34: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

UAV

• FAA, Resolution, Battery, Pilot • Consulting Group bought 4, crashed 3

Page 35: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

The Sooner Tree House

Page 36: 2014 Agronomy Seedsmanship Conference Precision Farming Technologies Overview Dr. Brian Arnall Oklahoma State University

Thank you!!!Brian Arnall373 Ag [email protected] available @

www.npk.okstate.eduTwitter: @OSU_NPKBlog: OSUNPK.comwww.Facebook.com/OSUNPKYou Tube Channel: OSUNPKwww.AglandLease.info

www.extensionnews.okstate.edu