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86: Symposium – Smallholders Managing Soil Health for Climate Resilience
2018 ASA, CSSA, and CSA Annual Meeting (Nov. 4-7) in Baltimore, MD, USA
Scaling Agronomy for Smallholder Recommendation
Systems using Mid-Infrared and Total X-Ray
Fluorescence Spectroscopy for Rapid, Low Cost Soil-
Plant Analysis
Keith Shepherd, Erick Towett, Andrew Sila
Africa Soil Information Service
Improving relevance of soils information for users
Limitations
• Inference space of recommendations not known
• Uncertainty not represented or communicated
• Soil science knowledge not integrated into
economic decision making
Shepherd KD. How soil scientists can do a better job of making their research useful. The Conversation
(Science & Technology) 14 August 2018.
Africa Soil Information Service
Statistically sound
sampling schemes
Sample diversity
Unbiased prevalence
data
Shepherd et al. (2015). Land health surveillance and response: A framework
for evidence-informed land management. Agricultural Systems 132: 93–106
Africa Soil Information Service
Hengl T, Leenaars JGB, Shepherd KD, Walsh MG, Heuvelink GBM, Mamo T, Tilahun H, Berkhout E,
Cooper M, Fegraus E, Wheeler I, Kwabena NA. 2017. Soil nutrient maps of Sub-Saharan Africa:
assessment of soil nutrient content at 250 m spatial resolution using machine learning. Nutrient Cycling in
Agroecosystems 109:77–102.
Digital soil mapping of soil nutrients
https://soilgrids.org/
AfSIS – national level sampling & mapping
EthioSIS, GhaSIS, NiSIS, TanSIS
Soils, Crop trials
Soil-Plant Spectral Technology
Mid-infrared spectrometer Handheld x-ray fluorescence
•Soils properties
•Plant macro & micro nutrients
•Compost quality
•Fertilizer certification
•Digital mapping of soil properties
•Plant nutrition monitoring; large n trials
•Soil carbon inventory
•Agro-input and output quality screening
•Mining reclamation
→
Spectral Shape Relates to
Basic Soil Properties:
• Mineral composition
• Iron oxides
• Organic matter
• Carbonates
• Soluble salts
• Particle size distribution
These properties are the determinants of most functions!
MIR spectral fingerprints
On-line Spectral Prediction Engine
Bayesian Additive Regression Trees
http://spectpred.qed.ai
AfSIS
MIR soil spectral profiling
0.0
0.5
1.0
6 7 8
pH
density
Clu
0.00
0.05
0.10
0.15
20 40 60 80
Clay (%)
density
Cluster
A
B
0.00
0.05
0.10
0.15
0 25 50 75 100
CEC (ECD)
density
Cluster
A
B
0.0
0.5
1.0
1.5
2.0
0.5 1.0 1.5
K (mg/kg)
density
Clu
Machakos County, Kenya (Technoserve Ltd)
NIR Plant N calibration in yam trials
YAMSYS Plant N calibration
Plant N calibration applied to treatments
Foliar pXRF as diagnostic
One Acre Fund trials in Western Kenya: Low P, K, S, Cu, Zn
K P S Mg Ca Cu Zn Fe Mn
Application levels for spectral technology
• Digital mapping of soil constraints, crop nutritional deficiencies,
spectral soil types
• National scale
• Refinement at county / district level
• Local scale - UAV hyperspectral calibration / indices
• Cost effective soil-plant testing services for farmers
• National labs
• Rural soil-plant spectral testing labs – walk-in service to farmers
• Low cost sensors for community knowledge workers, private
enterprises
Spectral lab network & capacity development
Country Lab
Benin AfricaRice
Cameroon IITA; ICRAF
Cote D’Ivoire CNRA; ICRAF
Ethiopia ATA/NSTC (5); Mekelle Uni;
Ghana CSRIO-SRI
Kenya KARLO; One Acre Fund; CNLS, ICRAF
Madagascar Antananarivo Uni (collaborative).
Malawi CARS/ DARTS
Mali IER
Morocco Mohammed Vi Polytechnic /OCP (in progress)
Mozambique IAMM
Nigeria Obafemi Awolowo Un; IITA; IAR; FDMA&RD (2)
South Africa KwaZulu-Natal Dept A
Tanzania SARI; Min Ag (4); Sokoine Uni
Outside Africa Australia (CSIRO); China (YPC); India (CIMMYT; ISSS-ICAR);
Peru (IIAP); UK (Rothamsted)
Soil archiving system
Training courses; lab audits
SpecWeb software
• Load spectral files
• Display spectra
• Monitor standards
• Select calibration samples
• Perform calibrations
• Perform predictions
Represent & communicate uncertainty
• Use distributions not averages
• Communicate uncertainty to users
• Maintain links to original data
• Validate recommendations
• Focus further measurement on areas of
uncertainty that matter
Principles for taking agronomy to scale
•Define the decision dilemma
•Define the region of interest
•Sample it to provide a sound basis for inference
•Measure using rapid, low cost, reproducible methods
•Represent & communicate the uncertainty in results
•Validate recommendations using independent samples
•Maintain the link to the original data
•Focus further sampling to reduce uncertainty that matters
http://worldagroforestry.org/landhealth
Decision-focused agricultural research
• Identify the decision goals & alternatives
• Risk-Return analysis of intervention options
• Holistic - all relevant factors considered
• Quantifies uncertainties and risks; combines expert
knowledge with data
• Quantifies trade-offs - $
• Value-of-information analysis
• Where to measure & how much to spend on it
• Guides adaptive monitoring
Tools developed
• Monte Carlo simulation R package
• Bayesian Networks with value-of-information analysis
Using uncertainty and value-of-information analysis to define data needs
Luedeling E and Shepherd KD. 2016. Decision-Focused
Agricultural Research. The Solutions Journal 7: 46-54
Examples
•Shepherd K, Hubbard D, Fenton N, Claxton K, Luedeling E, De Leeuw J, 2015. Development goals should enable decision-making.
Nature 523, 152-154.
•Luedeling E and Shepherd KD. 2016. Decision-Focused Agricultural Research. The Solutions Journal 7: 46-54.
•Yet, B., Constantinou, A., Fenton, N., Neil, M., Luedeling, E. and Shepherd, K. 2016. A Bayesian Network Framework for Project Cost,
Benefit and Risk Analysis with an Agricultural Development Case Study. Expert Systems With Applications 60: 141–155.
•Rosenstock,T.S., Mpanda, M., Rioux J., Aynekulua, E., Kimaro, A.A., Neufeldt, H., Shepherd. K.D., Luedeling. E. 2014. Targeting
conservation agriculture in the context of livelihoods and landscapes. Agriculture, Ecosystems and Environment 187: 47–51
•Luedeling, E., Oord, A., Kiteme, B., Ogalleh, S., Malesu, M., Shepherd, K. D., De Leeuw, J. (2015). Fresh groundwater for Wajir – ex-ante
assessment of uncertain benefits for multiple stakeholders in a water supply project in Northern Kenya. Frontiers in Environmental
Science 3: 16.
•Favretto, N., Luedeling, E., Stringer, L. C., & Dougill, A. J. (2017). Valuing ecosystem services in semi-arid rangelands through stochastic
simulation. Land Degradation and Development 28, 65–73.
•Tamba Y, Muchiri C, Shepherd K, Muinga G, Luedeling E. 2017. Increasing DryDev’s Effectiveness and Efficiency through Probabilistic
Decision Modelling. ICRAF Working Paper No 260. Nairobi, World Agroforestry Centre.
•Tamba Y, Muchiri C, Luedeling E, Shepherd K. 2018. Probabilistic decision modelling to determine impacts on natural resource
management and livelihood resilience in Marsabit County, Kenya. ICRAF Working Paper No 281. Nairobi, World Agroforestry Centre
•Wafula J, Karimjee Y, Tamba Y, Malava G, Muchiri C, Koech G, De Leeuw J, Nyongesa J, Shepherd K and Luedeling E. (2018) Probabilistic
assessment of investment options in honey value chains in Lamu County, Kenya. Frontiers in Applied Mathematics and Statistics 4: 6-
11
•Whitney CW, Lanzanova D, Muchiri C, Shepherd KD, Rosenstock TS, Krawinkel M, Tabuti JRS, & Luedeling E. (2018).Probabilistic
decision tools for determining impacts of agricultural development policy on household nutrition. Earth’s Future 6: 359–372.

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Scaling Agronomy for Smallholder Recommendation Systems

  • 1. 86: Symposium – Smallholders Managing Soil Health for Climate Resilience 2018 ASA, CSSA, and CSA Annual Meeting (Nov. 4-7) in Baltimore, MD, USA Scaling Agronomy for Smallholder Recommendation Systems using Mid-Infrared and Total X-Ray Fluorescence Spectroscopy for Rapid, Low Cost Soil- Plant Analysis Keith Shepherd, Erick Towett, Andrew Sila Africa Soil Information Service
  • 2. Improving relevance of soils information for users Limitations • Inference space of recommendations not known • Uncertainty not represented or communicated • Soil science knowledge not integrated into economic decision making Shepherd KD. How soil scientists can do a better job of making their research useful. The Conversation (Science & Technology) 14 August 2018.
  • 3. Africa Soil Information Service Statistically sound sampling schemes Sample diversity Unbiased prevalence data Shepherd et al. (2015). Land health surveillance and response: A framework for evidence-informed land management. Agricultural Systems 132: 93–106
  • 5. Hengl T, Leenaars JGB, Shepherd KD, Walsh MG, Heuvelink GBM, Mamo T, Tilahun H, Berkhout E, Cooper M, Fegraus E, Wheeler I, Kwabena NA. 2017. Soil nutrient maps of Sub-Saharan Africa: assessment of soil nutrient content at 250 m spatial resolution using machine learning. Nutrient Cycling in Agroecosystems 109:77–102. Digital soil mapping of soil nutrients https://soilgrids.org/
  • 6. AfSIS – national level sampling & mapping EthioSIS, GhaSIS, NiSIS, TanSIS Soils, Crop trials
  • 7. Soil-Plant Spectral Technology Mid-infrared spectrometer Handheld x-ray fluorescence •Soils properties •Plant macro & micro nutrients •Compost quality •Fertilizer certification •Digital mapping of soil properties •Plant nutrition monitoring; large n trials •Soil carbon inventory •Agro-input and output quality screening •Mining reclamation →
  • 8. Spectral Shape Relates to Basic Soil Properties: • Mineral composition • Iron oxides • Organic matter • Carbonates • Soluble salts • Particle size distribution These properties are the determinants of most functions! MIR spectral fingerprints
  • 9. On-line Spectral Prediction Engine Bayesian Additive Regression Trees http://spectpred.qed.ai AfSIS
  • 10. MIR soil spectral profiling 0.0 0.5 1.0 6 7 8 pH density Clu 0.00 0.05 0.10 0.15 20 40 60 80 Clay (%) density Cluster A B 0.00 0.05 0.10 0.15 0 25 50 75 100 CEC (ECD) density Cluster A B 0.0 0.5 1.0 1.5 2.0 0.5 1.0 1.5 K (mg/kg) density Clu Machakos County, Kenya (Technoserve Ltd)
  • 11. NIR Plant N calibration in yam trials YAMSYS Plant N calibration
  • 12. Plant N calibration applied to treatments
  • 13. Foliar pXRF as diagnostic One Acre Fund trials in Western Kenya: Low P, K, S, Cu, Zn K P S Mg Ca Cu Zn Fe Mn
  • 14. Application levels for spectral technology • Digital mapping of soil constraints, crop nutritional deficiencies, spectral soil types • National scale • Refinement at county / district level • Local scale - UAV hyperspectral calibration / indices • Cost effective soil-plant testing services for farmers • National labs • Rural soil-plant spectral testing labs – walk-in service to farmers • Low cost sensors for community knowledge workers, private enterprises
  • 15. Spectral lab network & capacity development Country Lab Benin AfricaRice Cameroon IITA; ICRAF Cote D’Ivoire CNRA; ICRAF Ethiopia ATA/NSTC (5); Mekelle Uni; Ghana CSRIO-SRI Kenya KARLO; One Acre Fund; CNLS, ICRAF Madagascar Antananarivo Uni (collaborative). Malawi CARS/ DARTS Mali IER Morocco Mohammed Vi Polytechnic /OCP (in progress) Mozambique IAMM Nigeria Obafemi Awolowo Un; IITA; IAR; FDMA&RD (2) South Africa KwaZulu-Natal Dept A Tanzania SARI; Min Ag (4); Sokoine Uni Outside Africa Australia (CSIRO); China (YPC); India (CIMMYT; ISSS-ICAR); Peru (IIAP); UK (Rothamsted) Soil archiving system Training courses; lab audits
  • 16. SpecWeb software • Load spectral files • Display spectra • Monitor standards • Select calibration samples • Perform calibrations • Perform predictions
  • 17. Represent & communicate uncertainty • Use distributions not averages • Communicate uncertainty to users • Maintain links to original data • Validate recommendations • Focus further measurement on areas of uncertainty that matter
  • 18. Principles for taking agronomy to scale •Define the decision dilemma •Define the region of interest •Sample it to provide a sound basis for inference •Measure using rapid, low cost, reproducible methods •Represent & communicate the uncertainty in results •Validate recommendations using independent samples •Maintain the link to the original data •Focus further sampling to reduce uncertainty that matters http://worldagroforestry.org/landhealth
  • 19. Decision-focused agricultural research • Identify the decision goals & alternatives • Risk-Return analysis of intervention options • Holistic - all relevant factors considered • Quantifies uncertainties and risks; combines expert knowledge with data • Quantifies trade-offs - $ • Value-of-information analysis • Where to measure & how much to spend on it • Guides adaptive monitoring Tools developed • Monte Carlo simulation R package • Bayesian Networks with value-of-information analysis Using uncertainty and value-of-information analysis to define data needs Luedeling E and Shepherd KD. 2016. Decision-Focused Agricultural Research. The Solutions Journal 7: 46-54
  • 20. Examples •Shepherd K, Hubbard D, Fenton N, Claxton K, Luedeling E, De Leeuw J, 2015. Development goals should enable decision-making. Nature 523, 152-154. •Luedeling E and Shepherd KD. 2016. Decision-Focused Agricultural Research. The Solutions Journal 7: 46-54. •Yet, B., Constantinou, A., Fenton, N., Neil, M., Luedeling, E. and Shepherd, K. 2016. A Bayesian Network Framework for Project Cost, Benefit and Risk Analysis with an Agricultural Development Case Study. Expert Systems With Applications 60: 141–155. •Rosenstock,T.S., Mpanda, M., Rioux J., Aynekulua, E., Kimaro, A.A., Neufeldt, H., Shepherd. K.D., Luedeling. E. 2014. Targeting conservation agriculture in the context of livelihoods and landscapes. Agriculture, Ecosystems and Environment 187: 47–51 •Luedeling, E., Oord, A., Kiteme, B., Ogalleh, S., Malesu, M., Shepherd, K. D., De Leeuw, J. (2015). Fresh groundwater for Wajir – ex-ante assessment of uncertain benefits for multiple stakeholders in a water supply project in Northern Kenya. Frontiers in Environmental Science 3: 16. •Favretto, N., Luedeling, E., Stringer, L. C., & Dougill, A. J. (2017). Valuing ecosystem services in semi-arid rangelands through stochastic simulation. Land Degradation and Development 28, 65–73. •Tamba Y, Muchiri C, Shepherd K, Muinga G, Luedeling E. 2017. Increasing DryDev’s Effectiveness and Efficiency through Probabilistic Decision Modelling. ICRAF Working Paper No 260. Nairobi, World Agroforestry Centre. •Tamba Y, Muchiri C, Luedeling E, Shepherd K. 2018. Probabilistic decision modelling to determine impacts on natural resource management and livelihood resilience in Marsabit County, Kenya. ICRAF Working Paper No 281. Nairobi, World Agroforestry Centre •Wafula J, Karimjee Y, Tamba Y, Malava G, Muchiri C, Koech G, De Leeuw J, Nyongesa J, Shepherd K and Luedeling E. (2018) Probabilistic assessment of investment options in honey value chains in Lamu County, Kenya. Frontiers in Applied Mathematics and Statistics 4: 6- 11 •Whitney CW, Lanzanova D, Muchiri C, Shepherd KD, Rosenstock TS, Krawinkel M, Tabuti JRS, & Luedeling E. (2018).Probabilistic decision tools for determining impacts of agricultural development policy on household nutrition. Earth’s Future 6: 359–372.

Hinweis der Redaktion

  1. One of the key innovations that has underpinned the Africa Soil Information Service is soil-plant spectral diagnostics, developed by ICRAF’s Soil-Plant Spectral Diagnostics Lab. Spectral technology … Applications . . . Digital mapping for liming recommendations in Tanzania crop lands
  2. One of the key innovations that has underpinned the Africa Soil Information Service is soil-plant spectral diagnostics, developed by ICRAF’s Soil-Plant Spectral Diagnostics Lab. Spectral technology … Applications . . . Digital mapping for liming recommendations in Tanzania crop lands
  3. One of the key innovations that has underpinned the Africa Soil Information Service is soil-plant spectral diagnostics, developed by ICRAF’s Soil-Plant Spectral Diagnostics Lab. Spectral technology … Applications . . . Digital mapping for liming recommendations in Tanzania crop lands
  4. One of the key innovations that has underpinned the Africa Soil Information Service is soil-plant spectral diagnostics, developed by ICRAF’s Soil-Plant Spectral Diagnostics Lab. Spectral technology … Applications . . . Digital mapping for liming recommendations in Tanzania crop lands