SlideShare a Scribd company logo
1 of 26
Classification of similar productivity zones in the sugar cane culture using clustering of SOM component planes based on the SOM distance matrix Miguel BARRETO Andrés Pérez-Uribe MINISTERIO DE AGRICULTURA Y DESARROLLO RURAL asocaña
Introduction ,[object Object],[object Object],[object Object],Soil Management Climate Genotype   Productivity
The problem ,[object Object],[object Object],[object Object]
A new approach Management Climate Genotype   Experiment 1.  Every crop is an experiment Sowing Growing Harvest Soil
A new approach 4 experiments Same cultivated zone For example: 1999 2000 2001 2002
A new approach 1358   experiments Management Climate Genotype   2.  Each agroecological event is unique in time and space, but it is possible to find similar characteristics between events that allow finding similar behaviors permitting to discover why and how the agroecological variables affect the crop development and therefore the agricultural productivity.   Sowing Growing Harvest Soil
Challenges ,[object Object],[object Object],[object Object]
The idea  Soil type A, B etc Variety type A,B etc Management  type A,B etc Weather condition   Sunny, rainy etc 1.  To construct a plane for each zone with its characteristics.
The idea  2.  To find natural groups of experiments with similar characteristics (Without knowing the productivity). Conditions A Conditions B 3.  Add labels and look for the more homogeneous groups Zone 1 Rainy B B C Zone 2 Sunny A B A Sunny A B A Zone 3 Sunny A B A Zone 5 Sunny A B A Zone 6 Rainy B B C Zone 7 Rainy B B C Zone 8 Rainy B B C Zone 9
The idea (Analyze the conditions) 4.  To extract new knowledge about the relationship between the agro-ecological variables and productivity. Soil type B Variety type C Management  type B Weather condition  Rainy Soil type A Variety type A Management  type B Weather condition  Sunny Conditions A High productivity Conditions B Low productivity
The variables ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Months After  Seed (AS) Months Before  Harvest (BH) 1 2 3 4 1 2 3 4
SOM visualization of the variables Soil type Variety type Management  type Weather condition Relative Humidity (RH) Before Harvest (BH) After Seeding (AS)   Radiation (Ra) Before Harvest (BH) After Seeding (AS)   Soil order 2 Sugarcane  variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS)   Temperature (T) Before Harvest (BH) After Seeding (AS)
Component planes To improve the analysis of the relationships between variables and/or their influence on the outputs of the system, it is possible to slice the Self-organizing maps in order to visualize their so-called  component planes   Zone 1 Zone 2 Zone 3 Zone 4 Zone n Variable 54 Variable 2 Variable 1 Zone 1358 Zone 3 Zone 2 Zone 1
SOM visualization of the variables Relative Humidity (RH) Before Harvest (BH) After Seeding (AS)   Radiation (Ra) Before Harvest (BH) After Seeding (AS)   Sugarcane  variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS)   Temperature (T) Before Harvest (BH) After Seeding (AS)  Soil order 2 Relative Humidity (RH) Before Harvest (BH) After Seeding (AS)   Radiation (Ra) Before Harvest (BH) After Seeding (AS)   Soil order 2 Sugarcane  variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS)   Temperature (T) Before Harvest (BH) After Seeding (AS)
Correlation hunting The task of organizing  similar components planes  in order to find correlating components is called  correlation hunting. However, when the number of components is large it is difficult to determine which planes are similar to each other.
Correlation hunting A  new SOM  can be used to  reorganize the component planes  in order to perform the correlation hunting. The main idea is to place correlated components close to each other.   An  advantage  of using a SOM for component plane projection is that the placements of the component planes can be  shown on a regular grid . In addition, an ordered presentation of similar components is automatically generated. A  disadvantage  is that the  choice of grouping variables is left to the user .
Clustering of SOM component planes based on the SOM distance matrix The  U-matrix  had been used as an effective cluster distance function. The U-matrix visualizes distances between each map unit and its neighbors, thus it is possible to visualize the  SOM cluster structure .
Clustering of SOM component planes based on the SOM distance matrix
Clusters with similar productivity Medium High Low Productivity 0 10 - 10
Prototypes from clusters with similar productivity Relative Humidity (RH) Before Harvest (BH) After Seeding (AS)   Radiation (Ra) Before Harvest (BH) After Seeding (AS)   Soil order 2 Sugarcane  variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS)   Temperature (T) Before Harvest (BH) After Seeding (AS)
Best Matching Units from radiation before harvest (RaBH) Ra1BH Ra2BH Ra3BH Ra4BH Ra5BH Best Matching Units
Analyzing the plots Radiation Relative Humidity Temperature
 
Analyzing the plots ,[object Object],[object Object],[object Object],[object Object]
Conclusions ,[object Object],[object Object],[object Object],[object Object]
The end ,[object Object]

More Related Content

Viewers also liked

C24 the chemistry of cooking
C24 the chemistry of cookingC24 the chemistry of cooking
C24 the chemistry of cooking
Chemrcwss
 
Sugar Industry I I
Sugar  Industry  I ISugar  Industry  I I
Sugar Industry I I
yousifmagdi
 
Food additives
Food additivesFood additives
Food additives
jumasiah
 
Protein 3D structure and classification database
Protein 3D structure and classification database Protein 3D structure and classification database
Protein 3D structure and classification database
nadeem akhter
 

Viewers also liked (20)

Chap 10
Chap 10Chap 10
Chap 10
 
Chapter 8 Notes
Chapter 8 NotesChapter 8 Notes
Chapter 8 Notes
 
EU Food Regulation on Additives, Novel Foods and Food Contact Materials
EU Food Regulation on Additives, Novel Foods and Food Contact MaterialsEU Food Regulation on Additives, Novel Foods and Food Contact Materials
EU Food Regulation on Additives, Novel Foods and Food Contact Materials
 
Cholestrol in foods
Cholestrol in foodsCholestrol in foods
Cholestrol in foods
 
Polarimetry
PolarimetryPolarimetry
Polarimetry
 
Nutrients - the basics
Nutrients - the basicsNutrients - the basics
Nutrients - the basics
 
B.Sc. Biochem II Biomolecule I U 3.2 Classification of Protein & Denaturation
B.Sc. Biochem II Biomolecule I U 3.2 Classification of Protein & DenaturationB.Sc. Biochem II Biomolecule I U 3.2 Classification of Protein & Denaturation
B.Sc. Biochem II Biomolecule I U 3.2 Classification of Protein & Denaturation
 
Polarimetry
Polarimetry Polarimetry
Polarimetry
 
B.Sc. Biochem II Biomolecule I U 3.1 Structure of Proteins
B.Sc. Biochem II Biomolecule I U 3.1 Structure of ProteinsB.Sc. Biochem II Biomolecule I U 3.1 Structure of Proteins
B.Sc. Biochem II Biomolecule I U 3.1 Structure of Proteins
 
C24 the chemistry of cooking
C24 the chemistry of cookingC24 the chemistry of cooking
C24 the chemistry of cooking
 
Soap and detergent, medicine , food additives consumer 2011-edited-2
Soap and detergent, medicine , food additives  consumer 2011-edited-2Soap and detergent, medicine , food additives  consumer 2011-edited-2
Soap and detergent, medicine , food additives consumer 2011-edited-2
 
Operation and management of primary and secondary tillage
Operation and management of primary and secondary tillageOperation and management of primary and secondary tillage
Operation and management of primary and secondary tillage
 
Sugar Industry I I
Sugar  Industry  I ISugar  Industry  I I
Sugar Industry I I
 
Food additives
Food additivesFood additives
Food additives
 
Meat 1
Meat 1Meat 1
Meat 1
 
Protein 3D structure and classification database
Protein 3D structure and classification database Protein 3D structure and classification database
Protein 3D structure and classification database
 
Carbohydrate structure
Carbohydrate structureCarbohydrate structure
Carbohydrate structure
 
Characterstics of fats and oil & processing
Characterstics of fats and oil & processingCharacterstics of fats and oil & processing
Characterstics of fats and oil & processing
 
Vitamins
VitaminsVitamins
Vitamins
 
Protein structure classification
Protein structure classificationProtein structure classification
Protein structure classification
 

Similar to Classification of similar productivity zones in the sugar cane culture using clustering of SOM component planes based on the SOM distance matrix

Early effect of no - tillage on land profitability, soil fertility and microb...
Early effect of no - tillage on land profitability, soil fertility and microb...Early effect of no - tillage on land profitability, soil fertility and microb...
Early effect of no - tillage on land profitability, soil fertility and microb...
Joanna Hicks
 
Crow.IGARSS.talk.pptx
Crow.IGARSS.talk.pptxCrow.IGARSS.talk.pptx
Crow.IGARSS.talk.pptx
grssieee
 
Class ProjectMapping of Cr.docx
Class ProjectMapping of Cr.docxClass ProjectMapping of Cr.docx
Class ProjectMapping of Cr.docx
clarebernice
 
Ciat crop modeling_18may11
Ciat crop modeling_18may11Ciat crop modeling_18may11
Ciat crop modeling_18may11
CIAT
 
4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptx4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptx
grssieee
 
WE4_T05_1_lopezsanchez_rice_igarss2011.ppt
WE4_T05_1_lopezsanchez_rice_igarss2011.pptWE4_T05_1_lopezsanchez_rice_igarss2011.ppt
WE4_T05_1_lopezsanchez_rice_igarss2011.ppt
grssieee
 
Validation of an agent-based model of shifting agriculture
Validation of an agent-based model of shifting agricultureValidation of an agent-based model of shifting agriculture
Validation of an agent-based model of shifting agriculture
GIScRG
 

Similar to Classification of similar productivity zones in the sugar cane culture using clustering of SOM component planes based on the SOM distance matrix (20)

Early effect of no - tillage on land profitability, soil fertility and microb...
Early effect of no - tillage on land profitability, soil fertility and microb...Early effect of no - tillage on land profitability, soil fertility and microb...
Early effect of no - tillage on land profitability, soil fertility and microb...
 
Using a Multi-Model Regional Simulation of Climate Change Impacts on Agricult...
Using a Multi-Model Regional Simulation of Climate Change Impacts on Agricult...Using a Multi-Model Regional Simulation of Climate Change Impacts on Agricult...
Using a Multi-Model Regional Simulation of Climate Change Impacts on Agricult...
 
Crop growth modelling
Crop growth modellingCrop growth modelling
Crop growth modelling
 
Crow.IGARSS.talk.pptx
Crow.IGARSS.talk.pptxCrow.IGARSS.talk.pptx
Crow.IGARSS.talk.pptx
 
Class ProjectMapping of Cr.docx
Class ProjectMapping of Cr.docxClass ProjectMapping of Cr.docx
Class ProjectMapping of Cr.docx
 
Scheel et al_2011_trmm_andes
Scheel et al_2011_trmm_andesScheel et al_2011_trmm_andes
Scheel et al_2011_trmm_andes
 
Crop productivity assessment through Remote Sensing: Radiation-driven and Wat...
Crop productivity assessment through Remote Sensing: Radiation-driven and Wat...Crop productivity assessment through Remote Sensing: Radiation-driven and Wat...
Crop productivity assessment through Remote Sensing: Radiation-driven and Wat...
 
17. Precision Farming Realities - Nicole Rabe & Ben Rosser
17. Precision Farming Realities - Nicole Rabe & Ben Rosser17. Precision Farming Realities - Nicole Rabe & Ben Rosser
17. Precision Farming Realities - Nicole Rabe & Ben Rosser
 
Mapping hotspots of climate change and food insecurity across the global tropics
Mapping hotspots of climate change and food insecurity across the global tropicsMapping hotspots of climate change and food insecurity across the global tropics
Mapping hotspots of climate change and food insecurity across the global tropics
 
Ciat crop modeling_18may11
Ciat crop modeling_18may11Ciat crop modeling_18may11
Ciat crop modeling_18may11
 
Mapping hotspots of climate change and food insecurity across the global tropics
Mapping hotspots of climate change and food insecurity across the global tropicsMapping hotspots of climate change and food insecurity across the global tropics
Mapping hotspots of climate change and food insecurity across the global tropics
 
4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptx4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptx
 
Thackway_MAY_presentation
Thackway_MAY_presentationThackway_MAY_presentation
Thackway_MAY_presentation
 
Final Comprehensive Examination
Final Comprehensive ExaminationFinal Comprehensive Examination
Final Comprehensive Examination
 
Julian R - Assessing the Impacts of Climate Change on SSAn and SEAn Agricult...
Julian R  - Assessing the Impacts of Climate Change on SSAn and SEAn Agricult...Julian R  - Assessing the Impacts of Climate Change on SSAn and SEAn Agricult...
Julian R - Assessing the Impacts of Climate Change on SSAn and SEAn Agricult...
 
Refining climate change impact estimates while generating climate-change-adap...
Refining climate change impact estimates while generating climate-change-adap...Refining climate change impact estimates while generating climate-change-adap...
Refining climate change impact estimates while generating climate-change-adap...
 
Parameters of primary productivity
Parameters of primary productivityParameters of primary productivity
Parameters of primary productivity
 
WE4_T05_1_lopezsanchez_rice_igarss2011.ppt
WE4_T05_1_lopezsanchez_rice_igarss2011.pptWE4_T05_1_lopezsanchez_rice_igarss2011.ppt
WE4_T05_1_lopezsanchez_rice_igarss2011.ppt
 
Validation of an agent-based model of shifting agriculture
Validation of an agent-based model of shifting agricultureValidation of an agent-based model of shifting agriculture
Validation of an agent-based model of shifting agriculture
 
Climate Change and Future Food Security: The Impacts on root and Tuber Crops
Climate Change and Future Food Security: The Impacts on root and Tuber CropsClimate Change and Future Food Security: The Impacts on root and Tuber Crops
Climate Change and Future Food Security: The Impacts on root and Tuber Crops
 

More from askroll

Microsoft power point curso-2006_sesion2_kohonen
Microsoft power point   curso-2006_sesion2_kohonenMicrosoft power point   curso-2006_sesion2_kohonen
Microsoft power point curso-2006_sesion2_kohonen
askroll
 
Algortimos bio-inspirados para clustering y visualizacion de datos geoespaciales
Algortimos bio-inspirados para clustering y visualizacion de datos geoespacialesAlgortimos bio-inspirados para clustering y visualizacion de datos geoespaciales
Algortimos bio-inspirados para clustering y visualizacion de datos geoespaciales
askroll
 
Bio inspired computational techniques applied to the analysis and visualizati...
Bio inspired computational techniques applied to the analysis and visualizati...Bio inspired computational techniques applied to the analysis and visualizati...
Bio inspired computational techniques applied to the analysis and visualizati...
askroll
 
Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...
Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...
Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...
askroll
 
Curso 2006 Sesion 1 Kohonen
Curso 2006 Sesion 1 KohonenCurso 2006 Sesion 1 Kohonen
Curso 2006 Sesion 1 Kohonen
askroll
 
The COCH project
The COCH projectThe COCH project
The COCH project
askroll
 

More from askroll (10)

Microsoft power point curso-2006_sesion2_kohonen
Microsoft power point   curso-2006_sesion2_kohonenMicrosoft power point   curso-2006_sesion2_kohonen
Microsoft power point curso-2006_sesion2_kohonen
 
Migue final presentation_v28
Migue final presentation_v28Migue final presentation_v28
Migue final presentation_v28
 
Self-organizing maps - Tutorial
Self-organizing maps -  TutorialSelf-organizing maps -  Tutorial
Self-organizing maps - Tutorial
 
Algortimos bio-inspirados para clustering y visualizacion de datos geoespaciales
Algortimos bio-inspirados para clustering y visualizacion de datos geoespacialesAlgortimos bio-inspirados para clustering y visualizacion de datos geoespaciales
Algortimos bio-inspirados para clustering y visualizacion de datos geoespaciales
 
Bio inspired computational techniques applied to the analysis and visualizati...
Bio inspired computational techniques applied to the analysis and visualizati...Bio inspired computational techniques applied to the analysis and visualizati...
Bio inspired computational techniques applied to the analysis and visualizati...
 
Fuzzy Growing Hierarchical Self-organizing Networks
Fuzzy Growing Hierarchical Self-organizing NetworksFuzzy Growing Hierarchical Self-organizing Networks
Fuzzy Growing Hierarchical Self-organizing Networks
 
Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...
Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...
Mapas de Kohonen como una herramienta visual de apoyo al soporte de decisione...
 
Curso 2006 Sesion 1 Kohonen
Curso 2006 Sesion 1 KohonenCurso 2006 Sesion 1 Kohonen
Curso 2006 Sesion 1 Kohonen
 
The COCH project
The COCH projectThe COCH project
The COCH project
 
Bio-inspired techniques and their application to precision agriculture (Andre...
Bio-inspired techniques and their application to precision agriculture (Andre...Bio-inspired techniques and their application to precision agriculture (Andre...
Bio-inspired techniques and their application to precision agriculture (Andre...
 

Recently uploaded

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 

Recently uploaded (20)

Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Tech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdfTech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdf
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of Brazil
 

Classification of similar productivity zones in the sugar cane culture using clustering of SOM component planes based on the SOM distance matrix

  • 1. Classification of similar productivity zones in the sugar cane culture using clustering of SOM component planes based on the SOM distance matrix Miguel BARRETO Andrés Pérez-Uribe MINISTERIO DE AGRICULTURA Y DESARROLLO RURAL asocaña
  • 2.
  • 3.
  • 4. A new approach Management Climate Genotype Experiment 1. Every crop is an experiment Sowing Growing Harvest Soil
  • 5. A new approach 4 experiments Same cultivated zone For example: 1999 2000 2001 2002
  • 6. A new approach 1358 experiments Management Climate Genotype 2. Each agroecological event is unique in time and space, but it is possible to find similar characteristics between events that allow finding similar behaviors permitting to discover why and how the agroecological variables affect the crop development and therefore the agricultural productivity. Sowing Growing Harvest Soil
  • 7.
  • 8. The idea Soil type A, B etc Variety type A,B etc Management type A,B etc Weather condition Sunny, rainy etc 1. To construct a plane for each zone with its characteristics.
  • 9. The idea 2. To find natural groups of experiments with similar characteristics (Without knowing the productivity). Conditions A Conditions B 3. Add labels and look for the more homogeneous groups Zone 1 Rainy B B C Zone 2 Sunny A B A Sunny A B A Zone 3 Sunny A B A Zone 5 Sunny A B A Zone 6 Rainy B B C Zone 7 Rainy B B C Zone 8 Rainy B B C Zone 9
  • 10. The idea (Analyze the conditions) 4. To extract new knowledge about the relationship between the agro-ecological variables and productivity. Soil type B Variety type C Management type B Weather condition Rainy Soil type A Variety type A Management type B Weather condition Sunny Conditions A High productivity Conditions B Low productivity
  • 11.
  • 12. SOM visualization of the variables Soil type Variety type Management type Weather condition Relative Humidity (RH) Before Harvest (BH) After Seeding (AS) Radiation (Ra) Before Harvest (BH) After Seeding (AS) Soil order 2 Sugarcane variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS) Temperature (T) Before Harvest (BH) After Seeding (AS)
  • 13. Component planes To improve the analysis of the relationships between variables and/or their influence on the outputs of the system, it is possible to slice the Self-organizing maps in order to visualize their so-called component planes Zone 1 Zone 2 Zone 3 Zone 4 Zone n Variable 54 Variable 2 Variable 1 Zone 1358 Zone 3 Zone 2 Zone 1
  • 14. SOM visualization of the variables Relative Humidity (RH) Before Harvest (BH) After Seeding (AS) Radiation (Ra) Before Harvest (BH) After Seeding (AS) Sugarcane variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS) Temperature (T) Before Harvest (BH) After Seeding (AS) Soil order 2 Relative Humidity (RH) Before Harvest (BH) After Seeding (AS) Radiation (Ra) Before Harvest (BH) After Seeding (AS) Soil order 2 Sugarcane variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS) Temperature (T) Before Harvest (BH) After Seeding (AS)
  • 15. Correlation hunting The task of organizing similar components planes in order to find correlating components is called correlation hunting. However, when the number of components is large it is difficult to determine which planes are similar to each other.
  • 16. Correlation hunting A new SOM can be used to reorganize the component planes in order to perform the correlation hunting. The main idea is to place correlated components close to each other. An advantage of using a SOM for component plane projection is that the placements of the component planes can be shown on a regular grid . In addition, an ordered presentation of similar components is automatically generated. A disadvantage is that the choice of grouping variables is left to the user .
  • 17. Clustering of SOM component planes based on the SOM distance matrix The U-matrix had been used as an effective cluster distance function. The U-matrix visualizes distances between each map unit and its neighbors, thus it is possible to visualize the SOM cluster structure .
  • 18. Clustering of SOM component planes based on the SOM distance matrix
  • 19. Clusters with similar productivity Medium High Low Productivity 0 10 - 10
  • 20. Prototypes from clusters with similar productivity Relative Humidity (RH) Before Harvest (BH) After Seeding (AS) Radiation (Ra) Before Harvest (BH) After Seeding (AS) Soil order 2 Sugarcane variety 1 Precipitation (P) Before Harvest (BH) After Seeding (AS) Temperature (T) Before Harvest (BH) After Seeding (AS)
  • 21. Best Matching Units from radiation before harvest (RaBH) Ra1BH Ra2BH Ra3BH Ra4BH Ra5BH Best Matching Units
  • 22. Analyzing the plots Radiation Relative Humidity Temperature
  • 23.  
  • 24.
  • 25.
  • 26.