1 / 23

GHG Inventory hands-on training Workshop of the CGE

GHG Inventory hands-on training Workshop of the CGE. Difficulties in calculating net CO 2 emissions from Brazilian agricultural soils. Panama, October 2004. Ricardo Leonardo Vianna Rodrigues. IPCC: three potential sources of CO 2 emissions from soils.

brier
Download Presentation

GHG Inventory hands-on training Workshop of the CGE

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. GHG Inventory hands-on trainingWorkshop of the CGE Difficulties in calculating net CO2 emissions from Brazilian agricultural soils Panama, October 2004 Ricardo Leonardo Vianna Rodrigues

  2. IPCC: three potential sources of CO2 emissions from soils • Net carbon stock changes from mineral soils associated with land use change and management; • Emissions from liming of agricultural soils; • Emissions from cultivated organic soils;

  3. Net carbon stock changes from mineral soils associated with land use change and management

  4. DATA NEEDED • Land use area (grassland, grain etc) in the year t and in the year t-20, for each soil type, • Soil carbon content from different soil types (top 30 cm depth), • Types of land management and impact factors

  5. DATA NEEDED • Land use area (grassland, grain etc) in the year t and in the year t-20, for each soil type, • Agriculture Census • Remote sensing data

  6. ADVANTAGES Available (do not requires much effort to be collected) Systematically collected every 5 or 10 years, Land use type data, DISADVANTAGES Do not cover all land area, Considers only data of properties economically active Data are non geo-referenced, Lack of management data Agriculture Census

  7. ADVANTAGES Data are geo-referenced, Land use data may be collected, Multi-temporal data allows estimates of deforestation rate, DISADVANTAGES Very expensive data Land use data not available (have to be collected), Need specialists to analyze RS data, Other management data are unlikely to be collected, Remote sensing data

  8. Activity datachoice • Experts in net flux of CO2 from soils chose Brazilian Agricultural Census as the most suitable data; Difficulties: • Brazilian Agricultural Census considers only rural properties that are economically active; • Besides, Census do not take into account agriculture management,

  9. Agricultural Census Data Consequences of excluding rural properties that are economically inactive from Census: • Deforestation rate may have been underestimated in some regions, • Because of that, changes in soil carbon stock may be underestimated;

  10. Consequences of using non geo-referenced data • When data are non geo-referenced, as happens with Agriculture Census, the integration between soil C content and land use is hindered; • Alternative: to assume that each soil class have the same proportion of land use classes for a determined region (high uncertainties);

  11. DATA NEEDED • Land use area (grassland, grain etc) in the year t and in the year t-20, for each soil type, • Soil carbon content from different soil types (top 30 cm depth), • Types of land management and impact factors

  12. Carbon Soil Data • Native soil carbon content from different soil types (top 30 cm depth) • Soil survey data from different sources • Phyto-physiognomic maps • Soil distribution maps

  13. Difficulties associated to soil carbon contentdata • The soil data base comes from different sources and scales (generally, large scale); • C content was estimated by different methods, and unsuitable methods, increasing uncertainties, • Carbon stock = Bulk Density * Carbon * horizon thickness (top 30 cm) • Lack of bulk density data in most of soil profiles (g dry soil/cm3 - which includes the pore spaces); and the solution was to use of multiple linear regression equations to estimate bulk density;

  14. DATA NEEDED • Land use area (grassland, grain etc) in the year t and in the year t-20, for each soil type, • Soil carbon content from different soil types (top 30 cm depth), • Types of land management and impact factors

  15. Types of land management and impact factors • Lack of specific data for Brazil (residue addition levels, tillage systems, pasture conditions) may have hindered estimations; • Lack of Brazilian impact factors – use of IPCC coefficients and EF default for tropical regions, which may not be representative of Brazilian conditions;

  16. Emissions from liming of agricultural soils

  17. Emissions from liming of agricultural soils • Lack of suitable statistics about amount of agricultural lime sold yearly in Brazil; • Data were obtained from the greatest Lime Producers Associations; • Lack of detail about the composition of lime sold in Brazil;

  18. Emissions from cultivated organic soils

  19. Emissions from cultivated organic soils • Lack of cultivated organic soils data; • Use as proxy agriculture data usually associated to this kind of soil.

  20. Conclusions

  21. Estimations of net CO2 emissions from Brazilian agricultural soils may have been hindered by • Lack of suitable land use and management data; • Different and unsuitable methods to estimate soil carbon content; • Lack of suitable impact factors, • Data are non geo-referenced; • Lack of suitable lime production statistics; • Lack of cultivated organic soils statistics;

  22. Steps Forward

  23. Next Inventory • In the next Brazilian inventory is likely that remote sensing data will be used for areas under high deforestation rate whereas Agricultural Census will be used for rural areas already consolidated.

More Related