POET inventory documentation March 2006



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POET inventory documentation March 2006 Keywords : surface emissions, atmospheric compounds, ozone precursors, anthropogenic emissions, biomass burning, fire. Available at : http://www.aero.jussieu.fr/projet/accent/poet.php 1. Introduction The dataset consists of 1 x 1 gridded anthropogenic, fire, and natural emission data, for the time period January 1990-December 2000. Anthropogenic emissions are annual data, while fire and natural emissions are monthly data. This emission inventory was developed within the POET FP5 European project. It is a result of collaboration between: Claire Granier, Service d Aéronomie / CNRS, France Alex Guenther, NCAR, Boulder, USA Jean-François Lamarque, NCAR, Boulder, USA Aude Mieville, Service d Aéronomie / CNRS, France Jean-François Müller, IASB, Belgium Jos Olivier, RIVM, Netherlands J. Orlando, RIVM, Netherlands J. Peters, RIVM, Netherlands Gabrielle Pétron, NCAR, Boulder, USA G. Tyndall, IASB, Belgium Sabine Wallens, IASB, Belgium Please address any question related to this dataset to Claire Granier or Aude Mieville (clg@aero.jussieu.fr or aude.mieville@aero.jussieu.fr). 2. Reference The reference document is : " Olivier J., J. Peters, C. Granier, G. Petron, J.F. Müller, and S. Wallens: Present and future surface emissions of atmospheric compounds, POET report #2, EU project EVK2-1999-00011, 2003 ". The reference requested when used in any study is : "Granier, C., A. Guenther, J.F. Lamarque, A. Mieville, J.F. Muller, J. Olivier, J. Orlando, J. Peters, G. Petron, G. Tyndall, S. Wallens, POET, a database of surface emissions of ozone precursors, available on the internet at : http://www.aero.jussieu.fr/projet/accent/poet.php, 2005." 3. Abstract Global emissions of gases (ozone precursors) from anthropogenic, natural, and biomass burning sources have been estimated for the period 1990-2000. Anthropogenic emissions (including 15 sectors) are based on national activity data (fuel or matter combustion per year), emission factors (kg species/ kg matter combusted par activity), and grid maps (e.g. population maps) for spatial distribution of the emissions within a country. Biomass burning emissions are derived from ATSR data and the climatology from Hao (1994). The spatial and temporal distribution of biomass burning emissions is estimated using active fires observed by ATSR satellite experiment, which are scaled to the climatology from Hao (1994). Biogenic emissions are adapted from the GEIA inventories and from Müller and Brasseur, 1995.

4. Data sources For anthropogenic emissions : statistics from the UN (United Nations) and the IEA (International Energy Agency) For biomass burning emissions : ATSR (on board ERS-2 satellite) data, for the period 1997-2003 5. Unit The UNIT used for all POET data is : molecules. cm-2. s-1 6. List of species The list of species available in the POET inventory is based on the chemical species used in the MOZART-4 model (Emmons et al., in preparation, 2006) Name in inventory CO NOx C2H6 C2H4 C3H8 C3H6 Butane Butene CH2O CH3CHO CH3OH C2H5OH Acet Mek Toluene Isoprene Terpenes Long name- definition Carbon Monoxide Nitrogen oxides Ethane Ethene Propane Propene Butane and higher alkanes Butene and higher alkenes Formaldehyde All non-ch2o aldehydes Methanol Ethanol and higher alcohols Acetone Methyl-ethyl-ketone and all non-acetone ketones Toluene and all aromatic species Isoprene Terpenes 7. Spatial and temporal information Geographical Coverage : Global LONG : -180 : 180 LAT : -90 : 90 Spatial Resolution : 1 x 1 Temporal Coverage of the Data Start : 01/1990 End : 12/2000 Temporal Resolution 1 year (anthropogenic) 1 month (biomass burning, oceans and biogenic data) 8. Data Formats Emission data are provided in 2 formats : ASCII and NetCDF, 1 file corresponding to 1 year and 1 species.

Ex. of file names : ASCII files : anthro.2000.co (for anthropogenic data) bb.season.1990.co (for biomass burning ; season indicates that the data are monthly data) bio.co (biogenic emission data) oceans.co (oceans emission data) NetCDF files : the suffix.nc is added to the file name: anthro.2000.co.nc bb.season.1990.co.nc Anthropogenic data are annual data: they give the mean emissions per month over the year (same emissions values for the 12 months). Biomass burning data are monthly seasonal data. Biogenic and oceans emissions are monthly seasonal data, and are assumed to have no interannual variability, so the file name doesn t indicate any year. 9. ASCII files : description of files Annual data files (anthropogenic data) : The header gives indications on the file : source of data, spatial resolution, year, unit, and the number of columns. - 1 st column gives the longitude of the left border of the 1 x 1 cell - 2 nd column gives the longitude of the right border of the 1 x 1 cell - 3 rd column gives the latitude of the southern border of the 1 x 1 cell - 4 th column gives the latitude of the northern border of the 1 x 1 cell - 5 th column gives the emissions values (total anthropogenic emissions) Monthly data files (for biomass burning, biogenic and oceans emissions data) : Monthly data contain 16 columns: - 1 st column gives the longitude of the left border of the 1 x 1 cell - 2 nd column gives the longitude of the right border of the 1 x 1 cell - 3 rd column gives the latitude of the southern border of the 1 x 1 cell - 4 th column gives the latitude of the northern border of the 1 x 1 cell - 5 th to 16 th columns (12 columns) give the total biomass burning emissions values for the 12 months 10. NetCDF files : description of files You can find a documentation on the NetCDF format and how to read NetCDF format at the following internet adresses : http://www.unidata.ucar.edu/software/netcdf/index.html and here : http://www.unidata.ucar.edu/software/netcdf/docs/faq.html#whatisit NetCDF format can be read either in FORTRAN, C language, or with a software like Matlab or IDL. The containt of a NetCDF file can be viewed with the command ncdump in a UNIX shell: ncdump anthro.1990.co.nc This will give you the information on : - the dimensions (longitude, latitude, time), dimensions along which the variables (emission data here) are given. - the variables contained in the file (total, findus, fpower, ), and a brief definition of each of these variables ( long name ). Ex : findus : long_name = Industry (excluding coke ovens, refineries) fpower : long_name = Power generation total : long_name = Total anthropogenic emissions

Anthropogenic data : Contrary to ASCII files, POET NetCDF anthropogenic data files contain not only the total anthropogenic emission data, but also the emission data by sources for several sectors (industry, power generation, road traffic, ). Thus, the NetCDF files contain between 3 and 15 variables, depending on the species ; Exemple : for NOx, there are 14 different sectors (14 sectors + total = 15 variables), while for C2H4, there are only 2 (2 + total = 3 variables). Here are the variables names for all the activity sectors of anthropogenic emissions, which correspond to the sectors used in the EDGAR inventory : Variable name : Long name (definition) findus : Industry (excluding coke oven, refineries, etc.) fpower : Power generation fother : Other transformation sectors (refineries, coke ovens, gas works) fresid : Residentials, commercials and other sectors froad : Transport road frail : Transport land non-road (rail +inland water +pipeline +non-specified) fship : Transport international shipping foil : Oil production, transmission and handling fcoal : Coal production iiron : Iron industry ialu : Aluminium industry ipaper : Pulp and Paper industry ichem : Chemistry industry icement : Cement waste : Waste incineration bindus : Biofuel industry: Iron & Steel (excluding coke ovens) bpower : Biofuel Power generation bother : Biofuel Other transformation sectors (refineries, coke ovens,..) bresid : Biofuel Residentials, commercials and other sectors broad : Biofuel road transport agrwb : Agricultural waste burning total : Total anthropogenic sources of emissions Biomass burning data : Contrary to ASCII files, POET NetCDF biomass burning data files contain not only the total biomass burning emissions data, but also the detailed emission data for forest and savanna burning. Thus, the NetCDF files contain 3 variables ( forest, savanna, and bb ) : forest : forest burning emissions savanna : savanna burning emissions bb : total biomass burning emissions 11. Methodology for deriving emissions 11.1. Anthropogenic emissions POET anthropogenic data are based on version 3 of the EDGAR inventory. Version 3 of the EDGAR inventory for anthropogenic emissions has been developed at RIVM, which are typical of years 1990 and 1995. The methodology has been described in Olivier et al. (2001). Basically, national activity data from international statistics (United Nations, IEA) are used for 1990 and 1995; data gaps are filled by interpolation and extrapolation. Then, emission factors for various source categories are used to calculate the total annual emissions on a per country or per region basis. Next, national total emissions are, per source category, distributed on a 1x1 degree grid using

grid maps appropriate for these sources. The EDGAR information system enables to extract the data at various aggregation levels. The inventories for 1990 and 1995 have been developed first by world regions, and gridded inventories have been completed next, based on previous spatial distributions. The 1997 inventory has been compiled by combining the inventory for 1995 with regional trend data for various sources for the 1995-1997 period, based on either activity data or reporting emission trends. Details on this approach are provided in Peters and Olivier (2003). Compared to the previous version 2 of the EDGAR inventory, the amounts of agricultural waste burning have been revised substantially, based on updated data. 11.2. Biomass burning emissions The data used to derive the emissions are : Fire pixels data from ATSR instrument on board ERS-2 satellite, from 1997 to 2003 CLM 3.0 vegetation map (P.J. Lawrence, University of Colorado, USA) derived from MODIS data and CLM 2.0 map (Bonan et al, 2002) : map at 0.5 x0.5 consisting in percentages of 17 PFTs (Plant Functional Types) for each cell. Climatological amounts of CO2 emitted from forest and savanna burning for the period 1985-1990, from Hao et al. (1994) Fire counts detected by ATSR in October 2000 : The methodology for deriving CO2 emissions is the following : 1. Integration of fire pixels by month on a 0.5x0.5 map: Compute the number of fire pixels (nfire_pixels) in each 0.5 x0.5 cell and for each month, from the ATSR fire pixels data. 2. Spatial integration of fires by vegetation type: Calculate the total number of fire pixels in forests and in savannas (by using the vegetation map), for every month from 1997 to 2003 : sum_fire_pixels forest = nfire _ pixels percent _ forest lat long sum_fire_pixels savanna = nfire _ pixels lat long percent _ savanna

3. Temporal integration of fires by vegetation type : Integrate the total number of fire pixels in forests and savannas over the 5 years period (1997-2003) N fires-forest(1997-2003) = 2003 12 y= 1997 m= 1 sum _ fire _ pixels forest N fires-savanna(1997-2003) = 2003 12 y= 1997 m= 1 sum _ fire _ pixels savanna 4. Assumption and use of Hao climatology We assume the total CO2 emissions over the 1997-2003 period is equal to the Hao climatology for the 1985-1990 period (Hao et al., 1994) E(CO2) 1997-2003 = E(CO2) Hao 5. Deducing CO2 emissions per fire pixel Calculate the average CO2 quantity emitted for one fire pixel occurring in forest cover (E(CO2) firepixel(forest) ) and for one fire pixel occurring in savanna cover (E(CO2) firepixel(savanna) ): E(CO2) /firepixel(forest) = E(CO2) Hao-forest / N fires-forest(1997-2003) E(CO2) /firepixel(savanna) = E(CO2) Hao-savanna / N fires-savanna(1997-2003) 6. Deriving gridded CO2 emissions The gridded CO2 emissions are then derived with the ATSR fire pixel maps for each month, for each grid point, if percent_forest > percent_savanna, then E(CO2) = nfire_pixels x E(CO2) /firepixel(forest) if percent_ savanna > percent_ forest, then E(CO2) = nfire_pixels x E(CO2) /firepixel(savanna) 7. Deriving emissions for other gases Calculate other gas emissions from CO2 emissions using Emissions Ratios (ER) from Andreae and Merlet, 2001. E(gas) = E(CO2) x ER gas The emissions ratios to CO2 applied for different types of vegetation burning are presented in the table below.

Table : Emission ratios to CO 2 for different types of vegetation burning (expressed as molecule per molecule of CO 2 ). Tropical forests Boreal and mid Savanna Agricultural waste latitude forests molec./molec(c) molec./molec(c) molec./molec(c) molec./molec(c) CH 4 1.13E-2 7.8E-3 3.82E-3 4.5E-3 CO 0.099 0.102 0.0619 0.088 NO x (as NO 2 ) 1.41E-3 2.66E-3 3.47E-3 2.22E-3 C 2 H 6 1.07E-3 5.32E-4 2.84E-4 8.64E-4 C 3 H 8 9.0E-5 1.15E-4 5.45E-5 3.16E-4 C 2 H 4 1.86E-3 1.07E-3 7.54E-4 1.33E-3 C 3 H 6 3.49E-4 3.74E-4 1.66E-4 6.34E-4 C 4 H 10 1.32E-4 1.74E-4 8.28E-5 1.51E-4 C 4 H 8 3.21E-4 2.94E-4 1.75E-5 2.18E-4 Toluene 2.01E-4 3.68E-4 1.28E-4 6.83E-5 Methanol 1.67E-3 1.67E-3 1.08E-3 1.67E-3 Ethanol 6.03E-5 6.60E-5 4.59E-5 5.11E-5 CH 2 O 8.89E-4 1.4E-3 2.23E-4 8.39E-4 Acetaldehyde 8.56E-4 9.76E-4 5.56E-4 5.07E-4 Acetone 2.85E-4 2.52E-4 2.03E-4 2.9E-4 MEK (1) 5.18E-4 5.50E-4 3.21E-4 4.5E-3 NH 3 2.04E-3 2.19E-3 1.64E-3 2.04E-3 SO 2 2.38E-4 4.16E-4 1.46E-4 1.67E-4 (1) methyl-ethyl-ketone species (all non-acetones ketones) a Obtained by assuming that TNMVOC = the sum of all NMVOCs listed in Table 1 of Andreae and Merlet (2001). 10.3. Biogenic emissions The geographical distribution and seasonal variation of the biogenic emissions are adapted from the GEIA inventories (for NOx, isoprene, terpenes, and methanol) and from Müller and Brasseur, 1995 (for CO).