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Estimation of NPP based agricultural production For Asian countries using Remote Sensing data and GIS

Shiro Ochi and Ryosuke Shibasaki
Institute of Industriial Science , Univ. of Tokyo
4-6-1 Komaba, Meguro-ku, Tokyo, 153-8505
Tel : (81)-3-5452-6415 Fax: (81)-35452-6408
Email: ochi@cc.iis.u-tokyo.ac.jp ,shiba@skl.iis.u-tokyo.ac.jp
Japan


Abstract
The land use / land cover has been changed for many countries of Asia In last a few decades caused by the population pressure . Generally speaking, the agricultural land increased and forested land decreased. Then, the agricultural production has been increased for many years in the region. However ,there is some doubt that the region can sustain or improve the production In future . The productivity may vary depending on the environment of the land .In this study, the estimation of agricultural production reflecting the current land use/land cover is made .

The agricultural production is considered to be a part of NPP(Net Primary Production) on the agricultural land . The NPP can be estimated using PAR (Photo synthetically Active Radiation ) and NDVI, and both can be seen in the land use /land cover map. The estimation of NPP on the agricultural land of Asian countries is made . Moreover , by Integrating the result of the agricultural NPP with the statistics, the conversion efficiency of agricultural production from agricultural NPP is made. The conversion efficiency shows the status agriculture for the country.

1.Introduction
According to the Announcement, world population reaches 6 billion in October 1999.Monitoring, estimating and forecasting agricultural production are quite important for the management of world / regional or local food demand and supply balance for social security. A method to monitor and estimate agricultural production in coarse however broad frequency scale is introduced in this study.

2.Data Used
Following data were prepared and used in this study.

NDVI Data
NDVI data were used to calculate Net Primary Production in combination with Photosynthesis Active Radiation data. Monthly. NDVI data for January 1982 to December 1993 were composed from 10days composite data set of NQAA/ NASA Pathfinder AVHRR Land Data Set.

Photosynthesis Active Radiation Data
Monthly Photosynthesis Active Radiation(PAR) data for January 1979 to December 1989 were provided ,and averaged monthly PAR data using these data were prepared in order to calculate Net Primary production of 1990 to 1993 in combination with NDVI data .

Land Cover Data
Land cover data were retrieved from USGS Global Land Cover Characteristics Data Base < http:// edcwww.cr.usgs.gov/landdaac.glcc/_ na.html> .There are 6 maps in different schemes in the data base, and IGBP Legend map was used in this study.

Agricultural Production Data (Statistics)
Agricultural production data were retrieved from FAOSTAT agricultural Data . In this study, "cereal production"was used to represent agricultural production.

3.Methodology

3.1 Estimation of Net Primary productivity

Monthly Net primary Productivity (NPP) can be estimated using NDVI and PAR data by "production efficiency approach" proposed by Go ward ( 1992)and Ruimy (1994).

NPP = APARdt ...........(*)

NPP: [gdm/m2time],
e:efficiency[g/MJ],
APAR: Absorbed PAR [MJ/ m2]

f APAR = -0.08+ 1.075 NDVI ......(**)

The annual total NPP can be estimated as follows:


3.2 Extraction of Net Primary Production from crop lands
After calculate NPP on whole land , Net Primary Production in cropland is extrated by overlaying USGS/IGBP legend land cover map.

3.3 Calculation of NPP - Crop conversion ratio
By adding NPP in crop lands for countery base , the relationship between NPP in croplands and cereal production is analyzed. The conversion ratio from NPP in croplands to cereal production is calculated for each country.

4. Results
Fig4.1 shows the relationship between global land net primary production and world crop production . The primary production has correlation with the crop production .


Figure 4.1: Relationship between world crop production and NPP on world lands.

Table 4.1 shows the calculated NPP for land cover category base . The values are similar with the exiting values even the categories definition is different.

Table4.1 Calculated NPP based on land cover legends
  Area NPP per area Total NPPP
  Mega km2 g/m2/year giga ton/year
Evergreen Needleleaf forest 6 996 6.3
Evergreen broadleaf forest 12 2170 25.9
Deciduous Needleleaf forest 2 709 1.4
Deciduous broadleaf forest 3 1380 4.4
Mixed forest 6 1078 6.7
Closed Shrub lands 3 834 2.1
Open Shrublands 18 262 4.7
Woody Savannas 10 1306 13.2
Savannas 9 1199 11.1
Grasslands 11 629 6.9
Permanent wetlands 1 543 0.7
Crop lands 14 1189 16.5
Urban and Build-up 0 1175 0.3
Crop /Natural Veg.Mosaic 14 1343 18.6
Snow and lce 2 20 0.0
Barren or Sparsely Vegetated 18 37 0.7
Total 129 924 1194

Table 4.2 shows the relationship between NPP in croplands and cereal production , and calculated NPP - Cereal conversion ratio for some Asian countries. The conversion ratios are considered the status of efficiency or intensity of agricultural activities for the countries.

Table4.2 Cereal Production and NPP-Cereal conversion ratio
  (1)Harvested Area(cereal) (2)Cereal Production ton (3)Yield (cereal) ton/ (4)Croplands area (5)NPP on croplands ton (6)NPP on croplands/area ton/ (7)NPPCereal conversion ratio %
Japan 24715 1449100 585 43422 49906 1149 51
China 935556 404387700 432 1898806 1681757 886 49
S.Korea 14410 8434015 585 16510 21598 1308 45
N.Korea 16550 5965700 360 27172 33917 1248 29
Bangladesh 111406 27746670 249 93661 105720 1129 22
Iran 94681 13683860 14 57956 38736 668 22
Pakistan 118641 20957200 177 239918 204941 854 21
Vietnam 64635 19901100 308 112646 172252 1529 20
Myammer 52213 14423780 276 140561 194162 1381 20
Indonesia 136605 51912780 380 457408 908900 1987 19
India 1025359 193919300 189 1760687 1759368 999 19
Sri Lanka 8698 2578860 297 25514 52919 2074 14
Thailand 105369 21169690 201 308007 465690 1512 13
Malaysia 7006 1995000 285 121919 269133 2207 13
Mongolia 6559 719638 110 8406 7328 872 13
Loas 6870 1558061 227 23596 49587 2101 11
Philippines 71384 14739140 206 125502 252936 2015 10
Cambodia 17850 2588000 145 86075 159224 1850 8
USA 646592 342512000 530 1142858 1396695 1222 43

Reference:
  • Goward , S.N. and Huemmrich, K.F.(1992), vegetation Canopy PAR Absorptance and the Normalized Difference Vegetation Index: An Assessment Using the SAIL Model, Remote Sensing of Environment, 39,pp119-140
  • Ruimy, A., Saugier , B. and Dedien, G.(1994), Methodology for the estimation of terrestrial net primary production from remote sensed data, Journal of Geophysical Research, 99,pp5266