districts. In these districts the other dominating crop is
sugarcane during the season and due to the 188 m ground
resolution of WiFS, the NDVI profile contained the combined
response of wheat and sugarcane crops. These two districts
were dropped from further analysis which resulted in an
increase in correlation coefficient from 0.81 to 0.93 (Figure 3).
The difference between TO and computed DOS ranged from 4
to 16 days with a mean value of 11 days.
KARNAL DISTRICT
0.6
0:5
+04
SIMULATED LAI
o
w
NDVI (PROFILE FIT)
+ 0.1
— — -NDVIPROFILE
0.5 ; + r 0
15 25 35 45 55 65
DAY OF YEAR (2001)
Figure 2. An illustration for obtaining date of sowing (DOS) for
Karnal district by matching date of simulated LAI
peak with date of fitted NDVI profile peak (Tmax).
Different simulated LAI curves correspond to
various dates of sowing (320 to 350) in year 2000.
365 7
y = 0.5823x + 134.76
360 | 20.93
355 - 25: fine
350 4
345 -
340 4
335 -
330 4
Computed Date of Sowing (Julian day)
325
325 335 345 355 365
Spectral Emergence Date TO (Julian day)
Figure 3. Comparison of RS-derived spectral emergence date
TO and CGMS derived date of sowing for 14
districts in Haryana for 2000-01 crop season.
The CGMS was run under three different scenarios of crop
management input specification as described in methodology
section. Under all the scenarios, CGMS generated grid-wise
daily outputs of crop growth and development parameters
which were visualized in GIS as maps. The spatial variability of
these parameters captured by CGMS is summarized in Table 4.
IAPRS & SIS, Vol.34, Part 7, “Resource and Environmental Monitoring”, Hyderabad, India,2002
For all the parameters, variability captured under scenario-3
was highest followed by that under scenario-2. Under scenario-
1 the spatial variability captured is the result of variations in
weather and soil characteristics only, whereas, under scenario-2
and scenario-3, the spatial variability captured is due to the
variations in management practices besides variations in
weather and soil. The variability captured by CGMS in grain
yield across the State under scenario-3 is shown in Figure 5.
SCENARIO PARAMETERS RANGE MEAN
SCENARIO-1 ANTHD (days) 85 —97 90.50
GFD (days) 27-33 29.84
LAI ANT 3.58 — 4.46 3.89
TDM (t/ha) 779-1056. 939
YLD (t/ha) 3.29 — 4.86 4.06
SCENARIO-2 ANTHD (days) 81-97 87.75
GFD (days) 25-33 28.42
LAI ANT 3.73 — 4.53 3.95
TDM (t/ha) 6.89 — 10.12 849
YLD (t/ha) 2.80 — 4.67 3.72
SCENARIO-3 ANTHD (days) 80 — 99 87.43
GFD (days) 25 — 33 28.39
LAL ANT 2.78 — 5.05 3.88
TDM (t/ha) 633-1183 . 842
YLD (t/ha) 2.80 — 5.48 3.69
ANTHD: Pre-anthesis duration; GFD: Post-anthesis duration;
LAI_ANT: LAI at anthesis; TDM: Above ground total dry
matter; YLD: Grain yield
Table 4: Range and mean of grid-wise simulated crop growth
and development parameters under three scenarios
of input specification for Haryana (2000-01 season).
74°30E 75°E 75°30'E 76°E 76°30'E 77°E 77°30E 78°E
| 1 1 ] 1 L 1 |
N,0£,272 No8Z N,O£,82 Ne6Z N,0O£,62 NoO€ N,O£,0€
Haryana (2000-61)
R$-DOS, N Fortilizor
27*30'N 28?N .228"30'N 299?N 29*30'N 309N "30°30'N 319N
T | I I | | I
74*30E 7S5'E 75*3UE 76°E 76°30E 77°E 77*30'E
Wheat Yield (t/ha)
+
28 35 42 48 55
Figure 5. The wheat yield map generated by CGMS framework
for 14 districts of Haryana when RS-derived DOS
and N fertilizer at district level were used as inputs.