cycles and handle the unique behaviour of some species.
The problems introduced by the different temporal
sampling for the different years (the cloud shrouded days
are different in different years) also have to be coped
with. The cloud cover also behaves irregularly on a given
image above different areas. A mathematical method was
needed which deals with these irregularities and makes
the data unified.
The results showed that in Hungary the method can be
applied in flat lands (the Great Plain) without
stratification, so the regional yield averages can be
estimated. For corn the greatest deviation between the
estimated yield and the official statistical data is 0.68 t/ha
(1991 Bäcs-Kiskun county), for wheat it is 0.55 t/ha
(1993 Bács-Kiskun county). The average deviation is
0.37 t/ha for corn and 0.32 t/ha for wheat. The question
has arisen, whether it is possible to give an estimation for
the whole country based on the estimations acquired in
the flat counties. If the answer is ’yes’ then in practice
the ratio of the flat land yield average to the whole
country average is the same for every year. That is
unfortunately not true, for example for corn in the period
of 1991-93 the ratios are: 1.06, 1.01, 0.98: for wheat
they are: 1.05, 0.89, 0.96. So one can see that the
estimation for the whole country is not that simple as
that.
From the previous paragraph it is evident, that to get an
accurate yield forecast for the whole country the
examination of the data for other counties is necessary.
But there are several problems arising. First of all one
crop can behave quite differently in regions of different
characteristics. This question is thoroughly discussed in
literature. The subregions with irregular behaviour are
called strata and there are still no theories to handle
them. Moreover, even if the different strata behaved
uniformly, there is the problem of the sloping surfaces.
If there is a hilly, rugged terrain, the diffuse radiation
reaching the satellite sensor is not simply related to
canopy reflectance as a consequence of anisotropic
backscattering. It is not even a simple question to handle
it theoretically. In practice it amounts to an increased
noise of the data.
4. EXTENDING THE ROBUST METHOD TO THE
WHOLE COUNTRY
To eliminate the effects of the terrain there is two
methods. The terrain correction can be done on a
pixel-by-pixel basis, or one can use an averaging method.
The first method is theoretically more correct, but
unfortunately cannot be carried out in practice (as it is
already mentioned, the ambiguity of the geographical
correction of pixels makes it impossible with the half
pixel uncertainty). Therefore our decision was to use a.
method with a kind of an average relief correction. In the
future, if there is a high-resolution study, then the
pixel-by-pixel correction becomes inevitable.
For the relief correction a digital elevation database
(DTM) for Hungary was used. With this the data related
to any county could be brought to a common reference
base and so the robust method could be extended to the
whole area of the country. For all of the 19 counties the
modified GYURRI values were obtained. So there were
19 points for each year on the plots, 57 overall for the
three years. With the help of these points the linear
relationship between the GYURRI and yield average
values was established for each crops. Also the relief
corrected GYURRI was calculated for the whole country,
and using the established relationship the national average
yields were estimated.
The above data were obtained by applying the robust
method with relief correction for every county of
Hungary. The results show the method could be used as
an operational method on national and regional level.
More detailed study of the data showed that some of the
points deviate more then it was expected. For example,
see corn, on the left side of the Figure 3., there are 3
points separated from the main band of points in a
roughly perpendicular direction from the line. These are
turned out to be the points of counties Gyór-Sopron, Zala
and Vas in 1993. This means that there appeared a
transient stratum at the western side of the country. The
reason can be — as the meteorological data suggest
— that the atmospherical parameters behaved strangely,
not showing the usual characteristics of the area,
modifying therefore the satellite data through
atmospherical correction effects. The problem of the
temporal transient strata is still an open question, but the
above example shows that they cannot be neglected in the
future. It is important to note, that the temporal transient
didn't affect the estimation for the whole country average
yield.
The fact that the relief correction is necessary is clearly
shown on Figures 2-5., where both the uncorrected and
the corrected data is plotted for corn and wheat. The
former shows a scattered cloud of points while the latter
shows considerably more correlation with a linear
relationship. Figures 6-9. show the results obtained by
using the relief correction for the 4 remaining crops. The
results can be considered good in all cases, and in the
case of corn the 95.7% correlation value is exceptionally
good. On the figures the squares denote the national
average estimations, their y coordinate is the official
statistical yield data, the y distance of the square to the
line shows the error of the estimation in a given year.
(To be exact the official statistical yield values are also
only estimations achieved through some classical method
of theirs, so the deviation from them can be other than
the true errors.) Table 1. shows these deviations for the
three years and for the 6 species of plant.
The main task of satellite yield estimations is to tell
accurately the maximum yield expectable in the year
before harvesting. The estimation is certainly for
maximum yield, because in the last moments the yield
can be changed only in negative direction by
unpredictable events (e.g. fires, droughts etc.). The
basics of the method is, that knowing the remotely sensed
data until a certain day, we try to predict a next value
assuming that no stress event happens. For the moment
we used only corn data, and found that in 1991 when
there was not any late summer drought, already in the
210th day (end of July) a good estimation could be given
for the final yield.