71
ON THE POSSIBLE USE OF SPATIAL VARIABILITY IN AVHRR DATA
TO ESTIMATE LOW LEVEL MOISTURE AND TEMPERATURE
John C. Price
Agricultural Research Service
Beltsville, Maryland, USA
Abstract
The Advanced Very High Resolution Radiometers
(AVHRR) onboard afternoon NOAA satellites (NOAA
7,9,11) acquire data at 10.9 and 11.8 pm in the
thermal infrared window. This permits estimation
of surface temperature by derivation of a
correction for the major atmospheric absorber,
water vapor. Although two factors (total water
vapor, and its mean temperature) combine to
produce the atmospheric effect, it is possible to
solve two equations in three unknowns due to the
special form of the radiative transfer equation.
Thus two thermal IR measurements yield surface
temperature and the product of atmospheric
moisture and low level temperature. The
formalism developed here permits estimation of
the separate atmospheric terms, assuming that
ground temperatures are nonuniform. The method
derives formulas for the variability of the 10.8
pm measurements (channel 4) and the 11.9 pm
measurements (channel 5), and thus does not apply
in regions of uniform surface temperature, such
as the oceans, where spatial variability is very
small.
Key Words: Atmospheric moisture, soundings,
AVHRR, spatial variability
INTRODUCTION
The increasing interest in measuring long term
weather and climate variability has prompted many
studies of the exchange of energy and moisture
between the earth and atmosphere. Although such
studies have been routine in micrometeorology for
many years, present interest is directed toward
measuring this interaction over a substantial
fraction of the surface to the globe. Almost by
definition these efforts require the analysis of
satellite data, with frequent and global coverage
providing the essential perspective. The
instrument of choice for analysis of Earth
surface effects is the AVHRR onboard NOAA
satellites. Five spectral channels in the
visible (0.6-0.7 pm), near infrared (0.7-1.1 pm),
mid infrared (3.6-3.9 pm) and thermal infrared
(10.3-11.3, 11.5-12.5 pm) provide the key
observations for assessing surface variability
and its interaction with the atmosphere. In this
paper we utilize principles applicable to regions
of surface variability (Price, 1989, 1990), to
the thermal infrared channels of AVHRR (called
channels 4 and 5) to estimate of lower
atmospheric moisture and temperature. As will
become clear, uncertainties associated with the
derived results for the atmospheric state are
relatively large: the analysis should be linked
to coincident data from the atmospheric sounder
unit (HIRS) onboard the NOAA satellites.
ESTIMATING OPTICAL DEPTH AND MEAN
ATMOSPHERIC TEMPERATURE
The discussion is based on earlier work by Price,
1984, in which an estimate was obtained for the
ratio of the absorption coefficients of channels
4 and 5 of the AVHRR's. The ratio of absorption
in channel 5 to that in channel 4, called R,
stands out in the analysis of data from these
thermal infrared channels. Through
simplification of the radiative transfer equation
by treating as small (first order) the
atmospheric effect on satellite radiances, we
obtain
, T . ;
4 air
(1)
Rr.T .
4 air
(2)
where T. and T c are the satellite observed
4 5
radiance temperatures, T g is the surface radiance
temperature, is the transmittance = Jdz
k^q(z), and T^^ - Jdz k^q(z)T(z) . Also k^ is
the absorption coefficient and q the density of
atmospheric water vapor, and z is the path from
surface to satellite through the atmosphere. At
this level of approximation R is a constant, of
order 1.35, so that one may solve the two
equations (1, 2) for T g by multiplying the T^
equation by R and subtracting from the T<-
equation. The result is
T H ± —
"4 (R-l)
(T,
(3)
We
may regard as fortuitous the fact that both
and T ^ are eliminated by this process.
One may produce a second result by eliminating T^
from equations 1 and 2:
T. - r.T .
4 4 air
1 - r,
T c - Rr. T .
5 4 air
1 - Rr,
(4)
In general a single equation in two unknowns
(r. , T . ) is not useful. However IF surface
4 air
temperature is variable, this produces
variability in T^ and T,.. Provided that a
statistically valid correlation may be found over
some limited area between T^ and T<_, e.g. by
linear regression, then we may identify derived
values of the slope and offset, i.e. T. - slope •
T + offset, with the values of r, and T
3 4 ai:
Thus
slope
(1 - r 4 )/(l - Rr 4 )
(5)