Meteorology at the land surface affects many
processes in the terrestrial biogeochemical
system. Measurements of near-surface meteorological conditions are made
at many locations,
but we are often faced with having to perform ecosystem process simulations
in areas where
no meteorological measurements have been taken. In some cases it is possible
to install new
instrumentation for a particular study, but there are many situations
where this is not a
feasible solution. These problems are particularly important for simulations
over large regions,
where the number of simulation points is likely to be far greater than
the number of observation
stations.
Daymet is a model that generates daily surfaces
of temperature, precipitation, humidity, and
radiation over large regions of complex terrain. The required model inputs
include digital
elevation data and observations of maximum temperature, minimum temperature,
and precipitation
from ground-based meteorological stations. The Daymet method is based
on the spatial convolution
of a truncated Gaussian weighting filter with the set of station locations.
Sensitivity to the
typical heterogeneous distribution of stations in complex terrain is accomplished
with an
iterative station density algorithm. Spatially and temporally explicit
empirical analyses
of the relationships of temperature and precipitation to elevation are
performed. A daily
precipitation occurrence algorithm is introduced, as a precursor to the
prediction of daily
precipitation amount. Surfaces of humidity (vapor pressure deficit) are
generated as a function
of the predicted daily minimum temperature and the predicted daily average
daylight temperature.
Daily surfaces of incident solar radiation are generated as a function
of Sun-slope geometry and
interpolated diurnal temperature range.
Please see the Literature link for a more detailed explanation.