Mapping spatial and temporal variation in tree water use with an elevation model and gridded temperature data
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Gharun:2015:AFM,
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author = "Mana Gharun and Tarryn L. Turnbull and
Joseph Henry and Mark A. Adams",
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title = "Mapping spatial and temporal variation in tree water
use with an elevation model and gridded temperature
data",
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journal = "Agricultural and Forest Meteorology",
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volume = "200",
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pages = "249--257",
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year = "2015",
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ISSN = "0168-1923",
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DOI = "doi:10.1016/j.agrformet.2014.09.027",
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URL = "http://www.sciencedirect.com/science/article/pii/S0168192314002512",
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abstract = "Tree water use is a major component of the water
balance in forested catchments of semi-arid areas, as
more than 80percent of the incoming rainfall may be
used by overstory trees. Managers are unable to easily
predict water use and thus water yield, for the
majority of eucalypt-dominated catchments in south-east
Australia, owing to the variety of dominant and
co-dominant species, their distributions with respect
to landform, and the lack of species- and
landform-specific knowledge of the regulation of water
use. Moreover, the costs incurred to quantify input
variables for available complex, process-based models,
generally encourage finding alternative approaches.
This study tested the adequacy of using just two easily
measured variables for estimating rates of tree water
use, using a model derived from data-learning
techniques. The inputs are (1) measured daily
atmospheric demand for water and (2) potential incoming
radiation derived from surface topography and solar
declination. Artificial neural networks (ANNs) and
genetic programming (GP) models were trained and
validated using in situ observations of vapour pressure
deficit (VPD) and estimates of potential solar
radiation (Qpot), for a period of two years, at each of
10 forest stands across the high country of the states
of New South Wales and Victoria. The models were tested
using a random 50percent of the collected data that was
independent, i.e. not used in model development.
Atmospheric demand was selected because it strongly
affects tree water use irrespective of site and
species. Potential solar radiation was selected as a
proxy for radiation, because it is relatively easy to
estimate for any location for which elevation data are
available in digital format, and since radiation
strongly controls photosynthesis (through stomatal
behaviour) and thermal balance. Genetic programming
resulted in models better able to predict rates of sap
flux. A selected GP model was able to describe the
relationship between tree sap flux, VPD, and potential
radiation with good accuracy, and was used to map tree
water use across the catchment.",
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keywords = "genetic algorithms, genetic programming, Potential
incoming radiation, Sap flux, Eucalypt, Neural
networks",
- }
Genetic Programming entries for
Mana Gharun
Tarryn L Turnbull
Joseph Henry
Mark A Adams
Citations