Evapotranspiration in a Subtropical wetland savanna using low-cost
Lysimeter, Eddy Covariance and Modeling approaches
Abstract
Evapotranspiration (ET) constitutes the largest loss of water from
subtropical grassland and wetland ecosystems, yet data in much of the
world have high uncertainty at the landscape scale as there is little
information on plant water use. Additionally, anthropogenic alterations
to grasslands are a major threat globally and alter ecosystem water use,
but the impact of these changes is often unquantified. A major reason
for this is the complexity and expense of field-based ET quantification
methods such as agricultural lysimeters and eddy covariance systems.
Accurate measurements of ET are critical for sustainable water
management. This study developed two different low-cost lysimeters –
weighing-type and water level based, to measure ET under controlled
conditions for single species as well as mixed grassland and wetland
communities. Lysimeters were placed in an open sided shadehouse with a
transparent roof to exclude rainfall. ET values were then compared with
(i) Actual ET measurements from an eddy covariance tower onsite, (ii)
vapor transport-based ET models – FAO Penman-, Modified Turc and Abtew
Simple Radiation models, and (iii) ET data from the Florida Automated
Weather Network. Both weighing-type and water level lysimeters showed
seasonal patterns and annual magnitudes similar to the other ET methods.
Annual ET measurements from weighing-type lysimeters (881-1278 mm for
four plant species, n=5 per species, 20 in total) and water level
lysimeters (1085 mm, plant community average, n = 31) were similar to
model estimates (1000-1200mm). Actual ET from eddy covariance was 722 mm
for ten months (missing data for February and March), while lysimeter
measurements for the dominant grass Paspalum notatum was 885mm for the
same 10 months. Low-cost lysimeters can inform regional ET models/remote
sensing data lacking field validation and thus are potentially useful
for water resources and ecosystem management in data-poor regions of the
world.