Challenges associated with modeling low-oxygen waters in Chesapeake Bay: a multiple model comparison
As three-dimensional (3-D) aquatic ecosystem models are used more frequently for operational water quality forecasts and ecological management decisions, it is important to understand the relative strengths and limitations of existing 3-D models of varying spatial resolution and biogeochemical compl...
Main Authors: | , , , , , , , , , , , , , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2016-04-01
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Series: | Biogeosciences |
Online Access: | http://www.biogeosciences.net/13/2011/2016/bg-13-2011-2016.pdf |
Summary: | As three-dimensional (3-D) aquatic ecosystem models are used
more frequently for operational water quality forecasts and ecological
management decisions, it is important to understand the relative strengths
and limitations of existing 3-D models of varying spatial resolution and
biogeochemical complexity. To this end, 2-year simulations of the
Chesapeake Bay from eight hydrodynamic-oxygen models have been statistically
compared to each other and to historical monitoring data. Results show that
although models have difficulty resolving the variables typically thought to
be the main drivers of dissolved oxygen variability (stratification,
nutrients, and chlorophyll), all eight models have significant skill in
reproducing the mean and seasonal variability of dissolved oxygen. In
addition, models with constant net respiration rates independent of nutrient
supply and temperature reproduced observed dissolved oxygen concentrations
about as well as much more complex, nutrient-dependent biogeochemical models.
This finding has significant ramifications for short-term hypoxia forecasts
in the Chesapeake Bay, which may be possible with very simple oxygen
parameterizations, in contrast to the more complex full biogeochemical models
required for scenario-based forecasting. However, models have difficulty
simulating correct density and oxygen mixed layer depths, which are important
ecologically in terms of habitat compression. Observations indicate a much
stronger correlation between the depths of the top of the pycnocline and
oxycline than between their maximum vertical gradients, highlighting the
importance of the mixing depth in defining the region of aerobic habitat in
the Chesapeake Bay when low-oxygen bottom waters are present. Improvement in
hypoxia simulations will thus depend more on the ability of models to
reproduce the correct mean and variability of the depth of the physically
driven surface mixed layer than the precise magnitude of the vertical density
gradient. |
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ISSN: | 1726-4170 1726-4189 |