A salmonid individual-based model as a proposed decision support tool for management of a large regulated river
Authored by Peter N Dudley
Date Published: 2018
DOI: 10.1002/ecs2.2074
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Abstract
Large regulated rivers often require fisheries and water managers to
make management decisions involving resident fish population dynamics
that have many ecological drivers. Because of the large scale of the
system and often competing interests and demands for water, there is a
critical need for decision support tools (DSTs) that allow examination
of alternative management scenarios while considering key ecological
interactions. Spatially explicit individual-based models (IBMs) can
serve as effective DSTs by providing information on fish population
dynamics while accounting for, and providing extensive, spatially
explicit information on, the numerous ecological drivers. Spatially
explicit IBMs are often difficult to implement owing to the numerous and
often complex inputs the models require. Here, I demonstrate how a suite
of free, graphical user interface equipped programs, along with three
custom-built and publicly available plugins, can streamline the modeling
process and serve as a IBM-based DST for fisheries management on large
regulated rivers. The main program is a spatially explicit IBM of
juvenile salmonid dynamics, inSALMO, with two other programs that
generate the key input data in the required spatially explicit formats.
I then use this proposed DST to simulate a Chinook salmon population on
a portion of California's Sacramento River to determine whether an
IBM-based DST is appropriate to evaluate management impacts on a large
regulated river. The Sacramento is a large river of major concern in
California and is representative of many rivers in the United States and
worldwide in that it is dammed, has a resident fish population, and is
heavily used for water supply. The proposed DTS results compare
favorably with the predictive power of a general additive model, while
providing a much fuller and richer data set that could significantly aid
and inform management decisions.
Tags
individual-based models
decision support tools
USA
California
Chinook salmon
Dams
Endangered species
Individual ecology