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"Nesting and coupling of physical and biological models “. Albert J. Hermann University of Washington JISAO NOAA/PMEL Collaborators: Dale Haidvogel, Sarah Hinckley, Elizabeth Dobbins, Phyllis Stabeno, Kate Hedstrom, Enrique Curchitser, Dave Musgrave, Georgina Blamey, Bern Megrey. OUTLINE.
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"Nesting and coupling of physical and biological models “ Albert J. Hermann University of Washington JISAO NOAA/PMEL Collaborators: Dale Haidvogel, Sarah Hinckley, Elizabeth Dobbins, Phyllis Stabeno, Kate Hedstrom, Enrique Curchitser, Dave Musgrave, Georgina Blamey, Bern Megrey
OUTLINE • General comments • Physical BCs • Biophysical methods • pollock in the Gulf of Alaska • salmon in the NE Pacific • Conclusions and points of contention
What should coupled, regional, biophysical models include? • Mesoscale features and variability • eddies • coastal trapped waves • fronts • Multiple trophic levels • Tidal effects • vertical migration interacts with tides -> mean advection of organisms • mixing produces fronts, supplies nutrients
The Challenge of Coupled Regional Models • Zymurgy's First Law of Evolving System Dynamics“Once you open a can of worms, the only way to re-can them is to use a larger can” • Long history of attempted solutions to the BC problem (some involving larger cans)
Robust approaches to the physical BC problem do exist • Palma and Matano (2000) survey • relaxation-radiation hybrid had “best overall performance” • Marchesiello et al. (2001) • nudge weakly for outgoing information • nudge strongly for incoming information • apply sponge near boundary • allow oblique radiation • Nudging is suboptimal, but simple and robust
Tidal and Subtidal Dynamics • Need different BCs, but can exist peacefully together in one model • Output data can be tricky; beware of aliasing the tidal signal • Flather (2D) and Marchesiello (3D) solution: • Flather: add/remove water at the free wave speed to match specified SSH at boundary. Nice for 2D tides • Marchesiello: radiate with selective nudging. Nice for everything else • (Telescoped solution; worked but had issues)
Biophysical Methods • Pollock in the Northern Gulf of Alaska • Salmon in the Northeast Pacific
Known issues of IBMs • Particles disperse; need to reseed the population • Two-way interaction with other species (e.g. the NPZ model) can be tricky • could get unnaturally patchy prey field • Single-point Lagrangian statistics can be misleading • spatially variable random walk -> preferentially accumulate particles in areas with low dispersion (proper algorithms avoid this artifact) • However, active particles (e.g. swimming larvae) may in reality accumulate in areas with slower swim speed (not an artifact).
So, why not use Eulerian approach for everything? • Need a huge number of variables (time of last feeding, what eaten, etc) at every gridpoint to track complicated “history” in Eulerian format • Eulerian is always looking at the local average individual (which is, on average, dead) and the local average attributes (which are misleading because of nonlinear interactions among species) • Harder to encode complicated behaviors in Eulerian format • In principle, can go back and forth between NPZ and IBM (Eulerian and Lagrangian) techniques (has been done for point dipsersal problems)
Biophysical Methods • Pollock in the Northern Gulf of Alaska • Salmon in the Northeast Pacific
Nested Biophysical Models for GLOBEC: NCEP/MM5 -> ROMS/NPZ -> IBM
GLOBEC NPZ model for the CGOA (S. Hinckley) Width of arrow represents N flux
Model Nesting • Really a form of data assimilation, larger model is “data” • Works best if the surface forcing is the same across all scales – o/w easy to get discontinuities (and associated rim currents) across boundaries • Here, use Marchesiello/Flather BC to feed from coarser to finer grid • Tides (from a tidal model) applied only at smaller scales
Nested Model Domains NESTED CIRCULATION MODEL DOMAINS
AK NESTED MODELS SSH DOY 255 CGOA domain - color NEP domain – b&w CA
Prince William Sound Sitka AK CGOA MODEL SSH DOY 255
Flux through Shelikof Strait Black=ADCP dataRed=model MM5 NCEP
Conclusions/Preferences • Avoid spatial boundaries in dynamically active areas • Avoid spatial boundaries between different biological communities • Consider the different time scales of different variables when setting BCs • Two-way coupling is not necessarily better than one-way nesting • Visualization matters!
2. Avoid spatial boundaries between different communities (BCs are tricky at the ecotone) • Gradient in community structure/limiting nutrient can produce artifacts as reactive materials cross the boundary and seek new “equilibrium” • Example 1: deep ocean is Fe limited, coastal ocean is not -> spurious bloom at boundary as offshore water moves onshore • Impedance change across boundary (different boxes for different system) may lead to discontinuity in biological variables
Nested Biophysical Models for GLOBEC: NCEP/MM5 -> ROMS/NPZ -> IBM
A big bloom occurred at the edge of the coastal NPZ model! Onshore flow Solution: add Fe variable, develop single NPZ model spanning both regions
6. Visualization matters! • Easy to miss incorrect features in a 3D field if limited to 2D visuals • High-end visualization becomes especially useful when bio variables are added –e.g. where is a nutrient source and who is using it • Many attributes of biophysical models are truly 3D (e.g. patchy); perturbation signals, mixing • Visualize spatial paths from physical model, IBM in 3D
ALASKA Cook Inlet 3D view of particles in ROMS Gulf of Alaska simulation (use red/blue glasses for stereo 3D effect)
Alaska Salinity Isosurface (32.6 psu)