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Empirical Lagrangian parametrization for wind-driven mixing of buoyant particles at the ocean surface
by
Laufkötter, Charlotte
, Onink, Victor
, Erik van Sebille
in
Buoyancy
/ Diffusion
/ Diffusion coefficient
/ Energy
/ Microplastics
/ Mixed layer
/ Modelling
/ Ocean models
/ Ocean surface
/ Oceans
/ Parameterization
/ Particulates
/ Plastic pollution
/ Simulation
/ Surface mixed layer
/ Three dimensional models
/ Transport
/ Turbulence
/ Turbulence data
/ Turbulent mixing
/ Velocity
/ Vertical diffusion
/ Vertical profiles
/ Wind
2022
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Empirical Lagrangian parametrization for wind-driven mixing of buoyant particles at the ocean surface
by
Laufkötter, Charlotte
, Onink, Victor
, Erik van Sebille
in
Buoyancy
/ Diffusion
/ Diffusion coefficient
/ Energy
/ Microplastics
/ Mixed layer
/ Modelling
/ Ocean models
/ Ocean surface
/ Oceans
/ Parameterization
/ Particulates
/ Plastic pollution
/ Simulation
/ Surface mixed layer
/ Three dimensional models
/ Transport
/ Turbulence
/ Turbulence data
/ Turbulent mixing
/ Velocity
/ Vertical diffusion
/ Vertical profiles
/ Wind
2022
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Empirical Lagrangian parametrization for wind-driven mixing of buoyant particles at the ocean surface
by
Laufkötter, Charlotte
, Onink, Victor
, Erik van Sebille
in
Buoyancy
/ Diffusion
/ Diffusion coefficient
/ Energy
/ Microplastics
/ Mixed layer
/ Modelling
/ Ocean models
/ Ocean surface
/ Oceans
/ Parameterization
/ Particulates
/ Plastic pollution
/ Simulation
/ Surface mixed layer
/ Three dimensional models
/ Transport
/ Turbulence
/ Turbulence data
/ Turbulent mixing
/ Velocity
/ Vertical diffusion
/ Vertical profiles
/ Wind
2022
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Empirical Lagrangian parametrization for wind-driven mixing of buoyant particles at the ocean surface
Journal Article
Empirical Lagrangian parametrization for wind-driven mixing of buoyant particles at the ocean surface
2022
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Overview
Turbulent mixing is a vital component of vertical particulate transport, but ocean global circulation models (OGCMs) generally have low-resolution representations of near-surface mixing. Furthermore, turbulence data are often not provided in OGCM model output. We present 1D parametrizations of wind-driven turbulent mixing in the ocean surface mixed layer that are designed to be easily included in 3D Lagrangian model experiments. Stochastic transport is computed by Markov-0 or Markov-1 models, and we discuss the advantages and disadvantages of two vertical profiles for the vertical diffusion coefficient Kz. All vertical diffusion profiles and stochastic transport models lead to stable concentration profiles for buoyant particles, which for particles with rise velocities of 0.03 and 0.003 m s-1 agree relatively well with concentration profiles from field measurements of microplastics when Langmuir-circulation-driven turbulence is accounted for. Markov-0 models provide good model performance for integration time steps of Δt≈30 s and can be readily applied when studying the behavior of buoyant particulates in the ocean. Markov-1 models do not consistently improve model performance relative to Markov-0 models and require an additional parameter that is poorly constrained.
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