1. Introduction
Under the influence of upwelling-favorable winds, buoyant plumes separate from the coast and travel offshore, eventually mixing with water on the shelf (Csanady 1978; Xing and Davies 1999; Fong and Geyer 2001; Houghton et al. 2004; Lentz 2004). Their evolution depends on winds and on the dynamics of the surface boundary layer (Xing and Davies 1999). Coincident with, but distinct from, studies of buoyant plumes in recent years, parameterizations have been developed and implemented that attempt to parameterize the effects of whitecapping surface gravity waves on upper-ocean turbulence (Craig and Banner 1994; Burchard 2001; Carniel et al. 2009). Because these parameterizations are relatively new, limited descriptions of their dynamical effects on regional circulation have been developed (Carniel et al. 2009; Zhang et al. 2011). In this study, we examine buoyant plumes under upwelling-favorable winds. Using a numerical model, we study how the inclusion of a wave-breaking parameterization affects the evolution of the buoyant plume. The analysis includes examination of some of the findings of Fong and Geyer (2001) and Lentz (2004) for the case of no wave breaking and a study of how the plume dynamics change with wave breaking. We first introduce turbulence in the surface boundary layer and then give background on Fong and Geyer (2001) and Lentz (2004).
a. Turbulence from wave breaking
Turbulence in the surface boundary layer is driven by at least three processes: surface stress, wave breaking, and Stokes drift shear instabilities. Circulation models use two-equation closures (e.g., k–ɛ) or vertical profile [e.g., K-profile parameterization (KPP)] submodels to parameterize turbulent mixing near the surface. These models traditionally have included the effects of momentum and buoyancy flux through the sea surface (Jones and Launder 1972; Mellor and Yamada 1982; Large et al. 1994). Surface gravity waves affect surface boundary layer dynamics through wave–current interaction, Stokes shear instabilities, and wave breaking. A straightforward parameterization of wave breaking has been developed and implemented in numerical models (Craig and Banner 1994; Burchard 2001; Carniel et al. 2009). This parameterization is improved by but does not require full simulation of the wave field and is relatively simple to include in simulations. Schemes to include wave–current interaction and effects of Stokes drift are more complicated and less well developed, although progress continues to be made (Uchiyama et al. 2010; Kumar et al. 2012; McWilliams et al. 2012). In this study, we examine the effects of the wave-breaking parameterization of Craig and Banner (1994) as modified by Burchard (2001) on buoyant plume evolution.
The effects of waves and wave breaking on turbulence in the ocean surface boundary layer have been studied through observations (Agrawal et al. 1992; Anis and Moum 1995; Gemmrich et al. 1994; Terray et al. 1996; Gerbi et al. 2008, 2009; Gemmrich 2010), analytic models (Craig 1996; Burchard 2001; Ardhuin et al. 2008; Teixeira 2012), and large-eddy simulations (Noh et al. 2004; Sullivan et al. 2007; McWilliams et al. 2012). These studies have shown that turbulent kinetic energy (TKE) density, dissipation rates of turbulent kinetic energy, turbulent diffusivity, and turbulent viscosity are all enhanced beneath breaking surface waves relative to what would be expected for turbulence at a rigid boundary. This results in a more uniform vertical distribution of properties in the surface boundary layer than would be expected without breaking waves.
The parameterization of Craig and Banner (1994) and Burchard (2001) treats wave breaking as a source of turbulent kinetic energy at the sea surface and changes the roughness length at the surface. It has been shown to be consistent with observations in several one-dimensional studies of turbulence, momentum, and tracers (Terray et al. 1996; Drennan et al. 1996; Soloviev and Lukas 2003; Stips et al. 2005; Gerbi et al. 2008, 2009). In a recent three-dimensional model of the Adriatic Sea, Carniel et al. (2009) showed that the tracks of surface drifters were more accurately reproduced by models that included this wave-breaking parameterization in the turbulence closure than by models that did not include wave breaking. Similarly, Zhang et al. (2011) showed that including the wave-breaking parameterization improved simulation of the surface boundary layer thickness in the Yellow Sea. The study presented here examines the effects of wave-breaking turbulence on the dynamics and evolution of a coastal system in an idealized numerical experiment. Specifically, this study addresses the evolution of a buoyant coastal plume under upwelling-favorable conditions with and without wave breaking.
b. Buoyant coastal plumes in upwelling-favorable winds







Lentz (2004) showed that, using a critical bulk Richardson number of 1, the theory did a reasonable job of predicting the results of the numerical model from Fong and Geyer (2001) and of the evolution of an observed coastal plume off the North Carolina coast under weak to moderate winds. The theory does not account explicitly for breaking waves, but because the bulk Richardson number represents unresolved turbulent processes, parts of the model might be applicable to simulations with breaking waves. Such application would likely require a different critical bulk Richardson number.
Lentz's theory was developed for a vertical coastal wall and assumed a plume with uniform thickness. Fong and Geyer's numerical model was run with a deep coastal wall, but the plume in their simulation was not of uniform thickness. In this paper we use numerical experiments to examine plume dynamics in general, revisiting the results of Fong and Geyer (2001) and Lentz (2004) in a region with a sloping bottom. We then examine both qualitatively and quantitatively the effects of breaking waves on plume evolution. Section 2 describes the model, reviews turbulence closure and the parameterization of wave breaking, and describes the metrics used in this study. Section 3 describes plume evolution and differences between simulations with and without wave breaking, and section 4 discusses changes in the internal dynamics with the addition of wave breaking. Section 5 offers conclusions.
2. Methods
a. Numerical model, forcing, and initial conditions
This study examines the effects of wave breaking on plume evolution using the Regional Ocean Modeling System (ROMS; http://www.myroms.org). ROMS is a hydrostatic primitive equation model with a terrain-following σ-coordinate stretched vertical grid. Its computational kernel has been described by Shchepetkin and McWilliams (2005, 2008) and Haidvogel et al. (2008) [as corrected by Shchepetkin and McWilliams (2009)]. The model was used with no horizontal mixing of tracers or momentum.
This study uses an idealized coastal domain with constant upwelling-favorable winds. The domain is similar to that used by Jurisa and Chant (2013) and is about 280 km along-shelf by 230 km across-shelf (120 km of river and 110 km of ocean, Fig. 1). For convenience, the coast is oriented north–south with the ocean to the east and land to the west. Southerly and easterly directions are referred to as downshelf and offshore, respectively. Cross-shelf resolution varies from about 625 m near the river mouth to a maximum of 1.7 km near the offshore edge. Along-shelf resolution varies from about 180 m near the mouth to almost 2 km at the downshelf boundary. In the vertical dimension the stretched grid gives fine resolution near the surface, moderate resolution in middepths, and coarse resolution near the bottom. Vertical resolution varies with water depth and is tens of centimeters near the surface in shallow water. The model has a straight river of 10-m depth and 120-km length opening onto a straight continental shelf with slope of 0.001. The river discharge is a constant 1500 m3 s−1, representing a moderate springtime runoff event in the Hudson River (see Choi and Wilkin 2007). The incoming river water was distributed uniformly with depth at the upstream end of the river. The model has a 10-m coastal wall and the shelf slopes continuously to the edge of the model domain at 120-m depth at 110-km offshore. We chose this wall depth to maintain numerical stability near the river mouth and for the possibility of comparison with the work of Jurisa and Chant (2013). Section 4d discusses possible effects of this wall in comparison to a model domain that continues to shallower water.

Plume initial conditions. (top) Map view of salinity at 1-m depth is shown. (bottom) Initial cross section of salinity is shown. The alongshore extent of the gray band in the top shows the alongshore extent averaged in the analysis, and the cross-shore extent of the gray band shows the cross-shore extent of the cross section shown in the bottom. The black line in the bottom is the contour of 31.9 psu, which was used to define the base of the plume.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Plume initial conditions. (top) Map view of salinity at 1-m depth is shown. (bottom) Initial cross section of salinity is shown. The alongshore extent of the gray band in the top shows the alongshore extent averaged in the analysis, and the cross-shore extent of the gray band shows the cross-shore extent of the cross section shown in the bottom. The black line in the bottom is the contour of 31.9 psu, which was used to define the base of the plume.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Plume initial conditions. (top) Map view of salinity at 1-m depth is shown. (bottom) Initial cross section of salinity is shown. The alongshore extent of the gray band in the top shows the alongshore extent averaged in the analysis, and the cross-shore extent of the gray band shows the cross-shore extent of the cross section shown in the bottom. The black line in the bottom is the contour of 31.9 psu, which was used to define the base of the plume.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Initial conditions were the same for all cases in this study and were generated by running the model from a state of constant salinity in the ocean and linear stratification in the estuary. The model ran for 20 days with tidal forcing, river input, and along-shelf flow at the boundaries (see below), but no wind. A large bulge region formed at the river mouth, and a coastal current extended downstream (Fig. 1). At the location of the transects examined for this study (mean downshelf distance from river mouth of 96 km), the coastal current carried about 45% of the river freshwater transport, with the remainder going into the growing bulge at the river mouth.
Radiation conditions are used at the open boundaries (Flather 1976; Chapman 1985) and incorporate tidal forcing and mean along-shelf flow. Tides are specified through free surface elevation and depth-mean flow at the eastern (offshore) boundary using only the M2 tide. Tidal velocities at the river mouth are about 0.5 m s−1. Along-shelf flow is specified using a modification of the formulation of Lentz (2008) at the northern and southern boundaries (Zhang et al. 2009). Depth-mean downshelf flow is proportional to the water depth with flow of 0.025 m s−1 at the coast and 0.1 m s−1 at the offshore edge of the domain.
Using these initial and boundary conditions, an upwelling-favorable (northward) wind stress is ramped from 0 to 0.1025 Pa over 1.7 h [following Fong and Geyer (2001)]. The simulations last between 3.5 and 6.5 days, depending on how quickly the plume front reaches the model boundary. All the simulations use the k–ɛ turbulence closure model (Jones and Launder 1972; Rodi 1980). They differ only in whether the wave-breaking parameterization is included and in the values of two terms in that parameterization (see below).
b. Turbulence closure and breaking waves












Summary of simulations. Cases 2 and 6 only partially adopt the wave-breaking parameterization.


These simulations do not account for all possible wave effects on turbulence and wave–current interactions. Unaddressed effects include Coriolis–Stokes forcing (Hasselmann 1970; Polton et al. 2005), Stokes shear production of turbulent kinetic energy (Uchiyama et al. 2010; Kumar et al. 2012; McWilliams et al. 2012), and wave radiation stress (Warner et al. 2008; Uchiyama et al. 2010). Ignoring those processes reduces the complexity of this study and allows us to determine whether even a simplistic, easily applied parameterization has consequences for regional circulation. In addition, properly incorporating those more complicated wave effects would require a more realistic simulation of the wave field and would increase the number of parameterizations involved.
c. Computation of plume statistics
To quantify the differences between simulations, four bulk plume metrics are examined along with vertical structure of the plume. The metrics are mean plume thickness, mean plume density, plume width at the surface, and the offshore position of the plume's leading edge. These quantities are computed using a mean cross-shore section computed from 20 grid cells in the alongshore direction (about 20 km), with the section's center 96 km from the center of the river. Shelf salinity S in the model initial condition is 32. The plume is defined as water with salinity less than 31.9. In cross-shelf sections, there are occasionally multiple boluses of low-salinity water (S < 31.9) separated by high-salinity water (S > 31.9) (see section 3a). The offshore bolus is always the best defined and freshest, and when multiple boluses are present plume statistics are computed from the one that is farthest offshore.
At each offshore position, plume thickness is computed from the distance between the free surface and the bottom of the deepest grid cell containing water with S ≤ 31.9. Mean plume thickness is the horizontal average of plume thicknesses. Vertical grid resolution near the plume base varies with location but is usually about 1–2 m. Plume width is the distance between the outside edges of the surface grid cells with S ≤ 31.9. Mean density difference is computed from the density difference between the plume water and the water immediately below the plume. Cross-sectional area of the plume is not shown but can be computed as the product of plume width and mean thickness. Prior to calculation of plume thickness, density difference, width, and position of the offshore edge of the plume, the salinity field was interpolated onto a grid with 200-m horizontal resolution. Vertical resolution was kept constant. This smoothing changed the horizontal resolution by a factor between 3 and 8 depending on cross-shore location.










The Richardson number theory by Lentz (2004) predicts plume evolution based on wind stress and plume initial conditions. It assumes an initially triangular shape against the coastal wall that evolves to a rectangular shape with a flat bottom immediately after the onset of wind. We made two sets of comparisons to the theory, both using a bulk Richardson number equal to 1. For the most complete comparison, initial plume width and density were computed directly from the initial conditions. Because the initial shape in the simulations is not triangular, initial plume thickness hi is computed as hi = 2Ai/Wi, where Ai is the initial cross-sectional area of the plume. The other set of comparisons between the simulations and Lentz's theory initialized the theory 10 h after the plume had separated from the coast using the simulated thickness, density difference, width, and cross-sectional area for h0, Δρ0, W0, and A0, respectively (where A0 is the cross-section area after onset of winds).
Vertical salt flux by turbulence is not a model output in ROMS, so it had to be calculated from other diagnostic quantities of the model. ROMS output does include the mean vertical derivative of vertical salt flux for each grid cell. The difference in vertical salt flux between the top and bottom of each grid cell is computed as the product of the vertical derivative and the thickness of each cell. Finally, the salt flux is computed as the cumulative sum of the vertical differences, using zero salt flux through the sea floor.
3. Results
a. Plume evolution
After the onset of winds, the buoyant plume in each case widens and begins to move offshore (Figs. 2 and 3). In the first half-day after onset of wind, the mean depth of each plume base decreases as the plume water adjusts to the upwelling-favorable wind (Fig. 4). After less than one day, the base of the plume in all simulations has evolved from being initially steeply sloped to a much more gently sloped state that is slightly shallower at the leading (offshore) edge of the plume than at the trailing (onshore) edge.

Map views of salinity at 1-m depth with wave breaking (top) turned off (case 1) and (bottom) turned on (case 4). Times are measured from the beginning of nonzero wind stress. The gray bar shows the area used to define cross sections of the plume.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Map views of salinity at 1-m depth with wave breaking (top) turned off (case 1) and (bottom) turned on (case 4). Times are measured from the beginning of nonzero wind stress. The gray bar shows the area used to define cross sections of the plume.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Map views of salinity at 1-m depth with wave breaking (top) turned off (case 1) and (bottom) turned on (case 4). Times are measured from the beginning of nonzero wind stress. The gray bar shows the area used to define cross sections of the plume.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Cross-shelf sections of plume evolution with wave breaking (left) turned off (case 1) and (right) turned on (case 4). Times are measured from the beginning of nonzero wind stress. In each cross section, the thick black line is the plume base zb lying between waters of salinity greater than and less than 31.9 psu. The thin horizontal line is the mean plume depth. Thin yellow contours are vertical salt flux by turbulence (interval of 1 × 10−5 psu m s−1). The outermost contour in each plot is 1 × 10−5 psu m s−1. Along the bottom edges, the red vertical line segments show the cross-shore position one deformation radius inshore of the plume's leading edge (computed using mean plume density and thickness).
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Cross-shelf sections of plume evolution with wave breaking (left) turned off (case 1) and (right) turned on (case 4). Times are measured from the beginning of nonzero wind stress. In each cross section, the thick black line is the plume base zb lying between waters of salinity greater than and less than 31.9 psu. The thin horizontal line is the mean plume depth. Thin yellow contours are vertical salt flux by turbulence (interval of 1 × 10−5 psu m s−1). The outermost contour in each plot is 1 × 10−5 psu m s−1. Along the bottom edges, the red vertical line segments show the cross-shore position one deformation radius inshore of the plume's leading edge (computed using mean plume density and thickness).
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Cross-shelf sections of plume evolution with wave breaking (left) turned off (case 1) and (right) turned on (case 4). Times are measured from the beginning of nonzero wind stress. In each cross section, the thick black line is the plume base zb lying between waters of salinity greater than and less than 31.9 psu. The thin horizontal line is the mean plume depth. Thin yellow contours are vertical salt flux by turbulence (interval of 1 × 10−5 psu m s−1). The outermost contour in each plot is 1 × 10−5 psu m s−1. Along the bottom edges, the red vertical line segments show the cross-shore position one deformation radius inshore of the plume's leading edge (computed using mean plume density and thickness).
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Plume dimensions. (a),(b) Mean thickness; (c),(d) mean density difference from water beneath plume; (e),(f) plume width at surface; and (g),(h) offshore position of plume front. (left column) Variations caused by changing the roughness length z0 and holding the TKE flux and Gt constant. (right column) Variations caused by varying the magnitude of TKE flux across the surface (by changing Gt) and holding the roughness length constant. Black lines (nearly indistinguishable from blue lines) have no wave breaking (z0 = 0.014 m, Gt = 0). Blue lines represent cases with incomplete adoption of the wave-breaking parameterization. Cyan lines are the same in both columns. Dashed lines are predictions using the bulk Richardson number theory of Lentz (2004) with Rb = 1. The thicker black dashed line uses the initial conditions of the simulation as the initial conditions of the theory. The thinner colored dashed lines use the plume conditions 10 h after separation from the coast as the initial conditions of the theory with the exception of h0, which is set to the plume thickness. The vertical line is the separation time predicted by the theory using the simulation initial conditions.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Plume dimensions. (a),(b) Mean thickness; (c),(d) mean density difference from water beneath plume; (e),(f) plume width at surface; and (g),(h) offshore position of plume front. (left column) Variations caused by changing the roughness length z0 and holding the TKE flux and Gt constant. (right column) Variations caused by varying the magnitude of TKE flux across the surface (by changing Gt) and holding the roughness length constant. Black lines (nearly indistinguishable from blue lines) have no wave breaking (z0 = 0.014 m, Gt = 0). Blue lines represent cases with incomplete adoption of the wave-breaking parameterization. Cyan lines are the same in both columns. Dashed lines are predictions using the bulk Richardson number theory of Lentz (2004) with Rb = 1. The thicker black dashed line uses the initial conditions of the simulation as the initial conditions of the theory. The thinner colored dashed lines use the plume conditions 10 h after separation from the coast as the initial conditions of the theory with the exception of h0, which is set to the plume thickness. The vertical line is the separation time predicted by the theory using the simulation initial conditions.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Plume dimensions. (a),(b) Mean thickness; (c),(d) mean density difference from water beneath plume; (e),(f) plume width at surface; and (g),(h) offshore position of plume front. (left column) Variations caused by changing the roughness length z0 and holding the TKE flux and Gt constant. (right column) Variations caused by varying the magnitude of TKE flux across the surface (by changing Gt) and holding the roughness length constant. Black lines (nearly indistinguishable from blue lines) have no wave breaking (z0 = 0.014 m, Gt = 0). Blue lines represent cases with incomplete adoption of the wave-breaking parameterization. Cyan lines are the same in both columns. Dashed lines are predictions using the bulk Richardson number theory of Lentz (2004) with Rb = 1. The thicker black dashed line uses the initial conditions of the simulation as the initial conditions of the theory. The thinner colored dashed lines use the plume conditions 10 h after separation from the coast as the initial conditions of the theory with the exception of h0, which is set to the plume thickness. The vertical line is the separation time predicted by the theory using the simulation initial conditions.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
After 25–40 h (depending on the simulation), the buoyant plume detaches from the coast. As it detaches, the plume leaves behind some freshwater in the inner shelf. This occurs in water depths shallower than about 1.5 times the theoretical Ekman layer thickness (computed using the mean turbulent viscosity) and considerably less than the vertical length scale
As discussed in more detail by Fong and Geyer (2001) and Lentz (2004), as the upwelling-favorable winds continue, the river plume moves offshore and both thickens and widens. The increased cross-sectional area of the plume leads to an increased mean density of the plume water (decreased Δρ). Initially, alongshore variability in the plume downstream of the bulge was restricted to scales on the order of the model domain size. After the onset of wind, however, alongshore variability on smaller scales becomes more noticeable (Fig. 2). This causes minor variations in the plume properties unrelated to the two-dimensional evolution discussed in the remainder of this study. This variability is weak, however, and the dominant alongshore variability occurs on length scales much wider than the width of the cross section averaged in this study.
Within the plume, salt is transported vertically by turbulence across most of the width of the plume in simulations with and without wave breaking. This vertical mixing of salt is concentrated in the offshore half and is somewhat correlated with regions of large salinity gradient (as might be expected in a gradient transport model; Fig. 3). This is consistent with the results of Fong and Geyer (2001). The relationship between the location of the salt flux within the plume and the location of entrainment of water into the plume is not immediately obvious. Lentz (2004) suggests that the entrainment occurs within one deformation radius of the plume's offshore edge and is redistributed by lateral and vertical mixing. However, if lateral mixing is limited, the entrainment may occur at the same cross-shore locations as the vertical salt flux. This would suggest that entrainment occurs across about half of the plume width.
b. Effects of wave breaking
This study focuses on times after the plume has detached from the coast (1–2 days after onset of wind). The simulations were not designed to examine in detail the time prior to detachment, which would require more detailed simulation of the wave field and wave–current interaction. At the time of separation from the coast, the plume in the simulation without wave breaking is thinner than the plume in simulations with wave breaking, by about 50% of the no-breaking thickness (Figs. 4a,b). The plume thickens at different rates in each of the simulations. After separation from the coast, the plume in the simulation without wave breaking deepens more quickly than the plume in the simulations with wave breaking. (Figs. 5a,b).

As in Fig. 4, but for rate of change of plume properties. In (g),(h), the thinner dashed lines show dX/dt estimated as the cross-section Ekman transport UE divided by modeled depths 1000-m inboard of the plume front at each time step. The data are filtered with a 24-h boxcar filter. The earliest time shown is the time of separation from the coast plus 24 h. The latest time shown is the time that the plume began to feel the effects of the offshore edge of the model domain.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

As in Fig. 4, but for rate of change of plume properties. In (g),(h), the thinner dashed lines show dX/dt estimated as the cross-section Ekman transport UE divided by modeled depths 1000-m inboard of the plume front at each time step. The data are filtered with a 24-h boxcar filter. The earliest time shown is the time of separation from the coast plus 24 h. The latest time shown is the time that the plume began to feel the effects of the offshore edge of the model domain.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
As in Fig. 4, but for rate of change of plume properties. In (g),(h), the thinner dashed lines show dX/dt estimated as the cross-section Ekman transport UE divided by modeled depths 1000-m inboard of the plume front at each time step. The data are filtered with a 24-h boxcar filter. The earliest time shown is the time of separation from the coast plus 24 h. The latest time shown is the time that the plume began to feel the effects of the offshore edge of the model domain.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
The plume thickness affects the rate at which the plume moves offshore because the wind stress is required to move more water in the case of a thicker plume (Lentz 2004). This causes the plume in the simulation without wave breaking to move offshore at a rate considerably higher than (as much as double) the rate of offshore motion of the plume in the simulations with wave breaking (Figs. 5g,h).
The plume widths are also different immediately after separation from the coast, with wave-breaking simulations having a narrower plume than the no-breaking simulation. The differences in width increase in time. In the no-breaking simulation, the plume continues to widen at rates larger than those in the simulations with breaking (Figs. 5e,f).
The mean density anomaly of the plume is a function of the amount of water entrained into the plume. The differences in cross-sectional area (not shown) between the breaking and no-breaking cases are substantial, but the majority of the differences arise during separation from the coast. Following separation, the mean density anomaly in the absence of wave breaking decreases only slightly faster than the mean density anomaly in the simulations with wave breaking (Figs. 5c,d).
Because wave breaking is parameterized by the addition of TKE at the sea surface, the wave-breaking simulations have higher TKE densities than the simulations without wave breaking (Figs. 6a,b). The dissipation rate of TKE is also increased with wave breaking, but the effect is somewhat modulated by the increased turbulent length scales (5) related to the increased roughness length (Figs. 6c,d). The changes in TKE density and dissipation rate lead to increases in turbulent diffusivity and viscosity (6) of roughly an order of magnitude in the presence of wave breaking (Figs. 6e,f). The increases in turbulent viscosity and diffusivity lead to decreases in vertical gradients of the cross-shelf velocity u, and the salinity (Fig. 7). The magnitude of the momentum flux is constrained by the wind stress, so the increase in turbulent viscosity and the decrease in velocity gradient largely balance each other and do not lead to increased momentum transport in the plume.

Profiles of plume properties taken at the offshore location of the min surface salinity 65 h after the onset of wind. (a),(b) TKE density; (c),(d) dissipation rate of TKE; and (e),(f) turbulent diffusivity. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Same colors as in Fig. 4.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Profiles of plume properties taken at the offshore location of the min surface salinity 65 h after the onset of wind. (a),(b) TKE density; (c),(d) dissipation rate of TKE; and (e),(f) turbulent diffusivity. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Same colors as in Fig. 4.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Profiles of plume properties taken at the offshore location of the min surface salinity 65 h after the onset of wind. (a),(b) TKE density; (c),(d) dissipation rate of TKE; and (e),(f) turbulent diffusivity. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Same colors as in Fig. 4.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Profiles of plume properties taken at the offshore location of the min surface salinity 65 h after the onset of wind. (a),(b) Cross-shelf velocity; (c),(d) salinity; and (e),(f) turbulent viscosity. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Same colors as in Fig. 4.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Profiles of plume properties taken at the offshore location of the min surface salinity 65 h after the onset of wind. (a),(b) Cross-shelf velocity; (c),(d) salinity; and (e),(f) turbulent viscosity. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Same colors as in Fig. 4.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Profiles of plume properties taken at the offshore location of the min surface salinity 65 h after the onset of wind. (a),(b) Cross-shelf velocity; (c),(d) salinity; and (e),(f) turbulent viscosity. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Same colors as in Fig. 4.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
c. Effects of details of wave-breaking parameterization
Within the range of parameters used to define the wave-breaking simulations, there are quantitative, but not substantial qualitative, differences in the results. The main tunable parameters in these simulations of wave breaking are the magnitude of TKE flux through the sea surface and the surface roughness length. Recall that the roughness length is likely proportional to the significant wave height (Terray et al. 1996), so that changes in z0 can be thought of as reflecting changes in Hs. Similarly, many different values of Gt have been estimated from observations (Terray et al. 1996; Feddersen et al. 2007; Jones and Monismith 2008; Gerbi et al. 2009) and it is likely a function of the sea state, with the highest values coinciding with moderately developed seas (Terray et al. 1996). To understand the effects of each parameter, each physical mechanism is examined independently.
If one makes only a half-step toward including wave breaking by changing only one of either the TKE input or the roughness length, very little change is evident in the plume evolution compared to the no-breaking case (cf. blue and black lines in Fig. 4). However, some changes are evident in the turbulent quantities (Fig. 6) that are similar to those found by Carniel et al. (2009) in an idealized, periodic channel model. Allowing TKE flux through the boundary while maintaining a small roughness length leads to increased TKE density and increased dissipation rates, and slightly increased turbulent viscosities and diffusivities. Alternatively, increasing the roughness length without allowing TKE flux through the sea surface decreases the dissipation rate slightly, as predicted by (5). This leads to increased turbulent diffusivity (6). Even with the decreased dissipation rate, the magnitude of TKE in the boundary layer remains largely unchanged.
In contrast to varying only roughness length or TKE input, increasing both to provide a more realistic parameterization of the effects of wave breaking causes substantial changes in plume evolution. Both the TKE flux and the increased roughness length are important, and varying either one within reasonable ranges for the ocean leads to similar changes in plume width, thickness, and density. If TKE flux through the boundary is held fixed, then increasing the roughness length leads to increases in turbulent viscosity and diffusivity (Fig. 6, left column). Similarly, if the roughness length is set to an appropriate value, then increasing the TKE flux through the boundary also leads to increases in turbulent viscosity and diffusivity (Fig. 6, right column). One minor difference is evident in the turbulent quantities for the two threads of this experiment. For a fixed value of Gt, when the roughness lengths are increased, the dissipation rates in the uppermost grid cells decrease (Figs. 6c,d). This is a direct result of (5), and causes TKE densities to increase because less TKE has been dissipated. Increasing the TKE flux through the sea surface while keeping z0 fixed at 0.61 m also leads to increased TKE density and to larger dissipation rates at all depths. In this case the increased TKE is caused by the injection of additional TKE, and not by a lack of dissipation. In both sets of simulations, increasing either the roughness length or the TKE input from wave breaking increases turbulent viscosities and diffusivities.
Plume dimensions and cross-shore location are also affected by the details of the turbulence parameterization (Figs. 4 and 8). At all times after the onset of winds, the simulations with larger wave-breaking parameters (larger TKE input or larger roughness length) are thicker and narrower, and their offshore edges are less far from the coast. Similarly, after the plume front has propagated to an arbitrary distance from the coast, the simulations with larger wave-breaking parameters are thicker and narrower (Fig. 8). For the simulations with wave breaking (cases 3, 4, 5, 7, and 8), the plume under the most energetic breaking is 10%–20% thicker and from ⅔ to ½ of the width of the plume under the least energetic breaking. Because offshore propagation speed is related to plume thickness, the rate at which the plume moves offshore is also sensitive to the details of the wave-breaking parameterization. The plume with the least energetic breaking moves offshore about 30% faster than the plume with the most energetic wave breaking. Similarly, the offshore front of the plume with no wave breaking travels offshore about twice as fast as the plume in the most energetic breaking case. In addition to likely consequences for cross-shore transport and exchange, this has practical importance in models with narrow cross-shore domains and suggests that the turbulence parameterization can influence whether a plume is likely to propagate out of the model domain.

Comparison of mean plume properties at fixed times (solid lines) and fixed offshore positions (dashed lines). (a),(b) Mean plume thickness; (c),(d) plume width; and (e),(f) time are shown. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Solid lines show properties 65 h after the start of the simulation. Dashed lines show properties when the plume front is 55 km offshore. Symbols differentiate the parameters in the turbulence closure.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Comparison of mean plume properties at fixed times (solid lines) and fixed offshore positions (dashed lines). (a),(b) Mean plume thickness; (c),(d) plume width; and (e),(f) time are shown. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Solid lines show properties 65 h after the start of the simulation. Dashed lines show properties when the plume front is 55 km offshore. Symbols differentiate the parameters in the turbulence closure.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Comparison of mean plume properties at fixed times (solid lines) and fixed offshore positions (dashed lines). (a),(b) Mean plume thickness; (c),(d) plume width; and (e),(f) time are shown. (left column) Variations caused by changing the roughness length and (right column) variations caused by changing the magnitude of TKE flux across the surface are shown. Solid lines show properties 65 h after the start of the simulation. Dashed lines show properties when the plume front is 55 km offshore. Symbols differentiate the parameters in the turbulence closure.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
4. Discussion
a. Comparison with bulk Richardson number theory




One difficulty in comparing the simulations to the theory is that the theory is written for an infinitely deep ocean. There are geometric changes associated with this limitation but also dynamic ones. The geometry can be handled in a straightforward way following Lentz's derivation but using a sloping bottom. Additional parameters describing the bottom slope and initial slope of the plume front are necessary. If the initial plume width, cross-sectional area, and depth are held constant, this modification has only minimal effects that are caused by changing the cross-sectional area of the fluid that is entrained immediately after the onset of winds. The time that the plume separates from the coast in the modified theory is slightly later than the time in the unmodified theory (by less than two hours). The more substantial influence of the sea floor on nearshore plume evolution is through the bed stress. In the simulations, the bed stress decreases the cross-shore transport near the coast and causes water to be left behind when the plume separates from the coast. The idealized plume in the theory is unable to experience these dynamics and does not predict the jumps in plume properties at the time of separation from the coast.
An additional difficulty in comparing the Lentz theory with the simulations is the calculation of the bulk Richardson number. In principle, one could compute Rb from the model results. In practice, the computed values are very sensitive to the way that the plume base is defined. For the definitions used here, the case with no wave breaking had Rb between 2 and 3, although minor changes could give Rb less than 1. The simulations with wave breaking had much larger values for Rb than the no-breaking simulations, which is consistent with the turbulence being generated by a mechanism other than shear instabilities.
Lentz's theory reproduces the numerical results of Fong and Geyer (2001) much better than it reproduces the results of this study, even in a no-breaking case when the Lentz theory is initialized using values after separation from the coast. This indicates differences between the Fong and Geyer simulations and the no-breaking simulation in this study. Reasons for these differences are not immediately obvious. Three possibilities are geometry, grid resolution, and turbulence closure. The Fong and Geyer simulations used a deeper coastal wall, so that the plume was not attached to the bottom and was less affected by bottom boundary layer turbulence. This surface-trapped geometry is much more similar to the Lentz geometry than is the bottom-attached geometry in our simulations. However, after the plume has detached from the coast and the water is sufficiently deep, one might expect these geometric differences to be less important. A second difference between Fong and Geyer (2001) and this study is grid resolution, both horizontal and vertical. This study uses a model with near-surface grid spacing of about 20 cm in 25 m of water. In the model of Fong and Geyer, the authors write that near the surface “resolution is better than 1 m” (Fong and Geyer 2001, p. 1070). Cross-shore grid spacing was also a factor of 2–3 larger in the simulations of Fong and Geyer than in these simulations. It is possible that reduced vertical resolution in their model led to smoothed velocity and density fields that increased gradient Richardson numbers and reduced mixing. Finally, Fong and Geyer used the Mellor–Yamada turbulence closure (Mellor and Yamada 1982), and this study used k–ɛ (Jones and Launder 1972). Warner et al. (2005) showed that in some test simulations (although not the deepening of a surface boundary layer) turbulent diffusivities computed using Mellor–Yamada were smaller than those computed using k–ɛ by a factor of about 2. Smaller turbulent diffusivities would lead to slower vertical mixing of the plume and slower thickening rate. This is consistent with the discrepancy between this study, in which the plume thickened faster than Lentz's prediction, and Fong and Geyer's study, in which the plume thickened slightly slower than Lentz's prediction.
b. Plume widening



(a),(c) Plume-widening rates for the simulation with no wave breaking (case 1) and moderate wave breaking (case 4). Case 4 is representative of the qualitative features in all of the wave-breaking simulations. Solid lines are the widening rate of the plume. Dashed lines are the widening rate expected from divergence of vertically averaged Ekman velocities in the plume (15). (b),(d) Horizontal dispersion coefficients for the simulation with no wave breaking (case 1) and with moderate wave breaking (case 4). The solid lines are Kx computed from the simulations using the second moment of the freshwater concentration and (16). The dashed lines are Kx predicted from vertical structures of Kz and u using (17). The data are filtered with a 24-h boxcar filter. The earliest time shown is the time of separation from the coast plus 24 h. The latest time shown is the time that the plume began to feel the effects of the offshore edge of the model domain.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

(a),(c) Plume-widening rates for the simulation with no wave breaking (case 1) and moderate wave breaking (case 4). Case 4 is representative of the qualitative features in all of the wave-breaking simulations. Solid lines are the widening rate of the plume. Dashed lines are the widening rate expected from divergence of vertically averaged Ekman velocities in the plume (15). (b),(d) Horizontal dispersion coefficients for the simulation with no wave breaking (case 1) and with moderate wave breaking (case 4). The solid lines are Kx computed from the simulations using the second moment of the freshwater concentration and (16). The dashed lines are Kx predicted from vertical structures of Kz and u using (17). The data are filtered with a 24-h boxcar filter. The earliest time shown is the time of separation from the coast plus 24 h. The latest time shown is the time that the plume began to feel the effects of the offshore edge of the model domain.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
(a),(c) Plume-widening rates for the simulation with no wave breaking (case 1) and moderate wave breaking (case 4). Case 4 is representative of the qualitative features in all of the wave-breaking simulations. Solid lines are the widening rate of the plume. Dashed lines are the widening rate expected from divergence of vertically averaged Ekman velocities in the plume (15). (b),(d) Horizontal dispersion coefficients for the simulation with no wave breaking (case 1) and with moderate wave breaking (case 4). The solid lines are Kx computed from the simulations using the second moment of the freshwater concentration and (16). The dashed lines are Kx predicted from vertical structures of Kz and u using (17). The data are filtered with a 24-h boxcar filter. The earliest time shown is the time of separation from the coast plus 24 h. The latest time shown is the time that the plume began to feel the effects of the offshore edge of the model domain.
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Figure 9 shows results for two representative cases, one with no wave breaking (case 1) and one with moderate wave breaking (case 4). Other wave-breaking cases are qualitatively similar to case 4. For the majority of the simulation periods, Ekman widening accounts for more than 75% of the simulated widening of the plume. Toward the ends of the simulations, the simulated widening rate grows away from the Ekman divergence rate; it is not immediately obvious whether this is related to the age of the plume or the approach of the outer edge of the model domain.
One possible cause of widening unrelated to Ekman divergence is ageostrophic gravitational slumping caused by the cross-shore density gradient. Analysis of the terms in the cross-shore momentum budget show that in the upper offshore quadrant of the plume, shear stress is an important term balancing the pressure gradient (not shown). This is consistent with the notion of gravitational slumping. However, in all simulations, the other three quadrants show relationships more consistent with combinations of geostrophic and Ekman balances; the relationship between gravitational collapse and plume widening is unclear.
Another aspect of plume widening that has received attention in the past is shear dispersion. It is not a dynamical process in itself, but is the aggregate effect of multiple dynamical processes on a tracer patch. Shear dispersion plays a critical role in Lentz's theory of plume widening. The results of this study suggest that it is much more important in simulations with no wave breaking than in simulations with wave breaking (Fig. 9). This is because shear dispersion is inversely related to the magnitude of the turbulent viscosity, which is much larger in the presence of wave breaking than in its absence.






Comparison of Kx computed using (16) and (17) shows that shear dispersion is likely an important process in widening the plume with no breaking (Fig. 9). In the plume with wave breaking, however, shear dispersion may play a role early in the plume's development, but that role diminishes quickly as the plume moves offshore. Instead, the plume with breaking spreads in a more slab-like way than the plume with no breaking. This is caused by the large turbulent viscosity in the plume under breaking waves, which minimizes vertical gradients and causes shear dispersion to be weak as shown in (17).
c. Plume thickening








Entrainment rates are of similar magnitude in all simulations and thinning rates are of similar magnitude in all simulations. For the no-breaking case, the entrainment rates are on the high side of the distribution of entrainment rates and the thinning rates are on the low side of the distribution of thinning rates. Combined, these lead to faster plume thickening (by a factor of about 2) in the no-breaking case after the plume is detached from the coast (Fig. 10). However, because of differences prior to detachment, overall plume thickness is larger for the cases with wave breaking throughout the simulations.

Rates of plume thickening. (a),(c) Time series for cases with and without wave breaking are shown. (b) The average rates for each simulation between 12 h after the plume separated from the coast and the time that it began to be affected by the offshore boundary of the model. Case 1 has no wave breaking and in cases 2 and 6 wave breaking has been included in only one of the parameters (roughness length or energy input). Thick lines show
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1

Rates of plume thickening. (a),(c) Time series for cases with and without wave breaking are shown. (b) The average rates for each simulation between 12 h after the plume separated from the coast and the time that it began to be affected by the offshore boundary of the model. Case 1 has no wave breaking and in cases 2 and 6 wave breaking has been included in only one of the parameters (roughness length or energy input). Thick lines show
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
Rates of plume thickening. (a),(c) Time series for cases with and without wave breaking are shown. (b) The average rates for each simulation between 12 h after the plume separated from the coast and the time that it began to be affected by the offshore boundary of the model. Case 1 has no wave breaking and in cases 2 and 6 wave breaking has been included in only one of the parameters (roughness length or energy input). Thick lines show
Citation: Journal of Physical Oceanography 43, 9; 10.1175/JPO-D-12-0185.1
A kinematic reason explains the fact that the thinning rate
Given the substantially more energetic turbulence in the wave-breaking simulations, the similarity of entrainment rate
d. Effects of the coastal wall
The model domain used in this study was initially chosen for simplicity and numerical stability. An unanticipated result is that the offshore characteristics of the buoyant plume in upwelling-favorable winds are affected substantially by the evolution of the plume while it is still attached to the coast. The presence of a coastal wall is likely to have some influence on the plume, particularly in the velocity structure near the wall, but it is possible that the wall does not alter the first-order dynamics of mixing, thickening, and widening. Prior to the onset of wind, the simulated plume base intersects the seafloor about 5-km offshore of the wall. This is of the same order as the deformation radius. According to the classification of Avicola and Huq (2002), the plume is initially bottom trapped, although the part of parameter space occupied by the plume was not explored by those authors. In simulations and laboratory experiments for which there is no appreciable coastal wall, both Garvine (2001) and Lentz and Helfrich (2002) suggest that most of the along-shelf transport happens in the part of the plume offshore of where the sloping isopycnals first intersect the bottom. Garvine does point out some changes in salinities and transports in cases with a deeper coastal wall, but the overall structure of the simulations with a coastal wall is similar to that without a wall, but with the inner wedge of slow-flowing water removed.
In the study discussed here, the foot of the plume, where the plume base intersects the seafloor, is at a depth of about 15 m. Using the simulated downshelf plume transport and density, the scaling of Yankovsky and Chapman (1997) and Lentz and Helfrich (2002) predicts a depth of about 12 m, which is on the sloping part of the shelf in this domain. Augmenting the transport to allow for some downshelf flow in the wedge eliminated by the wall would increase this depth by up to one meter. Thus, with the wall, the simulations have the foot of the plume about 2–3-km offshore and 2–3-m (20%) deeper than would be expected based on the scaling for a bottom that slopes steadily back to the shore. Importantly, the plume foot in both the scaling and simulations is offshore of the wall. In the simulations, freshwater is left behind on the shelf as the plume advects offshore. This limited cross-shelf transport suggests that the water depth in the simulation is smaller than likely depths of frictional influence (Ekman 1905; Madsen 1977). We interpret this to mean that with respect to cross-shelf transport caused by along-shelf winds, the model has an effective coastal wall at depths set by the Ekman layer thickness. This effective wall is in deeper water than the inshore edge of the model domain, and the coastal wall of the model may not play a major role in the response of the plume to along-shelf winds [see Fewings et al. (2008) for a discussion of effects of along-shelf winds on inner-shelf circulation]. The fact that the base of the plume at the time of detachment is at a depth similar to the wall depth does suggest that caution is necessary in this interpretation and that future simulations should examine this more closely.
5. Conclusions
This study examines both the dynamics of a buoyant plume during upwelling-favorable winds and the effects of turbulence related to wind-driven wave breaking on plume evolution. Inclusion of wave breaking in the turbulence parameterization has nonnegligible effects on plume evolution. Specifically, the plume with wave breaking is thicker and narrower than the plume without wave breaking. The different thicknesses lead to differences in the rate at which the plume is blown offshore. These differences are likely to have effects on real-world circulation and on numerical models with limited cross-shore domains.
In all simulations, after detachment from the coast, the plume widens dominantly through Ekman divergence. Even with this widening, the plume thickens throughout the simulations because entrainment rates are faster than thinning rates related to widening.
In simulations that include wave breaking, the plume is much more vertically homogeneous than the no-breaking plume. This increased vertical homogeneity suppresses the role of shear dispersion as the plume widens in simulations that include wave breaking.
In parameterizing the wave breaking, both the surface roughness and the TKE flux across the sea surface must increase from their no-breaking values. Within realistic parameter ranges, the above effects are magnified as either roughness length or TKE flux is amplified.
The Richardson number–based theory of Lentz (2004) does a reasonable job of predicting rates of many aspects of plume evolution, but it does not capture the details of the detachment of the plume from the coast and it underpredicts the rate of plume thickening.
The wave-breaking parameterization used in this study is a simple one that can be easily incorporated into numerical models without simulating the full wave field. The fact that including this parameterization leads to changes in the circulation suggests that further study of this and other wave parameterizations is warranted in future work.
Acknowledgments
Funding for this work was provided by the Rutgers University Institute of Marine and Coastal Sciences Postdoctoral Fellowship and by U. S. National Science Foundation awards OCE-0238957 and OCE-0825833. Joe Jurisa graciously supplied the model grid and forcing. Eli Hunter and Weifang Zhang gave considerable technical help in the early stages of this work. John Warner aided in the understanding the numerical details of the turbulence parameterizations, and Hernan Arango gave much appreciated assistance and guidance. Conversations with Rocky Geyer and Steve Lentz and the comments of an anonymous reviewer strengthened this manuscript.
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