the Creative Commons Attribution 4.0 License.
the Creative Commons Attribution 4.0 License.
Global submesoscale diagnosis using alongtrack satellite altimetry
Rosemary Morrow
MarieIsabelle Pujol
Gérald Dibarboure
Clément Ubelmann
The ocean's sea surface height (SSH) field is a complex mix of motions in geostrophic balance and unbalanced motions including highfrequency tides, internal tides, and internal gravity waves. Barotropic tides are well estimated for altimetric SSH in the open ocean, but the SSH signals of internal tides remain. The transition scale, L_{t}, at which these unbalanced ageostrophic motions dominate balanced geostrophic motions is estimated for the first time using satellite altimetry. L_{t} is critical to define the spatial scales above which surface geostrophic currents can be inferred from SSH gradients. We use a statistical approach based on the analysis of 1 Hz altimetric SSH wavenumber spectra to obtain four geophysical parameters that vary regionally and seasonally: the background error, the spectral slope in the mesoscale range, a second spectral slope at smaller scales, and L_{t}. The mesoscale slope and error levels are similar to previous studies based on satellite altimetry. The break in the wavenumber spectra to a flatter spectral slope can only be estimated in midlatitude regions where the signal exceeds the altimetric noise level. Small values of L_{t} are observed in regions of energetic mesoscale activity, while larger values are observed towards low latitudes and regions of lower mesoscale activity. These results are consistent with recent analyses of in situ observations and highresolution models. Limitations of our results and implications for reprocessed nadir and future swath altimetric missions are discussed.
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The spatial scale of the transition from geostrophically balanced to unbalanced motions is estimated regionally from satellite altimetry data for the first time.

Results agree with in situ observations and predictions from highresolution models including tidal forcing.
Global maps of multimission satellite altimetry sea surface height (SSH) are widely used in the ocean community, resolving the larger mesoscale dynamic scales greater than 150–200 km in wavelength (Chelton et al., 2011; Ballarotta et al., 2019). Our understanding of upperocean dynamics in the smaller mesoscale to submesoscale wavelength range (roughly 15–200 km) has seen great improvement in recent years due to the combined use of in situ measurements and stateoftheart highresolution ocean models (Sasaki et al 2014; Rocha et al., 2016a, b; Qiu et al., 2017, 2018; Klein et al., 2019). Processes at these spatial scales are essential in determining the upperocean energy budget through the kinetic energy cascade and energy dissipation (e.g., Ferrari and Wunsch, 2009; McWilliams, 2016; Rocha et al., 2016a). Additionally, they play a critical role in connecting the surface ocean with the interior through the modulation of the mixed layer seasonality and heat transfer (Capet et al., 2008; Klein et al., 2008; Thomas et al., 2008; Su et al., 2020; Siegelman, 2020).
Kinetic energy and SSH variance at these 15–200 km spatial scales are partitioned between balanced (geostrophic) and unbalanced (ageostrophic) motions. Quantifying the relative importance of each component of the flow across the ocean is crucial for the correct calculation of geostrophic currents from SSH for all satellite altimetry missions, including the upcoming Surface Water and Ocean Topography (SWOT) highresolution altimetry mission. Barotropic tides are well estimated for altimetric SSH in the open ocean, but the SSH signals of other ageostrophic highfrequency motions remain. Recent results show that, depending on the location and season, the energy and SSH signature associated with unbalanced motions (including nearinertial flows, internal tides, and inertiagravity waves) can overcome that of the balanced motions at smaller scales (Rocha et al., 2016b; Qiu et al., 2018; Chereskin et al., 2019), imposing a wavelength boundary beyond which SSH measurements provided by satellite altimetry can no longer be used to infer upperocean geostrophic flows. Documenting the spatial scale at which this occurs (the socalled transition scale, L_{t}) for the world ocean has become one of the focal points of recent efforts in the satellite altimetry and SWOT communities (Qiu et al., 2017, 2018; Wang et al., 2018).
Tackling this problem needs highresolution ocean data, ideally in space and time. To date, progress on documenting L_{t} has been achieved exclusively through the use of in situ data in a few limited regions and highresolution global models, given the insufficient time–space resolution of sea surface height (SSH) maps from multimission altimetry (these maps have decorrelation scales of ∼ 15 d and 200 km; Chelton et al., 2011; Ballarotta et al., 2019). In constructing the altimetric SSH maps, the spatial scales below 200 km are severely smoothed by the optimal interpolation algorithm, conserving only a small portion of the signal at small wavelengths (e.g., Ray and Zaron, 2016; Dufau et al., 2016).
Alongtrack altimeter data have a finer spatial resolution than the mapped data, and recent reprocessing now allows us to access oceanic scales down to 50–70 km for Jasonclass altimeters and 35–50 km for SARAL/AltiKa (Dufau et al., 2016; Vergara et al., 2019; Lawrence and Callies, 2022). Most of the unbalanced internal tide energy, and some of the internal gravity wave energy, occurs at scales larger than 40 km wavelength and can be observed with the latest alongtrack altimetry data (Zaron, 2019). Using alongtrack SSH data from recent altimetric missions and a statistical approach based on wavenumber spectral analysis, this paper will document the global distribution of L_{t}. Considering the noise characteristics of different altimetric missions, we limit our L_{t} estimates to regions where they exceed the local observability wavelength. We also take into account the uncertainties associated with the altimetric measurements and the influence of this error in our estimates.
Our satellite altimetry wavenumber spectral L_{t} estimates are consistent with previous studies based on modeling or in situ analysis: small values of L_{t} are observed in the highly energetic western boundary current systems and in the vicinity of the Antarctic Circumpolar Current (ACC) (Rocha et al., 2016b; Qiu et al., 2018), suggesting a dominance of geostrophically balanced motions on the surface kinetic energy field. On the other hand, L_{t} is larger in the vast intertropical ocean (20^{∘} S–20^{∘} N), suggesting a significant contribution of energetic wavetype motions to the upperocean SSH field here.
2.1 Sea surface height (SSH) 1 Hz data
Alongtrack SSH data from two missions with different technologies (Jason3 – J3 conventional nadir altimetry; Sentinel3A – S3 synthetic aperture radar nadir altimetry) are analyzed at a global scale. The time period analyzed spans their common 4year period from March 2015 to March 2019.
Alongtrack SSH observations are maintained at their original 1 Hz observational position with 7 km spacing and are corrected for all instrumental, environmental, and geophysical corrections (Taburet et al., 2019). Only timedependent variations of alongtrack SSH measurements are considered, following Stammer (1997), Le Traon et al. (2008), and Xu and Fu (2011, 2012). Since S3 is on a new repeat track, sea level anomalies (SLAs) are computed for both missions by subtracting the mean sea surface model CNES_CLS_2015 (Schaeffer et al., 2016; Pujol et al., 2018) from the alongtrack SSH measurements.
2.2 Unbiased wavenumber spectrum and spectral shape analysis
In order to obtain regionally varying spectral estimates, we apply the methodology described in Vergara et al. (2019). We sample the alongtrack SSH measurements inside a $\mathrm{12}{}^{\circ}\times \mathrm{12}{}^{\circ}$ regional box and then subsample the tracks of each pass inside this regional box to a constant length of 1200 km. Individual spectral estimates are then obtained by performing a spatial fast Fourier transform (FFT) on each 1200 km subsample. A Tukey window of 0.5 width is applied to the data in order to minimize boundary effects when performing the FFT over the finite dataset (Tchilibou et al., 2018). Data overlapping is allowed but limited to a 250 km overlap. We verified that the overlapping scale is larger than the local spatial decorrelation scale (estimated from the first zero crossing of the local autocorrelation function) to avoid an artificial overrepresentation of certain spatial scales introduced by the overlapping. The regional spectrum is then obtained by averaging the individual spectral estimates inside the $\mathrm{12}{}^{\circ}\times \mathrm{12}{}^{\circ}$ box. Global coverage is obtained by iteratively repeating this process every 2^{∘} in longitude and in latitude.
For each average spectrum, we estimate the 1 Hz error level by fitting a straight flat line to the SLA power spectral density (PSD) level for wavelengths between 15 and 30 km; a similar technique was applied by Xu and Fu (2011), Dufau et al. (2016), and Vergara et al. (2019). This straight line fit is horizontal for J2 and S3 (white noise). The spectrum shape of S3 shows a slight slope over the 15 to 30 km wavelength range (redtype noise), which is a characteristic effect of the wind wave field on the synthetic aperture radar (SAR) measurements (Moreau et al., 2018). The differences in the unbiased spectrum and our methodology when applying either a red noise or white noise fit to the 15–30 km band of S3 data are explored in Appendix A.
The spatial patterns of the noise levels for Jason3 and Sentinel3A (Figs. 1a, 2a) approximately follow the spatial distribution of significant wave height (Dufau et al., 2016), with peaks in the regions of high sea state in the North Atlantic, Southern Ocean, and off the coast of southern Africa. The increased SSH noise of the current generation of satellite altimeters due to surface waves is well documented for both radar and SAR altimeters (Tran et al., 2002; Moreau et al., 2018, 2021). The latitudinal trend (Figs. 1c, 2c) shows an increase in the noise levels from the Equator towards the poles, in agreement with previous studies (Dufau et al., 2016; Vergara et al. 2019). Annualmean Jason3 wavenumber spectra noise levels range from 1.8 cm root mean square (rms) at the Equator to 2.8 cm rms in the Southern Ocean, whereas the Sentinel3 SAR noise floor is smaller (1.4 cm rms at the Equator and 2.3 cm rms in the Southern Ocean). In general, noise levels observed for both satellites indeed show local maxima in the vicinity of the Gulf Stream, Kuroshio extension, and the ACC, related to local geophysical effects such as rain cells and more importantly the local wind wave field. Despite the relatively higher noise levels observed in these regions, the mesoscale signal is also strong, and therefore the signaltonoise ratio remains favorable over these highly energetic regions (Figs. 1b and 2b).
This computed flat noise spectral level is then subtracted from the PSD estimates over the entire wavenumber range, which provides an unbiased estimate of the regionally averaged spectrum (Xu and Fu, 2012). We then analyze the unbiased spectrum in order to determine two spectral slopes, taking into account the variations of spectral slope values in the fit. The mesoscale spectral slope is calculated within a geographically variable wavelength range: the maximum mesoscale wavelength is where the spectral shape significantly (at 95 %) departs from the observed mesoscale spectral slope (usually occurring at wavelengths larger than 500 km), and the minimum regional wavelength limit is based on the local eddy length scale, as in Vergara et al. (2019). Where possible, a second smallerscale spectral slope is determined at wavenumbers between 30 km wavelength and the lower mesoscale spectral slope limit.
In order to analyze the two slopes from the regional unbiased spectrum shape, we leastsquarefit a linear model to the average spectrum obtained from observations in the logarithmic space, defined as
where x corresponds to the observed SSH values after applying the Fourier transform, a_{1} and a_{2} are the intercepts, and b_{1} and b_{2} are the spectral slopes. This model is therefore defined as the sum of two straight lines in the log–log space, each one representing a different part of the spectrum and capturing a different variability regime. The benefit of performing a simultaneous double fit for analyzing the spectral shape compared to successive individual leastsquare fits is twofold: (1) considering the sum of two linear models preserves the shape of the observed unbiased spectrum and also allows for curvature where there is a shift in the spectral slope, representing the observed spectrum in a realistic manner. (2) The uncertainty associated with our spectral slope estimates is continuous across the entire wavelength range considered by the model, which is not the case if we consider two successive fits that will minimize the fit errors only for a prescribed wavelength range. We apply this model to each regionally averaged unbiased spectrum, between 30 km wavelength and the upper mesoscale wavelength, following Vergara et al. (2019).
The fitting algorithm is initialized using a first guess for the spectral slopes across the wavelength range: for the mesoscale spectral slope we follow Vergara et al. (2019) using the change in spectral slope at low wavenumber and the local eddy length scale as the wavelength bounds. The smallscale fit is initially computed as a linear fit between the spectral signal at 30 km wavelength and the signal at the local eddy length scale. These values are used for the first iteration and are recomputed at each step of the leastsquare minimization procedure to best resolve the double fit, maintaining the end points of the 30 km wavelength and the slope change at low wavenumber boundaries. The minimization process then adjusts the mesoscale and smallscale intercept to better capture the overall shape of the unbiased PSD.
An example of the results of this twoslope methodology is presented in Fig. 3a for a region in the North Pacific Ocean in comparison to the singlemesoscaleslope fit of Vergara et al. (2019) in Fig. 3b. The oneslope mesoscale fit in Fig. 3b follows the wavenumber curve well within the defined mesoscale range (vertical dashed lines) with a slope of k^{−4.5}, and a change in spectral slope is clearly evident at scales smaller than 120 km in wavelength. The twoslope mesoscale fit is slightly steeper in the mesoscale range (k^{−4.9}), but the change in slope is well captured at smaller scales down to 30 km in wavelength (k^{−2.5}), and the sum of the two linear fits follows the change in curvature of the observed spectral slope (bold solid line). The twoslope linear fit is constrained by inverseweighting the observations according to the confidence interval of the average spectrum (gray shading in Fig. 3a). Using the 4 years of data and multiple tracks within our $\mathrm{12}{}^{\circ}\times \mathrm{12}{}^{\circ}$ box, we can expect the linear fit to be well constrained in the mesoscale wavelength range and the error associated with the estimates of the slope and the intercept to be relatively low. On the other hand, since the confidence interval becomes larger towards smaller wavenumbers (a consequence of subtracting the noise level), the uncertainty in the slope and intercept estimates increases towards shorter wavelengths, and the smallerscale slope fit has higher uncertainty.
2.3 Observability wavelength
The observable wavelength (OWL) is defined as the threshold wavelength where the SSH spectral signal exceeds this flat noise level (i.e., SNR >1; SNR: signaltonoise ratio). Given that the first Rossby radius of deformation and the eddy length scales (Eden, 2007) both generally decrease towards higher latitudes whereas the noise level increases due to higher sea state, one would expect that the OWL scales would increase towards high latitudes. The zonal average of the observable wavelength (OWL) for both satellites is summarized in Figs. 1d and 2d. The combined regional variabilities of the mesoscale spectral slope and the noise levels both contribute to the complex observed patterns of the OWL (Figs. 1b, 2b). For regions with strong mesoscale variability signals (e.g., Southern Ocean, Gulf Stream, Kuroshio, Agulhas current), the local observable wavelength is short despite relatively high noise levels. The observable wavelength for Jason3 varies from 40 km in the western tropical Pacific to 50–60 km in the western boundary currents and can reach 90 km in the lowenergy eastern North Pacific due to the higher noise levels. Zonal averages across these regional patterns lead to values of 60–70 km (Fig. 1d), whereas the zonally averaged OWL for Sentinel3 reaches 65–70 km in the midlatitudes but only 50 km in the equatorial band.
2.4 Uncertainty analysis for the intercept wavelength
In addition to the fitting parameters for the model described by Eq. (1), we compute the uncertainty associated with the leastsquare fitting, related to each parameter. This helps us in the interpretation of the results by allowing us to estimate the validity of the spectral slope values for the large and small wavelength ranges and also their intercept.
The uncertainty (or error) emerges from the confidence interval envelope obtained when computing the regional average spectrum (gray shaded area in Fig. 3a and b). On this log scale, the 95 % envelope of the average PSD appears to grow considerably towards high wavenumbers. This is a consequence of the denoising method: the 95 % envelope is impacted by the subtraction of the noise plateau computed between 15 and 30 km wavelength, and the effect will become more evident in the highwavenumber part of the spectrum given that the smaller amplitude of the PSD values is closer to the noise level.
Using the uncertainty estimates from the mesoscale and smallscale spectral slopes, we can determine the error associated with their intercept by propagating the uncertainty as
where L_{t} is the intercept wavelength, a_{1} and a_{2} the slopes, and b_{1} and b_{2} the intercepts of the two lines fitted to the observed PSD. The 1σ deviations from the fitted parameters a and b are denoted by δ.
In this section, we analyze the temporal mean geographical distribution of the mesoscale and smallscale spectral slopes computed using the model described by Eq. (1). Additionally, we estimate (when possible) the intercept wavelength between the two slopes in the spectral space. This characteristic intercept wavelength may be considered a firstorder approach to the transition scale (L_{t}) calculated from model analyses by Qiu et al. (2018) and from in situ observations in Qiu et al. (2017). However, we do not analytically separate the contributions of the first three baroclinic modes of internal gravity waves (IGWs) as in Qiu et al. (2018), so the intercept scale that we present here is a statistical position from SSH wavenumber spectral slope changes, and not a dynamical calculation. The spectral slope changes can delineate the separation of mesoscale balanced motions from a combination of smallscale balanced motions, unbalanced motions, and altimetric observation errors.
3.1 Mesoscale and smallscale spectral slopes
The methodology used to analyze the spectral shape does not explicitly separate the geostrophically balanced mesoscale regimes from smallscale regions of the spectrum. However, it allows us to infer their associated contributions to the observed PSD by means of the change in spectral slopes and their intercept. We will refer to the results of either part of the bilinear model as mesoscale and smallscale spectral slopes.
3.1.1 Mesoscale spectral slope
The geographical distribution of the mesoscale spectral slope values is very close for the two missions analyzed (Figs. 4a and 5a), showing larger slope values over the western boundary current systems, as well as the Antarctic Circumpolar Current, indicative of the energetic mesoscale circulation that is observed in both regions. The observed spectral slope values in these highly energetic regions vary between k^{−4} and k^{−5} for both Jason3 and Sentinel3A and are in general agreement with the distribution reported in Vergara et al. (2019). Conversely, the lowest spectral slope values are observed in the intertropical band (equatorward of 15^{∘}), with slope values between k^{−2} and k^{−3}, also consistent with values obtained using a simple fit methodology (Xu and Fu, 2012; Dufau et al., 2016; Vergara et al., 2019).
In some regions, the mesoscale spectral slope values obtained are slightly lower (flatter slopes) for Sentinel3A than for Jason3. This could be related to the white noise level model used for S3A. Red noise is often observed in the 1 Hz SAR data at small wavelengths related to wave and swell impacts on the signal processing (Moreau et al., 2018). Our methodology of removing a white noise level computed over the 15–30 km wavelength range could impact the unbiased PSD up to ∼ 150 km wavelength, leaving a remanent of energy associated with the SAR processing of ocean swell effects (Moreau et al., 2021) over the mesoscale and smallscale range that will act to flatten the spectral slope at the mesoscale wavelength range. We tested the differences in the spectral PSD levels related to fitting a red or white noise model for S3A in Appendix A (illustrated in Fig. A1). In general, the difference in the unbiased curves appears at high wavenumbers having a smaller PSD amplitude, but the differences in the mesoscale spectral slope are generally small.
Indeed, the zonal annualmean distribution of the mesoscale spectral slope values is the same for both missions (Figs. 4c and 5c, in blue), showing a profile that is nearly symmetrical around the Equator, with values increasing poleward, ranging between ${k}^{\mathrm{11}/\mathrm{3}}$ and k^{−5} for latitudes poleward of 20^{∘} S and 30^{∘} N and decreasing sharply towards k^{−2} around the Equator. These values confirm that the midlatitude SSH mesoscale spectral slopes vary within the regimes of surface quasigeostrophy (sQG) to quasigeostrophy (QG) dynamics, whereas the tropical band has much flatter spectral slopes that reach k^{−2}, in agreement with previous altimetric studies (Xu and Fu, 2012; Vergara et al., 2019).
3.1.2 Smallscale spectral slope
The originality of this method is to estimate the second smallscale slope from the wavenumber spectra when possible. The wavelength range for this smallscale slope varies geographically but is generally between 30 and ∼ 150 km wavelength. This region of the spectrum is where we expect to observe the upperocean dynamics shifting from a regime dominated by geostrophically balanced motions (eddylike mesoscale structures in an sQG or QG regime) towards a wavelike regime where the SSH variability is dominated by unbalanced motions (i.e., IGWs, coherent internal tides, and the cascade of energy from nonphaselocked internal tides). For the current generation of satellite altimetry observations, these 30–150 km wavelengths of the SSH spectrum can also be influenced by residual altimetric geophysical errors and may approach the observability capabilities of each instrument (OWL). Therefore, the results of the smallscale SSH spectral slope estimates need to be interpreted in light of their inherent limitations, taking into account the uncertainty in the slope determination, residual altimetric errors, and the local observable wavelength.
On average, the linearly fitted smallscale spectral slopes vary between k^{−1} and k^{−2} for both S3A and J3 (Figs. 4b and 5b), with slightly higher slope values over the western part of each ocean basin (around k^{−2} at 30^{∘} of latitude) in midlatitudes compared to the eastern basins. The meridional distribution of valid slope values shows a decrease in the smallscale spectral slope values towards the poles, as well as an increase in the dispersion around the average values (i.e., the uncertainty envelope tends to grow as latitude increases). The zones where the uncertainty associated with the smallscale slope estimate is higher than 40 % of the slope value are shaded in gray. This value was chosen in order to discard estimates with high uncertainty associated with the bilinear fit from the analysis. These regions are generally at higher latitude and with slopes close to, or less than, k^{−1}. As latitude increases, the first baroclinic Rossby radius decreases, and therefore the mesoscale slope fit will be made over progressively smaller wavelengths. This pushes the smallscale fit to be estimated over a very narrow wavelength range above the 30 km noise cutoff, having large uncertainties.
Note that the optimal fitting algorithm is not able to separate the contribution of two different spectral slopes in the intertropical band equatorward of ∼ 20^{∘}. In this zone, we observe that the SSH signal is essentially captured by the flatter mesoscale spectral slope of k^{−2} (Figs. 4c, 5c), extending to small wavelengths, and although the leastsquares doubleslope fit does estimate a smallscale spectral slope, it is not significant (reduced by several orders of magnitude in terms of energy content compared to the mesoscale slope contribution). These cases have been left blank in Figs. 4b and 5b.
The zonalmean values of the valid smallscale slopes (Figs. 4c and 5c) show a k^{−1.5} spectral slope between 10 and 20^{∘} latitude for both J3 and S3A. These values come from isolated patches in the western Pacific, the Indian Ocean, and the zone of tropical instability waves (up to ∼ 10^{∘} N) in the northeastern Pacific. In the midlatitudes, from 20–45^{∘} in latitude, the smallscale slope decreases from k^{−1.5} to around k^{−1.3} for both missions, with higher values near k^{−2} in the western basins. Any differences in the smallscale spectral slope for S3A, related to the removal of the white spectral noise, are small and within the smallscale error range in Figs. 4c and 5c.
3.2 Intercept wavelength
The intercept of the fitted mesoscale and smallscale spectral slopes results can be used to obtain a characteristic wavelength for the change in their dynamical regime. If we consider that the mesoscale slopes reflect the balanced (s)QG dynamics at midlatitudes, and the valid smallscale slope values reflect the wavelike motions from internal tides or IGWs, the intercept wavelength therefore indicates the boundary at which the SSH variability would be mainly driven by either dynamical regime. This wavelength scale could be considered an approximation of the socalled transition scale from balanced to unbalanced motions (Qiu et al., 2017, 2018), which indicates the boundary between the circulation dominated by either geostrophically balanced or unbalanced motions (in terms of SSH variability). While Qiu et al. (2018) calculate the transition scale by explicitly filtering the contribution of balanced and unbalanced motions from the PSD in the wavenumber and frequency space, we compute the spatial scale directly from the observed PSD, assuming that its shape captures both dynamical regimes.
Considering the limitations inherent to satellite altimetry observations (e.g., noise level, residual errors from corrections, and observability wavelength), we also compute the uncertainty associated with our estimates for the intercept wavelength. We then exclude any results that have the following criteria: (1) uncertainty in the mesoscale and/or smallscale spectral slope higher than 40 % and (2) an intercept wavelength value less than the local observable wavelength (OWL). Following these criteria, the intercept wavelengths we can interpret from alongtrack altimetry are reduced to a fraction of the world ocean. Nevertheless, within these constraints, intercept wavelength spatial distribution shows higher values in the tropical band and lower values towards the poles for the two missions considered (Fig. 6). Both J3 and S3A show intercept wavelengths around 100 km on average in midlatitudes from 25–45^{∘}, reaching to 140–160 km in the tropics near 10^{∘} latitude (Fig. 6c and d).
Using a stateoftheart global ocean simulation, Qiu et al. (2018) recently explored the geographical and seasonal variations of the balanced to unbalanced transition scale, highlighting that the highly energetic western boundary current systems have relatively short transition scales, with the largest transitionscale values occurring in the relatively lowenergy regions bounded by the intertropical and subpolar bands. Their modeled regional distribution reflected the local levels of mesoscale variability and the energy levels of unbalanced motions (nearinertial flows, internal tides and inertiagravity waves). Large transitionscale values are also observed where prominent bathymetric features exist (Qiu et al., 2018) such as the North Atlantic Ridge and the western equatorial Pacific.
The observed J3 and S3A intercept values across each basin are similar to recent modeling results of global estimates for the balanced to unbalanced motion transition scale, with shorter transition wavelengths located in the energetic western boundary current regions and longer values in the eastern basins. Using the points that can be defined from our estimates, the Kuroshio extension has intercept values of around 90–100 km for both J3 and S3, with the Gulf Stream having values of around 60 km (Fig. 7), whereas the eastern North Pacific intercept wavelengths reach values of 120–140 km. We note that S3A with lower noise has more geographical coverage of L_{t} estimates within each defined box, leading to local differences in the average meridional L_{t} distribution. Observations in the Antarctic Circumpolar Current are unfortunately noninterpretable. The sharp mesoscale spectral slopes observed here (related to the highly energetic local eddy activity at small Rossby radii) result in an intercept wavelength scale around 50 km or less. Given the higher noise levels from higher sea state in the Southern Ocean, these intercept scales are below the local observable wavelength. Observational results point out that the balanced to unbalanced transition scale for this region often shows values around 30 km (Drake Passage region; Rocha et al., 2016a), which is currently inaccessible with satellite altimetry observations.
Equatorward of 25^{∘}, the intercept scale shows the highest values often exceeding 150 km, which suggests that the dynamical regime characterized by shallow spectral slopes is the main contributor to the observed SSH variability. Modeling results show that the kinetic energy of the unbalanced motions dominates the SSH variability at the lowlatitude regions, with transitionscale values exceeding 200 km (Qiu et al., 2018).
In this study we have explored the capability of currently available alongtrack data to capture the changes in the circulation variability at wavelengths shorter than 150 km. We used a statistical approach consisting of analyzing the shape of the SSH power spectral density, which can be indicative of the underlying circulation dynamics. In addition to the mesoscale spectral slope, we compute a secondary spectral slope at smaller spatial scales in a wavelength region that is characterized by a regime change from geostrophically balanced mesoscale motions to a potentially nongeostrophic regime. The methodology used here is based on an unbiased slope estimate after removal of whitetype instrument noise. However, the leastsquares fit takes into account the variance of the errors associated with the instrumental noise, which grows towards the highwavenumber part of the SSH spectrum as the signal amplitude decreases and therefore increases the uncertainty of the estimated parameters towards short wavelengths.
A second outcome was to compute the intercept of the mesoscale and smallscale spectral slopes estimated in order to obtain a characteristic transition wavelength. We interpret this wavelength as a proxy for the transition scale that marks the boundary between the geostrophically balanced and unbalanced motions in the SSH signal. Despite the limited number of intercept wavelengths that pass our rigorous selection criteria, these intercept wavelengths show a distinctive geographical pattern. Higher spectral slope transition values are located around the tropics, sometimes exceeding 200 km in wavelength, and towards the eastern ocean boundaries (between 100–150 km), in agreement with circulation patterns with important wavelike variability at the mesoscale wavelength range (Pollmann, 2020; Tchilibou et al., 2018) compared to the local eddy field. The shortest intercept wavelengths are, on the other hand, observed over the western boundaries and towards high latitudes, where the circulation variability is dominated by an energetic mesoscale eddy field.
4.1 Uncertainty in the mesoscale spectral slope
In our twoslope methodology, the larger mesoscale spectral slope estimate starts from a first guess based on the geographically variable wavelength range specified in Vergara et al. (2019). Then, the leastsquares minimization of the twoslope fit allows this minimum wavelength range to be adjusted. As opposed to previous studies, we also include in our spectral slope estimates the inherent uncertainty that is contained in the altimetric observations. We have compared the results of the mesoscale spectral slopes from the bilinear solution against the observed spectrum (Fig. 8). For consistency, we used the locally variable wavelength range proposed in Vergara et al. (2019) to compute the mesoscale spectral slopes. Overall, we observe that the differences in spectral slopes when diagnosing either the optimal fit solution or the observed spectra are small (of the order of 0.1) across the world ocean. The differences are slightly higher in the equatorial regions (from both datasets) between 0.3 to 0.5 (Fig. 8) but remain smaller than the average uncertainty associated with the mesoscale spectral slope for the bilinear fit for these latitudes (Figs. 4 and 5).
4.2 Uncertainty in the smallscale wavelength range
At wavelengths shorter than 150 km, the analysis of the SSH spectral shape becomes increasingly sensitive to the observation errors (i.e., instrumental error, accuracy of the altimetric corrections), and therefore the interpretation of the results at high wavenumber needs to account for the increased uncertainty compared to the mesoscale wavelength range. Our methodology for the analysis of the unbiased spectral shape assumes a white noise plateau for the J3 and S3A 1 Hz observations, which is removed to reveal the SSH spectrum free of instrumental errors. Using this firstorder approximation for the instrumental error significantly increases the uncertainty of the spectral estimates towards high wavenumbers in comparison to their weak amplitude (i.e., the 95 % confidence interval envelope grows as we move towards the smallscale part of the spectrum). Thus, the uncertainty in the estimates compared to the signal is more important in the smallscale part of the spectrum than in the mesoscale wavelength range. This uncertainty also affects the estimates of the intercept wavelength in Eq. (2).
In addition, in regions where the first baroclinic Rossby radius is small (e.g., high latitudes) and/or the mesoscale energy is intense, the mesoscale spectral slope dominates the double fit and extends down to small wavelengths. In this case, there is not much wavelength range above 30 km to perform a second slope fit, and this combines with the larger error variance at small scales. We therefore observe an inverse relationship between the error associated with the smallscale spectral slope and the wavelength range used to perform the smallscale fit (Fig. 9) (i.e., the range between the intercept wavelength and the 30 km wavelength, the limit for computing the noise plateau). We note that Jason3 (Fig. 9a) has higher error variance than S3A (Fig. 9b), as expected, and this larger error extends over a longer wavelength range, whereas the S3A ratio of the smallscale spectral slope to error tends to be confined to smaller wavelength ranges. Note that values of smallscale slope error ratio >0.4 were discarded from the analysis of intercept wavelengths as estimates having high uncertainty, and Fig. 9 explains why more regions are eliminated with this 0.4 cutoff for Jason3 analyses than for S3A (see Figs. 4b, 5b, and 6). We also discarded all the intercept wavelength estimates that were below the SNR = 1 level, which delimits the observable wavelength in altimetric observations. The small intercept values observed at high latitudes (often smaller than 50 km wavelength) were therefore classified as noninterpretable, even though their distribution agrees with the results of Qiu et al. (2018) for the SSHbased transitionscale estimates, in particular the short L_{t} values observed around the Antarctic circumpolar region.
At these smaller spatial scales, the observed variability may result from different sources, both geophysical and instrument or platformrelated, and the diagnosed smallscale spectral slope is potentially a combination of such elements. Among the dynamical contributions, it has been shown that a significant part of the SSH PSD spectrum at wavelengths shorter than 150 km is related to phaselocked and nonphaselocked internal tides (Ray and Zaron, 2016). An important cascade of energy is apparent in the SSH spectrum around the tropical latitudes (Tchilibou et al., 2018), with an increased highfrequency variability of tidal origin (mainly nonphaselocked) for wavelengths shorter than 70 km (Tchilibou et al., 2022). Using a highresolution global ocean general circulation model (OGCM), Qiu et al. (2018) explored the influence of the internal tides on their estimates of L_{t}, concluding that the removal of the phaselocked internal tide contribution significantly reduces the values of L_{t} by 50 to 100 km in many regions. Today, only a few phaselocked tidal constituents are available as a potential altimetric correction (e.g., M2; Zaron, 2019). So a significant portion of the SSH PSD in our analysis may be influenced by internal tide variability.
In addition to the dynamical contributions, the altimetrybased smallscale spectral slope estimates may also be influenced by errors in the altimetric measurements used. One source of error that has been characterized at wavelengths ranging from 30 to ∼ 80 km are the imprecisions related to the mean sea surface (MSS) model used to compute the altimetric sea level anomalies (SLAs), which have been quantified to contribute as much as 30 % of the observed SLA variability (Pujol et al., 2018). The benefit of the latest MSS model, CNES_CLS_2015, is a reduction of the associated error by at least half compared to conventional models (Pujol et al., 2018). Nevertheless, this could still be a source of errors at short wavelengths for recent uncharted missions such as S3A. We performed sensitivity tests on the impact of the MSS model on our estimates at small scale (not shown), revealing that SSH PSD may increase but the spectral shape is preserved, and therefore the estimates of the smallscale spectral slope do not significantly change. This effect is comparable to the noise plateau differences presented in Appendix A for S3A.
4.3 Seasonality of the spectral shape and intercept wavelength
The seasonal variability of the spectral characteristics derived from altimetric observations has been documented in recent literature (e.g., Dufau et al., 2016; Vergara et al., 2019; Lawrence and Callies, 2022), highlighting the fact that the variations of the spectral shape are related to changes in both the underlying circulation and surface ocean stratification as expected, but also to variations of the altimetric noise levels throughout the year. The methodology used in the present paper also reveals a marked seasonal change of the spectral slopes, with variations in the mesoscale wavelength range showing sharper values during summer months than during winter as a byproduct of the interaction between the higher noise levels during winter and the presence of smallscale turbulence that is generated through vigorous vertical mixing (Sasaki et al., 2014; Callies et al., 2015). This smallscale variability is therefore partially masked by the increased noise levels (and increased uncertainty in our slope estimates) during winter months. On the other hand, during summer months the instrumental noise levels drop, and hence the SSH observability spans a large wavelength range with favorable signaltonoise ratio. During summer months, higher spectral slope values are consistent with interior QG dynamics, suggesting that large eddies are formed through baroclinic instabilities in the thermocline and very little energy cascades to smaller scales (e.g., Callies et al., 2015). The combination of favorable conditions for the generation of eddies at mesoscales (larger than 100 km) and lower noise levels provides an ideal altimetric observability scenario during summer months. The seasonal variability of the mesoscale and smallscale spectral slopes is documented in Appendix B.
The intercept wavelength also modulates seasonally, suggesting that information about the SSH variability in the sub100 km wavelength range is effectively reflected by this parameter computed from alongtrack altimetry observations (Figs. 10 and 11). Changes in the upperocean stratification will significantly modulate the energy levels of balanced and unbalanced motions that collectively contribute to the SSH variability observed for wavelengths ranging from 15 to 200 km. During summer months, a shallow mixed layer with a sharp density gradient at its base works to enhance the surface unbalanced motion kinetic energy (Rocha et al., 2016b) that surpasses the energy levels of the geostrophic turbulence at <100 km wavelength range. Conversely, the vigorous vertical mixing observed during winter energizes the balanced motions in the smallscale part of the spectrum, leading to a predominance over unbalanced motions in the SSH variability during this season (Rocha et al., 2016b; Qiu et al., 2017). The modeling results reported by Qiu et al. (2018) show that this pattern is nearly ubiquitous in the global ocean, with larger transitionscale values observed during summer than winter. Our seasonal estimates of the intercept scale show a similar pattern in terms of both eastern–western basin asymmetry and larger transition scales in summer in the zonal averages (Figs. 10 and 11; Appendix B).
We note that our zonally averaged results are only calculated in the nonmasked areas and have partial coverage, but this first altimeterbased seasonal L_{t} modulation agrees with the modeling results reported by Qiu et al. (2018). The altimeter spectralbased seasonal L_{t} values are, however, longer than that reported in Qiu et al. (2018) from a modeled SSH by 30 to 70 km (Bo Qiu, personal communication, 2018). Several key methodological differences could explain the observed differences. While Qiu et al. (2018) use either a spectral filter over SSH field or a Helmholtz decomposition of the velocity field in order to determine L_{t}, we use the observed SSH and the change in spectral shape as a proxy for the boundary between large and small scale in the observed SSH spectrum. Our spectral approach, although straightforward, is coarser in comparison, given that the spectral shape analyzed (over the wavelength range of interest) contains a mixture of large and smallscale dynamics and residuals of imperfect instrumental corrections inherent to the satellite altimetry technique. The overall influence of these factors is accounted for by the uncertainty envelope that is generated from our statistical averaging, yielding an uncertainty of a few tens of kilometers in some regions, whereas Qiu et al. (2018) generate a precise separation between the high and lowfrequency parts of the modeled SSH spectrum by filtering the SSH signal using a thorough methodology based on the dataderived dispersion relation for higher dynamical modes and different tidal constituents up to O_{1}, which are not readily available for the altimetric observations.
Although our analyses show the possibility to partially diagnose the smallscale part of the SSH spectrum, a thorough diagnosis of the impact of the instrumental noise levels on the methodology presented in this paper should also be carried out. This could be built around a series of observing system simulation experiments that simulate the alongtrack observations and also isolate the different contribution to the SSH energy spectrum. This is planned for future work.
4.4 Implications for altimetric mapping and the SWOT mission
There are two major implications for these spectral analysis results. The first is that the observable wavelength of all SSH signals above the instrument noise is limited to 60–70 km for Jason3 and 50–70 km for S3A (Figs. 1 and 2). So, at present, any alongtrack altimetric studies addressing either balanced ocean dynamics or internal tides or internal gravity waves will be limited to these spatial scales by this instrument noise level. Recent improvements in highresolution 20 and 40 Hz processing techniques for the alongtrack altimetric signal aiming to improve the SNR of existing data show a reduction of the noise plateau of the order of 20 % for 1 Hz data (Tran et al., 2021; Quilfen and Chapron, 2021). This may improve the lower bound of our estimated OWL, as recent results using the latest SAR processing suggest (Moreau et al., 2021; Pujol et al., 2023).
The performance of the upcoming SWOT mission, representing a new generation of altimeter technology, anticipates more than 1 order of magnitude of noise level reduction compared to current 1 Hz Jason observations (Fu and Ubelmann, 2014). Refined estimates for the SWOT SNR, including realistic windwave effects on the interferometric technology, anticipate an observability ranging from around 15 km in wavelength at low latitudes to around 30–45 km in wavelength towards the poles, with an important longitudinal dependence (Wang et al., 2019). This will greatly extend our capacity to estimate the smallerspectral slope, especially at middle to high latitudes.
The second implication is for the L_{t} intercept wavelength. This wavelength value is critical when calculating geostrophic currents from altimetric SSH slopes. If the smaller slope at shorter wavelengths is indeed dominated by ageostrophic dynamics and internal tides or internal gravity waves, these contributions will induce large errors in the geostrophic current calculation. In our analysis, we have not included any recent corrections to remove the phaselocked internal tide from the alongtrack altimetry data. Separate tests (not shown) indicate that these coherent internal tide corrections have a minor impact on our L_{t} results, since the nonphaselocked internal tide remains, and the cascade of internal tide energy to smaller scales contributes to the smallscale slope over similar wavelengths. So this regionally varying L_{t} value needs to be taken into account when choosing the appropriate spatial scales to calculate geostrophic currents: either for the crosstrack geostrophic currents from the alongtrack SSH slopes or when mapping the alongtrack data onto a regular grid. Although our alongtrack L_{t} statistical values are not available globally due to the limitations with the current generation of altimetric noise, the limited values are consistent with the modeling results of Qiu et al. (2018). This suggests that (1) these changes of slope, predicted by the models, are observable in limited regions with today's altimetry missions and (2) that the global modeled L_{t} values can be used as a good estimation of the appropriate spatial scales for separating balanced motions for geostrophic current calculations with altimeter data.
Our results indicate that at low latitudes, the intercept wavelength remains large (100–150 km), suggesting that the changes in the spectral slope will be well observed in two dimensions by the future SWOT mission with its reduced noise level. The estimated observability at high latitudes, particularly in the ACC, could still be a challenge for diagnosing the transition from geostrophic to nongeostrophic circulation regimes from SWOT observations alone unless noise reduction techniques are also applied to SWOT data. Wang et al. (2019) estimate the observed wavelengths for SWOT in the ACC to be between 30 and 45 km, with an important longitudinal dependency. Our very limited alongtrack estimates in this region indicate that the spectral slope break should occur in the 40–60 km wavelength range on average, as do the modeling estimates from Qiu et al. (2018). In situ observations from the Drake Passage report that half of the nearsurface kinetic energy between 10 and 40 km wavelength is accounted for by ageostrophic motions (Rocha et al., 2016a), likely dominated by inertiagravity waves. Our estimates also reveal an inherent geographical variability of the intercept wavelength, suggesting a localized dependence of the different dynamical regimes around the ACC that was also observed by Wang et al. (2019) for the region. This implies that the observability in the ACC will not be a constant threshold but rather a pattern dominated by localized and seasonal variability.
Several studies have reported the effect of sea and swell on SARmode acquisition satellites such as Sentinel3A (Moreau et al., 2018; Rieu et al. 2020; Moreau et al., 2021), highlighting that SARspecific processing methods result in a PSD signature at high wavenumbers that deviates from the expected random thermal noise. The expected signature of a random signal in the highwavenumber part of the spectrum is a characteristic flat plateau or “white noise” (in the case of 1 Hz SSH, this concerns wavelengths shorter than 30 km wavelength). In the case of Sentinel3A, SSH data in this part of the spectrum exhibit a slightly slanted shape or “red noise” plateau (Fig. A1a and b, dashed lines).
Following Xu and Fu (2012), in the present paper we analyze the shape of the unbiased SSH spectrum, and therefore we assume that the thermal noise signature that dominates the SSH at wavelengths shorter than 30 km is essentially a white noise plateau. We perform a sensitivity test on the effect of using a redtype noise plateau rather than a whitetype plateau for wavelengths between 15 and 30 km wavelength to compute the unbiased S3A spectra. Figure A1 shows the result of using the two different functions as the approximation for the noise plateau over selected regions, and Fig. A2 shows the spatial distribution of the mesoscale and smallscale spectral slopes resulting from the observed PSD denoised using a redtype noise. Results show that the mesoscale spectral slope is not significantly different between the two methods of denoising (Figs. A1, A2a and c) and that the same geographical patterns can be observed in the two cases (Figs. 5a and A2a). The red noise estimate reduces the PSD levels, particularly at smaller wavelengths, with a small impact on the smallscale spectral slope. These smallscale spectral slope values vary between 1.5 and 2.5 for all latitudes equatorward of 40^{∘} (Fig. A2b), and the most important differences with the white noise unbiased case are observed between 30 and 40^{∘}, with the latter showing steeper slopes (e.g., Fig. A1a), albeit falling inside the uncertainty envelope on average (Fig. A2c). More evident differences between the two methods arise at high latitudes where the smallscale spectral slopes for the red noise unbiased PSD are lower than for its white noise counterpart (Figs. 5b and A2b). The uncertainty associated with the smallscale spectral slope is also higher for the red noise unbiased PSD, resulting from the additional energy that is subtracted by the denoising process in comparison with a white plateau. This is illustrated by the different energy levels observed for the blue and black curves in Fig. A1. Therefore, the uncertainty associated with the spectral slopes at small scales is higher for the red noise unbiased spectra than for the white noise unbiased spectra (note that the shaded areas in Fig A2b are more important than in Fig. 5b).
In the following we present the seasonal results of the mesoscale and smallscale spectral slopes and for the intercept wavelength at three regions. This analysis complements the discussion presented in Sect. 4.3.
The seasonality of the spectral slope observed by the two missions (Fig. B1) shows a distinctive pattern around the average values (Figs. 4 and 5), with maximum values in the vicinity of highly energetic regions (e.g., Kuroshio extension, Gulf Stream, ACC) and rather shallow slopes in the intertropical band. In agreement with recent studies (e.g., Dufau et al., 2016; Vergara et al., 2019), slope values during summer are higher than during winter, indicative of a contrasting dynamical regime during both seasons. These changes are essentially related to the seasonal changes in the vertical structure of the upper ocean, which would allow the development of vigorous small eddies during winter months (Rocha et al., 2016b) that tend to flatten and reduce the mesoscale slope of the spectrum (Fig. B1c). This enhanced latewinter smallscale energy may be transferred upscale to largerscale eddies in summer at midlatitudes (e.g., Sasaki et al., 2014), increasing the energy levels in the mesoscale wavelength range during summer months. There is nearly null seasonal modulation in the equatorial band (10^{∘} S–10^{∘} N), where the seasonal changes in stratification are rather limited.
Seasonal small slope values follow a different pattern compared to the mesoscale spectral slopes, with zonally averaged higher slopes during winter compared to summer (Fig. B2c). These zonal statistics are dominated by the western boundary regions of the Kuroshio, the East Australian Current, the Gulf Stream, and the Brazil–Malvinas Confluence regions. There are smaller seasonal differences over loweddyenergy regions such as the southeastern Pacific. The winter–summer asymmetry suggests a change in the circulation variability, tied to the distinctive annual cycle observed in the 10–100 km wavelength range (Callies et al., 2015; Qiu et al., 2017), and may indicate that a wintertime energizing of the small scales related to mixed layer instabilities (e.g., Lawrence and Callies, 2022) echoes on the smallscale spectral slopes observed here. As for the rest of the paper, we restricted our analyses and zonal averages to the zones where the spectral slope error is lower than 40 %.
In addition to the seasonal modulation of the intercept wavelength illustrated by Figs. 10 and 11, we analyzed the statistical distribution of L_{t} over three western boundary regions (Fig. B3). Longer intercept wavelengths are observed during summer months compared to winter (20–35 km longer, significant at 95 %), with differences between the two sets of observations of around 10 to 12 km.
A detailed analysis using the latest altimetric data available with lower noise levels (Moreau et al., 2021) over a longer time series is planned for future work, including comparisons against in situ measurements and results from recent literature (e.g., Qiu et al., 2017).
The altimetry data used in the present paper are fully available at https://doi.org/10.48670/moi00146 (Copernicus Marine and Environment Monitoring Service (CMEMS), 2023).
OV, RM, and MIP conceived the methodology used to analyze the sea surface height spectra and their shape changes. The analyses presented in this paper are the collective effort of all the authors. OV wrote the paper in close collaboration with RM. MIP, GD, and CU provided altimetry data expertise and critical advice on the methodology.
The contact author has declared that none of the authors has any competing interests.
Publisher's note: Copernicus Publications remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
The Jason3 and Sentinel3A data were obtained from the Geophysical Data Record (GDR) available on the AVISO website (https://www.aviso.altimetry.fr, last access: 15 June 2021). The mean sea surface model CNES_CLS_2015 is also available on the same website. The authors would like to acknowledge the support from the French Space Agency (CNES) via the French SWOT TOSCA program to conduct the present study. Constructive comments made by two anonymous reviewers helped improve an early version of the paper.
This research has been supported by the Centre National d'Etudes Spatiales (TOSCA program grant).
This paper was edited by Anne Marie Treguier and reviewed by two anonymous referees.
Ballarotta, M., Ubelmann, C., Pujol, M.I., Taburet, G., Fournier, F., Legeais, J.F., Faugère, Y., Delepoulle, A., Chelton, D., Dibarboure, G., and Picot, N.: On the resolutions of ocean altimetry maps, Ocean Sci., 15, 1091–1109, https://doi.org/10.5194/os1510912019, 2019.
Callies, J., Ferrari, R., Klymak, J. M., and Gula, J.: Seasonality in submesoscale turbulence, Nat. Commun., 6, 6862, https://doi.org/10.1038/ncomms7862, 2015.
Capet, X., McWilliams, J. C., Molemaker, M., and Shchepetkin, A.: Mesoscale to submesoscale transition in the California Current system. Part III: Energy balance and flux, J. Phys. Oceanogr., 38, 2256–2269, doi.org/10.1175/2008JPO3810.1, 2008.
Chelton, D. B., Schlax, M. G., and Samelson, R. M.: Global observations of nonlinear mesoscale eddies, Prog. Oceanogr., 91, 167–216, https://doi.org/10.1016/j.pocean.2011.01.002, 2011.
Chereskin, T. K., Rocha, C. B., Gille, S. T., Menemenlis, D., and Passaro, M.: Characterizing the Transition From Balanced to Unbalanced Motions in the Southern California Current, J. Geophys. Res.Ocean., 124, 2088–2109, https://doi.org/10.1029/2018JC014583, 2019.
Copernicus Marine and Environment Monitoring Service (CMEMS): Global Ocean Along Track L 3 Sea Surface Heights Reprocessed 1993 Ongoing Tailored For Data Assimilation, CLS [data set], https://doi.org/10.48670/moi00146, 2023.
Dufau, C., Orsztynowicz, M., Dibarboure, G., Morrow, R., and Le Traon, P.Y.: Mesoscale resolution capability of altimetry: Present and future, J. Geophys. Res.Ocean., 121, 4910–4927, https://doi.org/10.1002/2015JC010904, 2016.
Eden, C.: Eddy length scales in the North Atlantic Ocean, J. Geophys. Res., 112, C06004, https://doi.org/10.1029/2006JC003901, 2007.
Ferrari, R. and Wunsch, C.: Ocean Circulation Kinetic Energy: Reservoirs, Sources, and Sinks, Ann. Rev. Fluid Mech., 41, 253–282, https://doi.org/10.1146/annurev.fluid.40.111406.102139, 2009.
Klein, P., Hua, B. L., Lapeyre, G., Capet, X., Le Gentil, S., and Sasaki, H.: Upper ocean turbulence from highresolution 3D simulations, J. Phys. Oceanogr., 38, 1748–1763, doi.org/10.1175/2007JPO3773.1 , 2008.
Klein, P., Lapeyre, G., Siegelman, L., Qiu, B., Fu, L.L., Torres, H., Su, Z., Menemenlis, D., and Le Gentil, S.: Oceanscale interactions from space, Earth Space Sci., 6, 795–817, https://doi.org/10.1029/2018ea000492, 2019.
Lawrence, A. and Callies, J.: Seasonality and Spatial Dependence of Mesoscale and Submesoscale Ocean Currents from AlongTrack Satellite Altimetry, J. Phys. Oceanogr.y, 52, 2069–2089, https://doi.org/10.1175/JPOD220007.1, 2022.
Le Traon, P. Y., Klein, P., Hua, B. L., and Dibarboure, G.: Do altimeter wavenumber spectra agree with the interior or surface quasigeostrophic theory?, J. Phys. Oceanogr., 38, 1137–1142, https://doi.org/10.1175/2007JPO3806.1, 2008.
McWilliams, J. C.: Submesoscale Currents in the ocean, Proc. Roy. Soc. A, 472, 20160177, https://doi.org/10.1098/rspa.2016.0117, 2016.
Moreau, T., Tran, N., Aublanc, J., Tison, C., Le Gac, S., and Boy, F.: Impact of long ocean waves on wave height retrieval from SAR altimetry data, Adv. Space Res., 62, 1434–1444, https://doi.org/10.1016/j.asr.2018.06.004, 2018.
Moreau, T., Cadier, E., Boy, F., Aublanc, J., Rieu, P., Raynal, M., Labroue, S., Thibaut, P., Dibarboure, G., Picot, N., Phalippou, L., Demeestere, F., Borde, F., and Mavrocordatos, C.: Highperformance altimeter Doppler processing for measuring sea level height under varying sea state conditions, Adv. Space Res., 67, 1870–1886, https://doi.org/10.1016/j.asr.2020.12.038, 2021.
Pollmann, F.: Global Characterization of the Ocean's Internal Wave Spectrum, J. Phys. Oceanogr., 50, 1871–1891, https://doi.org/10.1175/JPOD190185.1, 2020.
Pujol, M. I., Schaeffer, P., Faugère, Y., Raynal, M., Dibarboure, G., and Picot, N.: Gauging the improvement of recent mean sea surface models: A new approach for identifying and quantifying their errors, J. Geophys. Res.Ocean., 123, 5889–5911, https://doi.org/10.1029/2017JC013503, 2018.
Pujol, M.I., Dupuy S., Vergara O., Sánchez Román A., Faugère Y., Prandi P., Dabat M.L., Dagneaux Q., Lievin M., Cadier E., Dibarboure G., and Picot N.: Refining the Resolution of DUACS AlongTrack Level3 Sea Level Altimetry Products, Remote Sens., 15, 793, https://doi.org/10.3390/rs15030793, 2023.
Qiu, B., Chen, S., Klein, P., Wang, J., Torres, H., Fu, L.L., and Menemenlis, D.: Seasonality in transition scale from balanced to unbalanced motions in the world ocean, J. Phys. Oceanogr., 48, 591–605, https://doi.org/10.1175/JPOD170169.1, 2018.
Qiu, B., Nakano, T., Chen, S., and Klein, P.: Submesoscale transition from geostrophic flows to internal waves in the northwestern Pacific upper ocean, Nat. Commun., 8, 14055, https://doi.org/10.1038/ncomms14055, 2017.
Quilfen, Y. and Chapron, B.: On denoising satellite altimeter measurements for highresolution geophysical signal analysis, Adv. Space Res., 68, 875–891, https://doi.org/10.1016/j.asr.2020.01.005, 2021.
Ray, R. D. and Zaron, E. D.: M2 internal tides and their observed wavenumber spectra from satellite altimetry, J. Phys. Oceanogr., 46, 3–22, https://doi.org/10.1175/JPOD150065.1, 2016.
Rieu, P., Moreau, T., Cadier, E., Raynal, M., Clerc, S., Donlon, C., Borde, F., Boy, F., and Maraldi, C.: Exploiting the Sentinel3 tandem phase dataset and azimuth oversampling to better characterize the sensitivity of SAR altimeter sea surface height to long ocean waves, Adv. Space Res., 67, 253–265, https://doi.org/10.1016/j.asr.2020.09.037, 2020.
Rocha, C. B., Chereskin, T. K., Gille, S. T., and Menemenlis, D.: Mesoscale to Submesoscale Wavenumber Spectra in Drake Passage, J. Phys. Oceanogr., 46, 601–620, https://doi.org/10.1175/JPOD150087.1, 2016a.
Rocha, C. B., Gille, S. T., Chereskin, T. K., and Menemenlis, D.: Seasonality of submesoscale dynamics in the Kuroshio Extension, Geophys. Res. Lett., 43, 11304–11311, https://doi.org/10.1002/2016GL071349, 2016b.
Sasaki, H., Klein, P., Qiu, B., and Sasai, Y.: Impact of oceanicscale interactions on the seasonal modulation of ocean dynamics by the atmosphere, Nat. Commun., 5, 5636, https://doi.org/10.1038/ncomms5636, 2014.
Schaeffer, P., Faugere, Y., Pujol, M.I., Guillot, A., and Picot, N.: The CNES CLS 2015 Global Mean Sea Surface, Presented at the Ocean Surface Topography Meeting (OSTST), 2016, La Rochelle, France, 1 October–4 November 2016, https://ostst.aviso.altimetry.fr/fileadmin/user_upload/tx_ausyclsseminar/files/GEO_03_Pres_OSTST2016_MSS_CNES_CLS2015_V1_16h55.pdf (last access: 19 December 2022), 2016.
Siegelman, L., Klein, P., Thompson, A. F., Torres, H. S., and Menemenlis, D.: AltimetryBased Diagnosis of DeepReaching SubMesoscale Ocean Fronts, Fluids, 5, 145, doi.org/10.3390/fluids5030145, 2020.
Stammer, D.: Global characteristics of ocean variability estimated from regional TOPEX/POSEIDON altimeter measurements, J. Phys. Oceanogr., 27, 1743–1769, https://doi.org/10.1175/15200485(1997)027<1743:GCOOVE>2.0.CO;2, 1997.
Su, Z., Torres, H., Klein, P., Thompson, A. F., Siegelman, L., Wang, J., Menemenlis, D., and Hill, C.: Highfrequency submesoscale motions enhance the upward vertical heat transport in the global ocean, J. Geophys. Res.Ocean., 125, e2020JC016544, https://doi.org/10.1029/2020JC016544, 2020.
Taburet, G., SanchezRoman, A., Ballarotta, M., Pujol, M.I., Legeais, J.F., Fournier, F., Faugere, Y., and Dibarboure, G.: DUACS DT2018: 25 years of reprocessed sea level altimetry products, Ocean Sci., 15, 1207–1224, https://doi.org/10.5194/os1512072019, 2019.
Tchilibou, M., Gourdeau, L., Morrow, R., Serazin, G., Djath, B., and Lyard, F.: Spectral signatures of the tropical Pacific dynamics from model and altimetry: A focus on the meso/submesoscale range, Ocean Sci., 14, 1283–1301, https://doi.org/10.5194/os1412832018, 2018.
Tchilibou, M., KochLarrouy, A., Barbot, S., Lyard, F., Morel, Y., Jouanno, J., and Morrow, R.: Internal tides off the Amazon shelf during two contrasted seasons: interactions with background circulation and SSH imprints, Ocean Sci., 18, 1591–1618, https://doi.org/10.5194/os1815912022, 2022.
Thomas, L. N., Tandon, A., and Mahadevan, A.: Submesoscale processes and dynamics, Ocean Modeling in an eddying regime, Geophys. Monogr., 177, 17–38, 2008.
Tran, N., Hancock III, D., Hayne, G., Lockwood, D., Vandemark, D., Driscoll, D., and Sailor, R.: Assessment of the CycleToCycle Noise Level of the Geosat FollowOn, TOPEX, and Poseidon Altimeters, J. Atmos. Ocean. Technol., 19, 2095–2107, https://doi.org/10.1175/15200426(2002)019<2095:AOTCTC>2.0.CO;2, 2002.
Tran, N., Vandemark, D., Zaron, E. D., Thibaut, P., Dibarboure, G., and Picot, N.: Assessing the effects of seastate related errors on the precision of highrate Jason3 altimeter sea level data, Adv. Space Res., 68, 963–977, https://doi.org/10.1016/j.asr.2019.11.034, 2021.
Vergara, O., Morrow, R., Pujol, I., Dibarboure, G., and Ubelmann, C.: Revised global wave number spectra from recent altimeter observations, J. Geophys. Res.Ocean., 124, 3523–3537, https://doi.org/10.1029/2018JC014844, 2019.
Wang, J., Fu, L.L., Torres, H. S., Chen, S., Qiu, B., and Menemenlis, D.: On the spatial scales to be resolved by the surface water and ocean topography Kaband radar interferometer, J. Atmos. Ocean. Technol., 36, 87–99, https://doi.org/10.1175/JTECHD180119.1, 2018.
Xu, Y. and Fu, L.L.: Global variability of the wavenumber spectrum of oceanic mesoscale turbulence, J. Phys. Oceanogr., 41, 802–809, https://doi.org/10.1175/2010JPO4558.1, 2011.
Xu, Y. and Fu, L.L.: The effects of altimeter instrument noise on the estimation of the wavenumber spectrum of sea surface height, J. Phys. Oceanogr., 42, 2229–2233, https://doi.org/10.1175/JPOD120106.1, 2012.
Zaron, E. D.: Baroclinic tidal sea level from exactrepeat mission altimetry, J. Phys. Oceanogr., 49, 193–210, https://doi.org/10.1175/JPOD180127.1, 2019.