Abstract
This study investigates the atmospheric boundary layer structure based on multiple-level tower observations with a height of 350 m during the landfall of Super Typhoon Mangkhut (2018). Results show a layer of log wind profile outside of the radius of maximum wind speed with a height of 100 m or larger. The log layer height increases with the wind speed. The height of the constant flux layer reaches ~ 300 m for 10-m wind speeds less than 13 m s−1 while this height decreases with the wind speed. Momentum fluxes and turbulent kinetic energy increase with the wind speed at all vertical levels. The drag coefficient and surface roughness length estimated at the tower location have values of 7.3 × 10–3 and 0.09 m, respectively, which are independent of wind speed. The estimated vertical eddy diffusivity and mixing length increase with height up to ~ 160 m and then slowly decrease with height. The vertical eddy diffusivity increases with the wind speed while the vertical mixing length has no dependence on the wind speed. Comparing our results with previous work indicates that the vertical eddy diffusivity is larger over land than over ocean at a given wind speed range.
Similar content being viewed by others
Introduction
Physical processes in the planetary boundary layer (PBL) have been known to play an important role in the intensity change of a tropical cyclone (TC)1,2,3,4,5. Previous numerical studies have shown that the simulated TC intensity and structure are very sensitive to turbulence parameterization methods used in the PBL schemes6,7,8,9. This sensitivity has also been confirmed in the operational TC forecasts by the Hurricane Weather and Research Forecast (HWRF) model. Observation based modifications of the vertical and horizontal turbulent mixing strengths have led to substantial improvements in HWRF’s intensity forecast skills over ocean10,11,12,13,14. Of note, the available flux observations have been limited to either the outer core region (R > 100 km) or near the top of the PBL in the eyewall region15,16,17.
The magnitudes of surface roughness lengths over land are greater than those over ocean by 1–2 orders18, and this roughness enhancement induces more turbulent mixing in the PBL over land19. Previous studies have demonstrated that increasing the vertical eddy diffusivity over land in the PBL scheme of HWRF improved forecasts of track, rainfall, storm size, and wind structure of several landfalling storms19. However, turbulence observations in landfalling TCs were mainly limited to the near surface layer (z < 10 m)20,21. Until now, no previous studies have shown multi-level flux data above 100 m. On the other hand, more observational studies have investigated the mean PBL structure in landfalling storms especially using Doppler radar data with a focus on structural transition from ocean to land22,23,24. The interaction of mean and turbulence structures remains to be investigated further.
To fill the gap in understanding turbulent mixing processes in landfalling TCs, the present study presents turbulence observations by a multilevel high tower in Typhoon Mangkhut (2018). Turbulence parameters such as turbulent kinetic energy (TKE), momentum flux, vertical eddy diffusivity and mixing length are estimated using fast-response wind data. Multilevel wind observations are used to document the mean kinematic structure including the wind shear and provide an independent estimate of surface fluxes. The objective is to document turbulent characteristics of the low-level PBL and its potential linkage to the mean kinematic structure over land.
Data and methodology
Typhoon Mangkhut formed in the northwest Pacific Ocean on 7 September 2018. At 09:00 UTC on 16 September, it made landfall at the coastal area of Jiangmen District, Guangdong Province of China, as a super typhoon with the maximum 10-min wind speed of 45 m s−1. Wind speeds of > 33 m s−1 were recorded by a local weather station in the Guangdong Province with a period of > 13 h.
Figure 1 shows Mangkhut’s track from 14:00 UTC on 15 September to 18:00 UTC on 16 September 2018, when the maximum 10-min average surface wind of the storm was > 33 m s−1. The composite radar reflectivity in Fig. 1 was a snapshot at 07:00 UTC on 16 September. The radius of maximum winds (RMW) of Mangkhut was reported to be 105 km when the storm approached Hong Kong25. Data from the Shenzhen Meteorological Tower (referred to as SMT hereafter, Fig. 2) were analysed in this study. The location of the SMT is also shown in Fig. 1. The fetch over land at the SMT is > 40 km, although the distance from the SMT to the nearest coastline is ~ 9 km. Previous studies24 have shown that the transition of the TCBL across the coastal region mainly occurred within first 5 km from the coastline over land. The terrain type surrounding the SMT is tropical shrub.
The SMT contains a total of 13 levels of slow-response (1 Hz) wind observations including 4 levels of fast-response (10 Hz) wind data for eddy-covariance flux calculations. The heights for slow-response wind measurements are 10, 20, 40, 50, 80, 100, 150, 160, 200, 250, 300, 320 and 350 m. Flux measurement systems are located at 10, 40, 160, and 320 m, respectively. Three observation systems (Vaisala anemometer WAA15, wind vane WAV15 and Vaisala ultrasonic wind sensor WMT703) were used to measure wind velocities for calibration and quality control purposes. The data were not used when wind observations from the three instruments were significantly different.
The magnitude of momentum flux (τ) was calculated using the standard eddy-covariance method in the following form:
where ρ is the air density, u′, v′, and w′ are turbulent fluctuations of the zonal, meridional, and vertical components of wind velocities, respectively, and the overbar denotes average of a 30-min period of continuous wind observations that passed a stationary test20.
Velocity spectra, cospectra and their cumulative sums (ogives) were checked to select flux legs18. Flux estimates are considered reliable when the wind spectral curve plotted against the frequency in a logarithmic scale has a slope of − 5/3 in the inertial sub-range, with examples shown in Fig. 3. In addition, the flatness of the ogive curve of the cospectrum at both the low and high frequency ends is required for stationarity requirement (Fig. 4).
The vertical eddy diffusivity (Km) is estimated using the momentum flux and strain rate in the form of:
Here, the strain rate Sis calculated as
The same method as used by Zhang and Drennan15 was followed to compute S. The weighted linear least square method was used to smooth the vertical profiles of u and v components before calculating the vertical gradients and strain rate. The vertical mixing length (l) is then estimated using the eddy diffusivity and strain rate,
To estimate \(K_{m}\), the non-local Medium Range Forecast (MRF) PBL scheme26 was modified based on observations over ocean in HWRF11,19 using a tuning parameter α in the form of
where κ = 0.4 is the von Karman constant, z is height, u* is the friction velocity, and h is the PBL height of the boundary layer. How this parameter may be tuned over land will be discussed later. The mixing length is usually formulated by kz and an asymptotic mixing length l∞ (Blackadar scheme27) in the form of
This formulation limits the mixing length to kz when approaching the surface. In the present study, we fit the observational data using both Eq. (6) and the following equation
which implies increasing l with z close to the surface.
Results
Figure 5 shows the 10-min averaged wind speed and direction at 13 levels of the SMT from 04:00 UTC to 18:00 UTC on 16 September 2018, when the distance from the SMT to the storm center was approximately 130–200 km. The strongest wind was captured at ~ 07:00 UTC due to the passage of the eyewall. The wind speed increases with height as expected (Fig. 5a). In general, the wind vector rotates clockwise by ~ 20° over the height of the tower (Fig. 5b). The degree of wind direction variation with height substantially decreased after 13:00 UTC.
Vertical wind profiles are plotted as a function of height with a logarithmic scale in Fig. 6a. Bin averages of 3 wind speed groups (5–10 ms−1, 10–15 ms−1 and 15–20 ms−1) are shown at all levels. The mean wind profile follows the log relationship with height below 100 m height as illustrated by the best fit black line for the three groups. The existence of a logarithmic wind profile in the surface layer is a basic assumption in modeling the TCBL28 which was supported by observations29. Of note, Smith and Montgomery30 questioned the existence of a logarithmic layer in the TC inner core region, where the strong radial gradient of a TC primary circulation (i.e., tangential wind) may invalidate the homogeneous assumption in deriving the log layer. However, our data provided a firm support of the existence of a logarithmic wind profile in the surface layer of a storm at a radius of ~ 1.3 times RMW.
The lowest 100 m bin-averaged wind speeds in Fig. 6a are fitted as a function of height using a least-square linear method and equation
where Uz is the mean wind speed at height z, z0 is the roughness length, and d is the zero-velocity displacement distance set to be 2 m as 2/3 of the height of surrounding shrubs which is ~ 3 m. The intercept and slope of the fitted line produce a measure of z0 and \(u_{*} /k\), respectively. The drag coefficient (CD) is then obtained by \(C_{D} = (u_{*} /U_{10} )^{2}\). Values of \(u_{*}\), z0 and CD are summarized in Table 1. z0 and CD are independent of U10, and have mean values of 0.09 m and 0.0073, respectively. This behaviour of nearly constant z0 and CD is as expected over land following the surface layer theory31.
It is also noticed in Fig. 6a that the larger the wind speed range, at a higher level the mean wind speed is closer to the best fit line. This feature indicates that the surface layer defined as the layer with a logarithmic wind profile deepens with the wind speed. The surface layer heights are estimated to be 100, 130 and 180 m for 5–10 ms−1, 10–15 ms−1 and 15–20 ms−1 groups, respectively. Another interesting feature in these wind profiles is that a log wind profile exists even above 100 m height, but with a smaller slope at higher wind speeds. In addition, the wind speed increases more quickly with height above the log layer than below for all three groups. The characteristics of the wind profiles are consistent with those of an internal boundary layer (IBL) that forms due to the surface roughness change from rough to smooth18. Of note, in the absence of mesoscale effects, the TC boundary layer is typically considered statically neutral due to strong wind shear28. The IBL height (hI) is defined as:
where \(Z_{0D}\) is the downstream roughness length, and c is a stability constant with a value of 0.3532, X is the distance to the location of upstream surface roughness change. Using \(Z_{0D} = 0.09 m\), and setting the internal boundary layer height as 100 m, gives X of 2.1 km. The change in slope of the wind profile above the log layer is different from that over ocean as documented by Vickery et al.33, which is likely due to the surface roughness differences and no formation of IBL over ocean.
Figure 6b shows that the mean wind speed increases with the decreasing distance from the storm center as expected. This result in combination with Fig. 6a indicate that the layer of log wind profile deepens toward the storm center outside of the RMW. The logarithmic surface layer heights of these three groups are shown in the subset plot of Fig. 6b. Note that the mean distances for 5–10 ms−1, 10–15 ms−1 and 15–20 ms−1 groups are 3.14, 1.60 and 1.36 times the RMW, respectively.
Figure 7a shows the momentum fluxes at 4 measurement levels (i.e., 10, 40, 160 and 320 m) as a function of 10-m wind speed, indicating an increasing trend of the momentum flux with the wind speed. The values of momentum fluxes at 10, 40 and 160 m heights are close to each other as indicated by the overlapping 95% confidence intervals of these groups at all available wind speeds. On the other hand, the 95% confidence interval of the 320 m height group overlaps with all other three groups at relatively low wind speed ranges. This result suggests that 320 m was above the surface layer defined by the constant flux layer at wind speeds > 13 ms−1 while 160 m is within the surface layer during the landfall of Typhoon Mangkhut.
Figure 7b shows the turbulent kinetic energy (\(TKE = (\overline{{u^{^{\prime}2} }} + \overline{{v^{^{\prime}2} }} + \overline{{w^{^{\prime}2} }} )/2\)) at the 4 levels of flux observation as a function of the 10-m wind speed. The TKE at each level increases with the wind speed (with a mean correlation coefficient of 0.85). The TKE values at wind speeds > 10 m/s are comparable to those in large eddy simulations of a landfall hurricane given by Zhu34 as well as those based on flight-level and Doppler radar observations22,35. Of note, there is no statistically significant difference between the TKE at these levels for a given wind speed according to their overlapped 95% confidence intervals.
The strain rate is plotted against the height in logarithmic scale in Fig. 8a. The maximum strain rate appears at 10 m altitude with an average value of 0.16 s−1. The strain rate decreases with height up to ~ 200 m before levelling off. The local minimum mean value is 0.029 s−1 at 200 m height. This behaviour of vertical variation of strain rate is similar to that over the ocean15. However, the values of the strain rate in our study are much greater than those over ocean for similar wind speeds, which is attributed to the larger surface roughness length over land than over ocean.
Vertical profiles of the estimated vertical eddy diffusivity (Km) show an increasing trend with height below 160 m but a decreasing trend above (Fig. 8b). The mean values of Km are 11 and 38 m2 s−1 at 10 m and 40 m height, respectively. It peaks at 160 m with an average value of 96 m2 s−1. At 320 m, the mean value of Km decreases to 78 m2 s−1. The trend of variation of Km with height here is similar to that over the ocean15, where a maximum Km is located at approximately 190 m height. However, our values of Km are 50% greater than those over ocean15 at an equivalent height and wind speed range. The enhanced Km over land is mainly due to the larger roughness length indicting stronger vertical mixing than over ocean.
According to Eq. (2), within a constant momentum flux layer, Km should have a maximum at the height of minimum strain rate. The minimum strain rate is at ~ 200 m altitude as shown in Fig. 8a. Thus, it is speculated that the maximum of Km appears close to this height if the constant flux layer extends above 200 m. In the K-profile parameterization scheme as in Eq. (5), Km maximizes at ~ 1/3 of the PBL height (h). Setting α = 1.5 in Eq. (5) and using h = 675 m gives values of Km close to our observations, again suggesting Km is larger over land than over ocean.
The vertical mixing length (l) is estimated using Eqs. (2)–(4) and shown in Fig. 8c. The mean values of Km at 10 and 40 m altitudes are 8 m and 27 m, respectively. Note that Tang et al.20 reported values of l being 10—20 m at 27 and 42 m altitudes near the coastline. The average values of l at 160 m and 320 m altitudes in our study are 55 m and 49 m, respectively, which are greater than those (~ 40 m) over ocean15. If the vertical profile of l is fitted according to the Blackadar scheme (Eq. 6), a value of 104 m is obtained for l∞, while a value of 67 m is obtained for l∞ when using Eq. (7). The shape of the l profile is much closer to that of Eq. (7) than Eq. (6) as shown in Fig. 8c. The root-mean-square-error of the best fit using Eq. (6) is nearly twice of that using Eq. (7) compared to observed values.
Figure 9a shows Km at each measurement level as a function of wind speed. Besides the height dependence shown in Fig. 8b, Km also has a wind speed dependence. At 10 m and 160 m altitudes, Km increases with the mean wind speed up to 13 m s−1 and 21 m s−1, respectively. However, at 40 m and 320 m altitudes, the dependence of Km on the wind speed is relatively small. This increasing trend of Km with the wind speed in our observations generally agrees with previous studies16,20. The dependence of l on the wind speed at each level is shown in Fig. 9b, indicating that there is no significant relationship between l and the wind speed. Of note, the result of Tang et al.20 showed a weak dependence of l on the wind speed, while Zhang et al.16 result showed no dependence of l on the wind speed in agreement with our result.
Discussions and conclusions
In this study, multi-level tower observations of the low-level boundary layer structure of a landfalling TC were presented. Both mean and turbulence structures of the boundary layer were investigated. The mean wind profiles showed that the depth of the log wind profile layer was close to 100 m for the mean 10-m wind speed of 8.3 m s−1. This log layer depth increased to ~ 200 m as the mean 10-m mean wind speed increased to 18 m s−1. The eddy-covariance momentum flux data showed that 300 m was within the constant flux layer for 10-m wind speeds < 13 m s−1 while 300 m was beyond the constant flux layer at higher wind speeds. Our result suggests that the top of the log wind profile layer may not represent the surface layer depth defined by a constant flux layer. Furthermore, this result indicates that the surface layer depth defined using the constant flux layer method decreases with the increasing wind speed. Dropsonde composites over ocean also showed the PBL height decreased toward the storm center outside the RMW. Asassuming that the surface layer height variation trend with radius follows that of the boundary layer height, our result agrees with the previous finding based on dropsonde composites. This assumption requires evaluation in the future when collocated high-resolution Doppler radar or Doppler profile observations with flux observations are available.
Turbulence parameters, including the momentum flux, TKE, drag coefficient, roughness length, strain rate, vertical mixing length, and vertical eddy diffusivity were estimated using the tower data. The dependence of these parameters on height and wind speed were examined. The drag coefficient and roughness length were nearly constant with values of 0.0073 and 0.09 m, respectively. The vertical eddy diffusivity generally increased with the wind speed. The dependence of the mixing length on wind speed was very weak at all levels. The mean values of l were 8 m, 27 m, 55 m and 49 m, while those of Km were 11, 38, 96 and 78 m2 s−2 at 10 m, 40 m, 160 m and 320 m levels, respectively.
Km increased with height up to about 160 m altitude and then weakly decreased with height. The vertical mixing length increased with height up to 160 m and then became nearly constant above this height. The nonlocal MRF scheme and the Blackadar mixing length scheme were evaluated using our observational estimates. Results showed that an enhancement factor is needed to improve both the original MRF and Blackdar schemes over land. Our result showed that the vertical mixing length may be parameterized as a function of z rather than the usual l ≈ kz relationship. Future field experiments are required to further study the relationship between the mixing length and height during landfalling TCs, especially at wind speed range higher than that reported by the present study.
References
Smith, R. K., Zhang, J. A. & Montgomery, M. T. The dynamics of intensification in a Hurricane Weather Research and Forecasting simulation of Hurricane Earl. Q. J. R. Meteorol. Soc. 143, 293–308. https://doi.org/10.1002/qj.2922 (2017).
Zhang, J. A. & Rogers, R. F. Effects of parameterized boundary layer structure on hurricane rapid intensification in shear. Mon. Weather Rev. 147, 853–871. https://doi.org/10.1175/mwr-d-18-0010.1 (2019).
Kilroy, G., Montgomery, M. T. & Smith, R. K. The role of boundary-layer friction on tropical cyclogenesis and subsequent intensification. Q. J. R. Meteorol. Soc. 143, 2524–2536. https://doi.org/10.1002/qj.3104 (2017).
Riemer, M., Montgomery, M. T. & Nicholls, M. E. A new paradigm for intensity modification of tropical cyclones: Thermodynamic impact of vertical wind shear on the inflow layer. Atmos. Chem. Phys. 10, 3163–3188. https://doi.org/10.5194/acp-10-3163-2010 (2010).
Cione, J. J., Kalina, E. A., Zhang, J. A. & Uhlhorn, E. W. Observations of air–sea interaction and intensity change in hurricanes. Mon. Weather Rev. 141, 2368–2382. https://doi.org/10.1175/mwr-d-12-00070.1 (2013).
Braun, S. A. & Tao, W.-K. Sensitivity of high-resolution simulations of Hurricane Bob (1991) to planetary boundary layer parameterizations. Mon. Weather Rev. 128, 3941–3961. https://doi.org/10.1175/1520-0493(2000)129%3c3941:sohrso%3e2.0.co;2 (2000).
Nolan, D. S., Stern, D. P. & Zhang, J. A. Evaluation of planetary boundary layer parameterizations in tropical cyclones by comparison of in situ observations and high-resolution simulations of hurricane Isabel. Part II: Inner-core boundary layer and eyewall structure. Mon. Weather Rev. 137, 3675–3698. https://doi.org/10.1175/2009mwr2786.1 (2009).
Smith, R. K. & Thomsen, G. L. Dependence of tropical-cyclone intensification on the boundary-layer representation in a numerical model. Q. J. R. Meteorol. Soc. 136, 1671–1685. https://doi.org/10.1002/qj.687 (2010).
Chen, X., Bryan, G. H., Zhang, J. A., Cione, J. J. & Marks, F. D. A framework for simulating the tropical cyclone boundary layer using large-eddy simulation and its use in evaluating PBL parameterizations. J. Atmos. Sci. 78, 3559–3574. https://doi.org/10.1175/jas-d-20-0227.1 (2021).
Gopalakrishnan, S. G. et al. A study of the impacts of vertical diffusion on the structure and intensity of the tropical cyclones using the high-resolution HWRF system. J. Atmos. Sci. 70, 524–541. https://doi.org/10.1175/jas-d-11-0340.1 (2013).
Zhang, J. A., Nolan, D. S., Rogers, R. F. & Tallapragada, V. Evaluating the impact of improvements in the boundary layer parameterization on hurricane intensity and structure forecasts in HWRF. Mon. Weather Rev. 143, 3136–3155. https://doi.org/10.1175/mwr-d-14-00339.1 (2015).
Zhang, J. A., Rogers, R. F. & Tallapragada, V. Impact of parameterized boundary layer structure on tropical cyclone rapid intensification forecasts in HWRF. Mon. Weather Rev. 145, 1413–1426. https://doi.org/10.1175/mwr-d-16-0129.1 (2017).
Hazelton, A., Zhang, J. A. & Gopalakrishnan, S. Comparison of the performance of the observation-based hybrid EDMF and EDMF-TKE PBL schemes in 2020 tropical cyclone forecasts from the global-nested hurricane analysis and forecast system. Weather Forecast. https://doi.org/10.1175/waf-d-21-0124.1 (2022).
Zhang, J. A. et al. Evaluating the impact of improvement in the horizontal diffusion parameterization on hurricane prediction in the operational Hurricane Weather Research and Forecast (HWRF) Model. Weather Forecast. 33, 317–329. https://doi.org/10.1175/WAF-D-17-0097.1 (2018).
Zhang, J. A. & Drennan, W. M. An observational study of vertical eddy diffusivity in the hurricane boundary layer. J. Atmos. Sci. 69, 3223–3236. https://doi.org/10.1175/jas-d-11-0348.1 (2012).
Zhang, J. A., Marks, F. D., Montgomery, M. T. & Lorsolo, S. An estimation of turbulent characteristics in the low-level region of intense hurricanes Allen (1980) and Hugo (1989). Mon. Weather Rev. 139, 1447–1462. https://doi.org/10.1175/2010mwr3435.1 (2011).
Zhao, Z., Chan, P. W., Wu, N., Zhang, J. A. & Hon, K. K. Aircraft observations of turbulence characteristics in the tropical cyclone boundary layer. Bound. Layer Meteorol. 174, 493–511. https://doi.org/10.1007/s10546-019-00487-8 (2020).
Foken, T. Micrometeorology. 2 edn, 362 (Springer, 2008).
Zhang, F. & Pu, Z. Effects of vertical eddy diffusivity parameterization on the evolution of landfalling hurricanes. J. Atmos. Sci. 74, 1879–1905. https://doi.org/10.1175/jas-d-16-0214.1 (2017).
Tang, J., Zhang, J. A., Aberson, S. D., Marks, F. D. & Lei, X. Multilevel tower observations of vertical eddy diffusivity and mixing length in the tropical cyclone boundary layer during landfalls. J. Atmos. Sci. 75, 3159–3168. https://doi.org/10.1175/jas-d-17-0353.1 (2018).
Ming, J. & Zhang, J. A. Direct measurements of momentum flux and dissipative heating in the surface layer of tropical cyclones during landfalls. J. Geophys. Res. D Atmos. 123, 4926–4938. https://doi.org/10.1029/2017JD028076 (2018).
Lorsolo, S., Schroeder, J. L., Dodge, P. & Marks, F. Jr. An observational study of hurricane boundary layer small-scale coherent structures. Mon. Weather Rev. 136, 2871–2893. https://doi.org/10.1175/2008mwr2273.1 (2008).
Alford, A. A. et al. Near-surface maximum winds during the landfall of hurricane harvey. Geophys. Res. Lett. , 46, 973–982. https://doi.org/10.1029/2018GL080013 (2019).
Alford, A. A. et al. Transition of the Hurricane boundary layer during the landfall of hurricane Irene (2011). J. Atmos. Sci. 77, 3509–3531. https://doi.org/10.1175/jas-d-19-0290.1 (2020).
Choy, C. W., Lau, D. S. & He, Y. Super typhoons Hato (1713) and Mangkhut (1822), part II: Challenges in forecasting and early warnings. Wthr https://doi.org/10.1002/wea.3746 (2020).
Hong, S.-Y., Noh, Y. & Dudhia, J. A new vertical diffusion package with an explicit treatment of entrainment processes. Mon. Weather Rev. 134, 2318–2341. https://doi.org/10.1175/mwr3199.1 (2006).
Blackadar, A. K. The vertical distribution of wind and turbulent exchange in a neutral atmosphere. J. Geophys. Res. 67, 3095–3102. https://doi.org/10.1029/JZ067i008p03095 (1962).
Kepert, J. D. Choosing a boundary layer parameterization for tropical cyclone modeling. Mon. Weather Rev. 140, 1427–1445. https://doi.org/10.1175/mwr-d-11-00217.1 (2012).
Powell, M. D., Vickery, P. J. & Reinhold, T. A. Reduced drag coefficient for high wind speeds in tropical cyclones. Nature 422, 279–283. https://doi.org/10.1038/nature01481 (2003).
Smith, R. K. & Montgomery, M. T. On the existence of the logarithmic surface layer in the inner core of hurricanes. Q. J. R. Meteorol. Soc. 140, 72–81. https://doi.org/10.1002/qj.2121 (2014).
Stull, R. B. An Introduction to Boundary Layer Meteorology (Springer, 1988).
Pendergrass, W. & Arya, S. P. S. Dispersion in neutral boundary layer over a step change in surface roughness—I. Mean flow and turbulence structure. Atmos. Environ. 18, 1267–1279. https://doi.org/10.1016/0004-6981(84)90037-4 (1984).
Vickery, P. J., Wadhera, D. & Powell, M. D. A Hurricane Boundary Layer and Wind Field Model for Use in Engineering Applications. J. Applied Meteoro. Clim. 48, 381–405. https://doi.org/10.1175/2008JAMC1841.1 (2009)
Zhu, P. Simulation and parameterization of the turbulent transport in the hurricane boundary layer by large eddies. J. Geophys. Res. 113, D17104 https://doi.org/10.1029/2007JD009643 (2008).
Kosiba, K. A. & Wurman, J. Finescale dual-doppler analysis of hurricane boundary layer structures in Hurricane Frances (2004) at Landfall. Mon. Weather Rev. 142, 1874–1891. https://doi.org/10.1175/mwr-d-13-00178.1 (2014).
Acknowledgements
We are grateful to the Shenzhen Climate Observatory for providing the tower data. Funds: Zhongkuo Zhao, Yong Zhu, Chunxia Liu and Qilin Wan were supported by the Key Research and Development Projects in Guangdong Province with Grant number of 2019B111101002, National Major Fundamental Research Program of China (Grant No. 2018YFC1507401), and National Natural Science Foundation of China (41875021, 41830533). Jun Zhang was supported by U.S. Office of Naval Research Grant N00014-20-1-2071 and National Oceanic and Atmospheric Administration Grants NA21OAR4590370 and NA19OAR4590239. We appreciate the valuable comments given by Zhiqiu Gao and 2 anonymous reviewers for their comments that help substantially improve our paper.
Author information
Authors and Affiliations
Contributions
Z.Z.K. and J.A.Z. wrote the main manuscript text. J.A.Z. created the conceptual model and provided the interpretation of the main results. Z.Z.K. finished the data analyses. G.R.Q. collected the tower observations. C.P.W. assisted in plotting Fig. 1. C.P.W., Z.Y., L.C.X., W.Q.L. and contributed to the paper edits and provided suggestions on data analyses and presentations.
Corresponding authors
Ethics declarations
Competing interests
The authors declare no competing interests.
Additional information
Publisher's note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Zhao, Z., Gao, R., Zhang, J.A. et al. Observations of boundary layer wind and turbulence of a landfalling tropical cyclone. Sci Rep 12, 11056 (2022). https://doi.org/10.1038/s41598-022-14929-w
Received:
Accepted:
Published:
DOI: https://doi.org/10.1038/s41598-022-14929-w
Comments
By submitting a comment you agree to abide by our Terms and Community Guidelines. If you find something abusive or that does not comply with our terms or guidelines please flag it as inappropriate.