Journal topic
Atmos. Meas. Tech., 12, 4261–4276, 2019
https://doi.org/10.5194/amt-12-4261-2019
Atmos. Meas. Tech., 12, 4261–4276, 2019
https://doi.org/10.5194/amt-12-4261-2019

Research article 07 Aug 2019

Research article | 07 Aug 2019

# Analyzing the atmospheric boundary layer using high-order moments obtained from multiwavelength lidar data: impact of wavelength choice

Analyzing the atmospheric boundary layer using high-order moments obtained from multiwavelength lidar data: impact of wavelength choice
Gregori de Arruda Moreira1,2,3,4, Fábio Juliano da Silva Lopes4, Juan Luis Guerrero-Rascado1,2, Jonatan João da Silva4,5, Antonio Arleques Gomes4, Eduardo Landulfo4, and Lucas Alados-Arboledas1,2 Gregori de Arruda Moreira et al.
• 1Andalusian Institute for Earth System Research, Granada, Spain
• 3Astronomy, Geophysics and Atmospheric Science Institute, University of São Paulo, São Paulo, Brazil
• 4Nuclear and Energy Research Institute, São Paulo, Brazil
• 5Federal University of Western Bahia, Bahia, Brazil

Correspondence: Gregori de Arruda Moreira (gregori.moreira@usp.br)

Abstract

The lowest region of the troposphere is a turbulent layer known as the atmospheric boundary layer (ABL) and characterized by high daily variability due to the influence of surface forcings. This is the reason why detecting systems with high spatial and temporal resolution, such as lidar, have been widely applied for researching this region. In this paper, we present a comparative analysis on the use of lidar-backscattered signals at three wavelengths (355, 532 and 1064 nm) to study the ABL by investigating the high-order moments, which give us information about the ABL height (derived by the variance method), aerosol layer movement (skewness) and mixing conditions (kurtosis) at several heights. Previous studies have shown that the 1064 nm wavelength, due to the predominance of particle signature in the total backscattered atmospheric signal and practically null presence of molecular signal (which can represent noise in high-order moments), provides an appropriate description of the turbulence field, and thus in this study it was considered a reference. We analyze two case studies that show us that the backscattered signal at 355 nm, even after applying some corrections, has a limited applicability for turbulence studies using the proposed methodology due to the strong contribution of the molecular signature to the total backscatter signal. This increases the noise associated with the high-order profiles and, consequently, generates misinformation. On the other hand, the information on the turbulence field derived from the backscattered signal at 532 nm is similar to that obtained at 1064 nm due to the appropriate attenuation of the noise, generated by molecular component of backscattered signal by the application of the corrections proposed.

1 Introduction

The atmospheric boundary layer (ABL) is the part of the troposphere that is directly or indirectly influenced by the Earth's surface (land and sea) and responds to gases and aerosol particles emitted at the Earth's surface and to surface forcing at timescales of less than a day. Forcing mechanisms include heat transfer, fluxes of momentum, frictional drag and terrain-induced flow modification. The height of this layer (ABLH) varies from hundreds of meters up to a few kilometers, due to the intensification or reduction of convective or mechanical processes with additional contribution from orographic effects. The ABL presents a daily pattern controlled by the energy balance at the Earth's surface. Thus, after sunrise the positive net radiative flux (Rn) induces the rise of surface air temperature that initiates the convective process, which is responsible for the growth of the so-called mixing layer (ML) or convective boundary layer (CBL). This layer grows over the day, extending the region affected by the convective process until around midday, when it reaches maximum development. Slightly before sunset, the decrease in the incoming solar irradiance at the surface results in a radiative cooling of the Earth's surface. This cooling affects the closest air layer, diminishing the convective process. In this way, the CBL disappears and two new layers characterize the ABL, a stable and stratified layer known as the stable boundary layer (SBL) at the bottom and the residual layer (RL) over the latter with characteristics of the previous day's ML (Stull1988).

The turbulent features of the ABL are relevant in air quality and weather forecasting and thus are worthy of study. As a rule, the turbulent processes are treated as nondeterministic and, therefore, the turbulence is characterized by its statistical properties. Thus, high-order statistical moments are used to generate information about the turbulent fluctuation field, besides a description about mixing processes in the ABL .

ABL turbulence has been commonly studied by means of anemometer towers (e.g., Kaimal and Gaynor1983) and aircrafts . Nevertheless, the former have a use restricted to regions near the surface, due to their limited vertical range. Aircraft offer an alternative approach that allows for extending the analyses to higher atmospheric layers, but, conversely, they have a reduced time window, thus limiting the period of analysis. Due to the large variability of the ABL characteristics over the day, the use of systems endowed with high spatial and temporal resolution allows for studies with a higher degree of detail. Consequently, remote-sensing systems (mainly lidar) become an important tool in ABLH detection , as well as in turbulence studies . In addition, the different lidar techniques offer the possibility of analyses with several variables, such as vertical wind velocity by Doppler lidar , water vapor mixing profiles by Raman lidar or differential absorption lidar (DIAL) , temperature by rotational Raman lidar , and aerosol number density by elastic lidar or high spectral resolution lidar (HSRL) . Therefore, a wider range of results can be obtained, especially when different types of systems are synergistically used, as shown by , who combine elastic and Doppler lidar data for deriving the vertical aerosol flux.

have shown that it is feasible to use elastic lidar measuring at a high acquisition rate for characterizing the atmospheric turbulence. In particular, they have shown that the fluctuation of the range-corrected signal (RCS) at 1064 nm is a proxy for the fluctuation of the particle concentration, due to predominance of particle signature (βpar) in the total backscattered signal at this wavelength, and thus it can be used for observing the turbulent aerosol movements in the CBL. However, if other wavelengths are used in this kind of analysis, the effects of molecular backscatter coefficient (βmol) and atmospheric extinction (α) must be considered. In this work, we perform a comparative analysis regarding the use of three different wavelengths, namely 355, 532 and 1064 nm (the latter adopted as reference), to obtain the high-order moments, i.e., variance (σ2), skewness (S), kurtosis (K) and also the integral timescale (τ). Moreover, the interference of noise ε and βmol over the high-order moments and τ obtained from each one of the considered wavelengths was analyzed, in order to quantify how such factors can influence the correct interpretation of the statistical variables. The goal of this study is to show the viability of the proposed methodology for studying turbulence by computing the high-order moments of the backscattered signal at different wavelengths. We pay special attention to the advantages and limitations of each wavelength analyzed considering the importance of the proposed correction schemes. This paper is organized as follows. The measurement site and the experimental setup are introduced in Sect. 2. The methodology is described in Sect. 3. The comparisons and case studies are analyzed in Sect. 4. Conclusions are given in Sect. 5.

2 Experimental site and instrumentation

This study was performed at LEAL (Laser Environmental Applications Laboratory) from July 2017 to July 2018; however, to illustrate the analysis, only two cases are discussed in detail in this article. LEAL is part of the Latin America Lidar Network – since 2001. This lidar facility is installed at the Nuclear and Energy Research Institute in São Paulo, Brazil (2333 S, 4638 W, 760 m a.s.l.), in the largest metropolitan area in South America, with a population of approximately 12 million and endowed with a subtropical climate where winter is mild (15 C) and dry, while summer is wet and has moderately high temperatures (23 C) (IBGE, 2017). The São Paulo lidar station (SPU) has a coaxial ground-based multiwavelength Raman lidar system operated at LEAL. The system operates with a pulsed Nd : YAG laser, emitting radiation at 355, 532, and 1064 nm; a laser repetition rate of 10 Hz; and a laser beam pointing to zenith direction. The pulse energy (and stability) of each wavelength is 225 mJ (2 mJ) at 355 nm, 400 mJ (4 mJ) at 532 nm and 850 mJ (6 mJ) at 1064 nm. The Metropolitan São Paulo I (MSPI) lidar detects three elastic channels at 355, 532 and 1064 nm and three Raman-shifted channels at 387 nm, 408 nm (corresponding to the shifting from 355 nm by N2 and H2O) and 530 nm (corresponding to the rotational Raman shifting from 532 nm by N2, ). This system is equipped with Hamamatsu R7400 photomultipliers . The SPU lidar reaches full overlap at around 300 m a.g.l. . This system operates with temporal and spatial resolution of 2 s and 7.5 m, respectively.

3 Methodology

The turbulence study is based on the observation of the fluctuation q(t) of a determined variable (q) in the time t. The values are obtained as follows: firstly q(t) are averaged in packages that cover a certain time interval, from which the mean value ($\stackrel{\mathrm{‾}}{q}$) is extracted. Then, such values are subtracted from each q(t) value, providing the fluctuation q(t) as demonstrated in the equation below via Reynolds decomposition :

$\begin{array}{}\text{(1)}& {q}^{\prime }\left(t\right)=q\left(t\right)-\stackrel{\mathrm{‾}}{q}\left(t\right).\end{array}$

In the analysis performed with elastic lidar systems, the variable of interest is the aerosol number density (N), from which we obtain its fluctuation (N) by Eq. (1). However, elastic lidar systems do not directly provide the value of N. Therefore, considering the validity of Mie theory (where the aerosol backscatter coefficient is linked to the backscatter efficiency, particle radius (r) and the number of particles with radius r), we can write Eq. (2) under several assumptions. The premises adopted here are that (i) the variation in aerosol size with the relative humidity can be neglected, (ii) the atmospheric volume probed is composed of similar types of aerosol particles and (iii) the fluctuations of the aerosol microphysical properties are smaller than the fluctuations of the total number density in the volume probed by the lidar. More details about these assumptions can be found in . and demonstrated the relation between relative humidity and hygroscopic growth, thus such effects can start at 80 % RH. The two cases presented in this work were gathered in winter, the driest season of São Paulo. In particular, RH was below 80 % in both days (see Sect. 4). Such a value is lower than the RH threshold to hygroscopic effects indicated by the two papers mentioned above. Consequently, ignoring the hygroscopic growth and assuming similar types of aerosol throughout the atmospheric column, the following equation can be used:

$\begin{array}{}\text{(2)}& {\mathit{\beta }}_{\mathrm{aer}}\left(z,t\right)\phantom{\rule{0.125em}{0ex}}\approx \phantom{\rule{0.125em}{0ex}}N\left(z,t\right)Y\left(z\right),\text{(3)}& \mathit{\beta }{{}^{\prime }}_{\mathrm{aer}}\left(z,t\right)\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}{N}^{\prime }\left(z,t\right),\end{array}$

where βaer and $\mathit{\beta }{{}^{\prime }}_{\mathrm{aer}}$ represent the particle backscatter coefficient and its fluctuation, respectively. The variable z is the height above the ground, t is the time and Y is a variable that does not depend on time.

The lidar equation is defined as follows in :

$\begin{array}{}\text{(4)}& \begin{array}{rl}& P\left(z,t\right)\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}{P}_{\mathrm{0}}\frac{c\mathit{\tau }}{\mathrm{2}}A\mathit{\eta }O\left(\mathit{\lambda },z\right)\frac{\mathit{\beta }\left(\mathit{\lambda },z\right)}{{z}^{\mathrm{2}}}\\ & \phantom{\rule{0.25em}{0ex}}\phantom{\rule{0.25em}{0ex}}\phantom{\rule{0.25em}{0ex}}\mathrm{exp}\left[-\mathrm{2}\underset{o}{\overset{z}{\int }}\mathit{\alpha }\left(\mathit{\lambda },\phantom{\rule{0.25em}{0ex}}z{}^{\prime }\right)\mathrm{d}z{}^{\prime }\right],\end{array}\end{array}$

where P(λ, z) is the power signal (W) detected at a distance z (m) and time t (s), z is the distance (m) of the atmospheric volume investigated, P0 is the power emitted by the laser source (W), c is the speed of light (m s−1), τ the laser pulse duration (ns), A is the effective area of the telescope receptor (m2), η is a variable related to the efficiency of the lidar system and O(λ,z) is the laser beam receiver field-of-view overlap function. The most important quantities are β(λ,z), which is the total backscatter coefficient, due to atmospheric molecules, βmol(λ,z) and aerosol βaer(λ,z). In other words, $\mathit{\beta }\left(\mathit{\lambda },z\right)={\mathit{\beta }}_{\mathrm{mol}}\left(\mathit{\lambda },z\right)+{\mathit{\beta }}_{\mathrm{aer}}\left(\mathit{\lambda },z\right)$ (m sr)−1 at distance z and α(λ,z) is the total extinction coefficient, due to atmospheric molecules, αmol(λ,z) and aerosols αaer(λ,z). In other words, $\mathit{\alpha }\left(\mathit{\lambda },z\right)={\mathit{\alpha }}_{\mathrm{mol}}\left(\mathit{\lambda },z\right)+{\mathit{\alpha }}_{\mathrm{aer}}\left(\mathit{\lambda },z\right)$ (m)−1 at distance z. If the wavelength 1064 nm is used, we can neglect the influence of the extinction coefficient α(λ,z) provided by aerosol, the Rayleigh scattering generated by atmospheric molecules and the βmol(λ,z) . Therefore, Eq. (4) for the wavelength of 1064 nm can be rewritten as follows:

$\begin{array}{}\text{(5)}& \begin{array}{rl}& {\mathrm{RCS}}_{\mathrm{1064}}\left(z,t\right)\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}{P}_{\mathrm{1064}}\left(z,t\right)\cdot {z}^{\mathrm{2}}\\ & \phantom{\rule{0.25em}{0ex}}\phantom{\rule{0.25em}{0ex}}\phantom{\rule{0.25em}{0ex}}\approx \phantom{\rule{0.125em}{0ex}}G\cdot {\mathit{\beta }}_{\mathrm{1064}}\left(z,t\right)\phantom{\rule{0.125em}{0ex}}\approx \phantom{\rule{0.125em}{0ex}}G\cdot {\mathit{\beta }}_{\mathrm{aer}}\left(z,t\right),\end{array}\end{array}$

where RCS1064 is the range-corrected signal, G is a constant and the subscribed indexes represent the wavelength and the particles. Then, by applying Reynolds decomposition (Eq. 1) over Eq. (5), the following equation is derived as follows:

$\begin{array}{}\text{(6)}& {\mathrm{RCS}}_{\mathrm{1064}}{}^{\prime }\left(z,t\right)\phantom{\rule{0.125em}{0ex}}\approx \phantom{\rule{0.125em}{0ex}}{\mathit{\beta }}_{\mathrm{1064}}{}^{\prime }\left(z,t\right)\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}{\mathit{\beta }}_{\mathrm{aer}}{}^{\prime }\left(z,t\right)\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}N{}^{\prime }\left(z,t\right).\end{array}$

Our purpose is to evaluate the use of other wavelengths under the effects of the molecular backscatter coefficient (βmol). The interest is based on the best performance of the technology for detecting wavelengths in the VIS and UV and on the extended use of these wavelengths in the following lidar networks: the Latin America Lidar Network – LALINET , European Aerosol Research Lidar Network – EARLINET and the NASA Micropulse Lidar Network – MPLNet .

## 3.1 High-order moments

The high-order moments used in this study are obtained from RCS${}^{\prime }\left(z,t\right)$, generated by Eq. (1), where $\stackrel{\mathrm{‾}}{\mathrm{RCS}}\left(z\right)$ represents the 1 h average package of RCS(z,t) data. From this, the high-order moments, variance (σ2), skewness (S) and kurtosis (K) are obtained as demonstrated in the first column of Table 1, as well as their corrections and errors in the second and third columns of the same table, respectively. In Table 2 the physical meaning of each high-order moment in the context of the proposed analysis is presented.

Table 1Variables applied to statistical analysis of turbulence in the ABL region . The sum of subindex of autocovariance function Mij represents the order of the analysis.

Table 2Physical meaning of the high-order moments

The integral timescale (τ) is an important prerequisite in turbulence studies. It guarantees that most of the horizontal variability of the turbulent eddies is detected with good resolution, enabling the solution of inertial subrange and dissipation range in the spectrum and autocorrelation function, respectively . τ must be larger than the temporal resolution of the analyzed time series (SPU lidar station time acquisition is 2 s). In the same way as the high-order moments, such variables are obtained from RCS${}^{\prime }\left(z,t\right)$, as shown in the first column of Table 1.

## 3.2 Error analysis

The high-order moments and τ generated from RCS${}^{\prime }\left(z,t\right)$ can also be obtained from the following autocovariance function Mij, which has its order represented by the sum of the subscript i and j , according to the following equation:

$\begin{array}{}\text{(7)}& {M}_{ij}\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}\underset{\mathrm{0}}{\overset{{t}_{\mathrm{f}}}{\int }}{\left[\mathrm{RCS}{}^{\prime }\left(z,t\right)\right]}^{i}{\left[\mathrm{RCS}{}^{\prime }\left(z,t+{t}_{\mathrm{f}}\right)\right]}^{j}\mathrm{d}t,\end{array}$

where tf means final time. However, it is important to consider the influence of instrument noise ε(z,t) in the RCS${}^{\prime }\left(z,t\right)$ profile. Therefore, Mij can be rewritten as follows:

$\begin{array}{}\text{(8)}& \begin{array}{rl}& {M}_{ij}\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}\underset{\mathrm{0}}{\overset{{t}_{\mathrm{f}}}{\int }}{\left[\mathrm{RCS}{}^{\prime }\left(z,t\right)+\mathit{\epsilon }\left(z,t\right)\right]}^{i}\\ & \phantom{\rule{0.25em}{0ex}}\phantom{\rule{0.25em}{0ex}}\phantom{\rule{0.25em}{0ex}}{\left[\mathrm{RCS}{}^{\prime }\left(z,t+{t}_{\mathrm{f}}\right)+\mathit{\epsilon }\left(z,t+{t}_{\mathrm{f}}\right)\right]}^{j}\mathrm{d}t.\end{array}\end{array}$

Although atmospheric fluctuations are correlated in time, ε(z,t) is random and uncorrelated with the atmospheric signal; therefore, ε(z,t) is only associated with lag zero. Consequently, it is possible to obtain the corrected autocovariance function, M11(→ 0), removing the error ΔM11(0) of the uncorrected autocovariance function M11(0), as demonstrated in the equation below:

$\begin{array}{}\text{(9)}& {M}_{\mathrm{11}}\left(\to \mathrm{0}\right)\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}{M}_{\mathrm{11}}\left(\mathrm{0}\right)-\mathrm{\Delta }{M}_{\mathrm{11}}\left(\mathrm{0}\right).\end{array}$

Based on this concept, proposed two methods to correct for the noise influence:

• First lag correction: the lag zero (ΔM11(0)) is directly subtracted from the uncorrected autocovariance function M11(0), generating M11(→0).

• Two-thirds correction: a new lag zero value is obtained by the extrapolation of M11(0) to the first nonzero lag back to lag zero, using the inertial subrange hypothesis :

$\begin{array}{}\text{(10)}& {M}_{\mathrm{11}}\left(\to \mathrm{0}\right)\phantom{\rule{0.125em}{0ex}}=\phantom{\rule{0.125em}{0ex}}\stackrel{\mathrm{‾}}{RCS{}^{\prime }\left(z,t\right)}+C{t}^{\mathrm{2}/\mathrm{3}},\end{array}$

where C represents a parameter of turbulent eddy dissipation rate. In this study, we also used the first five points after lag zero to perform this correction. In Table 1 the second and third columns present the corrections and errors, respectively, of high-order moments and τ.

Figure 1Methodological description of data analysis performed for elastic lidar data.

Figure 1 shows how the procedures described in Sect. 3.1 and 3.2 are used. Firstly, the lidar data are acquired with a time resolution of 2 s. Then, these data are averaged in packages of 1 h (the influence of the time window is demonstrated in ) generating $\stackrel{\mathrm{‾}}{\mathrm{RCS}\left(z\right)}$, from which it is possible to obtain RCS${}^{\prime }\left(z,t\right)$, as illustrated in Eq. (1). Then, the two corrections shown in Sect. 3.2 are separately applied. Finally, the high-order moments and the τ, corrected and without correction, are estimated. The ABLH is estimated from the variance method, which establishes, in convective conditions, the top of CBL (ABLH) as the maximum of the variance of the RCS [${\mathit{\sigma }}_{\mathrm{RCS}}^{\mathrm{2}}\left(z\right)$] . Examples of the application of such a methodology in varied meteorological scenarios (presence of clouds and aerosol sublayers) are presented in .

4 Results

In this section we present two case studies, applying the methodology described in Sect. 3, in order to perform a comparative analysis about the influence of βmol and ε in the high-order moments and τ obtained from different wavelengths (355, 532 and 1064 nm).

Figure 2Time–height plot of RCS532.

## 4.1 Case study I: 26 July 2017

In this case study we gathered measurements from 13:00 to 19:00 UTC. Figure 2 shows the time–height plot of RCS532 during this period. This case is composed of two distinct periods, in the first 2 h there is an RL with an underlying shallow CBL. Nevertheless, in the last part of the second hour the CBL quickly grows and it mixes with RL, forming a fully developed ABL, with its top situated between 1500 and 1600 m from 15:00 to 19:00 UTC. The dotted black box between 17:00 and 18:00 UTC represents the period selected to perform the statistical analysis.

In order to check the hypothesis proposed by , which assumes that there is not particle hygroscopic growth and that the same type of aerosol is present in the entire atmospheric column in the ABL region, we analyzed the relative humidity and mixing ratio profile retrieved from radio-sounding measurements (http://weather.uwyo.edu/upperair/sounding.html, last access: 25 September 2018), launched at the Campo de Marte Airport (São Paulo, Brazil), which is about 10 km away from the SPU lidar system. Figure 3a and b show the relative humidity and mixing ratio profiles, respectively, measured on 26 Jul 2017 at 12:00 UTC. Both relative humidity and mixing ratio can be considered constant below 1500 m, with mean values of 67±8 % and 7.6±0.9 g kg−1, respectively. Since there is no large variation in water vapor mixing ratio and relative humidity values in this region, we assume that this case is not affected by particle hygroscopic growth. In addition, the AERONET Sun photometer data from the São Paulo station were retrieved in order to check the aerosol type, as can be seen in Fig. 3c.

Figure 3(a) Vertical profile of relative humidity derived from radio sounding. (b) Mixing ratio derived from radio sounding. (c) Aerosol-optical-depth-related Ångström exponent time series from AERONET, for measurements retrieved at 26 July 2017.

According to , the Ångström exponent (AE) can be a useful tool for distinguishing different types of atmospheric aerosols. Figure 3c shows the aerosol AE time series for the case study of 26 July 2017. The AE was calculated at the spectral range 340–440 and 440–675 nm using AERONET products from level 1.5 version 3 data. For this measurement period, the percentage variation in AE was no more than 3 % in both cases. Therefore, there are no considerable changes during the whole measurement period, which is a strong indication that there is no aerosol type change throughout the day.

In Fig. 4 the signal-to-noise-ratio (SNR) profile of the raw lidar signal is presented, as calculated by Heese (2010) at three wavelengths (1064 nm, red line; 532 nm, green line; and 355 nm, violet line) during the analyzed period. All wavelengths have values of SNR higher than 1 (the threshold for good quality) below the ABLH (dotted blue line) with a predominance of values lower than 1 in the free troposphere (FT), which was expected due to the strong reduction of aerosol concentration in such region. Although the three wavelengths have similar SNR profiles, close to ABLH the differences among them become more evident, principally the fast decreasing of the 355 nm and the high values of 532 nm.

Figure 4Signal-to-noise-ratio (SNR) profile of the three wavelengths (1064 nm, red line; 532 nm, green line; and 355 nm, violet line) obtained at 26 July 2017 between 17:00 and 18:00 UTC.

Figure 5 shows the autocovariance function (ACF), obtained between 17:00 and 18:00 UTC for the wavelengths 355 (ACF355), 532 (ACF532) and 1064 nm (ACF1064) at 1000 and 1700 m a.g.l. Thus, from the comparison of Figs. 2 and 5 it is possible to observe that the altitude chosen at 1000 m (red line) is situated below the top of CBL, while the altitude chosen at 1700 m (light green line) is in the FT. As expected, the ε, which is represented by the peak on the lag zero of the autocovariance function (5), increases with height for all the wavelengths due to reduction of aerosol load with height. ACF355 has the lowest intensity (around 90 % smaller those of ACF532 and ACF1064) and is clearly much more affected by the magnitude of ε that represents approximately 25 % of ACF355, while for ACF532 and ACF1064 the noise represents around 10 % of the respective autocovariance.

Figure 6 presents all statistical variables, their respective corrections and errors (shadows), generated from the methodology described in Sect. 3 for data acquired between 17:00 and 18:00 UTC.

Figure 5Autocovariance function at 1064 nm (a), 532 nm (b) and 355 nm (c) on 26 July 2017 from 17:00 to 18:00 UTC. For 355 nm the insert magnifies the signal 10x.

The variance profiles, ${\mathit{\sigma }}_{\mathrm{RCS}}^{\mathrm{2}}\left(z\right)$, with and without corrections for all wavelengths are represented in Fig. 6.01–.09. The low and almost constant values of uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{1064}}}^{\mathrm{2}}\left(z\right)$ from the bottom up to around 1000 m in altitude demonstrates an almost constant distribution of aerosol particles in this region, as can be seen in Fig. 6.01. Above 1000 m in altitude, the value of uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{1064}}}^{\mathrm{2}}\left(z\right)$ increases, reaching its maximum peak at around 1600 m. This peak represents the entrainment zone, the region where a mixing occurs between air parcels coming from the CBL and FT. According to , there is an intense variation in aerosol concentration during this process, generating a maximum in the uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{1064}}}^{\mathrm{2}}\left(z\right)$, which represents the ABLH. Above the ABLH, the aerosol concentration is considerably lower than in CBL and thus the uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{1064}}}^{\mathrm{2}}\left(z\right)$ is reduced to practically zero. This methodology for estimating the ABLH is named the variance method or centroid method and it was described by and , respectively. The main limitations of this method are its applicability only for CBL and the ambiguous results in complex cases, such as the presence of several aerosol layers (Emeis2011). In such situations more sophisticated methods like Wavelet , PathfinderTURB and POLARIS are recommended.

The uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{532}}}^{\mathrm{2}}\left(z\right)$, presented in Fig. 6.04, is rather similar to uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{1064}}}^{\mathrm{2}}\left(z\right)$, including the position of maximum peak. Nevertheless, although uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{355}}}^{\mathrm{2}}\left(z\right)$, presented in Fig. 6.07, also has the maximum peak situated at around 1600 m in altitude, the profile is noisier than the profiles obtained from the other wavelengths and, therefore, it is not possible to identify the regions with uniform aerosol distribution as evidenced in uncorrected ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{1064}}}^{\mathrm{2}}\left(z\right)$. Although the ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{355}}}^{\mathrm{2}}\left(z\right)$ is noisier than another ones, there is a low difference among the ABLH estimated from the three different wavelengths (lower than 10 %).

The two-thirds correction, shown in Fig. 6.02, 6.05 and 6.08, does not cause significant changes in the uncorrected profiles. On the other hand, the first lag correction significantly changes the profiles, thus ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{532}}}^{\mathrm{2}}\left(z\right)$ becomes very similar to ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{1064}}}^{\mathrm{2}}\left(z\right)$, while ${\mathit{\sigma }}_{{\mathrm{RCS}}_{\mathrm{355}}}^{\mathrm{2}}\left(z\right)$ continues with some differences, mainly in the region below the ABLH, as can be seen in Fig. 6.03, 6.06 and 6.09.

The integral timescale profiles ${\mathit{\tau }}_{\mathrm{RCS}{}^{\prime }}\left(z\right)$, with and without corrections, ${\mathit{\tau }}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{corr}}\left(z\right)$ and ${\mathit{\tau }}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}\left(z\right)$, respectively, calculated for the three wavelengths are presented in Fig. 6.10–.18. The ${\mathit{\tau }}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}\left(z\right)$ presents values larger than SPU lidar station time acquisition, shown as a dotted black line in the region below ABLH at all wavelengths, as can be seen in Fig. 6.10, 6.13 and 6.16. The largest values of ${\mathit{\tau }}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}\left(z\right)$ correspond to 1064 nm, while the lowest values are computed for 355, which is practically half of those obtained with the reference wavelength, 1064 nm. The low value for the ${\mathit{\tau }}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}\left(z\right)$ at 355 nm can be associated with the influence of the noise in the signal retrieved at this wavelength. The application of the two-thirds correction does not cause significant changes in the profiles, while the first lag correction changes the profiles significantly mainly in the region below the ABLH, as can be seen in Fig. 6.11, 6.14 and 6.17 and in Fig. 6.12, 6.15 and 6.18, respectively.

The skewness profiles SRCS(z) represent the degree of asymmetry in a distribution, where SRCS(z)=0 represents symmetric distributions around its mean, while positive and negative values represent cases where the tail of distribution is on the left and right side of the distribution, respectively. The uncorrected skewness profiles ${S}_{\mathrm{RCS}}^{\mathrm{unc}}\left(z\right)$ and their respective corrections ${S}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ for the three wavelengths are presented in Fig. 6.19–.27. The ${S}_{\mathrm{RCS}}^{\mathrm{unc}}\left(z\right)$ generated from the wavelengths 1064 and 532 nm, presented in Fig. 6.19 and 6.22, respectively, presents similar behavior up to approximately 150 m above the ABLHelastic, with positive values in the low part of the profile and one inflection point close to ABLHelastic. Such a point characterizes the transition from the region with entrainment of clean FT air into the CBL (negative values) to a region a few meters above the ABLHelastic with the presence of aerosol plumes (positive values) due to convective movement. This behavior of the skewness profile was also observed by and at the region of the ABLHelastic. Therefore, the same set of phenomena is evidenced by the dataset at both wavelengths, although there are differences in the absolute values.

The two corrections cause negligible variations in the profiles at 1064 nm, as shown in Fig. 6.20 and 6.21. On the other hand, the corrections applied to the ${S}_{\mathrm{RCS}}^{\mathrm{unc}}\left(z\right)$ at 532 nm produce skewness profiles similar to those at the reference wavelength, as can be seen in Fig. 6.23 and 6.24. It is possible to observe a difference between the skewness profiles at 532 nm (positive) and 1064 nm (negative) in the region above the ABLHelastic. Such difference is a consequence of the low values of signal-to-noise ratio (SNR) of the RCS' and consequently τRCS(z) observed in this region, preventing the observation of turbulence due to the technical limitations of the instruments used. The skewness profiles at 355 nm, ${S}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ and ${S}_{\mathrm{RCS}}^{\mathrm{unc}}\left(z\right)$ present a rather different behavior and do not follow the same variations observed in the reference wavelength profile, as can be seen in Fig. 6.25, 6.26 (two-thirds correction) and 6.27 (first lag correction). Consequently, it is not possible to observe the aerosol dynamics using the information gathered at the wavelength 355 nm.

The kurtosis profile ${K}_{\mathrm{RCS}{}^{\prime }}$ is the most complex high-order moment presented in this study and, consequently, in such profiles the differences among the three wavelengths are more evident. In the context of our analysis, the values of ${K}_{\mathrm{RCS}{}^{\prime }}$ are indicators of the mixing degree at each altitude, as well as of the intermittence of turbulence caused by large eddies. Because of some technical limitations of our lidar system, it is possible to resolve eddies only up to a predetermined size. Therefore, in regions where turbulence is performed in overly small scales, our system cannot solve these eddies. The kurtosis equation presented in the Table A1 represents the kurtosis of a normal distribution, which is equal to 3 (Bulmer, 1965). Consequently, such a value is applied as a threshold in the analyses performed in this paper. Values lower than 3 represent a well-mixed region, indicating a flatter distribution in comparison to a normal distribution, thus the turbulence caused by large eddies can be characterized as frequent. In contrast, values higher than 3 indicate a peaked distribution in comparison to a Gaussian distribution. In other words, there is an unusual variation in the RCS${}^{\prime }\left(z,t\right)$, which represents a low degree of mixing and the presence of an infrequent large eddy turbulence .

The ${K}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}$ at 532 and 1064 nm have some differences in the region below 1300 m in altitude, where the profile at 1064 nm only shows values higher than 3, representing a region with a low degree of mixing, while the ${K}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}$ obtained from 532 nm is composed of values higher and lower than 3. From 1300 to 3500 m in altitude, the profiles of these two wavelengths are very similar, with values lower than 3 in the region below the ABLH, characterizing a well-mixed region, a peak of values higher than 3 in the first meters above the ABLH, and values between 3 and 4 in the remainder of the profile. The corrections do not cause significant changes in the 1064 nm kurtosis profile, as can be seen in Fig. 6.29 and 6.30. However, the variation in the kurtosis profile at 532 nm is remarkable, as presented in Fig. 6.32 and 6.33. Thus, it becomes very similar to the 1064 nm profile, mainly with the use of first lag correction. The ${K}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}$ obtained from 355 nm does not have the same variations observed in the profiles obtained at the reference wavelength. Therefore, it is not possible to identify the occurrence of the phenomena previously described. The same problem occurs in the ${K}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{corr}}$, although the application of corrections causes relevant variations in relation to values observed in ${K}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{unc}}$.

Figure 6High-order moments and τ without correction and corrected by the two-thirds law and first lag correction at 1064 (red line), 532 (green line) and 355 nm (violet line) on 26 July 2017 from 17:00 to 18:00 UTC. The horizontal dotted blue line represents the ABLHelastic.

Figure 7 shows the profiles of βmol, βmol+aer and βratio of the wavelengths 1064 nm (Fig. 7.1 and 7.2), 532 nm (Fig. 7.3 and 7.4) and 355 nm (Fig. 7.5 and 7.6). Such profiles were obtained from the data retrieved during the period of analysis presented previously. From Fig. 7.1 it is possible to observe the predominance of βaer in the wavelength 1064 nm and because of this the βratio presented in Fig. 7.2 achieved large values. In Fig. 7.3 it is possible to observe the predominance of βaer in the wavelength 532 nm and a small impact of βmol. The backscatter profile at 355 nm presented in Fig. 7.5 shows that both βaer and βmol, have the same order of magnitude but with a predominance of βaer. Such profiles justify the differences and similarities observed in the results obtained from each wavelength. Although the backscatter profiles at 532 nm are composed of the molecular and aerosol signatures, the predominance of the latter enables the observation of the phenomena presented by high-order moment profiles obtained from the reference wavelength. The small presence of βmol can also be an indicator of the low values of noise, although they are higher than the values of reference wavelength.

Figure 7Total (aerosol and molecular) backscatter profile and backscatter ratio retrieved using the Klett–Fernald–Sasano inversion technique for 1064, 532 and 355 nm, respectively, for data retrieved on 26 July 2017 at 17:00–18:00 UTC by the SPU lidar system.

## 4.2 Case study II: 19 July 2018

In this case study measurements were gathered with the SPU lidar station from 12:00 to 21:00 UTC. Figure 8 shows the time–height plot of RCS532 during this period (the time–height plot of the RCS355 and RCS1064 are available in the Supplement as Figs. S1 and S2, respectively). At the beginning of measurement it is possible to observe the presence of an ascending CBL covered by a RL, which has the top situated at around 1300 m in altitude. At approximately 15:30 UTC the CBL breaks up the RL and becomes fully developed, thus its growth speed is reduced and the value of top height remains practically constant (1600 m) from 17:00 UTC until 21:00 UTC. The dotted black box in Fig. 8 represents the chosen period for performing the statistical analysis (18:00–19:00 UTC).

Figure 8Time–height plot of RCS532.

In the same way as case study I, the hypothesis proposed by is validated from the profiles presented in Fig. 9 (more information are available in the Suplement as Fig. S3). The profiles of relative humidity and mixing ratio, presented in Fig. 9a and b, respectively, do not have large variations in the CBL below 1200 m in altitude. In addition, the aerosol-optical-depth-related Ångström exponent time series did not show considerable changes during the whole measurement period, as can be seen in Fig. 9c. For this measurement period the percentage variation in AE was no more than 4 % and 3 % in the spectral range 340–440 and 440–675 nm, respectively. Therefore, there are no considerable changes during the whole measurement period, which is a strong indication that there are no aerosol type change throughout the day and the atmospheric conditions are not propitious for particle hygroscopic growth events.

Figure 10 presents the SNR profile of the raw lidar signal of the three wavelengths (1064 nm; red line; 532 nm, green line; and 355 nm, violet line) during the analyzed period. In the ABL region, all wavelengths have similar profiles with values higher than 1. However, as ABLH approaches, the values of SNR reduce sharply, mainly at 355 nm. Consequently, in the FT region all profiles have values lower than 1, as expected.

Figure 9(a) Vertical profile of relative humidity derived from radio sounding. (b) Mixing ratio derived from radio sounding. (c) Aerosol-optical-depth-related Ångström exponent time series from AERONET, for measurements retrieved at 19 July 2018.

Figure 11 shows a comparison among the ACF obtained from the three wavelengths 1064 nm (Fig.11a), 532 nm (Fig.11b) and 355 nm (Fig.11c), between 18:00 and 19:00 UTC at two heights: 1000 m (red line) and 1700 (green line). In the same way as case study I, the region above ABLH (green line) is more influenced by noise than the region situated below this height (red line). The intensity of ACF532 and ACF1064 are very similar, although the presence of noise in the former, which is 40 % and 46 %, below and above ABLH, respectively, is higher than in the latter, 27 % and 30 %, below and above ABLH, respectively. The ACF355 presents a lower intensity value in comparison to the other two wavelengths and a strong presence of noise below and above the ABLH, 50 % and 67 %, respectively.

Figure 10Signal-to-noise-ratio (SNR) profile of the three wavelengths (1064 nm; red line, 532 nm green line; and 355 nm, violet line) obtained on 19 July 2018 between 18:00 and 19:00 UTC.

The three high-order moments and τRCS, both corrected by the first lag correction and obtained between 18:00 and 19:00 UTC, are presented in Fig. 12. The ${\mathit{\tau }}_{\mathrm{RCS}}^{\mathrm{corr}}$ for all wavelengths has values higher than 2 s from the bottom of profile up to the first meters above the ABLHelastic with a maximum of ${\mathit{\sigma }}_{\mathrm{RCS}{}^{\prime }}^{\mathrm{2}}\left(z\right)$. Although the values obtained from 1064 nm and 532 nm are almost twice as large as the values generated from 355 nm (in the same way as case study I), there are some differences among the maxima of the [${\mathit{\sigma }}_{\mathrm{RCS}}^{\mathrm{2}}\left(z\right)$] and they do not significantly influence the ABLH estimation, thus the difference among the ABLH obtained from each wavelength is lower than 10 %. The positive values of ${S}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ of 1064 nm indicate the presence of aerosol updrafts from the bottom of the profile up to around 750 m in altitude. From this height up to the ABLH, the ${S}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ is characterized by negative values, which represents a region with entrainment of clean FT air into the CBL. In the same way as case study I, there is an inflection point at ABLH, which reproduces the transition from negative to positive values, the latter values indicating the presence of aerosol updraft layers in the first 200 m above the ABLH. Such behavior in the region of ABLH was also observed by and and can be considered characteristic of convective regime. The ${S}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ obtained from the wavelengths 1064 and 532 nm presents an identical pattern of behavior, demonstrating the occurrence of the same phenomena. The ${S}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ obtained from the wavelength 355 nm, in the same way as the previous case study, does not exhibit the behavior observed in the reference wavelength, presenting only positive values in the whole profile. Therefore, it is not possible to identify variations in the aerosol dynamic using 355 nm.

Figure 11Autocovariance function at 1064 (a), 532 (b) and 355 nm (c) on 19 July 2018 from 18:00 to 19:00 UTC.

The ${K}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ obtained from the wavelength 1064 nm presents values higher than 3 from the bottom up to around 1300 m in altitude, characterizing a region with a low degree of mixing. From 1300 m up to the ABLH the ${K}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ has values lower than 3, which characterize this region as showing a large degree of mixing and (in a more evident way) the presence of turbulence. Such behavior occurs mainly due to entrainment of cleaner air. A few meters above the ABLH, the ${K}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ has a great peak, which occurs due to rare aerosol plumes penetrating at this region. Such behavior was also observed in case study I, as well as by and . Above the ABLH the profile only has values higher than 3; however, as ${\mathit{\tau }}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ decreases to values close to zero and low values of SNR of the RCS are characteristic of this region, it is not possible to extract conclusive information from ${K}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$. In the same way as the comparison performed with other variables, the ${K}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ obtained from the wavelength 532 nm presents similar behavior to the profile obtained from 1064 nm, thus the same phenomena can be observed. On the other hand, the ${K}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ obtained from the wavelength 355 nm does not allow for observing the behavior detected in the profile obtained from the reference wavelength because along the whole profile the ${K}_{\mathrm{RCS}}^{\mathrm{corr}}\left(z\right)$ at 355 nm presents values higher than 3.

Figure 12High-order moments corrected by first lag correction at 1064 (red line), 532 (green line) and 355 nm (violet line) on 19 July 2018 from 18:00 to 19:00 UTC.

Figure 13 shows the composition signal of βaer and βmol, retrieved during the analyzed period of this case study (18:00–19:00 UTC) using the Klett–Fernald–Sasano inversion , at each one of the three wavelengths, as well as the βratio calculated using the backscatter profile of aerosol and molecular component (Bucholtz1995). From Fig. 13.1 it is possible to observe that the backscattered signal at 1064 nm has a predominance of βaer, with almost null values of βmol. The composition of the backscattered signal at 532 nm is shown in Fig. 13.3. Although the component βmol has values higher than the ones observed in wavelength 1064 nm, the component βaer is predominant in the backscattered signal composition. The backscattered signal at 355 nm, presented in Fig. 13.5, unlike the other wavelengths, is predominantly composed of βmol and has a low percentage of βaer.

Figure 13Total (aerosol and molecular) backscatter profile and backscatter ratio retrieved using Klett–Fernald–Sasano inversion technique for 1064, 532 and 355 nm, respectively, for data retrieved on 19 July 2018 from 18:00 to 19:00 UTC.

From the results obtained in both case studies, it is possible to observe the influence of the wavelength in the proposed methodology. The wavelength 1064 nm, considered our signal reference, has a negligible influence on component molecules; therefore, the backscatter signal retrieved at 1064 nm can be considered approximately equal to the backscatter signal retrieved only by the aerosol contribution, β1064 ≈ βaer. Before taking into account the approximation demonstrated in Eq. (5) (RCS1064 ≈ β1064), we can conclude that the range-corrected signal retrieved from a lidar at 1064 nm can be considered, with good precision, approximately equal to the backscatter signal retrieved at the same wavelength for aerosol components, RCS1064 ≈ βaer. Such a relation enables the observation of behavior of aerosol plumes from high-order moments. In the case of wavelength 532 nm, β532 is composed of βaer and βmol (${\mathit{\beta }}_{\mathrm{532}}={\mathit{\beta }}_{{\mathrm{aer}}_{\mathrm{532}}}+{\mathit{\beta }}_{{\mathrm{mol}}_{\mathrm{532}}}$); however, as shown in Figs. 8 and 13, there is a predominance of βaer. Although the high-order moment profiles obtained from the wavelength 532 nm are noisier than that one generated from the reference wavelength data, the phenomena observed from the 1064 nm data can also be observed in 532 nm data, mainly after the application of first lag correction. Consequently, the wavelength at 532 nm can be used in the proposed methodology providing satisfactory results. On the other hand, the backscatter at 355 nm is predominantly composed of βmol and has a small percentage of βaer, as presented in Figs. 8 and 13.

This fact justifies the low quality observed in the results retrieved using the wavelength of 355 nm. As established in Eq. (3), the turbulent variable is directly associated with $\mathit{\beta }{{}^{\prime }}_{\mathrm{aer}}$, but, due to the low contribution of this component in the backscatter signal at 355 nm, the supposition established in Eq. (6) cannot be applied. Consequently, the high-order moments obtained from the proposed methodology are noisier and the value of ${\mathit{\tau }}_{\mathrm{RCS}{}^{\prime }}\left(z\right)$ is almost half of the value obtained from the reference wavelength, both due to influence of βmol that presents the stronger contribution to the total backscatter coefficient at this wavelength. Therefore, the behavior observed in the high-order moment profiles generated from the 1064 nm wavelength data can be detected as partially (or even totally) suppressed as the complexity of high-order moments increases. In both case studies it was possible to observe from the third-order moment (skewness) that the results obtained from the wavelength 355 nm provide misinformation.

5 Conclusions

In this paper we performed a comparative analysis about the use of different wavelengths (355, 532 and 1064 nm) in studies about turbulence. The data were acquired with an elastic lidar, from the SPU lidar station of LALINET, by measurements gathered at high frequency (0.5 Hz) from July 2017 to July 2018. The RCS provided by this system was used to calculate high-order moments (variance, skewness and kurtosis) and the integral timescale, which were applied to characterization of aerosol dynamics. Based on previous studies, the wavelength 1064 nm was adopted as reference due to predominance of βaer.

Two case studies (26 July 2017 and 19 July 2018) were performed in order to verify the proposed methodology, as well as the applicability of each wavelength. In both cases, the results obtained from 1064 nm wavelength demonstrate that the high-order moments can support a detailed analysis of the ABL region. In addition, it is remarkable that the values of τRCS in the region below the ABLH demonstrates the viability of the proposed methodology. The high-order moments obtained from the wavelength 532 nm are slightly more influenced by the noise than the results obtained from the reference wavelength (the value of noise can be observed by the ACF532. However, the same phenomena observed in the high-order moment profiles generated from the 1064 nm wavelength can be observed in the one generated from the wavelength 532 nm, mainly with the application of first lag correction. On the other hand, the high-order moments obtained from 355 nm have a strong presence of noise, and thus the phenomena presented in the high-order moments obtained from 1064 nm wavelength cannot be observed from the third-order moment (skewness) in 355 nm high-order moment profiles.

The analysis of the backscatter signal at each wavelength shows that for both case studies βaer is the predominant contribution at 532 nm, while βmol is predominant at 355 nm. In this way, the high-order statistics become noisier at 355 nm and cannot be applied in the proposed methodology. In contrast, the predominance of βaer at 532 nm implicates that this wavelength provides results similar to those obtained at 1064 nm, especially after the application of first lag correction. Consequently, the 532 nm wavelength can be used to apply the proposed methodology, providing results similar to that obtained from 1064 nm wavelength.

The results obtained in this paper show the viability of the proposed methodology and its applicability to the 532 nm wavelength, due to the similarity with results derived at 1064 nm and the evidence of a low ε influence. On the other hand, the wavelength 355 nm does not provide satisfactory results in such a methodology due to the predominance of molecular signal in its composition. However, a better assessment of the molecular backscatter at 355 can reduce the influence of the noise caused by molecular signal and improve the results obtained from the data generated from this channel. In addition, the high-order moments obtained from the SPU lidar station using an elastic lidar data provided us with detailed information about some phenomena in the ABL, giving us a better comprehension of the aerosol dynamics.

Data availability
Data availability.

Data used in this paper are available upon request from corresponding author (gregori.moreira@usp.br).

Supplement
Supplement.

Author contributions
Author contributions.

The conceptualization was done by GdAM, JLGR and LAA. The methodology was done by GdAM, JLGR and LAA. The analysis software was developed by GdAM. The experiments were designed by GdAM. The data acquisition was performed by GdAM, FJSL, JJS and AAG. The formal analysis, investigation, writing of the original draft, preparation and review of the writing, and editing were performed by GdAM, FJSL, JLGR and LAA. The supervision, project administration and funding acquisition were done by LAA and EL.

Competing interests
Competing interests.

The authors declare that they have no conflict of interest.

Acknowledgements
Acknowledgements.

This work was supported by the Andalusia Regional Government, through the project P12-RNM-618 2409, the Spanish Agencia Estatal de Investigación (AEI), through projects CGL2016-81092-R, CGL2017-90884-REDT and CGL2017-83538-C3-1-R, and the Spanish Ministry of Economy and Competitiveness through projects CGL2016-81092-R, and CGL2017-90884-REDT. We acknowledge the financial support by the European Union's Horizon 2020 research and innovation program through project ACTRIS-2 (grant agreement no. 621654109). The authors gratefully acknowledge the University of Granada that supported this study through the Excellence Units Program and “Plan Propio. Programa 9 Convocatoria 2013”. The authors would also like to acknowledge The National Council for Scientific and Technological Development (CNPQ) for their support (projects 152156/2018-6, 432515/2018-6 and 150716/2017-6), the São Paulo Research Foundation (FAPESP; grant no. 2015/12793-0) and the FEDER program for the University of Granada that supported this study through the Excellence Units Program.

Financial support
Financial support.

This research has been supported by the Andalusian Regional Government (P12-RNM-618 2409 project), the Spanish Agencia Estatal de Investigación (AEI, CGL2016-81092-R, CGL2017-90884-REDT and CGL2017-83538-C3-1-R projects), the Spanish Ministry of Economy and Competitiveness (CGL2016-81092-R, and CGL2017-90884-REDT projects), the European Union's Horizon 2020 project (NACTRIS 2, grant no. 621654109), the University of Granada, the National Council for Scientific and Technological Development (CNPQ, 152156/2018-6, 432515/2018-6 and 150716/2017-6 projects), the São Paulo Research Foundation (FAPESP, grant no. 2015/12793-0), and the FEDER program for the University of Granada.

Review statement
Review statement.

This paper was edited by Vassilis Amiridis and reviewed by three anonymous referees.

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