1 Introduction
The radiative effect of high-altitude cirrus clouds plays a fundamental role in the global radiation budget . Despite that, they have been designated as poorly understood by because of a lack of knowledge of their dynamic, microphysical and radiative properties. Indeed, cirrus clouds' critical role in the climate comes from the facts that (1) they are the only cloud that can readily cool or warm the top of the atmosphere and the surface, during daytime, depending on their properties , and that (2) they have a high occurrence frequency globally . In fact, demonstrated through a 1-year long lidar dataset that positive or negative daytime cirrus cloud forcing could occur depending on the cloud optical depth and the solar zenith angle. All these results call for more investigation on the cirrus cloud properties and their 3D spatial distribution at the global scale.
Cirrus clouds are mainly composed of ice crystals and can form through different atmospheric mechanisms, giving rise to cirrus clouds with different physical, geometrical and optical properties. In the mid-latitude regions, the most common atmospheric mechanisms for cirrus cloud formation are the deep convective outflow , the large-scale uplift of humid layers induced by the Asian monsoon and the cooling associated with the wave activity in the upper troposphere . Therefore, the atmospheric mechanisms of cirrus formation govern the type of cirrus formed. For example, sub-visible cirrus clouds (COD 0.03) are formed because of the cooling near tropopause height, while opaque cirrus clouds are generally formed by deep convective outflow at lower heights except during deep overshooting convections . Cirrus clouds can also be triggered by aircraft contrails. These contrails are caused by aircraft engine exhaust, primarily water, which turns into ice crystals at low temperature. Cirrus contrails are often formed under persistent humidity conditions . Their lifetimes sometimes reach several hours and their spatial extension may evolve up to 10 km in width and between 0.5 and 1.5 km in depth. Moreover, cirrus contrails from several aircraft may often overlap and form together a larger contrail cirrus cloud, making it more difficult to distinguish from other cirrus.
Ice cloud microphysics and their relationship with optical and radiative properties are complex. Cirrus clouds can be characterized by some key parameters such as the mid-cloud altitude and temperature, cloud extinction coefficient, cloud optical depth, lidar ratio (LR) or linear cloud depolarization ratio (LCDR). While the LR and LCDR are related to the microphysical properties of the ice crystals contained in cirrus clouds, such as their shape and/or orientation, the mid-cloud altitude and temperature as well as the cloud extinction coefficient play an important role in determining the cloud radiative properties. Up to the present date, there has been no exact theoretical solution for scattering and absorption by non-spherical ice particles . Nevertheless, scattering models for cirrus clouds have been developed, such as , which relates the cirrus ice water content and mid-cloud temperature to their extinction coefficient and radiative properties. Alternatively, and propose a relationship between the ice water content with the extinction coefficient and the cloud temperature with the effective geometric diameter of ice crystals. From these properties, the cirrus cloud radiative properties can be calculated with the parametrizations. These and other ways of obtaining the radiative properties of cirrus clouds have several points in common, such as the need to calculate the cloud extinction, where the application of remote sensing is essential, or the assumption of the ice crystal shape distribution in empirical models, further complicating the results.
Lidar systems are the only remote sensing instruments capable of retrieving simultaneously vertical profiles of extinction and temperature. However, only a few lidar systems are equipped with the technique for temperature detection (in general, the integration lidar technique or the rotational Raman technique; see ). In such cases, radiosoundings, when available, can provide the temperature measurements . Although cirrus clouds are not their primary target, many projects, networks and instruments worldwide are capable of retrieving cirrus extinction (or a good guess of it) from the ground: the European Aerosol Research LIdar NETwork (EARLINET) now included in the Aerosols, Clouds and Trace gases Research Infrastructure (ACTRIS) and the Micro Pulse Lidar NETwork (MPLNET) . From space, there are the Cloud-Aerosol Lidar and Infrared Pathfinder Satellite Observations (CALIPSO) , AEOLUS and Earth Cloud, Aerosol and Radiation Explorer (EarthCARE) .
The objective of this paper is to show a statistical analysis of cirrus cloud properties based on 4 years of continuous ground-based lidar measurements obtained from NASA (MPLNET;
2 Instrumentation
Five years (2018 to 2022) of continuous lidar measurements performed with the MPL in Barcelona, north-eastern Spain, are used in this paper. Co-located radiosoundings launched by the Meteorological Service of Catalonia (Meteocat) at 00:00 and 12:00 UTC are used as well. For the application of the two-way transmittance method for a high-altitude cirrus scene measured from a spaceborne lidar system, data from the CALIPSO satellite have also been used.
2.1 The MPL
The NASA Micro Pulse Lidar network is a federated network of Micro Pulse Lidar systems designed to measure aerosol and cloud vertical structure and boundary layer heights . All the sites in MPLNET currently use the MPL, which was developed at NASA Goddard Space Flight Center (GSFC) in the early 1990s. The MPL was patented and subsequently licensed to industry for commercial sales beginning in the mid-1990s. The data collected by MPL instruments are continuous, day and night, over long time periods from sites around the world. Most MPLNET sites are co-located with sites in the NASA AErosol RObotic NETwork (AERONET). MPLNET data have contributed to many studies and applications, e.g. domestic and international aerosol and cloud research , climate change and air quality studies and support for NASA satellite and sub-orbital missions and aerosol modelling and forecasting .
The lidar system used in this study is a Polarized Micro Pulse Lidar (P-MPL) system that is integrated into the NASA Micro Pulse Lidar network. The Barcelona MPL is located on the roof of the CommSensLab (
The MPL system consists of a compact, eye-safe lidar designed for full-time unattended operation . It uses a pulsed solid-state laser-emitting low laser pulse energy 6 J at a wavelength of 532 nm and a pulse repetition frequency of 2500 Hz. As both transmitting and receiving optics, the system uses a co-axial “transceiver” design with a Cassegrain telescope. The MPL systems use an optical set-up that consists of an actively controlled liquid crystal retarder which makes the system capable of conducting polarization-sensitive measurements by alternating between two retardation states , while the polar and cross-polar signals are separately acquired and recorded. Additionally, the MPL systems have a narrow receiver field of view of approximately 100 rad , narrow interference filters, an approximately 0.3 nm full width at half maximum (FWHM) and photon-counting detection.
Data are centrally processed at NASA GSFC with the MPLNET version 3 (V3, released in 2021) algorithm and level-1.5 (L15, near-real-time, quality-assured) data . In particular, we used the MPLNET Normalized Relative Backscatter (NRB) product provided with 1 min temporal resolution and at 75 m vertical resolution. This product includes correction of dead time, dark count, after-pulse, background, overlap and polarization calibration . Cloud base height and cloud top height as well as cloud optical depth and extinction coefficient profiles, linear volume depolarization ratio and cloud phase belong to the MPLNET Cloud (CLD) product described by . A multi-temporal averaging scheme is used to improve high-altitude cloud detection under conditions of a weak signal-to-noise ratio by combining NRB signal profiles averaged to short (1 min), medium (5 min) and long (21 min) temporal resolutions into a merged cloud scene.
2.2 Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) lidar
The CALIPSO satellite provides new insight into the role that clouds and atmospheric aerosols play in regulating Earth's weather, climate and air quality through the analysis of their vertical structure and properties . CALIPSO is composed of three co-aligned nadir-viewing instruments: CALIOP, the Imaging Infrared Radiometer (IIR) and the Wide Field Camera (WFC). CALIPSO was launched on 28 April 2006 with the cloud profiling radar system on the CloudSat satellite. They both fly in formation with three other satellites in the A-train constellation to enable an even greater understanding of the climate system from the broad array of sensors on these other spacecraft.
CALIOP is an elastic-backscatter lidar that orbits Earth at a height of 705 km and measures attenuated aerosol backscatter profiles at 532 and 1064 nm, including parallel and perpendicular polarized components at 532 nm, with highly variable horizontal and vertical resolutions for different atmospheric layers (i.e. aerosol, cloud and surface returns) . The laser has a beam divergence of 100 mrad corresponding to a spot diameter of 70 m at Earth's surface. The receiver field of view of the 1 m telescope is 130 rad. In order to implement the two-way transmittance method with CALIPSO data, the CALIPSO product used is the “Standard”, with Level 1 (L1) and Version 4.51 (V4.51) available from September 2022. This product has a horizontal (vertical) resolution, depending on the altitude range from to 5 km (30 to 300 m), and includes total and perpendicular attenuated, calibrated backscatter coefficients along with their calibration constants. In particular, it contains a number of corrections to the 1064 nm baseline shape (instrument characterization), polarization gain ratio (used to derive backscatter and depolarization) and the 532 and 1064 nm calibrations to mitigate low energies.
2.3 Radiosoundings
Radiosondes are launched twice every day (at 00:00 and 12:00 UTC) by Meteocat at a distance of less than 1 km from the MPL site. The radiosondes provide measurements of pressure, altitude, temperature, relative humidity, wind speed and direction. Only altitude, pressure and temperature profiles have been used in the present work.
3 The lidar two-way transmittance method
3.1 Literature review
In order to get reliable products of the optical properties of clouds and aerosols, different techniques are currently employed to invert elastic lidar signals. The solution of the inverse problem is not straightforward because there are two unknown parameters in the lidar equation: the backscatter and extinction coefficients. Therefore, over the years, this problem has been approached from several perspectives, such as , , and ; the two-way transmittance method ; and others .
In particular, the two-way transmittance method compares the lidar signals just below and above the cloud, assuming that the lidar signals correctly represent the scattering medium and that the zones below and above the cloud are aerosol-free, cloud-free or molecular . On the one hand, the main advantage of this method is that it does not require any a priori optical and/or microphysical hypotheses like knowledge of the cloud lidar ratio, defined as the ratio of the cloud extinction to backscatter coefficients integrated over the cloud . This parameter is not the same for all cirrus clouds and depends on the ice crystal properties of cirrus clouds, although its value can be assumed to be in a range between 20 and 30 sr for ice clouds . On the other hand, the major disadvantages of this method are that one has to make sure that the regions above and below the aerosol or cloud layer are molecular, and so it depends strongly on the aerosol-free quality of the normalization regions below and above the cirrus cloud. For this reason, it is necessary to select particle-free regions far enough from the cloud layer in order to normalize the signal; otherwise, this method cannot be applied. Another disadvantage is that the retrievals are not accurate for very thin clouds (some studies suggest that the cloud optical depth must be greater than 0.1, , or 0.05, ), for thick clouds because the lidar signal does not penetrate the whole cloud, for very noisy lidar signals or for small lidar signal values.
In spite of all these disadvantages, it is common to find this method combined with other ones, in order to make a first estimation of the cloud optical depth due to its low computational cost. This first estimation of the cloud optical depth is usually used as a constraint in other methods. For example, the CALIPSO algorithm applies the transmittance method in certain situations. When a molecular region is found immediately above and below the cirrus cloud, the Hybrid Extinction Retrieval Algorithm (HERA) implemented with CALIPSO data uses the two-way transmittance method to obtain the cloud optical depth directly from the ratio of the mean attenuated scattering ratios, without multiple scattering correction . It is also well known that the Fernald method can be constrained by values of cloud transmittance determined by the two-way transmittance method. combine the backward solution of the Klett method and the two-way transmittance method, and show a combination of a method called the particle integration (PI) method and the two-way transmittance method to retrieve the optimal effective lidar ratio.
This method is based on the application of the lidar equation and the consideration of two reference points. For the calculation of the cloud optical depth, these points are placed above and below the cloud and the signal is normalized with the standard atmosphere, assuming molecular conditions in at least one of these regions. In this way, the power attenuation because of the cloud can be computed. There are many approaches of this method applied to certain aerosol and cloud layers. The first works using this technique date back to the 1960s–1970s, in which the authors calculated the transmittance of a smoke plume layer using lidar data . Over the years, the two-way transmittance method has been used to calculate the cloud optical depth of cirrus clouds, considering different normalization regions or changing the extension of the normalization interval, the distance between the cirrus cloud and the normalization region or the time average applied to the lidar signal to reduce its noise. For example, normalize the lidar signal on both sides of a cirrus cloud, particularly at the top and base of the cloud, i.e. at only two points of the vertical profile. By contrast, only consider a normalization region below the cirrus cloud extending from 0.7 to 0.4 km below the cloud base and use 2 min signal averaging. In one last example, only contemplate a normalization region above the cloud extending between 3 and 4 km below the aircraft and the cloud top height (typically between 13 and 16 km in altitude).
In this study, the two-way transmittance method has been applied to a case study, specifically a high-altitude cirrus cloud measured with the MPL and CALIOP at the same time, 11 February 2019 at 02:03:50 UTC, in Barcelona. CALIPSO is at a distance of 78 km from the Barcelona station at that moment, and to illustrate this cirrus case study, the CALIPSO signal that has been analysed has a spatial average of 5 km.
3.2 For ground-based lidars
Following the notation of , we call NRB the normalized relative backscatter or range-corrected signal at height , and it can be written as
1 where is the system calibration constant (for the method of solving , see ) and and are the atmospheric backscatter and transmittance profiles, respectively. The molecular and effective particle contributions are denoted by the “m” and “ef” subscripts, respectively, as shown in Eq. (). The effective particle transmittance can be expressed as an exponential term as follows: 2 where is the volume particle extinction coefficient, i.e. the volume effective particle extinction coefficient (the one measured) corrected from multiple scattering effects. The molecular extinction has been neglected with respect to the particle extinction component. The multiple scattering factor, , was introduced by . The multiple scattering effect depends on the laser beam divergence, receiver field of view and distance between the light source and the scattering volume . In this study the multiple scattering effect is considered negligible for the lidar signal measured by the MPL system () due to its narrow field of view, the mean distance between cirrus clouds and the MPL, the small cirrus cloud optical depth (generally COD 0.3) and the magnitude of cirrus cloud extinction ( 1 km) retrieved .
We first calculate the attenuated molecular backscatter coefficient, which is defined as 3 where and are calculated using the equations of with pressure and temperature measurements from radiosondes. Then, we scale down the range-corrected signal to the attenuated molecular backscatter coefficient in the molecular region above the cloud at height , where is the altitude corresponding to 0.2 km above the cloud top height, also an input from MPLNET. The normalized NRB () has the following expression: 4 In an aerosol-free atmosphere the vertical profiles of NRB and would overlap. In practice, and NRB are not calculated at a single point . To compensate for the noise of NRB at high altitude, each quantity is calculated as the mean value in an interval [] km above the cloud. The vertical extent of the normalization interval above the cloud has been defined by performing different tests. Even though its extension may vary, this is not critical, as the atmospheric region above the cloud is assumed to be aerosol- or cloud-free. Equation () can be extended as 5 is the altitude corresponding to 0.2 km below the cloud bottom height, also an input from MPLNET. In practice, the normalization of the attenuated molecular backscatter coefficient at is calculated as the ratio of mean quantities calculated in an interval [] km below the cloud. This vertical extension of normalization is shallower than the normalization region above the cloud because it is more likely to find a non-molecular atmospheric layer below the cirrus cloud. Its extension has also been defined by performing different tests.
The ratio between the normalized range square-corrected signal coefficient in and the normalized attenuated molecular backscatter coefficient in is 6
where COD is the cloud optical depth defined as COD . Finally, COD is calculated as 7 This simplified expression is obtained because the normalized NRB matches the attenuated molecular backscatter coefficient at , as can be derived from Eq. ().
3.3 For spaceborne lidarsIn order to follow with the same notation, we continue working with the NRB coefficient. With the attenuated total backscatter coefficient at height , the product provided by CALIPSO data is defined as an NRB coefficient with the calibration constant one (; see Eq. ).
8
Similarly to Sect. , we scale down the NRB to the normalized relative backscatter , resulting in the following expression: 9
is the altitude corresponding to 0.2 km above the cloud top height and is the altitude corresponding to 0.2 km below the cloud bottom height. In practice, neither normalization is calculated at the single points and , respectively. To compensate for the noise of NRB and at high altitude, each quantity is calculated as the mean value in a wide enough interval above and below the cloud, identically to the ground base case explained previously. The ratio between the normalized attenuated backscatter coefficient in and the normalized attenuated molecular backscatter coefficient in is 10
The multiple scattering effect cannot be neglected for spaceborne lidar signals because of the distance between the satellite and the cirrus clouds. For this reason, is assumed to be constant throughout the cloud layer with a value of 0.6, as in version 3 of the CALIOP algorithm . Finally, COD is calculated as 11
3.4 Unified formulationOnce the mathematical developments for the application of the two-way transmittance method for ground-based lidars (see Sect. ) and spaceborne lidars (see Sect. ) are shown, an example case of cirrus cloud is analysed as shown in Fig. a and b, respectively.
Figure 1
Application of the two-way transmittance method for (a) MPLNET and (b) CALIPSO data for the case 11 February 2019 at 02:03:50 UTC. The height is the altitude corresponding to 0.2 km above (below) the cloud top (base) height.
[Figure omitted. See PDF]
Figure a and b show the application of the two-way transmittance method to a cirrus cloud detected in Barcelona with the MPL and CALIOP, respectively, at the same time. It is discerned that the cirrus cloud measured with ground-based lidar has similar base and top heights to the cirrus cloud detected with spaceborne lidar. In spite of this, applying the two-way transmittance method gives different CODs: 0.2547 for the cirrus cloud detected by the MPL and 0.2332 for the cirrus cloud measured by the CALIOP lidar. This small difference can be caused by the measurement of different parts of the same cirrus cloud or simply two different cirrus clouds in close proximity. Thus, the results obtained from the two-way transmittance method for ground-based and spaceborne lidars are equivalent.
Returning to the mathematical development, after COD calculation, we can estimate the lidar ratio of the whole cloud using the following equation : 12
The particle backscatter is solved from Eq. (): 13 where With the aim of calculating the , in the first iteration () it is assumed that the extinction coefficient profile in the whole cloud is constant as 14 where COD is calculated with Eq. () or Eq. () and CT is the cloud thickness, which is the difference between cloud top height and cloud base height provided by MPLNET. After this first step, a new extinction coefficient profile is calculated as 15
Afterwards, the new extinction coefficient profile, , is used to calculate the next particle backscatter profile (). From the second iteration onwards, a vertical profile of the lidar ratio is also obtained. This process is continued until successive values of the LR integral and the previous one differ negligibly, i.e. 1 sr.
In order to study the optical characteristics of the cirrus clouds, we calculate the LCDR, which is defined as the ratio of the perpendicular and parallel lidar signals in the cloud . This parameter is not directly provided by the CLD MPLNET product. Instead, the volume depolarization ratio (VDR) is given by the CLD MPLNET product. 16
The vertical profile of the linear cloud depolarization ratio can be calculated by means of the following expression : 17
MDR is the molecular depolarization ratio and is the backscatter ratio, which is defined as 18
According to , the MDR has a value of 0.00363. Once the vertical profile of the linear cloud depolarization rate has been obtained, the coefficient associated with the whole cloud is determined as the average of a half-cloud vertical profile centred at the maximum peak and shown in Fig. .
Figure 2
Characterization of the cirrus cloud on 11 February 2019 at 02:03 UTC measured in Barcelona. (a) Minute evolution and vertical profiles of (b) the particle backscatter, (c) the lidar ratio and (d) the linear cloud depolarization ratio at 532 nm. The white line indicates the exact cirrus detection time and the black crosses refer to the cirrus zone where it is averaged to obtain the linear cloud depolarization ratio coefficient.
[Figure omitted. See PDF]
Figure shows a quick look at the NRB within the cirrus cloud together with the associated vertical profiles of particle backscatter, effective column lidar ratio and linear cloud depolarization ratio calculated with the two-way transmittance method for the case study of 11 February 2019 at 02:03 UTC. It is observed that the peaks of the particle backscatter coefficient correspond to the areas of the cloud with the highest NRB values. The LR curve also presents a similar shape to that of the particle backscatter coefficient but smoother, varying its value by only two-tenths over the entire vertical profile of the cloud. In contrast, the LCDR has a flatter shape throughout its vertical profile and has some oscillations in the lowest cloud layer. To avoid these more irregular areas, the average of a half-cloud vertical profile centred at the maximum peak is calculated to obtain a representative value for the whole cirrus cloud.
3.5 Cirrus retrieval errorsAfter the calculation of the cirrus cloud optical retrievals, their associated errors have been estimated, where the COD, LR and LCDR errors have been calculated for each cirrus cloud scene with the classical error propagation equations . Similarly to the calculation of the LR and LCDR, their errors have been estimated by performing the average on half-clouds centred at the maximum peak. In addition, the LR error has been calculated as the maximum possible error, since only the first iteration has been considered in its calculation. As the classical error propagation equations have been used, it has been necessary to establish the errors of some variables such as the temperature and pressure of the radiosondes: C and hPa . The MDR error has been quantified as 3.5 % of its value . The NRB and VDR errors have been assumed to be the NRB and VDR uncertainties from the MPLNET NRB product.
4 Criteria for cirrus cloud identification
Even though there is no widely criterion accepted for the identification of cirrus clouds, the most common definition of cirrus clouds is that they must be composed mainly of ice crystals. This is because their geometrical and optical properties vary with latitude, as illustrated by the different cirrus identification criteria in Table established in the literature. In this study, the criteria adopted for the identification of high-altitude cirrus clouds in Barcelona are based on two conditions. (1) The temperature at the cloud top height must be lower than 37 C and (2) the cloud base height must be higher than 7 km to ensure cirrus clouds, as opposed to other types of clouds.
Table 1
Summary of the criteria for cirrus cloud identification reported in the literature, where , and are the temperatures at cloud middle, top and base heights, respectively. CH and CBH are the mid-cloud and cloud base heights, respectively, and VDR is the volume depolarization ratio.
Measurement site | Location | Criteria | Reference |
---|---|---|---|
Fairbanks, Alaska | 64.86 N, 147.85 W; 300 m a.s.l. | C | |
C | |||
Lille, France | 50.60 N, 3.14 E; 21 m a.s.l. | C | |
Barcelona, Spain | 41.38 N, 2.11 E; 115 m a.s.l. | CBH 7 km | This study |
C | |||
Thessaloniki, Greece | 40.6 N, 22.9 E; 250 m a.s.l. | C | |
Greenbelt, Maryland | 38.99 N, 76.84 W; 50 m a.s.l. | C | |
Hulule, India | 4.11 N, 73.31 E; 3 m a.s.l. | CBH 9 km | |
Bangor, Maine | 44.82 N, 68.83 W; 36 m a.s.l. | ||
Warner-Robbins, Georgia | 32.64 N, 83.59 W; 93 m a.s.l. | CH 8 km | |
Houston, Texas | 29.60 N, 95.16 W; 24 m a.s.l. | C | |
Honolulu, Hawaii | 21.32 N, 157.92 W; 6 m a.s.l. | VDR 0.27 | |
San José, Costa Rica | 9.99 N, 84.21 W; 1172 m a.s.l. | ||
Kuopio, Finland | 62.74 N, 27.54 E; 190 m a.s.l. | CBH 6 km | |
Gwal Pahari, India | 28.43 N, 77.15 E; 243 m a.s.l. | C | |
Elandsfontein, South Africa | 26.25 S, 29.43 E; 1745 m a.s.l. | C | |
Santa Cruz de Tenerife, Spain | 28.5 N, 16.3 W; 92 m a.s.l. | ||
Sao Paulo, Brazil | 23.6 S, 46.8 W; 760 m a.s.l. | C | |
Belgrano, Argentina | 78 S, 35 W; 18 m a.s.l. |
Table shows that most cirrus identification criteria are based on the height or temperature of the cirrus clouds at the base, top or middle altitudes. Many of them even set criteria on both sides of the cloud to ensure that it does not contain liquid water. Although used by some authors, e.g. , the depolarization criterion is not widely used because of the low LCDR values of horizontally oriented ice (HOI) crystals , which might lead one to discard erroneously cirrus clouds made of such ice crystals.
In this study, cirrus clouds are considered the highest clouds in a vertical profile. In order to ensure that Rayleigh regions both above and below the cirrus cloud are analysed, if there is another cirrus cloud lower, less than 1 km away, the two cirrus clouds are merged and treated as one cirrus cloud layer. In all the cases, it has also been ensured that the lidar signal is not extinguished behind the cloud. After the classification of cirrus scenes, the two-way transmittance method has been applied to our database composed of 367 cirrus clouds. Of these 367 cases, the two-way transmittance method has only been correctly applied to 203 cases denoted as “successful” cirrus. Of the 164 cases of cirrus clouds for which the two-way transmittance method failed, denoted as “failed” cirrus, in 29 %, the Rayleigh zone above and below the cirrus cloud could not be guaranteed ( and/or are lacking accuracy or another non-cirrus at less than 1 km is present), in 46 % a negative COD was calculated and in 25 % a LR higher than 100 sr was estimated. Of the last two cases (negative COD and LR 100 sr), in 92 %, the cirrus had a very small lidar signal peak, and in 8 %, although the lidar signal peak associated with the cirrus cloud was noticeable, the signal was excessively noisy. A statistical analysis will be presented and discussed in Sect. and .
5 Five years of cirrus retrievals5.1 Cirrus geometrical properties
After having carried out the identification of 367 high-altitude cirrus clouds, measured in Barcelona, through MPLNET products and radiosonde data from November 2018 to September 2022 (only at 00:00 and 12:00 UTC, when radiosondes are available), the two-way transmittance method has been applied successfully to 203 of them, i.e. to 55 % of all the cases. Note that 39 % of the 203 high-altitude cirrus cases have another cloud below the cirrus cloud. The elimination of some cases has been carried out on the basis of no possibility of guaranteeing a cloud- or aerosol-free zone both above and below the cirrus cloud ( and/or are lacking accuracy or another non-cirrus at less than 1 km is present) and the calculation of a negative COD or a LR higher than 100 sr, as a consequence of a small peak of the lidar signal associated with the cirrus cloud or just a noisy lidar signal. In this section, the geometrical and optical properties of high-altitude cirrus scenes are presented and discussed.
Figure 3
Histogram of the number of (a) cases of non-cirrus (black), failed (red) and successful (green) cirrus clouds. (b) All successful cirrus clouds classified as sub-visible (red), visible (black) and opaque (blue) for each month from 2018 to 2022 in Barcelona.
[Figure omitted. See PDF]
The cirrus occurrences in Barcelona, together with the monthly distribution of cirrus scenes classified as sub-visible (SVC; COD 0.03), visible (VC; 0.03 COD 0.3) and opaque (COD 0.3) cirrus clouds according to the criteria, have been analysed and are shown in Fig. a and b, respectively.
The cloud detection has been performed with the MPLNET CLD product. When in a 1 min vertical profile there was a valid cloud base and cloud top value, it was counted as a cloud case. So, we have strong confidence in MPLNET products and their procedures for both distinguishing between aerosol and cloud and processing the lidar signal to obtain their respective products. The two-way transmittance method has been applied successfully to 203 cirrus clouds, i.e. to 55 % of all cirrus cloud cases. In Fig. a it can be observed that the efficiency of the method decreases notably in summer, while in the other seasons it remains relatively stable. Moreover, the percentage of cirrus cases is not negligible: 36 % of 1019 cloud cases at 00:00 and 12:00 UTC during the 5 years. Of this percentage, 39 % of cirrus cases have another cirrus cloud below them, specifically at a distance of lower than 1 km, and both clouds are merged and considered one cloud layer. The maximum cirrus cloud occurrence is in spring due to the fact that this is a time of great synoptic atmospheric instability in the Iberian Peninsula. In the mid-latitude regions, the formation process of cirrus clouds is linked to the deep convective outflow , the synoptic-scale lifting of air leading to the ice nucleation at low temperatures and the cooling associated with the wave activity in the upper troposphere . This phenomenon has also been observed in other studies such as and , where the highest frequency of mid-latitude cirrus is in autumn and spring.
Figure b shows that the most abundant cirrus type is visible cirrus (48 %), followed by opaque (38 %), and the minority are sub-visible cirrus (14 %). The monthly distribution of sub-visible cirrus clouds does not vary considerably, remaining the category with the lowest occurrence over the year. In contrast, the distribution of visible and opaque cirrus varies slightly. It can be said that, in the warmer seasons, opaque cirrus clouds are more frequent than visible cirrus clouds. As shown in Table , these observations vary considerably depending on the latitude. The frequency of cirrus detection seems to be highly variable, and a more extended database is needed to state a tendency. It is also observed that, at latitudes close to the one of this study (41.38 N, Barcelona), the occurrence of visible cirrus clouds predominates. In general, it can be said that the occurrence of each cirrus depends on the weather pattern of each site.
The probability distribution of cloud base and top heights and the mid-cloud temperature of cirrus clouds are shown in Fig. .
Figure 4
Probability distribution of the (a) cloud base height, (b) cloud top height and (c) mid-cloud temperature of cirrus clouds at nighttime (00:00 UTC; black) and daytime (12:00 UTC; red) from 2018 to 2022 in Barcelona.
[Figure omitted. See PDF]
Ground-based elastic lidars are very sensitive to the solar background noise. For that reason the nighttime and daytime contributions have been separated. Despite that, the efficiency of the two-way transmittance method does not seem to be affected considerably, since the success rates of this method for cirrus clouds during daytime (62 %) and nighttime (51 %) are similar. In Fig. , it can be seen that the probability distribution of cloud base and top altitudes, respectively, range from 7 to 12.5 km and from 7.5 to 14 km, with peaks of occurrence at 9 and 10 km, respectively. Daytime and nighttime results are very similar. The mid-cloud temperature ranges between 30 and 70 C and has a maximum around 55 (50) C during nighttime (daytime). These results fit well with the literature, specifically studies carried out at similar latitudes like , who obtained a distribution of cloud base (top) altitudes ranging from 5 to 13 (5 to 14) km, with a mean value of 8 (11) km. The mid-cloud temperature ranges between 30 and 80 C and has two maximum peaks of occurrence around 45 and 55 C. Another example is , who got cloud top altitudes between 6 and 16 km, with a mean top at 11 km and cloud top temperatures between 35 and 75 C, with two maximum peaks of occurrence around 50 and 60 C for daytime cirrus clouds.
Table 2Average and standard deviation values of geometrical properties of cirrus clouds at nighttime (00:00 UTC) and daytime (12:00 UTC) from 2018 to 2022 in Barcelona, where CH is mid-cloud height, the number of cirrus clouds and % its percentage with respect to the total number of cirrus clouds to which the two-way transmittance method has been applied successfully.
CBH | CTH | CH | CT | No. of cirrus | ||||
---|---|---|---|---|---|---|---|---|
(km) | (km) | (km) | (km) | (C) | (C) | (C) | (%) | |
Nighttime | 9.4 1.4 | 11.2 1.3 | 10.3 1.2 | 1.9 1.1 | 43.6 10.3 | 57.9 8.7 | 50.7 8.4 | 112 (55) |
Daytime | 9.3 1.3 | 11.0 1.4 | 10.2 1.2 | 1.7 1.2 | 44.1 9.5 | 56.8 8.6 | 50.5 8.0 | 91 (45) |
In order to better analyse the geometrical properties of the 203 high-altitude cirrus cases measured in Barcelona from the years 2018 to 2022, mean values and standard deviations have been calculated and are shown in Table .
Table shows that the number of cirrus clouds analysed at nighttime is similar to that in the daytime, making the results comparable. Furthermore, the percentage of cirrus cases at nighttime and in the daytime to which the two-way transmittance method has been successfully applied, compared to those identified at these hours, does not differ considerably according to the hour of the day: 51 % for cirrus cases at nighttime and 62 % in the daytime. As a consequence, it can be stated that solar background radiation does not affect the efficiency of the two-way transmittance method.
It can also be observed that the cloud base and top heights together with the cloud thickness are higher at nighttime than in the daytime. Consequently, mid-cloud temperature is lower at nighttime than in the daytime. These differences are negligible due to their values being lower than their standard deviation, a similar result to that obtained in . It could be said that the macrophysical properties of cirrus clouds do not vary with the time of the day. The distribution of high-altitude cirrus thickness is in the range from 1 to 5 km, with a mean value of 1.9 km, which means that clouds with a large vertical development, characteristic of cloud types other than cirrus clouds, have been correctly discarded.
These results fit well with the literature, in which diverse studies such as show that the cloud base height is 8.79 km, and , who, distinguishing between daytime and nighttime measurements, get values of 8.92 1.65 and 8.91 1.60 km, respectively. These values are slightly lower than those obtained in this study carried out in Barcelona but belong to the distribution shown in Fig. . Regarding the cloud top height, obtain a very similar value to that of this study, 11.2 km, together with , who get 11.15 km, and , who get lower values of cloud top heights of 10.46 1.59 and 10.62 1.50 km for daytime and nighttime measurements. Instead of analysing cloud base and top heights, other studies like examine typical values of cirrus cloud altitude between 4 and 20 km, with the peak occurrence value of 9 km being lower than the value calculated in this study.
With respect to the thickness of cirrus clouds, show values ranging between 0.1 and 8 km, with a peak occurrence value of the distribution of 1.5 km. get an averaged value of 1.81 km and show values of 1.54 0.91 and 1.71 0.93 km for daytime and nighttime measurements, respectively. These values are also lower than those obtained in this study, indicating that the cirrus clouds measured in this study are thicker. This could be due to the fact that 39 % of the cirrus cases have another cirrus cloud below them, specifically at a distance of less than 1 km, and both are considered to be one.
Continuing with the analysis of the physical and geometrical properties of cirrus clouds, there are studies such as which show a temperature value at a cloud base of 34.4 C, a value considerably higher than the value obtained in this study. Regarding the temperature at the cloud top, show a value that is slightly higher than the value of our study, which is 53.9 C. To complete the cirrus temperature analysis, get a mid-cloud temperature of 58.47 C forming the difference between daytime and nighttime measurements, show values of 49 10 and 50 9 C, respectively, where the values obtained by are really much closer to this study than those of .
5.2 Cirrus optical propertiesProbability distributions of the optical properties cloud optical depth, lidar ratio and linear cloud depolarization ratio, calculated using the two-way transmittance method (see Sect. ), have also been determined for all the cirrus scenes and are shown in Fig. .
Figure 5
Probability distribution of (a) cloud optical depth, (b) effective column lidar ratio and (c) linear cloud depolarization ratio, calculated using the two-way transmittance method, from 2018 to 2022 in Barcelona. The rectangles in the upper right-hand corners show average values and standard deviations of the distributions. Panel (a) has a logarithmic grid to show the sub-visible and visible cloud groups.
[Figure omitted. See PDF]
In Fig. one observes that the presence of visible cirrus clouds dominates this study, with an occurrence of 48 %, followed by opaque cirrus clouds with a percentage of 38 % and lastly sub-visible cirrus clouds with a 14 % occurrence. Many studies point to the fact that the high-altitude cirrus clouds have an optical depth usually lower than 0.3 , which is the case in 62 % of the cases analysed in this study. However, this parameter can vary from 0.003 to 3 . The mean value of the distribution is 0.36, a value much larger than 0.1 because cirrus clouds with a much larger COD alter the mean, as reflected in the standard deviation of the distribution. The effective column lidar ratio varies mostly between 20 and 30 sr (33 %), in agreement with the literature , with an average value of 30 sr. The linear cloud depolarization ratio is typically between 0.3 and 0.5 (54 %), with an average of 0.32, which is in agreement with , , and . The lowest values of the linear cloud depolarization ratio may be due to a tendency of horizontal orientation of the ice crystals or a very thin or multi-layered cloud . It is mentioned above that, in this study, if there is another cirrus cloud lower, less than 1 km away, the two cirrus clouds are merged and treated as one cirrus cloud layer.
After having shown the probability distributions and the mean and standard deviation values of the cirrus cloud optical retrievals, the basic statistical values of their associated errors are presented in Table .
Table 3Minimum, mean, median, standard deviation and maximum values of the COD, LR and LCDR errors for cirrus cases from 2018 to 2022 in Barcelona.
Variables | Min | Mean | Median | SD | Max |
---|---|---|---|---|---|
COD | 0.04 | 0.16 | 0.11 | 0.20 | 1.54 |
LR (sr) | 0.00 | 0.28 | 0.06 | 0.84 | 7.83 |
LCDR | 0.01 | 0.18 | 0.08 | 0.31 | 2.06 |
The zero value is not exactly null, but if rounded to the second hundredth, it can be considered null.
Table shows that the error of the COD is 0.16 0.20 with a maximum value of 1.54, considerably high for sub-visible cirrus clouds (COD 0.03) but reasonable for visible and opaque cirrus clouds. In addition, the maximum COD error found is lower than the maximum COD calculated. The LR error is 0.28 0.84 sr with a maximum value of 7.83 sr. If it is compared to its magnitude (30 19 sr; see Fig. ), it is negligible in most cases. By contrast, the LCDR error is 0.18 0.31, which is considerable for the lowest values, since the LCDR ranges between 0 and 1. In addition, a maximum LCDR error of 2.06 has been calculated, being greater than unity. This error is so large due to the uncertainty associated with this vertical profile of the volume depolarization ratio.
Table 4Average and standard deviation values of cirrus cloud characteristics with ground-based lidar observations reported in the literature. The optical properties have been calculated at 532 nm, where is the number of cirrus clouds identified and % is its percentage with respect to the total number of clouds. The occurrences of SVC, VC and opaque cirrus clouds are made on the number of cirrus .
Measurement site | Location | No. of cirrus | Occurrence (%) | CBH | CTH | CT | COD | LR | Reference | |||
---|---|---|---|---|---|---|---|---|---|---|---|---|
(time period) | (%) | SVC | VC | Opaque | (km) | (km) | (C) | (km) | (sr) | |||
Kuopio | 62.74 N, 27.54 E | 213 | 3 | 71 | 26 | |||||||
(2012–2016) | 190 m a.s.l. | |||||||||||
Haute Provence | 43.9 N, 5.7 E | 1850 (37) | 38 | |||||||||
(1996–2007) | 679 m a.s.l. | |||||||||||
Rome | 41.8 N, 12.6 E | 107 (30) | 10 | 49 | 41 | |||||||
(2007–2010) | 107 m a.s.l. | |||||||||||
Barcelona | 41.38 N, 2.11 E | 367 (36) | 14 | 48 | 38 | This study | ||||||
(2018–2022) | 115 m a.s.l. | |||||||||||
Thessaloniki | 40.6 N, 22.9 E | 53 | 3 | 57 | 40 | |||||||
(2000–2006) | 250 m a.s.l. | |||||||||||
Naqu | 31.5 N, 92.1 E | (15) | 16 | 34 | 50 | |||||||
(July–August 2011) | 4508 m m.s.l. | |||||||||||
Gwal Pahari | 28.43 N, 77.15 E | 11 | 0 | 20 | 80 | |||||||
(2008–2009) | 243 m a.s.l. | |||||||||||
Gadanki | 13.5 N, 79.2 E | 52 | 36 | 11 | ||||||||
(1998–2013) | 370 m a.s.l. | |||||||||||
Hulule | 4.11 N, 73.31 E | 179 (43) | 8 | 52 | 40 | |||||||
(1999–2000) | 3 m a.s.l. | |||||||||||
Amazonia | 2.89 S, 59.97 W | (74) | 42 | 38 | 20 | |||||||
(2011–2012) | 60 m a.s.l. | |||||||||||
Elandsfontein | 26.25 S, 29.43 E | 64 | 2 | 61 | 37 | |||||||
(2009–2011) | 1745 m a.s.l. | |||||||||||
Buenos Aires | 34.6 S, 58.5 W | 0 | 68 | 32 | ||||||||
(2010–2011) | 1572 m a.s.l. |
values have been manually calculated from the values of temperature at cloud and top heights shown in the paper. The geometrical properties shown are from an annual average, and the optical properties are obtained by the two-way transmittance method applying a multiple scattering correction. The optical properties are calculated at 355 nm.
Table shows that the averages of cloud base (top) height range from 8 (10) to 14 (16) km, approaching the tropopause in some cases. Mid-latitude cirrus clouds are not found at altitudes below 7 km, so the criterion previously established for cirrus identification is correct. It also appears that the cirrus base and top height distributions are not dependent on latitude but rather on cirrus type. Thinner cirrus like SVC are usually found at higher altitudes than opaque cirrus. This relation will be studied in the next sub-section (see Sect. ). Mid-cloud temperatures are in the range of 40 to 65 C and the cloud thickness between 1 and 3 km. The optical properties of the clouds are very similar to those obtained at similar latitudes and the effective column lidar ratio seems to have a generally increasing trend towards the poles, but no conclusion can be drawn, since the variability at different sites appears negligible relative to the variability at each site.
5.3 Cirrus classificationA complementary analysis is carried out in this section, classifying the cirrus according to the criteria of . For this purpose, the averages and standard deviations of the geometrical and optical properties of the cirrus clouds are calculated, as shown in Table .
Table 5
Average and standard deviation of optical properties of cirrus clouds classified with criteria from 2018 to 2022 in Barcelona.
Type | CBH | CTH | CT | COD | LCDR | LR | No. of | |
---|---|---|---|---|---|---|---|---|
(km) | (km) | (C) | (km) | (sr) | cases | |||
SVC | 10.2 1.2 | 11.1 1.4 | 55 7 | 0.9 0.6 | 0.02 0.01 | 0.27 0.17 | 17 19 | 29 |
VC | 9.7 1.3 | 11.3 1.3 | 53 8 | 1.6 1.0 | 0.14 0.09 | 0.33 0.12 | 29 17 | 98 |
Opaque | 8.6 1.0 | 11.0 1.4 | 47 7 | 2.4 1.2 | 0.78 0.5 | 0.33 0.13 | 36 18 | 76 |
In Table , it can be seen that the cloud top height does not vary considerably depending on the type of cloud. The cirrus clouds might reach or be near the tropopause, since the average tropopause height calculated with radiosondes on the days of cirrus scenes analysed is 11 1 km. In contrast, the other geometrical, thermal and optical properties do vary with cloud type. For example, sub-visible clouds are the highest, coldest and thinnest clouds. Also, their thickness is 0.9 km less than the average thickness calculated with the whole cirrus dataset, and its temperature is 4 C colder than the mean temperature. These results are consistent with other studies of SVC cirrus from spaceborne lidar observations . Their COD is within the value selected to make this classification, the LR is lower than 30 sr and their mean linear cloud depolarization ratio is 0.27, which is the lowest value of all the categories. Visible cirrus clouds are the most predominant type in this study. Their geometrical properties are very similar to those of the whole cirrus dataset, but the averages of the optical properties are slightly lower. Opaque cirrus clouds have the highest value of LR, which may be due to the fact that these clouds contain the greatest richness and variety of ice crystals. On the other hand, opaque clouds contribute the most to the total radiative forcing : they are the lowest, warmest and thickest clouds in the whole cirrus dataset. Also, their thickness is 0.6 km higher than the average thickness calculated with the whole cirrus dataset, and its temperature is 4C warmer than the mean temperature.
5.4 DiscussionIn this section the possible correlations between the different cirrus products obtained with the two-way transmittance method, radiosonde and MPLNET data are discussed. First, the linear correlations between the temperature and height of the cirrus base and the effective column lidar ratio with the logarithm of cloud optical depth are analysed, as shown in Fig. . The cirrus clouds have been classified according to the criteria.
Figure 6
Logarithmic dependence of the cloud optical depth with the (a) cloud base temperature, (b) cloud base height, (c) effective column lidar ratio and (d) linear cloud depolarization ratio for cirrus cases from 2018 to 2022 in Barcelona. The solid black line is the linear regression that has been calculated between the variables, and the grey shadings with the dash-dotted black lines are the 95 % confidence limit of the linear regression. The values are (a) 0.26, (b) 0.19, (c) 0.17 and (d) 0.03.
[Figure omitted. See PDF]
On the one hand, Fig. shows a weak positive linear dependence between the logarithm of the cloud optical depth and the cloud base temperature and, in contrast to this, a negative tendency with the cloud base height. This means that, as the cloud base temperature increases, the cloud base height decreases, which is characteristic of the troposphere. As the cloud base height is lower, it is observed that the cloud optical depth increases. This could be due to the fact that, as an air mass loaded with water vapour ascends vertically, the water vapour gradually condenses. Thus, clouds located at higher altitudes are formed from air masses with a lower water vapour content, and therefore both their geometric and optical thicknesses are smaller. Examples of this phenomenon are sub-visible cirrus clouds, which are the highest, coldest and thinnest clouds and have the lowest COD values.
On the other hand, the effective column lidar ratio increases with increasing cloud optical depth, a fact that has been observed in other studies . It is known that the effective column lidar ratio indicates the complexity of the ice crystal shape and aspect ratio . When the complexity of the ice crystal shape and diversity increases, the effective column lidar ratio also increases . Having clouds with a higher COD implies that the cloud base height is at lower levels, as mentioned above, so that there are larger and more irregular ice particles due to collisions and turbulence, increasing the effective column lidar ratio . This phenomenon is also seen, for example, in sub-visible cirrus clouds, which generally have the lowest LR values.
Likewise, the linear cloud depolarization ratio has a slightly positive tendency with the cloud optical depth, which is negligible because of its low of 0.03. Moreover, found an opposite tendency. Despite that, a positive tendency between the LCDR and COD could make sense due to the fact that, as the COD increases, the number of ice crystals increases and, as a consequence, the random aggregation of ice crystals within the cloud occurs more frequently. As the ice crystals increase in size, they become rougher, and consequently depolarization increases .
To conclude this section, Fig. shows the relationship between the linear cloud depolarization ratio and the effective column lidar ratio calculated with the two-way transmittance method, classifying the cirrus clouds according to the criteria.
Figure 7
Dependence of the linear cloud depolarization ratio with the effective column lidar ratio and the cloud optical depth for cirrus cases from 2018 to 2022 in Barcelona. The rectangles indicate the areas where the LCDR is lower than 0.3 and for effective column lidar ratio values out of the known range for cirrus clouds.
[Figure omitted. See PDF]
In Fig. it can be seen that there is no linear dependence between the linear cloud depolarization ratio and the effective column lidar ratio of the cirrus clouds. At the same time, all three types of cirrus clouds are found in all sectors of the scatterplot, with more or less frequency. On the one hand, in the red sector, sub-visible cirrus clouds clearly dominate and are the highest, coldest and thinnest clouds. Because of their geometrical and optical properties, the possibility that these cirrus clouds could contain liquid water is ruled out. On the other hand, visible and opaque cirrus clouds control the blue sector. The percentage of cirrus found in this area is 12 %. As one cloud type does not predominate, the geometrical properties of this sub-group have been analysed, showing an average cloud base temperature of 41.32 8.62 C, which is lower than the homogeneous nucleation temperature of 38.15 C and makes the presence of aqueous content in these cirrus clouds impossible. However, eight cases have been found with a temperature above 38.15C and an average cloud base height of 7.91 0.68 km. Therefore, in these eight cases the presence of liquid water cannot be ruled out. Except for these eight cases, the validation of the cloud identification criteria proposed in this study can be successfully concluded.
6 ConclusionsIn this study, the cirrus geometrical and optical properties of 4 years of continuous ground-base lidar measurements with the Barcelona MPL were analysed, applying the two-way transmittance method. First, a review of the literature on the two-way transmittance method which provides cirrus cloud retrievals like the cloud optical depth, the columnar cloud lidar ratio or the vertical profile of the particle backscatter coefficient was presented. The different approaches that have been developed during the year and the main advantages and disadvantages of this method were also explained. For example, one of the major advantages of this new approach of the method was that it is only necessary to assume a Rayleigh zone both above and below the cirrus cloud, without making any a priori optical and/or microphysical hypotheses about the cirrus cloud. Second, a simple mathematical development of the two-way transmittance method for ground-based and spaceborne lidar systems was proposed and was first illustrated for a cirrus cloud in Barcelona, using measurements from the MPL and CALIOP lidars. The results of the two-way transmittance method fitted really well, obtaining a difference in COD for the same cirrus cloud of 0.02. Third, a criterion set for cirrus cloud identification was established that consists of 37C and CBH 7 km, and it was compared with the literature. After having carried out the identification of 367 high-altitude cirrus clouds measured with the MPL in Barcelona from November 2018 to September 2022, the two-way transmittance method was applied successfully to 55 % of all the cases. Unsuccessful cases were due to the impossibility of guaranteeing a Rayleigh zone below and above the cirrus cloud, a negative COD and/or a LR higher than 100 sr. Also, it could be observed that the efficiency of the method decreased notably in summer, and during the other seasons it remained relatively stable. The cirrus geometrical, thermal and optical properties were CT 1.8 1.1 km, 51 8 C, COD 0.36 0.45, LR 30 19 sr and LCDR 0.32 0.13. An error analysis of the cirrus cloud retrievals was carried out, showing that the mean and standard deviation of the errors were COD 0.16 0.20, LR 0.28 0.84 sr and LCDR LCDR 0.18 0.31. It was also found that the highest occurrence of cirrus clouds was in spring. Moreover, it was seen that, in the warmer seasons, opaque cirrus clouds were more frequent than visible cirrus clouds. In addition, these properties were compared with the literature, obtaining similar properties at nearby latitudes, with the majority of visible and opaque cirrus clouds being present. Fourth, the efficiency of the two-way transmittance method and the properties of the cirrus clouds proved to be independent of the day and night conditions. The sub-visible cirrus clouds were be the highest, coldest and thinnest clouds; the visible cirrus clouds were predominant and the opaque cirrus clouds were the lowest, warmest and thickest clouds in the whole cirrus dataset. It was also seen that the cloud top height did not vary considerably depending on the type of cloud, since the cirrus clouds might reach the tropopause, with its average height of 11 1 km during the cirrus scenes. The correlations between the different cirrus properties were then analysed and quantified for the first time, with the highest correlation being between and COD. The analysis showed that the COD correlates positively with the cloud base temperature, lidar ratio and linear cloud depolarization ratio and negatively with the cloud base height. Finally, the dependence of the LCDR on COD and LR was studied, and it was concluded, on the one hand, that cirrus clouds with LCDR values lower than 0.3 and an LR lower than 10 sr were mostly sub-visible cirrus clouds and, as a consequence, the possibility of liquid water in them was ruled out. On the other hand, the majority of cirrus clouds with LCDR values lower than 0.3 and an LR higher than 40 sr, except for eight cases, had a cloud base temperature lower than the homogeneous nucleation temperature, making the presence of liquid water impossible. Except for these eight cases, the validation of the cloud identification criteria proposed in this study could be successfully concluded. The information presented in this work is of great use for gaining a better understanding of the properties of cirrus clouds, their spatial distribution at the global scale and the key processes which govern cirrus formation and evolution. This study can also help development of new parameterizations of cirrus clouds to obtain their optical, microphysical and radiative properties and parameterizations of new cirrus cloud products obtained with spaceborne or ground-based lidar instruments.
Data availability
The MPLNET products are publicly available on the MPLNET website (
Author contributions
CGD prepared the automatic algorithm for the identification of cirrus clouds and the application of the two-way transmittance method for MPL and radiosonde data. CGD prepared the figures of the paper. MS, AC, CMP, ARG SL, JRL and EJW reviewed different parts of the results. DCFdSO took care of the maintenance of the MPL. CGD and MS prepared the paper, with contributions from all the co-authors.
Competing interests
At least one of the (co-)authors is a member of the editorial board of Atmospheric Measurement Techniques. The peer-review process was guided by an independent editor, and the authors also have no other competing interests to declare.
Disclaimer
Publisher's note: Copernicus Publications remains neutral with regard to jurisdictional claims made in the text, published maps, institutional affiliations, or any other geographical representation in this paper. While Copernicus Publications makes every effort to include appropriate place names, the final responsibility lies with the authors.
Acknowledgements
The authors acknowledge the support of the ACTRIS European Research Infrastructure Consortium (ERIC).
Financial support
This research has been partly funded by the Spanish Agencia Estatal de Investigación (grant no. PID2019-103886RB-I00) and the European Commission through the Horizon 2020 Programme (project ACTRIS IMP, grant agreement no. 871115; ATMO-ACCESS, grant agreement no. 101008004; GRASP-ACE, grant agreement no. 778349) and through the Horizon Europe Programme (project REALISTIC, grant agreement no. 101086690).
Review statement
This paper was edited by Alexander Kokhanovsky and reviewed by three anonymous referees.
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Abstract
In this paper a statistical study of cirrus geometrical and optical properties based on 4 years of continuous ground-based lidar measurements with the Barcelona (Spain) Micro Pulse Lidar (MPL) is analysed. First, a review of the literature on the two-way transmittance method is presented. This method is a well-known lidar inversion method used to retrieve the optical properties of an aerosol–cloud layer between two molecular (i.e. aerosol and cloud-free) regions below and above, without the need to make any a priori assumptions about their optical and/or microphysical properties. Second, a simple mathematical expression of the two-way transmittance method is proposed for both ground-based and spaceborne lidar systems. This approach of the method allows the retrieval of the cloud optical depth, the cloud column lidar ratio and the vertical profile of the cloud backscatter coefficient. The method is illustrated for a cirrus cloud using measurements from the ground-based MPL and from the spaceborne Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP). Third, the database is then filtered with a cirrus identification criterion based on (and compared to) the literature using only lidar and radiosonde data. During the period from November 2018 to September 2022, 367 high-altitude cirrus clouds were identified at 00:00 and 12:00 UTC, of which 203 were successfully inverted with the two-way transmittance method. The statistical results of these 203 high-altitude cirrus clouds show that the cloud thickness is 1.8
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1 CommSensLab, Dept of Signal Theory and Communications, Universitat Politècncia de Catalunya (UPC), Barcelona, 08034, Spain
2 CommSensLab, Dept of Signal Theory and Communications, Universitat Politècncia de Catalunya (UPC), Barcelona, 08034, Spain; Ciències i Tecnologies de l'Espai-Centre de Recerca de l'Aeronàutica i de l'Espai/Institut d'Estudis Espacials de Catalunya (CTE-CRAE/IEEC), Universitat Politècnica de Catalunya (UPC), Barcelona, 08034, Spain; now at: Laboratoire de l'Atmosphère et des Cyclones, Université de La Réunion, Saint-Denis, 97744, France
3 Goddard Earth Sciences Technology and Research II, University of Maryland, Baltimore, Maryland, 21250, USA
4 NASA Goddard Space Flight Center, Greenbelt, Maryland, 20771, USA
5 CNR-IMAA, Italian National Research Council, 85050, Tito Scalo (PZ), Italy; CommSensLab, Dept of Signal Theory and Communications, Universitat Politècncia de Catalunya (UPC), Barcelona, 08034, Spain