Next Article in Journal
Assessment of Air Pollution with Polychlorinated Dibenzodioxins (PCDDs) and Polychlorinated Dibenzofuranes (PCDFs) in Lithuania
Next Article in Special Issue
Disdrometer, Polarimetric Radar, and Condensation Nuclei Observations of Supercell and Multicell Storms on 11 June 2018 in Eastern Nebraska
Previous Article in Journal
Evaluation of WRF-Chem Predictions for Dust Deposition in Southwestern Iran
Previous Article in Special Issue
Characteristics of DSD Bulk Parameters: Implication for Radar Rain Retrieval
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Dependence of Mass–Dimensional Relationships on Median Mass Diameter

1
Department of Atmospheric and Oceanic Sciences, School of Physics, Peking University, Beijing 100871, China
2
Cooperative Institute of Mesoscale Meteorological Studies, Norman, OK 73072, USA
3
School of Meteorology, University of Oklahoma, Norman, OK 73072, USA
4
Department of Atmospheric Sciences, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA
5
Department Atmospheric Sciences, University of North Dakota, Grand Forks, ND 58202, USA
*
Author to whom correspondence should be addressed.
Atmosphere 2020, 11(7), 756; https://doi.org/10.3390/atmos11070756
Submission received: 8 June 2020 / Revised: 9 July 2020 / Accepted: 14 July 2020 / Published: 17 July 2020

Abstract

:
Retrievals of ice cloud properties require accurate estimates of ice particle mass. Empirical mass–dimensional (mD) relationships in the form m = a D b are widely used and usually universally applied across the complete range of particle sizes. For the first time, the dependence of a and b coefficients in m–D relationships on median mass diameter (Dmm) is studied. Using combined cloud microphysical data collected during the Olympic Mountains Experiment and coincident observations from Airborne Precipitation Radar Third Generation, Dmm-dependent (a, b) coefficients are derived and represented as surfaces of equally plausible solutions determined by some tolerance in the chi-squared difference χ 2 that minimizes the difference between observed and retrieved radar reflectivity. Robust dependences of a and b on Dmm are shown with both parameters significantly decreasing with Dmm, leading to smaller effective densities for larger Dmm ranges. A universally applied constant m–D relationship overestimates the mass of large aggregates when Dmm is between 3–6 mm and temperatures are between −15–0 °C. Multiple m–D relations should be applied for different Dmm ranges in retrievals and simulations to account for the variability of particle sizes that are responsible for the mass and thus for the variability of particle shapes and densities.

1. Introduction

Retrievals of ice cloud properties, such as radar reflectivity factor (Z) [1], snow rate [2,3], ice water content (IWC) [3,4] and effective density ( ρ e ) [5,6] require estimates of how ice particle mass (m) varies with ice particle dimension (D). Accurate estimates of particle mass are thus essential to the accuracy of cloud products retrieved from remote sensing measurements [7,8]. Furthermore, microphysical parameterization schemes used in many numerical weather prediction models require accurate mD relations to quantify microphysical processes occurring in clouds [9,10]. The m–D relations are also used to determine ice particle density, which is one of the key factors determining particle fall speeds and representing ice cloud properties in weather and numerical models. Knowledge of these relations is important because it is difficult to measure ice particle density and volume in situ because of the variability in particle shape and habit [11], and because of processes such as aggregation, supercooled water accretion, and melting/refreezing that lead to variability in ice-air mixtures [12]. Therefore, empirical power law m–D relationships taking the form
m = a D b
have been widely used in numerical modeling and retrieval schemes.
Various techniques and probes have been used to derive the a and b coefficients, and variations with temperature, particle habit, and cloud formation mechanism have been noted [13]. This is caused by changes in the cloud microphysical properties in different environments due to variations in the size, shape, and density of ice particles produced by the action of different microphysical processes. Previous studies deriving a and b coefficients include the following: Baran et al. [14], who determined a by comparing observed and calculated Z of cirrus, assuming an ensemble of ice aggregates and fixing b = 2.0; Heymsfield et al. [5,15,16], Cotton et al. [6] and Abel et al. [17] who derived a and b using measured size distributions and bulk mass contents to show variations in b depending on ice cloud type; and McFarquhar et al. [18] and Fontaine et al. [19] who employed ice particle images and observed bulk Z to derive the dependence of b on temperature.
Although the habit of an ice crystal is primarily a function of temperature and supersaturation [20,21,22], in situ observations do not show a simple correlation between particle shape, mass, temperature and humidity since many crystals are not observed in the environments in which they grow and due to imperfections in crystal shapes [23]. Nevertheless, Mitchell et al. [2] deduced m–D relations specific to various ice crystal habits by taking microphotographs of particles and using the melted hemispherical drops to derive b ranging from 1.8 (needles and long columns) to 2.6 (short columns and plates), and 2 for aggregated ice. Locatelli and Hobbs [24] also derived habit-specific m–D relationships for 22 particle types. Such relations can be used in combination with automatic habit classifications based on 2-D particle images [25,26,27,28,29,30,31] to derive IWC by applying specific m–D relations for individual habits [28,32,33] to the measured size and shape distributions. In practice, application of this technique is difficult since clouds usually consist of mixtures of complex particles, many of which have irregular shapes that cannot be unambiguously identified or represented by one of the shapes for which m–D relations are available. For these reasons, m–D relations are typically derived for mixtures of particles. Parameterizations for mixtures of particles are also easier to apply in model and remote sensing schemes.
For given conditions, the derived a and b are typically assumed to apply over the complete range of particle sizes, and hence universally applied for all particle sizes in models and retrievals. This implicitly assumes a and b are independent of particle size. However, the size dependence of a and b has been noted as Locatelli and Hobbs [24] and Mitchell [11] used different prefactors and exponents for different size ranges. Moreover, Erfani and Mitchell [34] proposed second-order polynomials for m–D relations that could be reduced to power laws in which the final a and b are dependent on D. In general, a continuous dependence of a and b on D is desired because the evaluation of the mass function in some cloud schemes is based on derivatives with respect to D and discontinuities at the overlap points produce numerical errors [35]. Furthermore, published m–D relations for large aggregates (i.e., D > 5 mm) are rare, and it remains to be seen whether these particles’ masses scale as their smaller counterparts, thus potentially justifying the use of separate m–D relations for hydrometeor ensembles of small and large particles. This is potentially important for remote sensing retrievals of bulk hydrometeor mass in particular, where particle habits are typically not known a priori, but parameters related to number concentration and characteristic size may be retrieved in some fashion.
This paper aims to examine the dependence of a and b on a characteristic size parameter, the median mass diameter (Dmm), so that the retrievals of ice cloud properties can be improved. Dmm is defined as the D for which 50% of the accumulated total water content (TWC) is contained in smaller particle sizes and 50% in larger particle sizes, indicating the size ranges of ice particles responsible for the mass. The dependence of m–D relations on Dmm provides information for their dependence on particle size without adding a discontinuity in the relation between D and m. Here, the a and b are derived following the approach of Finlon et al. [13] using in situ microphysical and coincident remote sensing data collected during the 2015 Olympic Mountains Experiment (OLYMPEX) conducted in and offshore of western Washington State [36]. The remainder of the manuscript is organized as follows. Section 2 describes methods used to process in situ and coincident remote sensing data from OLYMPEX, and to derive microphysical variables and m–D relations dependent on Dmm. The dependence of m–D relations on Dmm is quantified and discussed in Section 3. The key results are summarized in Section 4.

2. Data and Methods

2.1. OLYMPEX Measurements

During OLYMPEX, the University of North Dakota Cessna Citation II (N55DS) [37] flew 20 missions, collecting in-cloud measurements at temperatures between −60 °C and 12 °C. Optical Array Probes (OAPs) that obtain particle images from the occultation of a laser beam incident upon an array of fast response photodiodes included a 2D Stereo Probe (2D-S), nominally sizing particles from 10 to 1280 μm, and a Version 3 High Volume Precipitation Spectrometer (HVPS-3), sizing particles from 150 to 19,200 μm. Data from the OAPs were processed with the University of Illinois/Oklahoma Optical Array Probe Processing Software (UIOOPS) using particle inter-arrival times to remove shattered artifacts from the 2D-S data using algorithms introduced by [38,39]. Particle size distributions (PSDs) for the maximum dimension 200–30,000 μm were determined by merging the 2D-S vertical array with the vertically oriented HVPS-3 with a crossover between probes at 1000 μm. Particles larger than the diode array were reconstructed following the method in [40] provided their center was determined to be within the photodiode array.
To provide radar data that gives the larger scale context of the microphysics observations and give data coincident with in situ microphysics observations, the National Aeronautics and Space Administration (NASA) DC-8 aircraft carrying the Airborne Precipitation Radar Third Generation (APR-3), a triple-frequency (Ku-, Ka-, and W-bands, 13, 35, and 94 GHz respectively) Doppler, dual-polarization radar system [41,42], flew flights at mostly constant altitude above the Citation during OLYMPEX. Radar volumes collected within 10 min temporally and 1 km spatially of the Citation are regarded as collocated following Chase et al. [43]. More details about the specifics of collocation and calibration of the radar measurements are found in [43].
In this study, the lower bound for the PSD is set at 200 µm to exclude any possible contributions from supercooled drizzle drops whose maximum sizes were around 200 µm during OLYMPEX [43]. PSDs are averaged every 5 s and analysis is restricted to periods when the total number concentration of particles with D > 200 µm was greater than 103 m−3 to ensure that the Citation was within more than just a tenuous cloud. To restrict the analysis to ice-phase clouds, only periods with total number concentrations measured by the Cloud Droplet Probe (CDP) [44] less than 10 cm−3 are used following [45]. There are 5928 5-s observations (8.23 h in total) in ice clouds with coincident radar observations at temperatures between −33 °C and −1 °C. For ice-phase clouds, the TWC is equivalent to the IWC.

2.2. Derivation of Bulk Properties

Several bulk quantities can be calculated from the PSD when an m–D relation is assumed. First, the IWC can be derived following
I W C = D m i n D m a x m   N ( D )   Δ D ,
where N(D) is the ice particle number distribution function for the size bin with midpoint D, and m is crystal mass determined from Equation (1) and restricted to be less than the mass of an ice spheroid of the same D with aspect ratio 0.6 following the approach of Hogan et al. [46]. For ice-phase clouds, Dmm is determined as
1 2 I W C = D m i n D m m m   N ( D )   Δ D = D m m D m a x m   N ( D )   Δ D .
The Dmm derived from Equation (3) is mainly a function of b [47]. Initially, Dmm is calculated using a prior mD relation m = 0.0061 D 2.05 from a study of Heymsfield et al. in 2004 ([5], hereafter HY04) and subsequently referred to as Dmm,hy. The HY04 coefficients a and b originally introduced are specific to ice crystals generated in synoptically and convectively generated ice clouds, which have been widely used in model parameterization schemes. Previous study has shown that the HY04 m–D relationship gives reasonable estimates of reflectivity at Ku-band for temperatures below 0 °C during OLYMPEX [48]. Here, Dmm,hy is used as a descriptor of PSDs and for comparisons with results generated from new (a, b) parameters. Sensitivity studies conducted here using other m–D relations (e.g., [4]) showed that similar conclusions were reached regardless of what m–D was used to calculate the initial values of Dmm (figures not shown).
The effective density of the ice particle population ( ρ e ) for each 5-s PSD is calculated by
ρ e = T W C V ,
and
V = D m i n D m a x 0.6 × π 6 D 3 N ( D ) Δ D ,
where V is the total volume of all ice particles assuming they are spheroids with diameter D and aspect ratio 0.6. ρ e describes the density of a collection of ice particles rather than of single ice particles.
For all D corresponding to the center of the size bins and for given a and b coefficients, the radar reflectivity factor at the Ku-band is forward modeled using the Rayleigh–Gans spheroid approximation that was described in detail by Hogan et al. [46] and integration of backscatter cross-section over the PSD yields total reflectivity. The Rayleigh–Gans theory was first introduced by van de Hulst [49], and modifies the Rayleigh scattering law to incorporate the interference of out-of-phase scattered waves of the scatterer. It has been found that the Rayleigh–Gans spheroid approximation performs well for modeling the scattering properties of aggregates in ice clouds for particle sizes no larger than the wavelength considered [46]. Other scatter models including the Rayleigh theory and a Self-Similar Rayleigh–Gans theory [50], are also examined here and further discussed in Section 3. The Ku-band is used because it experiences less attenuation and fewer non-Rayleigh scattering effects than other bands of reflectivity collected during OLYMPEX (Ka and W band), and thus these scattering models should perform well in this scattering regime. The systematic errors of Rayleigh–Gans approximation are reported to be very small at Ku-band for unrimed snowflakes with mean bias of at most 1dBZ [51,52].
As stated in Section 2.1, particles smaller than 200 µm are removed to eliminate any possible influence of supercooled liquid droplets in the measured N(D). To assess the contribution of small particles to derived properties, using the same HY04 m–D relation, the ratios of Dmm, IWC and equivalent radar reflectivity factor Z derived from PSDs with minimum sizes of 125 µm and 200 µm were calculated. The average ratios Dmm,PSD>200/Dmm,PSD>125, IWCPSD>200/IWCPSD>125, ZPSD>200/ZPSD>125 are 1.03, 0.98, and 0.99 respectively, showing small particles with 125 µm < D < 200 µm, where there are the larger uncertainties in the measured PSDs [53], contribute less than 5% to those derived quantities. Reliable PSD observations for ice particles with D < 125 µm are not available during OLYMPEX, but their contributions to mass and reflectivity are expected to be minimal [53].

2.3. Constraint of m–D Relationships

The estimates of (a, b) parameters consistent with the measured bulk properties can be determined by minimizing the chi-squared differences ( χ 2 ) between quantities derived from size distributions and bulk measured values. In particular, the χ 2 metric defining the difference between Ku-band Z derived from N(D) (ZKu,psd) and those directly measured by the Ku-band APR-3 (ZKu), is given by
χ 2 ( a , b ) = 1 n ( Z K u , p s d Z K u ) 2 Z K u , p s d × Z K u ,
where n is the number of samples. The definition of χ 2 in Equation (6) follows Finlon et al. [13]. The bulk measured TWC by Nevzorov probe could also be used to calculate χ 2 taking into account differences between both derived and observed Z and TWC [13], where TWC is equal to IWC for ice-phase clouds. However, the Nevzorov probe has been found to underestimate the TWC in previous studies due to the potential problem of ice crystals bouncing out from its sensor especially for particles larger than 4 mm [54,55], and thus is not used in this study.
In the calculation of χ 2 , Equation (1) is slightly modified to the form
m = a ( D D 0 ) b ,
where D0 = 1 cm, so that b is dimensionless and a has a single physical dimension of mass, such as grams, rather than having its units depending on b. Equation (7) solves the potential problem of comparing incommensurable quantities a in g cm-b with varying values of b. The χ 2 is computed for all a and b for 2.00 × 10−4 < a < 0.05 g and 1.00 < b < 5.00 with increments of 2.00 × 10−4 g for a and 0.02 for b in order to find the minimum χ 2 (hereafter χ 2 m i n ) and thus most likely a and b. It is assumed that all a and b that have χ 2 < χ 2 m i n + Δ χ 2 are equally plausible solutions, where Δ χ 2 defines the allowed tolerance. The choice of Δ χ 2 is discussed in Section 3.

3. Results

3.1. Dependence of (a, b) on Dmm

3.1.1. Behavior of Equally Plausible Surfaces

The 5-s time averaged PSDs are sorted into different populations according to Dmm,hy. For each population, χ 2 is calculated using Equation (6) by summing over PSDs in the appropriate population. One population includes all PSDs with 200 ≤ Dmm,hy < 500 μm whereas the other 11 populations correspond to Dmm,hy equally spaced between 500 and 6000 μm. PSDs with Dmm,hy larger than 6000 μm were excluded from the analysis because there were only 37 (0.62% of the total) such PSDs which was not regarded as statistically significant. The (a, b) minimizing χ 2 was hence determined for each population.
Different uncertainty sources are considered to define the tolerance of the minimum χ 2 for each population. When conducting fits to observed PSDs, McFarquhar et al. [56] defined Δ χ 2 = max ( Δ χ 1 2 , χ 2 m i n ) , where Δ χ 1 2 represented uncertainties in the observed PSDs due to statistical sampling uncertainties and χ 2 m i n characterized the robustness of the minimization procedure related to how well the observed PSD fit the assumed gamma distribution and how much variability there was in the size distributions. Here, this technique was followed and Δ χ 1 2 for each Dmm,hy bin is defined using the statistical uncertainty in the sampled PSD as
Δ χ 1 2 ( D m m , h y ) = 1 2 n [ ( Z K u , p s d , m a x Z K u , p s d ) 2 Z K u , p s d , m a x × Z K u , p s d + ( Z K u , p s d , m i n Z K u , p s d ) 2 Z K u , p s d , m i n × Z K u , p s d ] ,
where ZKu,psd are calculated using the most likely (a, b) that minimizes χ 2 , ZKu,psd,max and ZKu,psd,min are the maximum and minimum Z derived using the maximum and minimum N(D) using the same mD relation. The maximum and minimum N(D) are determined by adding and subtracting the square root of the number concentration in each size bin corresponding to adding or subtracting square root of the number of counts in that bin [56,57] as the square root of the number of counts gives a measure of the statistical uncertainty based on Poisson Statistics.
Uncertainties associated with the observed N(D) by OAPs and Ku-band Z by APR-3, are also considered using Δ χ 2 2 , which is defined as
Δ χ 2 2 ( D m m , h y ) = 1 2 n { [ ( Z K u , p s d , m a x 2 Z K u , p s d ) 2 Z K u , p s d , m a x 2 × Z K u , p s d + ( Z K u , m e a n s , m a x Z K u ) 2 Z K u , m e a n s , m a x × Z K u , p s d ] [ ( Z K u , p s d , m i n 2 Z K u , p s d ) 2 Z K u , p s d , m i n 2 × Z K u , p s d + ( Z K u , m e a n s , m i n Z K u , p s d ) 2 Z K u , m e a n s , m i n × Z K u , p s d ] } ,
where ZKu,psd,max2 and ZKu,psd,min2 are the maximum and minimum Z derived assuming that the N(D) measured by the OAPs has 50% uncertainties [58]. The ZKu,meas,max and ZKu,meas,min represent the maximum and minimum measured Z derived by the uncertainties of measured ZKu during OLYMPEX of 1 dB following Chase et al. [43].
Uncertainties from different sources are compared in Figure 1a. It is found that Δ χ 1 2 / χ 2 m i n < 10 3 for all 12 populations, which means the robustness of the minimization procedure is a greater uncertainty than the statistical uncertainty associated with the PSD sampling. The Δ χ 2 2 / χ 2 m i n ranged between 0.16 and 0.64 with a mean value of 0.34, suggesting that observation uncertainties are comparable with the robustness of the minimization procedure, but it is still the minimization procedure that mainly dominates in the variability of the relationship.
Equally plausible surfaces for each population colored by Dmm,hy using the tolerance χ 2 m i n and Δ χ 2 2 are shown in Figure 1b,c respectively. As χ 2 m i n is greater than Δ χ 2 2 for each population, the areas of surfaces determined by χ 2 m i n are larger than those determined by Δ χ 2 2 . However, all surfaces have narrow spheroid-like shapes in the parameter space with their locations offset from each other as a function of Dmm,hy. As Dmm,hy increases, the surfaces tend to rotate clockwise with the orientation of surfaces getting more horizontal and more prolate, indicating a smaller range of allowable values of a and larger variations of b for larger Dmm,hy.
The same clockwise shift of the equally plausible surfaces with increasing Dmm,hy is present when the tolerance of surfaces differs, showing the dependence of how the surfaces varied with Dmm,hy is robust. However, the exact range and location of the surfaces depend on the methodology and threshold used to generate the surfaces. For example, the surfaces can even extend beyond the sample ranges of a and b for Dmm,hy < 500 µm and Dmm,hy > 4500 µm especially (Figure 1b).

3.1.2. Quantitative Dependences of (a, b) and ρ e on Dmm

To further demonstrate the dependence of a and b on Dmm,hy, 300 (a, b) solutions are randomly chosen from each of the equally plausible surfaces in Figure 1b. These solutions are used to examine the physical realism of the solutions, and for examining the dependence of a, b and ρ e on Dmm.
The equally plausible surfaces in Figure 1 are showing that b coefficients could be greater than 3, which may seem physically impossible as the mass of a particle cannot be greater than that of an ice sphere with the same D. However, due to the covariability of a and b, b > 3 does not necessarily imply the particle has a mass greater than a sphere. Instead, it merely indicates how the mass (and hence density) varies as a function of D. In the absence of any additional information (e.g., role of fractal dimension in determining the value of b), minimizing the difference between bulk measured quantities and those obtained by integrating PSDs does not constrain values of b to be less than 3. Furthermore, Abel et al. [17] previously used b values greater than 3 to calculate the IWC from size distributions where highly rimed particles dominated. It is verified that all random (a, b) solutions within the equally plausible surfaces in Figure 1, including those with b > 3, generate smaller mass of single particle than that of an ice sphere with the same maximum dimension D. It means that these solutions represent physically realistic values. However, if b were greater than 3, the density of particles would necessarily increase with maximum dimension, which has not been commonly observed. Given that no consensus has been reached on the possibility of b > 3 and because physical arguments mean such values are likely unrealistic, b > 3 solutions are excluded in subsequent analysis.
The mean and quartiles of the a and b randomly selected from the surfaces are shown in Figure 2a,b as a function of Dmm,hy. As Dmm,hy gets larger, a prominently decreases with Dmm,hy, especially for Dmm,hy > 2000 µm. This is consistent with the clockwise rotating surfaces with Dmm,hy in Figure 1b. Significant linear correlation is found between the mean values of a solutions and Dmm,hy with correlation coefficient equal to −0.83. The large mean values and spreads of a over Dmm,hy < 500 µm and Dmm,hy between 1500–2500 µm are caused by the larger surfaces for these Dmm,hy range, where the uncertainties from minimizing procedures ( χ 2 m i n ) are larger than other Dmm,hy ranges. Clear decreasing variation of b with Dmm,hy is also denoted by a negative slope (−0.04 mm−1) between the mean values of random b solutions and Dmm,hy, which is significant at the 95% confidence level. Compared to the HY04 m–D relation coefficients, for Dmm,hy < 3000 µm, most of the a (75.7%) and b (70.4%) solutions are greater than those of HY04, but for Dmm,hy between 3–6 mm, most of a (95.6%) and near half of b (41.8%) get lower values than HY04.
The best estimates of (a, b) pairs that minimize the χ 2 in each Dmm,hy bin generally exhibit similar trends to the statistics of random selected solutions. However, these best a and b estimations are almost all smaller than the first quartiles of random solutions in their corresponding Dmm,hy ranges. For Dmm,hy < 2500 µm, the best a and b fluctuate around the HY04 m–D values, indicating that the HY04 m–D relationship performs well for most ice clouds during OLYMPEX with Dmm,hy < 2500 µm (81.3%). For 19.4% of the total periods with Dmm,hy > 2500 µm, except b = 2.04 for Dmm,hy between 4500–5000 µm and b = 2.26 for Dmm,hy between 5500–5000 µm, best estimations of a and b are notably smaller than the a and b in the HY04 m–D relation. This implies that the HY04 m–D relationship conceivably overestimates particle mass when Dmm,hy is greater than 3 mm.
Knowledge of the ice effective density ( ρ e ) can also be informative. As shown in Figure 3, different m–D relationships produce consistently decreasing ρ e with increasing Dmm,hy. For Dmm,hy < 500 µm, although the ρ e derived from the HY04 m–D relationship (henceforth ρ e 0 ) are lower than ρ e derived from randomly selected (a, b) solutions in Figure 2 (henceforth ρ e 1 ), there is no significant differences between ρ e 0 and ρ e 1 as ρ e 1 is highly variable as a function of Dmm,hy. For Dmm,hy > 1500 µm, ρ e 0 is significantly greater than ρ e 1 with a mean difference of 2.21 ± 0.89 g cm−3. The ρ e 0 and ρ e 1 tend to converge at Dmm,hy around 4500 µm to 0.03 g cm−3 and 0.01 g cm−3, respectively.

3.2. Implications for Dmm,hy between 3–6 mm

By minimizing the χ 2 of Ku-band radar reflectivity between APR-3 observations (ZKu) and those derived from PSDs (ZKu,psd), the dependence of m–D relation coefficients on Dmm,hy was demonstrated in Section 3.1. The best estimates of a and b coefficients differ from the HY04 coefficients especially when Dmm,hy is greater than 3 mm (Figure 2). This is also revealed by the comparisons between ZKu and ZKu,psd using the HY04 (Figure 4a) coefficients and the Dmm,hy-dependent m–D relationships (Figure 4b). The HY04 m–D relation provides accurate estimates of radar reflectivity for Dmm,hy < 3000 µm, with a median ratio of ZKu,psd/ZKu (hereafter Rz) 1.01 and a mean ratio of 1.52 ± 2.75, which means an average bias of 0.34 ± 4.37 dB; For Dmm,hy > 3000 µm, Rz tends to increase with Dmm,hy, with median values rising from 1.80 to 9.81 and mean values rising from 2.15 to 12.87, indicating average overestimates of ZKu,psd of 4.00–11.10dB. Using the Dmm,hy-dependent m–D relationships derived from the best estimates of a and b that minimized the χ 2 in each population of PSDs, the overestimated Zku,psd for Dmm,hy > 3000 µm are much improved with a median Rz of 0.90 and mean Rz of 1.42 ± 1.92 (Figure 4b).
Various scattering models including the Rayleigh–Gans spheroid approximation, Rayleigh, and the Self-Similar Rayleigh–Gans approximation are examined to evaluate the uncertainties of the derived ZKu,psd. Using the same HY04 m–D relationship, the overall average ratios of Z based on the Rayleigh–Gans spheroid approximation to the Z based on Rayleigh approximation and the Z based on the Self-Similar Rayleigh–Gans approximation are 0.92 and 1.00 respectively with differences between them less than 0.1 dB; Restricted to Dmm,hy between 3–6 mm, these ratios are 0.80 and 0.93. The ratios of Rz exhibit undistinguishable trends with Dmm,hy as shown in Figure 4a regardless of the scatter scheme. The discrete dipole approximation [59], which is commonly used as the reference method of choice for snowflake scattering calculations [60,61], is not examined given the limitation of computation resources. However, given recent studies by Leinonen et al. [52], the average scattering properties given by the Rayleigh–Gans approximation are in good agreement with the discrete dipole approximation for all but the most heavily rimed snowflakes, with the mean bias in the backscattering cross-section no more than 1 dB. Therefore, uncertainties brought by the scattering scheme do not affect the fact that HY04 m–D relation overestimates Z for Dmm > 3 mm in ice only clouds.
The characteristics of clouds with large Dmm,hy are shown in Figure 5. The number of particles smaller or greater than 3 mm in the PSDs varies considerably depending upon Dmm,hy. The number of particles greater than 3 mm tends to increase sharply with Dmm,hy and the number of those smaller than 3 mm decreases with Dmm,hy. This confirms that Dmm,hy gives information about the shapes of PSDs and shows the size ranges responsible for mass. Dependence of a and b on Dmm,hy also implies dependence on particle size dimension D. Clouds with Dmm,hy between 3 and 6 mm were mainly observed when temperatures ranged between −15–0 °C during OLYMPEX, of which 65.7% were between −15–−10 °C and 27.7% were between −10–−5 °C (Figure 5b). Examples of typical particle images for large Dmm,hy periods are shown in Figure 5c: aggregates of dendrites with sizes between 3 and 5 mm and even snowflakes near 1 cm are evident. These dominant secondary habits clearly illustrate that aggregation is a dominant growth mechanism for these particles.
Previous studies have rarely focused on establishing an m–D relation for particles with D greater than 3 mm or periods when median mass dimensions Dmm are greater than 3 mm. Mitchell [3] suggests two m–D relationships for aggregates of side planes between 600–4100 µm and for aggregates of side planes, columns, and bullets between 800–4500 µm respectively; Leroy et al. [62] analyzed the size characteristics of tropical storm clouds with Dmm ranging between 250 and 800 µm and peaking up to 2 mm, in which the vapor deposition contributes the major growth of ice particles. Therefore m–D relations for natural conditions where single pristine shapes are not present and where particles with dimensions larger than 3 mm are present have not been discussed before, making the relations presented here unique.
However, many different m–D relationships for aggregates have been reported based on field measurements: Schmitt and Heymsfield [63] give a = 0.0068, b = 2.22 for aggregates, which are both greater than the a and b of HY04 and will overestimate IWC and Z compared with the results of this study; Locatelli and Hobbs [24] give a = 0.0037, b = 1.9 for rimed aggregates of dendrites; Mitchell [3] reports a = 0.033, b = 2.22 for aggregates of side planes and a = 0.028, b = 2.1 for aggregates of side planes, columns, and bullets; Tyynelä et al. [60] obtain a = 0.0036, b = 1.57 for the fernlike aggregates. Single particle masses derived from these m–D relations are plotted in Figure 6 and compared with the mass derived from the best estimates of a and b shown in Figure 2. All four of the m–D relations reported for the different kinds of aggregates in Figure 6 produce smaller particle masses for particles with D greater than 3 mm compared to HY04 (black dashed line). Furthermore, they produce smaller m for D greater than 3 mm compared to the Dmm,hy-dependent m–D relations derived for Dmm,hy < 2500 µm, but larger m than that using the m–D relations derived for Dmm,hy > 3 mm. Given that the HY04 m–D relationship predicts particle masses larger than the other relationships when large aggregates greater than 3 mm are abundant, it or any other constant m–D relationships is likely not appropriate for use under such conditions.
The Dmm,hy has been used here as a surrogate for the actual value of median mass dimension Dmm. The actual Dmm is dependent on the a and especially the b coefficient derived; the dependence of a and b on this Dmm could thus be derived with an iterative approach. Figure 7 shows the relationship between Dmm,hy and Dmm. The Dmm derived from random selected solutions within equally plausible surfaces (Figure 2) are well correlated with Dmm,hy with a correlation coefficient 0.91 and mean difference 137.53 ± 455.30 µm. For the best estimates of (a, b), although the mean Dmm is 1.1 mm smaller than Dmm,hy for Dmm,hy between 3–4.5 mm, there is still a significant linear correlation between Dmm and Dmm,hy for all Dmm,hy ranges with a correlation coefficient 0.89. The sharp decrease of the best estimate of b between 3 and 4.5 mm seen in Figure 2 is responsible for the Dmm being smaller than Dmm,hy in this size range. As shown in Figure 1b, for Dmm,hy between 3 and 4.5 mm, the position of the minimum χ 2 is near the lower left, meaning the best a and b that minimize χ 2 are both very small. These low values of a, b and Dmm show why a single best estimate of (a, b) for characterizing the m–D relation is inadequate: although the best estimate of a and b between 3 and 4.5 mm are inconsistent with values in other size ranges, the (a, b) surface is consistent with the other surfaces showing the need for a statistical approach.
Thus, it is seen that the dependence of a and b on Dmm,hy derived in this study is well representative of how they vary with Dmm,hy. Therefore, Dmm,hy in this paper is regarded as an index describing the ice particle size ranges responsible for masses. With the difficulties to identify every particle’s habit in retrievals and simulations, Dmm is thus a better descriptor than temperature for constraining m–D relationships. Dmm has its unique advantage in identifying periods when large aggregated particles with maximum dimensions greater than 3 mm dominate. Multiple m–D relations should be applied for different Dmm ranges so that the masses of large and less dense particles such as aggregates can be better represented.

4. Conclusions

The dependence of ice particle mass–dimensional relationships on median mass diameter (Dmm) is illustrated using Finlon et al.’s [13] technique for characterizing (a, b) mass–dimensional (m–D) coefficients as surfaces of equally plausible solutions. Using in situ observations of PSDs and coincident radar reflectivity (Z) observations at 13 GHz collected during OLYMPEX, surfaces of equally plausible (a, b) coefficients were derived by minimizing the chi-square difference between the observed Z and those computed from the PSDs. All solutions within a predefined threshold were deemed equally plausible. The 5928 5-s averaged data points with coincident radar and in situ measurements are sorted into 12 different populations using the median mass diameter defined using Heymsfield et al.’s [5] previously derived (a, b) coefficients (Dmm,hy) to explore this dependence.
A significant dependence of the m–D coefficients on Dmm,hy was established for ice-phase clouds. Regardless of how the uncertainties from different sources are characterized and the choice of allowed tolerance, the same clockwise shift of the equally plausible surfaces with increasing Dmm,hy is found, indicating a robust dependence of m–D coefficients on Dmm,hy. Statistics of 300 random equally plausible surfaces show significant negative correlation between Dmm,hy and the mean values of both a and b solutions. The best estimates of (a, b) pairs that minimize the χ 2 for each population are shown to be smaller than the HY04 coefficients and produce smaller effective densities when Dmm,hy > 2500 µm.
Periods with large Dmm,hy between 3 and 6 mm are further discussed. The HY04 m–D relation generally accurately estimates Z for Dmm,hy < 3 mm, but increasingly overestimates Z for Dmm,hy between 3 and 6 mm. Extensive large aggregates ranging in size with D between 3 and 5 mm and up to 1 cm were observed by the HVPS at temperatures −15–0 °C during OLYMPEX. Previous m–D relations designed for aggregates are also shown to produce less mass than HY04 m–D and those m–D relations derived for Dmm,hy < 3 mm in this study. The use of Dmm,hy-dependent m–D parameters improves agreement between the Z derived from PSDs and those bulk measurements.
Thus, the use of a constant m–D relationship is not able to explain particle mass when aggregates greater than 3 mm dominate. Multiple mD relations are recommended to apply for different Dmm ranges. This could improve the retrievals of cloud bulk properties associated with hydrometer mass in remote sensing retrieval algorithms and numerical models. Future studies should further explore whether the same trends observed here also exist for clouds of different types and observed in different geographical locations and meteorological regimes, and assess to what extent the Dmm-dependent m–D relations improve the retrieval of cloud properties and the simulation of cloud processes.

Author Contributions

Conceptualization, G.M.M., S.D. and S.W.N.; Data curation, R.J.C. and M.R.P.; Funding acquisition, G.M.M. and S.W.N.; Methodology, S.D., G.M.M., S.W.N., R.J.C. and M.R.P.; Resources, G.M.M. and H.W.; Software, R.J.C.; Supervision, G.M.M. and H.W.; Validation, S.D.; Visualization, S.D. and R.J.C.; Writing—original draft, S.D.; Writing—review & editing, S.D., G.M.M., S.W.N., R.J.C., M.R.P. and H.W. All authors have read and agreed to the published version of the manuscript.

Funding

G.M.M. and S.W.N. were supported by the NASA Precipitation Measurement Missions grant NNX16AD80G under Ramesh Kakar. G.M.M. was supported by the office of Biological and Environmental Research of the U.S. Department of Energy Atmospheric Systems Research Program through Grants DE-SC0014065 and DE-SC0016476 (through University of Corporation for Atmospheric Research subcontract SUBAWD000397). R.J.C. was supported by NASA Earth System Science Fellowship 80NSSC17K0439.

Acknowledgments

We thank all participants of OLYMPEX for collecting the data used in this study. The support provided by China Scholarship Council during visits of Saisai Ding to the University of Illinois and the University of Oklahoma is acknowledged.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Fontaine, E.; Leroy, D.; Schwarzenboeck, A.; Delanoë, J.; Protat, A.; Dezitter, F.; Grandin, A.; Strapp, J.W.; Lilie, L.E. Radar reflectivity factors simulations of ice crystal populations from in situ observations for the retrieval of condensed water content in tropical mesoscale convective systems. Atmos. Meas. Tech. 2017, 10, 2239–2252. [Google Scholar] [CrossRef]
  2. Mitchell, D.L.; Zhang, R.; Pitter, R.L. Mass-dimensional relationships for ice particles and the influence of riming on snowfall rates. J. Appl. Meteorol. 1990, 29, 153–163. [Google Scholar] [CrossRef] [Green Version]
  3. Heymsfield, A.J.; Matrosov, S.Y.; Wood, N.B. Toward improving ice water content and snow-rate retrievals from radars. Part I: X and W bands, emphasizing CloudSat. J. Appl. Meteorol. Climatol. 2016, 55, 2063–2090. [Google Scholar] [CrossRef]
  4. Brown, P.R.; Francis, P.N. Improved measurements of the ice water content in cirrus using a total-water probe. J. Atmos. Ocean. Technol. 1995, 12, 410–414. [Google Scholar] [CrossRef] [Green Version]
  5. Heymsfield, A.J.; Bansemer, A.; Schmitt, C.; Twohy, C.; Poellot, M.R. Effective ice particle densities derived from aircraft data. J. Atmos. Sci. 2004, 61, 982–1003. [Google Scholar] [CrossRef]
  6. Cotton, R.J.; Field, P.R.; Ulanowski, Z.; Kaye, P.H.; Hirst, E.; Greenaway, R.S.; Crawford, I.; Crosier, J.; Dorsey, J. The effective density of small ice particles obtained from in situ aircraft observations of mid-latitude cirrus. Q. J. R. Meteorol. Soc. 2013, 139, 1923–1934. [Google Scholar] [CrossRef]
  7. Westbrook, C.D.; Ball, R.C.; Field, P.R.; Heymsfield, A.J. Theory of growth by differential sedimentation, with application to snowflake formation. Phys. Rev. E 2004, 70, 021403. [Google Scholar] [CrossRef] [Green Version]
  8. Mace, S.B.; Benson, S.; Sonntag, K.L.; Kato, S.; Min, Q.; Minnis, P.; Twohy, C.H.; Poellot, M.; Dong, X.; Long, C.; et al. Cloud radiative forcing at the Atmospheric Radiation Measurement Program Climate Research Facility: 1. Technique, validation, and comparison to satellite-derived diagnostic quantities. J. Geophys. Res. 2006, 111, D11S90. [Google Scholar] [CrossRef]
  9. Morrison, H.; Milbrandt, J.A. The altitude of snow growth by riming and vapor deposition in mixed-phase orographic clouds. J. Atmos. Sci. 2015, 72, 287–311. [Google Scholar] [CrossRef]
  10. Lin, Y.; Colle, B.A. A new bulk microphysical scheme that includes riming intensity and temperature-dependent ice characteristics. Mon. Weather Rev. 2011, 139, 1013–1035. [Google Scholar] [CrossRef]
  11. Mitchell, D. Use of mass- and area-dimensional power laws for determining precipitation particle terminal velocities. J. Atmos. Sci. 1996, 53, 1710–1723. [Google Scholar] [CrossRef]
  12. Schmitt, C.G.; Heymsfield, A.J. On the occurrence of hollow bullet rosette– and column-shaped ice crystals in midlatitude cirrus. J. Atmos. Sci. 2007, 64, 4514–4519. [Google Scholar] [CrossRef]
  13. Finlon, J.A.; McFarquhar, G.M.; Nesbitt, S.W.; Rauber, R.M.; Morrison, H.; Wu, W.; Zhang, P. A novel approach to characterize the variability in mass–dimension relationships: Results from MC3E. Atmos. Chem. Phys. 2019, 19, 3621–3643. [Google Scholar] [CrossRef] [Green Version]
  14. Baran, A.J.; Bodas-Salcedo, A.; Cotton, R.; Lee, C. Simulating the equivalent radar reflectivity of cirrus at 94 GHz using an ensemble model of cirrus ice crystals: A test of the met office global numerical weather prediction model. Q. J. R. Meteorol. Soc. 2011, 137, 1547–1560. [Google Scholar] [CrossRef]
  15. Heymsfield, A.J.; Bansemer, A.; Twohy, C.H. Refinements to ice particle mass dimensional and terminal velocity relationships for ice clouds: Part I: Temperature dependence. J. Atmos. Sci. 2007, 64, 1047–1067. [Google Scholar] [CrossRef]
  16. Heymsfield, A.J.; Schmitt, C.; Bansemer, A.; Twohy, C.H. Improved representation of ice particle masses based on observations in natural clouds. J. Atmos. Sci. 2010, 67, 3303–3318. [Google Scholar] [CrossRef] [Green Version]
  17. Abel, S.J.; Cotton, R.J.; Barrett, P.A.; Vance, A.K. A Comparison of ice water content measurement techniques on the FAAM Bae-146 aircraft. Atmos. Meas. Tech. 2014, 7, 3007–3022. [Google Scholar] [CrossRef] [Green Version]
  18. McFarquhar, G.M.; Timlin, M.S.; Rauber, R.M.; Jewett, B.F.; Grim, J.A.; Jorgensen, D.P. Vertical variability of cloud hydrometeors in the stratiform region of mesoscale convective systems and bow echoes. Mon. Weather Rev. 2007, 135, 3405–3428. [Google Scholar] [CrossRef]
  19. Fontaine, E.; Schwarzenboeck, A.; Delanoë, J.; Wobrock, W.; Leroy, D.; Dupuy, R.; Gourbeyre, C.; Protat, A. Constraining mass–diameter relations from hydrometeor images and cloud radar reflectivities in tropical continental and oceanic convective anvils. Atmos. Chem. Phys. 2014, 14, 11367–11392. [Google Scholar] [CrossRef] [Green Version]
  20. Kobayashi, R. Modeling and numerical simulations of dendritic crystal growth. Physica D 1992, 63, 410–423. [Google Scholar] [CrossRef]
  21. Bailey, M.; Hallett, J. Growth rates and habits of ice crystals between −20 ° and −70 °C. J. Atmos. Sci. 2004, 61, 514–544. [Google Scholar] [CrossRef]
  22. Bailey, M.; Hallett, J. A comprehensive habit diagram for atmospheric ice crystals: Confirmation from the laboratory, AIRS II, and other field studies. J. Atmos. Sci. 2009, 66, 2888–2899. [Google Scholar] [CrossRef] [Green Version]
  23. Um, J.; McFarquhar, G.M.; Hong, Y.P.; Lee, S.S.; Jung, C.H.; Lawson, R.P.; Mo, Q. Dimensions and aspect ratios of natural ice crystals. Atmos. Chem. Phys. 2015, 15, 3933–3956. [Google Scholar] [CrossRef] [Green Version]
  24. Locatelli, J.D.; Hobbs, P.V. Fall speeds and masses of solid precipitation particles. J. Geophys. Res. 1974, 79, 2185–2197. [Google Scholar] [CrossRef]
  25. Holroyd, E.W. Some techniques and uses of 2D-C habit classification software for snow particles. J. Atmos. Oceanic Technol. 1987, 4, 498–511. [Google Scholar] [CrossRef] [Green Version]
  26. McFarquhar, G.M.; Heymsfield, A.J.; Macke, A.; Iaquinta, J.; Aulenbach, S.M. Use of observed ice crystal sizes and shapes to calculate mean-scattering properties and multispectral radiances: CEPEX April 4, 1993, Case Study. J. Geophys. Res. 1999, 104, 31763–31779. [Google Scholar] [CrossRef]
  27. Um, J.; McFarquhar, G.M. Single-scattering properties of aggregates of bullet rosettes in cirrus single-scattering properties of aggregates of bullet rosettes in cirrus. J. Appl. Meteor. Climatol. 2007, 46, 757–775. [Google Scholar] [CrossRef]
  28. Um, J.; McFarquhar, G.M. Single-scattering properties of aggregates of plates. Q. J. R. Meteorol. Soc. 2009, 135, 291–304. [Google Scholar] [CrossRef]
  29. Lindqvist, H.; Muinonen, K.; Nousiainen, T.; Um, J.; McFarquhar, G.M.; Haapanala, P.; Makkonen, R.; Hakkarainen, H. Ice-cloud particle habit classification using principal components. J. Geophys. Res. Atmos. 2012, 117, 1–12. [Google Scholar] [CrossRef] [Green Version]
  30. Praz, C.; Ding, S.; McFarquhar, G.M.; Berne, A. A versatile method for ice particle habit classification using airborne imaging probe data. J. Geophys. Res. Atmos. 2018, 123, 13472–13495. [Google Scholar] [CrossRef]
  31. Touloupas, G.; Annika Lauber, A.; Jan Henneberger, J.; Alexander Beck, A.; Lucchi, A. A convolutional neural network for classifying cloud particles recorded by imaging probes. Atmos. Meas. Tech. 2020, 13, 2219–2239. [Google Scholar] [CrossRef]
  32. Jackson, R.C.; McFarquhar, G.M.; Korolev, A.V.; Earle, M.E.; Liu, P.S.; Lawson, R.P.; Brooks, S.; Wolde, M.; Laskin, A.; Freer, M. The dependence of ice microphysics on aerosol concentration in arctic mixed-phase stratus clouds during ISDAC and M-PACE. J. Geophys. Res. Atmos. 2012, 117, 1–20. [Google Scholar] [CrossRef]
  33. Finlon, J.A.; McFarquhar, G.M.; Rauber, R.M.; Plummer, D.M.; Jewett, B.F.; Leon, D.; Knupp, K.R. A comparison of X-band polarization parameters with in situ microphysical measurements in the comma head of two winter cyclones. J. Appl. Meteor. Climatol. 2016, 55, 2549–2574. [Google Scholar] [CrossRef]
  34. Erfani, E.; Mitchell, D.L. Developing and bounding ice particle mass- and area-dimension expressions for use in atmospheric models and remote sensing. Atmos. Chem. Phys. 2016, 16, 4379–4400. [Google Scholar] [CrossRef] [Green Version]
  35. Khvorostyanov, V.I.; Curry, J.A. Terminal velocities of droplets and crystals: Power laws with continuous parameters over the size spectrum. J. Atmos. Sci. 2002, 59, 1872–1884. [Google Scholar] [CrossRef]
  36. Houze, R.A.; McMurdie, L.A.; Petersen, W.A.; Schwaller, M.R.; Baccus, W.; Lundquist, J.D.; Mass, C.F.; Nijssen, B.; Rutledge, S.A.; Hudak, D.R.; et al. The Olympic Mountains Experiment (OLYMPEX). Bull. Am. Meteorol. Soc. 2017, 98, 2167–2188. [Google Scholar] [CrossRef] [PubMed]
  37. Delene, D.; Hibert, K.; Poellot, M.; Brackin, N. The North Dakota Citation Research Aircraft Measurement Platform. SAE Tech. Pap. 2019. [Google Scholar] [CrossRef]
  38. Field, P.R.; Wood, R.; Brown, P.R.A.; Kaye, P.H.; Hirst, E.; Greenaway, R.; Smith, J.A. Ice particle interarrival times measured with a fast FSSP. J. Atmos. Ocean. Technol. 2003, 20, 249–261. [Google Scholar] [CrossRef]
  39. Jackson, R.C.; McFarquhar, G.M.; Stith, J.; Beals, M.; Shaw, R.A.; Jensen, J.; Jensen, J.; Fugal, J.; Korolev, A. An assessment of the impact of antishattering tips and artifact removal techniques on cloud ice size distributions measured by the 2D cloud probe. J. Atmos. Ocean. Technol. 2014, 31, 2567–2590. [Google Scholar] [CrossRef]
  40. Heymsfield, A.J.; Parrish, J.L. A computational technique for increasing the effective sampling volume of the PMS two-dimensional particle size spectrometer. J. Appl. Meteorol. 1978, 17, 1566–1572. [Google Scholar] [CrossRef]
  41. Sadowy, G.; Berkun, A.C.; Chun, W.; Im, E.; Durden, S. Development of an advanced airborne precipitation radar. Microw. J. 2003, 46, 84–98. [Google Scholar]
  42. Durden, S.L.; Tanelli, S.; Sy, O.O. Comparison of GPM DPR and airborne radar observations in OLYMPEX. IEEE Geosci. Remote Sens. Lett. 2019. [Google Scholar] [CrossRef]
  43. Chase, R.J.; Finlon, J.A.; Borque, P.; McFarquhar, G.M.; Nesbitt, S.W.; Tanelli, S.; Sy, O.O.; Durden, S.L.; Poellot, M.R. Evaluation of triple-frequency radar retrieval of snowfall properties using coincident airborne in situ observations during OLYMPEX. Geophys. Res. Lett. 2018, 45, 5752–5760. [Google Scholar] [CrossRef]
  44. Lance, S.; Brock, C.A.; Rogers, D.; Gordon, J.A. Water droplet calibration of the Cloud Droplet Probe (CDP) and in-flight performance in liquid, ice and mixed-phase clouds during ARCPAC. Atmos. Meas. Tech. 2010, 3, 1683–1706. [Google Scholar] [CrossRef] [Green Version]
  45. Heymsfield, A.J.; Field, P.R.; Bailey, M.; Rogers, D.; Stith, J.; Twohy, C.; Wang, Z.; Haimov, S. Ice in clouds experiment-layer clouds. Part I: Ice growth rates derived from lenticular wave cloud penetrations. J. Atmos. Sci. 2011, 68, 2628–2654. [Google Scholar] [CrossRef] [Green Version]
  46. Hogan, R.J.; Tian, L.; Brown, P.R.; Westbrook, C.D.; Heymsfield, A.J.; Eastment, J.D. Radar scattering from ice aggregates using the horizontally aligned oblate spheroid approximation. J. Appl. Meteorol. Climatol. 2012, 51, 655–671. [Google Scholar] [CrossRef] [Green Version]
  47. Leroy, D.; Fontaine, E.; Schwarzenboeck, A.; Strapp, J.W. Ice Crystal Sizes in High Ice Water Content Clouds. Part I: On the Computation of Median Mass Diameter from in Situ Measurements. J. Atmos. Ocean. Tech. 2016, 33, 2461–2476. [Google Scholar] [CrossRef]
  48. Heymsfield, A.; Bansemer, A.; Wood, N.B.; Liu, G.; Tanelli, S.; Sy, O.O.; Poellot, M.; Liu, C. Toward improving ice water content and snow-rate retrievals from radars. Part II: Results from three wavelength radar–collocated in situ measurements and CloudSat–GPM–TRMM radar data. J. Appl. Meteorol. Climatol. 2018, 57, 365–389. [Google Scholar] [CrossRef]
  49. van de Hulst, H.C. Light Scattering by Small Particles; John Wiley & Sons: New York, NY, USA, 1957. [Google Scholar]
  50. Hogan, R.J.; Westbrook, C.D. Equation for the microwave backscatter cross-section of aggregate snowflakes using the self-similar Rayleigh–Gans approximation. J. Atmos. Sci. 2014, 71, 3292–3301. [Google Scholar] [CrossRef] [Green Version]
  51. Tyynelä, J.; Leinonen, J.; Westbrook, C.; Moisseev, D.; Nousiainen, T. Applicability of the Rayleigh–Gans approximation for scattering by snowflakes at microwave frequencies in vertical incidence. J. Geophys. Res. 2013, 118, 1826–1839. [Google Scholar] [CrossRef]
  52. Leinonen, J.; Kneifel, S.; Hogan, R.J. Evaluation of the Rayleigh–Gans approximation for microwave scattering by rimed snowflakes. Q. J. R. Meteorol. Soc. 2018, 144 (Suppl. S1), 77–88. [Google Scholar] [CrossRef] [Green Version]
  53. McFarquhar, G.M.; Um, J.; Freer, M.; Baumgardner, D.; Kok, G.L.; Mace, G. Importance of small ice crystals to cirrus properties: Observations from the tropical warm pool international cloud experiment (TWP-ICE). Geophys. Res. Lett. 2007, 34, 1–6. [Google Scholar] [CrossRef]
  54. Korolev, A.; Strapp, J.W.; Isaac, G.A.; Emery, E. Improved Airborne Hot-Wire Measurements of Ice Water Content in Clouds. J. Atmos. Ocean. Technol. 2013, 30, 2121–2131. [Google Scholar] [CrossRef]
  55. Cober, S.G.; Isaac, G.A.; Korolev, A.V.; Strapp, J.W. Assessing cloud-phase conditions. J. Appl. Meteorol. 2001, 40, 1967–1983. [Google Scholar] [CrossRef]
  56. McFarquhar, G.M.; Hsieh, T.; Freer, M.; Mascio, J.; Jewett, B.F. The characterization of ice hydrometeor gamma size distributions as volumes in N0–λ–μ phase space: Implications for Microphysical Process Modeling. J. Atmos. Sci. 2015, 72, 892–909. [Google Scholar] [CrossRef]
  57. Hallett, J. Measurement in the Atmosphere. In Handbook of Weather, Climate, and Water; Potter, T.D., Colman, B.R., Eds.; Wiley-Interscience: Hoboken, NJ, USA, 2005; pp. 711–720. [Google Scholar] [CrossRef]
  58. Heymsfield, A.J.; Schmitt, C.; Bansemer, A. Ice Cloud Particle Size Distributions and Pressure-Dependent Terminal Velocities from In Situ Observations at Temperatures from 0 ° to −86 °C. J. Atmos. Sci. 2013, 70, 4123–4154. [Google Scholar] [CrossRef]
  59. Flatau, P.J.; Draine, B.T. Discrete-dipole approximation for scattering calculations. J. Opt. Soc. Am. A 1994, 11, 1491–1499. [Google Scholar] [CrossRef]
  60. Tyynelä, J.; Leinonen, J.; Moisseev, D.; Nousiainen, T. Radar Backscattering from Snowflakes: Comparison of Fractal, Aggregate, and Soft Spheroid Models. J. Atmos. Ocean. Technol. 2011, 28, 1365–1372. [Google Scholar] [CrossRef] [Green Version]
  61. Leinonen, J.; Szyrmer, W. Radar signatures of snowflake riming: A modeling study. Earth Space Sci. 2015, 2, 346–358. [Google Scholar] [CrossRef]
  62. Leroy, D.; Fontaine, E.; Schwarzenboeck, A.; Strapp, J.W.; Korolev, A.; McFarquhar, G.; Dupuy, R.; Gourbeyre, C.; Lilie, L.; Protat, A.; et al. Ice Crystal Sizes in High Ice Water Content Clouds. Part II: Statistics of Mass Diameter Percentiles in Tropical Convection Observed during the HAIC/HIWC Project. J. Atmos. Ocean. Technol. 2017, 34, 117–136. [Google Scholar] [CrossRef] [Green Version]
  63. Schmitt, C.G.; Heymsfield, A.J. The dimensional characteristics of ice crystal aggregates from fractal geometry. J. Atmos. Sci. 2010, 67, 1605–1616. [Google Scholar] [CrossRef]
Figure 1. (a) Sources of uncertainties as a function of Dmm,hy; (b) Equally plausible surfaces determined by χ 2 = 2 χ 2 m i n for different Dmm,hy range bins indicated by the color bar beneath the plot. Circles with corresponding colors denote the locations of χ 2 m i n for each Dmm,hy bin. (c) Same as (b) but equally plausible surfaces determined by χ 2 = χ 2 m i n + Δ χ 2 2 .
Figure 1. (a) Sources of uncertainties as a function of Dmm,hy; (b) Equally plausible surfaces determined by χ 2 = 2 χ 2 m i n for different Dmm,hy range bins indicated by the color bar beneath the plot. Circles with corresponding colors denote the locations of χ 2 m i n for each Dmm,hy bin. (c) Same as (b) but equally plausible surfaces determined by χ 2 = χ 2 m i n + Δ χ 2 2 .
Atmosphere 11 00756 g001
Figure 2. (a) Equally plausible solutions of a and (b) b determined by the equally plausible surfaces in Figure 1b. The blue solid lines, lower bounds and upper bounds of the blue shading areas represent mean values, 25% and 75% percentiles of a and b solutions respectively in each Dmm,hy bins. Blue dashed lines indicate the beat estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins. Red lines show the linear regression lines of mean values with linear correlation coefficients r shown in legends. Black lines indicate the a and b coefficients of HY04 m–D relationship.
Figure 2. (a) Equally plausible solutions of a and (b) b determined by the equally plausible surfaces in Figure 1b. The blue solid lines, lower bounds and upper bounds of the blue shading areas represent mean values, 25% and 75% percentiles of a and b solutions respectively in each Dmm,hy bins. Blue dashed lines indicate the beat estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins. Red lines show the linear regression lines of mean values with linear correlation coefficients r shown in legends. Black lines indicate the a and b coefficients of HY04 m–D relationship.
Atmosphere 11 00756 g002
Figure 3. Effective density ( ρ e ) determined by different m–D relations. The blue solid line, lower bound and upper bound of the blue shading areas represent mean values, 25% and 75% percentiles of ρ e respectively. Blue dashed line indicates the ρ e derived from the best estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins. Black line denotes ρ e derived from the HY04 m–D relationship.
Figure 3. Effective density ( ρ e ) determined by different m–D relations. The blue solid line, lower bound and upper bound of the blue shading areas represent mean values, 25% and 75% percentiles of ρ e respectively. Blue dashed line indicates the ρ e derived from the best estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins. Black line denotes ρ e derived from the HY04 m–D relationship.
Atmosphere 11 00756 g003
Figure 4. Ratios of radar reflectivity derived from PSD (ZKu,psd) to the bulk measured Ku-band reflectivity (ZKu) using (a) HY04 m–D relation and (b) best estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins. The black solid lines and error bars represent median values, 25% and 75% percentiles of ZKu,psd/ZKu in each Dmm,hy bins. Yellow plus signs are the mean values for each Dmm,hy bins. Black dashed lines denote the 1:1 line.
Figure 4. Ratios of radar reflectivity derived from PSD (ZKu,psd) to the bulk measured Ku-band reflectivity (ZKu) using (a) HY04 m–D relation and (b) best estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins. The black solid lines and error bars represent median values, 25% and 75% percentiles of ZKu,psd/ZKu in each Dmm,hy bins. Yellow plus signs are the mean values for each Dmm,hy bins. Black dashed lines denote the 1:1 line.
Atmosphere 11 00756 g004
Figure 5. (a) Averaged PSDs for different Dmm,hy ranges indicated by the color bar; (b) Histograms of temperature for all ice clouds (gray) and Dmm,hy between 3–6 mm (red); (c,d) typical particle images from HVPS probe for Dmm,hy between 3–6 mm.
Figure 5. (a) Averaged PSDs for different Dmm,hy ranges indicated by the color bar; (b) Histograms of temperature for all ice clouds (gray) and Dmm,hy between 3–6 mm (red); (c,d) typical particle images from HVPS probe for Dmm,hy between 3–6 mm.
Atmosphere 11 00756 g005
Figure 6. Single particle mass derived from different m–D relations. Colored solid lines are the single particle masses derived from the best estimates of (a, b) in Figure 2 for different Dmm,hy ranges indicated by the color bar.
Figure 6. Single particle mass derived from different m–D relations. Colored solid lines are the single particle masses derived from the best estimates of (a, b) in Figure 2 for different Dmm,hy ranges indicated by the color bar.
Atmosphere 11 00756 g006
Figure 7. The Dmm derived by Dmm,hy-dependent m–D relationship compared to the Dmm,hy. The blue and red solid line represent the mean Dmm derived from random equally plausible (a, b) solutions and the best estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins respectively. The lower and upper bounds of shading areas with corresponding colors indicate the 25% and 75% percentiles of Dmm in each Dmm,hy bins.
Figure 7. The Dmm derived by Dmm,hy-dependent m–D relationship compared to the Dmm,hy. The blue and red solid line represent the mean Dmm derived from random equally plausible (a, b) solutions and the best estimate of (a, b) that minimizes χ 2 in each Dmm,hy bins respectively. The lower and upper bounds of shading areas with corresponding colors indicate the 25% and 75% percentiles of Dmm in each Dmm,hy bins.
Atmosphere 11 00756 g007

Share and Cite

MDPI and ACS Style

Ding, S.; McFarquhar, G.M.; Nesbitt, S.W.; Chase, R.J.; Poellot, M.R.; Wang, H. Dependence of Mass–Dimensional Relationships on Median Mass Diameter. Atmosphere 2020, 11, 756. https://doi.org/10.3390/atmos11070756

AMA Style

Ding S, McFarquhar GM, Nesbitt SW, Chase RJ, Poellot MR, Wang H. Dependence of Mass–Dimensional Relationships on Median Mass Diameter. Atmosphere. 2020; 11(7):756. https://doi.org/10.3390/atmos11070756

Chicago/Turabian Style

Ding, Saisai, Greg M. McFarquhar, Stephen W. Nesbitt, Randy J. Chase, Michael R. Poellot, and Hongqing Wang. 2020. "Dependence of Mass–Dimensional Relationships on Median Mass Diameter" Atmosphere 11, no. 7: 756. https://doi.org/10.3390/atmos11070756

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop