Next Article in Journal
The Impact of Multi-Projects on the Alteration of the Flow Regime in the Middle and Lower Course of the Hanjiang River, China
Next Article in Special Issue
Evaluation of Satellite Precipitation Products for Hydrological Modeling in the Brazilian Cerrado Biome
Previous Article in Journal
A GIS-Based Fit for the Purpose Assessment of Brackish Groundwater Formations as an Alternative to Freshwater Aquifers
Previous Article in Special Issue
The Impact of Reforestation Induced Land Cover Change (1990–2017) on Flood Peak Discharge Using HEC-HMS Hydrological Model and Satellite Observations: A Study in Two Mountain Basins, China
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Observed Microphysical Characteristics of Stratiform and Convective Precipitation over an Inland Arid Region of the Qinghai–Tibet Plateau

1
State Key Laboratory of Plateau Ecology and Agriculture, Qinghai University, Xining 810016, China
2
State Environmental Protection Key Laboratory of Integrated Surface Water-Groundwater Pollution Control, School of Environmental Science and Engineering, Southern University of Science and Technology, Shenzhen 518055, China
3
Guangdong Provincial Key Laboratory of Soil and Groundwater Pollution Control, School of Environmental Science and Engineering, Southern University of Science and Technology, Shenzhen 518055, China
4
Department of Civil Engineering, The University of Hong Kong, Hong Kong 999077, China
*
Author to whom correspondence should be addressed.
Water 2020, 12(8), 2300; https://doi.org/10.3390/w12082300
Submission received: 18 July 2020 / Revised: 31 July 2020 / Accepted: 13 August 2020 / Published: 16 August 2020
(This article belongs to the Special Issue Hydrometeorological Observation and Modeling)

Abstract

:
This study analyzed the microphysical characteristics of stratiform and convective precipitation over an inland arid region of Qinghai–Tibet Plateau in summer for the first time. The observed precipitation data were from the OTT Parsivel2 laser raindrop spectrometer and the raindrop size distribution can be described by a gamma distribution and a general exponential distribution. The results indicate that: (1) compared to the exponential distribution, the gamma distribution is the better function with which to describe the raindrop size distribution in this region; (2) the raindrop sizes are mainly below 1 mm, and the raindrop sizes which contribute most to the rainfall intensity are below 2 mm for stratiform precipitation and convective precipitation; (3) the mean values of microphysical parameters, e.g., rainfall intensity, radar reflectivity factor, and liquid water content, are higher for convective precipitation than stratiform precipitation; and (4) the standard ZR relationship underestimates the radar reflectivity factor in this region. Overall, the obtained results will enhance our understanding and facilitate future studies regarding the microphysical characteristics of precipitation in such regions. For example, the obtained ZR relationship can be a reference for estimating the radar reflectivity factor in this region with higher accuracy.

1. Introduction

As a common meteorological term, precipitation is of great importance to a variety of fields, such as water resource management, agriculture, and ecological environment assessing [1,2,3,4,5,6]. A better understanding of the microphysical processes of precipitation can be obtained through analyzing the raindrop size distribution (DSD) and the related microphysical parameters. The raindrop size distribution is expressed as the number of raindrops per unit size interval per unit volume in space [7]. From the perspective of cloud microphysics, the raindrop size distribution is determined by various mechanisms in nature [8]. The raindrop size distribution not only shows the spatial and temporal changes of precipitation, but is also directly related to the microphysical characteristics of precipitation, such as evaporation, absorption and conversion rate [9]. In the early years, manual sampling methods were used for raindrop size distribution analysis, such as the kinetic method [10] and stain method [11]. However, the disadvantages of these methods are obvious, i.e., low measurement accuracy, heavy workload, high cost and cumbersome calculation. Along with the development of photoelectric measuring technology, laser raindrop spectrometers have been widely used, and relevant studies on raindrop size distribution have been conducted [12,13,14,15].
Microphysical processes differ according to the type of precipitation, stratiform or convective, and thus, it is necessary to develop effective methods for classifying them. For example, stratiform precipitation can be identified by a “bright band” in cloud. Gamache and Houze [16] used the radar reflectivity factor of precipitation to classify different types of precipitation, and they concluded that convective precipitation appears when the radar reflectivity factor is higher than 38 dBz. Johnson and Hamilton [17] used the rainfall intensity to classify different types of precipitation, and they concluded that convective precipitation appears when the rainfall intensity is larger than 0.1 mm·min−1. In addition, stratiform precipitation and convective precipitation can be distinguished using other criteria, e.g., characteristic diameter (parameter indicating precipitation particle size), standard deviation, and rainfall intensity [18,19,20]. Based on the methods in the studies of Bringi et al. [18] and Marzano et al. [20], Chen et al. [21] proposed a new method which uses the standard deviation of rain intensity from the consecutive 10-min samples during a certain precipitation process. By considering the method proposed by Chen et al. [21] as the integrated one, it was selected for classifying different types of precipitation in this study.
Furthermore, regarding Z as the radar reflectivity factor and R as the rainfall intensity, the Z–R relationship has been widely used for precipitation estimation [22,23,24,25,26,27,28]. For example, Chandrasekar and Bringi [23] pointed out that the uncertainty of the Z–R relationship is closely related to the changing characteristics of raindrop size distribution. Hasan et al. [27] developed an error model to investigate the uncertainty in point rain gauge networks and its effects on bias correction in the Z–R relationship. Fang et al. [28] recalculated the Z–R relationship over the Yangtze–Huaihe River basin in order to predict severe weather more accurately. However, to the best of our knowledge, there are still very few studies on this topic over the Qinghai–Tibet Plateau [29]. The characteristics of raindrop size distribution over Nagqu in the Tibetan Plateau and Yangjing in southern China were studied in [29], and our research is mainly aimed at the inland arid areas of the Qinghai–Tibet Plateau. Therefore, it is of great importance to provide a much clearer understanding of the Z–R relationship over this region.
Plateau mountainous regions in the western China are particularly sensitive to climate change, bringing serious disturbances to local ecosystem [30,31]. For example, more precipitation may cause floods and less precipitation may cause droughts. Several studies [3,31,32,33] have shown increasing trends in annual precipitation and precipitation extremes over the Qinghai–Tibet Plateau. However, locally, there are still few studies over the inland arid region of the Qinghai–Tibet Plateau. Since precipitation is one of the basic components of the hydrological cycle, to investigate the microphysical characteristics of precipitation for such regions has both scientific and practical significances. As a result, based on the precipitation data (i.e., raindrop size distribution) obtained from the raindrop spectrometer, this study aimed to report new findings in the following aspects, including (1) the appropriate distribution with which to describe the raindrop size distribution in the designated region; (2) the contributions of raindrops with different sizes to the microphysical parameters of precipitation; and (3) the changing features of various microphysical parameters (i.e., rainfall intensity, liquid water content, and radar reflectivity factor) of precipitation. Since this is the first study on the microphysical characteristics of different precipitation types over an inland region of the Qinghai–Tibet Plateau, the obtained results will be of great value for researchers to inspect the effects of artificial weather modification and conduct quantitative assessments of precipitation. It is also useful for managers to make better decisions on related water projects in the future for such regions.

2. Materials and Methods

2.1. Study Area

The study area, Delhi, is located in the inland region of the Qinghai–Tibet Plateau in western China, i.e., in the northeastern part of Qaidam Basin (see Figure 1). This region has a highland continental climate with year-round drought and little rain. The annual average temperature is about 4.5 °C, and the average annual precipitation is about 200 mm. The mean elevation of this region is over 2800 m. In addition, this region lies in the temperate zone, mainly dominated by a plateau monsoon climate [34]. Normally, most of the annual precipitation occurs in the wet season from May to October [31,32].

2.2. Research Data

The precipitation data from June 2019 to September 2019 were collected by an OTT Parsivel2 laser raindrop spectrometer (see Figure 2). This equipment is produced by OTT Company in Germany. According to the manufacturer of OTT Parsivel2 (www.ott.com), OTT Parsivel2 is a laser-based optical system for complete and reliable measurement of all types of precipitation. The transmitter unit of the sensor generates a flat, horizontal beam of light that the receiver unit converts to an electrical signal. This signal changes whenever a hydrometeor falls through the beam anywhere within the measuring area of 54 cm2. The degree of dimming is a measure of the size of the hydrometeor, and the fall velocity is derived from the extinction signal duration. Its measurement interval is 1 min, and we can define the data in 1 min as a sample. Moreover, it subdivides the measured particles into 32 classes in diameter and the particles speed. The measurement accuracy for liquid precipitation meets the WMO (World Meteorological Organization) recommendation of ± 5% in the intensity range of 0.001 to 1200 mm/h. For liquid precipitation, the measurement range of particle size is from 0.2 mm to 5 mm; for solid precipitation, the measurement range of particle size is from 0.2 mm to 25 mm. In addition, deformation occurs when raindrops fall. Therefore, raindrop deformation has been considered and treated in the design of this equipment, and the output data are obtained by correcting the deformation of the particles [35,36,37]. Class 1 (0–0.125 mm) and class 2 (0.125–0.25 mm) are not evaluated using the OTT Parsivel2 since they are outside the measurement range of this equipment. Therefore, the data from the first two channels (i.e., particle size from 0 to 0.25 mm) were not used in this study [38]. According to the study of Tokay and Bashor [39], some data, e.g., data with the particle number of less than 10, would be judged as noise and be deleted directly. Since the maximum measurable particle size of this equipment is 5 mm for liquid precipitation, the actual measurement range of raindrop size was from 0.25 mm to 5 mm in this study.

2.3. Methods

As previously introduced, various methods can be used to classify different types of precipitation [16,18,20,21]. Generally, three types of precipitation, i.e., stratiform precipitation, convective precipitation, and mixed convective-stratiform precipitation, can be defined based on radar echo characteristics and rainfall intensity. Based on raindrop spectrometer data, the method proposed by Chen et al. [21] was adopted in this study, and different types of precipitation were classified by the standard deviation of rain intensity from the consecutive 10 min samples during each precipitation event. The detailed criterion is as follows:
{ 0.5   mm / h R max < 5   mm / h   a n d   σ 1.5   mm / h ,   s t r a t i f o r m   p r e c i p i t a t i o n R max 5   mm / h   a n d   σ > 1.5   mm / h ,   c o n v e c t i v e   p r e c i p i t a t i o n o t h e r w i s e ,   m i x e d   c o n v e c t i v e s t r a t i f o r m   p r e c i p i t a t i o n
where Rmax is the maximum rainfall intensity (mm/h), and σ is the standard deviation (mm/h).
In this study, by examining all the data samples, 29 precipitation events in summer were selected from the observed precipitation data during the study period (i.e., from June 2019 to September 2019) to meet the measurement requirement. Based on Equation (1), 18 precipitation events among them have stratiform precipitation, while the other 8 precipitation events have convective precipitation (see Table A1 for details). Mixed convective-stratiform precipitation will not be discussed because only 3 precipitation events were found for this type of precipitation.
According to previous studies [12,40,41,42], various distribution functions, such as gamma distribution, general distribution, and lognormal distribution, can be fitted to the raindrop size distribution. In this study, the gamma distribution and the exponential distribution, which are both widely used, were adopted for fitting the observed raindrop size distribution in this region. The general form of gamma distribution is given as follows:
N ( D ) = N 0 D μ exp ( λ D )
where D is the raindrop size (mm), N(D) is the number of raindrops in unit volume and interval (m−3 mm−1), N0 is a concentration parameter (m−3 mm−1−μ), μ is the shape factor, and λ is the slope parameter (mm−1). It is worth noting that Equation (2) will turn into the general exponential distribution when μ = 0.
The meaning of each microphysical quantity and its formula is shown in Table 1, where Di is the diameter of the raindrop corresponding to the i-th scale channel, N(Di) is the particle number concentration corresponding to the scale channel, and ΔDi is the width of the scale channel.

3. Results and Discussion

3.1. Raindrop Size Distribution

In this study, the curve fitting tool called cftool by least squares in MATLAB was used for analysis. The toolbox can provide rich fitting algorithms that are easy to use and can realize a variety of linear and nonlinear function fitting. Figure 3 shows the fitting results with 95% confidence interval of the mean raindrop size distribution for stratiform precipitation and convective precipitation, respectively. Since the μ values are larger than 0, the curves in Figure 3 are both upward. Unimodal structures were observed for both of the two types of precipitation, and the spectral widths (i.e., difference between the maximum particle size and the minimum particle size) were 3.94 mm and 4.69 mm for stratiform precipitation and convective precipitation, respectively. With reference to the maximum raindrop concentration, it was 1473.49 m−3 mm−1 for convective precipitation, which was larger than that for stratiform precipitation (i.e., 609.26 m−3 mm−1). Therefore, the increase of N0 is closely related with the increase of the maximum raindrop concentration. In addition, the slope parameter (i.e., λ) increases when the type of precipitation changes from stratiform precipitation (i.e., 11.41) to convective precipitation (i.e., 12.48). The steeper slope of convective precipitation is mainly caused by the more intense changes inside clouds.
For stratiform precipitation, the coefficients of determination for the fitting curves from the gamma distribution and the exponential distribution were 0.99 and 0.97, respectively; the average relative errors were 10.15% and 42.06% (see Table 2), respectively; and the relevant root mean square errors were 10.84 and 27.11, respectively. The results indicate that gamma distribution is the better function to describe the raindrop size distribution for stratiform precipitation in this region. Similar results were obtained for convective precipitation; i.e., the coefficients of determination were 0.97 and 0.97; the average relative errors were 15.12% and 39.74%, respectively; and the root mean square errors were 63.17 and 64.25, for the gamma distribution and the exponential distribution, respectively. It is worth noting that raindrops with relatively smaller sizes contribute more to the rainfall intensity than raindrops with relatively larger sizes (see Section 3.2 for details). Known from Figure 3, the errors of fitting for raindrops with relatively smaller sizes (e.g., D < 2.5 mm) are lower using gamma distribution. For the total raindrop concentration, raindrops with diameters between the first point (D = 0.312 mm) and second point (D = 0.437 mm) in the mean distribution in Figure 3 account for 36.94% and 37.26% of the total contribution for stratiform precipitation and convective precipitation, respectively. Therefore, the point (D = 0.312 mm) below the maximum (D = 0.437 mm) in N(D) is critical for the fit to gamma distribution. In addition, it can be calculated from the mean raindrop concentration value and the fitted raindrop concentration value of the point between 0.2 and 1 mm, and the average relative errors of raindrops with diameters of 0.2–1 mm for stratified precipitation were 9.93% and 38.80% for the gamma distribution and the exponential distribution, respectively; for convective precipitation, they were 14.43% and 36.99%. As is known from Section 3.2, raindrops with diameters of 0.25–1 mm contribute most to the raindrop concentration and number of particles. Therefore, it is concluded that the gamma distribution can better describe the raindrop size distribution in this region.

3.2. Contributions of Raindrops with Different Sizes to Microphysical Parameters

In this study, raindrops with different sizes were divided into four grades, i.e., 0.25–1 mm, 1–2 mm, 2–3 mm, and > 3 mm, respectively. Then, their contributions to a variety of microphysical parameters (i.e., total raindrop concentration, number of raindrops, rainfall intensity, and liquid water content) were calculated, and the relevant results are shown in Table 3. Overall, raindrops with diameters of 0.25–1 mm contributed most to all the four selected microphysical parameters. However, for each microphysical parameter, there were certain differences. For total raindrop concentration, raindrops with diameters of 0.25–1 mm accounted for over 90% of the total contribution for both stratiform precipitation and convective precipitation, while raindrops with diameters of larger than 2 mm accounted for less than 1%. That indicates that the majority of raindrops in this region have relatively smaller sizes (i.e., D < 2 mm). The result of liquid water content was basically consistent with that of total raindrop concentration. By contrast, for number of raindrops and rainfall intensity, the situations were different for stratiform precipitation and convective precipitation. For stratiform precipitation, similar results were found as those of total raindrop concentration and liquid water content, whereas for convective precipitation, the contributions of raindrops with diameters of 1–2 mm were comparable to those of raindrops with diameters of less than 1 mm. As a result, it can be concluded that the raindrop sizes of less than 2 mm contribute most to the rainfall intensity of stratiform and convective precipitation.

3.3. Characteristics of Microphysical Parameters

In this study, characteristics of microphysical parameters were analyzed based on the values derived from the mean raindrop size distribution for stratiform precipitation and convective precipitation. Table 4 lists the mean values of several microphysical parameters.
Based on the results shown in Table 4, it is clear that all the values for stratiform precipitation are lower than the corresponding values for convective precipitation. The characteristic diameter of the stratiform precipitation is smaller than that of the convective precipitation due to the larger proportion of large diameter sizes in the convective precipitation. Meanwhile, according to the formula (see Table 1), the increase in particles will also lead to an increase in liquid water content. With reference to single events, three precipitation events for stratiform precipitation (i.e., corresponding to numbers 2, 14 and 15 in Table A1) and three precipitation events for convective precipitation (i.e., corresponding to numbers 20, 21 and 25 in Table A1) were randomly selected as typical representatives in order to analyze the changing features of these microphysical parameters across time, as shown in Figure 4. Among them, Figure 4a–c shows stratiform precipitation and Figure 4d–f shows for convective precipitation. Furthermore, it is clear that the variations of these microphysical parameters present a multi-peak structure for precipitation events with stratiform precipitation (see Figure 4a–c) and a few-peak structure for precipitation events with convective precipitation (see Figure 4d–f). In this study, an overall analysis of other events was conducted, and it was found that their trends were basically the same. However, due to paper length reason, they were not listed one by one, and only the six randomly selected events were further analyzed to investigate the changing feature of a single precipitation event.
The first precipitation event (Figure 4a) occurred on 27 June 2019, and the spectral width was 2.94 mm. The raindrop concentration reached the maximum value of 3.41 log10(m−3 mm−1) at 3:31 (see Figure 5a), and the corresponding class was 0.437 mm in diameter, because the class had the largest number of particles. Additionally, the rainfall intensity reached the maximum value of 4.31 mm/h. The second precipitation event (Figure 4b) occurred on August 5, 2019, and lasted for 70 min. The spectral width was 2.06 mm. At the beginning of this event, the width of the distribution gradually increased, and the maximum rainfall intensity reached 0.69 mm/h at 3:04 local time (same later). The radar reflectivity factor also reached the maximum value (i.e., 182.47 mm6/m3); the corresponding class diameter was 0.437 mm. The maximum raindrop concentration (i.e., 3.28 log10(m−3 mm−1)) appeared after 5 min, (see Figure 5b). At that time, the corresponding rainfall intensity was 0.61 mm/h. The third precipitation event (Figure 4c) occurred on September 7, 2019, and lasted for 105 min. Thirteen minutes after the start of precipitation, the rain intensity, radar reflectivity factor, and liquid water content all reached their maximum values, which were 2.19 mm/h, 657.66 mm6/m3, and 0.15 g/m3, respectively. The corresponding raindrop concentration also reached a maximum value (i.e., 3.15 log10(m−3 mm−1)) (see Figure 5c), and the corresponding class was 0.437 mm in diameter. The fourth precipitation event (Figure 4d) occurred on July 4, 2019, and the spectral width was 5.69 mm. Six minutes after it began to rain, rainfall intensity (i.e., 38.69 mm/h) and raindrop concentration (i.e., 3.48 log10(m−3 mm−1)) reached the maximum values (see Figure 5d); the corresponding was 0.562 mm class in diameter. Then, the second peak of rainfall intensity (i.e., 24.19 mm/h) appeared eight minutes later, and the corresponding raindrop concentration was 0.55–3.26 log10(m−3 mm−1). After that, raindrop concentration began to decrease. The fifth precipitation event (Figure 4e) occurred on July 6, 2019, and lasted for 99 min. The spectral width was 3.94 mm. The rain intensity reached its maximum (i.e., 54.32 mm/h) at 23:55. At this time, the radar reflectivity factor and liquid water content also reached their maxima (i.e., 32726.53 mm6/m3 and 2.59 g/m3). The maximum raindrop concentration was 3.63 log10(m−3 mm−1) (see Figure 5e), and the corresponding class was 0.437 mm in diameter. The sixth precipitation event (Figure 4f) occurred on 26 August 2019, and lasted for 53 min. The rain intensity, radar reflectivity factor, and liquid water content all reached their maximum values at 16:23, which were 14.28 mm/h, 955.13 mm6/m3, and 0.65 g/m3, respectively.
From Figure 4 and the above analysis, we can see that the microphysical parameters (i.e., R, W, and Z) of stratiform precipitation are generally smaller than those of convective precipitation, and the changing trend of the microphysical parameters of stratiform precipitation shows a multi-peak structure. From Figure 5, we can see that the spectrum width of stratiform precipitation is smaller than that of convective precipitation. In addition, according to the above-mentioned maximum raindrop concentration value of each precipitation event, the maximum raindrop concentration of stratiform precipitation is smaller than that of convective precipitation.

3.4. Z–R Relationship

Generally, the Z–R relationship can be expressed as follows:
Z = a R b
where Z denotes the radar reflectivity factor, R denotes the rainfall intensity, and a and b are coefficients. Normally, for the standard Z–R relationship of the WSR 88D (Next-Generation Weather Radar of the United States), the default coefficients are a = 300 and b = 1.40 [43], which have been widely used in weather radar rainfall estimation [23,24].
Based on the data from the above six precipitation events, the two coefficients of the Z–R relationship are quite different. However, for the same type of precipitation, certain regularities can still be summarized. Based on the data derived from stratiform and convective precipitation (Table A1), the results shown in Figure 6 could be obtained using the curve fitting tool in MATLAB. The coefficients of determination were 0.55 and 0.43 for stratiform precipitation and convective precipitation, and the fitting passed the significance test of 0.05. That indicates that the fitting performance for stratiform precipitation is better than that for convective precipitation. For stratiform precipitations, the values of a (i.e., 186) are lower than for the standard Z–R relationship (i.e., a = 300), and the value of b (i.e., 1.42) is higher than for the standard Z–R relationship (i.e., b = 1.40); by contrast, for convective precipitation, the value of b (i.e., 1.50) is also higher than for the standard Z–R relationship, the value of a (i.e., 154) is lower than that for the standard Z–R relationship. That is attributed to the fact that the exponential factor b is only related to the shape factor μ of the raindrop size distribution and b increases with the increase of μ [44]; moreover, the shape factor of convective precipitation (i.e., μ = 6.28) is higher than the shape factor (i.e., μ = 5.82) of stratiform precipitation. In contrast, the coefficient a is related to the shape factor μ, total raindrop concentration NT, and mass weighted diameter Dm. The coefficient a increases as Dm increases, and decreases as NT increases [44]; moreover, the NT of convective precipitation (i.e., NT = 680.31 mm−3) is much larger than the NT of stratiform precipitation (i.e., NT = 288.04 mm−3), which results in the coefficient a of convective precipitation being smaller than a of stratiform precipitation. Known from Figure 6, the red line is below the blue line, which means that when R is the same, Z derived from the standard Z–R relationship is less than that value fitted. Therefore, the standard Z–R relationship will underestimate the radar reflectivity factor in this region.

4. Conclusions

This study analyzes the microphysical characteristics of different types of precipitation in China’s inland arid region. Based on the observed data in the study area located in Qinghai–Tibet Plateau during the one-year study period, several new findings are achieved. The major contributions of this study can be described as follows:
First, compared to the exponential distribution, the gamma distribution is the better function to describe the raindrop size distribution in this region, especially for the raindrops with relatively smaller sizes. The large raindrop concentration is mainly distributed at the end of small particles (0.2–1 mm). Therefore, the fit of small particles determines the fit of the entire distribution. Therefore, for local precipitation, the gamma distribution is better than the exponential distribution.
Second, in this region, for the number of particles, raindrops with diameters of 0.25–1 mm account for over 85% of the total contributions for both stratiform precipitation and convective precipitation. For rainfall intensity, raindrops with diameters of 0.25–2 mm account for over 95% of the total contributions for both stratiform precipitation and convective precipitation, indicating that the raindrop sizes which contribute most to the rainfall intensity are below 2 mm for stratiform precipitation and convective precipitation.
Third, the coefficient a over the study region is smaller than for the standard Z–R relationship and the coefficient b over the study region is higher than for the standard Z–R relationship. The standard Z–R relationship will underestimate the radar reflectivity factor in this region. There are some considerable differences with previous studies, the coefficient a values of the Z–R relationship of both types of precipitation are smaller than those of the standard Z–R relationship, but a is larger than that of the Z–R relationship of the Nagqu region of the Tibetan Plateau [29], which is related to the local environment and data processing methods, such as different raindrop concentration, leading to different coefficients.
Furthermore, due to the limited observation period (i.e., one year) and study area, this study only presents the preliminary findings which are different from those in other regions. A longer observation period and larger study area are necessary to validate the obtained results and achieve the more accurate and reliable conclusions. In addition, the obtained results may change in future due to climate change strongly influencing precipitation. Nevertheless, with the awareness of the above limitation, the results reported in this study can provide a new avenue of analyzing the microphysical characteristics of different types of precipitation in inland arid regions, which would be valuable for water resource management and numerical models in such regions.

Author Contributions

Conceptualization, H.X. and J.C.; methodology, H.X.; validation, P.P. and H.S.; formal analysis, P.P.; investigation, P.P. and J.W.; data curation, P.P. and J.W.; writing—original draft preparation, P.P. and H.S.; writing—review and editing, H.S.; supervision, H.X., H.S., and J.C.; project administration, H.X. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the National Key Research and Development Project (grant number 2017YFC0403603), National Natural Science Foundation of China funded project (grant number 91747205, 51909117), and the Natural Science Foundation of Qinghai Province project (grant number 2017-ZJ-911).

Acknowledgments

We are grateful to the students of Qinghai University who carried out the experimental observations under difficult conditions. We are also grateful to the three anonymous reviewers who offered the insightful and constructive comments leading to improvement of this paper.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Samples of different types of precipitation (S-stratiform, C-convective, and M-mixed).
Table A1. Samples of different types of precipitation (S-stratiform, C-convective, and M-mixed).
NODateTime (UTC+8)Number of SamplesMaximum Rainfall Intensity (mm·h−1)Standard Deviation (mm·h−1)Echo Intensity (dBz)Maximum Echo (dBz)Type
12019/6/2700:55–01:28340.670.1115.1118.97S
22019/6/2703:00–04:431034.310.8720.3732.35S
32019/6/2913:46–14:39544.421.0621.7636.19S
42019/6/2917:33–18:12403.851.11931.48S
52019/6/2919:22–20:24632.10.3919.9433.14S
62019/7/620:48–22:371023.250.8419.6527.81S
72019/7/10–7/1120:01–05:245394.730.7119.3936.25S
82019/7/1418:19–18:50323.060.7420.1927.67S
92019/7/1700:15–03:011453.650.8816.0832.11S
102019/7/1705:03–05:51461.70.4712.7522.09S
112019/7/1809:30–10:16460.780.1813.7521.48S
122019/7/2107:14–07:57400.540.121520.64S
132019/7/2110:18–11:09510.640.1413.918.61S
142019/8/502:16–03:25700.690.2111.5122.61S
152019/9/7–9/822:44–00:311052.190.7115.1128.18S
162019/9/814:31–15:14430.520.1012.5719.43S
172019/9/815:36–16:12374.361.3018.5735.30S
182019/9/1901:11–04:392001.850.5314.2625.81S
192019/6/2721:06–22:439410.62.9325.3436.77C
202019/7/0422:02–23:005738.6910.4324.3653.81C
212019/7/0623:05–00:489954.3218.3323.7545.15C
222019/7/0711:20–12:08496.251.6319.8132.81C
232019/7/1119:25–20:04405.571.5920.6131.04C
242019/7/1707:32–08:35648.342.4321.0437.63C
252019/8/2616:11–17:045314.283.9822.4839.80C
262019/9/1120:34–21:06336.232.2121.6041.28C
272019/6/2718:38–19:34575.491.4320.6329.63M
282019/7/1320:47–21:23377.170.8525.0830.77M
292019/8/7–8/823:08–02:311847.861.2219.5638.84M

References

  1. Kisi, O.; Sanikhani, H. Prediction of long-term monthly precipitation using several soft computing methods without climatic data. Int. J. Climatol. 2015, 35, 4139–4150. [Google Scholar] [CrossRef]
  2. Shi, H.Y.; Chen, J.; Li, T.J.; Wang, G.Q. A new method for estimation of spatially distributed rainfall through merging satellite observations, raingauge records, and terrain digital elevation model data. J. Hydro-Environ. Res. 2020, 28, 1–14. [Google Scholar] [CrossRef]
  3. Shi, H.Y.; Li, T.J.; Wei, J.H. Evaluation of the gridded CRU TS precipitation dataset with the point raingauge records over the Three-River Headwaters region. J. Hydrol. 2017, 548, 322–332. [Google Scholar] [CrossRef] [Green Version]
  4. Liu, S.N.; Shi, H.Y.; Sivakumar, B. Socioeconomic drought under growing population and changing climate: A new index considering the resilience of a regional water resources system. J. Geophys. Res. Atmos. 2020, 125. [Google Scholar] [CrossRef]
  5. Liu, S.N.; Shi, H.Y. A recursive approach to long-term prediction of monthly precipitation using genetic programming. Water Resour. Manag. 2019, 33, 1103–1121. [Google Scholar] [CrossRef] [Green Version]
  6. Caracciolo, C.; Napoli, M.; Porcu, F.; Prodi, F.; Dietrich, S.; Zanchi, C.; Orlandini, S. Raindrop size distribution and soil erosion. J. Irrig. Drain. Eng. 2012, 138, 461–469. [Google Scholar] [CrossRef]
  7. Yau, M.K.; Rogers, R.R. A Short Course in Cloud Physics; Elsevier: Amsterdam, The Netherlands, 1996. [Google Scholar]
  8. Radhakrishna, B.; Rao, T.N. Statistical characteristics of multipeak raindrop size distributions at the surface and aloft in different rain regimes. Mon. Weather Rev. 2009, 137, 3501–3518. [Google Scholar] [CrossRef]
  9. Zhang, G.; Sun, J.; Brandes, E.A. Improving parameterization of rain microphysics with disdrometer and radar observations. J. Atmos. Sci. 2006, 63, 1273–1290. [Google Scholar] [CrossRef] [Green Version]
  10. Scheleusener, P.E. Drop Size Distribution and Energy of Falling Raindrops from a Medium Pressure Irrigation Sprinkler. Ph.D. Thesis, Michigan State University, East Lansing, MI, USA, 1967. [Google Scholar]
  11. Hall, M.J. Use of the stain method in determining of the dropsize distribution of coarse liquid sprays. Trans. ASAE 1970, 13, 33–37. [Google Scholar] [CrossRef]
  12. Ulbrich, C.W.; Atlas, D. Rainfall microphysics and radar properties: Analysis methods for drop size spectra. J. Appl. Meteorol. 1998, 37, 912–923. [Google Scholar] [CrossRef]
  13. Ulbrich, C.W.; Atlas, D. Microphysics of raindrop size spectra: Tropical continental and maritime storms. J. Appl. Meteorol. Climatol. 2007, 46, 1777–1791. [Google Scholar] [CrossRef]
  14. Steiner, M.; Smith, J.A. Scale dependence of radar-rainfall rates-an assessment based on raindrop spectra. J. Hydrometeorol. 2004, 5, 1171–1180. [Google Scholar] [CrossRef]
  15. Williams, C.R.; Bringi, V.N.; Carey, L.D.; Chandrasekar, V.; Gatlin, P.N.; Haddad, Z.S.; Meneghini, R.; Munchak, S.J.; Nesbitt, S.W.; Petersen, W.A.; et al. Describing the shape of raindrop size distributions using uncorrelated raindrop mass spectrum parameters. J. Appl. Meteorol. Climatol. 2014, 53, 1282–1296. [Google Scholar] [CrossRef]
  16. Gamache, J.F.; Houze, R.A., Jr. Mesoscale air motions associated with a tropical squall line. Mon. Weather Rev. 1982, 110, 118–135. [Google Scholar] [CrossRef] [Green Version]
  17. Johnson, R.H.; Hamilton, P.J. The relationship of surface pressure features to the precipitation and air flow structure of an intense mid-latitude squall line. Mon. Weather Rev. 1988, 116, 1444–1472. [Google Scholar] [CrossRef] [Green Version]
  18. Bringi, V.N.; Chandrasekar, V.; Hubbert, J.; Gorgucci, E.; Randeu, W.L.; Schoenhuber, M. Raindrop size distribution in different climatic regimes from disdrometer and dual-polarized radar analysis. J. Atmos. Sci. 2003, 60, 354–365. [Google Scholar] [CrossRef]
  19. Liu, H.Y.; Lei, H.C. Characteristics of rain from stratiform versus convective cloud based on surface raindrop data. Chin. J. Atmos. Sci. 2006, 30, 693–702. (In Chinese) [Google Scholar]
  20. Marzano, F.S.; Cimini, D.; Montopoli, M. Investigating precipitation microphysics using groundbased microwave remote sensors and disdrometer data. Atmos. Res. 2010, 97, 583–600. [Google Scholar] [CrossRef]
  21. Chen, B.; Yang, J.; Pu, J. Statistical characteristics of raindrop size distribution in the Meiyu season observed in Eastern China. J. Meteorol. Soc. Jpn. 2013, 91, 215–227. [Google Scholar] [CrossRef] [Green Version]
  22. Chandrasekar, V.; Bringi, V.N. Simulation of radar re-flectivity and surface measurements of rainfall. J. Atmos. Ocean. Technol. 1987, 4, 464–478. [Google Scholar] [CrossRef] [Green Version]
  23. Smith, J.A.; Seo, D.J.; Baeck, M.L.; Hudlow, M.D. An intercomparison study of NEXRAD precipitation estimates. Water Resour. Res. 1996, 32, 2035–2045. [Google Scholar] [CrossRef]
  24. Young, C.B.; Nelson, B.R.; Bradley, A.A.; Smith, J.A.; Peters-Lidard, C.D.; Kruger, A.; Baeck, M.L. An evaluation of NEXRAD precipitation estimates in complex terrain. J. Geophys. Res. Atmos. 1999, 104, 19691–19703. [Google Scholar] [CrossRef]
  25. Chapon, B.; Delrieu, G.; Gosset, M.; Boudevillain, B. Variability of rain drop size distribution and its effect on the Z-R relationship: A case study for intense Mediterranean rainfall. Atmos. Res. 2008, 87, 52–65. [Google Scholar] [CrossRef]
  26. Verrier, S.; Barthes, L.; Mallet, C. Theoretical and empirical scale dependency of Z-R relationships: Evidence, impacts, and correction. J. Geophys. Res. Atmos. 2013, 118, 7435–7449. [Google Scholar] [CrossRef]
  27. Hasan, M.M.; Sharma, A.; Johnson, F.; Mariethoz, G.; Seed, A. Correcting bias in radar Z-R relationships due to uncertainty in point rain gauge networks. J. Hydrol. 2014, 519, 1668–1676. [Google Scholar] [CrossRef]
  28. Fang, X.; Shao, A.M.; Yue, X.J.; Liu, W.C. Statistics of the Z-R relationship for strong convective weather over the Yangtze-Huaihe river basin and its application to radar reflectivity data assimilation for a heavy rain event. J. Meteorol. Res. 2018, 32, 598–611. [Google Scholar] [CrossRef]
  29. Wu, Y.; Liu, L. Statistical characteristics of raindrop size distribution in the Tibetan Plateau and Southern China. Adv. Atmos. Sci. 2017, 34, 727–736. [Google Scholar] [CrossRef]
  30. Xi, Y.; Miao, C.Y.; Wu, J.W.; Duan, Q.; Lei, X.; Li, H. Spatiotemporal changes in extreme temperature and precipitation events in the Three-Rivers Headwater region, China. J. Geophys. Res. Atmos. 2018, 123. [Google Scholar] [CrossRef]
  31. Shi, H.Y.; Li, T.J.; Wei, J.H.; Fu, W.; Wang, G. Spatial and temporal characteristics of precipitation over the Three-River Headwaters region during 1961–2014. J. Hydrol. Reg. Stud. 2016, 6, 52–65. [Google Scholar] [CrossRef] [Green Version]
  32. Liang, L.Q.; Li, L.J.; Liu, C.M.; Cuo, L. Climate change in the Tibetan Plateau Three Rivers Source region: 1960–2009. Int. J. Climatol. 2013, 33, 2900–2916. [Google Scholar] [CrossRef]
  33. Cao, L.G.; Pan, S.M. Changes in precipitation extremes over the “Three-River Headwaters” region, hinterland of the Tibetan Plateau, during 1960–2012. Quat. Int. 2014, 321, 105–115. [Google Scholar] [CrossRef]
  34. Duan, A.M.; Hu, J.; Xiao, Z.X. The Tibetan Plateau summer monsoon in the CMIP5 simulations. J. Clim. 2013, 26, 7747–7766. [Google Scholar] [CrossRef]
  35. Loffler-Mang, M.; Joss, J. An optical distrometer for measuring size and velocity of hydrometers. J. Atmos. Ocean. Technol. 2000, 17, 130–139. [Google Scholar] [CrossRef]
  36. Battaglia, A.; Rustemeier, E.; Tokay, A.; Blahak, U.; Simmer, C. PARSIVEL snow observations: A critical assessment. J. Atmos. Ocean. Technol. 2010, 27, 333–344. [Google Scholar] [CrossRef]
  37. Tokay, A.; Wolff, D.B.; Petersen, W.A. Evaluation of the new version of the laser-optical disdrometer, OTT Parsivel2. J. Atmos. Ocean. Technol. 2014, 31, 1276–1288. [Google Scholar] [CrossRef]
  38. Tokay, A.; Petersen, W.A.; Gatlin, P.; Wingo, M. Comparison of raindrop size distribution measurements by collocated disdrometers. J. Atmos. Ocean. Technol. 2013, 30, 1672–1690. [Google Scholar] [CrossRef]
  39. Tokay, A.; Bashor, P.G. An experimental study of small-scale variability of raindrop size distribution. J. Appl. Meteorol. 2010, 49, 2348–2365. [Google Scholar] [CrossRef]
  40. Feingold, G.; Levin, Z. The lognormal fit to raindrop spectra from frontal convective clouds in Israel. J. Appl. Meteorol. 1986, 25, 1346–1364. [Google Scholar] [CrossRef] [Green Version]
  41. Marshall, J.S.; Palmer, W.M. The distribution of raindrops with size. J. Meteorol. 1948, 5, 165–166. [Google Scholar] [CrossRef]
  42. Williams, C.R.; Gage, K.S. Raindrop size distribution variability estimated using ensemble statistics. Ann. Geophys. 2009, 27, 555–567. [Google Scholar] [CrossRef] [Green Version]
  43. Fulton, R.A.; Breidenbach, J.P.; Seo, D.J.; Miller, D.A.; O’Bannon, T. The WSR-88D rainfall algorithm. Weather Forecast. 1998, 13, 377–395. [Google Scholar] [CrossRef]
  44. Feng, L.; Chen, B.J. The radar reflectivity-rainrate relationships as inferred from ground-based raindrop spectra by GBPP-100 Probe. J. Meteorol. Sci. 2009, 29, 2192–2198. [Google Scholar]
Figure 1. Map of China showing the study area.
Figure 1. Map of China showing the study area.
Water 12 02300 g001
Figure 2. The OTT Parsivel2 laser raindrop spectrometer.
Figure 2. The OTT Parsivel2 laser raindrop spectrometer.
Water 12 02300 g002
Figure 3. Fitting results of the mean raindrop size distribution for all the precipitation events from (a) stratiform precipitation and (b) convective precipitation. (Mean: the mean raindrop size distribution; Gamma: the gamma distribution; Exp: the exponential distribution).
Figure 3. Fitting results of the mean raindrop size distribution for all the precipitation events from (a) stratiform precipitation and (b) convective precipitation. (Mean: the mean raindrop size distribution; Gamma: the gamma distribution; Exp: the exponential distribution).
Water 12 02300 g003
Figure 4. Changes of microphysical parameters (i.e., R, W, and Z) over time for precipitation events of (a) 2019/6/27 3:00-4:43, (b) 2019/8/5 2:16–3:25, (c) 2019/9/7 22:44–2019/9/8 00:31, (d) 2019/7/4 22:02–23:00, (e) 2019/7/6 23:05–2019/7/7 00:48, and (f) 2019/8/26 16:11–17:04.
Figure 4. Changes of microphysical parameters (i.e., R, W, and Z) over time for precipitation events of (a) 2019/6/27 3:00-4:43, (b) 2019/8/5 2:16–3:25, (c) 2019/9/7 22:44–2019/9/8 00:31, (d) 2019/7/4 22:02–23:00, (e) 2019/7/6 23:05–2019/7/7 00:48, and (f) 2019/8/26 16:11–17:04.
Water 12 02300 g004
Figure 5. Changes of N(D) over time for precipitation processes of (a) 2019/6/27 3:00–4:43, (b) 2019/8/5 2:16–3:25, (c) 2019/9/7 22:44–2019/9/8 00:31, (d) 2019/7/4 22:02–23:00, (e) 2019/7/6 23:05–2019/7/7 00:48 and (f) 2019/8/26 16:11–17:04. Note: the color bar represents the raindrop concentration on the logarithmic scale (i.e., log10(N(D)).
Figure 5. Changes of N(D) over time for precipitation processes of (a) 2019/6/27 3:00–4:43, (b) 2019/8/5 2:16–3:25, (c) 2019/9/7 22:44–2019/9/8 00:31, (d) 2019/7/4 22:02–23:00, (e) 2019/7/6 23:05–2019/7/7 00:48 and (f) 2019/8/26 16:11–17:04. Note: the color bar represents the raindrop concentration on the logarithmic scale (i.e., log10(N(D)).
Water 12 02300 g005
Figure 6. Z–R relationships for (a) stratiform precipitation and (b) convective precipitation. Note: red lines are fitting curves, and blue lines are standard curves.
Figure 6. Z–R relationships for (a) stratiform precipitation and (b) convective precipitation. Note: red lines are fitting curves, and blue lines are standard curves.
Water 12 02300 g006
Table 1. Definition of some variables in this study.
Table 1. Definition of some variables in this study.
VariableFormulatePhysics Meaning
Total raindrop concentration, NT (m−3) N T = i = 1 32 N ( D i ) Δ D i Total number of particles per unit volume
Rainfall intensity,
R(mm/h)
R = 6 π 10 4 i = 1 32 D i 3 V i N ( D i ) Δ D i Precipitation per unit of time
Liquid water content,
W (g/m3)
W = π 6000 i = 1 32 D i 3 N ( D i ) Δ D i Total particle mass per unit volume
Radar reflectivity factor,
Z (mm6/m3)
Z = i = 1 32 D i 6 N ( D i ) Δ D i Total particle retroreflective cross-sections per unit volume
Mean diameter,
D1 (mm)
D 1 = i = 1 32 D i N ( D i ) / i = 1 32 N ( D i ) Average diameter of all particles in a unit volume
Root mean square diameter,
D2 (mm)
D 2 = i = 1 32 D i 2 N ( D i ) / i = 1 32 N ( D i ) Its square indicates the average cross section of the raindrops
Root mean cube diameter,
D3 (mm)
D 3 = i = 1 32 D i 3 N ( D i ) / i = 1 32 N ( D i ) 3 Its cube can indicate the average volume or mass of the raindrops
Mass weighted diameter,
Dm (mm)
D m = i = 1 32 ρ D i 4 N ( D i ) Δ D i / i = 1 32 ρ D i 3 N ( D i ) Δ D i Average diameter of the weighted mass of all particles in a unit volume relative to the total mass of the particles
Table 2. Values of the statistical fit and errors.
Table 2. Values of the statistical fit and errors.
DistributionStratiform PrecipitationConvective Precipitation
R2RMSEARER2RMSEARE
Gamma0.995810.8410.15%0.974263.1715.12%
Exponential0.972827.1142.06%0.971464.2539.74%
Table 3. Contributions of raindrops with different sizes to microphysical parameters for precipitation from (a) stratiform precipitation and (b) convective precipitation. Note: NT (total raindrop concentration), nT (total number of particles), R (rainfall intensity), W (liquid water content).
Table 3. Contributions of raindrops with different sizes to microphysical parameters for precipitation from (a) stratiform precipitation and (b) convective precipitation. Note: NT (total raindrop concentration), nT (total number of particles), R (rainfall intensity), W (liquid water content).
(a)NT (%)nT (%)R (%)W (%)(b)NT (%)nT (%)R (%)W (%)
0.25–1 mm93.8488.2967.3666.760.25–1 mm92.2585.3555.0557.49
1–2 mm6.111.5132.2430.711–2 mm7.8014.2242.7136.62
2–3 mm0.060.190.402.232–3 mm0.140.392.134.18
>3 mm0000.30>3 mm0.010.040.121.71
Table 4. The mean values of microphysical parameters. Note: D1 (mean diameter), D2 (root mean square diameter), D3 (root mean cube diameter), NT (total raindrop concentration), R (rainfall intensity), W (liquid water content), Z (radar reflectivity factor).
Table 4. The mean values of microphysical parameters. Note: D1 (mean diameter), D2 (root mean square diameter), D3 (root mean cube diameter), NT (total raindrop concentration), R (rainfall intensity), W (liquid water content), Z (radar reflectivity factor).
TypeD1
(mm)
D2
(mm)
D3
(mm)
Dm
(mm)
NT
(mm−3)
R
(mm/h)
W
(g/m3)
Z
(dBz)
Stratiform precipitation0.61080.64940.68990.9447288.040.590.053521.70
Convective precipitation0.61550.65850.70551.0724680.312.000.141629.50

Share and Cite

MDPI and ACS Style

Xie, H.; Pan, P.; Shi, H.; Chen, J.; Wang, J. Observed Microphysical Characteristics of Stratiform and Convective Precipitation over an Inland Arid Region of the Qinghai–Tibet Plateau. Water 2020, 12, 2300. https://doi.org/10.3390/w12082300

AMA Style

Xie H, Pan P, Shi H, Chen J, Wang J. Observed Microphysical Characteristics of Stratiform and Convective Precipitation over an Inland Arid Region of the Qinghai–Tibet Plateau. Water. 2020; 12(8):2300. https://doi.org/10.3390/w12082300

Chicago/Turabian Style

Xie, Hongwei, Peichong Pan, Haiyun Shi, Ji Chen, and Jinzhao Wang. 2020. "Observed Microphysical Characteristics of Stratiform and Convective Precipitation over an Inland Arid Region of the Qinghai–Tibet Plateau" Water 12, no. 8: 2300. https://doi.org/10.3390/w12082300

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