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A computer database for falling snowflakes

Published online by Cambridge University Press:  20 January 2017

Ken-ichiro Muramoto
Affiliation:
Department of Electrical and Computer Engineering, Faculty of Technology, Kanazawa University, Kanazawa 920, Japan
Kohki Matsuura
Affiliation:
Department of Electrical and Computer Engineering, Faculty of Technology, Kanazawa University, Kanazawa 920, Japan
Toshio Harimaya
Affiliation:
Hokkaido University, Sapporo 060, Japan
Tatsuo Endoh
Affiliation:
Institute of Low Temperature Science, Hokkaido University, Sapporo 060, Japan
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Abstract

A computer-based measurement system for characteristics of snowfall is described. To measure the size and velocity of falling snowflakes quantitatively, images of snowflakes were input to an image processor and the primary data were analyzed in real time. In this process, maximum diameter in a horizontal plane and falling velocity were recorded in previously set intervals, then stored on a disk. Since a lot of data were obtained during a full winter season, data had to be processed to make up a database after an experiment. Using this database, the data of the distribution of size and velocity of snowflakes can be retrieved at anytime.

We observed snowflakes during winter months of 1986-92 in Sapporo and Toyama, which are located near the north east and middle of the Japan Sea coast respectively. The data indicate that the average size of snowflakes in Toyama was larger than that in Sapporo, while the number concentration of snowflakes in Sapporo was rather higher. The fall velocity tends to increase with increasing size of snowflakes, as observed in both areas.

Type
Research Article
Copyright
Copyright © International Glaciological Society 1993

Introduction

Measurement of the characteristics of snowflakes is important in the investigation of the growth process of snow particles (Reference Locatelli and HobbsLocatelli and Hobbs, 1974; Reference ReinkingReinking, 1979) and of radar measurement of snowfall (Reference Carlson and MarshallCarlson and Marshall, 1972; Reference Collier and Larke Collier and Larke, 1978; Reference Boucher and WielerBoucher, 1985). In particular, data on the simultaneous and continuous observations of fall velocity, diameter and number concentration of snowflakes provide useful information. Furthermore, using these data it is possible to study the interannual variability of characteristics of snowfalls.

Various methods for measuring the size and velocity of falling snowflakes have been developed. For example, fall velocity has been measured by using a stopwatch (Reference Magono and NakamuraMagono and Nakamura, 1965; Reference Jiusto and BosworthJiusto and Bosworth, 1971), a camera (Reference LanglebenLangleben, 1954), light beams and photomultiplier tubes (Reference Locatelli and HobbsLocatelli and Hobbs, 1974) and a stereoscopic camera system (Reference Zikmunda and ValiZikmunda and Vali, 1972). Suitable equipment, however, to automatically measure the physical parameters of snowflakes has not yet been developed.

In this paper, a new system is proposed which measures simultaneously the size and velocity of falling snowflakes, using a personal computer with an image-analysis board. Characteristics of snowflakes in two areas were compared using this system.

System Configuration

In order to protect falling snowflakes from wind and sunlight, a tower 2 m (in height) x 1.5 m x 1.5 m was constructed, and a wind-breaker net 4 m (in height) x 3 m x 3 m was installed around the tower to reduce the effect of the wind. Snowflakes fell vertically into the tower even during strong winds, ensuring accurate measurement of snowflake characteristics. The hardware diagram and measurements of the system are shown in Figure 1. The lighted space in the tower was illuminated from two directions by two halogen lamps. The photographing space inside the lighting space depended on the zooming range of a lens. To decrease the geometrical errors generated by the depth of field, the pictures of the falling snowflakes in the photographing space were taken by a zoom lens at a distance of 6 m. Trajectories of snowflakes falling into the photographing space were photographed with a CCD TV camera ten times per min.

Fig. 1. System configuration for measurement of snow-flakes. Snowflakes falling into the tower were illuminated by two halogen lamps and photographed ten times per min.

Measuring Process

A typical photograph of snowflake images is shown in Figure 2. Since the shutter speed of the TV camera was set at 1 /60 s, the photographed images of snowflakes appeared as short streaks. The images were converted into digital form with an image-analysis board installed on a personal computer. Digitized images consisted of a 256 x 256 pixel array, each pixel having a designated gray value ranging from 0 to 255.

Fig. 2. Typical photograph of snowflake images. Since the shutter speed of camera was slow, images of snowflakes appeared as short streaks.

Photographed pictures were composed of two kinds of regions that occupy different gray-level ranges, and all parts of the snowflake images were lighter than the background image. Therefore the pixels whose gray levels were lighter than the background were considered as snowflakes. The pictures of snowflakes could thus be segmented. Figure 3A shows the binary image of a snowflake consisting of pixels. The snowflake is depicted by white round pixels.

Fig. 3. A, binary image of snowflake consisting of pixels. Calculation is started from the topmost pixel (S) of snowflakes. The maximum dislance between the both ends in each row (XW) and maximum vertical length (YW) are computed. Size of pixels depends on the length of photographing space shown in Table 1. B, assuming that each snowflake is spherical and its diameter is (XW), snowflakes fall (YW-XW) in 1/60s.

Extraction of Snowflack

A snowflake is found by scanning on each line from the left end towards the right side, from the top to bottom line as shown in Figure 3A. When the topmost pixel of a snowflake (S) is detected, the horizontal extent of the snowflake in the same line is computed. In a similar way, pixels of the bottom line are computed. This process is continued as far as pixels of the same snowflake are detected. When a pixel of the snowflake is not found under the line, the search for the snowflake is finished. In this way, the position of both the ends in each row is computed. The same procedure is repeated until detection of all the snowflakes is finished. This method is faster than a continuous search for all pixels in a regular sequence. Since the depth of the photographing space is limited to 20 cm, it seldom happens that snowflakes overlap each other throughout the observations.

Size of Snowflakes

Since the shutter speed is set at l/60s, the observed images of snowflakes falling into the tower are seen as streaks which are longer than the actual snowflakes. Therefore, the maximum width (XW) as shown in Figure 3A is considered to be the diameter of the snowflakes.

Fall Velocity of Snowflakes

Since each falling snowflake produces a short streak during 1 /60 s, its velocity is calculated from its vertical length (YW). If the assumption is made that each snowflake is spherical, and that diameter (XW) is as shown in Figure 3B, its falling distance is (YW-XW) for 1 /60 s. Using this method, it is possible to quickly compute the falling velocity of all snowflakes.

Number Concentration of Snowflakes

The number of snowflakes is calculated by counting the number of streaks in the photographing space. The number concentration per unit space is computed from the observed data on the number of snowflakes in the photographing space.

Database

Data Processing

The diameter, the fall velocity and the number of snowflakes are computed from binary images of observed snowflakes, and recorded on a disk every 6 s. After an observation, these data are accumulated in a 60 s interval. To normalize the output file, snowflakes are divided into 20 groups according to their diameters. The minimum diameter that can be detected depends on the size of photographing space. The maximum diameter is determined by 20 times the length of the minimum one. Table 1 lists the relationship between the length of photographing space and the minimum and maximum diameters that can be detected. To reduce the calculation time on retrieving the mean and standard deviation of fall velocity, data for fall velocity for each diameter are also stored.

Table 1 Relationship between the length of photographing space and the minimum and maximum diameter of the snowflakes

Data Retrieval and Display on a Graphic Terminal

Data on the characteristics of falling snowflakes are accessed in an arbitrary time period from the database.

The retrieved data are displayed on a graphical monitor (resolution, 640 horizontal pixels x 400 vertical lines). For the histogram of time series data, 480 horizontal pixels are used in this system, enabling 8 h data to be shown per line. To show a histogram which is longer than 8h, retrieved data must be averaged by suitable time intervals.

Results

Observations

Observations were carried out in Sapporo and Toyama, which are located near the northeast and middle of the Japan Sea coast respectively, from January to March, 1986-92. In general, the temperature is lower in Sapporo than in Toyama.

Number Concentration

The number concentrations in Toyama and Sapporo on 14-28 February 1992 are shown in Figure 4. The number concentration in Sapporo was higher than that in Toyama.

Fig. 4. Histograms of number concentration for A (15d) and B (8 h) in Toyama and Sapporo. Data were averaged in 15min intervals in A.

Diameter of Snowflakes

Frequency distributions of snowflakes are shown in Figure 5. Figure 6 shows the time series of the mean diameter of all observed snowflakes. The mean diameter of snowflakes was about 3.0 mm in Toyama and about 1.5 mm in Sapporo. The temperature of this period was 0.5° to 0.9°C (0.65° ± 0.13°C) in Toyama and −6.9° to −4.1°C (−5.41° + 0.89°C) in Sapporo. Differences between Toyama and Sapporo for frequency distribution and diameter were probably due to the temperature.

Fig. 5. Frequency distributions of snowflakes during 8h. A, Toyama; B, Sapporo.

Fig. 6. Time series of the mean diameter of all observed snowflakes. Arrows indicate the times when the number concentration was very large, as shown in Figure 5B.

Fall Velocity

The mean and standard deviation of fall velocity for each measured diameter were retrieved from the database. Since these data were stored beforehand, the calculation time was reduced. Figure 7 shows fall velocity versus the diameter of the snowflakes. These data indicate that the velocity increases slowly with increasing diameter, results that agree with previous reports (Reference LanglebenLangleben, 1954; Reference Magono and Nakamura Magono and Nakamura, 1965; Reference Jiusto and BosworthJiusto and Bosworth, 1971; Reference Locatelli and HobbsLocatelli and Hobbs, 1974). Figure 8 shows the time series of mean fall velocity of all observed snowflakes. The mean fall velocity was 0.6-1.5 m s−1 in Toyama and 0.5-1.0 m s−1 in Sapporo. The mean diameter of snow-flakes in Toyama was larger than that in Sapporo (Fig. 6), and velocity increased with increasing diameter (Fig. 7). Therefore, it was reasonable to assume that the mean velocity in Toyama was greater than that in Sapporo.

Fig. 7. Fall velocity versus diameter of snowflakes.

Fig. 8. Time series of the mean fall velocity of all observed snowflakes. Arrows as in Figure 6.

From the same period, data on the number concentration (Fig. 4b), the mean diameter (Fig. 6) and the mean fall velocity (Fig. 8) allow these relationships to be examined. Generally, velocity increased with increasing diameter as mentioned above. There were some cases, however, where the velocity increased with decreasing diameter at a time when the number concentration was very large, as shown by arrows in Figures 6 and 8. When the number concentration is large, snowflake collision during fall causes large aggregates (Reference PassarelliPassarelli, 1978;Reference Kenneth and Passarelli Kenneth and Passarelli, 1982).

Falling Period

Figure 9 is the time series of the daily period of snowfall for February for three years; there are some patterns in this data. Similarly, Figure 10 shows the monthly data for February and March during the period 1986-92; it shows that there was little snowfall in 1989 and 1990. These data will be useful for long-term records of interannual time-scale phenomena in the atmosphere.

Fig. 9. Time series of the daily period of snowfall for February for three years.

Fig. 10. Monthly rate of snowfall period for 1986-92.

Conclusion

A new measuring system has been developed which can automatically and simultaneously measure the size and velocity of falling snowflakes over a long period. The images of snowflakes taken by a CCD TV camera were fed into an image-analysis board installed on a computer to extract the useful features of snowfall. In these processes, information on each image of snowflakes was selected with two parameters: width and vertical length. Long-term observations were realized by this method.

Since a lot of data were obtained, a database was made that could retrieve the characteristics of snowfall easily. In this database, retrieval time was reduced by calculating the standard deviations of fall velocities beforehand.

Using this system, relationships between the number concentration, the diameter, the fall velocity and the falling period were analyzed. It would be useful to measure other parameters of snowflakes simultaneously. For example, it becomes possible to compare the physical parameters of snowflakes at the ground and, using a radar, their structure in the cloud, with data of snow quality obtained by using a snow-weight meter.

Acknowledgements

The authors thank T. Suzuki for development of software. This research was partly supported by the Betsukawa Foundation

References

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Figure 0

Fig. 1. System configuration for measurement of snow-flakes. Snowflakes falling into the tower were illuminated by two halogen lamps and photographed ten times per min.

Figure 1

Fig. 2. Typical photograph of snowflake images. Since the shutter speed of camera was slow, images of snowflakes appeared as short streaks.

Figure 2

Fig. 3. A, binary image of snowflake consisting of pixels. Calculation is started from the topmost pixel (S) of snowflakes. The maximum dislance between the both ends in each row (XW) and maximum vertical length (YW) are computed. Size of pixels depends on the length of photographing space shown in Table 1. B, assuming that each snowflake is spherical and its diameter is (XW), snowflakes fall (YW-XW) in 1/60s.

Figure 3

Table 1 Relationship between the length of photographing space and the minimum and maximum diameter of the snowflakes

Figure 4

Fig. 4. Histograms of number concentration for A (15d) and B (8 h) in Toyama and Sapporo. Data were averaged in 15min intervals in A.

Figure 5

Fig. 5. Frequency distributions of snowflakes during 8h. A, Toyama; B, Sapporo.

Figure 6

Fig. 6. Time series of the mean diameter of all observed snowflakes. Arrows indicate the times when the number concentration was very large, as shown in Figure 5B.

Figure 7

Fig. 7. Fall velocity versus diameter of snowflakes.

Figure 8

Fig. 8. Time series of the mean fall velocity of all observed snowflakes. Arrows as in Figure 6.

Figure 9

Fig. 9. Time series of the daily period of snowfall for February for three years.

Figure 10

Fig. 10. Monthly rate of snowfall period for 1986-92.