Monitoring of Temporal Variation of Snow Depth Using Remote Sensing in Western Himalaya

DOI : 10.17577/IJERTV3IS070770

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Monitoring of Temporal Variation of Snow Depth Using Remote Sensing in Western Himalaya

Ruby Nanchahal*, H. S. Gusain**, Darshan Singh Sidhu* and V. D. Mishra**

*PTU GZS Campus Bathinda, Punjab, 151 001, India

**Snow and Avalanche Study Establishment, Defence Research and Development Organization, Chandigarh, 160 036, India

Abstract: Snow cover monitoring is an important parameter for various hydrological, climatological and snow hazard applications. Snow Depth is a vital parameter in assessment of snow melt run-off, snow avalanche forecasting, estimation of water equivalent and many other hydrological applications. In this paper snow depth has been estimated at spatial level using the model developed by Snow and Avalanche Study Establishment and temporal variation has been presented for the winter season 2013-14. The snow depth model has been applied for the Western Himalayan region of Jammu and Kashmir. The mean spatial snow depth increases from November onwards and maximum snow depth appears in the month of March and thereafter, snow depth decreases and observed lowest during the month of June. Spatial snow depth maps have been validated for the winter season and error of 10-30% with recorded data has been observed. These spatial snow depth maps have many applications in hydrology and avalanche forecasting in Western Himalaya.

Keywords: Digital Elevation Model, Advanced Wide Field Sensor-II (AWiFS-II), Normalised Difference Snow Index (NDSI), Moderate Imaging Spectroradiometer (MODIS).

I INTRODUCTION

Large part of Western Himalaya is seasonally covered with snow. The study of various snow properties at remote areas is an important parameter for the forecasting of avalanches, for hydrological projects and climatological studies. So the monitoring and analysis of snow cover is a crucial factor in cryospheric regions. Snow depth is required for the assessment of snow melt run off, avalanche forecasting and snow water equivalent. In Western Himalaya this parameter is recorded at very sparse point and Snow and Avalanche Study Establishment (SASE) has some manual as well as automatic observation locations where snow depth has been recorded. In this paper we have generated spatial maps of snow depth using the model developed by SASE [1]. These maps have been analysed for the study of temporal variation of snow depth during the season 2013- 14 and results have been presented in this paper.

II STUDY AREA AND DATA

Indian Himalaya stretches about 2500 km from east to west

[2] and passes through the border of the nations Pakistan, Afghanistan, China, Bhutan and Nepal. The Himalayan ranges are many parallel ranges often referred to as the Pir Panjal, Greater Himalayas, Zanskar, Ladhakh and Karakoram [3, 4]. Study area of the present study comprises of Pir Panjal and Great Himalayan ranges of Jammu and Kashmir state of India. These ranges are vulnerable for snow avalanches and many human fatalities have been reported in past in these ranges.

Snow and Avalanche Study Establishment (SASE) have its own snow-meteorological observatories in Western Himalaya and network of observation locations are shown in Figure 1. Snow meteorological data at these observatories have been collected at 0830 hours morning and 0530 hours evening of Indian Standard Time. Snow depth data from these observatories has been used to generate spatial snow depth maps with the help of remote sensing data and digital elevation model. Remote sensing images of the Advanced Wide Field Sensor-II (AWiFS-II), Moderate Resolution Imaging Spectroradiometer (MODIS) and Advanced Very High Resolution Radiometer (AVHRR) have been used to generate snow cover images of the study area. Almost cloud free multi-temporal satellite images of AWiFS-II, MODIS and AVHRR have been used for the winter season of 2013-2014.

Figure 1: Data observation locations in Western Himalaya

The salient characteristics of AWiFS-II [5],

MODIS [6, 7] and AVHRR [8, 9] sensors are shown in Table1, Table2 and Table3 respectively.

Table 1: Specification of AWiFS-II sensor

Spectral bands

Spectral wavelength

(nm)

Spatial Resolution

(m)

Quantization (bit)

B2

520-590

56

12

B3

620-680

56

12

B4

770-860

56

12

B5

1550-1700

56

12

Table 2: Specification of MODIS sensor

Spectral bands

Electromagn etic Region

Spatial Resolution

(m)

Quantization (bit)

1-2

NIR, VIS

250

12

3-7

VIS, SWIR

500

12

8-36

VIS, NIR,

SWIR,TIR

1000

12

Table 3: Specification of AVHRR sensor

Spectral bands

Spectral

wavelength (nm)

Spatial

Resolution (m)

Quantization (bit)

1

0.58-0.68

1090

10

2

0.725-1.00

1090

10

3A

1.58-1.64

1090

10

3B

3.55-3.93

1090

10

4

10.30-11.30

1090

10

5

11.50-12.50

1090

10

Shuttle Radar Topographic Mission (SRTM) DEM [10] of spatial resolution 90 m has been used in the study. This DEM has been downloaded from internet (http://srtm.usgs.gov). Snow depth data has also been recorded in Western Himalaya using automatic weather station network of SASE and has been used for validation of spatial snow depth maps during the season.

III METHODOLOGY

In-situ recorded snow depth data at few locations have been used to generate the spatial maps of snow depth in the study area. The model developed by SASE has been used to generate the snow depth maps. Input data sheet for the

model has been prepared in excel sheet in .xls format and the input parameters are snow depth at observation locations and elevation values of the observation locations. Model first generates a base snow equation based on elevation and snow depth values. This base snow equation is applied on each pixel of the digital elevation model to get the initial snow depth values. Then compensation factor is applied at each pixel for the adjustment of snow depth according to variation in local region of the study area [1]. Satellite images mentioned in the section study area and data have been used to generate snow cover area in the study area. Using these snow cover maps the snow area in the study region has been masked and snow depth maps has been generated.

A. Generation of Snow Cover Area Using Remote Sensing Images

Remote sensing data cannot be used directly because of the presence of distortions in the raw image. So it becomes necessary to correct the raw images received from the sensors for atmospheric and geometric corrections. The process of assigning map coordinates to image data is known as geometriccorrections. The geometric corrections have been done using master image of AWiFS in ERDAS IMAGINE 9.3.

Radiometric corrections have been done for the path radiance using dark object subtraction (DOS) method. Each image received from the sensor is in the form of pixels, which are described by a meaningful digital number (DN). DN reflects the amount of radiations reflected by the earths surface that are measured by the sensor. These DN values have been converted to radiance values. Spectral Radiance in mW/cm2/sr/µm is estimated using the following equation

L= (DN) (L max-L min) / DNmax + L min –(1)

Where L= spectral radiance at the sensors aperture, DN= input digital number image,

DN max = maximum digital number, L max = maximum radiance value, L min= minimum radiance value.

For MODIS image spectral radiance has been estimated using radiance scale and offset values.

The estimated values of spectral radiance at each pixel were corrected using combination of dark object subtraction (DOS1 and DOS3) model for atmospheric correction and given in detail in [11]. After estimating radiance, reflectance has been estimated by the equation given as following [12],

R = (L-Lp).d2 / (tvtzE0 cosz ) ——– (2)

Where, v and are the transmittances of the atmosphere in the viewing and illumination directions respectively, R is the reflectance of a pixel in a particular band, (L L p) is the corrected spectral radiances, Lp is the path radiance, d is the EarthSun distance in astronomical units (AUs), E0 is the mean solar exo-atmospheric spectral irradiance and z is the solar zenith angle calculated for each pixel of the study area [13].

Estimated reflectance values in different bands of the image have been used in estimation of NDSI (Normalized Difference Snow Index). NDSI is an important parameter for the monitoring of snow covered area. NDSI is defined as the ratio of difference of two bands, one in visible and one in the short wave infrared parts of the spectrum and useful to map snow [14, 15]. NDSI is estimated for each image as following,

NDSI = (RGREEN – RSWIR) / (RGREEN + RSWIR) ————–

———————— (3)

Where, RGreen is the reflectance of Green Band and RSWIR is the reflectance of Short Wave Infra-Red Band.

The snow cover area in the image has been selected and no-snow covered area has been masked using the criteria of NDSI >= 0.4 and reflectance in NIR >11 [16, 15]. This criteria has been applied in the ERDAS Imagine modeler to generate images of snow cover only. For generated snow cover area the snow depth maps has been developed using SASE model [1]. Snow depth maps have been generated for more than 10 days of the season 2013-

14 and temporal variation in snow depth has been monitored and analysed in the study area.

IV RESULTS AND DISCUSSION

Figure 2 shows the spatial snow depth map in the Pir Panjal and Great Himalaya ranges of Jammu and Kashmir for 27- January-2014. Area with gray colour shows the no-snow region in the study area and regions with altitude below 1800 m are generally free from snow on 27-January-2014. Red colour shows snow depth up to 50 cm, Green colour shows snow depth from 50 to 75 cm, Blue colour shows snow depth from 75 to 100 cm and yellow colour shows snow depth above 100 cm in the study area. Similar snow depth maps have been generated for other days of the season 2013-14 and given in Table 4. Average snow depth values of the spatial snow depth maps for different days are also given in the Table 4. It has been observed that snow depth builds up from average snow depth of 3 cm on 18- November-2013 to maximum of 196 cm on

Figure 2: Spatial snow depth map for 27-January-2014 in the study area

Table 4: Temporal variation of average snow depth in the study area

DATE

Average Snow Depth

(cm)

18-11-2013

3

12-12-2013

2.9

19-01-2014

48

21-01-2014

42

26-01-2014

73

27-01-2014

67

28-01-2014

65

31-01-2014

55

12-02-2014

120

13-02-2014

119.6

20-02-2014

106

24-02-2014

120

26-02-2014

114

06-03-2014

124

17-03-2014

196

31-03-2014

189

01-04-2014

188

09-04-2014

185

20-04-2014

134

24-04-2014

124

29-04-2014

104

02-05-2014

76

09-05-2014

46

16-05-2014

38

17-March-2014. After that snow depth start depleting in the region and on 16-May-2014 the mean snow depth has been observed 38cm. Snow depth increases from November onwards in the Western Himalayan region due to wide spread snowfall from western disturbances. The frequency

of western disturbances increased from November to March and so snow depth also increases in the region. March onwards due to rise in temperature, snow depth start melting and so snow depth depleted. Figure 3 shows the temporal variation in average snow depth during days of the winter season 2013-14.

Figure 3: Temporal variation of average snow depth in the study area during winter season 2013-14

The spatial snow depth maps thus produced have also been validated at few locations in the study region and error of the order of 10-30% has been observed during different days.

V CONCLUSION

In this paper temporal variation in spatial snow depth maps have been observed in the Western Himalayan region. The spatial snow depth maps have been generated from point snow depth data of few locations using remote sensing images. For the winter season 2013-14 maximum snow depth has been observed for the month of March. Snow depth starts building up from November onwards due to snow fall from western disturbances and snow depth increases in subsequent months as frequency of snowfall increases. March onwards snow cover starts depleting due to rise in temperature and snow depth decreases in the region. These spatial snow depth maps may be of immense importance in the applications of hydrology and glaciology in the Western Himalaya.

ACKNOWLEDGEMENT

Authors are thankful to Shri Ashwagosha Ganju, Director SASE for all kind of support and encouragement. Authors acknowledge the SASE data center for data support. Department of ECE, PTU GZS Campus Bathinda is acknowledged for assistance in M.Tech project at SASE Chandigarh.

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