dc.description.abstract |
Water is a valuable and limited resource that needs to be managed properly. The amount of surface
water changes over time due to a variety of reasons including rainfall, temperature, wind patterns
and agricultural usage. Large scale surface water level monitoring is one of the most labourintensive tasks in managing water resources. Satellite based remote sensing is a commonly used
technique in such scenarios, where earth orbiting satellites are used to monitor the changes on the
earth's surface using different types of sensors. A large amount of remote sensed data sets has
been made available by different agencies. However, analysis of such data sets requires
specialized computing systems with large storage, memory and processing power. With the public
release of Landsat data in 2008, Google archived all the data sets and linked them to a cloud
computing engine named, Google Earth Engine (GEE) providing a free and open source platform
which handles all low-level data handling, allowing users to manipulate the data set at a much
higher level. In the present study, GEE was used to evaluate the feasibility of surface water
monitoring in water tanks located in the dry zone of Sri Lanka from January 2017 to December
2019. Sentinel-1 (S1), Synthetic-Aperture Radar (SAR) data and Sentinel-2 (S2) Multi-spectral
Instruments were used to identify the surface water body coverage area. Normalized water index
(NDWI) was calculated based on the B3 and B8 bands of S2 images. Due to significant local
cloud coverage within the region of interest, most of the available data points had to be discarded.
It was noted that NDWI based water level estimation was not suitable for analyzing temporal
dynamics. S1-SAR Ground Range Detected (GRD) data was processed by segmenting the area
using a K-means clustering algorithm. Image dilation and erosion operations were used to reduce
the effect of speckle noise. The water level was estimated for the considered time period based
on individually segmented images. Ground data was obtained, which corresponds to the satellite
passes that were published online by the Department of Irrigation, Sri Lanka. The estimated water
surface area for Kaudulla, Senanayaka Samudraya and Lunugamwehera tanks showed a good
linear relationship against the reported water volume with coefficient of determinants of 0.73,
0.94 and 0.67 respectively. SAR-GRD measures backscatter and it depends on the surface
flatness. Therefore, water quality or cloud cover has no effect on the detected water surface area
estimation. Hence, SAR-GRD image-based classification is better suited to detect short time scale
changes in water level in selected tanks even under uncooperative weather. |
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