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WATER BODIES DELINEATION AND CHANGE DETECTION USING GIS 69
Oriental Geographer
Vol. 59, No. 1 & 2, 2017
Printed in September 2018
WATER BODIES DELINEATION AND CHANGE
DETECTION USING GIS AND REMOTE SENSING WITH
MULTITEMPORAL LANDSAT IMAGERY: A CASE STUDY
OF TANGUAR HAOR
Md. Sofi Ullah*1
Abstract: Tanguar haor, the largest haor of Bangladesh, is situated in Sunamganj district
declared as an ecologically critical area in 1999. Nevertheless, the haor has been in a
critical situation, decreasing wetland biodiversity in the recent years due to decreasing
surface water in the winter seasons. This study aimed to model the spatiotemporal
changes of Tanguar haor in the period from 1989 to 2017 using multitemporal Landsat 4-
5 TM and Landsat 8-OLI images. In this context, different satellite-derived indices were
tested including Normalized Difference Water Index (NDWI), Modified NDWI
(MNDWI), Normalized Difference Moisture Index (NDMI), Water Ratio Index (WRI)
and Normalized Difference Vegetation Index (NDVI) to extract surface water, but
finally, NDWI has been applied to delineate and extract water surface of Tanguar haor.
The NDWI is calculated from the different reflectance of water in the two channels of
satellite images, channel green and channel near infrared and the equation of NDWI is
(GREEN-NIR/GREEN+NIR). Using the mentioned index the water bodies’ change was
detected. In the other hands, through change detection authority can take precautionary
measures to protect the probable vulnerability of the outcomes. Similarly, Haor authority
can take measures to protect the haor bodies that can help to protect wetland biodiversity.
The study shows that about 14 percent water surface decreased between 1989 and 1999,
11 percent decreased between 1999 and 2009, 15 percent decreased between 2009 and
2017 and total 41 percent water surface decreased between the period 1989 to 2017 in
Tanguar haor.
Keywords: Multitemporal, Spatiotemporal, GIS, Remote Sensing, Modeling, NDWI,
MNDWI, NDMI, WRI and NDVI
INTRODUCTION
Bangladesh is a country of the river, lake, wetland, haor, baor, jheel, and beel. Among the
totals the haor type wetland ecosystem in Bangladesh is 1.99 million hectares. This
accommodated about 19.37 million people (GOB, 2012). There are about 373 haors
located in the districts of Sunamganj, Habiganj, Netrakona, Kishoreganj, Sylhet,
Maulvibazar and Brahmanbaria. They cover about 859,000 hectares of land, which is
* Md. Sofi Ullah, Associate Professor, Department of Geography and Environment, University of Dhaka,
Dhaka 1000, Bangladesh
70 ORIENTAL GEOGRAPHER
around 43 percent of the total haor areas. The haors have long been lagged from the
mainstream society in respect of economic and social factors. Gradually haors areas have
shifted to other activities or havebecome illegal possession is a common scenario in
various areas. The exploitation of the haor ecosystem began due to over expanding the
agrarian settlement. Therefore, the government formulated a master plan in 2012 to
protect haor land (GOB, 2012). Total biodiversity of the haor areasis now at risk. There
has no or little bit research on haor area spatial and temporal change in the last years.
Therefore, the changes of haor land should be studied using GIS and remote sensing,
especially the Tanguar haor, which is a very important haor of Bangladesh.
AIMS AND OBJECTIVES OF THE STUDY
The study aims at extracting and delineating water bodies and estimating changes during
1989 to 2017 in the winter season using GIS and remote sensing with multi-temporal
Landsat data in the Tanguar haor of Sunamganj, Bangladesh. Different surface water
extraction techniques were examined and the most suitable technique, NDWI, was used
to detect and delineate spatiotemporal changes. The detail objectives are given below:
To detect and delineate water feature in the Tanguar haor.
To identify and detect the change of water surface in Tanguar haor.
STUDY AREA
Tanguar haor, located in the Dharmapasha and Tahirpur upazilas of Sunamganj District
in Bangladesh, is a unique wetland ecosystem which lies in the Northeastern part of the
country between 25°05
'35.41
"N to 25
°11
'46.03
"N latitude and 90
°58
'46.36
"E to
91°11
'05.53
"E longitude (Figure 1).There are two spatial boundaries of Tanguar haor, one
is assigned by the district administrator and another is assigned by the IUCN and CNRS.
In this study the boundary of district administrator has considered as a study area.
According to the Digital Elevation Model (DEM), the range of the Tanguar haor
elevation is -02 meters to 16 meters (Figure 2). The mean elevation of the Tanguar haor
is 3.96 meters. The contour information shows that there are six types of contour in the
study area respectively 0, 3, 6, 9, 12 and 15 meters. The central area of the haor is low
land and the height is gradually increasing to the northern and east-southern part of the
basin. A large area of the haor is under contour height 0 to 3 meters, those are basically
wetland. A substantial portion of the area is under contour height 3 to 6 meters and rest
tiny area, those are ordering as above 6 meters (Figure 2). Tanguar is nationally very
important due to overexploitation of its natural resources. Recently, it has come into
international focus through its ecological condition.
WATER BODIES DELINEATION AND CHANGE DETECTION USING GIS 71
Figure 1: Study Area: Tanguar Haor in Bangladesh
According to secondary information and other literature, there are total 46 villages within
the haor area. The area of Tanguar haor is almost 50 km2 of which, about 2802 hectares
are wetland. The Tanguar haor, the northeastern region of the country is characterized by
highest rainfall and relatively low temperature compared to the annual average of the
country. The average annual rainfall in the region is about 4130 mm which is almost
double of the country average. Therefore, in the rainy season the haor area covers
maximum water surface and in the winter the water surface decreases to the minimum
level. Gradually water surface is decreasing in the winter; as a result, haor biodiversity is
under serious threat. The haor has the source of earning for more than 40,000 people. The
haor basin plays an important role in the economy through its commercial and ecological
importance for its fisheries (Salauddin and Islam, 2011). In 1999, the government of
Bangladesh has declared Tanguar haor as an ecologically critical area. Later in 2000, the
haor basin was declared a Ramsar site as a wetland of international importance. Through
this declaration, the government of Bangladesh is bound to preserve its natural resources,
therefore, the government has taken several initiatives to protect this haor, and one of
them is the formulation of its master plan.
72 ORIENTAL GEOGRAPHER
Figure 2: Tanguar Haor Elevation and Contour
Source: Srtm 30m dem dataset
METHODOLOGY AND MATERIALS
Initially, the problem was understood through literature reviewing and formulated
research questions. The aim of the study is to detect and delineate water features changes
from 1989 to 2017 of the Tanguar haor. To meet the aims and objectives, the following
taskswere performed: Firstly, Landsat satellite data were collected from Landsat 4-5 TM
and Landsat 8 OLI-TIRS sensors of USGS GloVis (Figure 3). Table 1, presents the
specifications of the Landsat images.
Table 1: Specifications of Landsat 4-5 TM and Landsat 8 OLI dataset
Satellite Sensor Path/Row Year/ Date Resolution
Landsat 4-5 TM 137/43 9 March 1989 5 March 1999
28 February 2009 30M
Landsat 8 OLI-TIRS 137/43 18 February 2017
Source: GloVis-USGS
Secondly, collected data were extracted and then image layer were stacked using Erdas
Imagine 2014. Thirdly, image preprocessing function radiometric correction like haze
reduction, noise reduction and histogram equalization has been performed using Erdas
Imagine 2014.
WATER BODIES DELINEATION AND CHANGE DETECTION USING GIS 73
Figure 3: Landsat dataset of Tanguar haor in color infrared (CIR)
Source: GloVis-USGS Landsat data
Fourthly, area of interest, the collected base map of Tanguar haor according to district
administrator (study area) was extracted from the images. There are several multi-band
techniques were used in water extraction purpose, these are NDWI, MNDWI, NDMI,
NDVI, WRI, and AWEI. The Normalized Difference Water Index (NDWI) was
developed to extract water features from Landsat imagery (McFeeters, 1996). The NDWI
is expressed as follows, NDWI = Green −NIR
Green +NIR, Where Green is a green band such as TM
band 2, and NIR is a near infrared band such as TM band 4. In 2006, Xu proposed
modified NDWI through substituting MIR band for the NIR band (Xu, 2006). The
modified NDWI can be expressed as follows, MNDWI = Green −MIR
Green +MIR, where MIR is a
middle infrared band such as TM band 5. It is referred to that Gao (1996) also named an
NDWI for remote sensing but used a different band composite, NDWIGAO = NIR−MIR
NIR +MIR .
Wilson et al. (2002) proposed a Normalized Difference Moisture Index (NDMI), which
had an identical band composite with Gao’s NDWI. In addition, Normalized Difference
Vegetation Index, NDVI (Rouse, et al., 1973), Water Ratio Index, WRI = (Green +
Red)/(NIR + MIR) (Shen and Li, 2010) and Automated Water Extraction Index, AWEI =
4 x (Green - MIR) - (0.25 x NIR +2.75 x SWIR) (Feyisa et al., 2014) were used in the
surface water extraction and change detection.
74 ORIENTAL GEOGRAPHER
Finally, images were analyzed in ArcGIS Image Analysis and Erdas Imagine. In this
respect, the NDWIMcFeeter were calculated from Landsat 4-5 TM (1989, 1999, and 2009)
and Landsat 8 OLI (2017) images to delineate and extraction of surface water of Tanguar
haor. In order so, water features were extracted through using ArcGIS raster calculator
and also using Erdas Imagine model maker conditional (Figure 4). Then accuracy
assessment was performed using image and other high resolution platform.
Figure 4: Flow chart of research methodology
Results and Discussions
Different satelite-derived indices together with NDWI, NDVI, MNDWI, NDMI, WRI
and AWEI were tested to extract water surface from Landsat 4-5 TM and Landsat 8 OLI-
TIRS in the Tanguar haor for the years 1989, 1999, 2009 and 2017. The absolute errors,
overall accuracy and Kappa coefficient were examined to assess the accuracy of the
calculated results. According to different examinations the results shows that NDVI,
MNDWI, NDMI, WRI and AWEI were inapplicable to surface water delineatein the
Taguar haor because of omission/commission of water pixels around the Haor areas.
WATER BODIES DELINEATION AND CHANGE DETECTION USING GIS 75
The examinations show that onlyNDWIMcFeeter has provided highest accuracy to delineate
surface water in the Tanguar haor, therefore, accuracy to delineate surface water in the
Tanguar haor, therefore, NDWIMcFeeteris used to calculate and model the spatiotemporal
changes of surface water in the haor area.
At present NDWI is widely used to delineate water surface and spectral change of water.
The results of NDWI are shown in the table 2 and figure 5. The NDWIMcFeeter reflectance
result is ±1, which has been counted as pixel. Like NDVI, the negative values of
NDWIMcFeetershows up water reflectance.The land-water threshold has been identified
through using NDWI and CIR (Color Infrared) images in Erdas Imagine Link Views with
Inquire tool.Then the haor surface area was extracted through the classification of NDWI
images using image specific thresholds in Erdas Imagine model maker in each year.
According to classification the land-water threshold was-0.19 in 1989, -0.07 in 1999, -
0.19 in 2009 and -0.04 in 2017 (table 2). According to NDWI images there are areal
decrease of water surface in the Tanguar haor as well as there is a significant change in
the depth of watersurface (Figure 5).
Figure 5: NDWI Classified image of the area from 1989 to 2017
Source: Satellite image
76 ORIENTAL GEOGRAPHER
The reflectance of water and land histogram has been shown in figure 6 and table 2,
which gives directions that water surface in the area is decreasing as linear rate, 𝑅2 =0.997 and land area is increasing as a linear rate𝑅2 = 0.977. To ensure overall accuracy
of the analysis results the accuracy assessment analyses are shown in table 3.
Table 2: Evaluation of surface water using satellite-derived NDWI index
Year
Land-water
threshold
Histogram count Surafce
water
(in hectares)
Land
area
(in hectares) Water Land
1989 -0.19 20892 33821 1880.28 3043.89
1999 -0.07 17954 36753 1615.86 3307.77
2009 -0.19 15545 39168 1399.05 3525.12
2017 -0.04 12318 42395 1108.62 3815.55 Source: Satellite image analysis
Figure 6: Land and water surface trend in different year
Source: NDWI analysis result
ACCURACY ASSESSMENT
According to the analysis in 1989, there was 0.67 percent absolute error, which was 32.83
hectare of the haor area at 99.33 percent accuracy level with a Kappa coefficient of0.99
(table 3). While in 1999, there was 0.33 percent absolute error, which was 16.41 hectare
of the haor area at 99.67 percent accuracy level with a Kappa coefficient0.99. In 2009,
the absolute error was1.00 percent, which was 49.24 hectare of the haor area at 99
percent accuracy level with a Kappa coefficient 0.98. Finally, in 2017, there was 1.33
R² = 0.997
R² = 0.997
0
500
1000
1500
2000
2500
3000
3500
4000
4500
1989 1999 2009 2017
Are
a in
Hec
tare
s
Year
Area in Hectares
Water surface area
Land surface area
Surface water trend
Land surface trend
WATER BODIES DELINEATION AND CHANGE DETECTION USING GIS 77
percent absolute error, which was 65.66 hectare of haor area at 98.67 percent accuracy
level with a Kappa coefficient 0.97 (table 3). The accuracy assessment analyses show that
the NDWIMcFeeter method is applicable in delineating surface water and also change
detection in the Tanguar haor.
Table 3: Accuracy assessment analysis of NDWImethod
Year Absolute
Errors (%)
Absolute Errors
(in Hectares)
Overall
Accuracy (%)
Kappa
Coefficient
1989 0.67 32.83 99.33 0.99
1999 0.33 16.41 99.67 0.99
2009 1.00 49.24 99.00 0.98
2017 1.33 65.66 98.67 0.97 Source: Satellite image and Google Earth Pro
Figure 7:Delineation of surface water and land in the Tanguar haor during 1989-2017
Source: Landsat image analysis result
78 ORIENTAL GEOGRAPHER
Delineation of Surface Water in the Tanguar Haor between 1989 and 2017
The spatial pattern of water surface change in Tanguar haor for the year 1989, 1999, 2009
and 2017 is shown in figure 7. It is revealed that in 1989, the haor area dominated by
water body, but in 1999, the northern and the south-eastern part of the haor have lost it
surface water. Similarly, in 2009, the Tanguar haor continuously loses its surface water at
the same direction, but the central and the north-western part covered water surface.
Finally, in 2017, the haor has lost its maximum water surface, which was at north-
western part and from the central part of the haor area (Figure 7). The statistical results of
the NDWI index are shown in table 4. According to the table 4, it is revealed that the haor
water surface area was about 1880 hectares in 1989, 1615 hectares in 1999, 1399 hectares
in 2009 and 1108 hectares in 2017 (table 4, Figure 7). The results further show that haor
water surface area changes about 264 hectares (14 percent) between the year 1989 and
1999. Similarly, haor water surface area changes about 216 hectares (11.53 percent)
between 1999 and 2009. Between 2009 and 2017 the haor water surface area changes
about 290 hectares (15.45 percent). Finally, about 771 hectares (41 percent) water surface
of Tanguar haor has been changed between 1989 and 2017 (Figure 7).
Table 4: Variation in areal extent of the water surface area of Tanguar haor in the
period of 1989-2017 Year Haor water surface area
( in hectares)
Haor water surface area decrease (in hectares)
1989-1999 1999-2009 2009-2017 1989-2017
1989 1880.28
-264.42
1999 1615.86
-216.81
-771.66
2009 1399.05
-290.43
2017 1108.62
Source: Lantsat satellite image analysis
Water Surface Area Changing Model in the Tanguar Haor between 1989 and 2017
The statistical results of the analysis show that in the period of 1989 to 1999 the water
surface of the haor area has been increased 159 hectares and decreased 423 hectares and
about 1444 hectares area has remained as common (Figure 8 and table 5). In this period,
the edges of the water surface have been changed by filling,perhaps it occurred from the
upstream sedimentation and the changing direction in the north-eastern to the south-
western.On the other hand, between 1999 and 2009 the water surface of the haor area has
been increased about 242 hectares and decreased about 458 hectares and has remained
common about 1144 hectares. The trend is more or less common during 1999-2009.
Subsequently, during 2009-2017 the haor surface water has been decreased to 587
hectares and increased about 297 hectares and about 800 hectares has remained common
in this period. In this time, haor bordering water surface especially the north-eastern part
and the north-western part has totally been decreased as a continuation of the previous
WATER BODIES DELINEATION AND CHANGE DETECTION USING GIS 79
year's consequence. Finally, between 1989 and 2017 there has been about 177 hectares
water surface area increased and 949 hectares water surface area decreased and has
remained common area about 918 hectares (Table 5). The model shows that the common
water surface area has always been declining during 1989-2017. The trend of common
water surface (fixed) area is decreasing, as a linear rate of 𝑅2 = −0.998. On the other
hand, the water surface decreasing trend is upward as a linear rate of 𝑅2 = 0.902 (Figure
9). According to the analysis, it is very much clear that the haor area water surface is
gradually decreasing, which is alarming for the ecologically critical area, Tanguar haor.
Figure 8: Changing pattern of water surface in Tanguar haor during 1989-2017
Source: Landsat image analysis
Table 5: Model statistics of Tanguar Haor water surface area changing
Time Duration Water surface area increase (in hectares)
Water surface
area decrease (in hectares)
Net decrease of water surface area (in hectares)
Common water surface area (in hectares)
1989 to 1999 159.07 423.49 264.42 1444.81
1999 to 2009 242.14 458.95 216.81 1144.41
2009 to 2017 297.19 587.62 290.43 800.68
1989 to 2017 177.96 949.62 771.66 918.68
Correlation coefficient (R2 = 0.902) (R2 = -0.998)
Source: Change detection from image analysis
80 ORIENTAL GEOGRAPHER
Figure 9: Increasing and decreasing trends of water surface in Tanguar haor during 1989-2017
Source: Process data of satellite image
CONCLUSIONS
The study aimed at modeling the spatio-temporal changes of Tanguar haor water surface
in the winter between 1989 and 2017. The aim has been fulfiled using NDWI. The results
reveal that there is a sharp declining trend of the surface water in the Tanguar haor and 41
percent of water surface area has declined between 1989 and 2017. If this trend
continues, it is likely that Tanguar haor will have no water in the winter in the near
future. It is very critical because the haor provides an important role in fish production as
it functions as a 'mother fishery' for the country. Every winter the haor is home to about
200 types of migratory birds, which will be at risk. Society at large and the population
living in the surrounding in particular will be in trouble for its declining trend. Therefore,
appropriate measures need to be taken by the policy makers to protect Tangura haor
water surface to protect biodiversity of the haor area. The outcomes of community-
based sustainable management of Tanguar haor should go in favour of haor natural cover,
especially water surface. Otherwise, the life of the haor, freshwater will be exhausted and
Tanguar will lose its international significance as a freshwater habitat. Besides, regular
monitoring of surface water must be arranged institutionally.
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