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International Journal of Technical Research and Applications e-ISSN: 2320-8163,
www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72
67 | P a g e
MODELLING THE IMPACT OF FLOODING USING
GEOGRAPHIC INFORMATION SYSTEM AND
REMOTE SENSING
Ejikeme, J.O1; Igbokwe, J.I1; Ojiako, J.C1; Emengini, E.J1 and Aweh, D.S2
1
Department of Surveying and Geoinformatics, Nnamdi Azikiwe University, P.M.B 5025, Awka, Anambra State, Nigeria
2
Department of Surveying and Geoinformatics, Auchi Polytechnic, Auchi, Edo State, Nigeria
Email:ejikemejoseph2@yahoo.com
Abstract- Flooding is one of the most devastating natural
disasters in Nigeria. The impact of flooding on human activities
cannot be overemphasized. It can threaten human lives, their
property, environment and the economy. Different techniques
exist to manage and analyze the impact of flooding. Some of these
techniques have not been effective in management of flood
disaster. Remote sensing technique presents itself as an effective
and efficient means of managing flood disaster. In this study,
SPOT-10 image was used to perform land cover/ land use
classification of the study area. Advanced Space borne Thermal
Emission and Reflection Radiometer (ASTER) image of 2010 was
used to generate the Digital Elevation Model (DEM). The image
focal statistics were generated using the Spatial Analyst/
Neighborhood/Focal Statistics Tool in ArcMap. The contour map
was produced using the Spatial Analyst/ Surface/ Contour Tools.
The DEM generated from the focal statistics was reclassified into
different risk levels based on variation of elevation values. The
depression in the DEM was filled and used to create the flow
direction map. The flow accumulation map was produced using
the flow direction data as input image. The stream network and
watershed were equally generated and the stream vectorized. The
reclassified DEM, stream network and vectorized land cover
classes were integrated and used to analyze the impact of flood on
the classes. The result shows that 27.86% of the area studied will
be affected at very high risk flood level, 35.63% at high risk,
17.90% at moderate risk, 10.72% at low risk, and 7.89% at no
risk flood level. Built up area class will be mostly affected at very
high risk flood level while farmland will be affected at high risk
flood level. Oshoro, Imhekpeme, and Weppa communities will be
affected at very high risk flood inundation while Ivighe, Uneme,
Igoide and Iviari communities will be at risk at high risk flood
inundation level. It is recommended among others that buildings
that fall within the “Very High Risk” area should be identified
and occupants possibly relocated to other areas such as the “No
Risk” area.
Keyword- Flooding, Remote sensing, GIS, Risk
I. INTRODUCTION
Over the past decades, the pattern of floods across all
continents has been changing, becoming more frequent,
intense and unpredictable for local communities, particularly
as issues of development and poverty have led more people to
live in areas vulnerable to flooding [1]. Flood by nature are
complex events caused by a range of human vulnerabilities,
inappropriate development planning and climate variability
[2]. A UN HABITAT Report in 2010 predicted that “more
than 25% of Africa’s population living within 100km from the
coast will be at risk from sea level rise and coastal flooding
within the next decade 2010-2020” and recommended
immediate adoption of mitigation measures to reduce
vulnerability [3]. It has been reported that developing
countries like Nigeria will be more vulnerable to climate
change due to its economic, climatic and geographic setting
[4].
In 2012, Nigeria witnessed the most devastating effect of
flooding. The flood event affected about 13 States: Niger,
Benue, Edo, Kogi, Anambra, Ebonyi, Ondo, Imo, Bayelsa,
Delta, Rivers, Adamawa etc. The flooding was triggered by
intentional opening of the Lagdo Dam in Cameroon to release
excess rain water caused by climate change from the Dam.
This action caused huge socio-economic loss to Nigeria
especially residents of Edo State.
Several techniques have been used to map flood hazard
and risks. The conventional technique is mostly through the
use of information on historical floods, soil maps, aerial
photographs, hydrological modeling of the major rivers, use of
National Digital Terrain Model (DTM) and water levels [5].
These techniques have not been able to provide sufficient
information needed for management of flood disasters.
There is therefore need to develop a more effective and
efficient approach of monitoring, mapping and modeling of
flood risk and hazards. Remote sensing and GIS provides a
useful means of modeling flood disaster. It provides a rapid
response data source for mapping of flood disaster. GIS is a
powerful tool that enables the integration of spatial data such
as land use and land cover, topography, soil, hydrography,
geology, utility e.t.c on a common platform. GIS also enables
photographs of flood disaster areas to be hyperlinked with
spatial database for a more visual understanding and
documentation of the disaster area. This potential of GIS,
when combined with Remote sensing satellite image provides
a very flexible platform for modeling and analysis of any
environmental phenomenon and for providing sustainable and
profitable solutions to environmental management.
This research seeks to model and analyze the risk and
impact of flooding using GIS and satellite remote sensing
images.
A. The Study Area
The area selected for this study is located in Edo state,
South-south Nigeria. The geographic location is
approximately between latitudes 6o
34’N and 6o
43’N and
longitudes 7o
04’E and 7o
13’E (see fig. 1). Early rainfall occurs
usually in January/February with full commencement of rainy
season in March and stopping in November of each year. The
dry season commences from November and ends in February.
Edo state has 8.01% of its terrain covered by upland; 85.74%
lowlands and 6.25% as wetlands [2].
International Journal of Technical Research and Applications e-ISSN: 2320-8163,
www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72
68 | P a g e
Fig. 1a: Map of Africa Showing Nigeria; Fig1b: Map of Nigeria Showing Edo State and Fig.1c: Image window of the Study
Area.
1a
1b
1c
International Journal of Technical Research and Applications e-ISSN: 2320-8163,
www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72
69 | P a g e
II. MATERIALS AND METHODS
The method employed for the study is illustrated in figure 2.
Fig. 2: Work Flow Diagram of the Methodology adopted
The SPOT-10 image which was in geographic coordinate
system was exported to ERDAS Imagine 9.2 software. The
image which has been processed was checked for line dropout,
line banding effect and noise to ensure its usage.
A pre- classification visits to the site was carried out and the
following classes were adopted; Water body, Farmland, Built-
up Area, Vegetation, Wetland and Open space. To begin the
classification proper in ERDAS Imagine, sample set was
selected using the Area of Interest (AOI) tool. The signature
editor table was opened to add the AOI as a signature. Name
and colour were assigned to the AOI class. Feature space layer
was created from the signature editor menu bar. Other AOI
classes were created and added as signatures. The feature
space was masked to image space. Supervised classification
method was used to classify the image. The feature space and
maximum likelihood were selected as the non-parametric rule
and parametric rule respectively.
The classified image was exported to ArcGIS 10 software.
The accuracy of the classified image was checked by plotting
the coordinates of the remaining ground truth data not used in
the classification process into the classified image. The result
International Journal of Technical Research and Applications e-ISSN: 2320-8163,
www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72
70 | P a g e
shows a high correlation and the classes vectorized into
polygons.
The ASTER image was exported to ArcGIS 10 environment
and the depression in the sink filled. The image focal statistics
were generated using the Spatial Analyst/ Neighborhood/Focal
Statistics Tool in ArcMap. The contour map was produced
using the Spatial Analyst/ Surface/ Contour Tools. The DEM
generated from the focal statistics was reclassified into
different risk levels based on variation of elevation values.
The depression in the DEM was filled and used to create the
flow direction map. The flow accumulation map was produced
using the flow direction data as input image. The stream
network and catchment area were delineated.
The reclassified DEM, stream network and vectorized land
cover classes were integrated and used to analyze the impact
of flood on the classes.
A. Discussions of results
The classified map was exported to ArcGIS 10 where
they were vectorized as polygon. The vectorized feature
classes of the study area is shown in figure 3.0
Fig. 3.0: Vectorized feature classes of the study area.
The result shows that most of the study area is occupied by
farmland; followed by built-up area. The built up area
comprises of buildings and road networks. A high
concentration of human activities is represented by built-up
areas class in the study area. The implication of this is that if
more runoff is generated than the drainage or river channel
can accommodate as a result of increased paved surfaces, the
water will overtop the drainage channel or river and flows into
buildings or floodplain.
The DEM of the study area was reclassified and the result is
shown in fig. 3.1
Fig. 3.1: Reclassified DEM of the study area.
The result shows that topography of the area reclassified as
‘very high risk’ falls mostly on the right hand side of the map
and the risk level decreases as we move towards the left hand
side of the study area.
The result shows that topography of the area reclassified as
‘very high risk’ falls mostly on the right hand side of the map
and the risk level decreases as we move towards the left hand
side of the study area.
The DEM was used to generate the flow direction map. The
flow accumulation map derived from the flow direction data is
shown in fig. 3.2
Fig. 3.2: Flow accumulation map of the study area.
Cells having flow accumulation values of zero generally
correspond to areas with high elevation values whereas cells
with high flow accumulation values shown white in the map
correspond to stream courses. The stream courses were
extracted from the flow accumulation data and the result is
shown in figure 3.3
International Journal of Technical Research and Applications e-ISSN: 2320-8163,
www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72
71 | P a g e
Fig. 3.3: Stream courses within the Study Area
To further appreciate the effectiveness of GIS and remote
sensing, the DEM was converted to point feature and the
coordinates of the point files generated. The generated
coordinates was exported to Surfer 8 software and used to
generate the 3D surface model and flow direction map of the
study area. This is shown in fig. 3.4 and 3.5 respectively.
Fig. 3.4: 3D Surface Model of the Study Area
Fig. 3.5: Flow Direction Map of the Study Area
Table 1.0 shows the different risk levels derived from the
DEM and their percentage of coverage.
Table 1.0: Flood Risk Level and percentage coverage of
the study area.
S/No Risk Area
(Km2
)
% of the
Area
1 Very High Risk 91118 27.86
2 High Risk 116531 35.63
3 Moderate Risk 58539 17.90
4 Low Risk 35078 10.72
5 No Risk 25837 7.89
Total 327103 100
The reclassified DEM was vectorized into polygon. The
different flood risk levels were integrated with the land cover
classes through the intersect tool of the overlay analysis. The
essence of this analysis was to know the land cover types that
will be affected at different level of flood risk. For example,
fig. 3.6 and 3.7 shows the result of intersect analysis between
“Very High Risk” and “Built_Up_Area” and “High Risk” and
“Farmland” respectively.
Fig. 3.6: Overlay analysis of “Very High Risk” flood level
and “Built_Up_Area” land cover class
Fig. 3.7: Overlay analysis of “High Risk” flood level and
“Farmland” land cover class.
International Journal of Technical Research and Applications e-ISSN: 2320-8163,
www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72
72 | P a g e
III. CONCLUSION
Satellite images have shown the capabilities to extract
relevant information needed to model and manage the impact
of flood. ASTER image was used to extract the elevation
information while SPOT-10 image was used to generate the
land use/ land cover classes. The derived data were integrated
through series of analysis in order to determine the land cover
classes that will be at risk at varied degree of flood level.
The result revealed the various land cover classes that will be
at risk at various categories of flood level. Oshoro,
Imhekpeme and Weppa communities will be at risk at very
high risk flood inundation while Ivighe, Uneme, Igoide and
Iviari will be at risk at high risk flood inundation. Also, the
stream network generated shows the location of the stream
channels and the classes that may be affected as a result of
overflow of water at the stream channels.
IV. RECOMMENDATIONS
Based on the results and analysis obtained, the following
recommendations were made:
i. It is recommended that occupiers of buildings that
fall within the very high risk flood inundation areas
should be identified and possibly relocates the
occupants to a higher ground elevation to avoid
severe flood disaster.
ii. Presence of high concentration of stream channel in
the area makes the area suitable for rice farming and
other irrigation farming.
iii. Further research should be carried out in this area
using radar satellite and very high resolution
imagery such as Terra-SAR and Quickbird image
respectively.
REFERENCES
[1]. Alam, K; Herson, M and Donnel, I (2008). Flood Disasters:
Learning from previous Relief and Recovery Operations.
Prevention Consortium and ALNAP. Pp.3
[2]. Fabiyi, O.O., Adagbasa, G.E., Efosa, O and Enaruvbe, G.O
(2012). Flood Risk and Vulnerability Analysis in Ibadan
and Environs. In: B, Ayeni and O, Fabiyi (Eds): Geospatial
Technologies & Digital Cartography for National Security,
Tourism and Disaster Management. Proceedings of joint
Conference of Geoinformation Society of Nigeria &
Nigerian Cartographic Association.
[3]. Nwilo. P.C (2012). Survey Practice in the Nigerian
Contemporary Society. Paper Presented on the Occasion of
the Opening and Dedication of ‘Surveyors House’ of
Nigerian Institution of Surveyors (NIS), Enugu State
Branch.
[4]. IPCC (Intergovernmental Panel on Climate Change)
(2007). Climate Change 2007: Impacts, Adaptation and
Vulnerability Contribution of Working Group II to the
Third Assessment Report of the Intergovernmental Panel
on Climate Change. Edited by M.L Parry et al, Cambridge
Univ. Press, Cambridge, UK.
[5]. Ojigi, L.M and Shaba, H.A (2012). Integration of Synthetic
Aperture Radar (SAR) Imagery and Digital Terrain Model
for Determining Flood Water Threshold in Sokoto and
Environs, Nigeria (2012). In: B, Ayeni and O, Fabiyi (Eds):
Geospatial Technologies & Digital Cartography for
National Security, Tourism and Disaster Management.
Proceedings of joint Conference of Geoinformation Society
of Nigeria & Nigerian Cartographic Association.

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MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMOTE SENSING

  • 1. International Journal of Technical Research and Applications e-ISSN: 2320-8163, www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72 67 | P a g e MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMOTE SENSING Ejikeme, J.O1; Igbokwe, J.I1; Ojiako, J.C1; Emengini, E.J1 and Aweh, D.S2 1 Department of Surveying and Geoinformatics, Nnamdi Azikiwe University, P.M.B 5025, Awka, Anambra State, Nigeria 2 Department of Surveying and Geoinformatics, Auchi Polytechnic, Auchi, Edo State, Nigeria Email:ejikemejoseph2@yahoo.com Abstract- Flooding is one of the most devastating natural disasters in Nigeria. The impact of flooding on human activities cannot be overemphasized. It can threaten human lives, their property, environment and the economy. Different techniques exist to manage and analyze the impact of flooding. Some of these techniques have not been effective in management of flood disaster. Remote sensing technique presents itself as an effective and efficient means of managing flood disaster. In this study, SPOT-10 image was used to perform land cover/ land use classification of the study area. Advanced Space borne Thermal Emission and Reflection Radiometer (ASTER) image of 2010 was used to generate the Digital Elevation Model (DEM). The image focal statistics were generated using the Spatial Analyst/ Neighborhood/Focal Statistics Tool in ArcMap. The contour map was produced using the Spatial Analyst/ Surface/ Contour Tools. The DEM generated from the focal statistics was reclassified into different risk levels based on variation of elevation values. The depression in the DEM was filled and used to create the flow direction map. The flow accumulation map was produced using the flow direction data as input image. The stream network and watershed were equally generated and the stream vectorized. The reclassified DEM, stream network and vectorized land cover classes were integrated and used to analyze the impact of flood on the classes. The result shows that 27.86% of the area studied will be affected at very high risk flood level, 35.63% at high risk, 17.90% at moderate risk, 10.72% at low risk, and 7.89% at no risk flood level. Built up area class will be mostly affected at very high risk flood level while farmland will be affected at high risk flood level. Oshoro, Imhekpeme, and Weppa communities will be affected at very high risk flood inundation while Ivighe, Uneme, Igoide and Iviari communities will be at risk at high risk flood inundation level. It is recommended among others that buildings that fall within the “Very High Risk” area should be identified and occupants possibly relocated to other areas such as the “No Risk” area. Keyword- Flooding, Remote sensing, GIS, Risk I. INTRODUCTION Over the past decades, the pattern of floods across all continents has been changing, becoming more frequent, intense and unpredictable for local communities, particularly as issues of development and poverty have led more people to live in areas vulnerable to flooding [1]. Flood by nature are complex events caused by a range of human vulnerabilities, inappropriate development planning and climate variability [2]. A UN HABITAT Report in 2010 predicted that “more than 25% of Africa’s population living within 100km from the coast will be at risk from sea level rise and coastal flooding within the next decade 2010-2020” and recommended immediate adoption of mitigation measures to reduce vulnerability [3]. It has been reported that developing countries like Nigeria will be more vulnerable to climate change due to its economic, climatic and geographic setting [4]. In 2012, Nigeria witnessed the most devastating effect of flooding. The flood event affected about 13 States: Niger, Benue, Edo, Kogi, Anambra, Ebonyi, Ondo, Imo, Bayelsa, Delta, Rivers, Adamawa etc. The flooding was triggered by intentional opening of the Lagdo Dam in Cameroon to release excess rain water caused by climate change from the Dam. This action caused huge socio-economic loss to Nigeria especially residents of Edo State. Several techniques have been used to map flood hazard and risks. The conventional technique is mostly through the use of information on historical floods, soil maps, aerial photographs, hydrological modeling of the major rivers, use of National Digital Terrain Model (DTM) and water levels [5]. These techniques have not been able to provide sufficient information needed for management of flood disasters. There is therefore need to develop a more effective and efficient approach of monitoring, mapping and modeling of flood risk and hazards. Remote sensing and GIS provides a useful means of modeling flood disaster. It provides a rapid response data source for mapping of flood disaster. GIS is a powerful tool that enables the integration of spatial data such as land use and land cover, topography, soil, hydrography, geology, utility e.t.c on a common platform. GIS also enables photographs of flood disaster areas to be hyperlinked with spatial database for a more visual understanding and documentation of the disaster area. This potential of GIS, when combined with Remote sensing satellite image provides a very flexible platform for modeling and analysis of any environmental phenomenon and for providing sustainable and profitable solutions to environmental management. This research seeks to model and analyze the risk and impact of flooding using GIS and satellite remote sensing images. A. The Study Area The area selected for this study is located in Edo state, South-south Nigeria. The geographic location is approximately between latitudes 6o 34’N and 6o 43’N and longitudes 7o 04’E and 7o 13’E (see fig. 1). Early rainfall occurs usually in January/February with full commencement of rainy season in March and stopping in November of each year. The dry season commences from November and ends in February. Edo state has 8.01% of its terrain covered by upland; 85.74% lowlands and 6.25% as wetlands [2].
  • 2. International Journal of Technical Research and Applications e-ISSN: 2320-8163, www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72 68 | P a g e Fig. 1a: Map of Africa Showing Nigeria; Fig1b: Map of Nigeria Showing Edo State and Fig.1c: Image window of the Study Area. 1a 1b 1c
  • 3. International Journal of Technical Research and Applications e-ISSN: 2320-8163, www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72 69 | P a g e II. MATERIALS AND METHODS The method employed for the study is illustrated in figure 2. Fig. 2: Work Flow Diagram of the Methodology adopted The SPOT-10 image which was in geographic coordinate system was exported to ERDAS Imagine 9.2 software. The image which has been processed was checked for line dropout, line banding effect and noise to ensure its usage. A pre- classification visits to the site was carried out and the following classes were adopted; Water body, Farmland, Built- up Area, Vegetation, Wetland and Open space. To begin the classification proper in ERDAS Imagine, sample set was selected using the Area of Interest (AOI) tool. The signature editor table was opened to add the AOI as a signature. Name and colour were assigned to the AOI class. Feature space layer was created from the signature editor menu bar. Other AOI classes were created and added as signatures. The feature space was masked to image space. Supervised classification method was used to classify the image. The feature space and maximum likelihood were selected as the non-parametric rule and parametric rule respectively. The classified image was exported to ArcGIS 10 software. The accuracy of the classified image was checked by plotting the coordinates of the remaining ground truth data not used in the classification process into the classified image. The result
  • 4. International Journal of Technical Research and Applications e-ISSN: 2320-8163, www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72 70 | P a g e shows a high correlation and the classes vectorized into polygons. The ASTER image was exported to ArcGIS 10 environment and the depression in the sink filled. The image focal statistics were generated using the Spatial Analyst/ Neighborhood/Focal Statistics Tool in ArcMap. The contour map was produced using the Spatial Analyst/ Surface/ Contour Tools. The DEM generated from the focal statistics was reclassified into different risk levels based on variation of elevation values. The depression in the DEM was filled and used to create the flow direction map. The flow accumulation map was produced using the flow direction data as input image. The stream network and catchment area were delineated. The reclassified DEM, stream network and vectorized land cover classes were integrated and used to analyze the impact of flood on the classes. A. Discussions of results The classified map was exported to ArcGIS 10 where they were vectorized as polygon. The vectorized feature classes of the study area is shown in figure 3.0 Fig. 3.0: Vectorized feature classes of the study area. The result shows that most of the study area is occupied by farmland; followed by built-up area. The built up area comprises of buildings and road networks. A high concentration of human activities is represented by built-up areas class in the study area. The implication of this is that if more runoff is generated than the drainage or river channel can accommodate as a result of increased paved surfaces, the water will overtop the drainage channel or river and flows into buildings or floodplain. The DEM of the study area was reclassified and the result is shown in fig. 3.1 Fig. 3.1: Reclassified DEM of the study area. The result shows that topography of the area reclassified as ‘very high risk’ falls mostly on the right hand side of the map and the risk level decreases as we move towards the left hand side of the study area. The result shows that topography of the area reclassified as ‘very high risk’ falls mostly on the right hand side of the map and the risk level decreases as we move towards the left hand side of the study area. The DEM was used to generate the flow direction map. The flow accumulation map derived from the flow direction data is shown in fig. 3.2 Fig. 3.2: Flow accumulation map of the study area. Cells having flow accumulation values of zero generally correspond to areas with high elevation values whereas cells with high flow accumulation values shown white in the map correspond to stream courses. The stream courses were extracted from the flow accumulation data and the result is shown in figure 3.3
  • 5. International Journal of Technical Research and Applications e-ISSN: 2320-8163, www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72 71 | P a g e Fig. 3.3: Stream courses within the Study Area To further appreciate the effectiveness of GIS and remote sensing, the DEM was converted to point feature and the coordinates of the point files generated. The generated coordinates was exported to Surfer 8 software and used to generate the 3D surface model and flow direction map of the study area. This is shown in fig. 3.4 and 3.5 respectively. Fig. 3.4: 3D Surface Model of the Study Area Fig. 3.5: Flow Direction Map of the Study Area Table 1.0 shows the different risk levels derived from the DEM and their percentage of coverage. Table 1.0: Flood Risk Level and percentage coverage of the study area. S/No Risk Area (Km2 ) % of the Area 1 Very High Risk 91118 27.86 2 High Risk 116531 35.63 3 Moderate Risk 58539 17.90 4 Low Risk 35078 10.72 5 No Risk 25837 7.89 Total 327103 100 The reclassified DEM was vectorized into polygon. The different flood risk levels were integrated with the land cover classes through the intersect tool of the overlay analysis. The essence of this analysis was to know the land cover types that will be affected at different level of flood risk. For example, fig. 3.6 and 3.7 shows the result of intersect analysis between “Very High Risk” and “Built_Up_Area” and “High Risk” and “Farmland” respectively. Fig. 3.6: Overlay analysis of “Very High Risk” flood level and “Built_Up_Area” land cover class Fig. 3.7: Overlay analysis of “High Risk” flood level and “Farmland” land cover class.
  • 6. International Journal of Technical Research and Applications e-ISSN: 2320-8163, www.ijtra.com Volume 3, Issue 4 (July-August 2015), PP. 67-72 72 | P a g e III. CONCLUSION Satellite images have shown the capabilities to extract relevant information needed to model and manage the impact of flood. ASTER image was used to extract the elevation information while SPOT-10 image was used to generate the land use/ land cover classes. The derived data were integrated through series of analysis in order to determine the land cover classes that will be at risk at varied degree of flood level. The result revealed the various land cover classes that will be at risk at various categories of flood level. Oshoro, Imhekpeme and Weppa communities will be at risk at very high risk flood inundation while Ivighe, Uneme, Igoide and Iviari will be at risk at high risk flood inundation. Also, the stream network generated shows the location of the stream channels and the classes that may be affected as a result of overflow of water at the stream channels. IV. RECOMMENDATIONS Based on the results and analysis obtained, the following recommendations were made: i. It is recommended that occupiers of buildings that fall within the very high risk flood inundation areas should be identified and possibly relocates the occupants to a higher ground elevation to avoid severe flood disaster. ii. Presence of high concentration of stream channel in the area makes the area suitable for rice farming and other irrigation farming. iii. Further research should be carried out in this area using radar satellite and very high resolution imagery such as Terra-SAR and Quickbird image respectively. REFERENCES [1]. Alam, K; Herson, M and Donnel, I (2008). Flood Disasters: Learning from previous Relief and Recovery Operations. Prevention Consortium and ALNAP. Pp.3 [2]. Fabiyi, O.O., Adagbasa, G.E., Efosa, O and Enaruvbe, G.O (2012). Flood Risk and Vulnerability Analysis in Ibadan and Environs. In: B, Ayeni and O, Fabiyi (Eds): Geospatial Technologies & Digital Cartography for National Security, Tourism and Disaster Management. Proceedings of joint Conference of Geoinformation Society of Nigeria & Nigerian Cartographic Association. [3]. Nwilo. P.C (2012). Survey Practice in the Nigerian Contemporary Society. Paper Presented on the Occasion of the Opening and Dedication of ‘Surveyors House’ of Nigerian Institution of Surveyors (NIS), Enugu State Branch. [4]. IPCC (Intergovernmental Panel on Climate Change) (2007). Climate Change 2007: Impacts, Adaptation and Vulnerability Contribution of Working Group II to the Third Assessment Report of the Intergovernmental Panel on Climate Change. Edited by M.L Parry et al, Cambridge Univ. Press, Cambridge, UK. [5]. Ojigi, L.M and Shaba, H.A (2012). Integration of Synthetic Aperture Radar (SAR) Imagery and Digital Terrain Model for Determining Flood Water Threshold in Sokoto and Environs, Nigeria (2012). In: B, Ayeni and O, Fabiyi (Eds): Geospatial Technologies & Digital Cartography for National Security, Tourism and Disaster Management. Proceedings of joint Conference of Geoinformation Society of Nigeria & Nigerian Cartographic Association.