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Monitoring trends of greenness and LULC (land use/land cover) change in Addis Ababa and its surrounding using MODIS time-series and LANDSAT Data

Gebeyehu Admasu, Tesfaye LU (2017) In Lund University GEM thesis series NGEM01 20171
Dept of Physical Geography and Ecosystem Science
Abstract
NDVI(Normalized Difference Vegetation Index) was introduced in 1974. Despite its limitations, it has been under use for monitoring bio-physical and cultural landscapes from satellite. The present study employed MODIS based NDVI to examine trends of greenness and its link with LULC (land use/land cover) change and rainfall in Addis Ababa and its surrounding (covering 1,217 sq km) over a period of 17 years (2000-2016). Supervised classification of LANDSAT was carried out to identify four thematic classes. Land use land cover change was detected using post classification comparison method. Yearly aggregates of mean, standard deviations (SD), minimum and maximum values of NDVI were generated from MODIS time-series images (n= 387) and spatially... (More)
NDVI(Normalized Difference Vegetation Index) was introduced in 1974. Despite its limitations, it has been under use for monitoring bio-physical and cultural landscapes from satellite. The present study employed MODIS based NDVI to examine trends of greenness and its link with LULC (land use/land cover) change and rainfall in Addis Ababa and its surrounding (covering 1,217 sq km) over a period of 17 years (2000-2016). Supervised classification of LANDSAT was carried out to identify four thematic classes. Land use land cover change was detected using post classification comparison method. Yearly aggregates of mean, standard deviations (SD), minimum and maximum values of NDVI were generated from MODIS time-series images (n= 387) and spatially mapped. The aggregated yearly NDVI and rainfall values were standardized to z-scores and statistically correlated. The change no-change classes were found to be 427(35%) and 790 (65%) square kilometers respectively. The study revealed an overwhelming increase in built-up area by 183%. Agriculture and vegetation were reduced by 34% and 29% respectively. A general decline in NDVI implying net-loss in greenness was revealed in the study area. Spatio-temporal variation was observed in the onset (start), green up (peak), senescence (decline) and end (dormancy) dates of NDVI. Spatially, three classes of NDVI were identified: low NDVI zone (the center with homogeneous built-up area), medium NDVI zone (the transitional zone with mixed LULC) and high NDVI zone (the periphery with a relatively better vegetation cover). Major land cover change classes were found to be predominantly located in the transitional NDVI zones and slightly in the peripheral zones. NDVI was found to be positively correlated with rainfall data (R2=0.25, Addis Ababa station) and (R2=0.2, Bole station). Nevertheless; the correlation between maximum NDVI and rainfall values has shown a decreasing trend over the years (highly declined after 2010). NDVI decline was found to be earlier (2008/09) in the time-series compared to rainfall (2010/11). The study concludes that decline in NDVI between 2000 and 2016 in the study area is more explained by net-loss in vegetation and agricultural land than decline in rainfall. Ultimately, the study recommends the integration of field based bio-physical and anthropogenic variables with fine spatial resolution remote sensing data for further research. (Less)
Popular Abstract
Monitoring of resources with repeated observations of remotely sensed data help to understand the status of a resource and develop accurate and timely information. NDVI (Normalized Difference Vegetation Index) has been under use since the early 1970s for monitoring of the physical and/or anthropogenic environments: vegetation, crop productivity, drought/famine and built-up areas. However; there has been an academic debate whether variability (decrease or increase) in NDVI is caused by natural factors or anthropogenic ones, particularly LULC (land use/land cover) change induced by rapid urbanization.
The current study attempts to examine the link between MODIS based trends of NDVI with LANDSAT based LULC change and field based rainfall... (More)
Monitoring of resources with repeated observations of remotely sensed data help to understand the status of a resource and develop accurate and timely information. NDVI (Normalized Difference Vegetation Index) has been under use since the early 1970s for monitoring of the physical and/or anthropogenic environments: vegetation, crop productivity, drought/famine and built-up areas. However; there has been an academic debate whether variability (decrease or increase) in NDVI is caused by natural factors or anthropogenic ones, particularly LULC (land use/land cover) change induced by rapid urbanization.
The current study attempts to examine the link between MODIS based trends of NDVI with LANDSAT based LULC change and field based rainfall data.
Supervised classification of LANDSAT data is employed to identify four thematic classes. LULC change is detected using post classification comparison method. Yearly aggregates of mean, standard deviations (SD), minimum and maximum values of NDVI were generated from MODIS time-series images (n= 387) using zonal statistics algorithm and spatially mapped. The aggregated yearly NDVI and rainfall values were standardized to z-scores and statistically correlated.
The result revealed an overwhelming increase in built-up area (183%) at the expense of agriculture and vegetation which were reduced by 34% and 29% respectively. A general decline in NDVI and rainfall implying net-loss in greenness was revealed in the study area. Considerable spatio-temporal variation was observed in the onset (start), green up (peak), senescence (decline) and end (dormancy) dates of NDVI. Spatially, three classes of NDVI were identified: low NDVI zone (the center with homogeneous built-up area); medium NDVI zone (the transitional zone with mixed LULC) and high NDVI zone (the periphery with a relatively higher vegetation cover). Bi-modal rainfall seasons were identified by MODIS based NDVI and field based rainfall data. NDVI was found to be positively correlated with rainfall data (R2=0.25, Addis Ababa station) and (R2=0.2, Bole station). The correlation (R2 values) between NDVI and rainfall revealed a declining trend.
The study concludes that decline in NDVI between 2000 and 2016 in the study area is more explained by net-loss in vegetation and agricultural land than decline in rainfall.
Therefore; caution has to be made while using satellite based NDVI to monitor the physical and/or anthropogenic landscape. (Less)
Please use this url to cite or link to this publication:
author
Gebeyehu Admasu, Tesfaye LU
supervisor
organization
course
NGEM01 20171
year
type
H2 - Master's Degree (Two Years)
subject
keywords
Time-series, MODIS, Addis Ababa, Physical Geography and Ecosystem Science, NDVI, Greenness, LULC, GEM
publication/series
Lund University GEM thesis series
report number
24
language
English
additional info
Funder: Erasmus Mundus Scholarship Scheme
id
8917891
date added to LUP
2017-06-21 23:23:22
date last changed
2017-06-21 23:23:22
@misc{8917891,
  abstract     = {{NDVI(Normalized Difference Vegetation Index) was introduced in 1974. Despite its limitations, it has been under use for monitoring bio-physical and cultural landscapes from satellite. The present study employed MODIS based NDVI to examine trends of greenness and its link with LULC (land use/land cover) change and rainfall in Addis Ababa and its surrounding (covering 1,217 sq km) over a period of 17 years (2000-2016). Supervised classification of LANDSAT was carried out to identify four thematic classes. Land use land cover change was detected using post classification comparison method. Yearly aggregates of mean, standard deviations (SD), minimum and maximum values of NDVI were generated from MODIS time-series images (n= 387) and spatially mapped. The aggregated yearly NDVI and rainfall values were standardized to z-scores and statistically correlated. The change no-change classes were found to be 427(35%) and 790 (65%) square kilometers respectively. The study revealed an overwhelming increase in built-up area by 183%. Agriculture and vegetation were reduced by 34% and 29% respectively. A general decline in NDVI implying net-loss in greenness was revealed in the study area. Spatio-temporal variation was observed in the onset (start), green up (peak), senescence (decline) and end (dormancy) dates of NDVI. Spatially, three classes of NDVI were identified: low NDVI zone (the center with homogeneous built-up area), medium NDVI zone (the transitional zone with mixed LULC) and high NDVI zone (the periphery with a relatively better vegetation cover). Major land cover change classes were found to be predominantly located in the transitional NDVI zones and slightly in the peripheral zones. NDVI was found to be positively correlated with rainfall data (R2=0.25, Addis Ababa station) and (R2=0.2, Bole station). Nevertheless; the correlation between maximum NDVI and rainfall values has shown a decreasing trend over the years (highly declined after 2010). NDVI decline was found to be earlier (2008/09) in the time-series compared to rainfall (2010/11). The study concludes that decline in NDVI between 2000 and 2016 in the study area is more explained by net-loss in vegetation and agricultural land than decline in rainfall. Ultimately, the study recommends the integration of field based bio-physical and anthropogenic variables with fine spatial resolution remote sensing data for further research.}},
  author       = {{Gebeyehu Admasu, Tesfaye}},
  language     = {{eng}},
  note         = {{Student Paper}},
  series       = {{Lund University GEM thesis series}},
  title        = {{Monitoring trends of greenness and LULC (land use/land cover) change in Addis Ababa and its surrounding using MODIS time-series and LANDSAT Data}},
  year         = {{2017}},
}