Abstract:
The dynamics of forest density of Sundarbans is crucial for Bangladesh. Climatic variability
has a gigantic impact on this mangrove forest cover dynamicity. Changes in temperature,
precipitation, and evapotranspiration patterns have been proposed as factors influencing
changes in the composition and spatial distribution of mangrove species. To monitor this
changing pattern of mangrove forest in Sundarbans and its climatic variability advanced
techniques such as remote sensing and machine learning need to be applied. The main purpose
of this research was to analyze the relationship between meteorological variables and dynamics
of mangrove forest density mainly normalized difference vegetation index (NDVI) and to
predict it based on this meteorological variable over the Sundarbans, using the last 30 years’
time period (1992 to 2021) data. To investigate the changing pattern, the overall 30 years were
split into ten years as follows (i) 1992 to 2001, (ii) 2002 to 2011, and (iii) 2012 to 2021. Firstly,
the 30-year Landsat satellite data was analyzed using the Google Earth engine to determine the
changing nature of NDVI at Sundarbans; then, the meteorological variables changing nature
were analyzed along with the NDVI to see the relationships among them. Finally, machine
learning algorithms (Random Forest, Support Vector Machine with Radial Basis Function, and
Support Vector Machine with Polynomial Function were used to predict the NDVI over
Sundarbans using the relationships between NDVI and maximum & and minimum
temperature, precipitation, and potential evapotranspiration. It has been found that the Random
Forest model performs well for predicting the NDVI over Sundarbans as it has a lower mean
squared and mean absolute error.
Description:
A Thesis
Submitted to the Faculty of Agriculture
Sher-e-Bangla Agricultural University, Dhaka
in partial fulfillment of the requirements
for the degree of
MASTER OF SCIENCE
IN
AGROFORESTRY AND ENVIRONMENTAL SCIENCE