Estimation of Above Ground Biomass in Sinharaja Forest Reserve, Using Sentinel Images
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Date
2023-09Author
Lankadhikara, L.M.Y.N.
Ranasinghe, A.K.R.N.
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Show full item recordAbstract
This research aimed to explore the potential of 
remote sensing techniques in estimating Above Ground 
Biomass (AGB) values over the Sinharaja forest area in 
Sri Lanka. Sentinel-1&2 satellite images were used to 
extract AGB values, and the accuracy was validated using 
field measurements. Statistical analysis including 
correlation and regression analysis were employed to 
investigate the relationship between the estimated AGB 
values and field measurements. The results revealed a 
strong positive correlation between Sentinel-1 Estimated 
AGB and field-calculated AGB, while the correlation
between Sentinel-2 Estimated AGB and field-calculated 
AGB was relatively weak. Non-linear regression analysis 
was also conducted to explore the relationship between 
the AGB values, which revealed a quadratic relationship 
between Sentinel-2 Estimated AGB and field-calculated 
AGB. Non-linear regression analysis was not conducted 
between sentinel-1 and field-calculated AGB data. 
Because there was strong positive correlation. This study 
conducted an annual analysis of above-ground biomass 
(AGB) along Neluwa, Lankagama, and Deniyaya roads 
within Sinharaja Forest. By comparing AGB values from 
2018 to 2022, significant decreases were observed in 
2019, indicating a critical year for deforestation activity. 
These findings provide valuable insights for conservation 
efforts and measures to mitigate further forest 
degradation and protect the ecosystem. The study suggests 
that remote sensing techniques can be used as a reliable 
and cost-effective method to estimate AGB values in dense 
forest areas, particularly when field measurements are 
difficult to obtain. However, higher resolution 
multispectral satellite images or advanced techniques can 
be used for more accurate results. Overall, the study 
provides valuable insights for forest management and 
conservation practices
