Spatio-Temporal Analysis of Seasonal Vegetation Dynamics Using Sentinel-2 NDVI in the Mahaweli River Basin, Sri Lanka | IJET – Volume 12 Issue 2 | IJET-V12I2P193

International Journal of Engineering and Techniques (IJET) Logo

International Journal of Engineering and Techniques (IJET)

Open Access • Peer Reviewed • High Citation & Impact Factor • ISSN: 2395-1303

Volume 12, Issue 2  |  Published: April 2026

Author: WWHN Waduge

DOI: https://doi.org/{{doi}}  â€˘  PDF: Download

Abstract

Vegetation dynamics are important indicators of environmental conditions, ecosystem health, and climatic variability. The study investigated the spatio-temporal variation of vegetation in the Mahaweli River Basin, Sri Lanka from 2016 to 2025. Normalized Difference Vegetation Index (NDVI) derived from satellite imagery is the core of the study. Seasonal NDVI analysis was conducted for both wet and dry seasons to evaluate vegetation conditions and long-term trends within the basin. The results revealed noticeable seasonal variations in vegetation cover, with the wet season recording slightly higher mean NDVI values compared to the dry season. Mean NDVI values ranged from 0.545 to 0.698 during the wet season and from 0.513 to 0.680 during the dry season. Statistical analysis showed that the dry season exhibited greater variability in vegetation conditions compared to the wet season. Trend analysis using linear regression, Theil–Sen slope estimation, and Mann–Kendall testing indicated positive NDVI trends during both seasons over the study period. The findings suggest gradual improvement in vegetation health and density within the Mahaweli River Basin from 2016 to 2025. Annual anomaly analysis also demonstrated temporal fluctuations associated with climatic and environmental variability while maintaining an overall increasing trend. The study highlights the effectiveness of remote sensing and GIS techniques for long-term vegetation monitoring and environmental assessment. The findings provide valuable information for watershed management, environmental monitoring, and sustainable land resource planning in Sri Lanka.

Keywords

NDVI, Vegetation Dynamics, Remote Sensing, GIS, Mahaweli River Basin, Spatio-temporal Analysis, Seasonal Variation, Trend Analysis

Conclusion

The study assessed the spatio-temporal dynamics of vegetation in the Mahaweli River Basin from 2016 to 2025 using NDVI analysis derived from satellite imagery. The results revealed that vegetation conditions varied seasonally, with the wet season showing slightly higher NDVI values than the dry season.The trend analysis indicated an overall increase in NDVI values during both wet and dry seasons throughout the study period. The finding suggests gradual improvement in vegetation cover and health within the basin. The dry season exhibited comparatively higher variability, indicating greater sensitivity of vegetation to climatic conditions and water availability. The statistical and trend analyses confirmed positive long-term vegetation trends across the basin. The anomaly analysis also showed yearly fluctuations in vegetation conditions while maintaining an overall increasing trend. Thestudy demonstrates that remote sensing-based NDVI analysis is an effective approach for monitoring long-term vegetation dynamics and seasonal environmental changes in the Mahaweli River Basin. The findings can support environmental management, agricultural planning, and sustainable watershed management activities in Sri Lanka.

References

[1] J. S. Bandara and S. S. Kodithuwakku, “Assessment of irrigation expansion and water resource management in the Mahaweli Basin,” Water Resources Management, vol. 32, no. 8, pp. 2789–2803, 2018. [2] K. M. De Beurs and G. M. Henebry, “Land surface phenology and temperature variability,” International Journal of Remote Sensing, 2005. [3] S. Fernando and L. Siriwardena, “Hydrological characterization of the Mahaweli River Basin, Sri Lanka,” Journal of Water and Climate Change, vol. 9, no. 4, pp. 643–657, 2018. [4] M. Drusch et al., “Sentinel-2: ESA’s optical high-resolution mission for GMES operational services,” Remote Sensing of Environment, 2012. [5] N. Pettorelli et al., “Satellite remote sensing for applied ecologists: Opportunities and challenges,” Journal of Applied Ecology, 2014. [6] J. M. Jayasundara and S. D. Arachchi, “Seasonal climate variability and crop yield trends in Sri Lanka,” International Journal of Climate Change Strategies and Management, 2021. [7] J. Verbesselt, R. Hyndman, A. Zeileis, and D. Culvenor, “Detecting trend and seasonal changes in satellite image time series,” Remote Sensing of Environment, 2010. [8] H. M. Gunathilake and D. Wickramasinghe, “Land use land cover dynamics and drivers in the Mahaweli Basin: A remote sensing study,” Environmental Monitoring and Assessment, vol. 187, no. 12, p. 777, 2015. [9] U. A. Amarasinghe, V. Smakhtin, and S. Kircher, “Water productivity in the basins of Sri Lanka: Current status and options for improvement,” IWMI, 2007. [10] U. Perera, T. Yamada, and T. Yamanaka, “Land use and land cover change in the Mahaweli River Basin using Landsat data,” Journal of Japan Society of Civil Engineers, Series F (Environmental Research), vol. 66, no. 3, pp. 90–101, 2010. [11] J. W. Rouse et al., “Monitoring vegetation systems in the Great Plains with ERTS,” NASA SP-351, 1974. [12] Sri Lanka Mahaweli Authority, “Mahaweli development programme overview,” Ministry of Irrigation and Water Resources Management, 2020. [13] N. K. B. Ratnayake, J. Weerahewa, and S. S. Kodithuwakku, “Rainfall variability in the Mahaweli Basin and its impacts on agriculture,” Weather and Climate Extremes, vol. 25, p. 100212, 2019. [14] J. Senaratne and W. M. S. Weerasinghe, “Spatial variation of rainfall and temperature in the central highlands of Sri Lanka,” Tropical Agricultural Research, vol. 28, no. 2, pp. 123–136, 2017. [15] X. Zhang, M. A. Friedl, and C. B. Schaaf, “Monitoring vegetation phenology using MODIS,” Remote Sensing of Environment, 2003. [16] G. A. Wijesekara and R. Ranasinghe, “Vegetation response to climatic and anthropogenic drivers in Sri Lankan basins using time-series satellite data,” Remote Sensing Applications: Society and Environment, vol. 26, p. 100726, 2022. [17] Z. Zhu and C. E. Woodcock, “Continuous change detection and classification of land cover using all available Landsat data,” Remote Sensing of Environment, 2014.

Cite this article

APA
WWHN Waduge (April 2026). Spatio-Temporal Analysis of Seasonal Vegetation Dynamics Using Sentinel-2 NDVI in the Mahaweli River Basin, Sri Lanka. International Journal of Engineering and Techniques (IJET), 12(2). https://doi.org/{{doi}}
WWHN Waduge, “Spatio-Temporal Analysis of Seasonal Vegetation Dynamics Using Sentinel-2 NDVI in the Mahaweli River Basin, Sri Lanka,” International Journal of Engineering and Techniques (IJET), vol. 12, no. 2, April 2026, doi: {{doi}}.
Submit Your Paper