Research Article

Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches

Volume: 6 Number: 3 September 30, 2025
EN

Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches

Abstract

The study examines changes in Land-Use/Land-Cover (LULC) in the Yenişehir district of Bursa province (Türkiye) between 2020 and 2024. Focusing specifically on the loss of agricultural land due to anthropogenic pressure, the study aims to identify changes in the LULC using remote sensing tools and techniques. In this regard, it aims to contribute to the development of sustainable land use policies. High-resolution Dynamic World dataset generated from Sentinel-2 satellite imagery was employed. The study, which was conducted by using Google Earth Engine (GEE) and ArcGIS Pro, generated annual LULC maps, inter-class transition maps that focus on agricultural land for consecutive years, and annual NDVI maps. As a result, a total of 2% decrease was detected in the crops class, accelerating particularly after 2022. NDVI values also decreased in the same areas, displaying similarity to this result. The findings are generally observed in agricultural land in peri-urban areas and are associated with both anthropogenic pressure and climate change impacts on the agricultural landscape. The study, based on data analyses, emphasizes the importance of ecology-based strategic approaches and demonstrates the need to integrate these approaches into spatial planning. Moreover, it shows the applicability of Dynamic World dataset in short-term monitoring of surface area losses in agricultural areas.

Keywords

Dynamic World dataset, Google Earth Engine (GEE), Land-Use/Land-Cover change, Remote sensing, Sustainable land management

Ethical Statement

This study does not require ethical committee approval.

References

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APA
Kalaycı Kadak, M. (2025). Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches. Journal of Agricultural Production, 6(3), 186-196. https://doi.org/10.56430/japro.1777194
AMA
1.Kalaycı Kadak M. Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches. J Agri Pro. 2025;6(3):186-196. doi:10.56430/japro.1777194
Chicago
Kalaycı Kadak, Merve. 2025. “Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches”. Journal of Agricultural Production 6 (3): 186-96. https://doi.org/10.56430/japro.1777194.
EndNote
Kalaycı Kadak M (September 1, 2025) Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches. Journal of Agricultural Production 6 3 186–196.
IEEE
[1]M. Kalaycı Kadak, “Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches”, J Agri Pro, vol. 6, no. 3, pp. 186–196, Sept. 2025, doi: 10.56430/japro.1777194.
ISNAD
Kalaycı Kadak, Merve. “Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches”. Journal of Agricultural Production 6/3 (September 1, 2025): 186-196. https://doi.org/10.56430/japro.1777194.
JAMA
1.Kalaycı Kadak M. Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches. J Agri Pro. 2025;6:186–196.
MLA
Kalaycı Kadak, Merve. “Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches”. Journal of Agricultural Production, vol. 6, no. 3, Sept. 2025, pp. 186-9, doi:10.56430/japro.1777194.
Vancouver
1.Merve Kalaycı Kadak. Spatiotemporal Assessment of LULC Changes Using Remote Sensing Approaches. J Agri Pro. 2025 Sep. 1;6(3):186-9. doi:10.56430/japro.1777194