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The Aburrá Valley, located in the northwestern region of Colombia, has undergone significant land cover changes and urban expansion in recent decades, driven by rapid population growth and infrastructure development. This region, known for its steep topography and dense urbanization, faces considerable environmental challenges. Monitoring these transformations is essential for informed territorial planning and sustainable development. This study leverages Synthetic Aperture Radar (SAR) imagery from the Sentinel-1 mission, covering 2017–2024, to propose a methodology for the multitemporal analysis of land cover dynamics and urban expansion in the valley. The novel proposed methodology comprises several steps: first, monthly SAR images were acquired for every year under study from 2017 to 2024, ensuring the capture of surface changes. These images were properly calibrated, rescaled, and co-registered. Then, various multitemporal fusions using statistics operations were proposed to detect and find different phenomena related to land cover and urban expansion. The methodology also involved statistical fusion techniques—median, mean, and standard deviation—to capture urbanization dynamics. The kurtosis calculations highlighted areas where infrequent but significant changes occurred, such as large-scale construction projects or sudden shifts in land use, providing a statistical measure of surface variability throughout the study period. An advanced clustering technique segmented images into distinctive classes, utilizing fuzzy logic and a kernel-based method, enhancing the analysis of changes. Additionally, Pearson correlation coefficients were calculated to explore the relationships between identified land cover change classes and their spatial distribution across nine distinct geographic zones in the Aburrá Valley. The results highlight a marked increase in urbanization, particularly along the valley’s periphery, where previously vegetated areas have been replaced by built environments. Additionally, the visual inspection analysis revealed areas of high variability near river courses and industrial zones, indicating ongoing infrastructure and construction projects. These findings emphasize the rapid and often unplanned nature of urban growth in the region, posing challenges to both natural resource management and environmental conservation efforts. The study underscores the need for the continuous monitoring of land cover changes using advanced remote sensing techniques like SAR, which can overcome the limitations posed by cloud cover and rugged terrain. The conclusions drawn suggest that SAR-based multitemporal analysis is a robust tool for detecting and understanding urbanization’s spatial and temporal dynamics in regions like the Aburrá Valley, providing vital data for policymakers and planners to promote sustainable urban development and mitigate environmental degradation.
Details
Environmental monitoring;
Urbanization;
Urban planning;
Radar;
Topography;
Cloud cover;
Infrastructure;
Land use;
Pearson distributions;
Energy consumption;
Natural resources;
Correlation coefficient;
Urban development;
Built environment;
Variability;
Resource management;
Remote sensing;
Environmental management;
Urban sprawl;
Precipitation;
Spatial distribution;
Image segmentation;
Environmental degradation;
Clustering;
Synthetic aperture radar;
Sustainable development;
Natural resource management;
Population growth;
Image acquisition;
Population studies;
Urban environments;
Remote monitoring;
Statistical analysis;
Radar imaging;
Valleys;
Project engineering;
Urban areas;
Correlation coefficients;
Machine learning;
Construction industry;
Methodology;
Artificial intelligence;
Project management;
Fuzzy logic;
Statistical methods
; Vásquez-Salazar, Rubén Darío 2
; Juan Camilo Parra 2
; Olmos-Severiche, César 2
; Travieso-González, Carlos M 3
; Gómez, Luis 4
1 Faculty of Sciences and Humanities, Institución Universitaria Digital de Antioquia, 55th Av, 42-90, Medellín 050015, Colombia;
2 Faculty of Engineering, Politécnico Colombiano Jaime Isaza Cadavid, 48th Av, 7-151, Medellín 050022, Colombia;
3 Signals and Communications Department, IDeTIC, Universidad de Las Palmas de Gran Canaria, 35017 Las Palmas de Gran Canaria, Spain
4 Electronic Engineering and Automatic Control Department, IUCES, Universidad de Las Palmas de Gran Canaria, 35017 Las Palmas de Gran Canaria, Spain;