Spatio-temporal classification of land use and land cover and its changes in Kerala using remote sensing and machine learning approach
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Date
2024
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Springer Science and Business Media Deutschland GmbH
Abstract
Land use and land cover (LULC) analysis gives important information on how the region has evolved over time. Kerala, a land with an extensive and dynamic history of land-use changes, has, until now, lacked comprehensive investigations into this history. So the current study focuses on Kerala, one of the ecologically diverse states in India with complex topography, through Landsat images taken from 1990 to 2020 using two different machine learning classifications, random forest (RF) and classification and regression trees (CART) on Google Earth Engine (GEE) platform. RF and CART are versatile machine learning algorithms frequently employed for classification and regression, offering effective tools for predictive modelling across diverse domains due to their flexibility and data-handling capabilities. Normalised Difference Vegetation Index (NDVI), Normalised Differences Built-up Index (NDBI), Modified Normalised Difference Water Index (MNDWI), and Bare soil index (BSI) are integral indices utilised to enhance the precision of land use and land cover classification in satellite imagery, playing a crucial role by providing valuable insights into specific landscape attributes that may be challenging to identify using individual spectral bands alone. The results showed that the performance of RF is better than that of CART in all the years. Thus, RF algorithm outputs are used to infer the change in the LULC for three decades. The changes in the NDVI values point out the loss of vegetation for the urban area expansion during the study period. The increasing value of NDBI and BSI in the state indicates growth in high-density built-up areas and barren land. The slight reduction in the value of MNDWI indicates the shrinking water bodies in the state. The results of LULC showed the urban expansion (158.2%) and loss of agricultural area (15.52%) in the region during the study period. It was noted the area of the barren class, as well as the water class, decreased steadily from 1990 to 2020. The results of the current study will provide insight into the land-use planners, government, and non-governmental organizations (NGOs) for the necessary sustainable land-use practices. © The Author(s), under exclusive licence to Springer Nature Switzerland AG 2024.
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Keywords
Biodiversity, Data handling, Expansion, Forestry, Image enhancement, Land use, Machine learning, Random forests, Regression analysis, Remote sensing, Satellite imagery, Topography, Vegetation mapping, Bare soil indices, Classification trees, Google earth engine, Google earths, Kerala, Land use and land cover, Modified normalized difference water index, Normalized difference build-up index, Normalized difference vegetation index, Normalized difference water index, Normalized differences, Regression trees, Engines, classification, GIS, land cover, land use change, machine learning, NDVI, regression analysis, remote sensing, software, spatiotemporal analysis, accuracy, Article, bare soil index, classification and regression tree, climate change, electromagnetic spectrum, electromagnetism, farming system, government, imagery, land use, landslide, learning algorithm, modified normalised difference water index, near infrared spectroscopy, non-governmental organization, normalised difference vegetation index, normalised differences built up index, predictive model, random forest, topography, training, urban area, urbanization, validation process, water pollution, animal, environmental monitoring, Lepidoptera, soil, India, water, Animals, Environmental Monitoring, Machine Learning, Remote Sensing Technology, Soil, Water
Citation
Environmental Monitoring and Assessment, 2024, 196, 5, pp. -
