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Time series evaluation of landscape dynamics using annual Landsat imagery and spatial statistical modeling: Evidence from the Phoenix metropolitan region
Institution:1. School of Geographical Sciences and Urban Planning, Arizona State University, Tempe, AZ 85287, United States;2. Keller Science Action Center, The Field Museum, Chicago, IL 60605, United States;1. Department of Acute Medicine, King''s College Hospital, London SE5 9RS, UK;1. Departamento de Silvopascicultura, ETSIM, Universidad Politécnica de Madrid, Spain;2. Center for Spatial Technologies And Remote Sensing (CSTARS), University of California Davis, USA;3. Departamento de Construcción y Vías Rurales, EUITF, Universidad Politécnica de Madrid, Spain;4. Department of Physical Geography and Ecosystem Science, Lund University, Sweden;5. Departamento de Estadística, ETSIA, Universidad Politécnica de Madrid, Spain;6. Departamento de Medio Ambiente, CIEMAT, Madrid, Spain
Abstract:Urbanization is a natural and social process involving simultaneous changes to the Earth’s land systems, energy flow, demographics, and the economy. Understanding the spatiotemporal pattern of urbanization is increasingly important for policy formulation, decision making, and natural resource management. A combination of satellite remote sensing and patch-based models has been widely adopted to characterize landscape changes at various spatial and temporal scales. Nevertheless, the validity of this type of framework in identifying long-term changes, especially subtle or gradual land modifications is seriously challenged. In this paper, we integrate annual image time series, continuous spatial indices, and non-parametric trend analysis into a spatiotemporal study of landscape dynamics over the Phoenix metropolitan area from 1991 to 2010. We harness local indicators of spatial dependence and modified Mann-Kendall test to describe the monotonic trends in the quantity and spatial arrangement of two important land use land cover types: vegetation and built-up areas. Results suggest that declines in vegetation and increases in built-up areas are the two prevalent types of changes across the region. Vegetation increases mostly occur at the outskirts where new residential areas are developed from natural desert. A sizable proportion of vegetation declines and built-up increases are seen in the central and southeast part. Extensive land conversion from agricultural fields into urban land use is one important driver of vegetation declines. The xeriscaping practice also contributes to part of vegetation loss and an increasingly heterogeneous landscape. The quantitative framework proposed in this study provides a pathway to effective landscape mapping and change monitoring from a spatial statistical perspective.
Keywords:Landscape mapping  Time series  Local spatial indicator  Modified Mann-Kendall test  Vegetation  Built-up areas
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