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Big data show idiosyncratic patterns and rates of geomorphic river mobility

Richard Boothroyd, Richard Williams, Trevor Hoey, Gary Brierley, Pamela Louise M. Tolentino, Esmael Guardian, J. A. Reyes, Cathrine Sabillo, Laura Quick, John E. G. Perez, Carlos David

2025Nature Communications9 citationsDOIOpen Access PDF

Abstract

Abstract Big data present unprecedented opportunities to test long-standing theories regarding patterns and rates of geomorphic river adjustments. Here, we use locational probabilities derived from Landsat imagery (1988-2019) to quantify the dynamics of 600 km 2 of riverbed in 10 Philippine catchments. Analysis of lateral adjustments reveals spatially non-uniform variability in along-valley patterns of geomorphic river mobility, with zones of relative stability interspersed with zones of relative instability. Hotspots of mobility vary in magnitude, size and location between catchments. We could not identify monotonic relationships between local factors (active channel width, valley floor width and confinement ratio) and mobility. No relation between the channel pattern type and rates of adjustment was evident. We contend that satellite-derived locational probabilities provide a spatially continuous dynamic metric that can help unravel and contextualise forms and rates of geomorphic river adjustment, thereby helping to derive insights into idiosyncrasies of river behaviour in dynamic landscapes.

Topics & Concepts

Channel (broadcasting)Physical geographyGeologyHydrology (agriculture)GeographyComputer scienceComputer networkGeotechnical engineeringHydrology and Sediment Transport ProcessesFlood Risk Assessment and ManagementHydrology and Watershed Management Studies
Big data show idiosyncratic patterns and rates of geomorphic river mobility | Litcius