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Published byHannah McElroy Modified over 10 years ago
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Spatial classification data are of minimal value to support model representation because the uncertainty associated with parameterization is too high.
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What are these data? Purpose: give insight to processes; informs us of organization Overlay analysis Mapable features Soil, veg, geology, snowcover Geophysics Remote sensing Streams Soils Hydrography Channels Terrain Surfaces Rainfall Response Digital Orthophotos
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Dominant Runoff Processes Horton rarely saturated sometimes saturated Frequently saturated Often saturated Always saturated Subsurface flow Drained areas No runoff Weiler
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Useful when… Uncertainty is realized: translation from qualitative to quantitative is not abused Uncertainty in spatial delineation Interpretation (subjective or expert-based) Do not rely on absolute numbers (statistical distributions, classes) Describes storage & response Ground truth (validate); evaluate density needed for characterization
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Key considerations Topology is important Provides insight & guides conceptualization Mapping is scale dependent and lumps or splits units. May lose information (could be good or bad) Index changes: datasets to quantify & assess land-use changes
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Final points Should be a first step in any study of catchment Tool for classification Modeling (development / validation) Perhaps field mapping skills are lost in the recent generation of hydrologists Should be thinking about training students to recognize features, realize uncertainty, and guide on proper usage
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