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FGARA Digital Soil Mapping Output - Microrelief

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Research Data Australia2024-12-14 收录
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https://researchdata.edu.au/fgara-digital-soil-output-microrelief/445400
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Microrelief is one of 19 attributes of soils chosen to underpin the land suitability assessment of the Flinders and Gilbert Agricultural Resource Assessment (FGARA) project through the digital soil mapping process (DSM). This raster data (in GeoTIFF format) represents a modelled surface of probability of gilgai that is deeper than 30cm. The values are from 0 being least probable to 1 being most probable. This data is derived from measured site data and environmental covariates. The data is used in assessment of water ponding that effects irrigation efficiency. For this project the areas of >0.7 probability are said to have microrelief.\nThe attribute data file is named "MicroReliefprobability.tif"\nAlso included are data reflecting confidence of the main dataset. This file is named "MicroRelief_CI.tif". "CI" represents "confusion index".\nThe DSM process is described in the technical report: Bartley R, Thomas MF, Clifford D, Phillip S, Brough D, Harms D, Willis R, Gregory L, Glover M, Moodie K, Sugars M, Eyre L, Smith DJ, Hicks W and Petheram C (2013) Land suitability: technical methods. A technical report to the Australian Government for the Flinders and Gilbert Agricultural Resource Assessment (FGARA) project, CSIRO.\nThis raster data provides improved soil information to identify opportunities and promote detailed investigation for a range of sustainable development options and was created within the “Land Suitability” component of FGARA projects.\nLineage: This data has been created from a range of inputs and processing steps. Below is an overview. Broadly, the steps were to: \n1. Collate existing data (data related to: climate, topography, soils, natural resources, remotely sensed etc of various formats; reports, spatial vector, spatial raster etc.). \n2. Select additional soil and attribute site data by Latin hypercube statistical sampling method applied across the covariate space. \n3. Carry out fieldwork to collect additional soil and attribute data and understand geomorphology and landscapes. \n4. Build models from selected input data and covariate data using predictive learning via rule ensembles in the RuleFit3 software. \n5. Create Microrelief Digital Soil Mapping (DSM) key attribute output data. DSM is the creation and population of a geo-referenced database, generated using field and laboratory observations, coupled with environmental data through quantitative relationships. It applies pedometrics - the use of mathematical and statistical models that combine information from soil observations with information contained in correlated environmental variables, remote sensing images and some geophysical measurements.\nQuality assessment of the attribute data is mapped spatially as a function of the model output by evaluating the rigour of the DSM attribute data using non-parametric bootstrapping of the DSM modelling. For more information refer to “Land suitability: technical methods. A technical report to the Australian Government for the Flinders and Gilbert Agricultural Resource Assessment (FGARA) project”.
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Commonwealth Scientific and Industrial Research Organisation
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