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dc.contributor.authorBishop, Thomas
dc.contributor.authorFilippi, Patrick
dc.contributor.authorYu, Yi
dc.contributor.authorZhang, Yuxi
dc.contributor.authorWimalathunge, Niranjan
dc.contributor.authorTian, Siyuan
dc.coverage.temporal2019-2025en
dc.date.accessioned2025-09-01T07:37:02Z
dc.date.available2025-09-01T07:37:02Z
dc.date.issued2025-09-01
dc.identifier.urihttps://hdl.handle.net/2123/34265
dc.description.abstractThe SoilWaterNow project utilised both Python and R to create software pipelines that process soil moisture data and can be used for predicting plant available water. There is 4 different parts, processing CosmOz surveys, SMAP data assimilation, a water balance model, and a data driven model for predicting agriculture systems. Within each section, there is a working script with an example dataset. This allows users to repeat the analysis with the example data in order to understand the data inputs and formats required to run the analysis on their own study area. CosmOz survey - Data processing: This pipeline transforms raw neutron count data from cosmic ray probe survey data into soil moisture measurements. The pipeline was used with the associated CosmOz survey data and soil data. The R code is available along with an example dataset. SMAP Data Assimilation: This pipeline assimilates Soil Moisture Active Passive (SMAP) satellite estimates of soil moisture into an API model for soil moisture reanalysis. Sample data is provided for CosmOz sites and their locations of these points are in "cosmoz_site_info.csv". The Python code for the API model is available. The forcing data used was GPM rainfall and air temperature anomalies. These parameters were calibrated and are listed in "API_parameters.csv". Water balance model: There are two models available, one that is point-based and used for running on small datasets, e.g. soil moisture probes, and one that is raster-based, which is faster and can be used for obtaining maps of soil moisture. Both models rely on daily evapotranspiration (ET), bucket size, and rainfall as the 3 inputs. These data for these 3 inputs can be accessed publicly: 8-day MODIS evapotranspiration data can be downloaded from the USGS website or directly from google earth engine, rainfall data can be accessed from SILO through the Long Paddock website, and soil data can be accessed from the eSoil website. 5 bucket sizes were used for both models, 0-5 cm, 5-15 cm, 15-30 cm, 30-60 cm, and 60-100 cm. The "ET&rain4WBmodel.r" file contains code that organises daily data for model execution. Alternatively, provided example datasets can be used to run the model. R code is available for both models. Data-driven approach: This pipeline uses a Gaussian Process regression model/workflow that can be used to predict soil moisture in space and time. This model uses a complex base function that can capture underlying trends in soil data. Each workflow consists of 4 steps: 1. data-preprocessing 2. feature analysis and selection 2. model training, optimisation, evaluation, and selection 4. generating prediction and uncertainty maps. Python code is available for this model and an example dataset is available that is already pre-processed. The "Methods.pdf" file discusses feature selection and model details and the "README.md" file contains in depth information about how this model works and gives example outputs. The software pipelines are stored in a public GitHub repository (https://github.com/thomasfabishop/soilwaternow) and are also stored on the USYD-RDS at \\shared.sydney.edu.au\research-data\PRJ-soilwaternowarchive. The pipelines are open access under a creative commons license (CC-BY 4.0). Please contact Dr Patrick Filippi ([email protected]) for further information.en
dc.language.isoenen
dc.relation.ispartofGRDC project number UOS2002-001RTX
dc.rightsCreative Commons Attribution 4.0en
dc.subjectsoil moistureen
dc.subjectplant available wateren
dc.subjectsoil water contenten
dc.subjectdigital agricultureen
dc.titleSoftware pipelines for processing soil water data and predicting plant available water using approaches from the SoilWaterNow projecten
dc.typeDataseten
dc.subject.asrcANZSRC FoR code::30 AGRICULTURAL, VETERINARY AND FOOD SCIENCES::3002 Agriculture, land and farm management::300206 Agricultural spatial analysis and modellingen
dc.subject.asrcANZSRC FoR code::41 ENVIRONMENTAL SCIENCES::4106 Soil sciences::410601 Land capability and soil productivityen
dc.rights.otherData is publicly available to third parties under creative commons licence with attributionen
dc.relation.otherGRDC
usyd.facultySeS faculties schools::Faculty of Science::Sydney Institute of Agriculture (SIA)en
usyd.facultySeS faculties schools::Faculty of Science::School of Life and Environmental Sciencesen
workflow.metadata.onlyYesen


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