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Groundwater Modelling Decision-Support Initiative

Homepage: https://gmdsi.org/education/tutorials/

Decision Support Worked Examples

The worked example theme provides the opportunity for GMDSI to ‘think aloud’. GMDSI works alongside industry and government modellers, aiming to add value to existing modelling work by applying high-end data assimilation and uncertainty quantification methods to real life projects. Our work will be documented, and shared, so that others can follow.

With worked examples, we aim to:

  • demonstrate and explain new data assimilation and uncertainty analysis methodologies that are available through public domain model partner software
  • explain the benefits of using these methodologies
  • suggest ways in which decision-support models can be designed to take advantage of these methodologies
  • lower the barriers to everyday use of model-partner software by the groundwater industry.

Tutorials on decision-support modelling with non-scripted workflows

In order to assist modellers in setting up and using model-partner software in ways that support the decision-support imperatives of data assimilation and uncertainty quantification, GMDSI is developing a series of tutorials.

GMDSI tutorials are designed to be modular and independent of each other. Each tutorial addresses its own specific modelling topic. Hence there is no need to work through them in a pre-ordained sequence. However, they also complement each other. Many employ variations of the same synthetic model, and are based on the same simulator (MODFLOW 6).

In these tutorials, utility software from the PEST suite is used extensively to assist in model parameterization, objective function definition, and general PEST/PEST++ setup. Some tutorials focus on the use of PEST and PEST++, while others focus on ancillary issues such as introducing transient recharge to a groundwater model, and translation of a model’s grid, parameterization, and calculated states to files that can be read by visualization, GIS and display packages.

A separate set of tutorials demonstrate scripted workflows using pyEMU and PEST++: https://github.com/gmdsi/GMDSI_notebooks

DOI

Acknowledgments

Development of these tutorials is funded by the Groundwater Modelling Decision Support Initiative (GMDSI). GMDSI is jointly funded by BHP and Rio Tinto.