From datasets to decisions – a repeatable workflow for groundwater decision support
- 1US Geological Survey, Madison, Wisconsin, United States of America (mnfienen@usgs.gov)
- 2Intera Inc, Boulder, Colorado, United States of America (jwhite@usgs.gov)
Environmental water management often benefits from a risk-based approach where information on the area of interest is characterized, assembled, and incorporated into a decision model considering uncertainty. This includes prior information from literature, field measurements, professional interpretation, and data assimilation resulting in a decision tool with a posterior uncertainty assessment accounting for prior understanding and what is learned through model development and data assimilation. Model construction and data assimilation are time consuming and prone to errors, which motivates a repeatable workflow where revisions resulting from new interpretations or discovery of errors can be addressed and the analyses repeated efficiently and rigorously. In this work, motivated by the real-world application of delineating risk-based (probabilistic) sources of water to abstraction wells in a humid temperate climate, a scripted workflow was generated for groundwater model construction, data assimilation, particle-tracking, and post-processing. The workflow leverages existing datasets describing hydrogeology, hydrography, water use, recharge, and lateral boundaries to build the model. The workflow performs ensemble-based history matching and uses a posterior Monte Carlo approach to provide probabilistic capture zones describing areas that contribute recharge to wells in a risk-based framework. The water managers can then select areas of varying levels of protection based on their tolerance for risk of potential wrongness of the underlying models. All the tools in this workflow are open-source and free, which facilitates testing of this repeatable and transparent approach to other environmental problems. The specific data are available in the United States but the tools can be applied to similar datasets worldwide.
How to cite: Fienen, M., Corson-Dosch, N., White, J., Leaf, A., and Hunt, R.: From datasets to decisions – a repeatable workflow for groundwater decision support, EGU General Assembly 2022, Vienna, Austria, 23–27 May 2022, EGU22-10686, https://doi.org/10.5194/egusphere-egu22-10686, 2022.