A Graph-Based Modeling Framework for Tracing Hydrological Pollutant
Transport in Surface Waters
- URL: http://arxiv.org/abs/2302.04991v3
- Date: Sat, 23 Sep 2023 01:39:43 GMT
- Title: A Graph-Based Modeling Framework for Tracing Hydrological Pollutant
Transport in Surface Waters
- Authors: David L. Cole, Gerardo J. Ruiz-Mercado, Victor M. Zavala
- Abstract summary: We present a graph modeling framework for understanding pollutant transport and fate across waterbodies, rivers, and watersheds.
The graph representation provides an intuitive approach for capturing connectivity and for identifying upstream pollutant sources.
Our tool ultimately seeks to help stakeholders design effective pollution prevention/mitigation practices.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Anthropogenic pollution of hydrological systems affects diverse communities
and ecosystems around the world. Data analytics and modeling tools play a key
role in fighting this challenge, as they can help identify key sources as well
as trace transport and quantify impact within complex hydrological systems.
Several tools exist for simulating and tracing pollutant transport throughout
surface waters using detailed physical models; these tools are powerful, but
can be computationally intensive, require significant amounts of data to be
developed, and require expert knowledge for their use (ultimately limiting
application scope). In this work, we present a graph modeling framework --
which we call ${\tt HydroGraphs}$ -- for understanding pollutant transport and
fate across waterbodies, rivers, and watersheds. This framework uses a
simplified representation of hydrological systems that can be constructed based
purely on open-source data (National Hydrography Dataset and Watershed Boundary
Dataset). The graph representation provides an flexible intuitive approach for
capturing connectivity and for identifying upstream pollutant sources and for
tracing downstream impacts within small and large hydrological systems.
Moreover, the graph representation can facilitate the use of advanced
algorithms and tools of graph theory, topology, optimization, and machine
learning to aid data analytics and decision-making. We demonstrate the
capabilities of our framework by using case studies in the State of Wisconsin;
here, we aim to identify upstream nutrient pollutant sources that arise from
agricultural practices and trace downstream impacts to waterbodies, rivers, and
streams. Our tool ultimately seeks to help stakeholders design effective
pollution prevention/mitigation practices and evaluate how surface waters
respond to such practices.
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