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Supporting cost-effective watershed management strategies for Chesapeake Bay using a modeling and optimization framework
Kaufman, D., Shenk, G., Bhatt, G., Asplen, K., Devereux, O., Rigelman, J., Ellis, H., Hobbs, B., Bosch, D., Van Houtven, G. L., McGarity, A., Linker, L., & Ball, W. (2021). Supporting cost-effective watershed management strategies for Chesapeake Bay using a modeling and optimization framework. Environmental Modelling & Software, 144, 105141. Article 105141. Advance online publication. https://doi.org/10.1016/j.envsoft.2021.105141
Extensive efforts to adaptively manage nutrient pollution rely on Chesapeake Bay Program's (Phase 6) Watershed Model, called Chesapeake Assessment Scenario Tool (CAST), which helps decision-makers plan and track implementation of Best Management Practices (BMPs). We describe mathematical characteristics of CAST and develop a constrained nonlinear BMP-subset model, software, and visualization framework. This represents the first publicly available optimization framework for exploring least-cost strategies of pollutant load control for the United States' largest estuary. The optimization identifies implementation options for a BMP subset modeled with load reduction effectiveness factors, and the web interface facilitates interactive exploration of >30,000 solutions organized by objective, nutrient control level, and for ~200 counties. We assess framework performance and demonstrate modeled cost improvements when comparing optimization-suggested proposals with proposals inspired by jurisdiction plans. Stakeholder feedback highlights the framework's current utility for investigating cost-effective tradeoffs and its usefulness as a foundation for future analysis of restoration strategies.