2020
DOI: 10.1002/jeq2.20051
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Addressing the spatial disconnect between national‐scale total maximum daily loads and localized land management decisions

Abstract: Regulatory watershed mitigation programs typically emphasize widespread adoption of best management practices (BMPs) to meet total maximum daily load (TMDL) goals. To comply with the Chesapeake Bay TMDL, jurisdictions must develop watershed implementation plans (WIPs) to determine the number and type of BMPs to implement. However, the spatial resolution of the bay-level model used to determine these load reduction goals is so coarse that the regulatory plan cannot consider heterogeneity in local conditions, wh… Show more

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Cited by 23 publications
(9 citation statements)
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References 50 publications
(65 reference statements)
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“…The small fields of this region, often <3 ha, offer the opportunity to target management within hydrologic gradients (Piechnik et al, 2012; Veith et al, 2005) and support nutrient management strategies that can be applied at field and watershed scales (Amin et al, 2018; Buda et al, 2009). Hydrologic research within the upper Chesapeake Bay watershed underpins modern critical source area management strategies, now adopted by 47 of 50 U.S. states (Sharpley et al, 2003), and locally serves as the basis for nutrient management in the six states participating in the Chesapeake Bay total maximum daily load (Amin et al, 2020; USDA‐ARS 2010). Simulations with SWAT in the Mahantango Creek Experimental Watershed (MCEW) illustrate how targeting practices to fields with high runoff potential prevent roughly three times more N and P annually from reaching the streams, for 30% less than the cost of implementing practices under conventional, blanket strategies.…”
Section: Major Accomplishments With Direct Societal Benefitsmentioning
confidence: 99%
“…The small fields of this region, often <3 ha, offer the opportunity to target management within hydrologic gradients (Piechnik et al, 2012; Veith et al, 2005) and support nutrient management strategies that can be applied at field and watershed scales (Amin et al, 2018; Buda et al, 2009). Hydrologic research within the upper Chesapeake Bay watershed underpins modern critical source area management strategies, now adopted by 47 of 50 U.S. states (Sharpley et al, 2003), and locally serves as the basis for nutrient management in the six states participating in the Chesapeake Bay total maximum daily load (Amin et al, 2020; USDA‐ARS 2010). Simulations with SWAT in the Mahantango Creek Experimental Watershed (MCEW) illustrate how targeting practices to fields with high runoff potential prevent roughly three times more N and P annually from reaching the streams, for 30% less than the cost of implementing practices under conventional, blanket strategies.…”
Section: Major Accomplishments With Direct Societal Benefitsmentioning
confidence: 99%
“…An integrated modelling approach predicting pesticide transfer in agricultural basins should include spatially distributed land use and agricultural management practices, soil characteristics and hydro-climatic conditions, upstream transfer risks (Figure 1D) and dissipation processes in ponds (Figure 1C). Such an integrated approach remains scarce and concerns mainly the pond hydrological dynamics [69] or the dissipation efficiency of macro-pollutants, such as nitrogen or phosphorus [70,71].…”
Section: Towards a Framework Integrating The Role Of Ponds At The Catchment Scalementioning
confidence: 99%
“…Models were run using weather data for the years 2007-2014. Details of Topo-SWAT model implementation can be found in Amin, Veith, Shortle, Karsten, and Kleinman (2019).…”
Section: Calculating Nitrogen Phosphorus and Sediment Concentrationmentioning
confidence: 99%