4.7 Article

Lake Erie tributary nutrient trend evaluation: Normalizing concentrations and loads to reduce flow variability

期刊

ECOLOGICAL INDICATORS
卷 125, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.ecolind.2021.107601

关键词

Long-term data; Monitoring; Nutrients; Statistics; Streams; Time-series analysis

资金

  1. Michigan Department of Environment, Great Lakes, and Energy (EGLE)
  2. State of Ohio
  3. Anderson, Inc.
  4. Northeast Ohio Regional Sewer District (NEORSD)
  5. University of Michigan [NA17OAR4320152]

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The study shows that using the WRTDS method for flow normalization can enhance the detection of trends in tributary nutrient concentration and load changes, reducing the impact of wet and dry years on long-term trend analysis. Overall, flow-normalization with WRTDS proved to be effective in assessing nutrient trends in tributaries.
Establishing tributary load (i.e., the mass exported over a period of time) targets to reduce anthropogenic nutrient inputs to receiving waters - and thus eutrophication - is a common mitigation strategy in freshwater and coastal ecosystems. However, detecting and quantifying trends can be difficult because annual precipitation strongly influences tributary flow (e.g., average daily stream discharge). This may obscure trends as wet years tend to produce high tributary loads despite management activities to reduce nutrient export, and dry years typically generate low loads, even without management of nutrients. Furthermore, flow and nutrient concentrations are often correlated. Earlier efforts to reduce the effect of flow variability on tributary nutrient assessment were limited by computational and methodological constraints, until the weighted regressions on time, discharge, and season (WRTDS) method was introduced in 2010. Here we use WRTDS to assess nutrient concentration and load changes from 1982 to 2018 in three tributaries to the western basin of Lake Erie, of the Laurentian Great Lakes. Generally, trends revealed by flow-normalization do not contradict those of non-normalized metrics; however flow-normalization made the patterns more perceptible than in non-normalized metrics and reduced the influence of a particularly wet or dry period at the end of records on long-term trend analysis. We demonstrate that using WRTDS for flow-normalization removed the noise arising from annual precipitation variability and makes tributary nutrient trend evaluation more straightforward.

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