4.7 Article

El-Nino/Southern Oscillation (ENSO) influences on monthly NO3 load and concentration, stream flow and precipitation in the Little River Watershed, Tifton, Georgia (GA)

Journal

JOURNAL OF HYDROLOGY
Volume 381, Issue 3-4, Pages 352-363

Publisher

ELSEVIER
DOI: 10.1016/j.jhydrol.2009.12.008

Keywords

ENSO; El Nino; Wavelets; Nutrients; Hydrology; Southeast US

Funding

  1. National Oceanic and Atmospheric Administration - NOAA - Climate Program Office (NOAA-CPO) [NJ17RJ1226]
  2. US Department of Agriculture - Cooperative State Research, Education, and Extension Services (USDA-CSREES) [200938890-19911]
  3. Southeast Climate Consortium (SECC)

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As climate variability increases, it is becoming increasingly critical to find predictable patterns that can still be identified despite overall uncertainty. The El-Nino/Southern Oscillation is the best known pattern. Its global effects on weather, hydrology, ecology and human health have been well documented. Climate variability manifested through ENSO has strong effects in the southeast United States, seen in precipitation and stream flow data. However, climate variability may also affect water quality in nutrient concentrations and loads, and have impacts on ecosystems, health, and food availability in the southeast. In this research, we establish a teleconnection between ENSO and the Little River Watershed (LRW), GA., as seen in a shared 3-7 year mode of variability for precipitation, stream flow, and nutrient load time series. Univariate wavelet analysis of the NINO 3.4 index of sea surface temperature (SST) and of precipitation, stream flow, NO3 concentration and load time series from the watershed was used to identify common signals. Shared 3-7 year modes of variability were seen in all variables, most strongly in precipitation, stream flow and nutrient load in strong El Nino years. The significance of shared 3-7 year periodicity over red noise with 95% confidence in SST and precipitation, stream flow, and NO3 load time series was confirmed through cross-wavelet and wavelet-coherence transforms, in which common high power and covariance were computed for each set of data. The strongest 3-7 year shared power was seen in SST and stream flow data, while the strongest co-variance was seen in SST and NO3 load data. The strongest cross-correlation was seen as a positive value between the NINO 3.4 and NO3 load with a three-month lag. The teleconnection seen in the LRW between the NINO 3.4 index and precipitation, stream flow, and NO3 load can be utilized in a model to predict monthly nutrient loads based on short-term climate variability, facilitating management in high risk seasons. (C) 2009 Elsevier B.V. All rights reserved.

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