A uncertainty analysis of NPS modeling A comprehensive evaluation of input data-induced uncertainty in nonpoint source pollution modeling A uncertainty analysis of NPS modeling

  • Chen L
  • Gong Y
  • Shen Z
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Abstract

Watershed models have been used extensively for quantifying nonpoint source (NPS) pollution, but few studies have been conducted on the error-transitivity from different input data sets to NPS modeling. In this paper, the effects of four input data, including rainfall, digital elevation models (DEMs), land use maps, and the amount of fertilizer, on 5 NPS simulation were quantified and compared. A systematic input-induced uncertainty was investigated using watershed model for phosphorus load prediction. Based on the results, the rain gauge density resulted in the largest model uncertainty, followed by DEMs, whereas land use and fertilizer amount exhibited limited impacts. The mean coefficient of variation for errors in single rain gauges-, multiple gauges-, ASTER 10 GDEM-, NFGIS DEM-, land use-, and fertilizer amount information was 0.390, 0.274, 0.186, 0.073, 0.033 and 0.005, respectively. The use of specific input information, such as key gauges, is also highlighted to achieve the required model accuracy. In this sense, these results provide valuable information to other model-based studies for the control of prediction uncertainty.

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Chen, L., Gong, Y., & Shen, Z. (2015). A uncertainty analysis of NPS modeling A comprehensive evaluation of input data-induced uncertainty in nonpoint source pollution modeling A uncertainty analysis of NPS modeling. HESSD Earth Syst. Sci. Discuss, 12(12), 11421–11447. Retrieved from www.hydrol-earth-syst-sci-discuss.net/12/11421/2015/

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