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首页> 外文期刊>Environmental Modelling & Software >Sensitivity and uncertainty analysis of PnET-BGC to inform the development of Total Maximum Daily Loads (TMDLs) of acidity in the Great Smoky Mountains National Park
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Sensitivity and uncertainty analysis of PnET-BGC to inform the development of Total Maximum Daily Loads (TMDLs) of acidity in the Great Smoky Mountains National Park

机译:PnET-BGC的敏感性和不确定性分析,可为大雾山国家公园的酸度总最大日负荷(TMDL)的发展提供信息

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摘要

The biogeochemical model, PnET-BGC, has been used to evaluate the long-term acid-base response of surface waters to changes in atmospheric acid deposition. We propose a methodology to identify the input factors of greatest model sensitivity and propagate uncertainty of input factors to model outputs. The quantified model uncertainty enabled application of an "exceedance probability" approach to determine allowable atmospheric deposition in the form of Total Maximum Daily Loads (TMDLs) for twelve acid-impaired streams in Great Smoky Mountains National Park. Results indicate that acidification of surface water resulting from acidic deposition has been substantial. Even if current atmospheric deposition is reduced to pre-industrial levels, only one of the twelve impaired streams might be recovered to its site-specific standard by 2050. Our sensitivity analysis indicates that the model is most sensitive to precipitation quantity, air temperature and calcium weathering rate, and suggests further research to improve characterization of these inputs. (C) 2017 Elsevier Ltd. All rights reserved.
机译:生物地球化学模型PnET-BGC已用于评估地表水对大气酸沉降变化的长期酸碱响应。我们提出一种方法来识别具有最大模型敏感性的输入因子,并将输入因子的不确定性传播到模型输出。量化的模型不确定性使得可以应用“超出概率”方法来确定大烟山国家公园中十二种酸弱流的总最大日负荷量(TMDL)。结果表明,由酸性沉积导致的地表水酸化作用已经很明显。即使将当前的大气沉积减少到工业化之前的水平,到2050年,十二种受损流中只有一种可能会恢复到其特定地点的标准。我们的敏感性分析表明,该模型对降水量,气温和钙最敏感。风化率,并建议进一步研究以改善这些输入的特性。 (C)2017 Elsevier Ltd.保留所有权利。

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