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首页> 外文期刊>Water resources research >Predicting natural base-flow stream water chemistry in the western United States
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Predicting natural base-flow stream water chemistry in the western United States

机译:预测美国西部的自然基流溪流水化学

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摘要

Robust predictions of stream solute concentrations expected under natural (reference) conditions would help establish more realistic water quality standards and improve stream ecological assessments. Models predicting solute concentrations from environmental factors would also help identify the relative importance of different factors that influence water chemistry. Although data are available describing the major factors controlling water chemistry (i.e., geology, climate, atmospheric deposition, soils, vegetation, topography), geologic maps do not adequately convey how rocks vary in their chemical and physical properties. We addressed this issue by associating rock chemical and physical properties with geological map units to produce continuous maps of percentages of CaO, MgO, S, uniaxial compressive strength, and hydraulic conductivity for western United States lithologies. We used catchment summaries of these geologic properties and other environmental factors to develop multiple linear regression (LR) and random forest (RF) models to predict base flow electrical conductivity (EC), acid neutralization capacity (ANC), Ca, Mg, and SO_4. Models were derived from observations at 1414 reference-quality streams. RF models were superior to LR models, explaining 71% of the variance in EC, 61% in ANC, 92% in Ca, 58% in Mg, and 74% in SO_4 when assessed with independent observations. The root-mean-square error for predictions on validation sites were all < 11% of the range of observed values. The relative importance of different environmental factors in predicting stream chemistry varied among models, but on average rock chemistry > temperature > precipitation > soil = atmospheric deposition > vegetation > amount of rock/water contact > topography.
机译:在自然(参考)条件下对河流溶质浓度的可靠预测将有助于建立更现实的水质标准并改善河流生态学评估。从环境因素预测溶质浓度的模型也将有助于确定影响水化学的不同因素的相对重要性。尽管可获得描述控制水化学的主要因素的数据(即地质,气候,大气沉积,土壤,植被,地形),但地质图仍不足以传达岩石化学和物理特性的变化情况。我们通过将岩石化学和物理属性与地质图单元相关联来解决此问题,以生成美国西部岩性的CaO,MgO,S,单轴抗压强度和水力传导率百分比的连续图。我们使用这些地质特征和其他环境因素的汇水总汇来开发多元线性回归(LR)和随机森林(RF)模型,以预测基本流电导率(EC),酸中和能力(ANC),Ca,Mg和SO_4 。模型是从1414参考质量流的观察结果中得出的。 RF模型优于LR模型,通过独立观察评估后,可以解释EC的71%,ANC的61%,Ca的92%,Mg的58%和SO_4的74%的方差。验证位点上的预测的均方根误差均小于观察值范围的11%。不同环境因素在预测河流化学中的相对重要性因模型而异,但平均岩石化学>温度>降水>土壤=大气沉降>植被>岩石/水接触量>地形。

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  • 来源
    《Water resources research》 |2012年第2期|p.W02504.1-W02504.19|共19页
  • 作者单位

    Western Center For Monitoring and Assessment of Freshwater Ecosystems, Department of Watershed Sciences, and Ecology Center, Utah State University Logan, Utah 84322-5210,USA;

    Western Center For Monitoring and Assessment of Freshwater Ecosystems, Department of Watershed Sciences, and Ecology Center, Utah State University Logan, Utah 84322-5210,USA;

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