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Using Regression Tree Analysis to Improve Predictions of Low-Flow Nitrate and Chloride in Willamette River Basin Watersheds

机译:使用回归树分析改进Willamette河流域流域低流量硝酸盐和氯化物的预测

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摘要

The use of regression tree analysis is examined as a tool to evaluate hydrologic and land use factors that affect nitrate and chloride stream concentrations during low-flow conditions. Although this data mining technique has been used to assess a range of ecological parameters, it has not previously been used for stream water quality analysis. Regression tree analysis was conducted on nitrate and chloride data from 71 watersheds in the Willamette River Basin to determine whether this method provides a greater predictive ability compared to standard multiple linear regression, and to elucidate the potential roles of controlling mechanisms. Metrics used in the models included a variety of watershed-scale landscape indices and land use classifications. Regression tree analysis significantly enhanced model accuracy over multiple linear regression, increasing nitrate R2 values from 0.38 to 0.75 and chloride R2 values from 0.64 to 0.85 and as indicated by the AAIC value. These improvements are primarily attributed to the ability for regression trees to more effectively handle interactions and manage non-linear functions associated with watershed heterogeneity within the basin. Whereas hydrologic factors governed the conservative chloride tracer in the model, land use dominated control of nitrate concentrations. Watersheds containing higher agricultural activity did not necessarily yield high nitrate concentrations, but agricultural areas combined with either small proportions of forested land or greater urbanization generated nitrate levels far exceeding water quality standards. Although further refinements are recommended, we conclude that regression tree analysis presents water resource managers a promising tool that improves on the predictive ability of standard statistical methods, provides insight into controlling mechanisms, and helps identify catchment characteristics associated with water quality impairment.
机译:使用回归树分析作为评估低流量条件下影响硝酸盐和氯化物水流浓度的水文和土地利用因素的工具已得到检验。尽管此数据挖掘技术已用于评估一系列生态参数,但以前尚未用于溪流水质分析。对威拉米特河流域71个流域的硝酸盐和氯化物数据进行了回归树分析,以确定与标准多元线性回归相比,该方法是否具有更大的预测能力,并阐明了控制机制的潜在作用。模型中使用的度量标准包括各种流域尺度的景观指数和土地利用分类。回归树分析比多重线性回归显着提高了模型准确性,硝酸盐R2值从0.38增加到0.75,氯化物R2值从0.64增加到0.85,由AIC值指示。这些改进主要归因于回归树能够更有效地处理相互作用和管理与流域内流域异质性相关的非线性功能的能力。尽管水文因素决定了模型中保守的氯化物示踪剂,但土地使用控制了硝酸盐浓度。农业活动活跃的流域不一定产生较高的硝酸盐浓度,但是农业地区加上林地的比例很小或城市化程度提高,所产生的硝酸盐水平远远超过了水质标准。尽管建议进行进一步的改进,但我们得出的结论是,回归树分析为水资源管理者提供了一种有前途的工具,可以改善标准统计方法的预测能力,提供对控制机制的洞察力,并有助于识别与水质损害相关的集水区特征。

著录项

  • 来源
    《Environmental Management》 |2010年第5期|p.771-780|共10页
  • 作者单位

    Department of Civil and Environmental Engineering,Washington State University, 118 Sloan Hall,Pullman, WA 99164-2910, USA;

    Department of Biological Systems Engineering,Washington State University, 202 LJ Smith Hall,Pullman, WA 99164-6120, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    watershed; regression tree; water quality; nitrate; chloride; hydrology;

    机译:分水岭回归树水质;硝酸盐氯化物;水文;
  • 入库时间 2022-08-17 13:29:40

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