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Development of error correction techniques for nitrate-N load estimation models

机译:硝态氮负荷估算模型误差修正技术的发展

摘要

Excess nutrient loads carried by streams and rivers are a great concern for environmental resource managers. In agricultural regions, excess loads are transported downstream to receiving water bodies, potentially causing algal blooms, which could lead to numerous ecological problems. To better understand nutrient load transport, and to develop appropriate water management plans, it is important to have accurate estimates of annual nutrient loads. This study used a Monte Carlo sub-sampling method and error-corrected statistical models to estimate annual nitrate-N loads from two watersheds in central Illinois. The performance of three load estimation methods (the seven-parameter log-linear model, the ratio estimator, and the flow-weighted averaging estimator) applied at one-, two-, four-, six-, and eight-week sampling frequencies were compared. Five error correction techniques; the existing composite method, and four new error correction techniques developed in this study; were applied to each combination of sampling frequency and load estimation method. On average, the most accurate error reduction technique, (proportional rectangular) resulted in 15% and 30% more accurate load estimates when compared to the most accurate uncorrected load estimation method (ratio estimator) for the two watersheds. Using error correction methods, it is possible to design more cost-effective monitoring plans by achieving the same load estimation accuracy with fewer observations. Finally, the optimum combinations of monitoring threshold and sampling frequency that minimizes the number of samples required to achieve specified levels of accuracy in load estimation were determined. For one- to three-weeks sampling frequencies, combined threshold/fixed-interval monitoring approaches produced the best outcomes, while fixed-interval-only approaches produced the most accurate results for four- to eight-weeks sampling frequencies.
机译:溪流和河流携带的过多养分负荷是环境资源管理者极为关注的问题。在农业地区,多余的负载向下游输送到接收水体,可能导致藻华,这可能导致许多生态问题。为了更好地理解养分负荷的输送,并制定适当的水管理计划,对年度养分负荷的准确估算非常重要。这项研究使用了蒙特卡洛二次抽样方法和经过误差校正的统计模型来估算伊利诺伊州中部两个流域的年度硝酸盐氮负荷。在一周,两周,四周,六周和八周的采样频率下应用三种负载估算方法(七参数对数线性模型,比率估算器和流量加权平均估算器)的性能分别为比较。五种纠错技术;研究中使用了现有的复合方法以及四种新的纠错技术;分别应用于采样频率和负载估计方法的每种组合。平均而言,与两个流域的最准确的未校正负荷估算方法(比率估算器)相比,最准确的减少误差的技术(比例矩形)导致准确的负荷估算高出15%和30%。使用纠错方法,可以通过减少观察次数来达到相同的负荷估算精度来设计更具成本效益的监视计划。最后,确定了监视阈值和采样频率的最佳组合,该组合可以最大程度地减少实现负载估计的指定精度级别所需的样本数量。对于一到三周的采样频率,组合的阈值/固定间隔监视方法产生了最佳结果,而仅固定间隔的方法对于四到八周的采样频率产生了最准确的结果。

著录项

  • 作者

    Verma Siddhartha;

  • 作者单位
  • 年度 2010
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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