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Simulating Ensembles Of Source Water Quality Using A K-nearest Neighbor Resampling Approach

机译:使用K近邻重采样方法模拟源水质量集合

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摘要

Climatological, geological, and water management factors can cause significant variability in surface water quality. As drinking water quality standards become more stringent, the ability to quantify the variability of source water quality becomes more important for decision-making and planning in water treatment for regulatory compliance. However, paucity of long-term water quality data makes it challenging to apply traditional simulation techniques. To overcome this limitation, we have developed and applied a robust nonparametric K-nearest neighbor (K-nn) bootstrap approach utilizing the United States Environmental Protection Agency's Information Collection Rule (ICR) data. In this technique, first an appropriate "feature vector" is formed from the best available explanatory variables. The nearest neighbors to the feature vector are identified from the ICR data and are resampled using a weight function. Repetition of this results in water quality ensembles, and consequently the distribution and the quantification of the variability. The main strengths of the approach are its flexibility, simplicity, and the ability to use a large amount of spatial data with limited temporal extent to provide water quality ensembles for any given location. We demonstrate this approach by applying it to simulate monthly ensembles of total organic carbon for two utilities in the U.S. with very different watersheds and to alkalinity and bromide at two other U.S. utilities.
机译:气候,地质和水管理因素可能会导致地表水质量发生重大变化。随着饮用水水质标准的日益严格,对源水水质变化进行量化的能力对于水处理的决策和规划以达到法规遵从性变得越来越重要。但是,由于缺乏长期的水质数据,因此难以应用传统的模拟技术。为克服此限制,我们利用美国环境保护局的信息收集规则(ICR)数据开发并应用了健壮的非参数K最近邻(K-nn)引导程序方法。在这种技术中,首先从最佳可用的解释变量中形成一个适当的“特征向量”。从ICR数据中识别出特征向量最近的邻居,并使用权重函数对其进行重采样。重复执行此操作将导致水质聚集,并因此导致变异性的分布和量化。该方法的主要优势在于它的灵活性,简单性以及在有限的时间范围内使用大量空间数据为任何给定位置提供水质集合的能力。我们通过将其应用于模拟分水岭截然不同的美国两家公用事业公司每月总有机碳总量以及另外两个美国公用事业公司的碱度和溴化物总量来证明这种方法。

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  • 来源
    《Environmental Science & Technology》 |2009年第5期|1407-1411|共5页
  • 作者单位

    Civil, Environmental, and Architectural EngineeringrnDepartment, University of Colorado, 428 UCB, Boulder,;

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

  • 入库时间 2022-08-17 14:04:17

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