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Dynamic regression modeling of daily nitrate-nitrogen concentrations in a large agricultural watershed

机译:大型农业流域日硝态氮浓度的动态回归模型

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摘要

Nitrate-nitrogen concentrations in rivers represent challenges for water supplies that use surface water sources. Nitrate concentrations are often modeled using time-series approaches, but previous efforts have typically relied on monthly time steps. In this study, we developed a dynamic regression model of daily nitrate concentrations in the Raccoon River, Iowa, that incorporated contemporaneous and lags of precipitation and discharge occurring at several locations around the basin. Results suggested that 95 % of the variation in daily nitrate concentrations measured at the outlet of a large agricultural watershed can be explained by time-series patterns of precipitation and discharge occurring in the basin. Discharge was found to be a more important regression variable than precipitation in our model but both regression parameters were strongly correlated with nitrate concentrations. The time-series model was consistent with known patterns of nitrate behavior in the watershed, success-folly identifying contemporaneous dilution mechanisms from higher relief and urban areas of the basin while incorporating the delayed contribution of nitrate from tile-drained regions in a lagged response. The first difference of the model errors were modeled as an AR (16) process and suggest that daily nitrate concentration changes remain temporally correlated for more than 2 weeks although temporal correlation was stronger in the first few days before tapering off. Consequently, daily nitrate concentrations are non-stationary, i.e. of strong memory. Using time-series models to reliably forecast daily nitrate concentrations in a river based on patterns of precipitation and discharge occurring in its basin may be of great interest to water suppliers.
机译:河流中的硝酸盐氮浓度代表着使用地表水源的供水面临的挑战。硝酸盐浓度通常使用时间序列方法建模,但是以前的工作通常依赖于每月的时间步长。在这项研究中,我们建立了爱荷华州浣熊河每日硝酸盐浓度的动态回归模型,该模型结合了盆地周围多个地点同时发生的降水和流量滞后现象。结果表明,在一个大型农业流域出口处测得的每日硝酸盐浓度的95%变化可以用流域内降水和流量的时间序列模式来解释。在我们的模型中,流量被发现是比降水更重要的回归变量,但是两个回归参数都与硝酸盐浓度密切相关。时间序列模型与流域中硝酸盐行为的已知模式相吻合,成功愚蠢地确定了盆地较高地势和市区内的同期稀释机制,同时将瓷砖排水区域中硝酸盐的延迟贡献纳入了滞后响应。模型误差的第一个差异被模型化为AR(16)过程,表明每日硝酸盐浓度变化在时间上仍保持超过2周的时间相关性,尽管在逐渐减少之前的头几天时间相关性更强。因此,每天的硝酸盐浓度是不稳定的,即具有很强的记忆力。供水商可能会非常感兴趣的是,使用时间序列模型基于流域内降水和流量的模式可靠地预测河流中的每日硝酸盐浓度。

著录项

  • 来源
    《Environmental Monitoring and Assessment》 |2013年第6期|4605-4617|共13页
  • 作者单位

    Department of Statistics and Actuarial Science, University of Iowa, Iowa City, IA, USA;

    Iowa Geological and Water Survey, 109 Trowbridge Hall, Iowa City, IA 52242-1319, USA;

    Department of Statistics and Actuarial Science, University of Iowa, Iowa City, IA, 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

    Nitrate nitrogen; Time series; ARIMA; Watershed; Regression;

    机译:硝酸盐氮;时间序列;ARIMA;分水岭;回归;
  • 入库时间 2022-08-17 13:27:12

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