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Data management of river water quality data: A semi-automatic procedure for data validation

机译:河流水质数据的数据管理:半自动数据验证程序

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摘要

Monitoring networks typically generate large amounts of data. Before the data can be added to the database, they have to be validated. In this paper, a semi-automatic procedure is presented to validate river water quality data. On the basis of historical data, additive models are established to predict new observations and to construct prediction intervals (PI's). A new observation is accepted if it is located in the interval. The coverage of the prediction intervals and its power to detect anomalous data are assessed in a simulation study. The method is illustrated on two case studies in which the method detected abnormal nitrate concentrations in the water body provoked by a dry summer which was followed by an extreme winter period. The case studies also show that similar to classical multivariate outlier detection tools, the semi-automatic procedure allows the detection of suspicious observations lying at the edges as well as observations lying at the center of the univariate distribution of the observations, but, without having to impose linear relationships typically associated with these classical methods.
机译:监视网络通常会生成大量数据。在将数据添加到数据库之前,必须对其进行验证。本文提出了一种半自动程序来验证河流水质数据。在历史数据的基础上,建立附加模型以预测新的观测值并构建预测间隔(PI)。如果新的观测值位于间隔中,则将接受该观测值。在模拟研究中评估了预测间隔的覆盖范围及其检测异常数据的能力。在两个案例研究中说明了该方法,在该案例中,该方法检测到由于干燥的夏季和随后的极端冬季引起的水体中硝酸盐浓度异常。案例研究还表明,类似于经典的多元离群值检测工具,半自动过程允许检测位于边缘的可疑观测值以及位于观测值的单变量分布中心的观测值,但不必施加通常与这些经典方法相关的线性关系。

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