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Predictive statistical models linking antecedent meteorological conditions and waterway bacterial contamination in urban waterways

机译:预测性统计模型将先前的气象条件与城市水道中的水道细菌污染联系起来

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摘要

Although the relationships between meteorological conditions and waterway bacterial contamination are being better understood, statistical models capable of fully leveraging these links have not been developed for highly urbanized settings. We present a hierarchical Bayesian regression model for predicting transient fecal indicator bacteria contamination episodes in urban waterways. Canals, creeks, and rivers of the New York City harbor system are used to examine the model. The model configuration facilitates the hierarchical structure of the underlying system with weekly observations nested within sampling sites, which in turn were nested inside of the harbor network. Models are compared using cross-validation and a variety of Bayesian and classical model fit statistics. The uncertainty of predicted enterococci concentration values is reflected by sampling from the posterior predictive distribution. Issuing predictions with the uncertainty reasonably reflected allows a water manager or a monitoring agency to issue warnings that better reflect the underlying risk of exposure. A model using only antecedent meteorological conditions is shown to correctly classify safe and unsafe levels of enterococci with good accuracy. The hierarchical Bayesian regression approach is most valuable where transient fecal indicator bacteria contamination is problematic and drainage network data are scarce. (C) 2015 Elsevier Ltd. All rights reserved.
机译:尽管人们对气象条件与水道细菌污染之间的关系有了更好的了解,但对于高度城市化的环境,尚未开发出能够充分利用这些联系的统计模型。我们提出了一种分级贝叶斯回归模型,用于预测城市水道中的暂态粪便指示剂细菌污染事件。使用纽约市港口系统的运河,小河和河流来检查模型。模型配置通过嵌套在采样站点内的每周观测值促进了底层系统的分层结构,这些观测站点又嵌套在港口网络内部。使用交叉验证以及各种贝叶斯和经典模型拟合统计量对模型进行比较。预测肠球菌浓度值的不确定性通过后验预测分布中的采样反映出来。在合理反映不确定性的情况下发布预测可以使水管理人员或监测机构发布警告,以更好地反映潜在的暴露风险。显示仅使用先前气象条件的模型可以正确准确地对肠球菌的安全和不安全水平进行分类。当短暂的粪便指示菌污染存在问题且排水网络数据稀缺时,分级贝叶斯回归方法最有价值。 (C)2015 Elsevier Ltd.保留所有权利。

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