首页> 外文期刊>The Science of the Total Environment >Developing, cross-validating and applying regression models to predict the concentrations of faecal indicator organisms in coastal waters under different environmental scenarios
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Developing, cross-validating and applying regression models to predict the concentrations of faecal indicator organisms in coastal waters under different environmental scenarios

机译:开发,交叉验证和应用回归模型来预测不同环境情景下沿海水域中粪便指示生物的浓度

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This study developed, cross-validated and applied a regression-based model to predict concentrations of faecal indicator organisms (FIOs) under different environmental conditions in the North and South bays of Santa Catarina, South of Brazil. The model was developed using a database of FIO concentrations in seawater sampled at 50 sites and the validation was performed using a different database by comparing 288 pairs of measured and modelled results for 15 sites. The index of agreement between the model outputs and the FIO concentrations measured during the validation period was 66%; the mean average error was 0.43 log10and the root mean square error was 0.58 log10MPN.100mL−1. These validation results indicate that the model provides a fair representation of the FIO contamination in the bays for the meteorological conditions under which the model was trained. The simulation of different scenarios showed that under typical levels of resident human population in the catchments and median rainfall and solar radiation conditions, the median FIO concentration in the bays is 0.4 MPN.100mL−1. Under extreme meteorological conditions, the combined effect of high rainfall and low solar radiation increased FIO concentrations up to 5 log10MPN.100mL−1. The simulated scenarios also show that increases in resident population during the summer tourist season and average rainfall concentrations do not increase median FIO concentrations in the bays relative to periods of time with average population, possibly because of higher bacterial die-off in the waters. The models can be an effective tool for management of human health risks in bathing and shellfish waters impacted by sewage pollution.
机译:这项研究开发,交叉验证并应用了基于回归的模型,以预测巴西南部圣卡塔琳娜州北部和南部海湾在不同环境条件下的粪便指示生物浓度。该模型是使用50个站点采样的海水中FIO浓度的数据库开发的,并且通过比较15个站点的288对测量和建模结果,使用不同的数据库进行了验证。在验证期间,模型输出与FIO浓度之间的一致性指数为66%;平均误差为0.43 log10,均方根误差为0.58 log10MPN.100mL-1。这些验证结果表明,该模型为训练该模型的气象条件提供了海湾中FIO污染的合理表示。不同情景的模拟表明,在集水区的典型常住人口水平以及中位数降雨和太阳辐射条件下,海湾中的FIO浓度中位数为0.4 MPN.100mL-1。在极端的气象条件下,高降雨和低太阳辐射的共同作用使FIO浓度增加到5 log10MPN.100mL-1。模拟的情景还表明,相对于平均人口时期,夏季旅游季节中常住人口的增加和平均降雨浓度不会增加海湾中位FIO的浓度,这可能是由于水中细菌的死亡增加所致。该模型可以成为管理受污水污染影响的沐浴和贝类水中人类健康风险的有效工具。

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