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预测圣塔莫尼卡海滩水质:五种不同模型用于公共通知不安全游泳条件的评估。

Predicting water quality at Santa Monica Beach: evaluation of five different models for public notification of unsafe swimming conditions.

机构信息

Department of Civil and Environmental Engineering, Environmental and Water Studies, Stanford University, Stanford, CA 94305, USA.

Institute of the Environment and Sustainability, University of California, Los Angeles, CA 90095, USA.

出版信息

Water Res. 2014 Dec 15;67:105-17. doi: 10.1016/j.watres.2014.09.001. Epub 2014 Sep 16.

Abstract

Bathing beaches are monitored for fecal indicator bacteria (FIB) to protect swimmers from unsafe conditions. However, FIB assays take ∼24 h and water quality conditions can change dramatically in that time, so unsafe conditions cannot presently be identified in a timely manner. Statistical, data-driven predictive models use information on environmental conditions (i.e., rainfall, turbidity) to provide nowcasts of FIB concentrations. Their ability to predict real time FIB concentrations can make them more accurate at identifying unsafe conditions than the current method of using day or older FIB measurements. Predictive models are used in the Great Lakes, Hong Kong, and Scotland for beach management, but they are presently not used in California - the location of some of the world's most popular beaches. California beaches are unique as point source pollution has generally been mitigated, the summer bathing season receives little to no rainfall, and in situ measurements of turbidity and salinity are not readily available. These characteristics may make modeling FIB difficult, as many current FIB models rely heavily on rainfall or salinity. The current study investigates the potential for FIB models to predict water quality at a quintessential California Beach: Santa Monica Beach. This study compares the performance of five predictive models, multiple linear regression model, binary logistic regression model, partial least square regression model, artificial neural network, and classification tree, to predict concentrations of summertime fecal coliform and enterococci concentrations. Past measurements of bacterial concentration, storm drain condition, and tide level are found to be critical factors in the predictive models. The models perform better than the current beach management method. The classification tree models perform the best; for example they correctly predict 42% of beach postings due to fecal coliform exceedances during model validation, as compared to 28% by the current method. Artificial neural network is the second best model which minimizes the number of incorrect beach postings. The binary logistic regression model also gives promising results, comparable to classification tree, by adjusting the posting decision thresholds to maximize correct beach postings. This study indicates that predictive models hold promise as a beach management tool at Santa Monica Beach. However, there are opportunities to further refine predictive models.

摘要

浴场会监测粪便指示菌(FIB),以保护游泳者免受不安全条件的影响。然而,FIB 检测需要大约 24 小时,在此期间水质条件可能会发生巨大变化,因此目前无法及时识别不安全条件。统计的、数据驱动的预测模型使用环境条件(即降雨、浊度)的信息来提供 FIB 浓度的实时预报。与当前使用当日或更早的 FIB 测量值的方法相比,它们预测实时 FIB 浓度的能力可以使它们更准确地识别不安全条件。预测模型已在五大湖、香港和苏格兰用于海滩管理,但目前尚未在加利福尼亚州使用——加利福尼亚州拥有一些世界上最受欢迎的海滩。加利福尼亚海滩是独特的,因为点源污染已得到基本缓解,夏季游泳季节几乎没有降雨,而且现场测量的浊度和盐度不易获得。这些特征可能使 FIB 建模变得困难,因为许多当前的 FIB 模型严重依赖降雨或盐度。本研究调查了在加利福尼亚州典型海滩——圣莫尼卡海滩使用 FIB 模型预测水质的潜力。本研究比较了五种预测模型的性能,包括多元线性回归模型、二元逻辑回归模型、偏最小二乘回归模型、人工神经网络和分类树,以预测夏季粪大肠菌群和肠球菌浓度。过去的细菌浓度、雨水渠状况和潮汐水平的测量被发现是预测模型的关键因素。这些模型的性能优于当前的海滩管理方法。分类树模型表现最好;例如,在模型验证期间,它们正确预测了 42%的因粪大肠菌群超标而导致的海滩关闭,而当前方法的正确率为 28%。人工神经网络是第二好的模型,通过调整发布决策阈值以最大限度地增加正确的海滩发布次数,最小化错误的海滩发布次数。本研究表明,预测模型作为圣莫尼卡海滩的海滩管理工具具有很大的潜力。然而,还有机会进一步改进预测模型。

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