Department of Civil and Environmental Engineering, Michigan State University , 1449 Engineering Research Court, East Lansing, Michigan 48824, United States.
U.S. Geological Survey, Great Lakes Science Center, Lake Michigan Ecological Research Station , 1574 N. County Road, 300 E. Chesterton, Indiana 46304, United States.
Environ Sci Technol. 2016 Mar 1;50(5):2442-9. doi: 10.1021/acs.est.5b05378. Epub 2016 Feb 15.
Statistical and mechanistic models are popular tools for predicting the levels of indicator bacteria at recreational beaches. Researchers tend to use one class of model or the other, and it is difficult to generalize statements about their relative performance due to differences in how the models are developed, tested, and used. We describe a cooperative modeling approach for freshwater beaches impacted by point sources in which insights derived from mechanistic modeling were used to further improve the statistical models and vice versa. The statistical models provided a basis for assessing the mechanistic models which were further improved using probability distributions to generate high-resolution time series data at the source, long-term "tracer" transport modeling based on observed electrical conductivity, better assimilation of meteorological data, and the use of unstructured-grids to better resolve nearshore features. This approach resulted in improved models of comparable performance for both classes including a parsimonious statistical model suitable for real-time predictions based on an easily measurable environmental variable (turbidity). The modeling approach outlined here can be used at other sites impacted by point sources and has the potential to improve water quality predictions resulting in more accurate estimates of beach closures.
统计和机理模型是预测休闲海滩指示菌水平的常用工具。研究人员倾向于使用其中一种模型,由于模型的开发、测试和使用方式不同,很难对它们的相对性能进行概括性的陈述。我们描述了一种用于受点源影响的淡水海滩的合作建模方法,其中从机理建模中得出的见解被用于进一步改进统计模型,反之亦然。统计模型为评估机理模型提供了基础,机理模型通过使用概率分布在源头上生成高分辨率时间序列数据、基于观测电导率的长期“示踪剂”输运建模、更好地同化气象数据以及使用非结构化网格更好地解析近岸特征,从而得到进一步改进。这种方法改进了两类模型的性能,包括一个基于易于测量的环境变量(浊度)进行实时预测的简约统计模型。这里概述的建模方法可用于受点源影响的其他地点,并有可能改善水质预测,从而更准确地估计海滩关闭。