Connecticut Department of Environmental Protection, 79 Elm Street, Hartford, CT 06106, USA.
Environ Manage. 2013 Jun;51(6):1274-83. doi: 10.1007/s00267-013-0033-9. Epub 2013 Apr 23.
Bioassessments have formed the foundation of many water quality monitoring programs throughout the United States. Like many state water quality programs, Connecticut has developed a relational database containing information about species richness, species composition, relative abundance, and feeding relationships among macroinvertebrates present in stream and river systems. Geographic Information Systems can provide estimates of landscape condition and watershed characteristics and when combined with measurements of stream biology, provide a useful visual display of information that is useful in a management context. The objective of our study was to estimate the stream health for all wadeable stream kilometers in Connecticut using a combination of macroinvertebrate metrics and landscape variables. We developed and evaluated models using an information theoretic approach to predict stream health as measured by macroinvertebrate multimetric index (MMI) and identified the best fitting model as a three variable model, including percent impervious land cover, a wetlands metric, and catchment slope that best fit the MMI scores (adj-R (2) = 0.56, SE = 11.73). We then provide examples of how modeling can augment existing programs to support water management policies under the Federal Clean Water Act such as stream assessments and anti-degradation.
生物评估已成为美国许多水质监测计划的基础。与许多州的水质计划一样,康涅狄格州开发了一个关系数据库,其中包含有关溪流和河流系统中存在的物种丰富度、物种组成、相对丰度以及食性关系的信息。地理信息系统可以提供景观状况和流域特征的估计值,并且当与溪流生物学测量值结合使用时,可以提供有用的信息可视化显示,这在管理上下文中非常有用。我们的研究目的是使用宏观生物指标和景观变量来估算康涅狄格州所有可涉水溪流公里的溪流健康状况。我们使用信息论方法开发和评估模型,以预测由宏观生物多指标指数 (MMI) 衡量的溪流健康状况,并确定最适合的模型为包括不透水土地覆被百分比、湿地指标和流域坡度在内的三个变量模型,该模型最能拟合 MMI 得分 (adj-R (2) = 0.56, SE = 11.73)。然后,我们提供了一些示例,说明建模如何增强现有的计划,以支持联邦清洁水法案下的水管理政策,例如溪流评估和防止退化。