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模拟人为和环境因素对美国中部地区MERIS探测到的淡水有害藻华发展的影响

Modeling Anthropogenic and Environmental Influences on Freshwater Harmful Algal Bloom Development Detected by MERIS Over the Central United States.

作者信息

Iiames J S, Salls W B, Mehaffey M H, Nash M S, Christensen J R, Schaeffer B A

机构信息

Center for Public Health and Environmental Assessment U.S. Environmental Protection Agency Office of Research and Development Research Triangle Park NC USA.

Center for Environmental Measurement and Modeling U.S. Environmental Protection Agency Office of Research and Development Research Triangle Park NC USA.

出版信息

Water Resour Res. 2021 Oct;57(10):e2020WR028946. doi: 10.1029/2020WR028946. Epub 2021 Oct 19.

Abstract

Human and ecological health have been threatened by the increase of cyanobacteria harmful algal blooms (cyanoHABs) in freshwater systems. Successful mitigation of this risk requires understanding the factors driving cyanoHABs at a broad scale. To inform management priorities and decisions, we employed random forest modeling to identify major cyanoHAB drivers in 369 freshwater lakes distributed across 15 upper Midwest states during the 2011 bloom season (July-October). We used Cyanobacteria Index (CI_cyano)-A remotely sensed product derived from the MEdium Resolution Imaging Spectrometer (MERIS) aboard the European Space Agency's Envisat satellite-as the response variable to obtain variable importance metrics for 75 landscape and lake physiographic predictor variables. Lakes were stratified into high and low elevation categories to further focus CI_cyano variable importance identification by anthropogenic and natural influences. "High elevation" watershed land cover (LC) was primarily forest or natural vegetation, compared with "low elevation" watersheds LC dominated by anthropogenic landscapes (e.g., agriculture and municipalities). We used the top ranked 25 Random Forest variables to create a classification and regression tree (CART) for both low and high elevation lake designations to identify variable thresholds for possible management mitigation. Mean CI_cyano was 3 times larger for "low elevation" lakes than for "high elevation" lakes, with both mean values exceeding the "High" World Health Organization recreational guidance/action level threshold for cyanobacteria (100,000 cells/mL). Agrarian-related variables were prominent across all 369 lakes and low elevation lakes. High elevation lakes showed more influence of lakeside LC than for the low elevation lakes.

摘要

淡水系统中蓝藻有害藻华(cyanoHABs)的增加已对人类健康和生态健康构成威胁。要成功降低这种风险,需要在广泛范围内了解驱动cyanoHABs的因素。为了为管理重点和决策提供依据,我们采用随机森林建模,以确定2011年藻华季节(7月至10月)分布在中西部上游15个州的369个淡水湖中的主要cyanoHABs驱动因素。我们使用蓝藻指数(CI_cyano)——一种源自欧洲航天局Envisat卫星上的中分辨率成像光谱仪(MERIS)的遥感产品——作为响应变量,以获取75个景观和湖泊地貌预测变量的变量重要性指标。湖泊被分为高海拔和低海拔类别,以便通过人为和自然影响进一步聚焦CI_cyano变量重要性识别。与以人为景观(如农业和市政区域)为主的“低海拔”流域土地覆盖(LC)相比,“高海拔”流域土地覆盖主要是森林或自然植被。我们使用排名靠前的25个随机森林变量为低海拔和高海拔湖泊分类创建分类回归树(CART),以确定可能用于管理缓解的变量阈值。“低海拔”湖泊的平均CI_cyano比“高海拔”湖泊大3倍,两个平均值均超过世界卫生组织关于蓝藻的“高”娱乐指导/行动水平阈值(100,000个细胞/毫升)。与农业相关的变量在所有369个湖泊和低海拔湖泊中都很突出。高海拔湖泊的湖滨土地覆盖影响比低海拔湖泊更大。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e20f/9285409/080c5e27e2e5/WRCR-57-0-g003.jpg

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