Suppr超能文献

俄亥俄河有害蓝藻水华风险特征描述工具的开发

Development of a Risk Characterization Tool for Harmful Cyanobacteria Blooms on the Ohio River.

作者信息

Nietch Christopher T, Gains-Germain Leslie, Lazorchak James, Keely Scott P, Youngstrom Gregory, Urichich Emilee M, Astifan Brian, DaSilva Abram, Mayfield Heather

机构信息

USEPA Office of Research and Development, Center for Environmental Measurement and Modeling, 26 Martin Luther King Dr W, Cincinnati, OH 45268, USA.

Neptune and Company, Inc., 1435 Garrison Street, Suite 201, Lakewood, CO 80215, USA.

出版信息

Water (Basel). 2022 Feb 18;14(4):1-23. doi: 10.3390/w14040644.

Abstract

A data-driven approach to characterizing the risk of cyanobacteria-based harmful algal blooms (cyanoHABs) was undertaken for the Ohio River. Twenty-five years of river discharge data were used to develop Bayesian regression models that are currently applicable to 20 sites spread-out along the entire 1579 km of the river's length. Two site-level prediction models were developed based on the antecedent flow conditions of the two blooms that occurred on the river in 2015 and 2019: one predicts if the current year will have a bloom (the occurrence model), and another predicts bloom persistence (the persistence model). Predictors for both models were based on time-lagged average flow exceedances and a site's characteristic residence time under low flow conditions. Model results are presented in terms of probabilities of occurrence or persistence with uncertainty. Although the occurrence of the 2019 bloom was well predicted with the modeling approach, the limited number of events constrained formal model validation. However, as a measure of performance, leave-one-out cross validation returned low misclassification rates, suggesting that future years with flow time series like the previous bloom years will be correctly predicted and characterized for persistence potential. The prediction probabilities are served in real time as a component of a risk characterization tool/web application. In addition to presenting the model's results, the tool was designed with visualization options for studying water quality trends among eight river sites currently collecting data that could be associated with or indicative of bloom conditions. The tool is made accessible to river water quality professionals to support risk communication to stakeholders, as well as serving as a real-time water data monitoring utility.

摘要

针对俄亥俄河,采用了一种数据驱动的方法来表征基于蓝藻的有害藻华(cyanoHABs)风险。利用25年的河流流量数据开发了贝叶斯回归模型,这些模型目前适用于沿该河长1579公里分布的20个地点。基于2015年和2019年该河发生的两次藻华的前期流量条件,开发了两个站点级预测模型:一个预测当年是否会出现藻华(发生模型),另一个预测藻华持续时间(持续模型)。两个模型的预测因子均基于时间滞后的平均流量超标情况以及低流量条件下站点的特征停留时间。模型结果以具有不确定性的发生概率或持续概率表示。尽管建模方法很好地预测了2019年藻华的发生,但事件数量有限限制了正式的模型验证。然而,作为一种性能度量,留一法交叉验证返回的误分类率较低,这表明未来具有与之前藻华年份类似流量时间序列的年份将被正确预测并表征其持续潜力。预测概率作为风险表征工具/网络应用程序的一个组成部分实时提供。除了展示模型结果外,该工具还设计了可视化选项,用于研究目前正在收集数据的八个河流水质趋势,这些趋势可能与藻华状况相关或指示藻华状况。该工具可供河流水质专业人员使用,以支持与利益相关者进行风险沟通,同时作为实时水数据监测工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bc9e/9019831/6ebb03c1df65/nihms-1783469-f0001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验