An early-warning forecast model for red tide (Karenia brevis) blooms on the southwest coast of Florida

IF 5.5 1区 生物学 Q1 MARINE & FRESHWATER BIOLOGY
Miles Medina , Paul Julian II , Nicholas Chin , Stephen E. Davis
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引用次数: 0

Abstract

Karenia brevis blooms occur nearly annually along the southwest coast of Florida, and effective mitigation of ecological, public health, and economic impacts requires reliable real-time forecasting. We present two boosted random forest models that predict the weekly maximum K. brevis abundance category across the Greater Charlotte Harbor estuaries over one-week and four-week forecast horizons. The feature set was restricted to data available in near-real time, consistent with adoption of the models as decision-support tools. Features include current and lagged K. brevis abundance statistics, Loop Current position, sea surface temperature, sea level, and riverine discharges and nitrogen concentrations. During cross-validation, the one-week and four-week forecasts exhibited 73 % and 84 % accuracy, respectively, during the 2010–2023 study period. In addition, we assessed the models’ reliability in forecasting the onset of 10 bloom events on time or in advance; the one-week and four-week models anticipated the onset eight times and five times, respectively.
佛罗里达西南海岸赤潮(Karenia brevis)绽放预警预报模型
佛罗里达州西南沿岸几乎每年都会出现卡伦氏藻华(Karenia brevis bloom),要有效减轻其对生态、公共健康和经济的影响,就必须进行可靠的实时预测。我们提出了两个提升随机森林模型,可预测大夏洛特港河口每周最大 K. brevis 丰度类别,预测范围分别为一周和四周。特征集仅限于近实时数据,这与将模型作为决策支持工具是一致的。特征包括当前和滞后的 K. brevis 丰度统计、环流位置、海面温度、海平面以及河流排水量和氮浓度。在交叉验证过程中,在 2010-2023 年研究期间,一周和四周预报的准确率分别为 73% 和 84%。此外,我们还评估了模型按时或提前预报 10 次水华事件的可靠性;一周和四周模型分别预报了 8 次和 5 次水华事件。
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来源期刊
Harmful Algae
Harmful Algae 生物-海洋与淡水生物学
CiteScore
12.50
自引率
15.20%
发文量
122
审稿时长
7.5 months
期刊介绍: This journal provides a forum to promote knowledge of harmful microalgae and macroalgae, including cyanobacteria, as well as monitoring, management and control of these organisms.
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