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首页> 外文期刊>Ecological Modelling >A data-driven modeling approach for simulating algal blooms in the tidal freshwater of James River in response to riverine nutrient loading
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A data-driven modeling approach for simulating algal blooms in the tidal freshwater of James River in response to riverine nutrient loading

机译:河流营养荷载作用下潮河潮汐淡水中藻类盛开的数据驱动建模方法

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摘要

Algal blooms often occur in the tidal freshwater (TF) of the James River estuary, a tributary of the Chesapeake Bay. The timing of algal blooms correlates highly to a summer low-flow period when residence time is long and nutrients are available. Because of complex interactions between physical transport and algal dynamics, it is challenging to predict interannual variations of bloom correctly using a complex eutrophication model without having a high-resolution model grid to resolve complex geometry and an accurate estimate of nutrient loading to drive the model. In this study, an approach using long-term observational data (from 1990 to 2013) and the Support vector machine (LS-SVM) for simulating algal blooms was applied. The Empirical Orthogonal Function was used to reduce the data dimension that enables the algal bloom dynamics for the entire TT to be modeled by one model. The model results indicate that the data-driven model is capable of simulating interannual algal blooms with good predictive skills and is capable of forecasting algal blooms responding to the change of nutrient loadings and environmental conditions. This study provides a link between a conceptual model and a dynamic model, and demonstrates that the data-driven model is a good approach for simulating algal blooms in this complex environment of the James River. The method is very efficient and can be applied to other estuaries as well.
机译:藻类绽放经常发生在詹姆斯河口的潮汐淡水(TF),切萨皮克湾的支流。藻类绽放的时序高度关联于夏季低流量时,当停留时间长,营养成分可用。由于物理传输和藻类动力学之间的复杂相互作用,使用复杂的富营养化模型预测盛开的持续变化是具有挑战性的,而不具有高分辨率模型网格来解决复杂的几何形状和准确估计营养加载以驱动模型。在本研究中,应用了使用长期观测数据(从1990年到2013年)和用于模拟藻类绽放的支持向量机(LS-SVM)的方法。经验正交函数用于减少数据维度,该数据维度使藻类盛开动态能够由一个模型建模的整个TT。模型结果表明,数据驱动模型能够以良好的预测技能模拟持续的藻类盛开,并且能够预测藻类盛开响应营养载荷和环境条件的变化。本研究提供了概念模型和动态模型之间的链接,并证明了数据驱动的模型是模拟詹姆斯河的这种复杂环境中的藻类绽放的良好方法。该方法非常有效,也可以应用于其他河口。

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