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An empirical modeling approach to predict and understand phytoplankton dynamics in a reservoir affected by interbasin water transfers

机译:一种经验建模方法,用于预测和了解受流域间调水影响的水库中浮游植物的动态

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摘要

In this paper, we use empirical modeling to predict and understand phytoplankton dynamics in a reservoir affected by water transfers. Prediction of phytoplankton biovolume is central to the management of water resources, particularly given the significant impacts on quality of the water-quantity oriented management of transfers between reservoirs. A novel tree-based iterative input variable selection algorithm is applied for the first time in an ecological context, and identifies a maximum of eight driving factors out of 77 candidates to explain the biovolume of chlorophytes, cyanobacteria and diatoms. The stepwise forward-selection to iteratively identify the most important inputs leads to a physically interpretable model able to infer the physical processes controlling phytoplankton biovolume. Reservoir inflows and outflows are found to exert a strong control over diatom and chlorophyte dynamics while water temperature, nitrate and phosphorus determine the biovolume of cyanobacteria. Following the selection of the most relevant inputs, the week ahead predictions of four different data-driven model classes, i.e., neural networks, extra trees (Ets), model trees and linear regressions, are compared based on performance indices and statistical tests. Ets are found to outperform the other models by providing accurate predictions of cyanobacteria, chlorophyte and diatom biovolume by explaining 66.6%, 66.9%, and 80.5% of the variance, respectively. The methodology is applicable to different environmental studies and combines the strength of empirical modeling, i.e., compact models and accurate predictions, with a good understanding of the physical processes involved.
机译:在本文中,我们使用经验模型来预测和了解受调水影响的水库中浮游植物的动态。浮游植物生物量的预测对于水资源的管理至关重要,特别是考虑到水库之间转移的水量导向管理质量的显着影响。一种新颖的基于树的迭代输入变量选择算法首次在生态环境中应用,并从77个候选对象中识别出最多八个驱动因素,以解释绿藻,蓝细菌和硅藻的生物量。逐步向前选择以迭代地确定最重要的输入,从而形成了一个物理可解释的模型,该模型能够推断出控制浮游植物生物量的物理过程。发现水库的流入和流出对硅藻和绿藻的动力学有很强的控制作用,而水温,硝酸盐和磷决定了蓝细菌的生物量。在选择了最相关的输入后,基于性能指标和统计检验比较了四种不同的数据驱动模型类别(即神经网络,额外树(Ets),模型树和线性回归)的提前一周预测。通过分别解释66.6%,66.9%和80.5%的方差来提供对蓝细菌,叶绿素和硅藻生物量的准确预测,发现ET优于其他模型。该方法适用于不同的环境研究,并且结合了经验建模的优势,即紧凑模型和准确的预测,并且对所涉及的物理过程有很好的理解。

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  • 来源
    《Water resources research》 |2013年第6期|3626-3641|共16页
  • 作者单位

    Centre for Water Research, The University of Western Australia, M023, 35 Stirling Hwy, Crawley, WA 6009, Australia;

    Singapore-Delft Water Alliance, National University of Singapore,Singapore;

    Centre for Water Research, The University of Western Australia,Crawley, Western Australia, Australia,Department of Electronics, Information and Bioengineering, Politec-nico di Milano, Piazza Leonardo da Vinci, Milano, Italy;

    Hatch Associates Perth Western Australia, Australia;

    Centre for Water Research, The University of Western Australia,Crawley, Western Australia, Australia;

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