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首页> 外文期刊>Journal of Environmental Management >Effect of hyperspectral image-based initial conditions on improving short-term algal simulation of hydrodynamic and water quality models
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Effect of hyperspectral image-based initial conditions on improving short-term algal simulation of hydrodynamic and water quality models

机译:基于高光谱图像的初始条件对改善流体动力学和水质模型短期藻类模拟的影响

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摘要

Hydrodynamic and water quality modeling have provided valuable simulation results that have enhanced the understanding of the spatial and temporal distribution of algal blooms. Typical model simulations are performed with point-based observational data that are used to configure initial and boundary conditions, and for parameter calibration. However, the application of such conventional modeling approaches is limited due to cost, labor, and time constraints that preclude the retrieval of high-resolution spatial data. Thus, the present study applied fine-resolution algal data to configure the initial conditions of a hydrodynamic and water quality model and compared the accuracy of short-term algal simulations with the results simulated using conventional point-based initial conditions. The environmental fluid dynamics code (EFDC) model was calibrated to simulate Chlorophyll-a (Chl-a) concentrations. Hyperspectral images were used to generate Chl-a maps based on a two-band ratio algorithm for configuring the initial condition of the EFDC model. The model simulation with hyperspectral-based initial conditions returned relatively accurate results for Chl-a, compared to the simulation based on point-based initial conditions. The simulations exhibited percent bias values of 9.93 and 14.23, respectively. Therefore, the results of this study demonstrate how hyperspectral-based initial conditions could improve the reliability of short-term algal bloom simulations in a hydrodynamic model.
机译:流体动力学和水质建模提供了有价值的模拟结果,增强了对藻类盛开的空间和时间分布的理解。使用用于配置初始和边界条件的点为基础的观测数据来执行典型的模型模拟,以及参数校准。然而,由于成本,劳动力和时间约束,这些传统建模方法的应用受到限制,妨碍了高分辨率空间数据的检索。因此,本研究应用了微分辨率藻类数据以配置流体动力学和水质模型的初始条件,并将短期藻类模拟的准确性与使用传统的基于点的初始条件模拟的结果进行了比较。校准环境流体动力学代码(EFDC)模型以模拟叶绿素-A(CHL-A)浓度。高光谱图像用于基于用于配置EFDC模型的初始条件的双频比算法生成CHL-A映射。与基于基于点的初始条件的仿真相比,基于高光谱的初始条件的模型模拟返回了CHL-A的相对准确的结果。模拟分别显示出9.93和14.23的百分比百分比。因此,本研究的结果表明了基于极光的初始条件如何提高流体动力学模型中短期藻类盛开模拟的可靠性。

著录项

  • 来源
    《Journal of Environmental Management》 |2021年第15期|112988.1-112988.11|共11页
  • 作者单位

    Center for Environmental Data Strategy Korea Environment Institute Sejong 30147 Republic of Korea;

    Environmental Impact Assessment Division of Ecological Assessment National Institute of Ecology Seocheon 33657 Republic of Korea;

    Water Quality Assessment Research Division National Institute of Environmental Research Environmental Research Complex Incheon 22689 Republic of Korea Task Force for Investigation and Assessment for Natural Recovery of Four Major Rivers Ministry of Environment Sejong 30103 Republic of Korea;

    Water Quality Assessment Research Division National Institute of Environmental Research Environmental Research Complex Incheon 22689 Republic of Korea;

    GeoSystem Research Corp. Gyeonggi 435-824 Republic of Korea;

    Water Quality Assessment Research Division National Institute of Environmental Research Environmental Research Complex Incheon 22689 Republic of Korea;

    Water Quality Assessment Research Division National Institute of Environmental Research Environmental Research Complex Incheon 22689 Republic of Korea;

    School of Civil and Environmental Engineering Konkuk University Seoul 05029 Republic of Korea;

    School of Urban and Environmental Engineering Ulsan National Institute of Science and Technology Ulsan 44919 Republic of Korea;

    School of Civil and Environmental Engineering Konkuk University Seoul 05029 Republic of Korea;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hydrodynamic and water quality model; Hyperspectral image; Initial condition; Chlorophyll-a;

    机译:流体动力学和水质模型;高光谱图像;初始条件;叶绿素A.;

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