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Inverse Modeling of Beaver Reservoir's Water Spectral Reflectance

机译:海狸水库水光谱反射率的反演

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摘要

Estimation of inherent optical properties (IOP) needed for water quality evaluation by remote sensing models is very complex, primarily due to the large number of model simulations needed to find optimal parameter values. This study presents an approach for optimally parameterizing the IOP values of a physical hyperspectral optical - Monte Carlo (PHO-MC) model. An artificial neural network (ANN) based pseudo simulator combined with the Nondominated Sorted Genetic Algorithm II (NSGA II) was used to efficiently perform a large number of model simulations and to search the optimal parameter values for IOP determination. Concentrations of suspended matter (sm), chlorophyll-a (chl), and total dissolved organic matter (DOM) along with the reflectance data at 16 different wavelengths were measured at 48 sampling stations in the Beaver Reservoir, Arkansas, between 2003 and 2005 and were used to evaluate the IOP values. Measured concentrations and reflectance data from 24 sampling stations were used to optimize IOP parameter values for sm, chl, and DOM. The data collected from the remaining 24 sampling stations were used for the validation of PHO-MC model-predicted reflectance by using optimized IOP values. PHO-MC predicted reflectance values were significantly correlated (r = 0.90, p 0.01) with the corresponding measured reflectance values, indicating that the pseudo simulator combined with the NSGA II accurately estimated the IOP values. An estimated 10 10 years of calculation time was reduced to less than 3 min by using the pseudo simulator and NSGA II to supplement the PHO-MC model for estimating the IOP values
机译:遥感模型对水质评估所需的固有光学特性(IOP)的估计非常复杂,这主要是由于需要寻找最佳参数值的大量模型模拟。这项研究提出了一种最佳地参数化物理高光谱光学蒙特卡罗(PHO-MC)模型的IOP值的方法。基于人工神经网络(ANN)的伪模拟器与非支配排序遗传算法II(NSGA II)相结合,可有效地执行大量模型仿真并搜索用于确定IOP的最佳参数值。在2003年至2005年之间,在阿肯色州海狸水库的48个采样站测量了16种不同波长下的悬浮物(sm),叶绿素a(chl)和总溶解有机物(DOM)的浓度以及反射率数据。用于评估IOP值。来自24个采样站的测得浓度和反射率数据用于优化sm,chl和DOM的IOP参数值。通过使用优化的IOP值,将从其余24个采样站收集的数据用于验证PHO-MC模型预测的反射率。 PHO-MC预测的反射率值与相应的测量反射率值显着相关(r = 0.90,p <0.01),表明伪模拟器与NSGA II组合可以准确地估算IOP值。通过使用伪模拟器和NSGA II补充用于估算IOP值的PHO-MC模型,估计的10 10 年的计算时间减少到不到3分钟

著录项

  • 来源
    《Transactions of the ASABE》 |2010年第2期|p.373-383|共11页
  • 作者单位

    Vijay Garg, Former Graduate Student, Department of Biological and Agricultural Engineering, University of Arkansas, Fayetteville, Arkansas;

    Indrajeet Chaubey, ASABE Member, Associate Professor, Department of Agricultural and Biological Engineering, Department of Earth and Atmospheric Sciences, and Division of Environmental and Ecological Engineering, Purdue University, West Lafayette, Indiana;

    Chetan Maringanti, ASABE Member Engineer, Graduate Student, Department of Agricultural and Biological Engineering, Purdue University, West Lafayette, Indiana;

    and Sreekala G. Bajwa, ASABE Member Engineer, Associate Professor, Department of Biological and Agricultural Engineering, University of Arkansas, Fayetteville, Arkansas. Corresponding author: Indrajeet Chaubey, Department of Agricultural and Biological Engineering, 225 S. University Street, Purdue University, West Lafayette, IN 47907;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    ANN; Beaver Reservoir; GA; Inherent optical properties; Inverse modeling; Remote sensing; Water quality;

    机译:人工神经网络海狸水库;GA;固有的光学性能;逆建模遥感;水质;

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