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Fusion-Based Hypoxia Estimates: Combining Geostatistical and Mechanistic Models of Dissolved Oxygen Variability

机译:基于融合的缺氧估计:结合溶解氧变异性的地统计和机械模型

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摘要

The need to characterize and track coastal hypoxia has led to the development of geostatistical models based on in situ observations of dissolved oxygen (DO) and mechanistic models based on a representation of biophysical processes. To integrate the benefits of these two distinct modeling approaches, we develop a space-time geostatistical framework for synthesizing DO observations with hydrodynamic-biogeochemical model simulations and meteorological time series (as covariates). This fusion-based approach is used to estimate hypoxia in the northern Gulf of Mexico across summers from 1985 to 2017. Deterministic trends with dynamic covariates explain over 35% of the variability in DO. Moreover, cross-validation results indicate that 58% of DO variability is explained when combining these trends with spatiotemporal interpolation, which is substantially better than mechanistic or conventional geostatistical hypoxia modeling alone. The fusion-based approach also reduces hypoxic area uncertainties by 11% on average and up to 40% in months with sparse sampling. Moreover, our new estimates of mean summer hypoxic area changed by >10% in a majority of years, relative to previous geostatistical estimates. These fusion-based estimates can be a valuable resource when assessing the influence of hypoxia on the coastal ecosystem.
机译:表征和追踪沿海缺氧的需要导致了基于基于生物物理过程的表示的溶解氧(DO)和机械模型的地统计模型的发展。为了整合这两种不同的建模方法的益处,我们开发了一种时空地质稳态框架,用于用流体动力学 - 生物地球化学模型模拟和气象时间序列(作为协变量)合成DO观察。这种基于融合的方法用于估计1985年至2017年夏季墨西哥北湾估算缺氧。动态协变量的确定性趋势解释了35%的变化。此外,交叉验证结果表明,当将这些趋势与时空插值结合时,解释了58%的DO变异性,这与单独的机械或常规的地质静态缺氧建模基本上更好。基于融合的方法也将缺氧区域的不确定性降低11%,平均稀疏较少的数月高达40%。此外,我们对大部分夏季缺氧区域的新估计值在大部分年份变化> 10%,相对于以前的地统计学估计。当评估缺氧对沿海生态系统的影响时,这些基于融合的估计可以是有价值的资源。

著录项

  • 来源
    《Environmental Science & Technology》 |2020年第20期|13016-13025|共10页
  • 作者单位

    Center for Geospatial Analytics NC State University Raleigh North Carolina 27695 United States;

    Department of Oceanography Dalhousie University Halifax Nova Scotia B3H 4R2 Canada;

    Department of Oceanography Dalhousie University Halifax Nova Scotia B3H 4R2 Canada;

    National Oceanic and Atmospheric Administration National Marine Fisheries Service Beaufort North Carolina 28516 United States;

    National Oceanic and Atmospheric Administration National Marine Fisheries Service Beaufort North Carolina 28516 United States;

    Center for Geospatial Analytics and Department of Civil Construction and Environmental Engineering NC State University Raleigh North Carolina 27695 United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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