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A Bayesian parameter estimation method applied to a marine ecosystem model for the coastal Gulf of Alaska

机译:贝叶斯参数估计方法应用于阿拉斯加沿海海洋生态系统模型

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摘要

The present study describes a state-of-the-art methodology based on an adaptive Metropolis-Hastings algorithm to facilitate efficient Bayesian sampling for realistic lower trophic level (LTL) marine ecosystem models. The main objective is to explore the ability to differentiate between biological parameters that can learn from observations and those that cannot. The Bayesian approach is applied to the northwestern coastal Gulf of Alaska region and uses both synthetic and actual (in situ and remotely sensed) observations. LTL ecosystem dynamics in the Bayesian framework are described by a process model consisting of a 1-dimensional Nutrient-Phytoplankton-Zooplankton-Detritus formulation with iron limitation (NPZDFe) and vertical mixing. The results illustrate the ability to determine parameter posterior distributions for fundamental biological rates, such as maximum phytoplankton growth or zooplankton grazing. By using various observational platforms as data stage inputs, the results also demonstrate the impact of spatial and temporal sampling on parameter posterior distributions, as well as the benefits of having concurrent measurements for two or more state variables of the process model (e.g., chlorophyll and nitrate concentrations). Extending the method to multiple parameters is non-trivial, as posterior distributions become impacted by correlated and/or disproportionate contributions for certain model parameters. Controlled experiments with "near perfect data" were useful to characterize parameter identifiability based on information content in the BHM data stage inputs, as well as to separate uncertainties due to sampling issues vs. uncertain ecosystem process interpretation.
机译:本研究描述了一种基于自适应Metropolis-Hastings算法的最新方法,以促进对实际的较低营养级别(LTL)海洋生态系统模型进行有效的贝叶斯采样。主要目的是探索区分可从观察中学习的生物学参数与无法从观察中学习的生物学参数的能力。贝叶斯方法适用于阿拉斯加西北沿海地区,并使用综合和实际(原位和遥感)观测。贝叶斯框架中的LTL生态系统动力学由一个过程模型描述,该过程模型由一维营养物-植物浮游植物-Zooplankton-碎屑配方和铁含量限制(NPZDFe)和垂直混合组成。结果说明了确定基本生物学速率(例如最大浮游植物生长或浮游动物放牧)的参数后验分布的能力。通过使用各种观测平台作为数据阶段输入,结果还证明了空间和时间采样对参数后验分布的影响,以及同时测量过程模型的两个或多个状态变量(例如叶绿素和硝酸盐浓度)。将方法扩展到多个参数并非易事,因为后验分布受到某些模型参数的相关和/或不成比例的影响。使用“近乎完美的数据”进行的控制实验可用于根据BHM数据阶段输入中的信息内容表征参数的可识别性,以及区分由于采样问题和不确定的生态系统过程解释而导致的不确定性。

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