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Data assimilation and uncertainty analysis of environmental assessment problems―an application of Stochastic Transfer Function and Generalised Likelihood Uncertainty Estimation techniques

机译:环境评估问题的数据同化和不确定性分析-随机传递函数和广义似然不确定度估计技术的应用

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Stochastic Transfer Function (STF) and Generalised Likelihood Uncertainty Estimation (GLUE) techniques are outlined and applied to an environmental problem concerned with marine dose assessment. The goal of both methods in this application is the estimation and prediction of the environmental variables, together with their associated probability distributions. In particular, they are used to estimate the amount of radionuclides transferred to marine biota from a given source: the British Nuclear Fuel Ltd (BNFL) repository plant in Sellafield, UK. The complexity of the processes involved, together with the large dispersion and scarcity of observations regarding radionuclide concentrations in the marine environment, require efficient data assimilation techniques. In this regard, the basic STF methods search for identifiable, linear model structures that capture the maximum amount of information contained in the data with a minimal parameterisation. They can be extended for on-line use, based on recursively updated Bayesian estimation and, although applicable to only constant or time-variable parameter (non-stationary) linear systems in the form used in this paper, they have the potential for application to non-linear systems using recently developed State Dependent Parameter (SDP) non-linear STF models. The GLUE based-methods, on the other hand, formulate the problem of estimation using a more general Bayesian approach, usually without prior statistical identification of the model structure. As a result, they are applicable to almost any linear or non-linear stochastic model, although they are much less efficient both computationally and in their use of the information contained in the observations. As expected in this particular environmental application, it is shown that the STF methods give much narrower confidence limits for the estimates due to their more efficient use of the information contained in the data. Exploiting Monte Carlo Simulation (MCS) analysis, the GLUE technique is used to estimate how the errors involved in the STF model structure and observations influence the model outputs and errors. The discussion on updating information originating from different locations using GLUE procedure is also given. A final aim of the paper is to use the results obtained in this particular example to explore the differences between the GLUE and STF approaches.
机译:概述了随机传递函数(STF)和广义似然不确定性估计(GLUE)技术,并将其应用于与海洋剂量评估有关的环境问题。本申请中这两种方法的目标都是对环境变量及其相关的概率分布进行估计和预测。特别是,它们被用来估计从给定来源转移到海洋生物群中的放射性核素的数量:位于英国塞拉菲尔德的英国核燃料有限公司(BNFL)储存库工厂。所涉过程的复杂性,以及海洋环境中放射性核素浓度观测值的大范围分散和稀缺性,需要有效的数据同化技术。在这方面,基本的STF方法搜索可识别的线性模型结构,该结构以最小的参数设置捕获数据中包含的最大信息量。它们可以基于递归更新的贝叶斯估计进行扩展,以供在线使用,并且尽管仅适用于本文使用的形式的恒定或时变参数(非平稳)线性系统,但它们仍有可能应用于非线性系统,使用最近开发的状态相关参数(SDP)非线性STF模型。另一方面,基于GLUE的方法使用更通用的贝叶斯方法来表达估计问题,通常无需事先对模型结构进行统计识别。结果,它们几乎可以应用于任何线性或非线性随机模型,尽管它们在计算上和在使用观测值中包含的信息方面效率都低得多。正如在特定的环境应用中所预期的那样,由于STF方法可以更有效地利用数据中包含的信息,因此它们给出的估计的置信范围要窄得多。利用蒙特卡洛模拟(MCS)分析,GLUE技术用于估计STF模型结构和观察结果中涉及的误差如何影响模型的输出和误差。还给出了有关使用GLUE程序更新来自不同位置的信息的讨论。本文的最终目的是使用在此特定示例中获得的结果来探索GLUE和STF方法之间的差异。

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