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Parametric emulation and inference in computationally expensive integrated urban water quality simulators

机译:计算昂贵的综合城市水质模拟器的参数仿真和推论

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摘要

Water quality environmental assessment often requires the joint simulation of several subsystems (e.g. wastewater treatment processes, urban drainage and receiving water bodies). The complexity of these integrated catchment models grows fast, leading to potentially over-parameterised and computationally expensive models. The receiving water body physical and biochemical parameters are often a dominant source of uncertainty when simulating dissolved oxygen depletion processes. Thus, the use of system observations to refine prior knowledge (from experts or literature) is usually required. Unfortunately, simulating real-world scale water quality processes results in a significant computational burden, for which the use of sampling intensive applications (e.g. parametric inference) is severely hampered. Data-driven emulation aims at creating an interpolation map between the parametric and output multidimensional spaces of a dynamic simulator, thus providing a fast approximation of the model response. In this study a large-scale integrated urban water quality model is used to simulate dissolved oxygen depletion processes in a sensitive river. A polynomial expansion emulator was proposed to approximate the link between four and eight river physical and biochemical river parameters and the dynamics of river flow and dissolved oxygen concentration during one year (at hourly frequency). The emulator scheme was used to perform a sensitivity analysis and a formal parametric inference using local system observations. The effect of different likelihood assumptions (e.g. heteroscedasticity, normality and autocorrelation) during the inference of dissolved oxygen processes is also discussed. This study shows how the use of data-driven emulators can facilitate the integration of formal uncertainty analysis schemes in the hydrological and water quality modelling community.
机译:水质环境评估往往需要若干子系统(例如废水处理过程,城市排水和接收水体)的联合仿真。在这些综合流域模型的复杂性的增长快,导致潜在的过度参数化和计算昂贵的机型。接收水体物理和生化参数往往模拟溶解的氧耗尽过程时的不确定性的一个主要来源。因此,使用系统的观测来细化先验知识(从专家或文献)通常需要。不幸的是,模拟真实世界规模的水质处理的显著计算负担,为此,采用抽样密集型应用程序(如参数推断)被严重受阻的结果。在创建动态模拟器的参数并输出多维空间之间的内插地图,从而提供模型响应的快速近似数据驱动仿真目的。在这项研究中大规模集成城市水质量模型被用于在一个敏感河流模拟溶解的氧气耗尽过程。多项式展开模拟器提出来逼近在一年四个和八个河流物理和生化参数河流和河水流动的动力学和溶解氧浓度之间的链路(在每小时频率)。模拟器方案用于进行灵敏度分析,并使用本地系统观测正式的参数的推断。还讨论了溶解氧过程的推理过程中不同的可能性的假设(例如异,正态性和自相关)的效果。这项研究显示了使用数据驱动的仿真器如何能促进水文和水质模拟社区正式不确定性分析方案的集成。

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