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Impact of measurement error and limited data frequency on parameter estimation and uncertainty quantification

机译:测量误差和有限的数据频率对参数估计和不确定性量化的影响

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摘要

Parameter estimation, using historical observed data, is an important part of the environmental modeling. The uncertainty in the parameter estimation limits the applications of environmental models.In this paper, the influence of limited and uncertain calibrated data on the performance of the parameter estimation are systematically investigated. For this purpose, synthetic observations with a given uncertainty and frequency are used to estimate the model parameters of a conceptual water quality (WQ) model of the River Zenne, Belgium. Bayesian inference using Markov Chain Monte Carlo sampling is adopted to simultaneously perform the automatic calibration and the uncertainty analysis. The results highlight the critical roles of measurement frequency and uncertainty in the model calibration. We found that the effect of the measurement uncertainty on the parameter estimation is significant when the calibrated data points are limited (e.g. monthly data). The research findings can be used to support measurement prioritization and resource allocation.
机译:参数估计使用历史观察数据,是环境建模的重要组成部分。参数估计中的不确定性限制了环境模型的应用。在本文中,系统地研究了有限和不确定校准数据对参数估计性能的影响。为此目的,具有给定的不确定性和频率的合成观测用于估计比利时河Zenne概念水质(WQ)模型的模型参数。采用Markov Chain Monte Carlo采样采用贝叶斯推断,同时执行自动校准和不确定性分析。结果突出了模型校准中测量频率和不确定性的关键作用。我们发现,当校准数据点受限时(例如,每月数据),测量不确定性对参数估计的影响是显着的。研究结果可用于支持测量优先级和资源分配。

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