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Recent developments in predictive uncertainty assessment based on the model conditional processor approach

机译:基于模型条件处理器方法的预测不确定性评估的最新进展

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The work aims at discussing the role of predictive uncertainty in flood forecasting and flood emergency management, its relevance to improve the decision making process and the techniques to be used for its assessment. brbr Real time flood forecasting requires taking into account predictive uncertainty for a number of reasons. Deterministic hydrological/hydraulic forecasts give useful information about real future events, but their predictions, as usually done in practice, cannot be taken and used as real future occurrences but rather used as pseudo-measurements of future occurrences in order to reduce the uncertainty of decision makers. Predictive Uncertainty (PU) is in fact defined as the probability of occurrence of a future value of a predictand (such as water level, discharge or water volume) conditional upon prior observations and knowledge as well as on all the information we can obtain on that specific future value from model forecasts. When dealing with commensurable quantities, as in the case of floods, PU must be quantified in terms of a probability distribution function which will be used by the emergency managers in their decision process in order to improve the quality and reliability of their decisions. brbr After introducing the concept of PU, the presently available processors are introduced and discussed in terms of their benefits and limitations. In this work the Model Conditional Processor (MCP) has been extended to the possibility of using two joint Truncated Normal Distributions (TNDs), in order to improve adaptation to low and high flows. brbr The paper concludes by showing the results of the application of the MCP on two case studies, the Po river in Italy and the Baron Fork river, OK, USA. In the Po river case the data provided by the Civil Protection of the Emilia Romagna region have been used to implement an operational example, where the predicted variable is the observed water level. In the Baron Fork River example, the data set provided by the NOAA's National Weather Service, within the DMIP 2 Project, allowed two physically based models, the TOPKAPI model and TETIS model, to be calibrated and a data driven model to be implemented using the Artificial Neural Network. The three model forecasts have been combined with the aim of reducing the PU and improving the probabilistic forecast taking advantage of the different capabilities of each model approach.
机译:这项工作的目的是讨论预测不确定性在洪水预报和洪水应急管理中的作用,其与改进决策过程的相关性以及用于评估的技术。 实时洪水预报需要出于多种原因考虑预测的不确定性。确定性水文/水力预报可提供有关真实未来事件的有用信息,但通常在实践中不能将其预测用作真实未来事件,而是用作未来事件的伪度量,以减少决策的不确定性制造商。预测不确定性(PU)实际上是指根据先前的观察和知识以及我们可以从中获得的所有信息而得出的预测值(例如水位,排放量或水量)的未来值出现的概率。模型预测的特定未来价值。当处理数量可观的洪水(如洪水)时,必须根据概率分布函数对PU进行量化,应急管理人员将在决策过程中使用概率分布函数,以提高决策的质量和可靠性。 在介绍了PU的概念之后,就它们的优点和局限性介绍和讨论了当前可用的处理器。在这项工作中,模型条件处理器(MCP)已扩展为使用两个联合的截断正态分布(TND)的可能性,以提高对低流量和高流量的适应性。 本文的结尾部分显示了MCP在两个案例研究中的应用结果,这两个案例是意大利的Po河和美国OK的Baron Fork河。在波河案例中,艾米利亚·罗马涅地区民事保护部门提供的数据已用于实施一个操作示例,其中预测变量是观测到的水位。在Baron Fork River的例子中,NOAA的国家气象局在DMIP 2项目中提供的数据集允许校准两个基于物理的模型,即TOPKAPI模型和TETIS模型,并使用数据模型实现数据驱动模型。人工神经网络。结合了这三种模型预测,目的是利用每种模型方法的不同功能来减少PU和改善概率预测。

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