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Data assimilation and adaptive forecasting of water levels in the river Severn catchment, United Kingdom

机译:英国塞文河集水区的数据同化和水位自适应预测

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摘要

This paper describes data assimilation (DA) and adaptive forecasting techniques for flood forecasting and their application to forecasting water levels at various locations along a 120 km reach of the river Severn, United Kingdom. The methodology exploits the top-down, data-based mechanistic (DBM) approach to the modeling of environmental processes, concentrating on the identification and estimation of those "dominant modes" of dynamic behavior that are most important for flood prediction. In particular, hydrological processes actiye in the catchment are modeled using the state-dependent parameter (SDP) method of estimating a nonlinear, effective rainfall transformation together with a linear stochastic transfer function (STF) method for characterizing both the effective rainfall-river level behavior and the river level routing processes. The complete model consists of these lumped parameter, linear and nonlinear stochastic, dynamic elements connected in a quasi-distributed manner that represents the physical structure of the catchment. The adaptive forecasting system then utilizes a state-space form of the complete catchment model, including allowance for heteroscedasticiry in the errors, as the basis for data assimilation and forecasting using a Kalman filter forecasting engine. Here the predicted model states (water levels) and adaptive parameters are updated recursively in response to input data received in real time from sensors in the catchment. Direct water level forecasting is considered, rather than flow, because this removes the need to transform the level measurement through the rating curve and tends to decrease the forecasting errors.
机译:本文介绍了用于洪水预报的数据同化(DA)和自适应预报技术,以及它们在英国塞弗恩河(Severn)120公里河段各个位置的水位预测中的应用。该方法利用自上而下的基于数据的机制(DBM)方法对环境过程进行建模,重点在于对洪水预测最重要的动态行为的“主要模式”的识别和估计。特别是,使用估算非线性有效降雨转换的状态相关参数(SDP)方法和用于表征有效降雨-河流水位行为的线性随机传递函数(STF)方法,对流域内活动的水文过程进行建模。以及河流级路线选择过程。完整的模型由这些集总参数,线性和非线性随机,动态元素组成,它们以准分布式方式连接,代表流域的物理结构。然后,自适应预测系统利用完整集水区模型的状态空间形式(包括误差中的异方差容忍度)作为数据同化和使用卡尔曼滤波器预测引擎进行预测的基础。在此,响应于从流域传感器实时接收的输入数据,递归更新预测的模型状态(水位)和自适应参数。考虑直接水位预测,而不是流量预测,因为这消除了通过等级曲线转换水位测量的需求,并倾向于减少预测误差。

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