首页> 外文会议>NATO Advanced Research Workshop on Extreme Hydrological Events: New Concepts for Security; 20050711-15; Novosibirsk(RU) >PROBABILISTIC FORECASTS USING BAYESIAN NETWORKS CALIBRATED WITH DETERMINISTIC RAINFALL-RUNOFF MODELS
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PROBABILISTIC FORECASTS USING BAYESIAN NETWORKS CALIBRATED WITH DETERMINISTIC RAINFALL-RUNOFF MODELS

机译:使用确定性降雨-径流模型校准的贝叶斯网络进行概率预测

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摘要

A flood forecasting approach based on the combination of Bayesian networks and physically-based deterministic models is presented. Bayesian networks are data-driven models where the joint probability distribution of a set of related variables is inferred from observations. Their application to flood forecasting is limited because basins with long data sets for calibration or validation of this type of models are relatively scarce. To solve this problem, the data set for the calibration and validation is obtained through Monte-Carlo simulation, combining a stochastic rainfall generator and a deterministic rainfall-runoff model. The approach has been tested successfully in the Spanish Mediterranean region.
机译:提出了一种基于贝叶斯网络和基于物理的确定性模型相结合的洪水预报方法。贝叶斯网络是数据驱动的模型,其中从观察值推断出一组相关变量的联合概率分布。它们在洪水预报中的应用是有限的,因为具有较长数据集以进行此类模型的校准或验证的盆地相对稀少。为了解决这个问题,通过将随机降雨产生器和确定性降雨径流模型相结合,通过蒙特卡洛模拟获得用于校准和验证的数据集。该方法已在西班牙地中海地区成功测试。

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