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Flood Prediction and Mining Influential Spatial Features on Future Flood with Causal Discovery

机译:因果发现对未来洪水的洪水预测和影响空间特征挖掘

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The development of accurate flood prediction model could reduce number of fatalities. In this paper, water level time series, spatio-temporal precipitation and hydrological data are used for flood prediction. Since our data is high dimensional and not all features are correlated to flood, our proposed algorithm is designed to find influential spatial features, or features at locations which are highly correlated to flood. With the idea that true causes, or highly correlated features to flood, should give accurate information about flood, our proposed flood prediction algorithm is based on Bayesian based causal discovery. The purpose of this paper is twofold. Firstly, we propose a new causal discovery algorithm which is Bayesian-based approach with an optimization function for maximizing mutual information. Secondly, the proposed algorithm is applied to real-world precipitation and hydrological data to find influential spatial features on future flood in North Texas area. Flood prediction models can then be learned from selected features. Experiments on synthetic data confirm that our proposed algorithm is more accurate in finding true causal relationships than two competitors, Group Lasso and Markov2P. Experiments on flood predictions show that our approach has the best accuracy in almost all six lead time predictions. The accuracy and result visualizations also suggest that our proposed algorithm can find influential features to flood.
机译:准确的洪水预报模型的发展可以减少死亡人数。本文将水位时间序列,时空降水和水文数据用于洪水预报。由于我们的数据是高维数据,并且并非所有特征都与洪水相关,因此我们提出的算法旨在查找有影响力的空间特征或与洪水高度相关的位置处的特征。考虑到洪水的真正原因或高度相关的特征应该提供有关洪水的准确信息,我们提出的洪水预测算法基于基于贝叶斯的因果发现。本文的目的是双重的。首先,我们提出了一种新的因果发现算法,该算法是基于贝叶斯的方法,具有用于使互信息最大化的优化功能。其次,该算法被应用于现实世界的降水和水文数据,以寻找对北德克萨斯地区未来洪水的影响空间特征。然后可以从所选功能中学习洪水预测模型。综合数据实验证明,与两个竞争对手Group Lasso和Markov2P相比,我们提出的算法在寻找真正的因果关系方面更准确。关于洪水预报的实验表明,我们的方法在几乎所有六个提前期预报中都具有最佳的准确性。准确性和结果可视化还表明,我们提出的算法可以找到影响洪水的特征。

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