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Integrated Markov chains and uncertainty analysis techniques to more accurately forecast floods using satellite signals

机译:通过卫星信号更准确地预测洪水的集成马尔可夫链和不确定性分析技术

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Utilizing the readily available, inexpensive, remotely-sensed satellite data products in combination with Markov Chain methods for estimating water levels and discharge anywhere along the vast river networks around the world is one of the most interesting and promising fields in hydrology. This study presents two new extensions of Markov Chain (MC) methods, namely the Online-Markov Chains (O-MC) and Extreme Online-Markov Chains (EO-MC) methods to improve the prediction accuracy. The O-MC method has the advantage of the online implementation of the correct variable states, and the EO-MC method has the advantage of online updating the Markov Matrix (MM) along with the online implementation of the correct variable states. The new O-MC and the EO-MC methods were evaluated using short-term satellites signal predictions for six different case study rivers. The Monte Carlo uncertainty analysis was used to measure the reliability of the new MC-based methods. Each model was developed 1000 times to calculate two indices, namely the 95 Percent Predicted Uncertainties (95PPU) and average distance factor (d-factor). The performances of MC and two extensions of O-MC and EO-MC were also examined for cases where we lack the training data. The Training Percent (TrPr) of the entire dataset gradually decreased from 90% to 1%, and the performance of the models in producing accurate future signals in the non-observed dataset is calculated. The Input Variable Imitation (IVI) problem was considered for the MC-based methods, and the results were compared with the Linear Regression (LR), Multi-Layer Perceptron (MLP), Extreme Learning Machine (ELM), and Radial Basis Function (RBF) regression methods. The results showed that the performance of EO-MC and O-MC are better than the simple MC method. In addition, it is concluded that EOMC and O-MC have very similar performance in the uncertainty analysis and both methods are robust techniques. The main advantage of EO-MC compared with the O-MC met
机译:利用随时可用的,廉价的远程感测的卫星数据产品与马尔可夫链条的方法相结合,用于估算水平和沿着世界各地的庞大河流网络的任何地方排放,是水文中最有趣和最有前途的田间之一。本研究提出了Markov链(MC)方法的两个新扩展,即在线马尔可夫链(O-MC)和极端的在线 - 马尔可夫链(EO-MC)方法,以提高预测精度。 O-MC方法具有正确变量状态的在线实现的优点,并且EO-MC方法具有在线更新Markov矩阵(MM)以及正确变量状态的在线实现。使用短期卫星信号预测来评估新的O-MC和EO-MC方法,用于六种不同的案例研究河流。 Monte Carlo不确定性分析用于测量新的基于MC的方法的可靠性。每个模型开发1000次以计算两个指标,即95%的预测不确定性(95ppu)和平均距离因子(D-factor)。对于我们缺乏培训数据的情况,还检查了MC和两个扩展的o-MC和EO-MC的延伸。整个数据集的训练百分比(TRPR)从90%逐渐减少到1%,并且计算模型在非观察到的数据集中产生准确的未来信号的性能。考虑基于MC的方法的输入变量模拟(IVI)问题,并将结果与​​线性回归(LR),多层Perceptron(MLP),极端学习机(ELM)和径向基函数进行比较( RBF)回归方法。结果表明,EO-MC和O-MC的性能优于简单的MC方法。此外,得出结论,EOMC和O-MC在不确定分析中具有非常相似的性能,两种方法都是稳健的技术。 EO-MC与O-MC相比的主要优势

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