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Chaotic feature analysis and forecasting of Liujiang River runoff

机译:柳江流域混沌特征分析与预报

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摘要

Because most of runoff time series with limited amount of data reveal inherently nonlinear and stochastic characteristics and tend to show chaotic behavior, strategies based on chaotic analysis are popular methods to analyze them from real systems in nonlinear dynamics. Only one kind of predicted method for yearly rainfall-runoff forecasting cannot achieve perfect performance. Thus, a mixture strategy denoted by WT-PSR-GA-NN, which is composed of wavelet transform (WT), phase space reconstruction (PSR), neural network (NN) and genetic algorithm (GA), is presented in this paper. In the WT-PSR-GA-NN framework, the process to deal with time series gathered from Liujiang River runoff data is given as follows: (1) the runoff time series was first decomposed into low-frequency and high-frequency sub-series by wavelet transformation; (2) the two sub-series were separately and independently reconstructed into phase spaces; (3) the transformed time series in the reconstructed phase spaces were modeled by neural network, which is trained by genetic algorithm to avoid trapping into local minima; (4) the predicted results in low-frequency parts were combined with the ones of high-frequency parts, and reconstructed with wavelet inverse transformation, to form the future behavior of the runoff. Experiments show that WT-PSR-GA-NN is effective and its forecasting results are high in accuracy not only for the short-term yearly hydrological time series but also for the long-term one. The comparison results revealed that the overall forecasting performance of WT-PSR-GA-NN proposed by us is superior to other popularity methods for all the test cases. We can conclude that WT-PSR-GA-NN can not only increase the forecasted accuracy, but also its own competitiveness in efficiency, effectiveness and robustness.
机译:由于大多数具有有限数据量的径流时间序列都具有固有的非线性和随机特征,并且倾向于表现出混沌行为,因此基于混沌分析的策略是从非线性动力学中的实际系统中进行分析的常用方法。年度降雨径流预报中只有一种预报方法无法达到理想的效果。因此,本文提出了一种由小波变换(WT),相空间重构(PSR),神经网络(NN)和遗传算法(GA)组成的WT-PSR-GA-NN混合策略。在WT-PSR-GA-NN框架中,从柳江径流数据中收集的时间序列的处理过程如下:(1)径流时间序列首先分解为低频子序列和高频子序列通过小波变换; (2)将两个子系列分别独立地重构为相空间; (3)利用神经网络对重构相空间中的变换时间序列进行建模,并通过遗传算法对其进行训练,避免陷入局部极小值; (4)将低频部分的预测结果与高频部分的预测结果结合,并用小波逆变换重建,形成径流的未来行为。实验表明,WT-PSR-GA-NN是有效的,其预测结果不仅在短期年度水文时间序列上而且在长期序列上都具有较高的准确性。比较结果表明,我们提出的WT-PSR-GA-NN的整体预测性能在所有测试案例中均优于其他流行方法。我们可以得出结论,WT-PSR-GA-NN不仅可以提高预测的准确性,而且可以提高效率,有效性和鲁棒性。

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