Wei Xing, Chen Mengen, Zhou Yulin, Zou Jianhua, Ran Libo, Shi Ruibo
School of Civil Engineering, Chongqing Three Gorges University, Chongqing, 404100, China.
Sci Rep. 2024 Dec 30;14(1):32008. doi: 10.1038/s41598-024-83695-8.
Runoff fluctuations under the influence of climate change and human activities present a significant challenge and valuable application in constructing high-accuracy runoff prediction models. This study aims to address this challenge by taking the Wanzhou station in the Three Gorges Reservoir area as a case study to optimize various prediction models. The study first selects artificial neural network (ANN) and support vector machine (SVM) as the base models. Then, it evaluates and selects from three time-series decomposition methods. Time-Varying Filter-based Empirical Mode Decomposition (TVF-EMD), Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN), and Variational Mode Decomposition (VMD). Subsequently, these decomposition methods are coupled with optimization algorithms, including Whale Optimization Algorithm (WOA), Grasshopper Optimization Algorithm (GOA), and Sparrow Search Algorithm (SSA), to construct various hybrid prediction models. The results indicate that: (1) The single prediction model LSTM demonstrated higher prediction accuracy compared to BP and SVM; (2) The VMD-LSTM model outperformed the CEEMDAN-LSTM and TVF-EMD-LSTM models. Compared to the single LSTM model, the Nash-Sutcliffe Efficiency (NSE) and Pearson's correlation coefficient (R) of the VMD-LSTM model were improved by 15.06% and 6.82%, respectively; (3) Among the machine learning prediction models coupled with various methods, the VMD-SSA-LSTM model achieved the highest accuracy. Compared to the VMD-LSTM model, the NSE and R values of the VMD-SSA-LSTM model were further increased by 13.09% and 4.26%, respectively. Employing a "decomposition-reconstruction" strategy combined with robust optimization algorithms enhances the performance of machine learning prediction models, thereby significantly improving the runoff prediction capabilities in watershed hydrological models.
在气候变化和人类活动影响下的径流波动,在构建高精度径流预测模型方面既带来了重大挑战,也具有重要应用价值。本研究旨在通过以三峡库区万州站为例来优化各种预测模型,从而应对这一挑战。该研究首先选择人工神经网络(ANN)和支持向量机(SVM)作为基础模型。然后,从三种时间序列分解方法中进行评估和选择,即基于时变滤波器的经验模态分解(TVF-EMD)、自适应噪声完备总体经验模态分解(CEEMDAN)和变分模态分解(VMD)。随后,将这些分解方法与包括鲸鱼优化算法(WOA)、蚱蜢优化算法(GOA)和麻雀搜索算法(SSA)在内的优化算法相结合,构建各种混合预测模型。结果表明:(1)单一预测模型长短期记忆网络(LSTM)相比反向传播(BP)和支持向量机(SVM)表现出更高的预测精度;(2)VMD-LSTM模型优于CEEMDAN-LSTM和TVF-EMD-LSTM模型。与单一LSTM模型相比,VMD-LSTM模型的纳什-萨特克利夫效率(NSE)和皮尔逊相关系数(R)分别提高了15.06%和6.82%;(3)在与各种方法相结合的机器学习预测模型中,VMD-SSA-LSTM模型达到了最高精度。与VMD-LSTM模型相比,VMD-SSA-LSTM模型的NSE和R值分别进一步提高了13.09%和4.26%。采用“分解-重构”策略并结合稳健的优化算法可提升机器学习预测模型的性能,从而显著提高流域水文模型中的径流预测能力。