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结合元启发式算法与极限学习机模型用于河流水流量预测

Integrated metaheuristic algorithms with extreme learning machine models for river streamflow prediction.

作者信息

Van Thieu Nguyen, Nguyen Ngoc Hung, Sherif Mohsen, El-Shafie Ahmed, Ahmed Ali Najah

机构信息

Faculty of Computer Science, PHENIKAA University, Yen Nghia, Ha Dong, Hanoi, 12116, Viet Nam.

Artificial Intelligence Independent Research Group, Hanoi, Viet Nam.

出版信息

Sci Rep. 2024 Jun 12;14(1):13597. doi: 10.1038/s41598-024-63908-w.

Abstract

Accurate river streamflow prediction is pivotal for effective resource planning and flood risk management. Traditional river streamflow forecasting models encounter challenges such as nonlinearity, stochastic behavior, and convergence reliability. To overcome these, we introduce novel hybrid models that combine extreme learning machines (ELM) with cutting-edge mathematical inspired metaheuristic optimization algorithms, including Pareto-like sequential sampling (PSS), weighted mean of vectors (INFO), and the Runge-Kutta optimizer (RUN). Our comparative assessment includes 20 hybrid models across eight metaheuristic categories, using streamflow data from the Aswan High Dam on the Nile River. Our findings highlight the superior performance of mathematically based models, which demonstrate enhanced predictive accuracy, robust convergence, and sustained stability. Specifically, the PSS-ELM model achieves superior performance with a root mean square error of 2.0667, a Pearson's correlation index (R) of 0.9374, and a Nash-Sutcliffe efficiency (NSE) of 0.8642. Additionally, INFO-ELM and RUN-ELM models exhibit robust convergence with mean absolute percentage errors of 15.21% and 15.28% respectively, a mean absolute errors of 1.2145 and 1.2105, and high Kling-Gupta efficiencies values of 0.9113 and 0.9124, respectively. These findings suggest that the adoption of our proposed models significantly enhances water management strategies and reduces any risks.

摘要

准确的河流流量预测对于有效的资源规划和洪水风险管理至关重要。传统的河流流量预测模型面临诸如非线性、随机行为和收敛可靠性等挑战。为了克服这些问题,我们引入了新颖的混合模型,该模型将极限学习机(ELM)与前沿的受数学启发的元启发式优化算法相结合,包括类帕累托序列采样(PSS)、向量加权均值(INFO)和龙格 - 库塔优化器(RUN)。我们的比较评估包括来自八个元启发式类别的20个混合模型,使用尼罗河阿斯旺高坝的流量数据。我们的研究结果突出了基于数学的模型的卓越性能,这些模型展示了更高的预测准确性、强大的收敛性和持续的稳定性。具体而言,PSS - ELM模型表现卓越,均方根误差为2.0667,皮尔逊相关指数(R)为0.9374,纳什 - 萨特克利夫效率(NSE)为0.8642。此外,INFO - ELM和RUN - ELM模型表现出强大的收敛性,平均绝对百分比误差分别为15.21%和15.28%,平均绝对误差分别为1.2145和1.2105,克林 - 古普塔效率值分别高达0.9113和0.9124。这些研究结果表明,采用我们提出的模型可显著增强水资源管理策略并降低风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/27da/11169458/33a8a69f2209/41598_2024_63908_Fig1_HTML.jpg

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