改进降雨-径流建模的人工蜂鸟算法优化提升树

IF 2.2 3区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Hydroinformatics Pub Date : 2023-12-13 DOI:10.2166/hydro.2023.187
Lyce Ndolo Umba, Ilham Yahya Amir, Gebre Gelete, Hüseyin Gökçekuş, Ikenna D. Uwanuakwa
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引用次数: 0

摘要

降雨-径流模型是水文研究的重要组成部分,其准确性对水资源管理至关重要。机器学习领域的最新进展促使人们开发出了更复杂的降雨-径流模型,但仍有改进的余地。本研究提出了一种利用人工蜂鸟算法(AHA)优化助推树算法的新型河流建模方法。利用各种统计和图形性能指标,将 AHA 助推树算法模型与支持向量机(SVM)和高斯过程回归(GPR)这两种成熟方法进行了比较。结果显示,AHA-boosted 树算法模型的性能明显优于 SVM 和 GPR 模型,R2 为 0.932,RMSE 为 5.358 m3/s,MAE 为 2.365 m3/s,MSE 为 28.705 m3/s。SVM 模型紧随其后,而 GPR 模型的精确度最低。不过,所有模型在捕捉水文图的峰值流量方面都表现不佳。在评估中,使用统计和图形性能指标(包括时间序列图、散点图和泰勒图)进行评估至关重要。结果表明,尽管在预测峰值流量事件方面存在一定的挑战,但 AHA 增强树算法有可能成为提高降雨-径流建模精确度的最佳选择。
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Artificial hummingbird algorithm-optimized boosted tree for improved rainfall-runoff modelling
Rainfall-runoff modelling is a critical component of hydrological studies, and its accuracy is essential for water resource management. Recent advances in machine learning have led to the development of more sophisticated rainfall-runoff models, but there is still room for improvement. This study proposes a novel approach to streamflow modelling that uses the artificial hummingbird algorithm (AHA) to optimize the boosted tree algorithm. the AHA-boosted tree algorithm model was compared against two established methods, the support vector machine (SVM) and the Gaussian process regression (GPR), using a variety of statistical and graphical performance measures. The results showed that the AHA-boosted tree algorithm model significantly outperformed the SVM and GPR models, with an R2 of 0.932, RMSE of 5.358 m3/s, MAE of 2.365 m3/s, and MSE of 28.705 m3/s. The SVM model followed while the GPR model had the least accurate performance. However, all models underperformed in capturing the peak flow of the hydrograph. Evaluations using both statistical and graphical performance measures, including time series plots, scatter plots, and Taylor diagrams, were critical in this assessment. The results suggest that the AHA-boosted tree algorithm could potentially be a superior alternative for enhancing the precision of rainfall-runoff modelling, despite certain challenges in predicting peak flow events.
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来源期刊
Journal of Hydroinformatics
Journal of Hydroinformatics 工程技术-工程:土木
CiteScore
4.80
自引率
3.70%
发文量
59
审稿时长
3 months
期刊介绍: Journal of Hydroinformatics is a peer-reviewed journal devoted to the application of information technology in the widest sense to problems of the aquatic environment. It promotes Hydroinformatics as a cross-disciplinary field of study, combining technological, human-sociological and more general environmental interests, including an ethical perspective.
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