Zhang Gengxi, Zhou Zhenghong, Su Xiaoling, Ayantobo Olusola O
College of Water Resources and Architectural Engineering, Northwest A&F University, Yangling 712100, China.
Key Laboratory of Agricultural Soil and Water Engineering in Arid and Semiarid Areas, Ministry of Education, Northwest A&F University, Yangling 712100, China.
Entropy (Basel). 2019 Feb 1;21(2):132. doi: 10.3390/e21020132.
Streamflow forecasting is vital for reservoir operation, flood control, power generation, river ecological restoration, irrigation and navigation. Although monthly streamflow time series are statistic, they also exhibit seasonal and periodic patterns. Using maximum Burg entropy, maximum configurational entropy and minimum relative entropy, the forecasting models for monthly streamflow series were constructed for five hydrological stations in northwest China. The evaluation criteria of average relative error (), root mean square error (), correlation coefficient () and determination coefficient () were selected as performance metrics. Results indicated that the RESA model had the highest forecasting accuracy, followed by the CESA model. However, the BESA model had the highest forecasting accuracy in a low-flow period, and the prediction accuracies of RESA and CESA models in the flood season were relatively higher. In future research, these entropy spectral analysis methods can further be applied to other rivers to verify the applicability in the forecasting of monthly streamflow in China.
径流预测对于水库运行、防洪、发电、河流生态修复、灌溉和航运至关重要。尽管月径流时间序列具有统计性,但它们也呈现出季节性和周期性模式。利用最大Burg熵、最大构型熵和最小相对熵,为中国西北五个水文站构建了月径流序列预测模型。选择平均相对误差()、均方根误差()、相关系数()和决定系数()作为评估标准。结果表明,RESA模型预测精度最高,其次是CESA模型。然而,BESA模型在枯水期预测精度最高,RESA和CESA模型在汛期预测精度相对较高。在未来研究中,这些熵谱分析方法可进一步应用于其他河流,以验证其在中国月径流预测中的适用性。