He Zhongzheng, Lu Jiahao, Wang Yongqiang, Zhang Taixin, Wang Chao, Guo Jun, Ji Chen, Qin Hui
School of Infrastucture Engineering, Nanchang University, Nanchang, 330031, China.
Key Laboratory of Poyang Lake Environment and Resources Utilization, Ministry of Education, Nanchang University, Nanchang, 330031, China.
Sci Rep. 2025 Aug 29;15(1):31873. doi: 10.1038/s41598-025-17207-7.
The accuracy of cross-time-scale runoff prediction is affected by data characteristics, and accuracy improvement is challenging. This study examined 18,250 global hydrological stations, identified the multi-scale effect of runoff time series (MSER), and proposed an MSER-based improved prediction method (MSEIP). It introduced models, such as multiple linear regression (MLR) and Gaussian process regression (GPR), and evaluation metrics, including optimization proportion (OP) and optimization efficiency (OE), for comparative analysis. The results showed that MSER is applicable to over 73% of hydrological stations, and its applicability increases with larger flow rates. The improvement effect of MSEIP is negatively correlated with time scales (weekly to yearly scale, OPMAE: 0.99-0.60) and positively correlated with flow rates (from less than 100 to more than 2000 m/s, OPQR: 0.6-0.85). MLR is suitable for identifying MSER at small scales (OPMAE of 1 at the weekly scale), while GPR performs better at large scales (seasonally and yearly scales, GPR's OPQR is 0.67 and 0.58, respectively, higher than MLR's 0.29 and 0.21). MSER explains differences in runoff prediction accuracy across time scales from data characteristics, and MSEIP provides technical support and a reference for improving cross-scale prediction accuracy.
跨时间尺度径流预测的准确性受数据特征影响,提高准确性具有挑战性。本研究考察了18250个全球水文站,识别了径流时间序列的多尺度效应(MSER),并提出了一种基于MSER的改进预测方法(MSEIP)。引入了多元线性回归(MLR)和高斯过程回归(GPR)等模型,以及优化比例(OP)和优化效率(OE)等评估指标进行对比分析。结果表明,MSER适用于超过73%的水文站,其适用性随流量增大而增加。MSEIP的改进效果与时间尺度呈负相关(从周尺度到年尺度,OPMAE:0.99 - 0.60),与流量呈正相关(从小于100到大于2000 m/s,OPQR:0.6 - 0.85)。MLR适用于在小尺度上识别MSER(周尺度下OPMAE为1),而GPR在大尺度上表现更好(季节尺度和年尺度,GPR的OPQR分别为0.67和0.58,高于MLR的0.29和0.21)。MSER从数据特征解释了跨时间尺度径流预测准确性的差异,MSEIP为提高跨尺度预测准确性提供了技术支持和参考。