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基于 CEEMDAN-LSSVM-GM(1,1)模型的黄河下游径流量预测。

Runoff prediction of lower Yellow River based on CEEMDAN-LSSVM-GM(1,1) model.

机构信息

Water Conservancy College, North China University of Water Resources and Electric Power, Zhengzhou, 450046, China.

Collaborative Innovation Center of Water Resources Efficient Utilization and Protection Engineering, Zhengzhou, 450046, China.

出版信息

Sci Rep. 2023 Jan 27;13(1):1511. doi: 10.1038/s41598-023-28662-5.

Abstract

Accurate medium and long-term runoff forecasts play a vital role in guiding the rational exploitation of water resources and improving the overall efficiency of water resources use. Machine learning is becoming a common trend in time series forecasting research. Least squares support vector machine (LSSVM) and grey model (GM(1,1)) have received much attention in predicting rainfall and runoff in the last two years. "Decomposition-forecasting" has become one of the most important methods for forecasting time series data. Complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) decomposition method has powerful advantages in dealing with nonlinear data. Least squares support vector machine (LSSVM) has strong nonlinear fitting ability and good robustness. Gray model (GM(1,1)) can solve the problems of little historical data and low serial integrity and reliability. Based on their respective advantages, a combined CEEMDAN-LSSVM-GM(1,1) model was developed and applied to the runoff prediction of the lower Yellow River. To verify the reliability of the model, the prediction results were compared with the single LSSVM model, the CEEMDAN-LSSVM model and the CEEMDAN-support vector machines (SVM)-GM(1,1). The results show that the combined CEEMDAN-LSSVM-GM(1,1) model has a high accuracy and the prediction results are better than other models, which provides an effective prediction method for regional medium and long-term runoff prediction and has good application prospects.

摘要

准确的中长期径流预测在指导水资源合理开发和提高水资源利用整体效率方面发挥着至关重要的作用。机器学习在时间序列预测研究中已成为一种趋势。最小二乘支持向量机(LSSVM)和灰色模型(GM(1,1))在过去两年中在预测降雨和径流方面受到了广泛关注。“分解-预测”已成为时间序列数据预测的最重要方法之一。完备集合经验模态分解自适应噪声(CEEMDAN)分解方法在处理非线性数据方面具有强大的优势。最小二乘支持向量机(LSSVM)具有很强的非线性拟合能力和良好的鲁棒性。灰色模型(GM(1,1))可以解决历史数据少、序列完整性和可靠性低的问题。基于各自的优势,开发了一种组合 CEEMDAN-LSSVM-GM(1,1)模型,并将其应用于黄河下游的径流预测。为了验证模型的可靠性,将预测结果与单个 LSSVM 模型、CEEMDAN-LSSVM 模型和 CEEMDAN-支持向量机(SVM)-GM(1,1)模型进行了比较。结果表明,组合的 CEEMDAN-LSSVM-GM(1,1)模型具有较高的精度,预测结果优于其他模型,为区域中长期径流预测提供了一种有效的预测方法,具有良好的应用前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2f25/9883488/9014b25c9f21/41598_2023_28662_Fig1_HTML.jpg

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