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Time Series Forecasting Using Wavelet-Least Squares Support Vector Machines and Wavelet Regression Models for Monthly Stream Flow Data

机译:小波-最小二乘支持向量机和小波回归模型对月流量数据的时间序列预测

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This study explores the least square support vector and wavelet technique (WLSSVM) in the monthly stream flow forecasting. This is a new hybrid technique. The 30 days periodic predicting statistics used in this study are derived from the subjection of this model to the river flow data of the Jhelum and Chenab rivers. The root mean square error (RMSE), mean absolute error (RME) and correlation (R) statistics are used for evaluating the accuracy of the WLSSVM and WR models. The accuracy of the WLSSVM model is compared with LSSVM, WR and LR models. The two rivers surveyed are in the Republic of Pakistan and cover an area encompassing 39,200 km2 for the Jhelum River and 67,515 km2 for the Chenab River. Using discrete wavelets, the observed data has been decomposed into sub-series. These have then appropriately been used as inputs in the least square support vector machines for forecasting the hydrological variables. The resultant observation from this comparison indicates the WLSSVM is more accurate than the LSSVM, WR and LR models in river flow forecasting.
机译:本研究探讨了每月流量预测中的最小二乘支持向量和小波技术(WLSSVM)。这是一种新的混合技​​术。本研究中使用的30天定期预测统计数据来自该模型对Jhelum和Chenab河流流量数据的约束。均方根误差(RMSE),平均绝对误差(RME)和相关性(R)统计量用于评估WLSSVM和WR模型的准确性。将WLSSVM模型的准确性与LSSVM,WR和LR模型进行了比较。所调查的两条河流在巴基斯坦共和国,其覆盖范围包括:杰勒姆河39,200平方公里和切纳布河67,515平方公里。使用离散小波,观测数据已分解为子系列。然后将它们适当地用作最小二乘支持向量机的输入,以预测水文变量。通过比较得出的结果表明,在河流流量预报中,WLSSVM比LSSVM,WR和LR模型更准确。

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