Coupling Singular Spectrum Analysis with Least Square Support Vector Machine to Improve Accuracy of SPI Drought Forecasting

被引:0
作者
Quoc Bao Pham
Tao-Chang Yang
Chen-Min Kuo
Hung-Wei Tseng
Pao-Shan Yu
机构
[1] Duy Tan University,Institute of Research and Development
[2] Duy Tan University,Faculty of Environmental and Chemical Engineering
[3] National Cheng Kung University,Department of Hydraulic and Ocean Engineering
来源
Water Resources Management | 2021年 / 35卷
关键词
Standardized precipitation index; Least square support vector machine; Drought forecasting; Singular spectrum analysis;
D O I
暂无
中图分类号
学科分类号
摘要
The study proposed a Standardized Precipitation Index (SPI) drought forecasting model based on singular spectrum analysis (SSA) and single least square support vector machine (LSSVM) with a twofold investigation: (Beguería et al. Int J Climatol, 34(10): 3001–3023, 2014) the forecasting performance of the LSSVM-based model with or without coupling SSA and (Belayneh et al. J Hydrol, 508: 418–429, 2014) the model performances by using different inputs (i.e., antecedent SPIs and antecedent accumulated monthly rainfall) preprocessed by SSA. For the first part investigation, the LSSVM-based model using antecedent SPI as input (LSSVM1) and the LSSVM-based model coupling with SSA using antecedent SPI as input (SSA-LSSVM2) were developed. For the second part of investigation, the SSA-LSSVM-based model using antecedent accumulated monthly rainfall as input (SSA-LSSVM3) was developed and compared to SSA-LSSVM2. The drought indices (SPI3 and SPI6) were chosen as the outputs of the SPI drought forecasting models. The Tseng-Wen reservoir catchment in southern Taiwan was selected to test the aforementioned models. The results show that the forecasting performance of SSA-LSSVM2 is better than that of LSSVM1, which means the input data preprocessed by SSA can significantly increase the accuracy of the SPI drought forecasting. In addition, the performance comparison between SSA-LSSVM2 and SSA-LSSVM3 indicates that using antecedent accumulated monthly rainfalls (i.e., 3-month and 6-month accumulated rainfalls) as input of SSA-LSSVM3 are much better than using antecedent SPIs (i.e., SPI3 and SPI6) as input of SSA-LSSVM2. SSA-LSSVM3 is found to be the most appropriate model for SPI drought forecasting in the case study.
引用
收藏
页码:847 / 868
页数:21
相关论文
共 146 条
  • [1] Beguería S(2014)Standardized precipitation evapotranspiration index (SPEI) revisited: parameter fitting, evapotranspiration models, tools, datasets and drought monitoring Int J Climatol 34 3001-3023
  • [2] Vicente-Serrano SM(2014)Long-term SPI drought forecasting in the Awash River basin in Ethiopia using wavelet neural network and wavelet support vector regression models J Hydrol 508 418-429
  • [3] Reig F(2012)Multistep-ahead river flow prediction using LS-SVR at daily scale J Water Resource Prot 4 528-539
  • [4] Latorre B(2007)Drought forecasting using the standardized precipitation index Water Resour Manag 21 801-819
  • [5] Belayneh A(2009)Historical trends and variability of meteorological droughts in Taiwan/Tendances historiques et variabilité des sécheresses météorologiques à Taiwan Hydrol Sci J 54 430-441
  • [6] Adamowski J(2011)A threshold based wavelet denoising method for hydrological data modelling Water Resour Manag 25 1809-1830
  • [7] Khalil B(2016)Application of several data-driven techniques to predict a standardized precipitation index Atmósfera 29 121-128
  • [8] Ozga-Zielinski B(2016)Drought forecasting using neural networks, wavelet neural networks, and stochastic models: case of the Algerois Basin in North Algeria Water Resour Manag 30 2445-2464
  • [9] Bhagwat PP(2011)Prediction of daily crop reference evapotranspiration (ET0) values through a least-squares support vector machine model Hydrol Res 42 268-274
  • [10] Maity R(2009)Singular spectrum analysis: methodology and application to economics data J Syst Sci Complex 22 372-394