Quartile Regression and Ensemble Models for Extreme Events of Multi-Time Step-Ahead Monthly Reservoir Inflow Forecasting

被引:0
|
作者
Weekaew, Jakkarin [1 ,2 ]
Ditthakit, Pakorn [2 ]
Kittiphattanabawon, Nichnan [1 ]
Pham, Quoc Bao [3 ]
机构
[1] Walailak Univ, Sch Informat, Nakhon Si Thammarat 80160, Thailand
[2] Walailak Univ, Ctr Excellence Sustainable Disaster Management, Sch Engn & Technol, Nakhon Si Thammarat 80160, Thailand
[3] Univ Silesia Katowice, Inst Earth Sci, Fac Nat Sci, Bedzinska St 60, PL-41200 Sosnowiec, Poland
关键词
climate change; extreme event; hybrid model; reservoir inflow; quantile regression; ARTIFICIAL NEURAL-NETWORKS; ABSOLUTE ERROR MAE; RIVER; PERFORMANCE; PREDICTION; RMSE;
D O I
10.3390/w16233388
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Amidst changing climatic conditions, accurately predicting reservoir inflows in an extreme event is challenging and inevitable for reservoir management. This study proposed an innovative strategy under such circumstances through rigorous experimentation and investigations using 18 years of monthly data collected from the Huai Nam Sai reservoir in the southern region of Thailand. The study employed a two-step approach: (1) isolating extreme and normal events using quantile regression (QR) at the 75th, 80th, and 90th quantiles and (2) comparing the forecasting performance of individual machine learning models and their combinations, including Random Forest (RF), eXtreme Gradient Boosting (XGBoost), Long Short-Term Memory (LSTM), and Multiple Linear Regression (MLR). Forecasting accuracy was assessed at four lead times-3, 6, 9, and 12 months-using ten-fold cross-validation, resulting in 16 model configurations for each forecast period. The results show that combining quantile regression (QR) to distinguish between extreme and normal events with hybrid models significantly improves the accuracy of monthly reservoir inflow forecasting, except for the 9-month lead time, where the XG model continues to deliver the best performance. The top-performing models, based on normalized scores for 3-, 6-, 9-, and 12-month-ahead forecasts, are XG-MLR-75, RF-XG-80, XG-75, and XG-RF-75, respectively. Another crucial finding of this research is the uneven decline in prediction accuracy as lead time increases. Notably, the model performed best at t + 9, followed by t + 3, t + 12, and t + 6, respectively. This pattern is influenced by model characteristics, error propagation, temporal variability, data dynamics, and seasonal effects. Improving the accuracy and efficiency of hybrid model forecasting can greatly enhance hydrological operational planning and management.
引用
收藏
页数:24
相关论文
共 8 条
  • [1] Forecasting multi-step-ahead reservoir monthly and daily inflow using machine learning models based on different scenarios
    Ibrahim, Karim Sherif Mostafa Hassan
    Huang, Yuk Feng
    Ahmed, Ali Najah
    Koo, Chai Hoon
    El-Shafie, Ahmed
    APPLIED INTELLIGENCE, 2023, 53 (09) : 10893 - 10916
  • [2] Applicability of machine learning techniques for multi-time step ahead runoff forecasting
    Bajirao, Tarate Suryakant
    Elbeltagi, Ahmed
    Kumar, Manish
    Pham, Quoc Bao
    ACTA GEOPHYSICA, 2022, 70 (02) : 757 - 776
  • [3] Applicability of ANN Model and CPSOCGSA Algorithm for Multi-Time Step Ahead River Streamflow Forecasting
    Kareem, Baydaa Abdul
    Zubaidi, Salah L.
    Ridha, Hussein Mohammed
    Al-Ansari, Nadhir
    Al-Bdairi, Nabeel Saleem Saad
    HYDROLOGY, 2022, 9 (10)
  • [4] Multi-Step Time Series Forecasting with an Ensemble of Varied Length Mixture Models
    Ouyang, Yicun
    Yin, Hujun
    INTERNATIONAL JOURNAL OF NEURAL SYSTEMS, 2018, 28 (04)
  • [5] Multi-step ahead wind power forecasting for Ireland using an ensemble of VMD-ELM models
    Gonzalez-Sopena, Juan Manuel
    Pakrashi, Vikram
    Ghosh, Bidisha
    2020 31ST IRISH SIGNALS AND SYSTEMS CONFERENCE (ISSC), 2020, : 187 - 191
  • [6] Forecasting Multi-Step Ahead Monthly Reference Evapotranspiration Using Hybrid Extreme Gradient Boosting with Grey Wolf Optimization Algorithm
    Lu, Xianghui
    Fan, Junliang
    Wu, Lifeng
    Dong, Jianhua
    CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES, 2020, 125 (02): : 699 - 723
  • [7] The Use of Large-Scale Climate Indices in Monthly Reservoir Inflow Forecasting and Its Application on Time Series and Artificial Intelligence Models
    Kim, Taereem
    Shin, Ju-Young
    Kim, Hanbeen
    Kim, Sunghun
    Heo, Jun-Haeng
    WATER, 2019, 11 (02)
  • [8] Multi-step ahead hourly forecasting of air quality indices in Australia: Application of an optimal time-varying decomposition-based ensemble deep learning algorithm
    Jamei, Mehdi
    Ali, Mumtaz
    Jun, Changhyun
    Bateni, Sayed M.
    Karbasi, Masoud
    Farooque, Aitazaz A.
    Yaseen, Zaher Mundher
    ATMOSPHERIC POLLUTION RESEARCH, 2023, 14 (06)