Comparison of stochastic and machine learning methods for multi-step ahead forecasting of hydrological processes

被引:1
|
作者
Georgia Papacharalampous
Hristos Tyralis
Demetris Koutsoyiannis
机构
[1] National Technical University of Athens,Department of Water Resources and Environmental Engineering, School of Civil Engineering
[2] Elefsina Air Base,Air Force Support Command, Hellenic Air Force
来源
Stochastic Environmental Research and Risk Assessment | 2019年 / 33卷
关键词
No free lunch theorem; Random forests; River discharge; Stochastic hydrology; Support vector machines; Time series;
D O I
暂无
中图分类号
学科分类号
摘要
Research within the field of hydrology often focuses on the statistical problem of comparing stochastic to machine learning (ML) forecasting methods. The performed comparisons are based on case studies, while a study providing large-scale results on the subject is missing. Herein, we compare 11 stochastic and 9 ML methods regarding their multi-step ahead forecasting properties by conducting 12 extensive computational experiments based on simulations. Each of these experiments uses 2000 time series generated by linear stationary stochastic processes. We conduct each simulation experiment twice; the first time using time series of 100 values and the second time using time series of 300 values. Additionally, we conduct a real-world experiment using 405 mean annual river discharge time series of 100 values. We quantify the forecasting performance of the methods using 18 metrics. The results indicate that stochastic and ML methods may produce equally useful forecasts.
引用
收藏
页码:481 / 514
页数:33
相关论文
共 50 条
  • [31] A review of machine learning concepts and methods for addressing challenges in probabilistic hydrological post-processing and forecasting
    Papacharalampous, Georgia
    Tyralis, Hristos
    FRONTIERS IN WATER, 2022, 4
  • [32] A Novel Hybrid Strategy Using Three-Phase Feature Extraction and a Weighted Regularized Extreme Learning Machine for Multi-Step Ahead Wind Speed Prediction
    Wang, Jujie
    Wang, Yanfeng
    Li, Yaning
    ENERGIES, 2018, 11 (02)
  • [33] Multi-step wind speed forecasting based on a hybrid forecasting architecture and an improved bat algorithm
    Xiao, Liye
    Qian, Feng
    Shao, Wei
    ENERGY CONVERSION AND MANAGEMENT, 2017, 143 : 410 - 430
  • [34] Selection between models through multi-step-ahead forecasting
    McElroy, Tucker S.
    Findley, David F.
    JOURNAL OF STATISTICAL PLANNING AND INFERENCE, 2010, 140 (12) : 3655 - 3675
  • [35] Four wind speed multi-step forecasting models using extreme learning machines and signal decomposing algorithms
    Liu, Hui
    Tian, Hong-qi
    Li, Yan-fei
    ENERGY CONVERSION AND MANAGEMENT, 2015, 100 : 16 - 22
  • [36] Multi-step ahead forecasts for electricity prices using NARX: A new approach, a critical analysis of one-step ahead forecasts
    Andalib, Arash
    Atry, Farid
    ENERGY CONVERSION AND MANAGEMENT, 2009, 50 (03) : 739 - 747
  • [37] Machine Learning Methods for Weather Forecasting: A Survey
    Zhang, Huijun
    Liu, Yaxin
    Zhang, Chongyu
    Li, Ningyun
    ATMOSPHERE, 2025, 16 (01)
  • [38] Application of Gaussian process regression to forecast multi-step ahead SPEI drought index
    Ghasemi, Porya
    Karbasi, Masoud
    Nouri, Alireza Zamani
    Tabrizi, Mahdi Sarai
    Azamathulla, Hazi Mohammad
    ALEXANDRIA ENGINEERING JOURNAL, 2021, 60 (06) : 5375 - 5392
  • [39] A hybrid model based on synchronous optimisation for multi-step short-term wind speed forecasting
    Li, Chaoshun
    Xiao, Zhengguang
    Xia, Xin
    Zou, Wen
    Zhang, Chu
    APPLIED ENERGY, 2018, 215 : 131 - 144
  • [40] Multi-Objective Particle Swarm Optimization Algorithm for Multi-Step Electric Load Forecasting
    Yang, Yi
    Shang, Zhihao
    Chen, Yao
    Chen, Yanhua
    ENERGIES, 2020, 13 (03)