Statistical and deep learning models for reference evapotranspiration time series forecasting: A comparison of accuracy, complexity, and data efficiency

被引:6
|
作者
Ahmadi, Arman [1 ]
Daccache, Andre [1 ]
Sadegh, Mojtaba [2 ]
Snyder, Richard L. [3 ]
机构
[1] Univ Calif Davis, Dept Biol & Agr Engn, Davis, CA 95616 USA
[2] Boise State Univ, Dept Civil Engn, Boise, ID 83706 USA
[3] Univ Calif Davis, Dept Land Air & Water Resources, Davis, CA 95616 USA
关键词
Reference Evapotranspiration; Time Series Forecasting; Deep Learning; Prediction Accuracy; Data Efficiency; Computational Cost;
D O I
10.1016/j.compag.2023.108424
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Reference evapotranspiration (ETo) is an essential variable in agricultural water resources management and irrigation scheduling. An accurate and reliable forecast of ETo facilitates effective decision-making in agriculture. Although numerous studies assessed various methodologies for ETo forecasting, an in-depth multi-dimensional analysis evaluating different aspects of these methodologies is missing. This study systematically evaluates the complexity, computational cost, data efficiency, and accuracy of ten models that have been used or could potentially be used for ETo forecasting. These models range from well-known statistical forecasting models like seasonal autoregressive integrated moving average (SARIMA) to state-of-the-art deep learning (DL) algorithms like temporal fusion transformer (TFT). This study categorizes monthly ETo time series from 107 weather stations across California according to their length to better understand the forecasting models' data efficiency. Moreover, two forecasting strategies (i.e., recursive and multi-input multi-output) are employed for machine learning and DL models, and forecasts are assessed for different multi-step horizons. Our findings show that statistical forecasting models like Holt-Winters' exponential smoothing perform almost as well as complex DL models. Unlike statistical models, DL models generally suffer from low data efficiency and perform well only when enough data is available. Importantly, although the computational costs of most DL models are higher than statistical methods, this is not the case for all. Considering computational cost, data efficiency, and forecasting accuracy, our findings point to the superiority of the neural basis expansion analysis for interpretable time series forecasting (N-BEATS) architecture for univariate ETo time series forecasting. Moreover, our results suggest HoltWinters and Theta methods outperform SARIMA - the most employed statistical model for ETo forecasting in the literature - in accuracy and efficiency.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Time Series Forecasting of Software Vulnerabilities Using Statistical and Deep Learning Models
    Kalouptsoglou, Ilias
    Tsoukalas, Dimitrios
    Siavvas, Miltiadis
    Kehagias, Dionysios
    Chatzigeorgiou, Alexander
    Ampatzoglou, Apostolos
    [J]. ELECTRONICS, 2022, 11 (18)
  • [2] Are Deep Learning Models Practically Good as Promised? A Strategic Comparison of Deep Learning Models for Time Series Forecasting
    Ouyang, Zuokun
    Ravier, Philippe
    Jabloun, Meryem
    [J]. 2022 30TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2022), 2022, : 1477 - 1481
  • [3] Deep Learning Models for Time Series Forecasting: A Review
    Li, Wenxiang
    Law, K. L. Eddie
    [J]. IEEE ACCESS, 2024, 12 : 92306 - 92327
  • [4] Deep learning models for forecasting aviation demand time series
    Kanavos, Andreas
    Kounelis, Fotios
    Iliadis, Lazaros
    Makris, Christos
    [J]. NEURAL COMPUTING & APPLICATIONS, 2021, 33 (23): : 16329 - 16343
  • [5] Deep learning models for forecasting aviation demand time series
    Andreas Kanavos
    Fotios Kounelis
    Lazaros Iliadis
    Christos Makris
    [J]. Neural Computing and Applications, 2021, 33 : 16329 - 16343
  • [6] Review on deep learning models for time series forecasting in industry
    Li, Xiao-Rui
    Ban, Xiao-Juan
    Yuan, Zhao-Lin
    Qiao, Hao-Ran
    [J]. Gongcheng Kexue Xuebao/Chinese Journal of Engineering, 2022, 44 (04): : 757 - 766
  • [7] Comparing Effectiveness of Statistical Versus Deep Learning for Time Series Forecasting
    Yadav, Hemant N.
    Thakkar, Amit
    Rochwani, Nesh
    Patel, Rudra
    [J]. SMART TRENDS IN COMPUTING AND COMMUNICATIONS, VOL 5, SMARTCOM 2024, 2024, 949 : 255 - 265
  • [8] A Review on Deep Sequential Models for Forecasting Time Series Data
    Ahmed, Dozdar Mahdi
    Hassan, Masoud Muhammed
    Mstafa, Ramadhan J.
    [J]. APPLIED COMPUTATIONAL INTELLIGENCE AND SOFT COMPUTING, 2022, 2022
  • [9] Forecasting of Forex Time Series Data Based on Deep Learning
    Ni, Lina
    Li, Yujie
    Wang, Xiao
    Zhang, Jinquan
    Yu, Jiguo
    Qi, Chengming
    [J]. 2018 INTERNATIONAL CONFERENCE ON IDENTIFICATION, INFORMATION AND KNOWLEDGE IN THE INTERNET OF THINGS, 2019, 147 : 647 - 652
  • [10] Evaluating the Forecasting Accuracy of Pure Time Series Models on Retail Data
    Ramos, Patricia
    Oliveira, Jose Manuel
    Rebelo, Rui
    [J]. ADVANCES IN MANUFACTURING TECHNOLOGY XXX, 2016, 3 : 489 - 494