Prediction of Short-Time Cloud Motion Using a Deep-Learning Model

被引:13
|
作者
Su, Xinyue [1 ]
Li, Tiejian [1 ,2 ]
An, Chenge [1 ]
Wang, Guangqian [1 ]
机构
[1] Tsinghua Univ, State Key Lab Hydrosci & Engn, Beijing 100084, Peoples R China
[2] Qinghai Univ, State Key Lab Plateau Ecol & Agr, Xining 810016, Peoples R China
关键词
cloud motion prediction; deep learning; gated recurrent unit; convolutional long short-term memory; satellite cloud image; SKY IMAGER; IRRADIANCE; VARIABILITY; TRACKING; METHODOLOGY; EVOLUTION; NETWORKS; VECTORS; CLIMATE;
D O I
10.3390/atmos11111151
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A cloud image can provide significant information, such as precipitation and solar irradiation. Predicting short-time cloud motion from images is the primary means of making intra-hour irradiation forecasts for solar-energy production and is also important for precipitation forecasts. However, it is very challenging to predict cloud motion (especially nonlinear motion) accurately. Traditional methods of cloud-motion prediction are based on block matching and the linear extrapolation of cloud features; they largely ignore nonstationary processes, such as inversion and deformation, and the boundary conditions of the prediction region. In this paper, the prediction of cloud motion is regarded as a spatiotemporal sequence-forecasting problem, for which an end-to-end deep-learning model is established; both the input and output are spatiotemporal sequences. The model is based on gated recurrent unit (GRU)- recurrent convolutional network (RCN), a variant of the gated recurrent unit (GRU), which has convolutional structures to deal with spatiotemporal features. We further introduce surrounding context into the prediction task. We apply our proposed Multi-GRU-RCN model to FengYun-2G satellite infrared data and compare the results to those of the state-of-the-art method of cloud-motion prediction, the variational optical flow (VOF) method, and two well-known deep-learning models, namely, the convolutional long short-term memory (ConvLSTM) and GRU. The Multi-GRU-RCN model predicts intra-hour cloud motion better than the other methods, with the largest peak signal-to-noise ratio and structural similarity index. The results prove the applicability of the GRU-RCN method for solving the spatiotemporal data prediction problem and indicate the advantages of our model for further applications.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] NEULP: An End-to-End Deep-Learning Model for Link Prediction
    Zhong, Zhiqiang
    Zhang, Yang
    Pang, Jun
    [J]. WEB INFORMATION SYSTEMS ENGINEERING, WISE 2020, PT I, 2020, 12342 : 96 - 108
  • [32] Time-history performance optimization of flapping wing motion using a deep learning based prediction model
    Wang, Tianqi
    Liu, Liu
    Li, Jun
    Zeng, Lifang
    [J]. CHINESE JOURNAL OF AERONAUTICS, 2024, 37 (05) : 317 - 331
  • [33] Time-history performance optimization of flapping wing motion using a deep learning based prediction model
    Tianqi WANG
    Liu LIU
    Jun LI
    Lifang ZENG
    [J]. ChineseJournalofAeronautics., 2024, 37 (05) - 331
  • [34] Short-time Traffic Flow Prediction with ARIMA-GARCH Model
    Chen, Chenyi
    Hu, Jianming
    Meng, Qiang
    Zhang, Yi
    [J]. 2011 IEEE INTELLIGENT VEHICLES SYMPOSIUM (IV), 2011, : 607 - 612
  • [35] Empirical model for short-time prediction of COVID-19 spreading
    Catala, Marti
    Alonso, Sergio
    Alvarez-Lacalle, Enrique
    Lopez, Daniel
    Cardona, Pere-Joan
    Prats, Clara
    [J]. PLOS COMPUTATIONAL BIOLOGY, 2020, 16 (12)
  • [36] Application of Grey Prediction Model to Short-time Passenger Flow Forecast
    Zhang, Zhen
    Xu, Xiao
    Wang, Zhan
    [J]. MATERIALS SCIENCE, ENERGY TECHNOLOGY, AND POWER ENGINEERING I, 2017, 1839
  • [37] Development of pT classification prediction system in UTUC using deep-learning
    Daizumoto, K.
    Osafune, N.
    Torii, K.
    Nishimura, R.
    Uehara, H.
    Nishiyama, M.
    Kobayashi, S.
    Yutaro, S.
    Tomida, R.
    Ueno, Y.
    Kusuhara, Y.
    Fukawa, T.
    Yamaguchi, K.
    Yamamoto, Y.
    Takahashi, M.
    Furukawa, J.
    [J]. EUROPEAN UROLOGY, 2024, 85 : S852 - S853
  • [38] A deep-learning framework considering multiple motifs for traffic travel time prediction
    Yao, Baozhen
    Chen, Sixuan
    Nie, Xiaoqi
    Ma, Ankun
    Zhang, Mingheng
    [J]. PROCEEDINGS OF THE INSTITUTION OF CIVIL ENGINEERS-TRANSPORT, 2024, 177 (05) : 293 - 304
  • [39] Deep-Learning Framework for Terminal Airspace Trajectory Prediction and In-Time Prognostics
    Sudarsanan, Varun S.
    Kostiuk, Peter F.
    [J]. JOURNAL OF AEROSPACE INFORMATION SYSTEMS, 2024, 21 (08): : 628 - 640
  • [40] A deep-learning framework for amidation site prediction
    Shang, Penhui
    Wang, Duolin
    Liu, Dongpeng
    Xu, Dong
    [J]. 2017 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2017, : 2302 - 2302