A machine-learning algorithm for wind gust prediction

被引:31
|
作者
Sallis, P. J. [1 ]
Claster, W. [2 ]
Hernandez, S. [3 ]
机构
[1] Auckland Univ Technol, Geoinformat Res Ctr, Auckland, New Zealand
[2] Ritsumeiken Asia Pacific Univ, Environm Res Lab, Beppu, Oita, Japan
[3] Univ Catolica Maule, Lab Procesamiento Informac Geospacial, Talca, Chile
关键词
Wind velocity modeling; Wind gust prediction; Machine-learning algorithms; Geostatistics; SPEED;
D O I
10.1016/j.cageo.2011.03.004
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Physical damage to property and crops caused by unanticipated wind gusts is a well understood phenomenon. Predicting its occurrence continues to be a challenge for meteorologists and climatologists. Various approaches to gust occurrence model building have been proposed. The very nature of the event is problematic because of its brief duration following a rapid change of state in wind velocity that immediately precedes it. Events classified as wind gusts have a typical duration of less than 20 s and are often much shorter. The rapidly accelerating wind velocity preceding them is often not apparent until the gust occurs. They come quickly, occur suddenly, and then end as abruptly as they began. Observations of 2000 gust events were made during the research to which this paper refers. These observations indicated a mean interval of 3.2 min between the beginning and end of wind velocity change and a noticeable linear progression in the acceleration pattern. It was also noted that state changes regularly occur, often over only seconds in time. In combination, these factors pose both a sampling and a data interpretation challenge, making reliable prediction difficult. This paper describes some new research undertaken to investigate methods of wind gust measurement and prediction. In particular, a machine-learning approach is taken to determine a satisfactory analytical process and to produce meaningful and useful results. An algorithm for use with real-time climate data collection and analysis is proposed, with a description of its implementation. Real-time data sampling provides input for this study using terrestrial sensor telemetry. Near-ground truth data are recorded independent of geostrophic upper atmosphere conditions. (C) 2011 Elsevier Ltd. All rights reserved.
引用
收藏
页码:1337 / 1344
页数:8
相关论文
共 50 条
  • [21] Machine-learning techniques for the prediction of protein–protein interactions
    Debasree Sarkar
    Sudipto Saha
    Journal of Biosciences, 2019, 44
  • [22] Surface Settlement Prediction of Rectangular Pipe-Jacking Tunnel Based on the Machine-Learning Algorithm
    Hu, Da
    Hu, Yongjia
    Yi, Shun
    Liang, Xiaoqiang
    Li, Yongsuo
    Yang, Xian
    JOURNAL OF PIPELINE SYSTEMS ENGINEERING AND PRACTICE, 2024, 15 (01)
  • [23] Accurate prediction of optimal cancer drug therapies from molecular profiles by a machine-learning algorithm
    McDonald, John F.
    Mezencev, Roman
    Long, Tran Q.
    Benigno, Benedict
    Bonta, Ioana
    Del Priore, Giuseppe
    JOURNAL OF CLINICAL ONCOLOGY, 2015, 33 (15)
  • [24] Machine-learning models for prediction of sepsis patients mortality
    Bao, C.
    Deng, F.
    Zhao, S.
    MEDICINA INTENSIVA, 2023, 47 (06) : 315 - 325
  • [25] Energy landscapes for a machine-learning prediction of patient discharge
    Das, Ritankar
    Wales, David J.
    PHYSICAL REVIEW E, 2016, 93 (06)
  • [26] Performance Prediction of NUMA Placement: a Machine-Learning Approach
    Arapidis, Fanourios
    Karakostas, Vasileios
    Papadopoulou, Nikela
    Nikas, Konstantinos
    Goumas, Georgios
    Koziris, Nectarios
    2018 16TH IEEE INTERNATIONAL CONFERENCE ON CLOUD COMPUTING TECHNOLOGY AND SCIENCE (CLOUDCOM 2018), 2018, : 296 - 301
  • [27] Machine-learning methods for stream water temperature prediction
    Feigl, Moritz
    Lebiedzinski, Katharina
    Herrnegger, Mathew
    Schulz, Karsten
    HYDROLOGY AND EARTH SYSTEM SCIENCES, 2021, 25 (05) : 2951 - 2977
  • [28] Representation of compounds for machine-learning prediction of physical properties
    Seko, Atsuto
    Hayashi, Hiroyuki
    Nakayama, Keita
    Takahashi, Akira
    Tanaka, Isao
    PHYSICAL REVIEW B, 2017, 95 (14)
  • [29] Design of Machine-Learning Classifier for Stock Market Prediction
    Srivastava A.K.
    Srivastava A.
    Singh S.
    Sugandha S.
    Tripta
    Gupta S.
    SN Computer Science, 2022, 3 (1)
  • [30] Prediction of an Acute Hypotensive Episode During an ICU Hospitalization With a Super Learner Machine-Learning Algorithm
    Cherifa, Menyssa
    Blet, Alice
    Chambaz, Antoine
    Gayat, Etienne
    Resche-Rigon, Matthieu
    Pirracchio, Romain
    ANESTHESIA AND ANALGESIA, 2020, 130 (05): : 1157 - 1166