Parameterization modeling for wind drift factor in oil spill drift trajectory simulation based on machine learning

被引:4
|
作者
Liu, Darong [1 ]
Li, Yan [2 ]
Mu, Lin [2 ]
机构
[1] China Univ Geosci, Coll Marine Sci & Technol, Wuhan, Peoples R China
[2] Shenzhen Univ, Coll Life Sci & Oceanog, Shenzhen, Peoples R China
基金
中国国家自然科学基金;
关键词
oil spill; numerical simulation; wind drift factor; parameterization modeling; machine learning; MEDSLIK-II; BOHAI SEA; SUPPORT; TRANSPORT; FATE; PREDICTION; SYSTEM; IMPACT;
D O I
10.3389/fmars.2023.1222347
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Marine oil spill simulations typically employ the oil particle method to calculate particle trajectories, considering various factors such as wind, current, and turbulence. The wind drift factor (WDF), a random element determining the proportion of wind's effect on oil particles, is often empirically set as a constant in traditional oil spill models, introducing limitations. This study proposes a support vector regression-based parameterization modeling (SVR-PM) for the WDF. Using extensive buoy data and ocean hydrodynamic reanalysis data, we trained an SVR model to compute the WDF in real-time based on real-time wind speed. The SVR-PM was integrated into an oil spill model to enhance the computation of the wind-induced velocity term. We validated the model using satellite images of two significant oil spills, resulting in an excellent average agreement. The SVR-PM's advantage lies in enhancing the accuracy of wind-induced velocity term in oil spill simulations and demonstrating strong adaptability and generalizability over time and space. This advancement holds significant implications for maritime departments and emergency disaster response units.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Parameterization Method of Wind Drift Factor Based on Deep Learning in the Oil Spill Model
    Fangjie Yu
    Feiyang Gu
    Yang Zhao
    Huimin Hu
    Xiaodong Zhang
    Zhiyuan Zhuang
    Ge Chen
    Journal of Ocean University of China, 2023, 22 : 1505 - 1515
  • [2] Parameterization Method of Wind Drift Factor Based on Deep Learning in the Oil Spill Model
    Yu, Fangjie
    Gu, Feiyang
    Zhao, Yang
    Hu, Huimin
    Zhang, Xiaodong
    Zhuang, Zhiyuan
    Chen, Ge
    JOURNAL OF OCEAN UNIVERSITY OF CHINA, 2023, 22 (06) : 1505 - 1515
  • [3] The forecasting and analysis of oil spill drift trajectory during the Sanchi collision accident, East China Sea
    Li, Yan
    Yu, Han
    Wang, Zhao-yi
    Li, Yun
    Pan, Qing-qing
    Meng, Su-jing
    Yang, Yi-qiu
    Lu, Wei
    Guo, Kai-xuan
    OCEAN ENGINEERING, 2019, 187
  • [4] Numerical simulation study on drift and diffusion of Dalian Oil Spill
    Li, Huan
    Li, Yan
    Li, Cheng
    Wang, Guosong
    Xu, Shanshan
    Song, Jun
    Zhang, Song
    INTERNATIONAL CONFERENCE ON ENERGY ENGINEERING AND ENVIRONMENTAL PROTECTION (EEEP2016), 2017, 52
  • [5] Analysis of the Contribution of Wind Drift Factor to Oil Slick Movement under Strong Tidal Condition: Hebei Spirit Oil Spill Case
    Kim, Tae-Ho
    Yang, Chan-Su
    Oh, Jeong-Hwan
    Ouchi, Kazuo
    PLOS ONE, 2014, 9 (01):
  • [6] Remote Sensing as Input and Validation Tool for Oil Spill Drift Modeling
    Baschek, Bjoern
    Dick, Stephan
    Janssen, Frank
    Kuebert, Carina
    Massmann, Silvia
    Pape, Marlon
    Roers, Michael
    REMOTE SENSING OF THE OCEAN, SEA ICE, COASTAL WATERS, AND LARGE WATER REGIONS 2011, 2011, 8175
  • [7] Estimation of the wind drift factor and uncertainty analysis based on CFD computer simulations
    Sbragio, Ricardo
    Martins, Marcelo Ramos
    ENGINEERING COMPUTATIONS, 2023, 40 (03) : 679 - 693
  • [8] Surface Evolution of the Deepwater Horizon Oil Spill Patch: Combined Effects of Circulation and Wind-Induced Drift
    Le Henaff, Matthieu
    Kourafalou, Vassiliki H.
    Paris, Claire B.
    Helgers, Judith
    Aman, Zachary M.
    Hogan, Patrick J.
    Srinivasan, Ashwanth
    ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2012, 46 (13) : 7267 - 7273
  • [9] Modeling and simulation of temperature drift for ISFET-based pH sensor and its compensation through machine learning techniques
    Bhardwaj, Rishabh
    Sinha, Soumendu
    Sahu, Nishad
    Majumder, Sagnik
    Narang, Pratik
    Mukhiya, Ravindra
    INTERNATIONAL JOURNAL OF CIRCUIT THEORY AND APPLICATIONS, 2019, 47 (06) : 954 - 970
  • [10] Machine learning based concept drift detection for predictive maintenance
    Zenisek, Jan
    Holzinger, Florian
    Affenzeller, Michael
    COMPUTERS & INDUSTRIAL ENGINEERING, 2019, 137