Lightning risk assessment of offshore wind farms by semi-supervised learning

被引:1
|
作者
Zhou, Qibin [1 ]
Ye, Jingjie [1 ,6 ]
Yang, Guohua [2 ]
Huang, Ruanming [3 ]
Zhao, Yang [4 ]
Gu, Yudan [4 ]
Bian, Xiaoyan [5 ]
机构
[1] Shanghai Univ, Sch Mechatron Engn & Automat, Shanghai, Peoples R China
[2] Tsinghua Univ, Dept Elect Engn, Beijing, Peoples R China
[3] State Grid Shanghai Municipal Elect Power Co, Planning Ctr, Shanghai, Peoples R China
[4] Shanghai Ctr Meteorol Disaster Prevent Technol, Shanghai, Peoples R China
[5] Shanghai Univ Elect Power, Sch Elect Engn, Shanghai, Peoples R China
[6] Shanghai Univ, Sch Mechatron Engn & Automat, Shangda Rd 99, Shanghai, Peoples R China
关键词
Lightning disaster; Laplacian support vector machine; Lightning risk assessment; Semi-supervised learning;
D O I
10.1016/j.engappai.2023.107050
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The wind turbine has rapidly developed worldwide with increasing height and scale, resulting in the increased risk of lightning strikes. When wind turbines were stroke by the lightning, they will be damaged, causing economic loss and outage. Lightning risk assessment can guide the improvement of lightning protection and the design of the wind farms to efficiently prevent lightning damages. The traditional lightning risk assessment methods rely on subjective features to some extent. The existing lightning risk assessment methods based on machine learning demand abundant labeled data. It is extremely difficult to label and acquire the data. This paper proposed a lightning risk assessment method based on semi-supervised learning to address the challenges of labeling negative samples and limited labeled data. The semi-supervised K-means algorithm is proposed to divide all data into three parts. The Laplacian support vector machine (LapSVM) with hyperparameters optimized by the particle swarm optimization (PSO) is used to assess the lightning risk. The proposed method has better performance than the standard SVM and neural network (NN). Moreover, previous researches did not consider lightning protection ability. This paper introduces the receptor number into lightning risk assessment. The assessment results suggest that there is higher lightning risk in areas with a great number of wind turbines, high lightning density, and strong lightning strength. The ocean area is more likely to have low lightning risk. The results are valuable for lightning protection optimization of existing wind farms and can give guidance for the plan of new wind farms.
引用
收藏
页数:9
相关论文
共 50 条
  • [41] Key issues to define a method of lightning risk assessment for wind farms
    March, Victor
    ELECTRIC POWER SYSTEMS RESEARCH, 2018, 159 : 50 - 57
  • [42] DeepHeart: Semi-Supervised Sequence Learning for Cardiovascular Risk Prediction
    Ballinger, Brandon
    Hsieh, Johnson
    Singh, Avesh
    Sohoni, Nimit
    Wang, Jack
    Tison, Geoffrey H.
    Marcus, Gregory M.
    Sanchez, Jose M.
    Maguire, Carol
    Olgin, Jeffrey E.
    Pletcher, Mark J.
    THIRTY-SECOND AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE / THIRTIETH INNOVATIVE APPLICATIONS OF ARTIFICIAL INTELLIGENCE CONFERENCE / EIGHTH AAAI SYMPOSIUM ON EDUCATIONAL ADVANCES IN ARTIFICIAL INTELLIGENCE, 2018, : 2079 - 2086
  • [43] Semi-supervised learning to improve generalizability of risk prediction models
    Chi, Shengqiang
    Li, Xinhang
    Tian, Yu
    Li, Jun
    Kong, Xiangxing
    Ding, Kefeng
    Weng, Chunhua
    Li, Jingsong
    JOURNAL OF BIOMEDICAL INFORMATICS, 2019, 92
  • [44] Semi-Supervised Learning via Regularized Boosting Working on Multiple Semi-Supervised Assumptions
    Chen, Ke
    Wang, Shihai
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2011, 33 (01) : 129 - 143
  • [45] Semi-supervised Neighborhood Preserving Discriminant Embedding: A Semi-supervised Subspace Learning Algorithm
    Mehdizadeh, Maryam
    MacNish, Cara
    Khan, R. Nazim
    Bennamoun, Mohammed
    COMPUTER VISION - ACCV 2010, PT III, 2011, 6494 : 199 - +
  • [46] Semi-supervised metric learning via topology preserving multiple semi-supervised assumptions
    Wang, Qianying
    Yuen, Pong C.
    Feng, Guocan
    PATTERN RECOGNITION, 2013, 46 (09) : 2576 - 2587
  • [47] Efficiently Learning the Graph for Semi-supervised Learning
    Sharma, Dravyansh
    Jones, Maxwell
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, 2023, 216 : 1900 - 1910
  • [48] Adaptive Active Learning for Semi-supervised Learning
    Li Y.-C.
    Xiao F.
    Chen Z.
    Li B.
    Ruan Jian Xue Bao/Journal of Software, 2020, 31 (12): : 3808 - 3822
  • [49] POSITIVE UNLABELED LEARNING BY SEMI-SUPERVISED LEARNING
    Wang, Zhuowei
    Jiang, Jing
    Long, Guodong
    2022 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, 2022, : 2976 - 2980
  • [50] An ecological risk assessment for the impacts of offshore wind farms on birds in Australia
    Reid, Keith
    Baker, G. Barry
    Woehler, Eric J.
    AUSTRAL ECOLOGY, 2023, 48 (02) : 418 - 439