Classification and identification of extreme wind events by CNNs based on Shapelets and improved GASF-GADF

IF 4.2 2区 工程技术 Q1 ENGINEERING, CIVIL
Liujie Chen , Denghua Xu , Le Yang , Ching-Tai Ng , Jiyang Fu , Yuncheng He , Yinghou He
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引用次数: 0

Abstract

In this manuscript, we propose an automatic classification and recognition method for extreme wind events based on Convolutional Neural Networks (CNNs) and combining the Shapelet Transform (ST) algorithm with the improved Gramian Angular Summation Field - Gramian Angular Difference Field (GASF-GADF) 2D images construction format. First, a CNN model suitable for wind speed time series 2D images classification and recognition among five mainstream CNNs (ResNet-50, ShuffleNet0.5 × , DenseNet-121, EfficientNet-B2, and EfficientNetV2-S) is preferred based on the basic Gramian Angular Field (GAF) method; then, the improved GASF-GADF images construction format is proposed, and the optimal CNN is used to compare the classification and recognition results based on other three image conversion methods: Markov Transition Field (MTF), GASF, GADF. Last, it is proposed to utilize the ST algorithm to extract the feature subsequence Shapelets of wind speed time series to further improve the classification and recognition effect on extreme wind events. The effectiveness and applicability of the proposed method were verified through three extreme wind event datasets in this paper.

The results show that the combination of Shapelets and the improved GASF-GADF images transformation method proposed in this paper can effectively enhance the classification and recognition of extreme wind events by CNNs. Among them, EfficientNetV2-S combined with the method proposed in this paper achieves 99.50%, 99.50% and 97.50% recognition Accuracy for thunderstorm, gust front and typhoon, respectively. Meanwhile, it still has good robustness for extreme wind events disturbed by noise.

基于 Shapelets 和改进型 GASF-GADF 的 CNN 对极端风事件进行分类和识别
在本手稿中,我们提出了一种基于卷积神经网络(CNN)的极端风速事件自动分类和识别方法,并将小形变换(ST)算法与改进的革兰氏角和场-革兰氏角差场(GASF-GADF)二维图像构建格式相结合。首先,基于基本格拉米安角场(GAF)方法,在五种主流 CNN(ResNet-50、ShuffleNet0.5 ×、DenseNet-121、EfficientNet-B2 和 EfficientNetV2-S)中优选出适合风速时间序列二维图像分类和识别的 CNN 模型;然后,提出改进的 GASF-GADF 图像构建格式,并使用最优 CNN 比较基于其他三种图像转换方法的分类和识别结果:马尔可夫变换场 (MTF)、GASF 和 GADF。最后,提出利用 ST 算法提取风速时间序列的特征子序列 Shapelets,以进一步提高对极端风事件的分类和识别效果。本文通过三个极端风事件数据集验证了所提方法的有效性和适用性,结果表明,本文提出的 Shapelets 与改进的 GASF-GADF 图像转换方法相结合,能有效提高 CNN 对极端风事件的分类和识别能力。其中,EfficientNetV2-S 结合本文提出的方法对雷暴、阵风前沿和台风的识别准确率分别达到了 99.50%、99.50% 和 97.50%。同时,它对受噪声干扰的极端风事件仍具有良好的鲁棒性。
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来源期刊
CiteScore
8.90
自引率
22.90%
发文量
306
审稿时长
4.4 months
期刊介绍: The objective of the journal is to provide a means for the publication and interchange of information, on an international basis, on all those aspects of wind engineering that are included in the activities of the International Association for Wind Engineering http://www.iawe.org/. These are: social and economic impact of wind effects; wind characteristics and structure, local wind environments, wind loads and structural response, diffusion, pollutant dispersion and matter transport, wind effects on building heat loss and ventilation, wind effects on transport systems, aerodynamic aspects of wind energy generation, and codification of wind effects. Papers on these subjects describing full-scale measurements, wind-tunnel simulation studies, computational or theoretical methods are published, as well as papers dealing with the development of techniques and apparatus for wind engineering experiments.
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