Atmospheric Contrail Detection with a Deep Learning Algorithm

Nasir Siddiqui
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引用次数: 2

Abstract

Aircraft contrail emission is widely believed to be a contributing factor to global climate change. We have used machine learning techniques on images containing contrails in hopes of being able to identify those which contain contrails and those that do not. The developed algorithm processes data on contrail characteristics as captured by long-term image records. Images collected by the United States Deparment of Energy’s Atmospheric Radiation Management user facility(ARM) were used to train a deep convolutional neural network for the purpose of this contrail classification. The neural network model was trained with 1600 images taken by the Total Sky Imager(TSI) from March 2017 and achieved an accuracy of 97.5% on the training set of images and an accuracy of 98.5% on the validation set.
基于深度学习算法的大气轨迹检测
人们普遍认为飞机尾迹排放是导致全球气候变化的一个因素。我们已经在包含尾迹的图像上使用了机器学习技术,希望能够识别哪些包含尾迹,哪些不包含。所开发的算法处理由长期图像记录捕获的轨迹特征数据。美国能源部大气辐射管理用户设施(ARM)收集的图像被用来训练一个深度卷积神经网络,以实现这种轨迹分类。利用2017年3月全天空成像仪(TSI)拍摄的1600幅图像对神经网络模型进行训练,在图像训练集上的准确率为97.5%,在验证集上的准确率为98.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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