基于迁移学习的卷积神经网络在内蒙古沙尘暴预报中的应用

Qing-dao-er-ji Ren, Ying Qiu, Tiancheng Li
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引用次数: 2

摘要

内蒙古中西部有6个沙漠和沙地,是中国沙尘暴的主要来源地之一。大部分地区地表干燥,降水少,冬春两季风大。对该地区沙尘暴的分析和研究对中国沙尘暴的研究和预报具有重要意义。综合分析国内外沙尘暴研究现状,应用卷积神经网络对卫星云图进行分类并建立沙尘暴预测模型的研究相对较少。利用基于迁移学习的卷积神经网络算法对红外卫星云图进行分类,建立沙尘暴预测模型,并对不同学习策略下建立的沙尘暴预测模型的预测精度进行了比较。结果表明,在迁移学习中使用参数迁移初始化网络,可以提高模型训练速度,提高模型的准确率和泛化能力。基于迁移学习卷积神经网络算法的沙尘暴预测模型对沙尘暴的发生有较高的预测精度,学习策略的变化对沙尘暴预测模型的预测精度有重要影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Convolution Neural Network Based on Transfer Learning in Sandstorm Prediction in Inner Mongolia
There are six deserts and sandy lands in the central and western part of Inner Mongolia, which is one of the main sources of sandstorms in China. In most areas, the surface is dry, the precipitation is low and the wind is strong in winter and spring. The analysis and study of sandstorms in this area is of great significance to the study and prediction of sandstorms in China. Based on the comprehensive analysis of the research status of sandstorms at home and abroad, the application of convolution neural network to classify satellite cloud images and establish prediction models of sandstorms are relatively few. The convolution neural network algorithm based on transfer learning is used to classify infrared satellite cloud images to establish Sand-dust Storm Prediction model, and the prediction accuracy of sand-dust storm prediction model established under different learning strategies is compared in the paper. The results show that the model training speed is fast and the accuracy and generalization ability of the model are improved by using the parameter migration initialization network in transfer learning. The Sand-dust Storm Prediction Model Based on the convolution neural network algorithm of transfer learning has a higher accuracy in predicting the occurrence of sand-dust storm and the change of learning strategies has an important influence on the prediction accuracy of sandstorm prediction model.
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