Sand and Dust Storms Monitoring Using FY-4A Satellite Data based on Convolutional LSTM Networks

Hongjun Zhao, Guoqing Li, Fei Wang, Z. Zhen, Zihang Li, Jianan Li, X. Ge, Hui Ma
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Abstract

Improving the sand and dust storms monitoring capability can provide early warning information for sandstorms, and effectively improve the PV power prediction accuracy under sand and dust storms weather. In this paper, a hybrid model dust monitoring method based on a one-dimensional convolutional neural network (CNN) and a long short-term memory (LSTM) network is proposed. Using the normalized difference dust index (NDDI), CNN model, and 1DCNN-LSTM hybrid model, combined with the number four meteorological satellite (FY-4A). The channel scanning imaging radiometer AGRI (Advanced Geostationary Radiation Imager) data is used to monitor and study the sand and dust storms of the Taklimakan Desert in southern Xinjiang. The results show that the NDDI dust index established by images at different times needs to take different thresholds to identify the dust area. There are misidentifications in the coverage area as well as in the desert area. The sand and dust storms monitoring model established based on CNN network and 1DCNN-LSTM network, the accuracy (Accuracy) and loss function (Loss) of training samples and test samples are 99.9% and 1%, respectively, which has strong sand and dust storms monitoring capabilities. In practical applications, the 1DCNN-LSTM model is better than the CNN model in processing the boundary between sand and non-sand dust. In addition, the 1DCNN-LSTM model can also more accurately identify sand and dust storms in the case of a small amount of cloud occlusion area.
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基于卷积LSTM网络的FY-4A卫星沙尘监测
提高沙尘暴监测能力可以为沙尘暴提供预警信息,有效提高沙尘暴天气下光伏发电功率预测精度。提出了一种基于一维卷积神经网络(CNN)和长短期记忆网络(LSTM)的混合模型粉尘监测方法。采用归一化差分扬尘指数(NDDI)、CNN模型和1DCNN-LSTM混合模型,结合4号气象卫星(FY-4A)。利用通道扫描成像辐射计AGRI (Advanced Geostationary Radiation Imager)数据对新疆南部塔克拉玛干沙漠的沙尘暴进行了监测和研究。结果表明,不同时间图像建立的NDDI粉尘指数需要采用不同的阈值来识别粉尘区域。在覆盖区域和沙漠区域都存在错误识别。基于CNN网络和1DCNN-LSTM网络建立的沙尘暴监测模型,训练样本和测试样本的准确率(accuracy)和损失函数(loss)分别为99.9%和1%,具有较强的沙尘暴监测能力。在实际应用中,1DCNN-LSTM模型在处理沙尘与非沙尘边界方面优于CNN模型。此外,1DCNN-LSTM模式在少量遮挡云的情况下也能更准确地识别沙尘暴。
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