地震地质 ›› 2023, Vol. 45 ›› Issue (6): 1349-1369.DOI: 10.3969/j.issn.0253-4967.2023.06.006

• 研究论文 • 上一篇    下一篇

基于SCLSTM模型的MODIS地表温度产品重建方法

宋冬梅1,2)(), 张曼玉1),*(), 单新建3), 王斌1)   

  1. 1) 中国石油大学(华东)海洋与空间信息学院, 青岛 266580
    2) 海洋矿物资源实验室, 青岛海洋科学技术国家实验室, 青岛 266071
    3) 中国地震局地质研究所, 北京 100029
  • 收稿日期:2022-10-08 修回日期:2022-11-28 出版日期:2023-12-20 发布日期:2024-01-16
  • 通讯作者: 张曼玉, 女, 1997年生, 硕士, 主要研究方向为地表温度补值及地震前热异常检测, E-mail: zhangmanyu1203@163.com
  • 作者简介:

    宋冬梅, 女, 1973年生, 2003年于中国科学院沈阳应用生态研究所获理学博士学位, 教授, 主要研究方向为地震热红外异常信息提取, E-mail:

  • 基金资助:
    国家重点研发计划项目(2019YFC1509202); 国家自然科学基金(41772350); 国家自然科学基金(61371189); 国家自然科学基金(41701513)

MODIS LAND SURFACE TEMPERATURE DATA RECONSTRUCTION BASED ON THE SCLSTM MODEL

SONG Dong-mei1,2)(), ZHANG Man-yu1),*(), SHAN Xin-jian3), WANG Bin1)   

  1. 1) College of Oceanography and spatial information, China University of Petroleum, Qingdao 266580, China
    2) The Laboratory for Marine Mineral Resources, Qingdao National Laboratory for Marine Science and Technology, Qingdao 266071, China
    3) Institute of Geology, China Earthquake Administration, Beijing 100029, China
  • Received:2022-10-08 Revised:2022-11-28 Online:2023-12-20 Published:2024-01-16

摘要:

MODIS(Moderate-resolution Imaging Spectroradiometer, 中分辨率成像光谱仪)LST(Land Surface Temperature, 地表温度)产品在大气物质和能量交换、 气候变化研究及地震前兆热异常探测等方面具有重要价值。然而, 由于云的遮挡导致MODIS LST数据产品中存在大量空值, 限制了其广泛应用。为此, 文中提出了一种基于混合模型的地表温度重建方法——SCLSTM(即SSA-CLSTM)。与传统方法相比, 该方法无需建立复杂的回归关系模型。此外, 由于CNN(Convolutional Neural Network, 卷积神经网络)能够充分提取一维时间序列数据的局部特征, 而LSTM(Long Short-Term Memory, 长短期记忆)能够充分学习数据的长时间序列特征, 因此将CNN和LSTM结合能够更加充分地学习数据的潜在特征。首先, 使用SSA(Singular Spectrum Analysis, 奇异谱分析)模型提取出地表温度时间序列中的趋势值用于填补缺值像元, 实现地表温度的初步重建。然后, 再利用SCLSTM(即1DCNN-3层堆叠LSTM)模型学习数据的局部时序特征和长期依赖关系, 并实现对缺失像元的地表温度进行迭代预测, 完成数据的精细重建。新疆和田地区和四川汶川地区的实验结果表明, 文中方法与现有其他2种基于混合模型的重建方法相比, 重建后的LST数据误差最小, 与原始数据的一致性最高。其中, 文中方法的RMSE可降至0.712K, AD为0.695K, 重建后的LST数据与原始数据的相关系数可达0.95以上。此外, 气象站的实测地表温度数据也进一步验证了该方法的可靠性。文中所提方法为基于深度学习的LST重建工作提供了一种新的技术手段和思路, 同时也为基于LST的地表过程和地震热异常研究提供了坚实的数据基础。

关键词: 地表温度, SSA, CNN, LSTM, MODIS

Abstract:

MODIS land surface temperature(LST)products are of great value in the exchange of atmospheric matter and energy, climate change research, and detection of thermal anomalies as earthquake precursors. However, due to the influence of the cloud, there are a large number of missing values in the MODIS LST data products, limiting its wide application. Therefore, in this study we propose a method of surface temperature reconstruction based on mixed model: SCLSTM(SSA-CLSTM). Compared with traditional methods, this method does not need to establish a complex regression relationship model. In addition, since CNN can fully extract local features of one-dimensional time series data, and LSTM can fully learn long-term time series features of data, the combination of CNN and LSTM is capable of fully learning potential features of data.

Firstly in this study, the trend value of LST time series is extracted by SSA model to fill the missing pixel, and the initial reconstruction of LST is realized. Then, CLSTM(that is, 1DCNN, three-layer stacked LSTM)model is used to learn the local temporal characteristics and long-term dependence of the data, and the iterative prediction of the surface temperature of the missing pixel is realized to complete the fine reconstruction of the data. Based on the experimental results in Hotan region of Xinjiang and Wenchuan region of Sichuan, it can be proved that compared with the other two existing reconstruction methods based on mixed models, the reconstructed return data error is minimum, and the consistency with the original data is the highest. The RMSE of this method can be reduced to 0.712K, the minimum is 0.695K, and the correlation between the reconstructed return data and the original data can reach more than 0.95. In addition, the reliability of the method is further verified by the measured surface temperature data of the meteorological station. In summary, the proposed method provides a new technical means and ideas for deep learn-based reconstruction work, and also provides a solid data foundation for the research of surface processes and seismic thermal anomalies.

Using MODIS MYD11A2 remote sensing data and based on the proposed new method, the reconstruction experiments were carried out in Hotan region of Xinjiang Uygur Autonomous Region and Wenchuan region of Sichuan Province with the strategy of “remove-construction-contrast”, and the results were compared with other two mixed model methods. In addition, the reliability of the reconstruction accuracy of the proposed method is verified based on the 0cm measured surface temperature data of the weather station. The main conclusions are as follows:

(1)Through the reconstruction experiment of LST in Hotan, Xinjiang, it is concluded that compared with the existing two hybrid model reconstruction methods, the new method can better capture the time series features of LST data, so that the reconstructed image can not only better maintain the texture features of the original image, but also improve the accuracy of data reconstruction. The reconstruction error is the smallest among the three methods, RMSE can be reduced to 0.712K, and the correlation with the original data can reach more than 0.95 after reconstruction.

(2)In order to prove the regional applicability of the new method, a reconstruction experiment was carried out in Wenchuan region of Sichuan Province, and the missing values were reconstructed using the proposed method. Through this reconstruction experiment, we found that the reconstruction method in this paper can achieve better data reconstruction effect even in areas with more cloud and fog coverage, poor weather conditions, and complex land cover types, which proves the reliability and regional universality of the method in this paper.

(3)To further verify the reliability of the new method, the accuracy of the new method was evaluated by using the measured 0cm surface temperature data of 6 meteorological stations in Hotan region of Xinjiang. Based on the temporal variation characteristics of the MODIS return data from 2015 to 2019, the return values of 2020 are reconstructed, and the reconstructed results are compared with the measured data. By comparing the 0cm measured data of the meteorological station and the data before and after reconstruction, it can be concluded that the correlation and average deviation of the returned data and measured data after reconstruction based on SCLSTM method are closer to the correlation and average deviation of the original data and measured data. Therefore, the reconstructed data based on the new method can maintain a good consistency with the original data.

(4)By reconstructing the missing value regions of Hotan region of Xinjiang in 2008 and Wenchuan region of Sichuan in 2020, we found that the texture of the images after the supplementary value is fine and natural, without obvious boundary effect. Therefore, it can be proved that the method in this paper can realize the data reconstruction of a large area with missing values.

In summary, the method proposed in this paper provides a new idea and technique for MODIS surface temperature reconstruction work based on deep learning, and also provides a solid data foundation for the ground process research and seismic thermal anomaly information extraction based on MODIS LST.

Key words: Land surface temperature, SSA, CNN, LSTM, MODIS