Yuan Yonghao, Zhang Dujuan, Cui Jian, Zeng Tao, Zhang Gubin, Zhou Wenge, Wang Jinyang, Chen Feng, Guo Jiahui, Chen Zugang, Guo Hengliang
School of Geoscience and Technology, Zhengzhou University, Zhengzhou 450001, China.
National Supercomputing Center in Zhengzhou, Zhengzhou University, Zhengzhou 450001, China.
Sci Total Environ. 2024 Jan 10;907:167482. doi: 10.1016/j.scitotenv.2023.167482. Epub 2023 Oct 13.
In recent years, due to urbanization and human activities, groundwater overexploitation has become increasingly severe, resulting in some degrees of land subsidence and, consequently, causing a series of geological disasters and other environmental issues. Therefore, large-scale and high-precision land subsidence prediction is of great importance for the prevention and control of geological disasters. However, the existing prediction models and methods ignore the effects of the spatiotemporal non-stationary relationships between the influencing factors and the accumulated land subsidence, causing the poor accuracy of the predicted land subsidence results. In this context, a Geographically and Temporally Weighted Regression combined with the Long Short-Term Memory (LSTM)-multivariable and Attention Mechanism (AM) (GTWR-LSTMm-AM) was proposed to more accurately predict the deformation of time series land subsidence in this study. The small baseline subset-interferometric synthetic aperture radar (SBAS-InSAR) was used to reveal the temporal deformation information of Zhengzhou's main urban area, then the GTWR model was used to assess the spatiotemporal non-stationarity relationships between the accumulated land subsidence and its influencing factors monthly groundwater stability level, monthly precipitation and Normalized Difference Vegetation Index (NDVI) data, and to determine the corresponding weight matrix. In addition, we introduced an LSTM model with AM to extract key information from the time-series land subsidence data and adjusted the dynamic weights of the three selected influencing factors to predict the land subsidence in Zhengzhou's main urban area. The prediction accuracy R of the GTWR-LSTMm-AM model reaches 0.972, which is higher than 0.929 of the LSTMm model. The prediction accuracy RMSE is less than 3 mm and reaches 2.403 mm. In addition, we determined the importance of the impact factor on the subsidence results by randomly interrupting the impact factor time series, disclosuring that the monthly groundwater level contributed the most to the land subsidence in Zhengzhou's main urban area.
近年来,由于城市化进程和人类活动,地下水超采日益严重,导致一定程度的地面沉降,进而引发一系列地质灾害和其他环境问题。因此,大规模、高精度的地面沉降预测对于地质灾害的防治至关重要。然而,现有的预测模型和方法忽略了影响因素与累计地面沉降之间时空非平稳关系的影响,导致预测的地面沉降结果精度较差。在此背景下,本研究提出了一种结合地理加权回归和长短期记忆网络(LSTM)多变量与注意力机制(AM)(GTWR-LSTMm-AM)的方法,以更准确地预测时间序列地面沉降的变形。利用小基线集干涉合成孔径雷达(SBAS-InSAR)揭示郑州主城区的时间变形信息,然后使用GTWR模型评估累计地面沉降与其影响因素(月地下水稳定水平、月降水量和归一化植被指数(NDVI)数据)之间的时空非平稳关系,并确定相应的权重矩阵。此外,引入带有注意力机制的LSTM模型从时间序列地面沉降数据中提取关键信息,并调整三个选定影响因素的动态权重,以预测郑州主城区的地面沉降。GTWR-LSTMm-AM模型的预测精度R达到0.972,高于LSTMm模型的0.929。预测精度RMSE小于3毫米,达到2.403毫米。此外,通过随机中断影响因素时间序列确定了影响因素对沉降结果的重要性,结果表明月地下水位对郑州主城区地面沉降的贡献最大。