摘要
Land subsidence is a geohazard phenomenon caused by the lowering of land elevation due to the compression of the sinking land soil body,thus creating an excessive constraint on the safe construction and sustainable development of cities.The use of accurate and efficient means for land subsidence prediction is of remarkable importance for preventing land subsidence and ensuring urban safety.Although the current time-series prediction method can accomplish relatively high accuracy,the predicted settlement points are independent of each other,and the existence of spatial dependence in the data itself is lost.In order to unlock this problem,a spatial convolutional long short-term memory neural network(ConvLSTM)based on the spatio-temporal prediction method for land subsidence is constructed.To this end,a cloud platform is employed to obtain a long time series deformation dataset from May 2017 to November 2021 in the understudied area.A convolutional structure to extract spatial features is utilized in the proposed model,and an LSTM structure is linked to the model for time-series prediction to achieve unified modeling of temporal and spatial correlation,thereby rationally predicting the land subsidence progress trend and distribution.The experimental results reveal that the prediction results of the ConvLSTM model are more accurate than those of the LSTM in about 62%of the understudied area,and the overall mean absolute error(MAE)is reduced by about 7%.The achieved results exhibit better prediction in the subsidence center region,and the spatial distribution characteristics of the subsidence data are effectively captured.The present prediction results are more consistent with the distribution of real subsidence and could provide more accurate and reasonable scientific references for subsidence prevention and control in the Beijing-Tianjin-Hebei region.
作者
冷靖
高明亮
宫辉力
陈蓓蓓
周超凡
史珉
陈征
李翔
LENG Jing;GAO Mingliang;GONG Huili;CHEN Beibei;ZHOU Chaofan;SHI Min;CHEN Zheng;LI Xiang(Beijing Laboratory of Water Resources Security,Capital Normal University,Beijing 100048,China;Key Laboratory of Mechanism,Prevention and Mitigation of Land Subsidence,MOE,Capital Normal University,Beijing 100048,China;College of Resources Environment and Tourism,Capital Normal University,Beijing 100048,China;Hebei Cangzhou Groundwater and Land Subsidence National Observation and Research Station,Cangzhou 061000,Hebei,China;School of Electrical Engineering,Nantong University,Nantong 226019,Jiangsu,China;Technical Centre for Soil,Agriculture and Rural Ecology and Environment,Ministry of Ecology and Environment,Beijing 100012,China)
基金
National Natural Science Foundation of China,No.41930109/D010702
Beijing Outstanding Young Scientist Program,No.BJJWZYJH01201910028032
R&D Program of Beijing Municipal Education Commission,No.KM202210028009。