周定义, 左小清, 赵志芳, 喜文飞, 葛楚. 2023: 基于SBAS-InSAR和改进BP神经网络的城市地面沉降预测. 地质通报, 42(10): 1774-1783. DOI: 10.12097/j.issn.1671-2552.2023.10.013
    引用本文: 周定义, 左小清, 赵志芳, 喜文飞, 葛楚. 2023: 基于SBAS-InSAR和改进BP神经网络的城市地面沉降预测. 地质通报, 42(10): 1774-1783. DOI: 10.12097/j.issn.1671-2552.2023.10.013
    ZHOU Dingyi, ZUO Xiaoqing, ZHAO Zhifang, XI Wenfei, GE Chu. 2023: Prediction of urban land subsidence by SBAS-InSAR and improved BP neural network. Geological Bulletin of China, 42(10): 1774-1783. DOI: 10.12097/j.issn.1671-2552.2023.10.013
    Citation: ZHOU Dingyi, ZUO Xiaoqing, ZHAO Zhifang, XI Wenfei, GE Chu. 2023: Prediction of urban land subsidence by SBAS-InSAR and improved BP neural network. Geological Bulletin of China, 42(10): 1774-1783. DOI: 10.12097/j.issn.1671-2552.2023.10.013

    基于SBAS-InSAR和改进BP神经网络的城市地面沉降预测

    Prediction of urban land subsidence by SBAS-InSAR and improved BP neural network

    • 摘要: 针对现有城市地面沉降预测方法过度依赖沉降数据、模型单一等问题,以云南省昆明市主城区为研究对象,从多时序多因子角度提出一种改进BP神经网络在城市地面沉降中的预测方法。首先,利用SBAS-InSAR技术获取主城区地面沉降监测值,然后通过SPSSAU软件中的灰色关联分析和因子分析选取主城区地面沉降的影响因子,并将其与获取的沉降监测值从多因子多时序角度构建GA-BP和PSO-BP预测模型,最后,得出最优的预测模型并进行预测性能验证。实验结果表明:利用SBAS-InSAR能有效监测城市地面沉降;GA-BP算法相比PSO-BP算法在城市地面沉降预测中性能更好、精度更高;该方法可对长时间、大范围城市地面沉降预测和对某一沉降点多期沉降趋势进行预测。该方法可作为城市地面沉降预测的有效手段,为政府部门决策提供了一种高效快速的方法。

       

      Abstract: In response to the issues of excessive reliance on subsidence data and a lack of model diversity in existing urban ground subsidence prediction methods, this study focuses on the main urban area of Kunming City, Yunnan Province. A novel approach for predicting urban ground settlement is proposed, incorporating a multi-temporal sequence and multifactor perspective into the improved BP neural network. Firstly, SBAS-InSAR technology is utilized to acquire monitoring values of ground settlement in the main urban area. Subsequently, gray correlation analysis and factor analysis in SPSSAU software are employed to identify the influencing factors of ground settlement in this specific area. Based on the obtained settlement monitoring values and the identified influencing factors, GA-BP and PSO-BP prediction models are constructed from a multifactor multi-temporal sequence viewpoint. The optimal prediction model is determined and its performance is evaluated through comprehensive validation. Experimental results demonstrate that SBAS-InSAR effectively monitors urban ground settlement, while the GA-BP algorithm outperforms the PSO-BP algorithm in terms of prediction accuracy and overall performance. This method allows for long-term and large-scale predictions of urban ground settlement, as well as forecasting the settlement trends of specific points over multiple periods. Consequently, it serves as an effective tool for urban ground settlement prediction, providing governmental departments with an efficient and fast decision-making approach.

       

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