Refined landslide inventory and susceptibility of Weining County, China, inferred from machine learning and Sentinel‐1 InSAR analysis

IF 2.1 3区 地球科学 Q2 GEOGRAPHY Transactions in GIS Pub Date : 2024-06-28 DOI:10.1111/tgis.13202
Xuguo Shi, Dianqiang Chen, Jianing Wang, Pan Wang, Yunlong Wu, Shaocheng Zhang, Yi Zhang, Chen Yang, Lunche Wang
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Abstract

Landslides are widely distributed mountainous geological hazards that threaten economic development and people's daily lives. Interferometric synthetic aperture radar (InSAR) with comprehensive coverage and high‐precision ground displacement monitoring abilities are frequently utilized for regional‐scale active slope detection. Moreover, InSAR measurements that characterize ground dynamics are integrated with conventional topographic, hydrological, and geological landslide conditioning factors (LCFs) for landslide susceptibility mapping (LSM). Weining County in southwest China, with complex geological conditions, steep terrain, and frequent tectonic activities, is prone to catastrophic landslide failures. In this study, we refined the landslide inventory of Weining County using one ascending and one descending Sentinel‐1 dataset acquired during 2015–2021 through a small baseline subset InSAR (SBAS InSAR) analysis. We then combine the LOS measurements from both datasets using multidimensional SBAS to obtain time series two‐dimensional (2D) displacements to characterize the kinematics of active slopes. Hot spot and cluster analysis (HCA) was carried out on 2D displacement rate maps to highlight clustered deformed areas and suppress noisy signals that occurred on single pixels. Two hundred fifty‐eight landslides (including 71 active identified in this study) are used to construct 76,412 positive samples for LSM. In our study, the HCA maps, instead of the 2D displacement maps, are integrated with conventional LCFs to form an LCF_HCA set to feed support vector machine (SVM), Random Forest (RF), extreme Gradient Boosting (XGBoost) and Light Gradient‐Boosting Machine (LightGBM) models. A conventional LCF (LCF_CON) set and an integrated 2D displacement maps (LCF_2D) set have also been adapted for comparison. The performance of the tree‐based ensemble methods distinctly outperforms the SVM model. In the meantime, models' performances using the LCF_HCA set are superior to that of the other 2 LCF sets from all evaluation metrics. The ranks of HCA maps increased compared with 2D displacement maps from feature importance analysis, which might lead to the better performance of models using the LCF_HCA set. With the continuous accumulation of SAR images, ground dynamic characteristics from InSAR can offer us opportunities to understand landslide kinematics and enhance LSM.
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通过机器学习和 Sentinel-1 InSAR 分析推断出的中国威宁县滑坡清单和易发程度
山体滑坡是分布广泛的山区地质灾害,威胁着经济发展和人们的日常生活。干涉合成孔径雷达(InSAR)具有全面的覆盖范围和高精度的地面位移监测能力,经常被用于区域范围的活动斜坡探测。此外,InSAR 测量的地面动力学特征与传统的地形、水文和地质滑坡调节因子(LCFs)相结合,可用于滑坡易感性绘图(LSM)。中国西南部的威宁县地质条件复杂、地形陡峭、构造活动频繁,容易发生灾难性滑坡崩塌。在本研究中,我们通过小基线子集 InSAR(SBAS InSAR)分析,利用 2015-2021 年期间获取的一个上升和一个下降 Sentinel-1 数据集,完善了威宁县的滑坡清单。然后,我们利用多维 SBAS 将两个数据集的 LOS 测量值结合起来,获得时间序列二维 (2D) 位移,从而确定活动斜坡的运动学特征。对二维位移速率图进行了热点和聚类分析(HCA),以突出聚类变形区域,并抑制发生在单个像素上的噪声信号。利用 258 个滑坡(包括本研究中确定的 71 个活动滑坡)构建了 76,412 个 LSM 正样本。在我们的研究中,HCA 地图(而非二维位移地图)与传统 LCF 集成,形成 LCF_HCA 集,为支持向量机 (SVM)、随机森林 (RF)、极梯度提升 (XGBoost) 和轻梯度提升机 (LightGBM) 模型提供输入。此外,还采用了传统 LCF(LCF_CON)集和综合二维位移图(LCF_2D)集进行比较。基于树的集合方法的性能明显优于 SVM 模型。同时,从所有评价指标来看,使用 LCF_HCA 集的模型性能都优于其他两个 LCF 集。与特征重要性分析得出的二维位移图相比,HCA 图的等级有所提高,这可能是使用 LCF_HCA 集的模型性能更好的原因。随着合成孔径雷达图像的不断积累,InSAR 提供的地面动态特征可为我们提供了解滑坡运动学和增强 LSM 的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Transactions in GIS
Transactions in GIS GEOGRAPHY-
CiteScore
4.60
自引率
8.30%
发文量
116
期刊介绍: Transactions in GIS is an international journal which provides a forum for high quality, original research articles, review articles, short notes and book reviews that focus on: - practical and theoretical issues influencing the development of GIS - the collection, analysis, modelling, interpretation and display of spatial data within GIS - the connections between GIS and related technologies - new GIS applications which help to solve problems affecting the natural or built environments, or business
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