Detailed hazard identification of urban subsidence in Guangzhou and Foshan by combining InSAR and optical imagery

IF 7.5 1区 地球科学 Q1 Earth and Planetary Sciences International Journal of Applied Earth Observation and Geoinformation Pub Date : 2024-12-06 DOI:10.1016/j.jag.2024.104291
Yufang He, Mahdi Motagh, Xiaohang Wang, Xiaojie Liu, Hermann Kaufmann, Guochang Xu, Bo Chen
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Abstract

Recently Guangzhou and Foshan in China are experiencing significant urbanization and economic development. However, the accelerated urbanization process has contributed significantly to urban land subsidence, causing huge economic losses and endangering safety of infrastructure. This intricate activities on urban surfaces can also lead to pseudo danger in interpreting InSAR-based urban surface deformation, resulting in hazard misidentification in two cities. In order to more accurately identify the hazard of urban surface deformation, we innovatively present a combination of InSAR technology with multi-temporal optical remote sensing data. It can also analyze the specific causes of urban deformation at SAR pixel level in two cities. The SBAS-InSAR method was adopted to obtain an urban subsidence map from 2017 to 2020 based on 110 Sentinel-1 SAR image scenes. To obtain an urban surface change map with a high accuracy, an improved SwiT-UNet++ model was applied based on multi optical Google Earth imagery. By a combined analysis of SAR and optical images, we discovered multiple irregular funnels with subsidence at different scales in both cities, that are mostly relatable to urban surface constructions such as foundation compression, building demolition, and the construction of public facilities. Furthermore, to identify detailed hazard around surface changes, the buffer analysis based on InSAR surface deformation and urban surface change maps was conducted. It revealed the surface deformation signals around certain urban surface change areas are more obvious and pose certain hazard. Finally additional high-risk areas are found in the two cities. By subtracting the optical surface change detection map from the InSAR-based urban subsidence map, the “pseudo danger” caused by urban activities in the interpretation of InSAR-based urban surface deformation is eliminated, enabling precise identification of actual land subsidence hazards. It is realized through a risk assessment experiment in the research area by adding factors of urbanization processes. By combining multiple sources of data and using advanced analytical techniques, we could identify the determining factors contributing to urban subsidence and the detailed hazards and thus, provide valuable information for future urban developments.
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基于InSAR和光学影像的广州、佛山城市沉陷危害识别
近年来,中国的广州和佛山正在经历显著的城市化和经济发展。然而,城市化进程的加速加剧了城市地面沉降,造成了巨大的经济损失,并危及基础设施的安全。这种复杂的城市地表活动也可能导致在解释基于insar的城市地表变形时产生伪危险,从而导致两个城市的危险错误识别。为了更准确地识别城市地表变形的危害,我们创新地提出了InSAR技术与多时相光学遥感数据的结合。还可以在两个城市的SAR像元水平上分析城市变形的具体原因。基于110个Sentinel-1 SAR影像场景,采用SBAS-InSAR方法获取2017 - 2020年城市沉降图。为了获得高精度的城市地表变化图,基于多光学谷歌地球影像,采用改进的SwiT-UNet++模型。通过对SAR和光学图像的综合分析,我们发现两个城市都有多个不同规模的不规则下沉通道,这些下沉通道大多与城市地面施工有关,如地基压缩、建筑物拆除和公共设施建设。此外,为了识别地表变化的详细危害,基于InSAR地表变形和城市地表变化图进行了缓冲区分析。揭示了城市地表变化区域周边地表变形信号更为明显,具有一定的危险性。最后,在这两个城市中发现了额外的高风险区域。通过在insar城市沉降图中减去光学地表变化检测图,消除insar城市地表变形解释中城市活动造成的“伪危险”,实现对实际地面沉降危害的精确识别。通过在研究区进行风险评估实验,加入城市化进程因素,实现了风险评估。通过结合多种来源的数据和使用先进的分析技术,我们可以确定导致城市下沉的决定性因素和详细的危害,从而为未来的城市发展提供有价值的信息。
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来源期刊
CiteScore
10.20
自引率
8.00%
发文量
49
审稿时长
7.2 months
期刊介绍: The International Journal of Applied Earth Observation and Geoinformation publishes original papers that utilize earth observation data for natural resource and environmental inventory and management. These data primarily originate from remote sensing platforms, including satellites and aircraft, supplemented by surface and subsurface measurements. Addressing natural resources such as forests, agricultural land, soils, and water, as well as environmental concerns like biodiversity, land degradation, and hazards, the journal explores conceptual and data-driven approaches. It covers geoinformation themes like capturing, databasing, visualization, interpretation, data quality, and spatial uncertainty.
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