合成城市滑坡模拟库,以确定不同空间尺度和地貌的斜坡崩塌热点和驱动因素

IF 5.8 2区 工程技术 Q1 ENGINEERING, GEOLOGICAL
Elisa Bozzolan, Elizabeth Holcombe, Francesca Pianosi, Thorsten Wagener
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引用次数: 0

摘要

降雨引发的山体滑坡在发展中国家最为致命,而未来的城市扩张和气候变化可能会加剧现有风险。在这些地区,加强城市滑坡风险缓解和气候变化适应工作至关重要。目前的山体滑坡概率评估方法难以支持有效的缓解措施,因为它们未能在空间和时间尺度上代表当地的人为因素(如非正规住房)。为了应对这一挑战,我们在之前的工作中已经证明,代表这种局部变化的山坡尺度机理模型可用于创建城市滑坡合成库,以考虑数据和未来情景的不确定性。在这里,我们展示了这些库如何成为研究人员和利益相关者的探索工具,使他们能够研究不同空间尺度和地貌的斜坡稳定性变化。例如,研究结果突出显示了主要的边坡不稳定性驱动因素是如何随地点(如上游集水区与下游集水区)、土地覆盖(如森林与城市)和分析的空间尺度(如在山坡尺度上,边坡稳定性主要受地下水位高度控制,而在区域尺度上则受边坡几何形状控制)而变化的。最终,我们证明了随机分析可以加深对系统相互作用的理解,并有助于确定在不同空间尺度和不确定情景下都能发挥良好作用的减缓战略。即使未来条件未知,也应优先考虑这些策略。本推理以一个数据稀缺、非正规住房不断扩大的地区为例进行说明。不过,同样的方法也可应用于任何城市环境和任何基于机理的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Synthetic libraries of urban landslide simulations to identify slope failure hotspots and drivers across spatial scales and landscapes

Synthetic libraries of urban landslide simulations to identify slope failure hotspots and drivers across spatial scales and landscapes

Rainfall-triggered landslides are most deadly in developing countries, and future urban sprawl and climate change could intensify existing risks. In these regions, enhancing efforts in urban landslide risk mitigation and climate change adaptation is crucial. Current landslide probability assessment methodologies struggle to support effective mitigation because they fail to represent local anthropogenic factors (e.g. informal housing) across space and time scales. To meet this challenge, we demonstrated in previous work that hillslope-scale mechanistic models representing such localised changes can be used to create synthetic libraries of urban landslides that account for both data and future scenario uncertainty. Here, we show how these libraries can become an explorative tool for researchers and stakeholders, allowing them to investigate slope stability variations across spatial scales and landscapes. Results highlight, for example, how the main slope instability drivers change according to the location (e.g., upper vs lower catchment), the landcover (e.g. forest vs urban) and the spatial scale analysed (e.g. at hillslope scale slope stability was mostly controlled by water table height, whereas at regional scale by slope geometry). Ultimately, we demonstrate that stochastic analyses can lead to a greater understanding of the system interactions and they can support the identification of mitigation strategies that perform well across spatial scales and uncertain scenarios. These strategies should be prioritised even if future conditions are unknown. This reasoning is shown on a data-scarce region with expanding informal housing. However, the same methodology can be applied to any urban context and with any mechanistic-based model.

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来源期刊
Landslides
Landslides 地学-地球科学综合
CiteScore
13.60
自引率
14.90%
发文量
191
审稿时长
>12 weeks
期刊介绍: Landslides are gravitational mass movements of rock, debris or earth. They may occur in conjunction with other major natural disasters such as floods, earthquakes and volcanic eruptions. Expanding urbanization and changing land-use practices have increased the incidence of landslide disasters. Landslides as catastrophic events include human injury, loss of life and economic devastation and are studied as part of the fields of earth, water and engineering sciences. The aim of the journal Landslides is to be the common platform for the publication of integrated research on landslide processes, hazards, risk analysis, mitigation, and the protection of our cultural heritage and the environment. The journal publishes research papers, news of recent landslide events and information on the activities of the International Consortium on Landslides. - Landslide dynamics, mechanisms and processes - Landslide risk evaluation: hazard assessment, hazard mapping, and vulnerability assessment - Geological, Geotechnical, Hydrological and Geophysical modeling - Effects of meteorological, hydrological and global climatic change factors - Monitoring including remote sensing and other non-invasive systems - New technology, expert and intelligent systems - Application of GIS techniques - Rock slides, rock falls, debris flows, earth flows, and lateral spreads - Large-scale landslides, lahars and pyroclastic flows in volcanic zones - Marine and reservoir related landslides - Landslide related tsunamis and seiches - Landslide disasters in urban areas and along critical infrastructure - Landslides and natural resources - Land development and land-use practices - Landslide remedial measures / prevention works - Temporal and spatial prediction of landslides - Early warning and evacuation - Global landslide database
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