Landslide Susceptibility Analysis for GIS and Remote Sensing
A special issue of Remote Sensing (ISSN 2072-4292). This special issue belongs to the section "Remote Sensing for Geospatial Science".
Deadline for manuscript submissions: closed (30 April 2024) | Viewed by 6584
Special Issue Editors
Interests: cartographic models; temporal topology and data models; geographic information sciences and technology; remote sensing data analysis; planetary geology and geomorphology; planetary resources and exploration
Special Issues, Collections and Topics in MDPI journals
Interests: InSAR; planetary mapping; error regulation of planetary topography
Special Issues, Collections and Topics in MDPI journals
Special Issue Information
Dear Colleagues,
Landslides are natural hazards that are challenging to model. The associated risks are difficult to assess due to their complexity and a large number of uncertainties related to their development. They occur as a result of over-steepened slopes, and their formation and development are mainly influenced by the underlying geology, climate factors, erosional regime, or anthropogenic stressors such as construction or mining. An increasing world population, the need for finding additional space for people, even in challenging environments, as well as the accumulating effects of climate change, all demand a better understanding of landslide formation in order to work on better decision-making for mitigating the impact of landslides. This paradigm shift from disaster management towards understanding risks has been emphasized by the Sendai Framework for Disaster Risk Reduction (DRR) 2015–2030.
Landslide susceptibility analyses are approaches to identifying areas that are more susceptible to landslides based on various geological, environmental, and anthropogenic factors. Such analyses might be based on traditional mapping by analyzing spatial distributions of landslides and their triggering factors. Other analysis approaches may cover classical statistical analysis, advanced multi-variable regression models, and also contemporary and innovative machine learning-based tools. Such analyses are therefore considered to be an important tool for DRR as they help to implement effective decision-making and improve urban/rural planning for areas prone to landslides.
This Special Issue invites contributions in all fields of landslide susceptibility mapping and analyses using remote-sensing data and GIS-based analysis approaches. We especially invite contributions in the field of multitemporal data analyses as well as satellite image time series (SITS) analysis. In addition, submissions presenting in situ fieldwork data and their contribution to validating remote-sensing data are highly encouraged. We would also like to invite contributions that establish a crosslink between policy and decision-making in local or national governments, as well as reports on collaborative approaches for risk mitigation. We encourage contributions with a link to the Sustainable Development Goals (SDG) and their indicator metrics, in particular SDG 11 (Sustainable Cities and Communities, 13 (Climate Action), or 15 (Life on Land). Landslides have several connections to Environmental, Social, and Governance (ESG) factors, and we would therefore like to invite contributions in this field as well.
Prof. Dr. Stephan van Gasselt
Prof. Dr. Shih-Yuan Lin
Guest Editors
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Keywords
- landslides
- landslide susceptibility
- decision-making
- remote sensing data analyses
- spatial data analyses and GIS
- satellite image time series
- multitemporal analysis
- regression analysis
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