Affiliation:
1. Indian Institute of Engineering Science and Technology,Shibpur
2. IIRS: Indian Institute of Remote Sensing
3. Tripura University
4. Shaheed Bhagat Singh College
Abstract
Abstract
Darjeeling-Sikkim Himalaya is a hotspot of landslide occurrences in India. Losses of natural and human resources has become common and frequent news for this area as an effect of landslide. At the same time, it’s a very potential zone from developmental and tourism perspective which leads to emerging population growth and settlement expansion. The directional magnitude of this sprawling depends on the physical, environmental and infrastructural strengths of the area. But this can be threatened by landslide. Hence, to minimize loss of lives and property, optimization and restriction of developmental activities in highly sensitive areas is the need of the hour. Kalimpong is a highly sensitive site for such issue for its emerging urban agglomeration. Hence, the case study was conducted in Kalimpong-I block in Darjeeling District. Quantitative simulation by multivariate logistic regression was carried out based on influencing factors and landslide inventory data for landslide susceptibility analysis. Digital elevation model (DEM), Landsat-8 OLI satellite imagery and also some secondary data were used to generate the individual spatial database to formulate dependent variables. Spatial overlay analysis with the final outputs for predicted urban sprawling and predicted landslide occurrence zones enabled the managing authority to identify future highly vulnerable zones as well as the safer zones for settlement and infrastructure expansion. This helped the authority to restrict the set-ups resulting minimization of elements at risk. It can help in the disaster preparedness as well as mitigation planning. Therefore, this study shows a holistic approach towards effective disaster management and risk resilience.
Publisher
Research Square Platform LLC
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