A Review Of Detection Technique For Flooding Zone And Landslide Susceptibility Zone

Authors

  • Iksal Yanuarsyah Faculty of Science and Engineering Ibn Khaldun University of Bogor (UIKA Bogor)
  • Syarbaini Ahmad Faculty of Science & Information Technology International Islamic University College Selangor (KUIS)

DOI:

https://doi.org/10.53840/myjict7-1-7

Keywords:

Flooding, Landslide, approach, methodology, eligible data.

Abstract

Floods as one of natural disaster can trigger landslides. Floods and landslides generally occur on a small micro scale and usually produced on a large scale map. Several data parameters are used to describe the distribution area of flooding and landslides, such as Topographical, Geological, Land Use/Cover, Floor Area, Rainfall, Soil, River/Stream, Roads/Street, Seismicity, Intense Precipitations, Building Footprint Area, and Population. Prediction of flood zone and landslide susceptibility zones uses data parameters that are analyzed using a quantitative approach. Meanwhile, combination with a qualitative approach is usually used to analyze the data parameters that more influence on the occurrence of floods and landslides based on the frequency of disaster events. This paper is attempts (1) to review methodology used to predict flood event zones and landslide susceptibility zones or floods that trigger landslides with quantitative approaches, qualitative approaches and combinations thereof and (2) to perform eligible data used or material as driven factor and subfactor triggering flooding and landslide. From the acquisition of 109 references paper related to the prediction of flood disaster zones or landslide vulnerability zones, about 87 references paper were obtained that linked flood disaster zones and landslide vulnerability zones and used as input material. Based on selected paper identified particular parameter (12 factors and 17 subfactor) were used to describe the distribution area of floods and landslides.

 

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References

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Published

29-06-2022

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How to Cite

Yanuarsyah, I., & Ahmad, S. (2022). A Review Of Detection Technique For Flooding Zone And Landslide Susceptibility Zone. Malaysian Journal of Information and Communication Technology (MyJICT), 7(1), 28-41. https://doi.org/10.53840/myjict7-1-7

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