Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India

The Indian Himalayan region is experiencing frequent hazards and disasters related to permafrost. However, research on permafrost in this region has received very little or no attention. Therefore, it is important to have knowledge about the spatial distribution and state of permafrost in the Indian...

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Published in:Sustainability
Main Authors: Arvind Chandra Pandey, Tirthankar Ghosh, Bikash Ranjan Parida, Chandra Shekhar Dwivedi, Reet Kamal Tiwari
Format: Article in Journal/Newspaper
Language:English
Published: MDPI AG 2022
Subjects:
geo
Online Access:https://doi.org/10.3390/su142315731
https://doaj.org/article/8984ac9de137417cbfebd7a737dd6a4e
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spelling fttriple:oai:gotriple.eu:oai:doaj.org/article:8984ac9de137417cbfebd7a737dd6a4e 2023-05-15T17:55:21+02:00 Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India Arvind Chandra Pandey Tirthankar Ghosh Bikash Ranjan Parida Chandra Shekhar Dwivedi Reet Kamal Tiwari 2022-11-01 https://doi.org/10.3390/su142315731 https://doaj.org/article/8984ac9de137417cbfebd7a737dd6a4e en eng MDPI AG doi:10.3390/su142315731 2071-1050 https://doaj.org/article/8984ac9de137417cbfebd7a737dd6a4e undefined Sustainability, Vol 14, Iss 15731, p 15731 (2022) permafrost logistic regression model rock glacier Indian Himalayas geo envir Journal Article https://vocabularies.coar-repositories.org/resource_types/c_6501/ 2022 fttriple https://doi.org/10.3390/su142315731 2023-01-22T19:15:18Z The Indian Himalayan region is experiencing frequent hazards and disasters related to permafrost. However, research on permafrost in this region has received very little or no attention. Therefore, it is important to have knowledge about the spatial distribution and state of permafrost in the Indian Himalayas. Modern remote sensing techniques, with the help of a geographic information system (GIS), can assess permafrost at high altitudes, largely over inaccessible mountainous terrains in the Himalayas. To assess the spatial distribution of permafrost in the Alaknanda Valley of the Chamoli district of Uttarakhand state, 198 rock glaciers were mapped (183 active and 15 relict) using high-resolution satellite data available in the Google Earth database. A logistic regression model (LRM) was used to identify a relationship between the presence of permafrost at the rock glacier sites and the predictor variables, i.e., the mean annual air temperature (MAAT), the potential incoming solar radiation (PISR) during the snow-free months, and the aspect near the margins of rock glaciers. Two other LRMs were also developed using moderate-resolution imaging spectroradiometer (MODIS)-derived land surface temperature (LST) and snow cover products. The MAAT-based model produced the best results, with a classification accuracy of 92.4%, followed by the snow-cover-based model (91.9%), with the LST-based model being the least accurate (82.4%). All three models were developed to compare their accuracy in predicting permafrost distribution. The results from the MAAT-based model were validated with the global permafrost zonation index (PZI) map, which showed no significant differences. However, the predicted model exhibited an underestimation of the area underlain by permafrost in the region compared to the PZI. Identifying the spatial distribution of permafrost will help us to better understand the impact of climate change on permafrost and its related hazards and provide necessary information to decision makers to mitigate ... Article in Journal/Newspaper permafrost Unknown Indian Sustainability 14 23 15731
institution Open Polar
collection Unknown
op_collection_id fttriple
language English
topic permafrost
logistic regression model
rock glacier
Indian Himalayas
geo
envir
spellingShingle permafrost
logistic regression model
rock glacier
Indian Himalayas
geo
envir
Arvind Chandra Pandey
Tirthankar Ghosh
Bikash Ranjan Parida
Chandra Shekhar Dwivedi
Reet Kamal Tiwari
Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India
topic_facet permafrost
logistic regression model
rock glacier
Indian Himalayas
geo
envir
description The Indian Himalayan region is experiencing frequent hazards and disasters related to permafrost. However, research on permafrost in this region has received very little or no attention. Therefore, it is important to have knowledge about the spatial distribution and state of permafrost in the Indian Himalayas. Modern remote sensing techniques, with the help of a geographic information system (GIS), can assess permafrost at high altitudes, largely over inaccessible mountainous terrains in the Himalayas. To assess the spatial distribution of permafrost in the Alaknanda Valley of the Chamoli district of Uttarakhand state, 198 rock glaciers were mapped (183 active and 15 relict) using high-resolution satellite data available in the Google Earth database. A logistic regression model (LRM) was used to identify a relationship between the presence of permafrost at the rock glacier sites and the predictor variables, i.e., the mean annual air temperature (MAAT), the potential incoming solar radiation (PISR) during the snow-free months, and the aspect near the margins of rock glaciers. Two other LRMs were also developed using moderate-resolution imaging spectroradiometer (MODIS)-derived land surface temperature (LST) and snow cover products. The MAAT-based model produced the best results, with a classification accuracy of 92.4%, followed by the snow-cover-based model (91.9%), with the LST-based model being the least accurate (82.4%). All three models were developed to compare their accuracy in predicting permafrost distribution. The results from the MAAT-based model were validated with the global permafrost zonation index (PZI) map, which showed no significant differences. However, the predicted model exhibited an underestimation of the area underlain by permafrost in the region compared to the PZI. Identifying the spatial distribution of permafrost will help us to better understand the impact of climate change on permafrost and its related hazards and provide necessary information to decision makers to mitigate ...
format Article in Journal/Newspaper
author Arvind Chandra Pandey
Tirthankar Ghosh
Bikash Ranjan Parida
Chandra Shekhar Dwivedi
Reet Kamal Tiwari
author_facet Arvind Chandra Pandey
Tirthankar Ghosh
Bikash Ranjan Parida
Chandra Shekhar Dwivedi
Reet Kamal Tiwari
author_sort Arvind Chandra Pandey
title Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India
title_short Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India
title_full Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India
title_fullStr Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India
title_full_unstemmed Modeling Permafrost Distribution Using Geoinformatics in the Alaknanda Valley, Uttarakhand, India
title_sort modeling permafrost distribution using geoinformatics in the alaknanda valley, uttarakhand, india
publisher MDPI AG
publishDate 2022
url https://doi.org/10.3390/su142315731
https://doaj.org/article/8984ac9de137417cbfebd7a737dd6a4e
geographic Indian
geographic_facet Indian
genre permafrost
genre_facet permafrost
op_source Sustainability, Vol 14, Iss 15731, p 15731 (2022)
op_relation doi:10.3390/su142315731
2071-1050
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