Spatial and Temporal Distribution of Forest Fires in Mahdesh Province

Authors

DOI:

https://doi.org/10.3126/irjmmc.v7i1.93055

Keywords:

GIS, Madhesh province, RS, VIIRS

Abstract

Forest fires are the main causes of forest degradation worldwide, and Madhesh Province in Nepal is highly vulnerable despite its limited forest cover. This study analyzes the spatial and temporal distribution of forest fires in Madhesh Province and identifies fire risk zones using Remote Sensing (RS) and Geographic Information System (GIS) techniques. Key influencing factors are land cover, slope, aspect, elevation, land surface temperature, proximity to settlements, and to roads were integrated using a Fire Risk Index method. The final risk map classified the area into five categories are very low, low, moderate, high, and very high. Validation was conducted using VIIRS S-NPP fire incidence data from March 2012 to April 2022. A total of 28,619 fire incidents and fire density 0.14 were recorded, with the highest number in 2021 (4,173). Approximately 93% of fires occurred during the hot and dry season (March to mid-June), with March alone accounting for 52%. Parsa District experienced the highest number of incidents. Notably, 67.5% of fires occurred within high and very high-risk zones, which covers 51.75% of the study area, confirming the model’s reliability. The development of a forest fire risk zone map provides crucial data for understanding the forest fire problem and may serve as an effective tool for the Ministry of Forests and Environment, provincial and local governments, and other relevant authorities. The planning, prevention, and mitigation of forest fires will be made easier with the use of this data, improving risk management.

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Author Biographies

  • Sanjay Kumar Chaudhary, Tribhuvan University

    Institute of Forestry

    Hetauda Campus, Hetauda

  • Shiv Kumar Manjan, Tribhuvan University

    Institute of Forestry

    Hetauda Campus, Hetauda

  • Shailendra Kumar Yadav, Government of Nepal

    Division Forest Office Kathmandu

     Ministry of Forests and Environment

  • Ashok Parajuli, Tribhuvan University

    Institute of Forestry

    Hetauda Campus, Hetauda

     

  • Jyoti Manjan, Tribhuvan University

    Institute of Forestry

    Hetauda Campus, Hetauda

     

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Published

2026-03-31

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How to Cite

Spatial and Temporal Distribution of Forest Fires in Mahdesh Province . (2026). International Research Journal of MMC (IRJMMC), 7(1), 269-287. https://doi.org/10.3126/irjmmc.v7i1.93055

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