Operational Forest-Fire Spread Forecasting Using the WRF-SFIRE Model

Author:

Kale Manish P.1,Meher Sri Sai1,Chavan Manoj1,Kumar Vikas1,Sultan Md. Asif1,Dongre Priyanka1,Narkhede Karan1,Mhatre Jitendra1,Sharma Narpati2,Luitel Bayvesh2,Limboo Ningwa2,Baingne Mahendra1,Pardeshi Satish1ORCID,Labade Mohan1,Mukherjee Aritra1,Joshi Utkarsh1,Kharkar Neelesh1,Islam Sahidul1,Pokale Sagar1,Thakare Gokul1,Talekar Shravani1,Behera Mukunda-Dev3ORCID,Sreshtha D.2,Khare Manoj1,Kaginalkar Akshara1,Kumar Naveen4,Roy Parth Sarathi5ORCID

Affiliation:

1. Centre for Development of Advanced Computing (C-DAC), 3rd Floor, C-DAC Innovation Park, Panchvati, Pashan, Pune 411008, India

2. Science & Technology Department, Government of Sikkim, Vigyan Bhawan, Deorali, Gangtok 737102, India

3. Centre for Oceans, Rivers, Atmosphere, and Land Sciences (CORAL), School of Water Resources, Indian Institute of Technology (IIT), Khargpur 721302, India

4. Ministry of Electronics and Information Technology, Government of India, Electronics Niketan, 6 CGO Complex, Lodhi Road, New Delhi 110003, India

5. FOLU/World Resource Institute (WRI), New Delhi 110016, India

Abstract

In the present research, the open-source WRF-SFIRE model has been used to carry out surface forest fire spread forecasting in the North Sikkim region of the Indian Himalayas. Global forecast system (GFS)-based hourly forecasted weather model data obtained through the National Centers for Environmental Prediction (NCEP) at 0.25 degree resolution were used to provide the initial conditions for running WRF-SFIRE. A landuse–landcover map at 1:10,000 scale was used to define fuel parameters for different vegetation types. The fuel parameters, i.e., fuel depth and fuel load, were collected from 23 sample plots (0.1 ha each) laid down in the study area. Samples of different categories of forest fuels were measured for their wet and dry weights to obtain the fuel load. The vegetation specific surface area-to-volume ratio was referenced from the literature. The atmospheric data were downscaled using nested domains in the WRF model to capture fire–atmosphere interactions at a finer resolution (40 m). VIIRS satellite sensor-based fire alert (375 m spatial resolution) was used as ignition initiation point for the fire spread forecasting, whereas the forecasted hourly weather data (time synchronized with the fire alert) were used for dynamic forest-fire spread forecasting. The forecasted burnt area (1.72 km2) was validated against the satellite-based burnt area (1.07 km2) obtained through Sentinel 2 satellite data. The shapes of the original and forecasted burnt areas matched well. Based on the various simulation studies conducted, an operational fire spread forecasting system, i.e., Sikkim Wildfire Forecasting and Monitoring System (SWFMS), has been developed to facilitate firefighting agencies to issue early warnings and carry out strategic firefighting.

Funder

R&D of IT Group, ITEA division, Ministry of Electronics and Information Technology, Govt. of India—vide

Publisher

MDPI AG

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