Abstract

Mountains are popular tourist destinations due to their climate, fresh atmosphere, breathtaking sceneries, and varied topography. However, they are at times exposed to accidents, such as fire caused due to natural hazards and human activities. Such unforeseen fire accidents have a social, economic, and environmental impact on mountain towns worldwide. Protecting mountains from such fire accidents is also very challenging in terms of the high cost of fire containment resources, tracking fire spread, and evacuating the people at risk. This paper aims to fill this gap and proposes a three-fold methodology for fire safety in the mountains. The first part of the methodology is an optimization model for effective fire containment resource utilization. The second part of the methodology is a novel ensemble model based on machine learning, the heuristic approach, and principal component regression for predictive analytics of fire spread data. The final part of the methodology consists of an Internet of Things-based task orchestration approach to notify fire safety information to safety authorities. The proposed three-fold fire safety approach provides in-time information to safety authorities for making on-time decisions to minimize the damage caused by mountain fire with minimum containment cost. The performance of optimization models is evaluated in terms of execution time and cost. The particle swarm optimization-based model performs better in terms of cost, whereas the bat algorithm performs better in terms of execution time. The prediction models’ performance is evaluated in terms of root mean square error, mean absolute error, and mean absolute percentage error. The proposed ensemble-based prediction model accuracy for fire spread and burned area prediction is higher than that of the state-of-the-art algorithms. It is evident from the results that the proposed fire safety mechanism is a step towards efficient mountain fire safety management.

Highlights

  • Tourists are attracted to mountain destinations due to the climate, clean air, scenic beauty, unique landscapes, heritage, and local culture

  • We propose optimization and predictive optimization-based solutions for fire containment resource cost minimization

  • The second component is a prediction model based on an ensemble approach for predictive analytics of fire spread and burn data in an Internet of Things (IoT)-Edge environment

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Summary

Introduction

Tourists are attracted to mountain destinations due to the climate, clean air, scenic beauty, unique landscapes, heritage, and local culture. Mountain-based tourist destinations are exposed to accidents such as fires caused due to natural hazards and tourist activities. Such accidental fire events have a social, economic, and environmental impact on mountain towns worldwide. These tourist resorts should be designed with an acceptable level of fire safety to minimize the risks of fire hazards. Fire safety policies are considered in the construction of hotels, restaurants, and tourist resorts in the mountains Protection of these tourist places is essential, and it should be repaired and made functional after a fire hazard occurs [3]. As part of the essential solutions, tourist places are designed with an evacuation plan in case of fire

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