Forest Fire Occurrence Prediction Using Machine Learning

Prabha, Helen and Saranya, . and Manisha, . and Sowmya, . (2024) Forest Fire Occurrence Prediction Using Machine Learning. In: Current Approaches in Engineering Research and Technology Vol. 1. B P International, pp. 70-78. ISBN 978-81-972413-0-7

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Abstract

Forest fires annually devastate vast areas of forest cover, causing extensive damage to flora and fauna, and driving numerous species to extinction. Machine Learning offers a promising avenue for predicting forest fires, potentially enabling proactive measures to safeguard wildlife. This research focuses on predicting forest fire likelihood based on oxygen, temperature, and humidity levels at a given location. The proposed concept involves developing a website that accepts user inputs for these parameters and provides real-time forest fire probability predictions. The study aims to detect and alert forest fire occurrences using dataset-derived temperature, humidity, and oxygen values, culminating in the creation of a web interface for forest fire detection and monitoring.

Item Type: Book Section
Subjects: Journal Eprints > Engineering
Depositing User: Managing Editor
Date Deposited: 22 Apr 2024 04:44
Last Modified: 22 Apr 2024 04:44
URI: http://repository.journal4submission.com/id/eprint/3769

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