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.
Author(s) Details:
Helen Prabha,
Department of Electronics and Communications Engineering, RMD, Engineering
College, Kavaraipettai, Tamil Nadu, India.
Saranya,
Department
of Electronics and Communications Engineering, RMD, Engineering College,
Kavaraipettai, Tamil Nadu, India.
Manisha,
Department of Electronics and Communications Engineering, RMD, Engineering
College, Kavaraipettai, Tamil Nadu, India.
Sowmya,
Department of Electronics and Communications Engineering, RMD,
Engineering College, Kavaraipettai, Tamil Nadu, India.
Please see the link here: https://stm.bookpi.org/CAERT-V1/article/view/14157
No comments:
Post a Comment