학술논문

Automated Forest Fire Detection using Atom Search Optimizer with Deep Transfer Learning Model
Document Type
Conference
Source
2023 2nd International Conference on Applied Artificial Intelligence and Computing (ICAAIC) Applied Artificial Intelligence and Computing (ICAAIC), 2023 2nd International Conference on. :222-227 May, 2023
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Robotics and Control Systems
Machine learning algorithms
Computational modeling
Transfer learning
Neural networks
Fires
Forestry
Time factors
Tuning
Remote sensing
Residual neural networks
Computer vision
Forest fire detection
Atom search optimizer
Deep learning
Intelligent models
Language
Abstract
Automated Forest Fire Detection (AFFD) contains the technology used to recognize and alert authorities on latent wildfires in a forested region. AFFD methods are latent to enhance response times and decrease the damage led by wildfires. But, these systems are utilized in conjunction with typical fire management practices like fire prevention and suppression measures, to provide the best achievable outcomes. There are several algorithms to AFFD, comprising computer vision (CV), remote sensing, and machine learning (ML). This article develops an Automated Forest Fire Detection using Atom Search Optimizer with Deep Transfer Learning (AFFD-ASODTL) model. The goal of the AFFD-ASODTL technique lies in the effectual recognition of forest fires accurately and promptly. In the presented AFFD-ASODTL technique, residual network (ResNet50) model is applied for feature vector generation. Besides, the ASO technique is exploited for the optimal hyperparameter tuning of the ResNet model. Meanwhile, Quasi-Recurrent Neural Network (QRNN) model is used for forest fire classification. To exhibit the optimum resultant of the AFFD-AS ODTL system, a comprehensive set of simulations is carried out. The comparative study highlighted the improvised results of the AFFD-ASODTL method over other models.