Advancing Forest Fires Classification using Neurochaos Learning
Kunal Kumar Pant, Remya Ajai A S, Nithin Nagaraj

TL;DR
This paper introduces Neurochaos Learning, a chaos-based brain-inspired approach for forest fire classification that performs well with limited data, offering interpretability and surpassing traditional ML models in accuracy.
Contribution
The paper proposes Neurochaos Learning as a novel, data-efficient, and interpretable method for forest fire classification, outperforming conventional models especially in low-data scenarios.
Findings
RHNL achieves F1 score of 1.0 on Algerian dataset.
RHNL attains high precision of 0.90 on Canadian dataset.
NL outperforms traditional ML classifiers in accuracy.
Abstract
Forest fires are among the most dangerous and unpredictable natural disasters worldwide. Forest fire can be instigated by natural causes or by humans. They are devastating overall, and thus, many research efforts have been carried out to predict whether a fire can occur in an area given certain environmental variables. Many research works employ Machine Learning (ML) and Deep Learning (DL) models for classification; however, their accuracy is merely adequate and falls short of expectations. This limit arises because these models are unable to depict the underlying nonlinearity in nature and extensively rely on substantial training data, which is hard to obtain. We propose using Neurochaos Learning (NL), a chaos-based, brain-inspired learning algorithm for forest fire classification. Like our brains, NL needs less data to learn nonlinear patterns in the training data. It employs…
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