Exploring and Analyzing Wildland Fire Data Via Machine Learning Techniques
Dipak Dulal, Joseph J. Charney, Michael Gallagher, Carmeliza Navasca, and Nicholas Skowronski

TL;DR
This study explores using machine learning models to predict turbulent kinetic energy from thermocouple temperature data during wildland fires, aiming to improve fire behavior understanding and management strategies.
Contribution
It demonstrates the effectiveness of machine learning techniques in estimating TKE from temperature data, advancing fire behavior modeling methods.
Findings
High accuracy in TKE prediction using ML models
Weak correlation between predictors and TKE still yields good predictions
Machine learning enhances understanding of fire turbulence dynamics
Abstract
This research project investigated the correlation between a 10 Hz time series of thermocouple temperatures and turbulent kinetic energy (TKE) computed from wind speeds collected from a small experimental prescribed burn at the Silas Little Experimental Forest in New Jersey, USA. The primary objective of this project was to explore the potential for using thermocouple temperatures as predictors for estimating the TKE produced by a wildland fire. Machine learning models, including Deep Neural Networks, Random Forest Regressor, Gradient Boosting, and Gaussian Process Regressor, are employed to assess the potential for thermocouple temperature perturbations to predict TKE values. Data visualization and correlation analyses reveal patterns and relationships between thermocouple temperatures and TKE, providing insight into the underlying dynamics. The project achieves high accuracy in…
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Taxonomy
TopicsFire effects on ecosystems · Fire dynamics and safety research · Fire Detection and Safety Systems
MethodsGaussian Process
