Wildfire Predictions: Determining Reliable Models using Fused Dataset

Article ID

CSTSDE04H7S

Wildfire Predictions: Determining Reliable Models using Fused Dataset

Hariharan Naganathan
Hariharan Naganathan Arizona State University
Sudarshan P Seshasayee
Sudarshan P Seshasayee
Jonghoon Kim
Jonghoon Kim
Wai K Chong
Wai K Chong
Jui-Sheng Chou
Jui-Sheng Chou
DOI

Abstract

Wildfires are a major environmental hazard that causes fatalities greater than structural fire and other disasters. Computerized models have increased the possibilities of predictions that enhanced the firefighting capabilities in U.S. While predictive models are faster and accurate, it is still important to identify the right model for the data type analyzed. The paper aims at understanding the reliability of three predictive methods using fused dataset. Performances of these methods (Support Vector Machine, K-Nearest Neighbors, and decision tree models) are evaluated using binary and multiclass classifications that predict wildfire occurrence and its severity. Data extracted from meteorological database, and U.S fire database are utilized to understand the accuracy of these models that enhances the discussion on using right model for dataset based on their size. The findings of the paper include SVM as the best optimum models for binary and multiclass classifications on the selected fused dataset.

Wildfire Predictions: Determining Reliable Models using Fused Dataset

Wildfires are a major environmental hazard that causes fatalities greater than structural fire and other disasters. Computerized models have increased the possibilities of predictions that enhanced the firefighting capabilities in U.S. While predictive models are faster and accurate, it is still important to identify the right model for the data type analyzed. The paper aims at understanding the reliability of three predictive methods using fused dataset. Performances of these methods (Support Vector Machine, K-Nearest Neighbors, and decision tree models) are evaluated using binary and multiclass classifications that predict wildfire occurrence and its severity. Data extracted from meteorological database, and U.S fire database are utilized to understand the accuracy of these models that enhances the discussion on using right model for dataset based on their size. The findings of the paper include SVM as the best optimum models for binary and multiclass classifications on the selected fused dataset.

Hariharan Naganathan
Hariharan Naganathan Arizona State University
Sudarshan P Seshasayee
Sudarshan P Seshasayee
Jonghoon Kim
Jonghoon Kim
Wai K Chong
Wai K Chong
Jui-Sheng Chou
Jui-Sheng Chou

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Hariharan Naganathan. 2016. “. Global Journal of Computer Science and Technology – C: Software & Data Engineering GJCST-C Volume 16 (GJCST Volume 16 Issue C4): .

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Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

Issue Cover
GJCST Volume 16 Issue C4
Pg. 29- 40
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GJCST-C Classification: H.2.8
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Wildfire Predictions: Determining Reliable Models using Fused Dataset

Hariharan Naganathan
Hariharan Naganathan Arizona State University
Sudarshan P Seshasayee
Sudarshan P Seshasayee
Jonghoon Kim
Jonghoon Kim
Wai K Chong
Wai K Chong
Jui-Sheng Chou
Jui-Sheng Chou

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