Prediction of Forest Fire Risk for Artillery Military Training using Weighted Support Vector Machine for Imbalanced Data

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초록

Since the 1953 truce, the Republic of Korea Army (ROKA) has regularly conducted artillery training, posing a risk of wildfires - a threat to both the environment and the public perception of national defense. To assess this risk and aid decision-making within the ROKA, we built a predictive model of wildfires triggered by artillery training. To this end, we combined the ROKA dataset with meteorological database. Given the infrequent occurrence of wildfires (imbalance ratio approximate to 1:24 in our dataset), achieving balanced detection of wildfire occurrences and non-occurrences is challenging. Our approach combines a weighted support vector machine with a Gaussian mixture-based oversampling, effectively penalizing misclassification of the wildfires. Applied to our dataset, our method outperforms traditional algorithms (G-mean=0.864, sensitivity=0.956, specificity= 0.781), indicating balanced detection. This study not only helps reduce wildfires during artillery trainings but also provides a practical wildfire prediction method for similar climates worldwide.

키워드

Forest fireImbalanced dataRisk predictionWeighted support vector machineLEARNING ALGORITHMSNEURAL-NETWORKCLASSIFICATIONSMOTEAREAINSIGHTDANGERSYSTEM
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Prediction of Forest Fire Risk for Artillery Military Training using Weighted Support Vector Machine for Imbalanced Data
저자
Nam, Ji HyunMun, JongminJo, SeongilKim, Jaeoh
DOI
10.1007/s00357-024-09467-1
발행일
2024-03
유형
Article
저널명
Journal of Classification
41
1
페이지
170 ~ 189