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KMID : 1024520160250040603
Journal of the Environmental Sciences
2016 Volume.25 No. 4 p.603 ~ p.613
A Study on Fog Forecasting Method through Data Mining Techniques in Jeju
Lee Young-Mi

Bae Joo-Hyun
Park Da-Bin
Abstract
Fog may have a significant impact on road conditions. In an attempt to improve fog predictability in Jeju, we conducted machine learning with various data mining techniques such as tree models, conditional inference tree, random forest, multinomial logistic regression, neural network and support vector machine. To validate machine learning models, the results from the simulation was compared with the fog data observed over Jeju(184 ASOS site) and Gosan(185 ASOS site). Predictive rates proposed by six data mining methods are all above 92% at two regions. Additionally, we validated the performance of machine learning models with WRF (weather research and forecasting) model meteorological outputs. We found that it is still not good enough for operational fog forecast. According to the model assesment by metrics from confusion matrix, it can be seen that the fog prediction using neural network is the most effective method.
KEYWORD
Fog prediction, Data mining, R, Tree models, Conditional inference tree, Random forest, Multinomial logistic regression, Neural network, Support vector machine, Confusion matrix
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