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Conference Paper Correlation Analysis Method of Sensor Data for Predicting the Forest Fire
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Authors
Ho Sun Shon, Jeong Hee Chi, Eun Hee Kim, Keun Ho Ryu, Doo Yeong Jung, Kyung Ok Kim
Issue Date
2005-10
Citation
International Symposium on Remote Sensing (ISRS) 2005, pp.186-188
Language
English
Type
Conference Paper
Abstract
Because forest fire changes the direction according to the environmental elements, it is difficult to predict the direction of it. Currently, though some researchers have been studied to which predict the forest fire occurrence and the direction of it, using the remote detection technique, it is not enough and efficient. And recently because of the development of the sensor technique, a lot of In-Situ sensors are being developed. These kinds of In-Situ sensor data are used to collect the environmental elements such as temperature, humidity, and the velocity of the wind. Accordingly we need the prediction technique about the environmental elements analysis and the direction of the forest fire, using the In-Situ sensor data. In this paper, as a technique for predicting the direction of the forest fire, we propose the correlation analysis technique about In-Situ sensor data such as temperature, humidity, the velocity of the wind. The proposed technique is based on the clustering method and clusters the In-Situ sensor data. And then it analyzes the correlation of the multivariate correlations among clusters. These kinds of prediction information not only helps to predict the direction of the forest fire, but also finds the solution after predicting the environmental elements of the forest fire. Accordingly, this technique is expected to reduce the damage by the forest fire which occurs frequently these days.
KSP Keywords
Clustering method, Correlation analysis method, Forest Fire Occurrence, In-Situ, Prediction technique, Sensor technique, detection techniques, environmental elements, remote detection, sensor data, situ sensors