Title of article :
APPLYING A MACHINE LEARNING TECHNIQUE TO CLASSIFICATION OF JAPANESE PRESSURE PATTERNS
Author/Authors :
H Kimura ، نويسنده , , H Kawashima ، نويسنده , , H Kusaka and H Kitagawa، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
In climate research, pressure patterns are often very important. When a climatologists need to know the days of a specific pressure pattern, for example "low pressure in Western areas of Japan and high pressure in Eastern areas of Japan (Japanese winter-type weather)," they have to visually check a huge number of surface weather charts. To overcome this problem, we propose an automatic classification system using a support vector machine (SVM), which is a machine-learning method. We attempted to classify pressure patterns into two classes: "winter type " and "non-winter type". For both training datasets and test datasets, we used the JRA-25 dataset from 1981 to 2000. An experimental evaluation showed that our method obtained a greater than 0.8 F-measure. We noted that variations in results were based on differences in training datasets.
Keywords :
pressure pattern , Machine learning , classification , Support vector machine (SVM)
Journal title :
Data Science Journal
Journal title :
Data Science Journal