Title :
Prediction of Satellite Image Sequence for Weather Nowcasting Using Cluster-Based Spatiotemporal Regression
Author :
Shukla, Bipasha Paul ; Kishtawal, C.M. ; Pal, Pankaj Kumar
Author_Institution :
Atmos. & Oceanic Sci. Group, Indian Space Res. Organ., Ahmedabad, India
Abstract :
The flawed characterization of transitions between different meteorological structures is often regarded as one of the largest sources of error in weather forecasting. This paper attempts to improve upon the satellite-image-based nowcasting capability of models by coupling a clustering technique into a spatiotemporal autoregression method. Experimental results indicate the superiority of clustering-based regression algorithm in terms of statistically significant skill scores. The tests show an improvement in probability of detection with a decrease in false alarm rate as compared to unclassified predictions. The developed model has also been demonstrated to be useful in nowcasting of convective systems.
Keywords :
atmospheric techniques; image sequences; pattern clustering; regression analysis; remote sensing; weather forecasting; cluster-based spatiotemporal regression; clustering technique; clustering-based regression algorithm; convective system nowcasting; detection probability; meteorological structure; satellite image sequence; satellite-image-based nowcasting capability; spatiotemporal autoregression method; statistically significant skill scores; weather forecasting; weather nowcasting; Clouds; Clustering algorithms; Image sequences; Meteorology; Prediction algorithms; Satellites; Spatiotemporal phenomena; Fuzzy clustering; satellite-image-based models; weather nowcasting;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2013.2280094