Title
Extracting Dense Regions From Hurricane Trajectory Data
Abstract
Weather data is a classic example of spatio-temporal data, with time and space as two of its key attributes. Clustering has been one of the key techniques used for analyzing the storm trajectories. Trajectory based clustering algorithms consider whole trajectories as clustering units, or in some cases the segments of the trajectory, i.e., sub-trajectories, are considered in order to capture local similarities among long trajectories. Our work takes a different approach, by considering a trajectory as a set of points, then focusing on the point data for finding the regions that are hot spots for the storms. We use DBSCAN algorithm, and consider spatial (longitude, latitude) as well as non-spatial attributes (viz., wind speed and time) for the similarity measure. The results show the impact of the respective non-spatial attributes on the spatial attributes during clustering and hence the identified dense regions. For the temporal analysis, we used a relative temporal framework by normalizing relative time stamp order in the trajectory by the length of the trajectory to consider storms of different lengths. We use quality measures to validate our clusters. Post processing on the obtained clusters identifies the regions from where the storms are more likely to originate, and the regions where the storms are most likely to land. Another useful result is the key regions that the storms are most likely to traverse.
Year
DOI
Venue
2014
10.1145/2619112.2619117
GeoRich@SIGMOD
Keywords
Field
DocType
interface
Longitude,Data mining,Wind speed,Similarity measure,Hotspot (geology),Computer science,Cluster analysis,Trajectory,DBSCAN,Traverse
Conference
Citations 
PageRank 
References 
1
0.36
11
Authors
3
Name
Order
Citations
PageRank
Praveen Kumar Tripathi117911.83
Madhuri Debnath2112.74
Ramez Elmasri310.36