1. A Support Vector Machine Seismic Detector for Early-Warning Applications
- Author
-
Ozias Barros, H. Khosravani, Guilherme Madureira, António E. Ruano, Maria da Graça Ruano, and Pedro M. Ferreira
- Subjects
Scheme (programming language) ,Engineering ,Smart system ,Warning system ,Continuous operation ,business.industry ,Detector ,Pattern recognition ,General Medicine ,computer.software_genre ,Reduction (complexity) ,Support vector machine ,Artificial intelligence ,Data mining ,business ,computer ,computer.programming_language - Abstract
This paper extends a Support Vector Machine (SVM) approach for the detection of seismic events, at the level of a seismic station. In previous works, it was shown that this approach produced excellent results, in terms of the Recall and Specificity measures, whether applied off-line or in a continuous scheme. The drawback was the time taken for achieving the detection, too large to be applied in a Early-Warning System (EWS). This paper shows that, by using alternative input features, a similar performance can be obtained, with a significant reduction in detection time. Additionally, it is experimentally proved that, whether off-line or in continuous operation, the best results are obtained when the SVM detector is trained with data originated from the respective seismic station.
- Published
- 2013
- Full Text
- View/download PDF