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Authors
Advisor(s)
Abstract(s)
This experimental study focuses on a detection system at the seismic
station level that should have a similar role to the detection algorithms
based on the ratio STA/LTA. We tested two types of neural network:
Multi-Layer Perceptrons and Support Vector Machines, trained in
supervised mode. The universe of data consisted of 2903 patterns extracted
from records of the PVAQ station, of the seismography network of the
Institute of Meteorology of Portugal. The spectral characteristics of the
records and its variation in time were reflected in the input patterns,
consisting in a set of values of power spectral density in selected
frequencies, extracted from a spectro gram calculated over a segment of
record of pre-determined duration. The universe of data was divided, with
about 60% for the training and the remainder reserved for testing and
validation. To ensure that all patterns in the universe of data were within
the range of variation of the training set, we used an algorithm to separate
the universe of data by hyper-convex polyhedrons, determining in this
manner a set of patterns that have a mandatory part of the training set.
Additionally, an active learning strategy was conducted, by iteratively
incorporating poorly classified cases in the training set. The best results, in
terms of sensitivity and selectivity in the whole data ranged between 98%
and 100%. These results compare very favorably with the ones obtained by
the existing detection system, 50%.
Description
Keywords
Seismic detector Neural networks Support vector machines Spectrogram
Citation
Ruano, Antonio Eduardo de Barros; Guilherme, Madureira,. A Neural Network Seismic Detector, Acta Technica Jaurinensis, 2, 2, 159-170, 2009.