Data interpretation is one of the most important and thorny tasks in geosciences. Difficulties occur especially in non-invasive geophysical techniques and/or when the data that have to be analyzed are multidimensional, non-linear and highly noisy. Another important task is to ensure an efficient automatic data analysis, in order to allow a data interpretation as independent as possible from any a priori knowledge. This paper describes the post-processing application of a kind of neural network (self-organizing map, SOM) to the identification of the fundamental HVSR frequency of a given site. SOM results can be represented as two-dimensional maps, with a non-parametric mapping that projects the high dimensional original dataset in a fashion that provides both an unsupervised clustering and a highly visual representation of the data relationships. This innovative application of the SOM algorithm is presented with a case study related to the characterization of a mineral deposit.
[1]
Roberto Carniel,et al.
Improvement of Nakamura technique by singular spectrum analysis
,
2006
.
[2]
Teuvo Kohonen,et al.
Self-organized formation of topologically correct feature maps
,
2004,
Biological Cybernetics.
[3]
Y Nakamura,et al.
A METHOD FOR DYNAMIC CHARACTERISTICS ESTIMATION OF SUBSURFACE USING MICROTREMOR ON THE GROUND SURFACE
,
1989
.
[4]
Improvement of HVSR technique by wavelet analysis
,
2008
.
[5]
Christian D. Klose,et al.
Self-organizing maps for geoscientific data analysis: geological interpretation of multidimensional geophysical data
,
2006
.
[6]
Improvement of H/V technique by rotation of the coordinate system
,
2009
.