A new real time tsunami detection algorithm for bottom pressure measurements in open ocean: characterization and benchmarks
Author(s)
Type
Abstract
Language
English
Obiettivo Specifico
1.8. Osservazioni di geofisica ambientale
Status
Published
Journal
Date Issued
May 2, 2010
Conference Location
Vienna
Subjects
Abstract
In the last decades the use of the Bottom Pressure Recorder (BPR) in a deep ocean environment for tsunami de-
tection has had a relevant development. A key role for an early warning system based on BPRs is played by the
tsunami detection algorithms running in real time on the BPR itself or on land. We present a new algorithm for
tsunami detection based on real time pressure data analysis by a filtering cascade. This procedure consists of a tide
removing, spike removing, low pass filtering and linear prediction or band pass filtering; the output filtered data is
then matched against a given pressure threshold. Once exceeded a parent tsunami signal is detected.
The main characteristics of the algorithm is its site specific adaptability and its flexibility that greatly enhance the
detection reliability. In particular it was shown that removing the predicted tide strongly reduces the dynamical
range of the pressure time series, allowing the detection of small tsunami signal. The algorithm can also be ap-
plied to the data acquired by a tide gauge. The algorithm is particularly designed and optimized to be used in an
autonomous early warning system.
A statistical method for algorithms evaluation has been developed in order to characterize the algorithms features
with particular regards to false alarm probability, detection probability and detection earliness. Different configura-
tions of the algorithm are tested for comparison using both synthetic and real pressure data set recorded in different
environmental conditions and locations. The algorithm was installed onboard of the GEOSTAR abyssal station,
deployed at 3264 m depth in the Gulf of Cadiz and successfully operated for 1 year, from August 2007 to August
2008.
tection has had a relevant development. A key role for an early warning system based on BPRs is played by the
tsunami detection algorithms running in real time on the BPR itself or on land. We present a new algorithm for
tsunami detection based on real time pressure data analysis by a filtering cascade. This procedure consists of a tide
removing, spike removing, low pass filtering and linear prediction or band pass filtering; the output filtered data is
then matched against a given pressure threshold. Once exceeded a parent tsunami signal is detected.
The main characteristics of the algorithm is its site specific adaptability and its flexibility that greatly enhance the
detection reliability. In particular it was shown that removing the predicted tide strongly reduces the dynamical
range of the pressure time series, allowing the detection of small tsunami signal. The algorithm can also be ap-
plied to the data acquired by a tide gauge. The algorithm is particularly designed and optimized to be used in an
autonomous early warning system.
A statistical method for algorithms evaluation has been developed in order to characterize the algorithms features
with particular regards to false alarm probability, detection probability and detection earliness. Different configura-
tions of the algorithm are tested for comparison using both synthetic and real pressure data set recorded in different
environmental conditions and locations. The algorithm was installed onboard of the GEOSTAR abyssal station,
deployed at 3264 m depth in the Gulf of Cadiz and successfully operated for 1 year, from August 2007 to August
2008.
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