Litcius/Paper detail

A Method of Real-Time Tsunami Detection Using Ensemble Empirical Mode Decomposition

Yuchen Wang, Kenji Satake, Takuto Maeda, Masanao Shinohara, Shin’ichi Sakai

2020Seismological Research Letters29 citationsDOI

Abstract

Abstract We propose a method of real-time tsunami detection using ensemble empirical mode decomposition (EEMD). EEMD decomposes the time series into a set of intrinsic mode functions adaptively. The tsunami signals of ocean-bottom pressure gauges (OBPGs) are automatically separated from the tidal signals, seismic signals, as well as background noise. Unlike the traditional tsunami detection methods, our algorithm does not need to make a prediction of tides. The application to the actual data of cabled OBPGs off the Tokohu coast shows that it successfully detects the tsunami from the 2016 Fukushima earthquake (M 7.4). The method was also applied to the extremely large tsunami from the 2011 Tohoku earthquake (M 9.0) and extremely small tsunami from the 1998 Sanriku earthquake (M 6.4). The algorithm detected the former huge tsunami that caused devastating damage, whereas it did not detect the latter microtsunami, which was not noticed on the coast. The algorithm was also tested for month-long OBPG data and caused no false alarm. Therefore, the algorithm is very useful for a tsunami early warning system, as it does not require any earthquake information to detect the tsunamis. It detects the tsunami with a short-time delay and characterizes the tsunami amplitudes accurately.

Topics & Concepts

Hilbert–Huang transformGeologySeismologyMode (computer interface)Noise (video)AmplitudeFalse alarmWarning systemQUIETData setComputer scienceArtificial intelligenceWhite noiseTelecommunicationsOperating systemPhysicsQuantum mechanicsImage (mathematics)earthquake and tectonic studiesSeismology and Earthquake StudiesEarthquake Detection and Analysis