Abstract
The temporal and spatial variations of the wavefield of ambient noise recorded at ‘13 BB star’ array located in northern Poland were related to the activity of high, long-period ocean waves generated by strong storms in the Northern Indian Ocean, the Atlantic Ocean, and the Northern Pacific Ocean between 2013 and 2016. Once pre-processed, the raw noise records in time- and frequency-domains, and spectral analysis and high-resolution three-component beamforming techniques were applied to the broadband noise data. The power spectral density was analysed to quantify the noise wavefield, observing the primary (0.04–0.1 Hz) microseism peak and the splitting of the secondary microseism into long-period (0.2–0.3 Hz) and short-period (0.3–0.8 Hz) peaks. The beam-power analysis allowed to determine the changes in the azimuth of noise sources and the velocity of surface waves. The significant wave height, obtained by combining observed data and forecast model results for wave height and period, was analysed to characterise ocean wave activity during strong storms. The comparison of wave activity and beam-power led to distinguish the sources of Rayleigh and Love waves associated to long-period microseisms, of short-period microseisms, and of primary microseisms. High, long-period ocean waves hitting the coastline were found to be the main source of noise wavefield. The source of long-period microseisms was correlated to such waves in the open sea able to reach the shore, whereas the source of primary microseisms was tied to waves interacting with the seafloor very close to the coastlines. The source of short-period microseisms was attributed to strong storms constituted of short-period waves not reaching the coast.
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1 Introduction
The description of spatial and temporal variations of the ambient noise wavefield is fundamental for many aspects of seismology. Ambient noise can be used not only to infer the characteristics of ocean storms (Ebeling 2012), but also to evaluate the performance of seismic arrays (Wilson et al. 2002) and to investigate the Earth’s structure (Shapiro and Campillo 2004; Sabra et al. 2005; Lepore and Grad, 2018). Temporal changes of the noise wavefield during strong ocean storms are consistent with the variations in the wave height and wave-wave interaction (Friedrich et al. 1998; Nishida et al. 2008; Ardhuin et al. 2011, 2015; Obrebski et al. 2012; Davy et al. 2015; Möllhoff and Bean 2016). Azimuth and velocity variations provide information on the location of the ocean storms and on the period of the associated waves (Cessaro and Chan 1989). Therefore, the features of the noise wavefield are linked to height, direction, and period of the ocean waves (Essen et al. 2003). Sources of noise are natural at frequencies lower than 1 Hz, the principal among them including changes of the diurnal temperature and/or atmospheric pressure and wind-driven ocean waves (Demuth et al. 2016; Lepore et al. 2016). Two main mechanisms of noise generation have been recognised at low frequencies. In the 0.1–1-Hz range, the noise, known as the secondary (or double-frequency) microseism, is generated by the interaction of ocean waves travelling with similar frequencies in opposite directions. Below 0.1 Hz, the noise, identified as the primary microseism, is produced by ocean waves interacting with the seafloor near the coastlines (swells) (Longuet-Higgins 1950; Hasselmann 1963; Bromirski and Duennebier 2002; Koper et al. 2009; Kurrle and Widmer-Schnidrig 2010; Ardhuin et al. 2011; Stutzmann et al. 2012; Bromirski et al. 2013; Sergeant et al. 2013; Gualtieri et al. 2015; Lepore and Grad 2018). Despite this dissimilarity, sources of primary and secondary microseisms are both well correlated with ocean wave activity (Stehly et al. 2006; Schimmel et al. 2011; Xiao et al. 2018; Stopa et al. 2019). The source amplitude and modulation, indeed, vary with frequency and bathymetry (Longuet-Higgins 1950; Sergeant et al. 2013).
It is well known that secondary microseisms are dominated by Rayleigh waves (Lee 1935; Lacoss et al. 1969; Tanimoto et al. 2006); however, recent studies have shown that Love waves (Nishida et al. 2008; Juretzek and Hadziioannou 2016; Gal et al. 2017) can be detected in the secondary microseism frequency band. As reported in the literature (Bromirski et al. 2005; Koper and Burlacu 2015; Lepore and Grad 2018; Xiao et al. 2018), the secondary microseism sometimes splits into two peaks, involving the simultaneous activation of two oceanic source regions. The first peak corresponds to the long-period double-frequency (LPDF) microseism (0.1–0.25 Hz), while the second one, to the short-period double-frequency (SPDF) microseism (0.25–0.8 Hz). Sources for LPDF and SPDF microseisms have been proposed as nonlinear interactions of ocean waves in the coastal region or in the open ocean. Array techniques allowed observations of long-period and short-period microseisms that can be correlated to strong storms (Haubrich and McCamy 1969; Landès et al. 2010; Koper and Burlacu 2015).
The distribution of the sources of the noise wavefield as a function of time needs to be well understood given the randomness of the noise (Harmon et al. 2010). Beamforming (BF) is known as the most useful technique to analyse spatial and temporal variations of the noise wavefield (Gerstoft and Tanimoto 2007). To identify the areas of noise sources and estimate the wavefield direction, the corresponding noise records at each station of a seismic array are merged in the frequency domain according to the BF method (Rost and Thomas 2002; Roux 2009). Uncertainty in the source location constituted the main problem in investigating the variations of the noise wavefield: several studies facing this difficulty limited the analysis of the source characterization to the vertical component (Stehly et al. 2006; Harmon et al. 2008; Kedar et al. 2008; Yang and Ritzwoller 2008; Ruigrok et al. 2011). To reduce the uncertainty in the source identification, the variations of the noise wavefield were analysed for the Z, N, and E components, enabling the attenuation of undesired effects (Hillers et al. 2012; Behr et al. 2013; Lepore and Grad 2018).
The purpose of the present paper is to relate the temporal and spatial variations of the noise wavefield in northern Poland with the hitting on the coast of high, long-period ocean waves generated by strong storms in the Atlantic Ocean, the Northern Indian Ocean, and the Northern Pacific Ocean (Fig. 1a). Taking advantage of the capabilities of the circular, the symmetric structure of the ‘13 BB star’ array (Fig. 1b), equipped with broadband three-component seismometers, we should be able to identify the source of the primary microseisms and to distinguish the sources of Rayleigh and Love waves associated to LPDF microseisms. To study the variations of the noise wavefield amplitude and direction in space and time, spectral analysis and high-resolution three-component BF are used. At the same time, the ocean wave activity is characterised through the analysis of the observed data and forecast model results from international datasets. Throughout the years, high, long-period ocean waves hitting the coast were shown to cause surface waves (Webb et al. 1991; Friedrich et al. 1998; Bromirski and Duennebier 2002; Essen et al. 2003; Schulte-Pelkum et al. 2004; Stehly et al. 2006; Chevrot et al. 2007; Gerstoft and Tanimoto 2007; Kedar et al. 2008; Yang and Ritzwoller 2008; Obrebski et al. 2012; Stutzmann et al. 2012; Ardhuin et al. 2015; Gualtieri et al. 2015; Juretzek and Hadziioannou 2017). Then, the activity of such waves during strong storms can be expected to play a significant role in the wavefield excitations observed in northern Poland.
2 Noise data interpretation
2.1 Data recordings
The ambient noise was recorded from July 2013 to September 2016 at the ‘13 BB star’ array located in northern Poland. The location of the oceans is shown in the radial map centred on the array (Fig. 1a), while the details of the spatial disposition of its stations (Fig. 1b) are given in Lepore et al. (2016). As inferred from the array response function shown in Grad et al. (2015), the array geometry, symmetry, and size enable the assembly of the propagation features of short-, intermediate-, and long-period surface waves constituting the noise wavefield regardless of their azimuth. In this study, we apply two techniques to the recorded noise, namely, spectral analysis and high-resolution three-component beamforming.
2.2 Pre-processing
Some pre-processing of the recorded noise is needed for each component before applying the abovementioned techniques. High-resolution methods for data processing are reported in the literature (e.g., Gal et al. 2016). Here we used a method based on Bensen et al. (2007), which already allowed good results in preceding works (Lepore et al. 2016; Lepore and Grad 2018). First, the continuous raw noise records were split into windows of 1-h length, and then, the seismometer instrumental response and the mean and the linear trends were removed. Second, the time-domain normalization was applied to get rid of the effects of large-amplitude events such as earthquakes and non-stationary sources. This accentuates broadband ambient noise, removing a possible lack of clarity. Third, spectral whitening was used to reduce the discrepancies among single-station 1-h windows possibly caused by persistent local narrowband or monochromatic sources.
2.3 Spectral analysis
The ambient noise wavefield was characterised by evaluating the spectral features of the noise records. To quantify the noise wavefield, we calculated the power spectral density (PSD) for each hour at the A0 array station for the Z, N, and E components using the direct Fourier transform, consistent with the procedure described by Ruigrok et al. (2011). One-hour consecutive PSD curves were stacked in frequency domain for each day, and then, the resulting daily curves were compared with the Peterson (1993) new low noise model (NLNM) and new high noise model (NHNM), taken as reference to define the quality of a seismic array as for the data acquisition. The comparison is shown in Fig. 2, in which the daily curves for the Z component on several days in 2014 are plotted together with the NLNM and the NHNM curves. On the average, the observed PSD peak in the 0.03–0.1-Hz frequency band is due to the primary microseism, whereas the ones in the 0.2–0.8-Hz band are due to the secondary microseism. A splitting of the secondary microseism into two peaks is also observed: the LPDF microseism in the 0.2–0.3-Hz range and the SPDF microseism in the 0.3–0.8-Hz range. According to Ruigrok et al. (2011) and Lepore et al. (2016), the noise spectrograms were obtained by stacking the 24 consecutive 1-h PSD curves: that allowed the estimation of the variations of the energy level in the wavefield (Demuth et al. 2016). The temporal changes in the energy level, highlighted by the spectrograms at the A0 station, were related to the variations of the ocean wave activity over a defined area, as shown by Ardhuin et al. (2012) and Demuth et al. (2016).
2.4 Beamforming
The BF technique was used to determine changes in the azimuth of noise sources and the velocity of surface waves associated to the noise wavefield (Gerstoft and Tanimoto 2007; Tanimoto and Prindle 2007). The azimuth and velocity variations were estimated through the analysis frequency-wavenumber power spectrum associated with the noise wavefield (i.e. beam-power) according to Lepore et al. (2016). For the Z, N, and E components, the corresponding 1-h noise records at all the array stations were combined in the frequency domain to get 1-h beam-power evaluations through high-resolution three-component BF. In the processing of the N and E components, a rotation toward the assumed source direction was applied to appropriately distinguish Rayleigh and Love waves (Lacoss et al. 1969; Behr et al. 2013). The procedures were performed in an appropriate frequency band, whose limits were set at 0.05 and 0.1 Hz, to reduce both beamformer aliasing and near-field effects (Harmon et al. 2008; Behr et al. 2013). As verified in preceding papers (Lepore et al. 2016; Lepore and Grad 2018), undesired effects are less noticeable over the periods of interest. To stabilize its estimation, the beam-power was not evaluated separately for each sample of the frequency band, but after splitting the band in bins, its computation was done on the stacking of the frequency samples within each bin (Ruigrok et al. 2011). Then, the beamformer output was estimated for each hour as a function of azimuth (0–359°) and slowness (inverse of velocity; 0.1–0.5 s/km) in the entire frequency band. The values of first and secondary peaks were extracted from each beam-power amplitude evaluation. The described procedure was repeated for the whole acquisition period, being aware that an irregular distribution of the noise sources or a low number of operative stations could lead to erroneous results (van Dalen et al. 2014). Hence, the study of the array resolution for the BF application, described in Appendix 1, was performed according to Seydoux et al. (2016). Based on the analysis of spatial aliasing, caused by the array response (Grad et al. 2015), seven stations were assumed as the threshold to get a satisfactory array resolution.
3 Ocean wave activity
The ocean wave activity during strong storms was described by the analysis of an operative parameter useful to analyse ocean storms, namely, the significant wave height (SWH). As reported by Ardhuin et al. (2012), the SWH is defined as the average height between one-third and one-tenth of the highest wave in the wave spectrum, obtained by the combination of observed data and forecast model results for the wave height and period (Demuth et al. 2016) including wave-wave interactions and swells (the whole procedure to get SWH is reported in Appendix 2). The observed data are provided by the National Center for Atmospheric Research (NCAR) reanalysis project (Kalnay et al. 1996) and presented in geographic coordinates with a 1-h time resolution (International Comprehensive Ocean-Atmosphere Data Set [ICOADS], Freeman et al. 2017). The forecast model results are supplied by the European Centre for Medium-Range Weather Forecasts (ECMWF) program (Palmer et al. 1990) and shown in geographic coordinates with a 6-h time resolution (ERA-Interim project, Dee et al. 2011). The global distribution of the resulting SWH (0–5 m), shown (Fig. 3) in spherical coordinates as a function of the azimuth (0–359°) and the distance between the storm sources and the A0 station (0–12,500 km) with a 6-h time resolution, was related to the temporal and spatial variations of the noise wavefield through the comparison with the preceding 6-h stacking of 1-h beam-power evaluations (Kurrle and Widmer-Schnidrig 2010; Ardhuin et al. 2012; Demuth et al. 2016).
4 Results
The spatial and temporal variations of the ambient noise wavefield, as well as the global distribution of SWH, are analysed to characterise the strong storms in the Atlantic Ocean, the Northern Pacific Ocean, and the Northern Indian Ocean. Among the several storms observed in the 3 years of noise recordings, the ones studied in detail are those that occurred on June 9–16 and September 12–19, 2014. The source regions of storms were identified by the analysis of SWH (Fig. 3). To estimate the storm duration, instead, ambient noise analysis was performed for both the vertical and horizontal components. However, as commonly reported in the literature (Kurrle and Widmer-Schnidrig 2010; Demuth et al. 2016), only the Z component is shown in Figs. 4, 5, 6, and 7.
4.1 Global distribution of significant wave height
The global distributions of SWH are shown in Fig. 3 a and b in the shape of coloured radial plot centred on the A0 array station as a function of azimuth and source station distance, mapping the longitude-latitude distribution of SWH values on the azimuthal equidistant projection of the Earth. In both the chosen time periods, SWH is reported only for those days in which areas (≥ 10° and ≥ 1500 km) showing values ≥ 3.5 m (SWH maxima), attributable to the source regions of strong storms, can be clearly identified. On June 13, 2014, hour 18 (Fig. 3a), SWH maxima are observed in the Northern Pacific Ocean between 30 and 45°, in the Northern Indian Ocean between 105 and 135°, and in the Southern Atlantic Ocean between 195 and 225°. On September 15, 2014, hour 12 (Fig. 3b), SWH maxima are observed near the coast of Lapland between 15 and 35°, in the Atlantic Ocean between 260 and 320°, and in the Northern Pacific Ocean near the Canadian coast between 345 and 360° and near the Russian coast around 70°. Therefore, the Northern Pacific Ocean, the Northern Indian Ocean, the Southern Atlantic Ocean, and the Northern Atlantic Ocean are source regions of strong storms during the 3-year acquisition period.
4.2 Ambient noise variations
Spectrograms for the Z component resulting from the stacking of 1-h consecutive PSD curves for 1 day are shown for June 9–16 (Fig. 4a) and September 12–19, 2014 (Fig. 4b). The noise wavefield is continuously present during the whole period in two main frequency bands, namely, 0.03–1 and 2–50 Hz. In the former frequency range, corresponding to the primary and secondary microseisms, the wavefield is composed mainly of surface waves generated by high, long-period ocean waves. PSD ranges between − 105 and − 85 dB in the 0.2–0.6-Hz frequency range, from June 11 to June 15 (Fig. 4a) and between the same values in the same range, from September 14 to September 17 (Fig. 4b). High PSD values correspond to high SWH values associated to strong ocean storms as it comes out from Fig. 3. Therefore, in both spectrograms, the PSD is higher during the days in which a strong storm is present and lower in the remaining days.
The daily plots of 1-h PSD curves as a function of frequency for the Z component at the A0 station are shown for June 9–16 (Fig. 5a) and September 12–19, 2014 (Fig. 5b). For each plot, the first curve from the bottom (hour 1) is in its proper scale, whereas all the other curves are moved up by a fixed Δx shift. The set of colours used for the 24 curves is reported in the plot legend. For the primary microseism (0.04–0.1 Hz), the number of maxima and the related amplitude change on the basis of the intensity of the ocean storm. In this frequency band, several significant maxima are detected for some curves during the stormy days (June 11–15 and September 14–17). For the secondary microseism (0.2–0.8 Hz), the splitting of the secondary microseism into two peaks is observed (Lepore and Grad 2018): the LPDF microseism in the 0.2–0.3-Hz range, and the SPDF microseism in the 0.3–0.8-Hz range. That splitting is present on June 13, 14, and 15 (Fig. 5a) and on all the stormy days in September (Fig. 5b).
The azimuth and velocity values (Figs. 6 and 7, respectively) are extracted for each hour from the first and second peaks of the beam-power in the 0.05–0.1-Hz band. To deal only with strong storms, values whose amplitude is greater than − 6 dB was used. Those obtained from the first peak are highlighted by filled blue circles, while the ones from the second maximum are marked by empty red circles. The width of the circles was fixed according to the maximum angular resolution in the beam-power plots, which is ~10°. The variations of the azimuth of noise sources are shown in the scatter plots for the Z component on June 8–17 (Fig. 6a) and September 11–20, 2014 (Fig. 6b). From June 11–14, a high concentration of blue and red circles is observed within the 30–50°, 70–90°, 110–130°, 190–220°, and 260–310° azimuth ranges. Analogously, from September 14–17, a high concentration of circles is seen within the 15–30°, 50–70°, 250–330°, and 330–360° azimuth ranges (Fig. 6b). These values are coherent with those reported in the literature for the Atlantic Ocean (Friedrich et al. 1998; Kurrle and Widmer-Schnidrig 2010) and the Indian Ocean (Davy et al. 2015), taking into account the changes of the bathymetry at the microseims source location (Sergeant et al. 2013). The variations of surface waves velocity are shown in the scatter plots for the Z component on June 8–17 (Fig. 7a) and September 11–20 (Fig. 7b). A high concentration of blue and red circles is observed within the 2.0–4.0 km/s range in both periods, as expected from literature papers concerning surface wave dispersion effects (Essen et al. 2003; Schimmel et al. 2017; Lepore and Grad 2018).
5 Discussion
In previous papers from this laboratory, the impact of wind on the ambient noise in Northern Poland (Lepore et al. 2016) and the spectral features of noise microseisms whose wavefield is coming from North Sea and Baltic Sea (Lepore and Grad 2018) have been analysed. Other studies (Kurrle and Widmer-Schnidrig 2010; Ardhuin et al. 2012; Demuth et al. 2016) report that the upward trends in noise wavefield are interpretable as an increase of ocean wave heights due to strong storms and that the surface waves are generated when high, long-period waves hit the coastline. Here, we study the ocean wave activity with the purpose of identifying the sources of primary microseisms and of Rayleigh and Love waves associated to long-period secondary microseisms much further from the array. To that, SWH data have been confronted with ambient noise beam-power for the Z, N, and E components. For strong storms in the Northern Indian Ocean, the Southern Atlantic Ocean, and the Northern Pacific Ocean, the global distributions of SWH are compared with the corresponding beam-power plots, on chosen hours in June 12–14, 2014 (Figs. 8 and 9), whereas for strong storms in the Northern Atlantic Ocean, the same comparison is performed in September 14–16(Fig. 10). Specifically, SWH maxima were analysed together with corresponding beam-power peaks. As regards LPDF microseisms, Beucler et al. (2015) identify a few hour delay between the SWH maxima and the increases of noise energy, related to the time taken by swells to travel the distance from storm sources to the nearest shores. In the present work, by the combined analysis of the SWH charts every 6 h and the beam-power plots for each hour, we found that having considered a 4-h delay between SWH and beam-power allowed the improvement of the sharpness of the peaks. In Fig. 8, the SWH charts are compared with the beam-power plots for the Z component in real time and in the 4-h time delayed. On June 12, the beam-power peak around 210°, attributable to a strong storm in the Southern Atlantic Ocean, is noticeable but blurry in real time and sharper in time-delayed. On June 13, the peak around 110°, attributable to a strong storm in the Northern Indian Ocean, is weakly detectable in real time but cleaner in time-delayed. On June 14, the peak around 350°, attributable to a strong storm in the Northern Pacific Ocean, is detectable only in time-delayed. Therefore, the sharpness of the beam-power peaks in real time, when high, long-period ocean waves are in the open sea, is rather lessened by undesired effects. On the other hand, the detectability of the same peaks in time-delayed, when such waves are hitting the coastline and surface waves are generated, is enhanced in that undesired effects are less noticeable. Since time-delayed results are sharper, only the beam-power was analysed for the Z, N, and E components to distinguish Rayleigh and Love waves. In Fig. 9, the global distributions of SWH are compared with the beam-power plots in 4-h time-delayed for the three components. On June 12, the specific beam-power peaks are analysed: on the Z component, around 30° and 120° attributable to strong storms in the Northern Pacific Ocean and the Northern Indian Ocean, respectively; on the Z and E components, around 210° related to a strong storm in the Southern Atlantic Ocean; around 80°, on all the three components, probably caused by beamformer aliasing. On June 13, specific peaks are detected: on the Z component, around 40° related to a strong storm in the Northern Pacific Ocean; on the N and Z components, around 120° linked to a strong storm in the Northern Indian Ocean; on the E component, around 200 and 350° attributable to strong storms in the Southern Atlantic Ocean and in the Northern Atlantic Ocean, respectively. On June 14, specific peaks are observed: on the Z component, around 30° linked to a strong storm in Northern Pacific Ocean; on the N component, around 70° attributable to a strong storm in the Northern Pacific Ocean; on the Z and E components, around 330° related to a strong storm in the Northern Pacific Ocean. The preceding analysis shows that surface waves, generated by ocean waves hitting the coastline around 230° and 350° and related to strong storms in the Southern Atlantic Ocean and the Northern Pacific Ocean, respectively, are detectable on the Z and E components of the beam-power plots. On the other hand, surface waves generated by ocean waves hitting the coastline between 100 and 140°, attributable to a strong storm in the Northern Indian Ocean, are detectable on the Z and N components of the beam-power plots. Rayleigh waves associated to LPDF are predominantly observed along the N-S direction, while Love waves are mainly detected along the E-W direction, in agreement with what was reported in the literature (Davy et al. 2015; Gal et al. 2017). With respect to source characterisation of primary microseisms, in Fig. 10, the SWH charts are compared with the beam-power plots for Z, N, and E components in real-time (the comparison of SWH with beam-power on the Z component every 6 h on September 11–20, 2014 is reported as supplementary presentation). The beam-power peaks around 0° (September 14), 20° (September 15), and 270° (September 16), corresponding to strong storms in the Northern Atlantic Ocean, are well-defined in that undesired effects are less noticeable. Thus, high, long-period ocean waves are expected to be generated very close to the coastline. The SWH maximum between 345 and 360° on September 15, attributable to the strong storm that occurred in southern Greenland (source of SPDF microseisms) is not detectable in the beam-power plots, being constituted of short-period ocean waves not reaching the coastline. The beam-power peak around 315° on September 16, hours 12–18, is not caused by aliasing and/or near-field effects but more likely by the large number, about 100, of earthquakes recorded during that day in the area of Bárðarbunga (Iceland) with magnitude in the of 3.4–5.2 range (Icelandic Meteorological Office, 2015). Hence, in this case, the nature of the noise wavefield is not random. In summary, a significant correlation exists between SWH maxima and the detectable beam-power peaks during strong ocean storms. We have found a remarkable variability of noise wavefield azimuth and microseisms source location as a function of frequency. Sergeant et al. (2013) reports that this variability is largely related to the local bathymetry. For the storms in the Northern Indian Ocean (sources of LPDF microseisms dominated by Rayleigh waves), the Southern Atlantic, Ocean and the Northern Pacific Ocean (sources of LPDF microseisms dominated by Love waves), the 4-h delay between the SWH maxima and the related beam-power peaks corresponds to the time needed by the long-period ocean waves to travel from the storm source to the coastline. No such delay has to be considered, instead, for the storms in the Northern Atlantic Ocean (sources of primary microseisms), in that such waves form very close to the coastline.
6 Conclusions
The temporal and spatial variations of the wavefield of the ambient noise, recorded at ‘13 BB star’ array located in northern Poland from July 2013 to September 2016, was related to hitting on the coast of high, long-period ocean waves generated by strong storms in the Atlantic Ocean, the Northern Indian Ocean, and the Northern Pacific Ocean. Spectral analysis was applied to recognise the primary and secondary microseisms in the 0.04–0.1- and 0.2–0.8-Hz frequency ranges, respectively. As for the primary microseism, the number and the amplitude of maxima, related to 1-h power spectral density (PSD) curves, change on the basis of the intensity of the ocean storm. Concerning the secondary microseism, the splitting into two peaks, the first placed in the 0.2–0.3-Hz range (long-period) and the second, in the 0.3–0.8-Hz range (short-period), was observed. High-resolution three-component beamforming was applied on 1-h noise records to evaluate the temporal and spatial variations in the azimuth of noise sources and the velocity of surface waves. These changes were linked to the variations of the ocean wave height and period over a defined area during strong storms, through the combination of the observed data and forecast model results for the ocean waves, including wave-wave interactions and swells. The ocean wave activity was described by studying the global distribution of significant wave height (SWH) together with the beam-power of the noise wavefield. That analysis allowed the detection of ocean storms and the identification of their duration, showing that the main source of noise wavefield is due to the high, long-period ocean waves hitting the coastlines. The source of long-period double-frequency (LPDF) microseisms was constituted of nonlinear interactions of such waves in the open sea able to reach the shore, linked to strong storms in the Northern Indian Ocean, the Southern Atlantic Ocean, and the Northern Pacific Ocean. A 1-h delay between the SWH maxima and the related beam-power peaks was identified as the time needed by the long-period ocean waves to travel from the storm source to the coastline. The capabilities of the circular, symmetric structure of the ‘13 BB star’ array allowed to distinguish the sources of Rayleigh waves (Northern Indian Ocean) and Love waves (Southern Atlantic Ocean and Northern Pacific Ocean), related to ocean waves hitting the coastline in the 100–140° range and around 230 and 350°, respectively. On the other hand, the source of the primary microseism was attributable to the ocean wave activity during strong storms in the Northern Atlantic Ocean. No time delay was considered for these storms, because the long-period ocean waves form very close to the coastline. Strong storms representing the source of short-period secondary microseisms were not detectable being constituted by short-period ocean waves not reaching the coastline.
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Acknowledgements
The observed data for ocean waves are provided by the National Center for Atmospheric Research (NCAR) reanalysis project (Kalnay et al. 1996) with a 1-h time resolution (International Comprehensive Ocean-Atmosphere Data Set (ICOADS), https://rda.ucar.edu/datasets/ds548.0/#!imma1_subset.php?gindex=1&_da=y, Freeman et al. 2017). Forecast model results for ocean waves are supplied by European Centre for Medium-Range Weather Forecasts (ECMWF) with a 6-h time resolution (ERA-Interim project, https://www.ecmwf.int/en/forecasts/datasets/reanalysis-datasets/era-interim, Dee et al. 2011). We thank Dr. Elmer Ruigrok, who developed the MATLAB codes used for calculations. The open-source GMT software (Wessel et al. 2013) was used for the maps.
Funding
National Science Centre Poland provided financial support for this work through NCN grant DEC-2011/02/A/ST10/00284.
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Prof. Grad died suddenly during the revision process. The present work is dedicated to his memory.
Appendices
Appendix 1. Resolution of the ‘13 BB star’ array
We want to establish the minimum number of stations of the ‘13 BB star’ array (Fig. 11) necessary to identify the source of the noise wavefield on the basis of the spatial aliasing. As a test, BF was applied to the ambient noise recorded from 12:00 to 13:00 on February 20, 2014 along the Z component in the 0.05–0.1 Hz frequency band. The beam-power was initially calculated using only 5 stations: the azimuth of the first beam-power peak was identified at 302° with a severe aliasing. The amplitude of this peak, indeed, was essentially the same as that of the peak caused by the aliasing. In this case, the distinction between the maxima was not evident, and thus, the evaluation was considered unsatisfying. Using 6 stations, the evaluation of the azimuth was 304° for the first peak with a high aliasing. Indeed, the amplitude of this peak was equal to − 67.2 dB, and the one of the second peak was equal to − 68.1 dB. This estimation was considered still not acceptable because the amplitude difference between the two peaks was less than 1 dB. Using 7 stations, the azimuth of the first beam-power peak was evaluated at 304° with an amplitude equal to − 66.6 dB, while the amplitude of the second peak was at − 68.1 dB. This amplitude difference was considered satisfactory since it was larger than 1 dB, meaning that the aliasing started to become lower than the threshold to get an acceptable array resolution. Using 10 stations, the evaluation of the azimuth was 301° for the first beam-power peak with a low aliasing. The amplitude of this peak was equal to − 67.2 dB, while the one of the second peak was equal to − 69.1 dB (almost 2 dB lower). Using all the 13 stations, the azimuth of the first peak was identified at 308° with a weak aliasing. The amplitude difference, indeed, was more than 2 dB.
Appendix 2. Procedure to obtain significant wave height
The significant wave height (SWH) is obtained by analysing the observed data and the forecast model results for wave height and period. The observed data are shown in Fig. 12, where wave (a) height and (b) period for January 9, 2014, hour 0, are plotted in geographic coordinates on a Mercator projection with scaling factor equal to 1. The observed wave height varies from 1 m to at least 12 m. The waves having a height within the 2–6 m range are the ones showing generally a long period. The observed wave period ranges from 2 to at least 16 s. Long-period waves (> 11 s) are not generated by local winds, but they have remote origins, such as the Atlantic Ocean storms. As it can be seen, the geographical coverage of the observed data for the wave height and the period is very limited. Thus, a first guess of SWH was performed by Gauss-Markov smoothing, assuming the covariance is homogeneous and isotropic. Afterwards, the new set was joined with the forecast model results, including wave-wave interactions and swells, to get the SWH in spherical coordinates as a function of the azimuth and the distance between the storm sources and the A0 station.
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Lepore, S., Grad, M. Relation between ocean wave activity and wavefield of the ambient noise recorded in northern Poland. J Seismol 24, 1075–1094 (2020). https://doi.org/10.1007/s10950-020-09963-y
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DOI: https://doi.org/10.1007/s10950-020-09963-y