Sichuan Province of China is located between the Indian Ocean Plate and the Eurasian Plate, where crustal movement is very frequent. There are many seismic belts in Sichuan Province. Under the action of multiple seismic belts, the underground rock strata are fractured and misplaced, resulting in the occurrence of large and small earthquakes in the region. Wenchuan M8.0 earthquake on 12 May 2008 caused a large number of casualties and economic losses.
Data for this study were provided by the National Key Research and Development Program of China (No. 2019YFC1509205), Institute of Engineering Mechanics, China Earthquake Administration and China Earthquake Networks Center, National Earthquake Data Center (
http://data.earthquake.cn, accessed on 31 October 2021).
Figure 2 shows the locations and distributions of the main epicenters and stations. There are 75 records of large, medium, and small earthquakes for model fitting and performance analysis, including Wenchuan M8.0 (12 May 2008), Jiuzhaigou M7.0 (8 August 2017), Luxian M6.0 (16 September 2021), Xingwen M5.7 (16 December 2018), Changning M4.7(17 November 2021), Changning M4.6 (21 November 2021), Changning M4.0 (27 November 2019), M3.6 (17 March 2020), and M3.0 (12 December 2020, 23 March 2021) in Sichuan Province. In addition, eight earthquake events are selected for model testing, including Gongxian M3.0 (13 March 2021), Gongxian M3.4 (7 November 2020), Gongxian M3.8 (23 June 2020), Gongxian M4.0 (June 12, 2020, 15 February 2021), Gongxian M4.1 (13 November 2020), Xingwen M5.7 (16 December 2018), Luxian M6.0 (16 September 2021). In these records, the verticle (U−D) direction ground motion data has the stable background noise, which is convenient for seismic phase identification. In the process of selecting ground motion data, the principle of station data selection is as follows: for the
M 5.0 earthquakes, the station data with hypocentral distance less than 50 km are selected; for the
M > 5.0 earthquakes, station data with hypocentral distance less than 100 km are selected.
3.1. Small Earthquake Data Analysis
In the sample data, the data of
small earthquakes were provided by the National Key Research and Development Program of China (No. 2019YFC1509205). The data is monitored by low-cost MEMS seismic sensors named MEMS Network Strong Motion Seismograph (MNSMS), which is equipped with a high-performance three-axis linear Class C MEMS accelerometer, and the photograph of the MNSMS is shown in
Figure 3. The MNSMS is mainly composed of some hardware modules: the MEMS accelerometer module, TCP/IP module, Power over Ethernet (PoE) module, and local storage module (optional). The MNSMS can meet the needs of dense EEW in terms of noise, dynamic range, useful resolution, reliability, and detecting capabilities with its high-performance [
7]. The sampling rate of the MNSMS is 50 Hz.
Figure 4 shows the records of verticle (U-D) direction of a M4.0 earthquake event and the corresponding results of STP/LTP, STP, LTP calculation. In
Figure 4c, it can be clearly seen that when the P wave arrives, the STP/LTP value increases significantly. Soon, the
value appears, which indicates that the ground motion information contains some energy at the initial stage of the P waves, and the energy is significantly more than the energy of the background noise. It can be found that the
value corresponding to the S wave is smaller than the P wave’s, which is not that the energy of S waves is small, but the observation signal in the long-time window is mostly the energy of seismic waves. In
Figure 4e,f, when the seismic signal does not arrive, the relative power in the short-time window is the relative power of the background noise, which is close to 0, and the state is very stable. When the seismic waves arrive, the relative power in the short-time window is the sum of the relative power of the seismic signal and the relative power of the background noise in the short-time window, but the relative power of the background noise in the short-time window is much smaller compared with the relative power of the seismic signal. Therefore, in the process of an earthquake, the relative power of the short-time window can represent the energy of the ground motion signal. Finally, when the seismic waves are over, only background noise is left in the short-time window, and the relative power is back to about 0. In
Figure 4g,h, when the seismic signal does not arrive, the relative power of the long-time window is the relative power of the background noise, the value is close to 0, and the state is also very stable. When the seismic waves arrive, the relative power of the long-time window is the sum of the relative power of the seismic signal in the long-time window and the relative power of the background noise. In the process of an earthquake, the relative power of the long window can also represent the energy of the ground motion signal. However, unlike the short-time window, the length of the long window is very long. After averaging, the relative power of the seismic signal increases and decreases slowly. Finally, when the seismic waves are over, only background noise is left in the long-time window, and the relative power is back to about 0.
It is worth noting that when the noise is weak and stable, to a certain extent, although long-time and short-time windows can represent the energy of seismic waves, our purpose is to estimate the magnitude through the initial information of P waves. If the short-time window is just at the arrival time of P waves, then the short-time window represents the relative power of P waves, while the relative power of P waves in the long-time window is only S/L after averaging. Since S is much less than L, the relative power of the long-time window is still considered as the power of background noise at the arrival time of P waves. In this way, when the P waves arrive, it can not only effectively detect the P waves, but also obtain the relative energy proportion at the initial time of the P waves, and the value appears soon after the arrival of the P waves, which is the significance of this method. Multiple experimental results show that the time of the value is very close to the time of the P waves’ arrival, which usually occurs within 2 s after the arrival of the P waves, and sometimes even occurs simultaneously with the time of the P waves’ arrival.
Small earthquakes occur frequently in earthquake events. The signal’s energy of small earthquakes is weak and the SNR is low, so the detection of P waves’ arrival time faces many difficulties. The STP/LTP method has strong robustness, can adapt to weak noise, general noise, and strong noise; its misjudgment rate and missing rate are low. The method follows the advantages of STP/LTP method and can accurately obtain the value in strong noise environment.
For the
M < 5.0 small earthquakes, the energy information carried by the P waves is not very strong, and the information cannot be monitored by the stations far away.
Figure 5 shows the relationship between the
value and the hypocentral distance in a M4.0 earthquake. It can be seen that when the hypocentral distance reaches 50 km, the
value has dropped to below 4, which makes it vulnerable to background noise. In addition,
Figure 5 also reflects the attenuation relationship between
value and hypocentral distance. With the increase in hypocentral distance, the energy of seismic waves decreases gradually, so the
value will also decrease.
3.2. Large Earthquake Data Analysis
The large earthquake data (
M = 6, 7, 8) were provided by the Institute of Engineering Mechanics, China Earthquake Administration and China Earthquake Networks Center, National Earthquake Data Center (
http://data.earthquake.cn, accessed on 31 October 2021). The sampling rate is 200 Hz. The rupture duration of small earthquakes is short, and P waves and S waves are usually separated in time. Large earthquakes rupture for a long time and P waves are continuously emitted during the rupture, which results in P waves and S waves sometimes partly overlapping. It means that it is difficult to detect P waves. However, the large earthquake rupture growth is large enough, although the initial S waves make some interference, and P waves can still be clearly detected [
23].
Figure 6 shows the records of U−D direction of the M7.0 earthquake and the corresponding results of STP/LTP, STP, LTP calculation. It can be seen that the waveform of the large earthquake lasts for a long time. In
Figure 6c,d, STP/LTP value will be at a high level within a period of time after the arrival of the P waves;
value is also determined in a very short time. In
Figure 6e, the relative power variation in short-time window and long-time window of large earthquake is the same as that of small earthquake. Different from small earthquakes, the relative power value of the seismic signal in short-time window and long-time window of large earthquakes is higher than that of small earthquakes, and the duration is longer than that of small earthquakes, which also reflects the characteristics of large earthquakes.
Compared with small earthquakes, the energy of large earthquakes is very strong, and the duration of earthquakes is longer. According to the rule of small earthquakes, the large earthquake response also conforms to the relationship of energy attenuation with hypocentral distance.
Figure 7 shows the relationship between the energy of the earthquake and the hypocentral distance in the M7.0 earthquake. It can be seen that when the hypocentral distance reaches 100 km, the
value also drops to about 6, and when the distance is larger, the
value will also be submerged by noise. Different from small earthquakes, for the same hypocentral distance, the
of large earthquakes is significantly higher than that of small earthquakes, and the attenuation of the
in the large earthquakes is slower, which indicates the characteristics of the large earthquake energy. In addition, it should be noted that for the large earthquakes, the hypocentral distance of the stations should not be too small. When the station is close to the seismic center, on the one hand, it is difficult to distinguish between P waves and S waves, which affects the detection of P waves. On the other hand, due to the overlap of P waves and S waves, the
value is too large, which is not within the range of
attenuation relationship.
3.3. Comprehensive Analysis
For the earthquakes with different magnitude ranges,
Figure 8 shows the distribution of
value on hypocentral distance
R. The earthquakes ranging from M3.0 to M4.0, M4.5 to M6.0, and large earthquakes ranging from M7.0 to M8.0, are selected for comparative analysis. It can be seen that for the same hypocentral distance, the
value of large earthquakes is significantly higher than that of small earthquakes. With the increase in the magnitude, the energy increases, and the
value will also increase. In the same magnitude range, the
value has also a certain attenuation trend with the hypocentral distance. In each magnitude range, the
values are distributed according to a certain linear relationship. There are also some discrete points in the diagram, and even some discrete points are located in other magnitude ranges, which is realistic and indicates the complexity of the process of the seismic energy release.
A large number of studies have shown that when the earthquake energy reaches a certain degree, the magnitude saturation phenomenon will occur. By comparing the M7.0 earthquake and M8.0 earthquake in
Figure 8, it is found that
has no stratification, which also indicates the magnitude saturation of
. But the specific saturation magnitude needs the further study to determine.
In order to study the stability and accuracy of the
method, the
method is chosen to compare with it. The fitting models of the
method and
method are shown in Equations (10) and (11). Among them, the arrival time of P waves is extracted by the manual supervision method, the short window length is set as 0.3 s, and the long window length is set as 3 s. In the
method, the high pass filter for integrating displacement is set as the second-order high pass Butterworth filter (the low-frequency cut-off frequency is 0.025 Hz), since the
value determined by the first 3 s P waves cannot be used for
M 6.7 earthquakes [
13], and considering the accuracy of the algorithm, the time window for calculating
value is set as 4 s.
where
A,
B, and
C are the coefficients to be fitted.
The study of Zollo shows that the
method also has a saturation phenomenon [
24]. When the time window length is 4 s, the saturation magnitude can reach M7.0. Therefore, the
M 7.0 earthquakes in the samples are compared and analyzed by
method and
method in this study, as shown in
Table 1. The fitting equation by
method is
M = −4.6912 + 4.2519log
+ 3.8137logR, and the fitting correlation coefficient reaches 0.8012, which conforms to the linear relationship. The fitting equation by
method is
M = −1.2729 + 1.3405log
+ 5.4202log
R, and the fitting coefficient is 0.7552, which conforms to the linear relationship. As can be seen from
Table 1, the
statistic of
is slightly larger than that of
, and the mean residual of the two methods are also roughly the same, which represents the high accuracy and stability of this method.
Figure 9 shows the residual diagram of the two methods. From the discreteness of the residuals, the residuals of the two methods are distributed around 0, with only a few outliers. It can be seen that the fitting results of the two methods are good.
After the fitting model is obtained, the accuracy of the model is tested by detecting several groups of seismic events.
Table 2 shows the test results.
N is the number of stations involved in each event.
is the actual magnitude.
is the estimated magnitude. In each group of earthquake events, the
value and hypocentral distance obtained by effective stations are brought into the model, and the magnitude estimation results of each station are obtained. Finally, the average value is the magnitude estimation result of the earthquake event, which compensates for possible site effection. Each seismic event can roughly estimate the magnitude of the earthquake through only several stations, and these effective stations are close to the source, which also makes the magnitude quickly obtained through close stations when the earthquake occurs.
Figure 10 shows the variation of the estimated magnitude
with the number of the stations
N in the xingwen M5.7 event. With the increase in the
N, the Me estimated by
is more and more equal to the actual magnitude
. In the EEW with the dense sensor network, it is possible to obtain the more accurate magnitude by extracting the characteristic parameter
from the multiple sensors for estimation and averaging.
In terms of timeliness, the time of
in all sample data are counted, as shown in
Figure 11. Each interval of the abscissa in the histogram is the time range after the arrival of P waves. Most of the time corresponding to the
ranges from 0–0.3 s, which is because the length of the short-time windows is 0.3 s, and there is no additional P waves’ power in the long-time windows. In this time range, the
is most likely to appear, which indicates the strong timeliness of the
method. A few times range from 0.3–2 s. It can be determined that the occurrence time of
value is within 2 s after the arrival of P waves, but the concrete time is still not certain. The process of fault rupture is very complex. The energy of the small earthquakes is small, and the duration is short. The energy of the large earthquakes is strong, and the duration of seismic waves is long. Even for the same earthquake, due to the inherent noise of the instrument and the local geological conditions, the determination time of
value is slightly different. The
method has better timeliness, which can greatly save costs and greatly reduce the time of magnitude estimation.
Figure 12 shows two examples of
values in 0–0.3 s and 1.5–1.8 s after P waves’ arrival, the arrival time of P waves,
and
are also shown in the figure. In the first example (a, b, c, d), after the arrival of P waves, the STP/LTP value immediately increased to the maximum, and the
value quickly appeared. In the second example (e–h), the STP/LTP value increases after the arrival of P waves, but it increases to the maximum after a period of time. Although the occurrence time of
is different between the two examples, it is much earlier than the
method. With the comprehensive consideration of timeliness and accuracy, the
method has significant advantages. The magnitude estimation can be carried out synchronously when P waves arrives, which greatly improves the timeliness of earthquake early warning system. However,
requires high accuracy for P waves’ arrival extraction. If P waves’ seismic phase identification is wrong, this method will also result in a false alarm.
After analyzing the accuracy and timeliness of PSNR algorithm, it can be seen that can synchronize the extraction of P waves’ arrival time for magnitude estimation in the initial short time of P waves. PSNR is suitable for the construction of earthquake early warning system in terms of timeliness, accuracy, and robustness.