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Article

Implementation of the EPIC Earthquake Early Warning System in the Bursa Province (Türkiye) and Its Surroundings

1
Sentez Earth and Structure Engineering Limited, Dragos Park Plaza, Maltepe, İstanbul 34846, Türkiye
2
Department of Geophysical Engineering, Faculty of Engineering, Kocaeli University, Umuttepe 41001, Türkiye
3
Department of Geophysical Engineering, Faculty of Engineering, Sakarya University, Serdivan 54050, Türkiye
4
Geological Survey of Israel, Jerusalem 95501, Israel
*
Author to whom correspondence should be addressed.
Appl. Sci. 2023, 13(8), 4985; https://doi.org/10.3390/app13084985
Submission received: 25 February 2023 / Revised: 11 April 2023 / Accepted: 14 April 2023 / Published: 15 April 2023
(This article belongs to the Special Issue New Frontiers in Natural Hazards and New Techniques)

Abstract

:
Earthquake early warning systems aim to reduce the potential danger by providing a warning in the seconds before strong ground shaking occurs. In this study, we implemented EPIC, an early warning algorithm for Bursa province and its surroundings, which is a seismically active region. We replayed 104 earthquakes of M ≥ 3.5, which occurred in and around the study area between 2012 and 2021. We derived period and amplitude-based magnitude-scaling relationships using peak displacement amplitude ( P d ) and predominant period ( T p m a x ) parameters of the first 4 s of P-wave arrivals. We investigated the performance of magnitude-scaling relationships through testing with real-time data. We observed an improvement when comparing the magnitude estimates made with the newly developed equations with the default equations used for California. We have also found that magnitude estimation with P d gives better results than T p m a x for estimating the accurate final magnitude. We aim to adapt the EPIC early warning system, implemented for Bursa province and its surroundings, specifically for each region of Türkiye where the earthquake risk is high.

1. Introduction

While earthquake prediction studies continue worldwide, a growing focus is on reducing the damage caused by earthquakes. Loss of life and damage caused by destructive earthquakes can be reduced by using early warning systems. The United Nations [1] urged countries vulnerable to earthquakes to expand their efforts to establish, develop, and operate such systems. In consequence of recent advances in technology and a better understanding of the physical processes involved in earthquakes, Earthquake Early Warning Systems (EEWS) are rapidly improving [2]. They are now in operation in many countries around the world, including Japan [3], the USA [4], China [5,6], Mexico [7], Taiwan [8], South Korea [9], Italy [10], Israel [11], and Chile [12].
EEWS are the most effective way for reducing hazards of earthquakes. These systems cannot predict earthquakes but try to detect them to generate warnings. The EEWS infrastructures and algorithms use the propagation velocity difference between the P and S-waves. When an earthquake is detected, the system generates a real-time warning signal that is quickly transmitted to affected areas. This allows for timely actions, such as opening exit doors in buildings, ensuring escalators run towards exits, bringing elevators to the nearest floor, cutting off or controlling electricity, and slowing or stopping activities in facilities, such as factories, nuclear power plants, refineries, high-speed trains, subways, trams, and hospitals performing micro-surgery operations. Regional EEWS rely on seismic stations established in locations closest to the earthquake source to generate warnings, and the automatic transmission of alerts to areas in need.
Türkiye is located in the seismically highly active Alpine-Himalayan tectonic belt. One of the most seismically active fault zones in Türkiye is the North Anatolian Fault Zone (NAFZ). It often produces destructive and damaging earthquakes. Bursa province, along with its surrounding areas, is located in this active zone and has been exposed to numerous destructive earthquakes [13,14,15,16,17,18]. The study area is at high risk of earthquakes. The earthquake occurred on 28 February 1855, (I0 = IX and Ms = 7.1) caused heavy damage, loss of life, and property in Bursa and its surroundings during the pre-instrumental period (<1900) [13,19,20]. During the instrumental period (>1900), important earthquakes that occurred in Bursa and its surroundings include the 15 April 1905 earthquake (Ms = 5.6), 3 August 1939 earthquake (Ms = 5.5), 15 September 1939 earthquake (Ms = 5.8), 13 November 1948 earthquake (Ms = 5.6), and 6 October 1964 earthquake (Ms = 6.8) [17] (Figure 1). The İzmit earthquake occurred on 17 August 1999 (Mw = 7.6) and caused severe loss of life and property and was also strongly felt in Bursa [21]. After the İzmit earthquake, some geo-scientists suggested that the next major earthquake would be on active faults located at the southwest end of the 1999 earthquake rupture [22,23,24,25]. Bulut et al. [26] reported that based on slip-deficit and historical observations, three segments in the Marmara Sea could produce major earthquakes (M > 7).
Bursa, the fourth largest city in Türkiye located in the Marmara region, is a bustling hub of more than 3 million people and host to many heavy industries and historical structures. As an active player of the country’s economic growth and development, it is crucial to minimize the effects stemming from the seismic hazards. One of the most effective precautions in this regard is the establishment of an EEW system.
In this study, an EEWS has been set up by gathering the data where the stations located in and around study area into a single software of the seismometers and accelerometers belongs to Kocaeli University Earth and Space Sciences Research and Application Center (YUBAM), Disaster and Emergency Management Presidency (AFAD), and Bursa City Natural Gas Distribution Trade and Contracting Incorporated Company (Bursagaz). The widely used U.S. West Coast ShakeAlert’s Earthquake Point-source Integrated Code (EPIC) EEW algorithm [28,29] was utilized and customized for the region. We used two types of magnitude values, the first catalog was derived from Kandilli Observatory and Earthquake Research Institute (KOERI), the second was obtained from EPIC with the default parameters. We then replay the data using EPIC with new magnitude parameters to estimate the improvement in magnitude estimation and use real-time testing environments to demonstrate this improvement in a more complex environment.

2. EPIC Earthquake Early Warning System

EPIC is an algorithm that provides a warning for ground shaking, produced by earthquake waves. In this approach, a seismic station network is used to detect the first incident energy at the surface and convert the information in these low-amplitude waves into an estimate of the peak ground shaking that follows. The closest stations to the earthquake epicenter are the first to detect seismic energy [30]. The EPIC methodology identifies P-wave arrivals transmit from the sensors, determines the location of the earthquake using arrival times, and estimate its magnitude based on the epicentral distance and the peak displacement ( P d ) [2]. Additionally, the maximum predominant period ( T p m a x ) in the 4 s following the P arrival is scaled with the magnitude of the earthquake. It then tries to estimate ground shaking using attenuation relations. All data is continuously collected, and as additional data is available from the first stations and additional stations, the hazard map can be updated every time. Since the most extensive ground-shaking observations are also made close to the epicenter, they can be integrated into the hazard assessment.

2.1. Estimation of Earthquake Location and Warning Time

EPIC uses at least four stations to generate robust and reliable alerts. The location of the earthquakes is determined by using the arrival times of the P waves. Following an earthquake, after the first four stations closest to the epicenter are triggered, a grid search method is used to find the location of the event. This method minimizes the error between observed and predicted values of arrival times [30].
The local warning time is the difference between the predicted S-wave arrival and the time the alert is issued. It can be estimated using the S wave arrival time curves along with the time of alert and location information. Using estimated values for S wave arrivals provides a conservative conclusion about the warning time [30].

2.2. Estimation of Rapid Earthquake Magnitude

Earthquake magnitude estimation is not only an important but also difficult part in EEW systems. Initial testing of the default system after implementation showed that the system worked well except for large discrepancies in magnitudes. A major focus of the manuscript is thus on describing the derivation of improved regression results for magnitude estimation. The magnitude, a measure of the energy released during an earthquake, is estimated using empirically derived linear relationships [31]:
M = 5.39 + 1.23   l o g 10 ( P d ) + 1.38   l o g 10 ( R )
where P d is the peak displacement (in cm) and R is epicentral distance (in km). The equation parameters, optimized for California, were derived using a global dataset (Northern and Southern California, Japan, and real-time data from California). The relationship had a mean magnitude error of 0.01, standard deviation of 0.31, and a correlation of 0.95 [31].
Wurman et al. (2007), using the data set from northern California, found the relationship between magnitude with T p m a x :
M = 5.22 + 6.66   l o g 10 ( T p m a x )

3. Earthquake Early Warning System for Bursa Province (Türkiye) and Its Surroundings

3.1. Earthquake Early Warning System Algorithm (EPIC)

The EPIC algorithm is a regional point source algorithm [32]. The system will alert if P waves are detected by at least four stations and at least 40% of the stations are in the P phase wavefront area. Earthquake data is transmitted from Güralp sensors at stations to Scream software in .gcf format via LTE modem. It is then transmitted from Scream to Earthworm (the seismic data collection and automatic earthquake processing software) with the help of Scream2ew 7.6 software and is used by EPIC. When estimating the location of earthquakes, a grid search method is used in which the difference between the travel time calculated and observed is minimized. At this stage, the one-dimensional layered global velocity model AK135 [33] was preferred as the velocity model. The magnitude of the earthquake is obtained by the peak displacement ( P d ) and the predominant period ( T p m a x ) calculated from the data at different stations [31]. As time progresses, new data continues to arrive, and all parameters (such as occurrence time, location, and size) are updated more accurately [29].
To ensure fast and reliable alerts, an EEWS needs to have a well-designed seismic network and algorithm that provides the longest possible warning time, accurate classification of shaking intensity, and a low rate of false or missed warnings. The optimal design of the network depends on various factors, including the seismotectonics of the region, available resources, and budget constraints [31,34]. In the case of Bursa province’s EEWS, 128 stations were utilized (99 being accelerometers and 29 being seismometers) (Figure 2). The station design was strategically placed and reinforced with existing stations to establish a reliable system. Accelerometers were installed in natural gas distribution points and public institutions’ gardens, while velocity sensors were placed in areas far from residential zones to allow for the closure of natural gas distribution valves and the cessation of heavy or sensitive machinery [35]. Tunç [35] also noted that a high station density could decrease the time required for a solution and warning.

3.2. Determination of Magnitude Equation Coefficients for Bursa Province (Türkiye) and Its Surroundings

EPIC was developed and optimized for California. Sheen et al. [36] and Nof and Allen [11] found it beneficial to adjust the magnitude relation equations of EPIC in order to optimize EPIC for different regions, such as Korea and Israel, respectively. EEW applications frequently use relationships derived from the first few seconds of the P wave for earthquake magnitude estimation [31,37,38,39,40]. In this study, we evaluate P d and T p m a x to estimate magnitude. For the magnitude- Pd scaling relationship, a linear regression model assumption was made between logarithmic P d , observed magnitudes ( M ), and epicentral distance ( R ) [39]. The linear relationship between magnitude and T p m a x is shown by the least squares fit between the M and mean T p m a x values from each station for each event [41,42].
Kandilli Observatory and Earthquake Research Institute-Regional Earthquake and Tsunami Monitoring Center [43] earthquake catalog consists of 275 earthquakes with a magnitude 3.5 < M < 7.0 between 1 January 2012, and 30 November 2021. A total of 275 earthquake data were examined and 104 earthquakes with data quality suitable for replaying in EPIC (Table 1) were studied. The seismic recordings used for regression analysis consist of strong motion and broadband waveforms. Following previous studies [39,42,44], we applied a 0.075 Hz high-pass Butterworth filter to the data. We used KOERI locations to calculate epicentral distances and P-wave onsets for each station and Matlab software (R2021b) to calculate P d and T p m a x values from the first 4 s of the seismograms. Vertical component velocity seismograms were used in the analyses.
As a result, the best-fitting attenuation relationship for the resulting log( P d ) is given as:
l o g 10 ( P d ) = 4.78 + 0.9 M 1.34   l o g 10 ( R )
with a coefficient of determination of 0.639. Figure 3 contains a comparison of the observed P d values with the values estimated by Equation (3) for the magnitudes 3.0, 4.0, 5.0, 6.0, and 7.0, respectively, separately.
When the regression result is reversed to estimate the magnitude using P d and R, the magnitude relationship is:
M = 5.28 + 1.11   l o g 10 ( P d ) + 1.5   l o g 10 ( R )
The linear relationship between T p m a x and observed M is:
M = 4.88 + 1.97   l o g 10 ( T p m a x )
Figure 4 shows the relationship of T p m a x calculated for each station and observed magnitude (M). The coefficient of determination of this relationship is 0.824. The relationship exhibits a good fit despite the scattering observed, especially for large earthquakes. The relation parameters obtained for the Bursa province and its surroundings are given in Equations (4) and (5). In the following, we implement Equations (4) and (5) in EPIC and replay the data in “simulated real-time” and “real-time”.

4. Results and Discussion

After adjusting the magnitude relation equations based on past instrumental data and known catalog earthquake locations, we proceeded to evaluate the performance of the new equations using simulated real-time replays of recorded data and real-time processing. This evaluation is necessary since missing data, delays, and other operational difficulties may affect the results, and since the accuracy of the distance R calculation in real-time depends on the correct epicenter location, if the epicenter is mis-located, it can lead to an incorrect estimation of the magnitude. However, we were able to ensure a highly robust earthquake location due to the dense seismic network used in this study for the Bursa province and its surroundings. Hereafter, we will refer to the original magnitude relation equation as “default” (Equations (1) and (2)) [31,45] and the newly developed equation as “newly developed” (Equations (3) and (4)).
The epicenter distribution of earthquakes in the KOERI catalog and the epicentral distributions of the solutions obtained from the EPIC replayed dataset are shown in Figure 5. Square symbols represent KOERI solutions, and circles represent EPIC solutions. Errors are observed in the locations of some earthquakes. This is expected as performance declines for events outside the system. Nof and Allen [11] stated that large location errors are caused by events located further away from the network, and the system is suitable for in-network events and performs less well for out-of-network events. No parameter other than magnitude is estimated in the study. The observed difference is due to the different stations used while processing the replay solution. In real-time performance, there will be no difference in locations. Please note that in real-time playback, the algorithm uses multi-threading, which leads to different data orders each time.
Figure 6 compares P d and T p m a x calculated with the default and newly developed equations for each earthquake by observed magnitudes. When Figure 6a,b obtained with the default and newly developed equations are examined, it is observed that the scattering of the new equation is less. Although a small increase in standard deviation is observed, this is due to the scattering of some earthquakes smaller than M < 4. The distribution of T p m a x against the catalog size of the default and newly developed equation is different (Figure 6c,d). Scattering is high in the graph by using the default equation. It is seen that the results of the analysis made with the newly developed equation show a better agreement between T p m a x and the observed magnitudes compared to the default equation. Although an improvement in T p m a x is observed, it is clear that T p m a x is neither a good measure of magnitude estimation for default nor newly developed equations compared to P d . The problem that P d reaching saturation for large earthquakes has been emphasized in previous studies [37,38,42]. In our study, the network’s magnitudes estimates agree with the newly developed equations. This can be explained by the near-field effects emphasized by Yamada and Mori [46]. Waveforms recorded by the strong motion sensor close to the source were used in the analysis. In this direction, values comparable to the catalog values were obtained despite the near-field effects.
In Figure 7, the errors of the magnitudes obtained by using P d and T p m a x with the default and newly developed equations are given. When comparing P d was examined, the mean magnitude error is −0.57, the standard deviation 0.38, and the median −0.6 using the default settings. When the newly developed coefficients were used, mean magnitude error −0.13, standard deviation 0.41, and median −0.1 values were obtained. It is seen that the error of the solutions obtained from the newly developed equations for P d is lower than the error obtained with the default equation and even the median is very close to zero. Estimates based on T p m a x with default relations resulted in a mean magnitude error of −0.88, a standard deviation of 1.15, and a median of −1.1. When newly developed relations are used, the mean magnitude error is 0.0, the standard deviation is 0.41, and the median is 0.0. An improvement was observed for T p m a x when the magnitudes obtained using the default and newly developed equations were compared. However, when P d and T p m a x are compared, we think P d provides more reliable results as a magnitude estimation measure, as mentioned before.

4.1. Latencies and Delays of the Seismic Network

Latency, delay, and packet size are critical factors in EEWS. While these terms are often used interchangeably, there are important physical differences between them that must be taken into account in early warning studies. Here, latency refers to the time between the P-wave onset at a station and the time data was packaged and transmitted along the signal path until it arrives at the data center. On the other hand, delay refers here only to the time it takes for the packaged signal to travel from the sensor to the data center along the transmission line. Packet size refers to the number of samples that are prepared for each transmission. These factors can have a significant impact on the speed and accuracy of early warning alerts. Understanding and minimizing latency and delay while optimizing packet size is essential for creating a fast and reliable EEW system [11,47,48].
The necessary data for the EEWS in Bursa and its surroundings are provided to YUBAM via AFAD and Bursagaz. However, since the data in the AFAD center passes several data servers and GSM technology is used for communication, latencies of the data are high. The delay time of some stations is more than 800 s due to the malfunction of the GPS. Therefore, when using an overall latency, the most accurate calculation would be to use the median time, measured as 4.6 s. Latencies of the data transmissions in the real-time analysis are given in Figure 8.

4.2. Real-Time Performance Observations

In this study, two servers were set up with EPIC to analyze earthquakes using the default and newly developed equations. Between 26 January 2022 and 25 June 2022, there are M ≥ 1.0 2662 earthquakes in KOERI catalogs. Since our station network is not as dense as KOERI, it did not detect small earthquakes occurring in areas outside of our network. Finally, our system has processed 363 earthquakes. Earthquake processing graphs generated by EPIC in real time are shown in Figure 9. While 536 earthquakes of M ≥ 2.5 were processed in KOERI catalogs, 139 earthquakes were processed with the default equation, and 236 earthquakes with the newly developed equation. The number of earthquakes processed M ≥ 3.5 is 60 for KOERI, 19 for the default equation, and 67 for the newly developed equation. The system overestimated the magnitude of 7 newly developed M = 3.4 earthquakes. When comparing the processed events by both systems, the default equation showed smaller magnitude estimates than the newly developed one. At the same time, the estimations made with the newly developed equation give results closer to the catalog magnitudes. This situation revealed a better result than the default relationship in estimating the magnitudes of the relationships derived from the EEW system established for Bursa province and its surroundings.

The 3 June 2022 Çaypınar (Balıkesir) Earthquake (M = 4.8)

An earthquake with M = 4.8 (KOERI) occurred on 3 June 2022, at 22:58:57.75 UTC in Çaypınar district of Balıkesir, southwest of Bursa. The epicenter of this earthquake is approximately 100 km away from Bursa city center (Figure 10). This earthquake was felt slightly in Bursa but did not cause any damage. The EPIC system, on the two different real-time servers, evaluated this earthquake in real-time, allowing the performance of the default and newly developed equations to be compared. The results of the first alert obtained are summarized in Table 2.
While the estimated magnitude based on P d using the default equation was 4.2, it was observed that the result of the developed equation was 4.7. Considering the magnitude estimation based on P d , the developed equation contains a lower error. When the results obtained with T p m a x is compared, the difference is quite significant (magnitude 3.1 and 4.1, respectively, Table 2). Although the newly developed equation performs an excellent revision over the default equation, the result still contains apparent errors. As some researchers have indicated in previous studies, the reliability of the P d -based magnitude scaling relationship is better than T p m a x in our study [31,49].
Location error was 0.6 km and the alert issued 18.673 s and 17.118 s after catalog origin-time for the default equation and the newly developed one, respectively. As mentioned, latency is a key factor causing long delays in detecting and alerting the event. In this case, ~11.4 s of alert time is available for Bursa (assuming S-wave propagation velocity of 3.5 km/s) and a blind zone, where alert is delivered after the arrival of S-wave is about ~40 km. While this may seem like a weakness, it is usual since the earthquake occurred outside our seismic network. In a warning time of about 11 s, natural gas can be cut off; subways can be stopped safely, and elevators can be evacuated at the nearest floor. In short, this time is of great importance in preventing secondary disasters.
Thanks to the tests we have carried out, the average warning time for the Marmara Region is roughly 11 s. Of course, this varies depending on the distance from the event. Considering the calculation of the P wave, the process, and the network delay, there is a blind zone of approximately 60 km. To improve this, the number of stations should be increased, low latency hardware should be used, and the transmission cables in the stations should be designed as fiber optic.
Geoscientists emphasize that the next major earthquake will occur in Istanbul, where the western part of the NAF passes. According to the results obtained in this study, a warning time of approximately 8 s can be predicted for a possible Istanbul earthquake. In addition, when a possible Istanbul earthquake occurs, a blind zone of approximately 40–45 km occurs in Bursa.

5. Conclusions

The EPIC system is a useful tool that works in real-time in different regions [11,28,36,50] and aims to take precautions against seismic hazards. In short, the system aims to minimize disaster damage by generating warnings for an approaching ground shaking at certain times. EPIC estimates the magnitude using P waves peak displacement ( P d ) and the dominant period ( T p m a x ). The epicenter of the event is located based on the grid search technique after the P wave triggering in at least four stations. The ground shaking can then be estimated using the attenuation relations of the location and magnitude of the event.
In this study, we aimed to adapt the EPIC EEW system for Bursa province and its surroundings. First, we optimized and, if necessary, modified seismic stations belonging to different seismological agencies in Bursa and its surroundings for robust data acquisition. We adjusted the magnitude relation equations by analyzing offline data from 104 earthquakes that occurred between 1 January 2012 and 30 November 2021. We tested the performance of the newly developed magnitude relationships both in replay mode and in real-time using EPIC. We observed an improvement in magnitude estimates made with the new equations compared with the default equations that are optimized for California. The improvement was demonstrated in real-time earthquake solutions for the 3 June 2023, Çaypınar (Balıkesir) earthquake (M = 4.8). We also concluded that a P d -based scaling relationship is a good approach to deriving EEW magnitude estimates.
It is important to note that the number of earthquakes detected and analyzed by EPIC can vary depending on various factors, including the sensitivity of the system and the threshold values set for alarm levels. Additionally, the performance of the system can be affected by factors, such as network design, station placement, and real-time processing. However, the results presented in Figure 9 suggest that using the newly developed equation leads to the detection and analysis of a higher number of earthquakes with magnitudes greater than 2.5 compared to using the default equation. This highlights the importance of regularly updating and fine-tuning the algorithms used in EEW systems to improve their performance and effectiveness in providing early warnings.
The EEWS is currently running in test mode for Bursa and its surroundings. The system gives confidence with its robust and fast results. More precise magnitude estimation relationships can be determined by expanding the dataset with earthquakes that are likely to occur in the region. As a result, this study should be developed, and optimized magnitude relations should be obtained for Türkiye in general or for each region. In addition, optimizing the seismic network infrastructure to reduce delay times and blind zones is one of the most critical steps for an operational EEWS. Furthermore, connecting the EEWS to a robust dissemination system to allow alert delivery to the public and infrastructures should be of high priority for the decision makers and stakeholders.

Author Contributions

Conceptualization, S.T., B.T., E.B., D.Ç., R.N.N. and Ş.B.; methodology, S.T., R.N.N. and Ş.B.; software, S.T. and D.Ç.; validation, S.T., B.T., E.B., D.Ç., R.N.N. and Ş.B.; formal analysis, S.T. and E.B.; investigation, S.T., B.T., E.B. and D.Ç.; resources, B.T., E.B. and D.Ç.; data curation, S.T., D.Ç. and E.B.; writing—original draft preparation, D.Ç., B.T., S.T. and E.B.; writing—review and editing, S.T., B.T., E.B., D.Ç., R.N.N. and Ş.B.; visualization, S.T., D.Ç. and E.B.; supervision, Ş.B. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

The earthquake data used in this study were downloaded from KOERI (http://www.koeri.boun.edu.tr/sismo/2/data-request/, accessed on 1 January 2022). Refer to the specified web address for ShakeAlert’s Earthquake Point-source Integrated Code (EPIC) EEWS (https://rallen.berkeley.edu/research/EEWmilestones.html, accessed on 12 January 2020).

Acknowledgments

The authors thank the Kandilli Observatory and Earthquake Research Institute (KOERI) for providing the data set used in the study. We thank the Disaster and Emergency Management Presidency (AFAD) for the infrastructure support they offered to obtain the data and information produced within the scope of the study. A considerable part of this study was carried out as a Ph.D. thesis of Süleyman TUNÇ at Kocaeli University, Institute of Natural Sciences.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Tectonic elements of the Bursa province and its surroundings and location of significant historical and instrumental earthquakes. Faults shown are from Emre et al. [27]. Earthquake locations were compiled from [13,16,17,18,19]. NAFZ: North Anatolian Fault. Source mechanisms (red-white beach ball) of 17 August 1999, İzmit earthquake were obtained from Harvard CMT catalog. Inset shows the study region (box) in western Türkiye, and the green painted area in the box indicates Bursa province border.
Figure 1. Tectonic elements of the Bursa province and its surroundings and location of significant historical and instrumental earthquakes. Faults shown are from Emre et al. [27]. Earthquake locations were compiled from [13,16,17,18,19]. NAFZ: North Anatolian Fault. Source mechanisms (red-white beach ball) of 17 August 1999, İzmit earthquake were obtained from Harvard CMT catalog. Inset shows the study region (box) in western Türkiye, and the green painted area in the box indicates Bursa province border.
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Figure 2. Station distribution in Bursa province and surrounding. The stations of YUBAM, AFAD, and Bursagaz are shown in red, blue, and orange colors, respectively. Triangle and circle refer to the type of sensor.
Figure 2. Station distribution in Bursa province and surrounding. The stations of YUBAM, AFAD, and Bursagaz are shown in red, blue, and orange colors, respectively. Triangle and circle refer to the type of sensor.
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Figure 3. The relationships between P d , epicentral distance (R), and catalog magnitude (M) calculated for each station. Each triangle is measured at a single site. Here, Pd is in cm, and R is in km. Thick lines are predictions based on Equation (4) for magnitudes 3 (red line), 4 (blue line), 5 (green line), 6 (black line), and 7 (yellow line), and thin lines are for magnitudes 2.5, 3.5, 4.5, 5.5, and 6.5, respectively.
Figure 3. The relationships between P d , epicentral distance (R), and catalog magnitude (M) calculated for each station. Each triangle is measured at a single site. Here, Pd is in cm, and R is in km. Thick lines are predictions based on Equation (4) for magnitudes 3 (red line), 4 (blue line), 5 (green line), 6 (black line), and 7 (yellow line), and thin lines are for magnitudes 2.5, 3.5, 4.5, 5.5, and 6.5, respectively.
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Figure 4. The relationship between T p m a x (calculated for each station) and catalog magnitude (M).
Figure 4. The relationship between T p m a x (calculated for each station) and catalog magnitude (M).
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Figure 5. Epicenter distributions of the replayed earthquakes.
Figure 5. Epicenter distributions of the replayed earthquakes.
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Figure 6. Magnitudes calculated from P d and T p m a x versus the observed magnitude (a) magnitudes calculated using default equations for P d , (b) magnitudes calculated using newly developed for P d , (c) magnitudes calculated using default for T p m a x , (d) magnitudes calculated using newly developed for T p m a x .
Figure 6. Magnitudes calculated from P d and T p m a x versus the observed magnitude (a) magnitudes calculated using default equations for P d , (b) magnitudes calculated using newly developed for P d , (c) magnitudes calculated using default for T p m a x , (d) magnitudes calculated using newly developed for T p m a x .
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Figure 7. Histograms of errors for play-backed catalog dataset (a) magnitude errors using default equations for P d , (b) magnitude errors using newly developed for P d , (c) magnitude errors using default for T p m a x , (d) magnitudes errors using newly developed for T p m a x .
Figure 7. Histograms of errors for play-backed catalog dataset (a) magnitude errors using default equations for P d , (b) magnitude errors using newly developed for P d , (c) magnitude errors using default for T p m a x , (d) magnitudes errors using newly developed for T p m a x .
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Figure 8. Latencies of stations transmitting data.
Figure 8. Latencies of stations transmitting data.
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Figure 9. Between 26 January 2022 and 25 June 2022, using the real-time dataset, (a) default equations and (b) developed equations for earthquake magnitude estimation results. P d -based magnitude scaling relationship was used in the calculations.
Figure 9. Between 26 January 2022 and 25 June 2022, using the real-time dataset, (a) default equations and (b) developed equations for earthquake magnitude estimation results. P d -based magnitude scaling relationship was used in the calculations.
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Figure 10. The 3 June 2022 Çaypınar (Balıkesir) earthquake (M = 4.8) epicenter map. The stations triggered after the earthquake are shown with a black triangle.
Figure 10. The 3 June 2022 Çaypınar (Balıkesir) earthquake (M = 4.8) epicenter map. The stations triggered after the earthquake are shown with a black triangle.
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Table 1. List of earthquakes (M ≥ 3.5) recorded by KOERI that occurred in Bursa province and its surrounding area between 1 January 2012 and 30 November 2021.
Table 1. List of earthquakes (M ≥ 3.5) recorded by KOERI that occurred in Bursa province and its surrounding area between 1 January 2012 and 30 November 2021.
NoDateOrigin Time (UTC)LatitudeLongitudeDepth (km)Magnitude
127 November 201304:13:37.540.84627.91910.84.7
211 March 201405:07:00.540.67027.04211.03.6
328 March 201403:59:51.240.42226.13413.24.5
41 June 201421:17:45.740.56127.33411.03.6
53 July 201405:04:46.140.20927.93311.84.5
63 August 201410:42:44.540.60629.1593.43.6
722 October 201417:11:05.640.40730.1157.54.5
86 December 201406:20:53.838.89126.26015.25.0
924 July 201506:54:10.140.25126.30510.74.6
1024 July 201502:39:42.440.24426.28711.94.9
1124 July 201501:26:00.740.24326.30311.24.5
1210 September 201508:12:45.738.84026.27815.44.9
1316 October 201504:35:07.040.44629.1665.43.5
1426 October 201520:07:59.839.79026.2676.74.6
1528 October 201516:20:02.040.82227.76414.34.5
165 December 201520:53:51.740.44429.06613.23.7
177 December 201520:57:51.140.70727.43110.33.7
1828 March 201617:23:46.740.73227.54115.53.7
197 June 201604:09:45.640.26529.15215.84.6
207 June 201608:02:14.940.27529.15013.53.6
2122 June 201623:35:59.740.70529.2237.63.7
2225 June 201605:40:11.940.70729.2129.34.5
239 July 201614:20:51.340.70729.1959.53.8
2417 July 201608:55:41.340.70329.16611.44.1
258 October 201623:02:46.640.61428.9455.53.7
266 February 201711:45:00.939.53126.09412.64.5
276 February 201710:58:01.239.52526.10013.95.3
286 February 201703:51:39.839.54526.10911.05.4
297 February 201702:24:02.939.52426.12412.75.3
308 February 201701:38:03.239.53126.14310.44.6
3118 February 201723:19:24.940.27027.17712.93.6
3228 February 201723:27:33.439.48526.06411.24.5
3321 April 201714:12:21.038.65127.60113.15.1
3427 March 201715:53:23.238.73927.83011.85.3
3528 March 201704:38:19.538.73827.79410.64.5
3612 June 201712:28:37.538.84726.32514.46.3
3717 June 201703:40:36.938.91826.24312.74.8
3821 July 201702:12:34.336.88327.3429.54.6
3922 July 201722:12:32.240.01827.14113.24.3
4025 July 201715:21:10.240.44128.9827.23.6
415 October 201723:54:42.340.83828.34013.93.6
424 November 201721:54:08.236.70628.15484.94.5
4325 December 201705:13:50.038.57526.73617.54.8
443 March 201802:04:33.439.98026.92412.74.5
4513 August 201808:57:09.140.66127.35617.23.7
466 September 201806:00:24.540.84328.41211.73.6
4710 September 201823:02:55.337.18030.634105.74.9
484 December 201812:38:03.240.66726.97511.33.6
4920 December 201806:34:24.440.60028.9777.34.6
505 January 201904:20:14.340.44528.37110.44.1
5111 January 201916:09:56.440.28228.8575.23.9
5215 February 201916:14:27.340.78227.93820.24.1
5319 February 201921:33:55.040.38627.15711.54.1
5419 February 201919:48:42.740.38327.15411.64.0
5520 February 201900:27:57.440.39227.1546.83.6
5624 February 201901:22:24.640.38027.17611.13.9
5723 March 201915:17:59.140.81227.75418.13.7
5823 March 201902:51:11.640.79227.75617.73.5
5929 April 201918:02:43.339.40026.31911.64.5
609 March 201916:05:28.840.84628.14313.13.6
6112 March 201922:24:08.639.33127.9227.74.5
6225 March 201912:13:35.040.56727.12416.04.2
6312 June 201922:44:50.440.72327.44414.53.6
648 August 201911:25:29.237.90129.5958.95.7
6524 September 201908:00:21.440.87528.2129.94.7
6626 September 201910:59:24.640.88028.21613.35.7
6726 September 201915:39:21.140.84528.25014.83.5
6826 September 201912:26:10.940.87028.27411.03.9
6926 September 201912:17:09.340.87028.2739.33.9
7026 September 201911:26:36.240.87628.29415.14.4
7126 September 201907:32:06.640.87828.2217.63.8
7227 September 201911:13:46.740.85228.27410.53.5
7328 September 201911:03:03.240.86928.28314.83.8
7429 September 201906:10:57.540.69429.26214.73.7
754 October 201915:54:30.640.31227.25515.03.6
765 October 201914:51:37.336.05127.98287.54.5
7710 October 201917:09:39.940.71129.2704.63.5
7810 December 201920:24:04.939.45027.9189.94.5
7910 December 201920:14:02.739.44527.9259.25.0
8011 January 202013:37:36.740.86128.22714.44.9
8122 January 202020:17:38.539.06427.84811.64.6
8222 January 202019:22:15.739.05827.83912.25.6
832 February 202011:36:40.139.08927.86613.74.5
842 February 202000:23:47.338.99927.85615.44.8
852 February 202000:57:43.240.83628.18414.43.9
8618 February 202016:09:22.339.10627.82613.05.2
8724 February 202002:43:33.338.99127.87710.45.0
881 April 202019:03:23.340.77927.45416.73.5
8930 April 202010:09:46.137.00428.5328.44.6
9026 June 202007:21:12.238.78927.79410.95.5
9129 June 202004:06:23.836.71428.22573.24.7
9216 July 202018:09:26.038.40426.68518.44.5
938 September 202021:57:23.540.70127.42013.64.6
9424 September 202018:06:40.740.82028.17514.43.7
9524 September 202013:38:31.240.81328.14413.74.3
9630 October 202011:51:24.437.88826.70611.26.9
971 November 202007:05:12.437.81126.9608.64.5
985 November 202005:46:45.340.83528.3007.33.8
9911 November 202006:49:45.437.85326.9688.04.7
1001 February 202120:46:15.238.97726.04413.54.7
1011 February 202113:10:15.138.94926.06110.04.8
1021 February 202108:35:16.638.96126.02013.75.2
10321 March 202121:33:56.540.51628.1537.73.6
10419 June 202112:07:52.740.95029.21314.64.0
Table 2. EPIC performance using default and newly developed equations for the 3 June 2022 Çaypınar (Balıkesir) Earthquake (M = 4.8).
Table 2. EPIC performance using default and newly developed equations for the 3 June 2022 Çaypınar (Balıkesir) Earthquake (M = 4.8).
Event
Date
Origin Time
(UTC)
Latitude
Longitude
Alert Time
(UTC)
Magnitude
Source
Magnitude
M T p m a x P d
3 June 202222:58:58.60039.826
27.948
22:59:16.077Default
(Equations (1) and (2))
-3.14.2
22:59:14.868Developed
(Equations (4) and (5))
-4.14.7
22:58:57.75039.820
27.948
-KOERI catalog4.8--
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Tunç, S.; Tunç, B.; Budakoğlu, E.; Çaka, D.; Nof, R.N.; Barış, Ş. Implementation of the EPIC Earthquake Early Warning System in the Bursa Province (Türkiye) and Its Surroundings. Appl. Sci. 2023, 13, 4985. https://doi.org/10.3390/app13084985

AMA Style

Tunç S, Tunç B, Budakoğlu E, Çaka D, Nof RN, Barış Ş. Implementation of the EPIC Earthquake Early Warning System in the Bursa Province (Türkiye) and Its Surroundings. Applied Sciences. 2023; 13(8):4985. https://doi.org/10.3390/app13084985

Chicago/Turabian Style

Tunç, Süleyman, Berna Tunç, Emrah Budakoğlu, Deniz Çaka, Ran Novitsky Nof, and Şerif Barış. 2023. "Implementation of the EPIC Earthquake Early Warning System in the Bursa Province (Türkiye) and Its Surroundings" Applied Sciences 13, no. 8: 4985. https://doi.org/10.3390/app13084985

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