Real-Time Seismic Intensity Measurements Prediction for Earthquake Early Warning: A Systematic Literature Review
Abstract
:1. Introduction
2. Theoretical Study on the Evolution of Earthquake Rupture
3. Network-Based Earthquake Early Warning
3.1. Source Estimation Method
3.2. Ground Motion Model Based on M, R, VS30 with Shakemap
3.3. Country-Specific Examples
4. On-Site Warning Method of Earthquake Early Warning
4.1. P Wave Parameters
4.2. Correlation between P Wave Warning Parameters and Ground Motion Model
- Waveform processing: when an earthquake is detected, remove the mean value and linear trend of the waveform and pick up the P waveform. Calculate the signal-to-noise ratio to eliminate data that may be contaminated by the noise for data quality control;
- P wave parameter calculation: integrate the accelerometer records once and twice to obtain the Pv and Pd records; filter them with a Butterworth high-pass filter with a cutoff frequency of 0.075 Hz to remove the low-frequency drift after the second integration; and obtain the Pd, Pv, τc and other parameters in the 3 s time window after the arrival of the P wave;
- Threshold setting: there is a good correlation between the seismic intensity parameter IMM and peak velocity and the early P wave peak displacement and IM parameter PGV [59]. By converting the intensity to the PGV, the threshold value of Pd is calculated by determining the empirical correlation between the Pd and PGV. Similarly, the threshold value of τc is determined by the correlation between τc and magnitude. For example, the Pd threshold and τc threshold are set to 0.2 cm and 0.6 s, respectively, for an earthquake with M > 6 and IMM ≥ 7 [15].
- Issue alert: judge whether the IM parameters exceed the set threshold, calculate the intensity level, determine the warning level and release the warning information.
4.3. Ground Motion Model Based on Artificial Intelligence Technology
5. Intensity Measurements Estimation Based on Finite Fault Model
Intensity Measurements Estimation Based on Finite Fault Template Matching
6. Intensity Measurements Prediction Based on Simulated Seismic Wave Fields
6.1. Numerical Shake Prediction for EEWS
6.2. Intensity Measurements Prediction Based on Propagation of Local Undamped Motion
6.2.1. Principle of PLUM Method
6.2.2. Improvement and Testing of the PLUM Method
- Grid definition: each station is connected to its six neighboring stations regardless of spacing. When a station monitors motion above the threshold, it sends its maximum predicted value to the surrounding six stations;
- Intensity modification: the intensity is changed to , and is calculated from the PGA and PGV;
- Dual station triggering algorithm: when both adjacent stations trigger the threshold, the station whose maximum value of ground vibration is triggered satisfies the primary threshold, and the adjacent triggered station meets the secondary threshold to solve the noise-spike false-alarm problem.
7. Intensity Measurements Evaluation Methodology
7.1. Evaluation of Intensity Measurements Accuracy Based on Different Algorithms
7.2. Impact of Alert Costs on the Intensity Measurements Accuracy
8. Discussion
9. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Article | Category | Research Methods | Opinions |
---|---|---|---|
[25] | deterministic assumptions | Using extensive global seismic data, measured the period of seismic waves and calculated the scalar relationship between τp and Mw on a log–linear scale. | Information on the final magnitude of the earthquake was available within the first few seconds of the earthquake source rupture. |
[26] | deterministic assumptions | The relationship that earthquake rupture initiation behavior has with earthquake magnitude was investigated using the early strong motion records of the near-source P and S signals, which demonstrated a statistically significant scale. | At the early stage of earthquake rupture, there was a proportional relationship between stress drop and/or active slip surface and seismic moment. |
[27] | deterministic assumptions | Analyzed a high-quality seismic database to measure peak displacement (Pd) amplitudes with progressively expanding time windows. | The evolution of Pd with time was related to the early stages of the rupture process and could be used as an indicator of the final size of the rupture. |
[28] | deterministic assumptions | The early P wave signals of earthquakes of different magnitudes were analyzed, and an amplitude parameter quantifying the initial peak amplitude was introduced to explore the possible differences in their early rupture. | Small and large earthquakes rupture at different initiation stages, and the final rupture extent of the seismic event was statistically controlled by its initial behavior. |
[29] | no correlation assumption | Studied the proportional relationship between τp and Mw, as well as the effect of this relationship on whether the earthquake rupture was deterministic. | No evidence that the earthquake magnitude could be estimated before the rupture had been completed. |
[30] | weak deterministic assumptions | Using a large amount of seismic data, examined how peak absolute vertical displacements evolve over time for different magnitudes. | Small and large ruptures started in indistinguishable ways. |
[31] | weak deterministic assumptions | Before the arrival of the S wave, the vertical component Pd measured in the time window was gradually extended and a linear relationship was assumed between log10 (Pd) and the Mw. | The evolution of Pd over time suggested a general initial growth pattern that was inconsistent with deterministic models of earthquake rupture. |
[32] | weak deterministic assumptions | From a finite fault model database of strong seismic events of magnitude Mw 7.0–9.0, the average rise time and rupture speeds of each seismic event were analyzed. | They proposed weak determinism, which held that the magnitude of an earthquake could be predicted after it had been nucleated for some time. |
[33] | weak deterministic assumptions | Seismic and geodetic data were used to study early rupture indicators to determine if the observations supported deterministic rupture behavior. | Although the initial few seconds were not sufficient to infer the final earthquake magnitude, an accurate estimate could be made before the rupture was complete, which indicated a weak certainty. |
[34] | weak deterministic assumptions | The typical temporal rupture behavior of large shallow subduction zone earthquakes was studied using three extensive source–time function catalogs. | The final magnitude could not be accurately predicted until the rupture had developed to a certain size. |
Reference | Methods | Research Methods | Method Performance |
---|---|---|---|
[21] | Boundary integral equation | A simple wavefield estimation method that predicted earthquake intensity directly from the real-time seismic intensity observed near the target location. | The method was computationally inexpensive, overcame some disadvantages in terms of point sources and was a powerful method for wavefield estimation that could improve the performance of EEWS. |
[82] | Boundary integral equation | Based on Huygens’ principle and the Kirchhoff–Fresnel boundary integral equation, the prediction of subsequent wave fields directly from the observed seismic wave field was proposed. | The method compensated for the shortcomings of the PSA but required a dense observation network; additionally, the warning time was short. |
[83] | Radiative transfer theory | A method was proposed to accurately estimate the current wavefield distribution in real time using data assimilation techniques, and then the time evolution of future wavefields was predicted through seismic wave propagation simulations. | The method might mostly reflect the current actual observations, and the assimilation technique minimized the difference between the estimated current state and the actual observations. |
[84] | Radiative transfer theory | The path term was incorporated into the numerical shake prediction scheme to predict future wave fields with heterogeneous attenuation structures. | Careful treatment of heterogeneous attenuation structures in numerical shake prediction could help improve ground motion forecasts, especially those with long lead times. |
[85] | Radiative transfer theory | A modified Propagation of Local Undamped Motion (PLUM) was proposed by introducing an attenuation factor to the wave propagation. | Improved accuracy and rapidity of seismic intensity distribution compared to the original method. |
[86] | Radiative transfer theory | The ALPHA algorithm was proposed; it is based on the Huygens principle, assumes multiple point source models below each observatory and establishes various attenuation relationships to predict intensity. | Compared to existing algorithms, ALPHA enables EEWS to provide accurate warnings to a wider area at an earlier stage. |
Alarm Category | Abbreviations | Description |
---|---|---|
True Positive | TP | GM exceeds the threshold and alerts before it arrives |
False Positive | FP | GM does not exceed the threshold, but the alarm is issued |
True Negatives | TN | GM arrives without exceeding the threshold, and no alarm is issued |
False Negative | FN | GM is above the threshold, but no alarm is issued |
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Cheng, Z.; Peng, C.; Chen, M. Real-Time Seismic Intensity Measurements Prediction for Earthquake Early Warning: A Systematic Literature Review. Sensors 2023, 23, 5052. https://doi.org/10.3390/s23115052
Cheng Z, Peng C, Chen M. Real-Time Seismic Intensity Measurements Prediction for Earthquake Early Warning: A Systematic Literature Review. Sensors. 2023; 23(11):5052. https://doi.org/10.3390/s23115052
Chicago/Turabian StyleCheng, Zhenpeng, Chaoyong Peng, and Meirong Chen. 2023. "Real-Time Seismic Intensity Measurements Prediction for Earthquake Early Warning: A Systematic Literature Review" Sensors 23, no. 11: 5052. https://doi.org/10.3390/s23115052
APA StyleCheng, Z., Peng, C., & Chen, M. (2023). Real-Time Seismic Intensity Measurements Prediction for Earthquake Early Warning: A Systematic Literature Review. Sensors, 23(11), 5052. https://doi.org/10.3390/s23115052