Worldwide Statistical Correlation of Eight Years of Swarm Satellite Data with M5.5+ Earthquakes: New Hints about the Preseismic Phenomena from Space
Abstract
:1. Introduction
2. Materials and Methods
2.1. Investigated Datasets
2.1.1. Satellite Datasets
2.1.2. Earthquake Catalog Acquisition and Pre-Processing
2.2. Methods of Analysis
- First differences of the data: the difference between two consecutive data divided by the time interval between them (as a first order approximation of the temporal derivative).
- Removal of the residual trend: a cubic spline coming from the fitting of the derivative of the data (as obtained from Step 1) is removed.
- Analysis of the residuals obtained from Step 1 and Step 2 along the track: moving windows of 7° latitude are used, with an incremental shift of 1/5 of the window length (i.e., ~1.4° of latitude).
- The root mean square (rms) is calculated inside the window and compared with the whole track’s Root Mean Square (RMS). The anomaly is defined if ( is chosen as 2.5 or 3 if no-frequency investigation is performed; more details are given later on).
- Method 1 “All anomalies–EQs”. This method selects all earthquakes compatible with the investigated anomaly. The advantage is that we do not apply any assumption for the analysis, and we can suppose that, in case the statistics are sufficient, the “wrong” anomaly–earthquake couples increase just the background without creating additional artificial concentrations of anomalies. On the other side, one disturbance can be produced only by one earthquake, and so, unless the signal is superposed (or under the satellite resolution), the anomaly could not be associated with more than one event. For this reason, we also introduce the following methods.
- Method 2 “Min [log(ΔT R)]”. This method selects the closest earthquake in space (“R”) and time (anticipation time ΔT ). The selection is made by searching for the minimum of the following equation: log10(|ΔT∙R|). The criterion is based on the assumption that an anomaly is more likely to be produced by the closest earthquake in space and time.
- Method 3 “Max (magnitude)”. This method selects the earthquake with the highest magnitude in the space and time domains of interest. The assumption is that a larger earthquake produces more anomalies before its occurrence that can be detectable in the ionosphere.
- Method 4 “Closer (Rikitake)”. This method takes into account that a larger earthquake with a magnitude M is expected to have a longer anticipation time of its possible precursors, according to the Rikitake law [37], expressed as:
3. Results
3.1. Swarm Magnetic Field Results
3.2. Swarm Electron Density Results
4. Discussion
4.1. General Comparison for Magnetic Field and Ne Results
4.2. Validation of the Results by Confusion Matrix Performance Evaluation and ROC Curves
- True positive (TP): in the cell, there is at least an anomaly, and an earthquake follows within the next 90 days
- True negative (TN): in the cell, there are no anomalies, and no earthquakes follow in the next 90 days in the same cell.
- False positive (FP): in the cell, there is one or more anomalies, and no earthquakes follow in the next 90 days in the same cell
- False negative (FN): in the cell, there are no anomalies, and an earthquake follows in the next 90 days.
4.3. Improving the Superposed Epoch Approach by Taking into Account the Rikitake Law
4.4. Some Features of the Largest Concentrations
4.5. General Comparison of the Number of “Pre-“ and “Post-“ Earthquake Anomalies
5. Conclusions
- The anticipation time “” of the anomaly increases with the magnitude of the incoming earthquakes following the Rikitake laws [37], with these specific coefficients being and for the magnetic field “mag” and electron density data, respectively. The anticipation time of large earthquakes (M7.5+) seems to be some years before the event and has been detected.
- The focal mechanism seems to have a small or null influence on the generated frequency of the possible pre-earthquake anomalies.
- Earthquakes localized in the land areas tend to be preceded by lower frequency anomalous signals, while sea earthquakes are more likely to be preceded by faster signal anomalies.
- The Swarm magnetic field signal anomalies generally show a better correlation with earthquakes than the electron density ones do.
- A more selective set of parameters, achieved here by the investigation of the signal frequency, reduces the size of the anomaly dataset, and it is shown that the possible correlation with the seismic event has a higher statistical significance for both the magnetic field and Ne observations.
- Frequency analysis seems to be fundamental in some cases: for electron density, we find a higher correlation with anomalies, with a signal period in the range of 25–50 s.
- All the results in this paper have been tested with the “confusion matrix” approach, reaching an accuracy from 75% to 95% and an alarmed time-space from 0.7% to 19.1%. The real results show a predicting capability that is 1.67 times better than that of a random predictor, according to the AUC of the ROC curve, which further proves a prediction capability of the best detected ionospheric anomalies by WSC.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Evaluation of the Declustering of the Earthquake Catalog on the Worldwide Statistical Correlation Results
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Magnetic Data | Magnetic Data 2–10 s | Magnetic Data, 10–25 s | Magnetic Data, 25–50 s | |||||||
---|---|---|---|---|---|---|---|---|---|---|
90 days before the earthquake | Earthquake | Earthquake | Earthquake | Earthquake | ||||||
Yes | No | Yes | No | Yes | No | Yes | No | |||
Anomalies | Yes | 1396 | 25,654 | 573 | 9477 | 555 | 10,453 | 655 | 13,149 | |
No | 50,454 | 1,091,776 | 51,277 | 1,107,953 | 51,295 | 1,106,977 | 51,195 | 1,104,281 | ||
Hit and false positive rates | HR = 2.7% | FR = 0.23% | HR=1.11% | FR=0.85% | HR = 1.07% | FR = 0.94% | HR = 1.26% | FR = 1.18% | ||
Accuracy and Alarmed Time | Acc = 93.5% | AT = 2.31% | Acc = 94.8% | AT = 0.86% | Acc = 94.7% | AT = 0.94% | Acc = 94.5% | AT = 1.18% | ||
500 days before the earthquake | Earthquake | Earthquake | Earthquake | Earthquake | ||||||
Yes | No | Yes | No | Yes | No | Yes | No | |||
Anomalies | Yes | 3255 | 19,575 | 1378 | 7826 | 1522 | 8800 | 1805 | 10,882 | |
No | 15,325 | 102,965 | 17,202 | 114,714 | 17,058 | 113,740 | 16,775 | 111,658 | ||
Hit and false positive rates | HR = 17.5% | FR = 16.0 | HR = 7.42% | FR = 6.39% | HR = 8.19% | FR = 7.18% | HR = 9.71% | FR = 8.88% | ||
Accuracy and Alarmed Time | Acc = 75.3% | AT = 16.2% | Acc = 82.2% | AT = 6.52% | Acc = 81.7% | AT = 7.31% | Acc = 80.40% | AT = 8.99% | ||
Ne data | Ne data 2–10 s | Ne data, 10–25 s | Ne data, 25–50 s | |||||||
90 days before the earthquake | Earthquake | Earthquake | Earthquake | Earthquake | ||||||
Yes | No | Yes | No | Yes | No | Yes | No | |||
Anomalies | Yes | 1380 | 32,605 | 345 | 7984 | 434 | 7460 | 1100 | 16,156 | |
No | 50,502 | 1,084,793 | 51,537 | 1,109,414 | 51,448 | 1,109,938 | 50,782 | 1,101,242 | ||
Hit and false positive rates | HR = 2.66% | FR = 2.92% | HR = 0.66% | FR = 0.71% | HR = 0.84% | FR = 0.67% | HR = 2.12% | FR = 1.44% | ||
Accuracy and Alarmed Time | Acc = 92.9% | AT = 2.91% | Acc = 94.9% | AT = 0.71% | Acc = 95.0% | AT = 0.68% | Acc = 94.3% | AT = 1.48% | ||
500 days before the earthquake | Earthquake | Earthquake | Earthquake | Earthquake | ||||||
Yes | No | Yes | No | Yes | No | Yes | No | |||
Anomalies | Yes | 3436 | 23,490 | 949 | 6744 | 1039 | 6101 | 2311 | 11,662 | |
No | 15,164 | 99,030 | 17,651 | 115,776 | 17,561 | 116,419 | 16,289 | 110,858 | ||
Hit and false positive rates | HR = 18.5% | FR = 19.2% | HR = 5.10% | FR = 5.50% | HR = 5.59% | FR = 4.98% | HR = 12.4% | FR = 9.52% | ||
Accuracy and Alarmed Time | Acc = 72.6% | AT = 19.1% | Acc = 82.7% | AT = 5.45% | Acc = 83.2% | AT = 5.06% | Acc = 80.2% | AT = 9.90% |
Alerted Time of 90 Days | Alerted Time of 500 Days | ||||
---|---|---|---|---|---|
Earthquake | Earthquake | ||||
Yes | No | Yes | No | ||
Anomalies | Yes | 564 | 1112 | 406 | 478 |
No | 800 | 29204 | 258 | 4618 | |
Hit and false positive rates | HR = 41.35% | FR = 3.67% | HR = 61.15% | FR = 9.38% | |
Accuracy and Alarmed Time | Acc = 94.0% | AT = 5.29% | Acc = 87.2% | AT = 15.35% |
Focal Mechanism | Earthquakes with Anomalies in the Band 2–10 s | Earthquakes with Anomalies in the Band 10–25 s | Earthquakes with Anomalies in the Band 25–50 s | All the Earthquakes |
---|---|---|---|---|
strike-slip | 50 (35.2%) −10.1% | 54 (39.4%) +0.6% | 54 (37.2%) −5.0% | 846 (39.2%) |
reverse | 67 (47.2%) +10.5% | 62 (45.3%) +6.0% | 64 (44.1%) +3.4% | 922 (42.7%) |
normal | 25 (17.6%) −2.8% | 21 (15.3%) −15.4% | 27 (18.6%) +2.8% | 391 (18.1%) |
Sea or land | ||||
Land | 16 (11.0%) −35.2% | 24 (17.5%) +3.6% | 30 (20.6%) +21.5% | 372 (16.9%) |
Sea | 130 (89.0%) +7.2% | 113 (82.5%) −0.7% | 116 (79.5%) −4.4% | 1827 (83.1%) |
Parameter, Period Band | Anomalies before the Earthquake | Anomalies after the Earthquake | Difference of the Anomalies | Estimated Uncertainty | Is the Result Significant? |
---|---|---|---|---|---|
Y, no-band | 16,630 Norm: 16,584 | 16,436 Norm: 16,481 | 194 (1.2%) Norm: 103 (0.6%) | 129 | No 1 |
Y, 2–10 s | 4959 Norm: 4953 | 4563 Norm: 4568 | 396 (8.7%) Norm: 385 (8.4%) | 70 | Yes |
Y, 10–25 s | 5078 Norm: 5066 | 4917 Norm: 4928 | 161 (3.3%) Norm: 137 (2.8%) | 71 | Yes |
Y, 25–50 s | 6297 Norm: 6273 | 5858 Norm: 5880 | 439 (7.5%) Norm: 392 (6.7%) | 79 | Yes |
Ne, no-band | 15,504 Norm: 15,469 | 15,618 Norm: 15,652 | −114 (−0.7%) −182 (−1.2%) | 125 | Yes, but post-seismic |
Ne, 2–10 s | 3157 Norm: 3136 | 3337 Norm: 3360 | −180 (−5.4%) Norm: −224 (−6.7%) | 58 | Yes, but post-seismic |
Ne, 10–25 s | 4661 Norm: 4669 | 4562 Norm: 4554 | 99 (2.2%) 114 (2.5%) | 68 | Yes |
Ne, 25–50 s | 13,033 Norm: 12,991 | 12,538 Norm: 12,579 | 495 (3.9%) Norm: 413 (3.3%) | 114 | Yes |
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Marchetti, D.; De Santis, A.; Campuzano, S.A.; Zhu, K.; Soldani, M.; D’Arcangelo, S.; Orlando, M.; Wang, T.; Cianchini, G.; Di Mauro, D.; et al. Worldwide Statistical Correlation of Eight Years of Swarm Satellite Data with M5.5+ Earthquakes: New Hints about the Preseismic Phenomena from Space. Remote Sens. 2022, 14, 2649. https://doi.org/10.3390/rs14112649
Marchetti D, De Santis A, Campuzano SA, Zhu K, Soldani M, D’Arcangelo S, Orlando M, Wang T, Cianchini G, Di Mauro D, et al. Worldwide Statistical Correlation of Eight Years of Swarm Satellite Data with M5.5+ Earthquakes: New Hints about the Preseismic Phenomena from Space. Remote Sensing. 2022; 14(11):2649. https://doi.org/10.3390/rs14112649
Chicago/Turabian StyleMarchetti, Dedalo, Angelo De Santis, Saioa A. Campuzano, Kaiguang Zhu, Maurizio Soldani, Serena D’Arcangelo, Martina Orlando, Ting Wang, Gianfranco Cianchini, Domenico Di Mauro, and et al. 2022. "Worldwide Statistical Correlation of Eight Years of Swarm Satellite Data with M5.5+ Earthquakes: New Hints about the Preseismic Phenomena from Space" Remote Sensing 14, no. 11: 2649. https://doi.org/10.3390/rs14112649