Optimal Setting of Earthquake-Related Ionospheric TEC (Total Electron Content) Anomalies Detection Methods: Long-Term Validation over the Italian Region
Abstract
:1. Introduction
- Establishing when the behavior of the TEC parameter (as well as the other ionospheric parameters) can be defined anomalous is extremely complicated, because the ionospheric noise sources are many, of various natures (known and unknown) and produce disturbances (mainly governed by the influence of the Sun [17,18,19]) in time and space, which can be even stronger than the anomalies themselves.
- It is equally complicated to establish when the identified anomaly is actually correlated to the seismic activity in progress, since the correlation should be established in the spatial, temporal and magnitude domains.
- It is proposed to introduce a filter to eliminate/minimize the effects of solar activity on the TEC (see Section 2.4.2);
- For the first time, multi-year time series (overall in the time interval from 2001 to 2021) are analyzed without time interruptions (i.e., inclusive of continuous seismic and non-seismic periods);
- An optimal setting of the methodological inputs for the detection of seismic-related anomalies is realized for the first time.
- It is also the first time that a long-term TEC earthquake-related anomalies detection method has been applied across Italy and the Mediterranean area.
2. Materials and Methods
2.1. TEC Data Collection
- GIM-TEC (Global Ionospheric Maps-TEC) data [32]: maps of TEC data processed and released by the Center for Orbit Determination in Europe (CODE) measured by GNSS stations and interpolated in squared areas of 2.5° of latitude and 5° of longitude (pixels) in order to cover the entire world.
- Presence of seismicity around the geographical position of the GNSS receiver;
- Availability of a sufficiently long time series of data (at least 10 years);
- Minimum fraction of missing values;
2.2. IQR Method
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- ΔTEC is given from TEC − MM;
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- TEC is the Total Electron Content signal under investigation;
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- MM is the 15-day moving median associated to each TEC under investigation (in the same time slot and geographical location);
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- UQ and LQ are, respectively, the 15-day upper and lower quartiles associated to each TEC under investigation (in the same time slot and geographical location);
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- K is a prefixed value that acts as a threshold.
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- IQR is the 15-day UQ or LQ range associated to each TEC under investigation (in the same time slot and geographical location) in a function where TEC is, respectively, greater or less than MM.
2.3. IQRINDEX First Approximation Thresholds Setting
2.4. IQRINDEX Inputs and Their Elements
2.4.1. Persistence Criterion
2.4.2. Management of Solar Radiation Conditions
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- N.A. = Not Available data.
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- Kneg and Kpos as calculated in Table 2.
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- F10.7 is the index value of each data point as obtained by the aforementioned interpolation having the same time resolution of the TEC under investigation.
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- MMF10.7 is the 27-day Moving Median associated to each F10.7 under investigation (in the same time-slot).
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- IQRF10.7 is the 27-day interquartile range associated to each F10.7 under investigation (in the same time-slot).
2.4.3. Management of Geomagnetic Activity
2.4.4. Recap of the IQRINDEXES under Investigation
2.5. Earthquake Inputs and Their Elements
2.5.1. Anomaly Time Window (ATW)
- ±15 days;
- ±30 days;
- −90/+30 days.
2.5.2. Space Intervals
- RD (Dobrovolsky Radius) or with the epicenter included in the Pixel Area (EP ∈ PA);
- R = 1000 km;
- R = 2200 km.
2.5.3. Minimum Magnitude
- M ≥ 5;
- M ≥ 5.5;
- M ≥ 6.
2.5.4. Recap of the Earthquake Input Variables
2.6. Selection of Magnitude-Space-Time (MST) Domain Case Studies
Recap of the Selected MST Domains and EQ Catalogues
2.7. Matching IQR and EQ Inputs
2.8. Positive Likelihood Ratio (LR+)
2.9. IQR Optimal Thresholds
2.9.1. True Positive Random Probability (RP)
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- x = TP number;
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- n = number of anomalies detected;
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- n − x = FP number.
2.9.2. Threshold Combinations
3. Results
- IQR & MST inputs classification by LR+ index using first approximation thresholds (intermediate results);
- Selection of input elements after classification (match with all the possible thresholds);
- Determination of the best Site-Input-Threshold combinations;
- Best performance classifications separated by site and R according to LR+ and RP (second-level sorting parameter) as ATW, M, Kpos and Kneg vary;
- Optimal setting of input combinations and thresholds (final results).
3.1. LR+ Analysis: Intermediate Results
3.1.1. LR+ Analysis on GNSS Station Data
3.1.2. LR+ Analysis on GIM Data: EQs within RD
3.1.3. LR+ Analysis on GIM Data: Depth Filter 50 km
3.1.4. LR+ Analysis on GIM Data: R1000/R2200
3.1.5. LR+ Analysis: Results of the Input Selection
- DSW: the daily sliding window that returned the best results is undoubtedly that of 27 days. Compared to the 15-day one, it returned significantly better results both in the analysis of the individual GNSS stations and in the analyses of the GIM data.
- SF: the solar activity filter performed very well in the analysis of the single stations; the best LR+ for each station was always registered when SF was applied. The performance was neither confirmed nor denied in subsequent analyses. This is probably due to the fact that SF is related to the thresholds used for the detection of anomalies (see Section 2.3) which was higher for the individual stations than for the pixels; the lower the thresholds, the higher the IQR index values that were filtered out. Since we looked for the most anomalous behaviors of the TEC parameter, the thresholds of the GIM pixels will also rise in the next setting phase. Therefore, we decided to apply the filter for solar activity, trusting the results obtained on the individual stations.
- GF: the application of the geomagnetic activity filter gave excellent results in the analysis of the GIM data with R1000 and R2200 and uncertain results in the application on the stations as well as on the pixels with R = RD. However, given the much greater consistency of the 2 large-area samples, we trust the GIM-data result and opted for the adoption of GF.
- P: the persistence criterion has never offered added value in any of the 3 macro analyses, so we opted for non-application.
- DF: the depth filter was tested on pixels 6 and 8 (i.e., where there was a statistically significant presence of seismic events deeper than 50 km) and proved effective in 79% of cases (i.e., in 79% of cases the results are better if earthquakes deeper than 50 km are filtered out, see Section 3.1.3). Therefore, we opted to keep the filter.
- ATW: the 3 tested anomaly time windows (±15, ±30 and −90/+30 days), in the case of the analysis across the GNSS stations having R = RD, provided different performances according to the station under investigation; in the case of the GIM data analysis having the Dobrovolsky radius as an area of influence showed an improvement in performance as the time of the event was approached. In the case of the analysis with R = 1000 km, the ±15-day window was not effective and in the case of R = 2200 km we obtained the best performances by applying the window of −90/+30 days. Therefore, we opted to keep the 3 time windows and further verify their performance when setting the optimal thresholds and comparing the obtained results.
- M: the 3 minimum magnitudes proposed (5, 5.5, 6) in the case of R = RD showed an improvement in performance with the increase in magnitude. In the case of the analysis with R = 1000 km and R = 2200 km, the best performance was obtained by applying M5.5+, however good performance was also obtained with R1000 and M6+. Additionally, in this case we adopted all 3 minimum magnitudes in order to test them as the thresholds changed.
3.2. Final Results
3.2.1. GNSS Stations Data IQR Method Results
IQR Method on aqui Station
IQR Method on mops Station
IQR Method on unpg Station
3.2.2. GIM Data IQR Method Results within RD
3.2.3. GIM Data IQR Method Results within R1000
3.2.4. GIM Data IQR Method Results within R2200
3.2.5. GIM Data IQR Method Optimal Radius: Results within R1250
4. Discussion
- DSW (Daily Sliding Window): the results obtained clearly show that the 27-day moving window is better suited to the detection of TEC anomalies than the 15-day one, regardless of the type of data used (single GNSS receiver or Global ionospheric map).
- P (Persistence criterion): the persistence criterion, tested on a duration of 8 h a day (1/3 of the daily data points) did not prove effective on any of the long-term applications carried out. We conclude that the detection of seismic-ionospheric anomalies can be more efficient looking for punctual rather than persistent phenomena.
- DF (Depth Filter): the depth filter, for which earthquakes with seismic focus depth greater than 50 km were excluded, proved to be effective in about 80% of the cases analyzed. Our results confirm that earthquakes deeper than 50 km are less likely to affect the ionosphere.
- GF (Geomagnetic activity Filter): the application of the filter (|Dst| ≤ 20 nT) gave uncertain results on tests with a limited area of influence (Dobrovolsky radius), on both types of data (single receiver and GIM), but excellent results as the area of influence increased. In general, it seems to work where there is a sufficiently high number of seismic events, and we consider this an important value, also because the sites in which it has given the best results also correspond to those in which the best final results are recorded (aqui station and GIM pixels with R ≤ 1000 km), so we recommend its use.
- SF (Solar activity Filter): the proposed solar activity filter, composed of a fixed and a variable threshold (see Section 2.4.2), gave excellent results in the application on the data coming from single GNSS receivers, while it seems to be irrelevant in this intermediate analysis on GIM data. We expect that this is only due to the particular setting of the first approximation thresholds, as in the subsequent analysis with the optimal thresholds it gave some indication of effectiveness (see comments to Figure 18), but to demonstrate it we would need more specific in-depth analysis.
- Kpos & Kneg (thresholds) optimal setting: from the assumption that the comparison samples are non-Gaussian, mainly right-tailed, confirmed by the long-term IQR trends observed tending to develop towards the positive sign, it follows that the thresholds used (positive and negative) should be set independent of each other, because their optimal setting also has a higher tendency to register positive thresholds than negative ones. Furthermore, although the efforts and needs to determine common thresholds for the different observation sites are reasonable, according to our results, the possibility that different threshold levels are necessary to describe such a complex phenomenon cannot be excluded. In fact, in addition to being extremely variable from a space-time point of view, the TEC is also subject to different levels of signal-to-noise ratio depending on the type of observation and on the technical characteristics of the ground stations.
- Single GNSS stations: with the data of the single GNSS stations, from 10 to 20 anomalies were detected in the absence of false positives with random probabilities ranging from 2.4 out of 100 to 2 out of 1 million. Furthermore, the long seismic sequences of 2016 and 2012 were alerted of by the stations of L’Aquila (Italy) and Modena (Italy) by particularly intense anomalies repeated over short days. This, although we are aware of the need to confirm the observations on other sites and to restrict the range of variability of the optimal thresholds applied, leads us to believe that, when the other input parameters are optimally set, data obtained from the individual GNSS receivers are useful for capturing local earthquake-ionospheric effects (Magnitude ≥ 4; Distance ≤ Dobrovolsky radius).
- GIM data: GIM data proved to be particularly effective in detecting large-scale earthquake-ionospheric effects. Although there is a need to validate the observation on other areas, the preliminary results of this type of observation are extremely interesting.
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- Magnitude ≥ 5.5;
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- Distance from the center of the pixel less than 1250 km;
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- Hypocenter less than 50 km;
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- Anomaly time window ranging from 90 days before (after) to 30 days after (before) the seismic event (the ionospheric anomaly).
- The optimal setting of the methodological inputs employed in the methods for the identification of TEC co-seismic anomalies through long-term validation represents a valid action strategy.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Station | Coordinates | Data Availability | % of Missing Data | Data Resolution | |
---|---|---|---|---|---|
Lat (deg) | Long (deg) | From 1 January 2001 to 31 December 2019 | |||
aqui | 42.368 | 13.350 | 19 years | 11.3 | 1 h |
unpg | 43.119 | 12.356 | 19 years | 11.35 | 1 h |
mops | 44.629 | 10.949 | 12.8 years | 9.92 | 1 h |
Station | Single Stations Thresholds | Pixel | GIM Thresholds | ||
---|---|---|---|---|---|
Kpos | Kneg | Kpos | Kneg | ||
aqui | 24 | –18 | 1 | 20 | –13 |
unpg | 31 | –20 | 2 | 21 | –15 |
mops | 24 | –17 | 3 | 20 | –13 |
4 | 19 | –12 | |||
5 | 20 | –12 | |||
6 | 19 | –13 | |||
7 | 18 | –13 | |||
8 | 17 | –13 |
Station | Single Stations Thresholds | Pixel | GIM Thresholds | ||
---|---|---|---|---|---|
PKpos | PKneg | PKpos | PKneg | ||
aqui | 5 | –5 | 1 | 4 | –4 |
unpg | 5 | –4 | 2 | 4 | –4 |
mops | 5 | –5 | 3 | 4 | –3 |
4 | 4 | –3 | |||
5 | 4 | –3 | |||
6 | 4 | –3 | |||
7 | 4 | –3 | |||
8 | 4 | –3 |
Variations Proposed for the Management of Solar Influence | ||
---|---|---|
Sample size | 15 days or 27 days | |
Solar Activity filters | Filter 1 | F10.7 > 200 s.f.u. → TEC = N.A. |
Filter 2 | |F10.7INDEX| > Ks → IQRINDEX = N.A. | |
If in the IQRINDEX application persistence is required: F10.7INDEX > PKs for more than 8 h/day → Daily IQR index = N.A. |
IQR INDEX Time-Series under Investigation—Single Station Data | |||||||
---|---|---|---|---|---|---|---|
Input Variable | Persistence | DSW | Sol. Filter | Geo. Filter | No. of IQR INDEXES | Station | No. of Time-Series |
No. of Elements | 2 | 2 | 2 | 2 | 16 | 3 | 48 |
Input Elements | YES | 15 | YES | YES | aqui, unpg and mops TEC time-series | ||
NO | 27 | NO | NO |
IQR INDEX Time-Series under Investigation—Gim Data | |||||||
---|---|---|---|---|---|---|---|
Input Variable | Persistence | DSW | Sol. Filter | Geo. Filter | No. of IQR INDEXES | Pixel | No. of Time-Series |
No. of Elements | 2 | 2 | 2 | 2 | 16 | 8 | 128 |
Input Elements | YES | 15 | YES | YES | Pixel TEC time-series from No. 1 to No. 8 | ||
NO | 27 | NO | NO |
MST Domains and EQ Catalogues under Investigation—Single Station Data | |||||||
---|---|---|---|---|---|---|---|
Input Variable | ATW | Alert Area | Max Depth | Minimum Magnitude | No. of MST Domains | Stations | No. of EQ Catalogues |
No. of Elements | 3 | 1 | 2 | 1 | 6 | 3 | 18 |
Input Elements | ±15 days ±30 days −90/+30 days | D < RD or D < 150 km | NO <50 km | M ≥ 4 | aqui, unpg and mops |
MST Domains and EQ Catalogues under Investigation—GIM Data | |||||||
---|---|---|---|---|---|---|---|
Input Variable | ATW | Alert Area | Max Depth | Minimum Magnitude | No. of MST DOMAINS | Pixels | No. of EQ Catalogues |
No. of Elements | 3 | 3 | 2 | 3 | 54 | 8 | 432 |
Input Elements | ±15 days ±30 days −90/+30 days | D < RD or EP ∈ PA D = 1000 km D = 2200 km | NO <50 km | M ≥ 5 M ≥ 5.5 M ≥ 6 | Pixels from No. 1 to No. 8 |
Station | Start Date | End Date | No. of M4+ EQs with D < RD or D < 150 km |
---|---|---|---|
aqui | 1 January 2001 | 31 December 2019 | 217 |
unpg | 1 January 2001 | 31 December 2019 | 218 |
mops | 5 April 2007 | 31 December 2019 | 98 |
No. of EQs with D < RD or EP ∈ PA | |||
---|---|---|---|
Min Magnitude | 5 | 5.5 | 6 |
No. of Pixel 1 EQs | 17 | 8 | 5 |
No. of Pixel 2 EQs | 16 | 11 | 6 |
No. of Pixel 3 EQs | 10 | 8 | 4 |
No. of Pixel 4 EQs | 33 | 18 | 9 |
No. of Pixel 5 EQs | 5 | 4 | 3 |
No. of Pixel 6 EQs | 18 | 11 | 8 |
No. of Pixel 7 EQs | 0 | 0 | 0 |
No. of Pixel 8 EQs | 16 | 9 | 4 |
No. of Pixel 4 EQs | M5+ | M5.5+ | M6+ |
---|---|---|---|
R1000 | 233 | 63 | 19 |
R2200 | 472 | 117 | 35 |
Site | Total | DF50 | % | |
---|---|---|---|---|
No. of M4+ EQs within RD/150 km for each station | aqui | 217 | 1 | 0.46 |
unpg | 218 | 0 | 0.00 | |
mops | 98 | 2 | 2.04 | |
No. of M5+ EQs with D < RD or EP ∈ PA for each pixel | Pixel1 | 30 | 1 | 5.88 |
Pixel2 | 33 | 0 | 0.00 | |
Pixel3 | 22 | 0 | 0.00 | |
Pixel4 | 60 | 1 | 3.03 | |
Pixel5 | 12 | 2 | 20.00 | |
Pixel6 | 37 | 11 | 38.89 | |
Pixel8 | 29 | 10 | 31.25 | |
No. of M5+ EQs with R1000 or R2200 for Pixel 4 | Pixel4 | 315 | 38 | 10.73 |
Pixel4 | 624 | 80 | 11.86 |
SITE | R | MMIN | ATrate (%) FOR EACH ATW (Days) | ||
---|---|---|---|---|---|
ATW ±15 | ATW ±30 | ATW −90+30 | |||
AQUI | RD | 4 | 28.6 | 47.3 | 70.7 |
UNPG | RD | 4 | 29.3 | 45.6 | 67.6 |
MOPS | RD | 4 | 29 | 49.1 | 73.6 |
PIXEL 1 | RD | 5 | 4.7 | 9.2 | 17.4 |
PIXEL 2 | RD | 5 | 5.1 | 9.9 | 18.1 |
PIXEL 3 | RD | 5 | 3.8 | 7.4 | 13.4 |
PIXEL 4 | RD | 5 | 9.9 | 19.9 | 35 |
PIXEL 5 | RD | 5 | 1.4 | 2.7 | 4.7 |
PIXEL 6 | RD | 5 | 6.9 | 13.7 | 26.5 |
PIXEL 8 | RD | 5 | 6.2 | 12.1 | 22.6 |
PIXEL 4 | R1000 | 5 | 52.9 | 78.9 | 94.3 |
PIXEL 4 | R2200 | 5 | 78.7 | 96.1 | 99.7 |
PIXEL 4 | R1000 | 5.5 * | 19.8 | 34.8 | 54.4 |
PIXEL 4 | R2200 | 5.5 * | 35.4 | 57 | 79.4 |
EQ Catalogues under Investigation | |||||||
---|---|---|---|---|---|---|---|
Type of Observation | MST Domains | No. of Site Catalogues | No. of EQ Catalogues | ||||
Input Variable: | D | DF | M | ATW (Days) | |||
Single Station data | No. Of Elements | 1 | 1 | 1 | 3 | 3 | 9 |
Input Elements | RD | NO | 4+ | ±15; ±30; −90/+30 | aqui; unpg; mops | ||
GIM data—All pixels—Rd | No. Of Elements | 1 | 1 | 3 | 3 | 7 | 81 |
Input Elements | RD | NO | 5+; 5.5+; 6+ | ±15; ±30; −90/+30 | Pixel no. 1–6, 8 | ||
No. Of Elements | 1 | 1 | 3 | 3 | 2 | ||
Input Elements | RD | YES | 5+; 5.5+; 6+ | ±15; ±30; −90/+30 | Pixel no. 6, 8 | ||
GIM data—Pixel no. 4—R1000/R2200 | No. Of Elements | 1 | 2 | 1 | 2 | 1 | 30 |
Input Elements | R1000 | Yes/No | 5+ | ±15; ±30 | Pixel no. 4 | ||
No. Of Elements | 1 | 2 | 1 | 1 | 1 | ||
Input Elements | R2200 | Yes/No | 5+ | ±15; | Pixel no. 4 | ||
No. Of Elements | 2 | 2 | 1 | 3 | 1 | ||
Input Elements | R1000/R2200 | Yes/No | 5.5+ | ±15; ±30; −90/+30 | Pixel no. 4 | ||
No. Of Elements | 2 | 2 | 1 | 3 | 1 | ||
Input Elements | R1000/R2200 | Yes/No | 6+ | ±15; ±30; −90/+30 | Pixel no. 4 | ||
Total No. of EQ catalogues | 120 |
MST Domains under Investigation | ||||
---|---|---|---|---|
Type of Observation | Single Station | GIM Data—Rd | GIM Data—Pixel No. 4 | Total No. of MST Domains |
No. of MST domains | 3 | 18 | 30 | 51 |
Total No. of MST Domains | No. of IQR Indexes | Total No. of IQR Methods under Investigation |
---|---|---|
51 | 16 | 816 |
Type of Observation | No. of IQR Indexes | No. of EQ Catalogues | No. of IQR Time-Series under Investigation |
---|---|---|---|
Single Station data | 16 | 9 | 144 |
GIM data—Rd | 81 | 1296 | |
GIM data—Pixel no. 4 | 30 | 480 | |
Total No. of IQR time-series under investigation | 1920 |
Input Type | Input | Elements | No. of Elements | Description (Type of Variable/Unit of Measurement) |
---|---|---|---|---|
Site | Station /Pixel | aqui, mops, unpg, Pixel1, Pixel2, Pixel3, Pixel4, Pixel5, Pixel6, Pixel8 | 10 | Station or pixel to analyze (character) |
IQR index | DSW | 15, 27 | 2 | Daily Sliding Window (no. of days) |
SF | YES, NO | 2 | Solar activity Filter (logic) | |
GF | YES, NO | 2 | Geomagnetic activity Filter (logic) | |
P | YES, NO | 2 | Persistence criterion (logic) | |
MST domain | ATW | 30 (±15), 60 (±30), 120 (−90/+30) | 3 | Anomaly Time Window (no. of days) |
DF | YES, NO | 2 | Depth Filter (logic) | |
R | Dobrovolsky, 1000, 2200 | 3 | Max Radius (character or km) | |
M | 4, 5, 5.5, 6 | 4 | Magnitude (numeric) |
IQR—Stations—Inputs | IQR—Stations—Outputs | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Site | DSW | SF | GF | P | ATW | EQs | SEQ 1 | TP | TPR | FP | FPR | ATrate | LR+ |
aqui | 27 | YES | YES | NO | ±30 | 217 | 35 | 7 | 0.0157 | 2 | 0.0049 | 0.5196 | 3.2357 |
aqui | 27 | YES | NO | NO | ±30 | 217 | 35 | 6 | 0.0092 | 2 | 0.003 | 0.4954 | 3.0554 |
aqui | 27 | YES | YES | NO | −90/+30 | 217 | 20 | 8 | 0.0128 | 1 | 0.0043 | 0.7313 | 2.9394 |
aqui | 27 | YES | NO | NO | −90/+30 | 217 | 20 | 7 | 0.0073 | 1 | 0.0028 | 0.7276 | 2.6209 |
aqui | 27 | YES | YES | NO | ±15 | 217 | 46 | 5 | 0.0179 | 4 | 0.0069 | 0.3242 | 2.6051 |
Site | IQR Index Ranges (Rounded) | No. of Kneg Elements | No. of Kpos Elements | No. of Threshold Combinations | |
---|---|---|---|---|---|
Lower Limit | Upper Limit | ||||
aqui | −33 | 37 | 16 | 18 | 288 |
unpg | −29 | 45 | 14 | 22 | 308 |
mops | −29 | 49 | 14 | 24 | 336 |
Pixel 1 | −19 | 47 | 9 | 23 | 207 |
Pixel 2 | −19 | 65 | 9 | 32 | 288 |
Pixel 3 | −19 | 33 | 9 | 16 | 144 |
Pixel 4 | −19 | 23 | 9 | 11 | 99 |
Pixel 5 | −17 | 27 | 8 | 13 | 104 |
Pixel 6 | −15 | 31 | 7 | 15 | 105 |
Pixel 8 | −17 | 29 | 8 | 14 | 112 |
Total No. of threshold combinations tested | 1991 |
# | Site | DSW | SF | GF | P | ATW | LR+ |
---|---|---|---|---|---|---|---|
1 | aqui | 27 | YES | YES | NO | ±30 | 3.24 |
2 | aqui | 27 | YES | NO | NO | ±30 | 3.06 |
3 | aqui | 27 | YES | YES | NO | −90/+30 | 2.94 |
4 | aqui | 27 | YES | NO | NO | −90/+30 | 2.62 |
5 | aqui | 27 | YES | YES | NO | ±15 | 2.61 |
6 | unpg | 27 | YES | NO | NO | −90/+30 | 5.41 |
7 | unpg | 27 | YES | YES | NO | −90/+30 | 4.97 |
8 | unpg | 27 | NO | NO | NO | −90/+30 | 4.29 |
9 | unpg | 27 | NO | YES | NO | −90/+30 | 2.74 |
10 | unpg | 27 | YES | NO | NO | ±30 | 2.38 |
11 | mops | 27 | YES | NO | NO | ±15 | 2.85 |
12 | mops | 27 | NO | NO | NO | ±15 | 2.84 |
13 | mops | 27 | NO | YES | NO | −90/+30 | 2.47 |
14 | mops | 27 | NO | NO | NO | ±30 | 2.37 |
15 | mops | 27 | YES | NO | NO | ±30 | 2.36 |
Input Variable | DSW | SF | GF | P | ATW | M | Site | LR+ | Rank |
---|---|---|---|---|---|---|---|---|---|
Input elements | 27 | YES | YES | NO | ±30 | 5 | Pixel 1 | Higher Value | 1 |
15 | Lower Value | 0 |
Type of Data | DSW | SF | GF | P | DF | ATW | M | R |
---|---|---|---|---|---|---|---|---|
GNSS Station | 27 | YES | YES | NO | 50 km | ±15, ±30, −90/+30 days | 4+ | RD |
GIM pixel | 27 | YES | YES | NO | 50 km | ±15, ±30, −90/+30 days | 5+, 5.5+, 6+ | RD, 1000, 2200 |
Kpos | Kneg | Site | ATW | EQs | SEQ | TP | FP | ATrate | LR+ | RP |
---|---|---|---|---|---|---|---|---|---|---|
17 | −21 | aqui | ±30 | 216 | 35 | 20 | 0 | 0.5190 | Inf | 0.000002 |
23 | −23 | mops | −90/+30 | 94 | 14 | 13 | 0 | 0.7223 | Inf | 0.014557 |
33 | −19 | unpg | −90/+30 | 217 | 20 | 10 | 0 | 0.6886 | Inf | 0.023969 |
IQR Method—aqui Station—ATW ± 30 | |||||||
---|---|---|---|---|---|---|---|
TP Detected | Related EQ(s) | ||||||
# | IQR Index | Date | Type | M | Date | Days from TP | Dist. (km) |
1 | 24.6 | 24 December 2004 | POST-SEISMIC | 4 | 9 December 2004 | 15 | 62 |
2 | 18.2 | 4 November 2006 | POST-SEISMIC | 4.5 | 21 October 2006 | 14 | 147 |
POST-SEISMIC | 4 | 1 November 2006 | 3 | 37 | |||
3 | 21.1 | 15 October 2007 | PRE-SEISMIC | 4.2 | 21 October 2007 | −6 | 38 |
4 | 32.8 | 16 October 2007 | PRE-SEISMIC | 4.2 | 21 October 2007 | −5 | 38 |
5 | 17.3 | 9 January 2011 | POST-SEISMIC | 4.2 | 9 January 2011 | 0 | 32 |
PRE-SEISMIC | 4 | 13 January 2011 | −4 | 30 | |||
6 | 20.6 | 20 April 2012 | PRE-SEISMIC | 6.1 | 20 May 2012 | −30 | 329 |
7 | −31.9 | 28 November 2012 | PRE-SEISMIC | 4 | 5 December 2012 | −7 | 65 |
8 | 19.2 | 7 March 2013 | POST-SEISMIC | 4.9 | 16 February 2013 | 19 | 76 |
9 | 18.0 | 15 March 2013 | POST-SEISMIC | 4.9 | 16 February 2013 | 27 | 76 |
10 | 23.9 | 25 December 2013 | POST-SEISMIC | 4.4 | 22 December 2013 | 3 | 131 |
PRE-SEISMIC | 5.2 | 29 December 2013 | −4 | 144 | |||
PRE-SEISMIC | 4.4 | 20 January 2014 | −26 | 144 | |||
11 12 13 | 17.1 36.6 25.5 | 9 October 2016 10 October 2016 11 October 2016 | POST-SEISMIC | 4.3 | 15 September 2016 | 24, 25, 26 | 52 |
POST-SEISMIC | 4.2 | 19 September 2016 | 20, 21, 22 | 42 | |||
PRE-SEISMIC | 4.2 | 16 October 2016 | −7, −6, −5 | 43 | |||
PRE-SEISMIC | 4 | 26 October 2016 | −17, −16, −15 | 53 | |||
PRE-SEISMIC | 4.7 | 26 October 2016 | −17, −16, −15 | 58 | |||
PRE-SEISMIC | 4.1 | 26 October 2016 | −17, −16, −15 | 60 | |||
PRE-SEISMIC | 6.1 | 26 October 2016 | −17, −16, −15 | 64 | |||
PRE-SEISMIC | 4.3 | 26 October 2016 | −17, −16, −15 | 59 | |||
PRE-SEISMIC | 5.5 | 26 October 2016 | −17, −16, −15 | 60 | |||
PRE-SEISMIC | 4.2 | 27 October 2016 | −18, −17, −16 | 56 | |||
PRE-SEISMIC | 4.4 | 27 October 2016 | −18, −17, −16 | 59 | |||
PRE-SEISMIC | 4.2 | 27 October 2016 | −18, −17, −16 | 71 | |||
PRE-SEISMIC | 4.4 | 27 October 2016 | −18, −17, −16 | 55 | |||
PRE-SEISMIC | 4.2 | 27 October 2016 | −18, −17, −16 | 70 | |||
PRE-SEISMIC | 4.4 | 29 October 2016 | −20, −19, −18 | 53 | |||
PRE-SEISMIC | 4.2 | 30 October 2016 | −21, −20, −19 | 50 | |||
PRE-SEISMIC | 4.6 | 30 October 2016 | −21, −20, −19 | 50 | |||
PRE-SEISMIC | 4.6 | 30 October 2016 | −21, −20, −19 | 57 | |||
PRE-SEISMIC | 4 | 30 October 2016 | −21, −20, −19 | 58 | |||
PRE-SEISMIC | 4.1 | 30 October 2016 | −21, −20, −19 | 80 | |||
PRE-SEISMIC | 4.1 | 30 October 2016 | −21, −20, −19 | 53 | |||
PRE-SEISMIC | 4.6 | 30 October 2016 | −21, −20, −19 | 56 | |||
PRE-SEISMIC | 4 | 30 October 2016 | −21, −20, −19 | 64 | |||
PRE-SEISMIC | 4.5 | 30 October 2016 | −21, −20, −19 | 43 | |||
PRE-SEISMIC | 4.2 | 30 October 2016 | −21, −20, −19 | 40 | |||
PRE-SEISMIC | 4.1 | 30 October 2016 | −21, −20, −19 | 49 | |||
PRE-SEISMIC | 4.1 | 30 October 2016 | −21, −20, −19 | 62 | |||
PRE-SEISMIC | 4.1 | 30 October 2016 | −21, −20, −19 | 44 | |||
PRE-SEISMIC | 6.5 | 30 October 2016 | −21, −20, −19 | 56 | |||
PRE-SEISMIC | 4.2 | 31 October 2016 | −22, −21, −20 | 53 | |||
PRE-SEISMIC | 4.3 | 31 October 2016 | −22, −21, −20 | 49 | |||
PRE-SEISMIC | 4.9 | 1 November 2016 | −23, −22, −21 | 72 | |||
PRE-SEISMIC | 4 | 2 November 2016 | −24, −23, −22 | 61 | |||
PRE-SEISMIC | 4.8 | 3 November 2016 | −25, −24, −23 | 78 | |||
PRE-SEISMIC | 4 | 7 November 2016 | −29, −28, −27 | 60 | |||
14 | 17.7 | 21 April 2017 | PRE-SEISMIC | 4.1 | 27 April 2017 | −6 | 69 |
PRE-SEISMIC | 4 | 27 April 2017 | −6 | 71 | |||
15 | 17.8 | 05 August 2017 | POST-SEISMIC | 4.1 | 22 July 2017 | 14 | 31 |
16 | 17.4 | 06 September 2017 | PRE-SEISMIC | 4 | 10 September 2017 | −4 | 31 |
17 | 22.5 | 28 December 2018 | PRE-SEISMIC | 4.3 | 1 January 2019 | −4 | 57 |
18 | 17.8 | 28 December 2018 | PRE-SEISMIC | 4.3 | 1 January 2019 | −4 | 57 |
19 | 18.2 | 29 December 2018 | PRE-SEISMIC | 4.3 | 1 January 2019 | −3 | 57 |
20 | 30.9 | 21 September 2019 | POST-SEISMIC | 4.1 | 1 September 2019 | 20 | 51 |
IQR Method—mops Station—ATW−90/+30 | |||||||
---|---|---|---|---|---|---|---|
TP Detected | Related EQ(s) | ||||||
# | IQR Index | Date | Type | M | Date | Days from TP | Dist. (km) |
1 | 29.2 | 7 May 2007 | PRE-SEISMIC | 4.2 | 30 July 2007 | −84 | 76 |
2 | 27.2 | 27 September 2009 | POST-SEISMIC | 4.6 | 14 September 2009 | 13 | 69 |
PRE-SEISMIC | 4 | 19 October 2009 | −22 | 91 | |||
3 | 29.1 | 22 October 2009 | POST-SEISMIC | 4 | 19 October 2009 | 3 | 91 |
4 | –27.4 | 28 August 2010 | PRE-SEISMIC | 4.1 | 5 September 2010 | −8 | 112 |
PRE-SEISMIC | 5 | 13 October 2010 | −46 | 122 | |||
5 | 43.3 | 9 March 2011 | PRE-SEISMIC | 4 | 24 May 2011 | −76 | 120 |
6 | 34.7 | 20 March 2011 | PRE-SEISMIC | 4 | 24 May 2011 | −65 | 120 |
7 8 | 35.5 44.7 | 20 April 2012 21 April 2012 | PRE-SEISMIC | 4 | 19 May 2012 | −29, −30 | 40 |
PRE-SEISMIC | 4 | 20 May 2012 | −30, −31 | 49 | |||
PRE-SEISMIC | 4.6 | 20 May 2012 | −30, −31 | 39 | |||
PRE-SEISMIC | 4.1 | 20 May 2012 | −30, −31 | 44 | |||
PRE-SEISMIC | 5.2 | 20 May 2012 | −30, −31 | 45 | |||
PRE-SEISMIC | 4.5 | 20 May 2012 | −30, −31 | 34 | |||
PRE-SEISMIC | 4.5 | 20 May 2012 | −30, −31 | 45 | |||
PRE-SEISMIC | 5.2 | 20 May 2012 | −30, −31 | 34 | |||
PRE-SEISMIC | 4 | 20 May 2012 | −30, −31 | 53 | |||
PRE-SEISMIC | 4 | 20 May 2012 | −30, −31 | 50 | |||
PRE-SEISMIC | 4.3 | 20 May 2012 | −30, −31 | 53 | |||
PRE-SEISMIC | 4.3 | 20 May 2012 | −30, −31 | 41 | |||
PRE-SEISMIC | 6.1 | 20 May 2012 | −30, −31 | 38 | |||
PRE-SEISMIC | 4.1 | 21 May 2012 | −31, −32 | 40 | |||
PRE-SEISMIC | 4.3 | 23 May 2012 | −33, −34 | 36 | |||
PRE-SEISMIC | 4 | 25 May 2012 | −35, −36 | 32 | |||
PRE-SEISMIC | 4.1 | 27 May 2012 | −37, −38 | 34 | |||
PRE-SEISMIC | 4.1 | 27 May 2012 | −37, −38 | 36 | |||
PRE-SEISMIC | 4 | 29 May 2012 | −39, −40 | 34 | |||
PRE-SEISMIC | 4 | 29 May 2012 | −39, −40 | 32 | |||
PRE-SEISMIC | 5 | 29 May 2012 | −39, −40 | 32 | |||
PRE-SEISMIC | 5.5 | 29 May 2012 | −39, −40 | 30 | |||
PRE-SEISMIC | 4.2 | 29 May 2012 | −39, −40 | 9 | |||
PRE-SEISMIC | 4.6 | 29 May 2012 | −39, −40 | 29 | |||
PRE-SEISMIC | 4.2 | 29 May 2012 | −39, −40 | 31 | |||
PRE-SEISMIC | 4.7 | 29 May 2012 | −39, −40 | 28 | |||
PRE-SEISMIC | 4.7 | 29 May 2012 | −39, −40 | 31 | |||
PRE-SEISMIC | 4.1 | 29 May 2012 | −39, −40 | 34 | |||
PRE-SEISMIC | 4 | 29 May 2012 | −39, −40 | 25 | |||
PRE-SEISMIC | 5.8 | 29 May 2012 | −39, −40 | 31 | |||
PRE-SEISMIC | 4.2 | 31 May 2012 | −41, −42 | 32 | |||
PRE-SEISMIC | 4 | 31 May 2012 | −41, −42 | 31 | |||
PRE-SEISMIC | 4.9 | 3 June 2012 | −44, −45 | 36 | |||
PRE-SEISMIC | 4.5 | 6 June 2012 | −47, −48 | 106 | |||
PRE-SEISMIC | 4.2 | 12 June 2012 | −53, −54 | 35 | |||
9 | 24.2 | 25 September 2016 | PRE-SEISMIC | 6.1 | 26 October 2016 | −31, −31, −21 | 259 |
10 | 23.3 | 25 September 2016 | PRE-SEISMIC | 6.5 | 30 October 2016 | −35, −35, −25 | 264 |
11 | –23.7 | 5 October 2016 | PRE-SEISMIC | 4 | 9 December 2016 | −75, −65 | 49 |
12 | 47.8 | 7 September 2017 | PRE-SEISMIC | 4.6 | 19 November 2017 | −73 | 70 |
13 | 23.7 | 28 December 2018 | PRE-SEISMIC | 4.5 | 14 January 2019 | −17 | 113 |
IQR Method—unpg Station—ATW−90/+30 | |||||||
---|---|---|---|---|---|---|---|
TP Detected | Related EQ(s) | ||||||
# | IQR Index | Date | Type | M | Date | Days from TP | Dist. (km) |
1 | 33.3 | 9 October 2004 | PRE-SEISMIC | 4 | 9 December 2004 | −61 | 122 |
2 | 36.2 | 5 July 2005 | PRE-SEISMIC | 4.9 | 15 July 2005 | −10 | 129 |
3 | 42.2 | 5 July 2005 | PRE-SEISMIC | 5.6 | 22 August 2005 | −48 | 190 |
4 | 34.7 | 18 November 2006 | POST-SEISMIC | 4.5 | 21 October 2006 | 28 | 79 |
POST-SEISMIC | 4 | 1 November 2006 | 17 | 80 | |||
PRE-SEISMIC | 4.3 | 25 January 2007 | −68 | 109 | |||
5 | −20.6 | 15 January 2008 | PRE-SEISMIC | 4.5 | 1 March 2008 | −46 | 141 |
PRE-SEISMIC | 4.7 | 1 March 2008 | −46 | 142 | |||
PRE-SEISMIC | 4.7 | 1 March 2008 | −46 | 149 | |||
PRE-SEISMIC | 4.1 | 12 April 2008 | −88 | 149 | |||
6 | 35.6 | 31 March 2011 | PRE-SEISMIC | 4 | 24 May 2011 | −54 | 85 |
PRE-SEISMIC | 4 | 17 June 2011 | −78 | 13 | |||
7 | –28.2 | 22 May 2015 | POST-SEISMIC | 4 | 24 April 2015 | 28 | 129 |
8 | 33.8 | 7 May 2017 | POST-SEISMIC | 4.1 | 27 April 2017 | 10 | 60 |
POST-SEISMIC | 4 | 27 April 2017 | 10 | 58 | |||
PRE-SEISMIC | 4 | 20 June 2017 | −44 | 148 | |||
PRE-SEISMIC | 4.1 | 24 June 2017 | −48 | 76 | |||
PRE-SEISMIC | 4.1 | 30 June 2017 | −54 | 88 | |||
PRE-SEISMIC | 4.1 | 22 July 2017 | −76 | 94 | |||
9 | −23.8 | 28 July 2017 | POST-SEISMIC | 4.1 | 30 June 2017 | 28 | 88 |
POST-SEISMIC | 4.1 | 22 July 2017 | 6 | 94 | |||
PRE-SEISMIC | 4 | 10 September 2017 | −44 | 139 | |||
10 | 44.4 | 4 October 2018 | PRE-SEISMIC | 4.2 | 18 November 2018 | −45 | 106 |
Kpos | Kneg | Site | ATW | M | EQs | TP | FP | ATrate | LR+ | RP |
---|---|---|---|---|---|---|---|---|---|---|
23 | −13 | Pixel4 | −90/+30 | 5 | 32 | 4 | 0 | 0.3285 | Inf | 0.0117 |
23 | −17 | Pixel8 | ±15 | 5 | 11 | 1 | 0 | 0.0442 | Inf | 0.0442 |
31 | −13 | Pixel6 | −90/+30 | 6 | 7 | 1 | 0 | 0.0988 | Inf | 0.0988 |
No. of EQs with D < RD or within PA | ||||||
---|---|---|---|---|---|---|
Pixel 4 | Pixel 6 | Pixel 1 | Pixel 8 | Pixel 2 | Pixel 3 | Pixel 5 |
33 | 18 | 17 | 16 | 16 | 10 | 5 |
IQR Method—PIXEL 4—M5+—ATW−90/+30—RD | |||||||
---|---|---|---|---|---|---|---|
TP Detected | Related EQ(s) | ||||||
# | IQR Index | Date | Type | M | Date | Days from TP | Dist. (km) |
1 | −13.3 | 3 November 2006 | PRE-SEISMIC | 5.1 | 10 December 2006 | −37 | 108 |
2 | −16 | 8 September 2015 | PRE-SEISMIC | 6.5 | 17 November 2015 | −70 | 614 |
3 | Inf | 23 May 2018 | PRE-SEISMIC | 5.3 | 16 August 2018 | −85 | 69 |
4 | −17 | 8 November 2019 | PRE-SEISMIC | 6.4 | 26 November 2019 | −18 | 391 |
Kpos | Kneg | ATW | M | EQs | TP | FP | ATrate | LR+ | RP |
---|---|---|---|---|---|---|---|---|---|
23 | −11 | −90/+30 | 5.5 | 52 | 9 | 0 | 0.5191 | Inf | 0.0027 |
IQR Method—Pixel 4—M5.5+—ATW−90/+30—R1000 | |||||||
---|---|---|---|---|---|---|---|
TP Detected | Related EQ(s) | ||||||
# | IQR Index | Date | Type | M | Date | Days from TP | Dist. (km) |
1 | −13.3 | 3 November 2006 | PRE-SEISMIC | 5.7 | 23 November 2006 | −20 | 741 |
PRE-SEISMIC | 5.8 | 24 November 2006 | −21 | 693 | |||
2 | −12.0 | 22 January 2008 | PRE-SEISMIC | 6.3 | 14 February 2008 | −23 | 876 |
PRE-SEISMIC | 6 | 14 February 2008 | −23 | 901 | |||
PRE-SEISMIC | 5.8 | 20 February 2008 | −29 | 898 | |||
3 | −16.0 | 8 September 2015 | PRE-SEISMIC | 6.5 | 17 November 2015 | −70 | 614 |
4 | −11.7 | 24 July 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −31 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −31 | 155 | |||
5 | −12.2 | 27 July 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −28 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −28 | 155 | |||
6 | −12.1 | 16 August 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −8 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −8 | 155 | |||
PRE-SEISMIC | 5.5 | 26 October 2016 | −71 | 159 | |||
PRE-SEISMIC | 6.1 | 26 October 2016 | −71 | 160 | |||
PRE-SEISMIC | 6.5 | 30 October 2016 | −75 | 159 | |||
7 | Inf | 23 May 2018 | PRE-SEISMIC | 5.5 | 25 June 2018 | −33 | 843 |
8 | −12.0 | 22 July 2019 | PRE-SEISMIC | 5.6 | 21 September 2019 | −61 | 390 |
9 | −17.0 | 8 November 2019 | PRE-SEISMIC | 6.4 | 26 November 2019 | −18 | 391 |
Kpos | Kneg | ATW | M | EQs | TP | FP | ATrate | LR+ | RP |
---|---|---|---|---|---|---|---|---|---|
15 | −11 | −90/+30 | 5.5 | 96 | 22 | 0 | 0.7593 | Inf | 0.0023 |
IQR Method—Pixel 4—M5.5+—ATW−90/+30—R2200 | |||||||
---|---|---|---|---|---|---|---|
TP Detected | Related EQ(s) | ||||||
# | IQR Index | Date | Type | M | Date | Days from TP | Dist. (km) |
1 | 21.5 | 28 February 2004 | POST-SEISMIC | 5.5 | 23 February 2004 | 5 | 874 |
POST-SEISMIC | 6 | 24 February 2004 | 4 | 1829 | |||
PRE-SEISMIC | 5.5 | 1 March 2004 | −2 | 848 | |||
PRE-SEISMIC | 5.9 | 17 March 2004 | −18 | 1128 | |||
PRE-SEISMIC | 5.8 | 23 May 2004 | −85 | 228 | |||
2 | −13.3 | 3 November 2006 | PRE-SEISMIC | 5.7 | 23 November 2006 | −20 | 741 |
PRE-SEISMIC | 5.8 | 24 November 2006 | −21 | 693 | |||
3 | 21.0 | 7 May 2007 | PRE-SEISMIC | 5.5 | 29 June 2007 | −53 | 573 |
4 | −12.0 | 22 January 2008 | PRE-SEISMIC | 6.3 | 14 February 2008 | −23 | 876 |
PRE-SEISMIC | 6 | 14 February 2008 | −23 | 901 | |||
PRE-SEISMIC | 5.8 | 20 February 2008 | −29 | 898 | |||
5 | 20.0 | 19 May 2008 | PRE-SEISMIC | 6.1 | 8 June 2008 | −20 | 745 |
6 | 16.6 | 20 May 2008 | PRE-SEISMIC | 6.1 | 8 June 2008 | −19 | 745 |
7 | 15.4 | 30 October 2008 | PRE-SEISMIC | 5.5 | 23 December 2008 | −54 | 436 |
8 | 16.8 | 22 October 2009 | PRE-SEISMIC | 5.5 | 3 November 2009 | −12 | 725 |
9 | 15.6 | 22 October 2009 | PRE-SEISMIC | 5.5 | 3 November 2009 | −12 | 725 |
10 | 18.6 | 9 March 2011 | PRE-SEISMIC | 5.8 | 19 May 2011 | −71 | 1247 |
11 | −16.0 | 8 September 2015 | PRE-SEISMIC | 6.5 | 17 November 2015 | −70 | 614 |
12 | −11.7 | 24 July 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −31 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −31 | 155 | |||
13 | −12.2 | 27 July 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −28 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −28 | 155 | |||
14 | −12.1 | 16 August 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −8 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −8 | 155 | |||
PRE-SEISMIC | 5.5 | 26 October 2016 | −71 | 159 | |||
PRE-SEISMIC | 6.1 | 26 October 2016 | −71 | 160 | |||
PRE-SEISMIC | 6.5 | 30 October 2016 | −75 | 159 | |||
15 | 22.0 | 20 April 2017 | PRE-SEISMIC | 6.3 | 12 June 2017 | −53 | 1037 |
16 | 20.0 | 8 May 2017 | PRE-SEISMIC | 6.3 | 12 June 2017 | −35 | 1037 |
PRE-SEISMIC | 6.6 | 20 July 2017 | −73 | 1230 | |||
17 | Inf | 23 May 2018 | PRE-SEISMIC | 5.5 | 25 June 2018 | −33 | 843 |
18 | 16.0 | 25 May 2018 | PRE-SEISMIC | 5.5 | 25 June 2018 | −31 | 843 |
19 | 21.0 | 26 May 2018 | PRE-SEISMIC | 5.5 | 25 June 2018 | −30 | 843 |
20 | −12.0 | 22 July 2019 | PRE-SEISMIC | 5.8 | 8 August 2019 | −17 | 1344 |
PRE-SEISMIC | 5.6 | 21 September 2019 | −61 | 390 | |||
PRE-SEISMIC | 5.7 | 26 September 2019 | −66 | 1112 | |||
21 | −17.0 | 8 November 2019 | PRE-SEISMIC | 6.4 | 26 November 2019 | −18 | 391 |
PRE-SEISMIC | 5.6 | 22 January 2020 | −75 | 1148 | |||
PRE-SEISMIC | 6.8 | 24 January 2020 | −77 | 2098 | |||
PRE-SEISMIC | 5.7 | 30 January 2020 | −83 | 1381 | |||
PRE-SEISMIC | 5.6 | 30 January 2020 | −83 | 1388 | |||
22 | 15.5 | 2 February 2021 | PRE-SEISMIC | 5.5 | 17 February 2021 | −15 | 747 |
PRE-SEISMIC | 6.3 | 3 March 2021 | −29 | 677 | |||
PRE-SEISMIC | 5.8 | 4 March 2021 | −30 | 669 | |||
PRE-SEISMIC | 5.6 | 12 March 2021 | −38 | 658 | |||
PRE-SEISMIC | 6 | 18 March 2021 | −44 | 1042 | |||
PRE-SEISMIC | 5.5 | 27 March 2021 | −53 | 114 |
Kpos | Kneg | ATW | M | EQs | TP | FP | ATrate | LR+ | RP |
---|---|---|---|---|---|---|---|---|---|
15 | −11 | −90/+30 | 5.5 | 69 | 22 | 0 | 0.6051 | Inf | 0.000016 |
IQR Method—Pixel 4—M5.5+—ATW−90/+30—R1250 | |||||||
---|---|---|---|---|---|---|---|
TP Detected | Related EQ(s) | ||||||
# | IQR Index | Date | Type | M | Date | Days from TP | Dist. (km) |
1 | 21.5 | 28 February 2004 | POST-SEISMIC | 5.5 | 23 February 2004 | 5 | 874 |
PRE-SEISMIC | 5.5 | 1 March 2004 | −2 | 848 | |||
PRE-SEISMIC | 5.9 | 17 March 2004 | −18 | 1128 | |||
PRE-SEISMIC | 5.8 | 23 May 2004 | −85 | 228 | |||
2 | −13.3 | 3 November 2006 | PRE-SEISMIC | 5.7 | 23 November 2006 | −20 | 741 |
PRE-SEISMIC | 5.8 | 24 November 2006 | −21 | 693 | |||
3 | 21.0 | 7 May 2007 | PRE-SEISMIC | 5.5 | 29 June 2007 | −53 | 573 |
4 | −12.0 | 22 January 2008 | PRE-SEISMIC | 6.3 | 14 February 2008 | −23 | 876 |
PRE-SEISMIC | 6 | 14 February 2008 | −23 | 901 | |||
PRE-SEISMIC | 5.8 | 20 February 2008 | −29 | 898 | |||
5 | 20.0 | 19 May 2008 | PRE-SEISMIC | 6.1 | 8 June 2008 | −20 | 745 |
6 | 16.6 | 20 May 2008 | PRE-SEISMIC | 6.1 | 8 June 2008 | −19 | 745 |
7 | 15.4 | 30 October 2008 | PRE-SEISMIC | 5.5 | 23 December 2008 | −54 | 436 |
8 | 16.8 | 22 October 2009 | PRE-SEISMIC | 5.5 | 3 November 2009 | −12 | 725 |
9 | 15.6 | 22 October 2009 | PRE-SEISMIC | 5.5 | 3 November 2009 | −12 | 725 |
10 | 18.6 | 9 March 2011 | PRE-SEISMIC | 5.8 | 19 May 2011 | −71 | 1247 |
11 | −16.0 | 8 September 2015 | PRE-SEISMIC | 6.5 | 17 November 2015 | −70 | 614 |
12 | −11.7 | 24 July 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −31 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −31 | 155 | |||
13 | −12.2 | 27 July 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −28 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −28 | 155 | |||
14 | −12.1 | 16 August 2016 | PRE-SEISMIC | 6.2 | 24 August 2016 | −8 | 148 |
PRE-SEISMIC | 5.5 | 24 August 2016 | −8 | 155 | |||
PRE-SEISMIC | 5.5 | 26 October 2016 | −71 | 159 | |||
PRE-SEISMIC | 6.1 | 26 October 2016 | −71 | 160 | |||
PRE-SEISMIC | 6.5 | 30 October 2016 | −75 | 159 | |||
15 | 22.0 | 20 April 2017 | PRE-SEISMIC | 6.3 | 12 June 2017 | −53 | 1037 |
16 | 20.0 | 8 May 2017 | PRE-SEISMIC | 6.3 | 12 June 2017 | −35 | 1037 |
PRE-SEISMIC | 6.6 | 20 July 2017 | −73 | 1230 | |||
17 | Inf | 23 May 2018 | PRE-SEISMIC | 5.5 | 25 June 2018 | −33 | 843 |
18 | 16.0 | 25 May 2018 | PRE-SEISMIC | 5.5 | 25 June 2018 | −31 | 843 |
19 | 21.0 | 26 May 2018 | PRE-SEISMIC | 5.5 | 25 June 2018 | −30 | 843 |
20 | −12.0 | 22 July 2019 | PRE-SEISMIC | 5.8 | 8 August 2019 | −17 | 1344 |
PRE-SEISMIC | 5.6 | 21 September 2019 | −61 | 390 | |||
PRE-SEISMIC | 5.7 | 26 September 2019 | −66 | 1112 | |||
21 | −17.0 | 8 November 2019 | PRE-SEISMIC | 6.4 | 26 November 2019 | −18 | 391 |
PRE-SEISMIC | 5.6 | 22 January 2020 | −75 | 1148 | |||
PRE-SEISMIC | 6.8 | 24 January 2020 | −77 | 2098 | |||
PRE-SEISMIC | 5.7 | 30 January 2020 | −83 | 1381 | |||
PRE-SEISMIC | 5.6 | 30 January 2020 | −83 | 1388 | |||
22 | 15.5 | 2 February 2021 | PRE-SEISMIC | 5.5 | 17 February 2021 | −15 | 747 |
PRE-SEISMIC | 6.3 | 3 March 2021 | −29 | 677 | |||
PRE-SEISMIC | 5.8 | 4 March 2021 | −30 | 669 | |||
PRE-SEISMIC | 5.6 | 12 March 2021 | −38 | 658 | |||
PRE-SEISMIC | 6 | 18 March 2021 | −44 | 1042 | |||
PRE-SEISMIC | 5.5 | 27 March 2021 | −53 | 114 |
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Colonna, R.; Filizzola, C.; Genzano, N.; Lisi, M.; Tramutoli, V. Optimal Setting of Earthquake-Related Ionospheric TEC (Total Electron Content) Anomalies Detection Methods: Long-Term Validation over the Italian Region. Geosciences 2023, 13, 150. https://doi.org/10.3390/geosciences13050150
Colonna R, Filizzola C, Genzano N, Lisi M, Tramutoli V. Optimal Setting of Earthquake-Related Ionospheric TEC (Total Electron Content) Anomalies Detection Methods: Long-Term Validation over the Italian Region. Geosciences. 2023; 13(5):150. https://doi.org/10.3390/geosciences13050150
Chicago/Turabian StyleColonna, Roberto, Carolina Filizzola, Nicola Genzano, Mariano Lisi, and Valerio Tramutoli. 2023. "Optimal Setting of Earthquake-Related Ionospheric TEC (Total Electron Content) Anomalies Detection Methods: Long-Term Validation over the Italian Region" Geosciences 13, no. 5: 150. https://doi.org/10.3390/geosciences13050150
APA StyleColonna, R., Filizzola, C., Genzano, N., Lisi, M., & Tramutoli, V. (2023). Optimal Setting of Earthquake-Related Ionospheric TEC (Total Electron Content) Anomalies Detection Methods: Long-Term Validation over the Italian Region. Geosciences, 13(5), 150. https://doi.org/10.3390/geosciences13050150