2022
DOI: 10.3390/rs14133203
|View full text |Cite
|
Sign up to set email alerts
|

Developing a Fuzzy Inference System Based on Multi-Sensor Data to Predict Powerful Earthquake Parameters

Abstract: Predicting the parameters of upcoming earthquakes has always been one of the most challenging topics in studies related to earthquake precursors. Increasing the number of sensors and satellites and consequently incrementing the number of observable possible earthquake precursors in different layers of the lithosphere, atmosphere, and ionosphere of the Earth has opened the possibility of using data fusion methods to estimate and predict earthquake parameters with low uncertainty. In this study, a Mamdani fuzzy … Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
2
1
1
1

Citation Types

2
8
0

Year Published

2022
2022
2024
2024

Publication Types

Select...
5
2
1
1

Relationship

1
8

Authors

Journals

citations
Cited by 18 publications
(14 citation statements)
references
References 37 publications
2
8
0
Order By: Relevance
“…A previous work on this earthquake was conducted by Akhoondzadeh [57], which analysed 75 days before up to 15 days after the Mw = 7.2 Haiti 2021 earthquake using CSES-01, Swarm Alpha Bravo and Charlie satellites and atmospheric data from the Giovanni web-portal. He identified an increase in anomalies in the last 20 days before the earthquake, similar to the result of the recent catastrophic earthquake in Turkey [58]. Another work by Khan et al [59] used a machine learning technique to analyse satellite atmospheric data 30 days before and up to 15 days after the mainshock.…”
Section: Introductionmentioning
confidence: 86%
See 1 more Smart Citation
“…A previous work on this earthquake was conducted by Akhoondzadeh [57], which analysed 75 days before up to 15 days after the Mw = 7.2 Haiti 2021 earthquake using CSES-01, Swarm Alpha Bravo and Charlie satellites and atmospheric data from the Giovanni web-portal. He identified an increase in anomalies in the last 20 days before the earthquake, similar to the result of the recent catastrophic earthquake in Turkey [58]. Another work by Khan et al [59] used a machine learning technique to analyse satellite atmospheric data 30 days before and up to 15 days after the mainshock.…”
Section: Introductionmentioning
confidence: 86%
“…In this paper, we applied several methods to investigate the lithosphere, atmosphere and ionosphere, following the approach we had successfully used before several earthquakes and some volcano eruptions. These cases include among all, the Mw = 6.7 Lushan (China) 2013 [69], Mw = 7.8 Ecuador 2016 [70], Mw = 6.0 and Mw = 6.5 Amatrice-Norcia 2016 [71], Mw = 7.5 Indonesia 2018 [72], Mw = 7.2 Kermadec Islands (New Zealand) 2019 [73] and Mw = 7.8 and Mw 7.5 Turkey 2023 [58] earthquakes. In all of these mentioned cases, a possible lithosphere-atmosphere and ionosphere coupling (LAIC) has been identified in the form of a chain of anomalies and, in some cases (as Lushan 2013), even more possible couplings with different physical mechanisms have been proposed by Zhang et al [69].…”
Section: Methodsmentioning
confidence: 99%
“…Such an approach was derived from another very similar algorithm, CAPRI [60], with the main difference being the data source: MEANS investigate the climatological archive of MERRA-2 from NASA [61] (the one used in this paper) and CAPRI ERA-Interim and operational archive from ECMWF. Such algorithms have been successfully applied to several earthquakes in the world as well as volcano eruptions [39,54,59,60,62,63].…”
Section: Atmospheric Time Seriesmentioning
confidence: 99%
“…With the experience of previous investigated earthquake, the MEANS software has been used with the remotion of a linear trend to take into account the possible effect of the global warming as done in De Santis et al [12] for Ridgecrest, US, 2019 earthquake analysis. The MEANS algorithm has been used the first time by Piscini et al [13] to investigate volcano eruptions and after applied to several other volcano eruptions and earthquakes [12,[14][15][16][17][18]. The algorithm essentially estimates the typical value of the atmospheric parameter for the day and region constructing an historical time series and in particular the mean and standard deviation of the parameter for the area under study.…”
Section: Atmospheric Data Processingmentioning
confidence: 99%