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Hakan Karaca. 2020: Application of Markovian models for non-ergodic and non-stationary earthquake times series for the identification of seismic patterns and future projections. Earthquake Science, 33(2): 98-106. DOI: 10.29382/eqs-2020-0098-05
Citation: Hakan Karaca. 2020: Application of Markovian models for non-ergodic and non-stationary earthquake times series for the identification of seismic patterns and future projections. Earthquake Science, 33(2): 98-106. DOI: 10.29382/eqs-2020-0098-05

Application of Markovian models for non-ergodic and non-stationary earthquake times series for the identification of seismic patterns and future projections

  • The current earthquake forecast algorithms are not free of shortcomings due to inherent limitations. Especially, the requirement of stationarity in the evaluation of earthquake time series as a prerequisite, significantly limits the use of forecast algorithms to areas where stationary data is not available. Another shortcoming of forecast algorithms is the ergodicity assumption, which states that certain characteristics of seismicity are spatially invariant.
    In this study, a new earthquake forecast approach is introduced for the locations where stationary data are not available. For this purpose, the spatial activity rate density for each spatial unit is evaluated as a parameter of a Markov chain. The temporal pattern is identified by setting the states at certain spatial activity rate densities. By using the transition patterns between the states, 1- and 5-year forecasts were computed. The method is suggested as an alternative and complementary to the existing methods by proposing a solution to the issues of ergodicity and stationarity assumptions at the same time.
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