ON THE MONITORING OF SEISMIC ACTIVITY USING THE ALGORITHMS OF DISCRETE MATHEMATICAL ANALYSIS
Аннотация и ключевые слова
Аннотация (русский):
The paper presents a new mathematical approach, entitled Seismic Activity monitoRing by Discrete mathematical analysis (SARD) and aimed at seismic level assessment. It is based on application of well-proven algorithms of Discrete Mathematical Analysis (DMA) for the study of earthquake catalogs. The possibility of applying the proposed method for the territory of California, Kamchatka Peninsula and the Caucasus is shown. Evaluation of efficiency of the developed method is carried out using an error diagram.

Ключевые слова:
Seismic activity monitoring, discrete mathematical analysis (DMA), fuzzy measure, error diagram, Seismic Activity monitoRing by Discrete mathematical analysis (SARD), earthquake catalog
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