On the of neural modeling of some dynamic parameters of earthquakes and fire safety in high-rise construction

Author:

Haritonova Larisa

Abstract

The recent change in the correlation of the number of man-made and natural catastrophes is presented in the paper. Some recommendations are proposed to increase the firefighting efficiency in the high-rise buildings. The article analyzes the methodology of modeling seismic effects. The prospectivity of applying the neural modeling and artificial neural networks to analyze a such dynamic parameters of the earthquake foci as the value of dislocation (or the average rupture slip) is shown. The following two input signals were used: the power class and the number of earthquakes. The regression analysis has been carried out for the predicted results and the target outputs. The equations of the regression for the outputs and target are presented in the work as well as the correlation coefficients in training, validation, testing, and the total (All) for the network structure 2-5-5-1for the average rupture slip. The application of the results obtained in the article for the seismic design for the newly constructed buildings and structures and the given recommendations will provide the additional protection from fire and earthquake risks, reduction of their negative economic and environmental consequences.

Publisher

EDP Sciences

Reference20 articles.

1. Sychev Y.V., Internet Zhurnal Tekhnologii Tekhnosfernoy Bezopasnosti, 1 (41) (2012)

2. Garrison W.G., Large property damage losses in the hydrocarbon-chemical industries. A thirty-year review (New York, 1998)

3. Kirukhancev E.E., Ivanov V.N., Internet Zhurnal Tekhnologii Tekhnosfernoy Bezopasnosti, 4(50) (2013)

4. Kirukhancev E.E., Ivanov V.N., Internet Zhurnal Tekhnologii Tekhnosfernoy Bezopasnosti, 5(51) (2013)

5. Nguyen Tien Minh, Kiryukhantsev E.E., Internet Zhurnal Tekhnologii Tekhnosfernoy Bezopasnosti, 2 (72) (2017)

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