Calculation of time of evacuation of people using the forecasting method based on use of molecular descriptors and artificial neural networks

Authors

  • Denis S. Korolev Voronezh Institute of State Fire Service of EMERCOM of Russia; 394052, Russia, Voronezh, ul. Krasnoznamennaya, 231
  • Andrey V. Kalach Voronezh Institute of State Fire Service of EMERCOM of Russia; 394052, Russia, Voronezh, ul. Krasnoznamennaya, 231 https://orcid.org/0000-0002-8926-3151
  • Dmitriy V. Kargashilov Voronezh Institute of State Fire Service of EMERCOM of Russia; 394052, Russia, Voronezh, ul. Krasnoznamennaya, 231

Keywords:

forecasting, descriptors, artificial neural networks, calculation of time of evacuation

Abstract

For calculation of time of evacuation of people, according to the technique stated in GOST 12.1.004-91 such fire-dangerous indicators of substances are necessary: specific mass speed of burning out, linear speed of distribution of a flame, the lowest warmth of combustion. In most cases basic data in reference and standard books are absent. In such cases it is recommended to use the substance parameters similar on a structure to initial substance. In such results there is a big error which doesn't provide an integrated approach to development of the system of prevention of the fire. For optimization of a choice of the actions aimed at providing fire safety it is offered to use the forecasting method based on use of molecular descriptors and artificial neural networks. By means of a method, the absent parameters for a dipropilketon were predicted. As a result of approbation of this approach by calculation of time of evacuation of people on the example of limit ketones of the dipropilketon and benzene which is a part of the first calculation was carried out. Comparing the received results, it is visible that impact of dangerous factors of the fire on the person come in case of use of the predicted values that provides more rigid approach in ensuring fire safety. GOST 12.1.004-91 technique in a complex with the forecasting method based on use of molecular descriptors and artificial neural networks I proved from a positive side and allows to time evacuations of people with the acceptable accuracy.

Author Biographies

Andrey V. Kalach, Voronezh Institute of State Fire Service of EMERCOM of Russia; 394052, Russia, Voronezh, ul. Krasnoznamennaya, 231

Grand PhD in Chemical Sciences, Professor

Dmitriy V. Kargashilov, Voronezh Institute of State Fire Service of EMERCOM of Russia; 394052, Russia, Voronezh, ul. Krasnoznamennaya, 231

PhD in Technical Sciences

References

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Published

2016-06-03

How to Cite

Korolev Д., Kalach А. and Kargashilov Д. (2016) “Calculation of time of evacuation of people using the forecasting method based on use of molecular descriptors and artificial neural networks”, Vestnik of the Institute for Command Engineers of the MES of the Republic of Belarus, 24(2), pp. 72–81. Available at: https://journals.ucp.by/index.php/vice/article/view/556 (Accessed: 19 April 2024).