5 CONCLUSIONS AND FUTURE
WORK
The model of procedures for the management of fire
risks at oil and gas facilities was presented with the
use of genetic algorithms with modifications for
solving the assigned task:
1. Instead of the use of binary row, the
chromosome is used, the genes of which serve as
identifier of the procedures.
2. The primary population is generated
according to a specific algorithm.
3. In order to create the set from various quantity
of procedures, a changed mutation operation is used
consisting of random deletion of one of the
chromosome-s gene.
The efficiency of the model obtained was tested
in information system “FireRisks”. As a result, it was
concluded that one of the main advantages of the
suggested approach is the significant decrease in
calculation operations, which, in turn, solves the issue
of optimizing fire risks management procedures at the
facilities with the use of modern information systems.
The offered model also possesses high variability
of suggested variants, except for the significant
reduction in the required time for conducting the
variable combination of procedures on fire risk
calculated values decrease.
At present, unification is conducted of the created
models into a single system of intellectual support of
decision-making in the field of fire risks management
at oil and gas complex facilities.
The way forward is to create algorithms using
CMA Evolution Strategy, Differential evolution and
Simulated Annealing to compare the effectiveness of
the obtained models in the management of fire risks
in the oil refining facilities.
REFERENCES
Desheng Dash Wu, Shu-Heng Chen, David L. Olson,
Business intelligence in risk management: Some recent
progresses, Information Sciences, Volume 256, 20
January 2014, Pages 1-7, ISSN 0020-0255,
http://dx.doi.org/10.1016/j.ins.2013.10.008.
Abrahamsen, E. B., & Aven, T. (2008). On the compliance
of risk acceptance criteria with normative theories for
decision-making. Reliability Engineering & System
Safety, 93(12), 1906-1910. doi:http://dx.doi.org/
10.1016/j.ress.2008.03.021.
Gudin, S. V., Khabibulin, R. Sh., Rubtsov, D. N. Problems
of decision-making in fire risks management in the
territories of oil processing facilities using modern
software products // Fire and Explosion Safety. —
2015. — № 6 (62). — pp. 40-45. DOI:
10.18322/PVB.2015.24.12.40-45.
Xuancai Zhao, Qiuzhen Lin, Jianyong Chen, Xiaomin
Wang, Jianping Yu, Zhong Ming, Optimizing security
and quality of service in a Real-time database system
using Multi-objective genetic algorithm, Expert
Systems with Applications, Volume 64, 1 December
2016, Pages 11-23, ISSN 0957-4174,
http://dx.doi.org/10.1016/j.eswa.2016.07.023.
Martorell, S., Villanueva, J. F., Carlos, S., Nebot, Y.,
Sánchez, A., Pitarch, J. L., & Serradell, V. (2005).
RAMS+ C informed decision-making with the
application to multi-objective optimization of technical
specifications and maintenance using genetic
algorithms. Reliability Engineering & System Safety,
87(1), 65-75.
Ramirez, A. J., Knoester, D. B., Cheng, B. H., & McKinley,
P. K. (2009). Applying genetic algorithms to decision-
making in autonomous computing systems. The paper
presented during the Proceedings of the 6th
international conference on Autonomous computing.
Panov N.V., Shary S.P. (2011). Interval evolutionary
algorithm search the global optimum - News of Altai
State University, №. 12.
Schaefer I.A. (2012). Investigation on the efficiency of
genetic algorithm constrained optimization - Youth and
Science: Proceedings of the VIII All-Russian scientific
and technical conference of students, graduate students
and young scientists dedicated.
Sergienko R. B. (2009) Efficacy co-evolutionary genetic
algorithm constrained optimization. Herald of Siberian
State Aerospace University. Academician M.F.
Reshetnev № 3.
Caputo, A. C., Pelagagge, P. M., & Palumbo, M. (2011).
Economic optimization of industrial safety measures
using genetic algorithms. Journal of Loss Prevention in
the Process Industries, 24(5), 541-551.
Holland J.N (1975). Adaptation in Natural and Artificial
Systems. Ann Arbor, Michigan: Univ. Michigan Press.
Gen, M., & Cheng, R. (2000). Genetic algorithms and
engineering optimization (Vol. 7). John Wiley & Sons.