operation quickly, having provided possibility of it
constructions improvement. As the executed
researches have shown that only system solutions for
increasing the vehicle reliability at all life cycle stages
will make it possible to increase its safety, as well as to
ensure the possibility of trouble-free operation. The
decision-support systems for management
improvement use will allow to correct the actions,
which directed on strategic goal realization at each
stage. Statistical data analysis and simulation
modelling as the intelligent block main element of DSS
will allow selecting the most rational variant for each
real condition combination. At the same time, it is
necessary to create conditions for initial data timely
updating, its operative processing and ready solutions
storage.
ACKNOWLEDGEMENTS
This work was supported by the Russian Foundation
for Basic Research: grant No. 19-29-06008 \ 19
REFERENCES
Börger, A., Alfaro, J., León, P., 2019. Use of the Lean Meth-
odology to Reduce Truck Repair Time: A Case Study.
In: Rocha Á., Adeli H., Reis L., Costanzo S. (eds) New
Knowledge in Information Systems and Technologies.
WorldCIST'19 2019. Advances in Intelligent Systems
and Computing, vol 930. pp 655-665.
Borshchev, A., 2014 Multi-method modelling: AnyLogic, in
Discrete-Event Simulation and System Dynamics for
Management Decision Making. John Wiley & Sons Ltd.
Chichester, U.
Buyvol, P. et al., 2019. Forecasting of Changes in Service
System During the Launch Period of the New Automo-
bile Lineup. Helix. Vol. 9 (4): 5221- 5226.
Data Science Textbook. 2020. URL: https://docs.tibco.com/
data-science/textbook.
Introduction to Discrete-Event Simulation. Chapter 10.
2008. In: Cassandras C.G., Lafortune S. (eds) Introduc-
tion to Discrete Event Systems. Springer, Boston, MA.
pp. 557-615.
James, A.T., Gandhi, O.P. & Deshmukh, S.G. 2018. Fault
diagnosis of automobile systems using fault tree based
on digraph modeling. Int J Syst Assur Eng Manag 9,
494–508.
Jaw, L. and Wang, W. 2004. A run-time test system for ma-
turing intelligent system vehicle capabilities - SIDAL,
2004 IEEE Aerospace Conference Proceedings, Big
Sky, MT. Vol.6. pp. 3756-3763.
Kamlu, S., Laxmi, V., 2019. Condition-based maintenance
strategy for vehicles using hidden Markov models. Ad-
vances in Mechanical Engineering. Vol. 11(1) 1–13.
Khabibullin, R.G. et al., 2013. The study and management
of reliability parameters for automotive equipment using
simulation modeling. Life Science Journal. 10 (12s),
132, pp. 828-831.
Köppen, W., 2011. The thermal zones of the Earth according
to the duration of hot, moderate and cold periods and to
the impact of heat on the organic world. Meteorolo-
gische Zeitschrift, Vol. 20, No. 3, 351-360.
Last, M., Sinaiski, A., Subramania, H.S. 2010. Predictive
Maintenance with Multi-Target Classification Models.
Intelligent Information and Database Systems. Lecture
Notes in Computer Science. 5991: 368-377.
Lovelock, C.H., Wirtz, J. 2011. Services Marketing: People,
Technology, Strategy, 7th Edition. Published by Pren-
tice Hall. 612 p.
Makarova, I. et al. 2013. Improving of performance system
of warranty for automotive engineering abroad on the
basis of data of rejections analysis. Innovative Mechan-
ical Engineering Technologies, Equipment and Materi-
als-2013 Vol. 69.
Makarova, I. et al. 2015. Improving the system of warranty
service of trucks in foreign markets. Transport Prob-
lems. Vol. 10. Iss.1 pp. 63-78.
Meckel, S. et al., 2019. Optimized Automotive Fault-Diag-
nosis based on Knowledge Extraction from Web Re-
sources, 24th IEEE International Conference on Emerg-
ing Technologies and Factory Automation (ETFA), Za-
ragoza, Spain, pp. 1261-1264.
Meeker, W.Q., Hong, Y. 2014. Reliability Meets Big Data:
Opportunities and Challenges. Quality Engineering, 26.
pp.102–116.
Mikulec, N., Felke, T., Bangale, S. 2017. Analysis of War-
ranty Data to Identify Improvements to Vehicle Relia-
bility and Service Information. SAE Int. J. Passeng.
Cars – Electron. Electr. Syst. 10(2).
Sargent, R.G., 2011. Verification and validation of simula-
tion models. WSC '11 Proceedings of the Winter Simu-
lation Conference. Phoenix, Arizona, pp. 183-198
Srinivasana, R. et al. 2016. Modelling an Optimized War-
ranty Analysis methodology for fleet industry using data
mining clustering methodologies with Fraud detection
mechanism using pattern recognition on hybrid analytic
approach. Procedia Computer Science, 87, pp. 322 –
327.
Vintr, S.Z. and Holub R., 2003. Preventive maintenance op-
timization on the basis of operating data analysis. An-
nual Reliability and Maintainability Symposium, 2003.,
Tampa, FL, USA. pp. 400-405.