• citations in SCIndeks: 0
  • citations in CrossRef:[11]
  • citations in Google Scholar:[]
  • visits in previous 30 days:13
  • full-text downloads in 30 days:12


article: 1 from 1  
Back back to result list
2019, vol. 47, iss. 4, pp. 691-698
Adaptive identification of innovative production function of corporation
Russian Academy of Sciences, V.A.Trapeznikov Institute of Control Sciences, Laboratory of Active Systems, Moscow, Russia
This work is partially sponsored by grant № 17-20-05216 given by Russian Foundation for Basic Research and corporation Russian Railways.

Cycle of the creation of innovation and its implementation into production is considered for the permanent renewal and development of corporation manufacturing. The hierarchical model of the control system of this cycle is proposed. The result of the functioning of the innovation cycle can be modeled using the innovative production function of corporation. The problem of its adaptive identification is formulated. Sufficient conditions for such identification are obtained taking into account the interests of the elements of the corporation's production system. These conditions are illustrated by the application of adaptive identification of innovative production function with the quadratic losses to wagon-repair production of large-scale corporation Russian Railways.
Auster, S. Asymmetric awareness and moral hazard. Games and economic behavior, 82: 503-521
Bauernhansl, T., Hompel, M., Vogel-Heuser, B. (2014) Industrie 4.0 in produktion, automatisierung und logistik -anwendung, technologie, migration. Wiesbaden: Springer
Blanchet, M., Rinn, T., Thaden, G., Thieulloy, G. (2014) Industry 4.0: The new industrial revolution: How Europe will succeed. München: Roland Berger Strategy Consultants GMBH
Borodin, D., Gurlev, I., Klukvin, A., Tsyganov, V. (2004) Adaptive mechanism for sustainable development. Systems Science, 30(2): 89-95
Burkov, V., Gubko, M., Kondratiev, V., Korgin, N., Novikov, D. (2013) Mechanism design and management: Mathematical methods for smart organizations. New York: NOVA Publishers
Enaleev, A., Tsyganov, V. (2018) Service support structure optimization of a large-scale rail company. in: CEUR Workshop Proceedings, Vol.. 2098, pp. 396-406
Kagermann, H., et al. (2013) Recommendations for implementing the strategic initiative Industry 4.0. in: Abschlussbericht des arbeitskreises Industrie 4.0, Frankfurt: DAT, pp. 5-105
Putnik, G.D., Putnik, Z. (2010) A semiotic framework for manufacturing systems integration: Part I: Generative integration model. International J. of Computer Integrated Manufacturing, 23(8): 691-709
Putnik, G.D., Cruz-Cunha, M.M. (2007) Knowledge and technology management in virtual organizations: Issues, trends, opportunities and solutions. Hershey: IGI Global
Putnik, G.D. (2010) Semiotics-based manufacturing system integration. Int. J. of Computer Integrated Manufacturing, 23(8): 687-690
Rusov, J., Misita, M., Milanovic, D.D., Milanovic, D.Lj. (2017) Applying regression models to predict business results. FME Transactions, vol. 45, br. 1, str. 198-202
Schipper, B.C. Unawareness: A gentle introduction to both the literature and the special issue. Mathematical Social Sciences, 70: 1-9
Shishkin, G., Tsyganov, V. (2001) Mechanism of adaptation of microelectronics manufacturing to market. in: The Experience of Designing and Application of CAD Systems in Microelectronic: Proceedings of the 6th Conference CADSM 2001, 01-03.02, Lvov, 119-120
Susai, M.J., Sai, B.M.A., Dinakaran, D. (2019) Prediction and geometric adaptive control of surface roughness in drilling process. FME Transactions, vol. 47, br. 3, str. 424-429
Tsyganov, V. (2010) Regulation of decentralized active system development and intelligent control mechanisms. IFAC-PapersOnline, 9(3): 94-98
Tsypkin, J. (1984) Fundamentals of information theory of identification. Moscow: Nauka, in Russian


article language: English
document type: unclassified
DOI: 10.5937/fmet1904691T
published in SCIndeks: 10/10/2019
Creative Commons License 4.0

Related records

FME Transactions (2019)
Alignment of cluster complexity at network systems
Enaleev A.K., et al.