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The modeling of the efficiency in the new generation manufacturing-distributive systems based on the cognitive production factors

The paper envisages the analysis of the new generation manufacturing-distributive systems. The particular attention is paid to the production function as the analytic instrument allowed evaluating the interrelation between economic results of an enterprise and production factors, which includes the...

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Bibliographic Details
Published in:IOP conference series. Materials Science and Engineering 2019-10, Vol.630 (1), p.12020
Main Authors: Omelchenko, Irina, Drogovoz, Pavel, Gorlacheva, Evgeniya, Shiboldenkov, Vladimir, Yusufova, Olga
Format: Article
Language:English
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Summary:The paper envisages the analysis of the new generation manufacturing-distributive systems. The particular attention is paid to the production function as the analytic instrument allowed evaluating the interrelation between economic results of an enterprise and production factors, which includes the cognitive production factors as well. The rationale for the enlargement of the traditional production functions by means of the transfer from the multiplicative to the logistic dependence has been analyzing. The results of production function modelling on the base of the logistic dependence have been depicted on the open data of a high tech enterprise from 2009 till 2018. The results of production function modelling have shown that the usage of logistic dependence has allowed tracing more precise the transition of production factors to the other path dependency. The inclusion of the cognitive production factors has allowed evaluating their contribution to the economic results of a high-tech enterprise. This work is still in progress and the presented results are preliminary and would be added and specified by the additional research.
ISSN:1757-8981
1757-899X
DOI:10.1088/1757-899X/630/1/012020