A Mathematical Model of Regional Socio-Economic Development of the Russian Arctic Zone
Abstract
:1. Introduction
2. The Deterministic Model of Management of Socio-Economic Development of the Region
- is the demographic activity coefficient;
- is the coefficient of people’s anti-motivation to childbearing;
- is the energy supply coefficient;
- is the coefficient of people’s interest in economic development;
- is the coefficient of the real sector economic development;
- is the coefficient of energy supply per workplace;
- is the energy supply coefficient of the region;
- is the conformity ratio of the population with the energy supply;
- is the conformity ratio of the economic development with the energy supply.
3. The Stochastic Model of Managing the Socio-Economic Development of the Region
- is the population of the region, which is not defined (the indicator is free);
- is fixed (one gives the fixed number of jobs in the real sector of the economy);
- the minimum of the variable is given:
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Model Complexity Degree | System Complexity Degree | |||
---|---|---|---|---|
Small-Dimensional Natural Scientific or Technical System | Complex System (Meteorology) | Economics | Socio-Economic System | |
Simple linear models | Resonance | Extremely narrow applicability | Exponentially growing values (do not correspond the reality) | Exponentially growing values (do not correspond the reality) |
Quasi-linear models | Loss of sustainability. Bifurcation. Synchronization | Some non-linear effects | Some non-linear effects | Some non-linear effects |
Essentially non-linear small-dimensional models | Various non-linear effects. Determinate chaos | Strange attractor. The butterfly effect | Oscillations of values around the trend line. Loss of trend sustainability as an economic crisis | The crowd-effect as the crisis manifestation of synchronization |
Synergy. Catastrophic theory. | Self-organization theory | Tornado as a loss of sustainability of laminar current | Econophysics. Synergy economics | Sequenced development, degree of freedom as a measure of system dissipation, chaos and order |
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Boldyrev, Y.; Chernogorskiy, S.; Shvetsov, K.; Zherelo, A.; Kostin, K. A Mathematical Model of Regional Socio-Economic Development of the Russian Arctic Zone. Resources 2019, 8, 45. https://doi.org/10.3390/resources8010045
Boldyrev Y, Chernogorskiy S, Shvetsov K, Zherelo A, Kostin K. A Mathematical Model of Regional Socio-Economic Development of the Russian Arctic Zone. Resources. 2019; 8(1):45. https://doi.org/10.3390/resources8010045
Chicago/Turabian StyleBoldyrev, Yury, Sergey Chernogorskiy, Konstantin Shvetsov, Anatoly Zherelo, and Konstantin Kostin. 2019. "A Mathematical Model of Regional Socio-Economic Development of the Russian Arctic Zone" Resources 8, no. 1: 45. https://doi.org/10.3390/resources8010045
APA StyleBoldyrev, Y., Chernogorskiy, S., Shvetsov, K., Zherelo, A., & Kostin, K. (2019). A Mathematical Model of Regional Socio-Economic Development of the Russian Arctic Zone. Resources, 8(1), 45. https://doi.org/10.3390/resources8010045