A Methodology for Forecasting the KPIs of a Region’s Development: Case of the Russian Arctic
Abstract
:1. Introduction
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- the evaluation of existing forecasting approaches, highlighting their strengths and weaknesses to create a hybrid method;
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- the search for the KPI of the regional development;
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- the assessment of the degree of related factors’ influence;
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- the modelling under consideration of the aforesaid factors.
2. Literature Overview
2.1. Methods of Regional Forecasting
2.2. Overview of the AZRF Industries
3. Materials and Methods
3.1. Identification and Quantification of Risks
3.2. Influence of Companies on the Quantitative Value of Risks
3.3. Influence of Technological Cases on the Quantitative Value of Risks
3.4. Impact of the Proposed Measures on the Quantitative Value of Risks
4. Results and Discussion
5. Conclusions
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- The total volume of NSR transportation by 2035—121.99–143 mln tons per year (with a target of 220 mln tons per year);
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- The CO2-equivalent emission by 2035—73.9–74.22 mln tons of CO2-eq./year;
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- The navigation period along the NSR—183–194 days/year;
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- The total production—1389.18–1432.35 t c.f./year;
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- The specific fuel consumption for electric power—111.73–113.27 g c.f./kWh;
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- The specific fuel consumption for heat power—0.45–0.47 g c.f./Gcal;
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- The average ratio of the number and capacity of icebreakers—0.01–0.0123 pcs./MW (the target is 0.0131 pcs./MW).
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Appendix B
P | E | S | T | E | L |
---|---|---|---|---|---|
Weak trade advantages compared to EU countries and central regions (in terms of energy prices and product quality) | Unfavorable financing terms (due to tighter credit conditions, leasing, and microfinance lagging behind) | Unemployment (job losses due to falling production and the depletion of major fields) | Territorial constraints (for the construction of port and mining infrastructure) | Coastal abrasion | Establishment of new expenditure commitments |
Threat to national safety (including threat to production facilities) | Volatility of prices and demand for energy resources in the domestic market (due to the growth of tariffs for natural monopolies) | Differentiation of the socio-economic development of municipalities | Depletion of an easily accessible mineral resource base (Cu-Ni, apatite and iron ores, etc.) | Increase in waste volumes | Lack of specific technical legislation (e.g., in the use of digital financial assets) |
Suspension of membership in international projects | Changing priorities of economic development (shift from extraction of fossil resources) | Population aging | Low balance of the transportation network (railway approaches to the ports of Murmansk and Kandalaksha; lack of bridges) | Impact of objects of accumulated harm | Tightening of environmental quality standards (entailing an increase in related expenditure commitments) |
Slowdown in the implementation of national projects and federal programs | Logistics costs (due to the dispersion of settlements, their inaccessibility, and the deterioration of transport infrastructure, especially from the position of railways) | Shortage of qualified personnel | Insufficient volume and quality of geological exploration works | Weak ecosystem resilience (fire hazard) | Lack of measures for attracting funds from parent companies to subsidiaries (in terms of tax payments) |
Trading isolation | Falling investment attractiveness and activity (reduced capital investments in the fuel and energy complex) | Complicated access to social services | Low development of the sphere of construction materials production | Growing man-made and anthropogenic impact (including tourism) | Obstruction of trade policy (with unfriendly states) |
Technological isolation | Foreign companies leaving | Migration outflow of population (socio-economic) | Disproportion in the location of the main generating capacities | Accidents at production sites | Changes in legislation in the field of subsoil use licensing |
Transportation and logistical isolation | Conflict between recreational and productive functions of regions (difficulties in prioritizing development) | Deterioration of the quality of healthcare | Low commercialization of innovations (in digital and manufacturing technologies) | Soil thawing | Changes in legal requirements in the field of the design, construction, and operation of facilities |
Global economic crisis (decline in world trade and production) | Financial losses due to state tariff regulation of gas prices | Risk of epidemics | Wear and tear of energy infrastructure | Accidents on transportation routes (NSR and pipelines) | Tightening of fuel requirements for transportation vessels |
P | E | S | T | E | L |
---|---|---|---|---|---|
Transportation and logistical isolation | Volatility of prices for energy resources | Migration outflow of the population (ecological, socio-economic) | Depreciation of energy infrastructure | Growing technogenic and anthropogenic impact by the mining sector (as a consequence, a reduction in agricultural areas) | Lack of specific technical legislation |
Trading isolation | Falling investment attractiveness and activity (as a consequence, increased implementation time) | Low level of qualification (aggravated by the lack of educational centers) | Underdeveloped energy connections | Secondary contamination of drinking water in water supply networks | Lack of measures for attracting funds from parent companies to subsidiaries (in terms of tax payments) |
Technological isolation | Increase in expenditures for the repair and maintenance of facilities | Population aging (hence, an increase in the demographic burden on the able-bodied population) | Gas supply disruptions (e.g., in case of damage to the Longyugan-Salekhard gas pipeline) | Long periods of unfavorable meteorological conditions (poor dispersion of pollutants) | Establishment of new expenditure commitments |
Suspension of membership in international projects | Unfavorable financing terms (due to tighter credit conditions, leasing, and microfinance lagging behind) | Complicated social and labor conditions (difficult adaptation of labor migrants and wage debts) | Disruption of heat supply (as climatic conditions affect the stability of the systems) | Growing technogenic and anthropogenic impact by the metallurgical sector | Tightening of environmental quality standards |
Unequal socio-economic support to the centers (mostly applies to the Siberian Federal District) | Export-oriented structure of the economy (imbalance of imports and exports) | Risk of epidemics (due to climate change) | Lack of technology clusters (in the form of R&D centers) | Accidents on transportation routes | Lack of consideration of the specifics of remote regions |
Global economic crisis | Underpayment of taxes | Hidden unemployment | Low commercialization of innovations (in digital and manufacturing technologies) | Accidents at production sites (especially in LNG production) | Obstruction of trade policy |
Slowdown in the implementation of national projects and federal programs | Logistics costs (due to the dispersion of settlements, their inaccessibility, and the deterioration of transportation infrastructure) | Deterioration of the quality of healthcare (low availability of medicines) | Low development of the sphere of construction materials production | Growth of industrial waste volumes | Establishment of conditions for the passage of ships through the NSR |
P | E | S | T | E | L |
---|---|---|---|---|---|
Global economic crisis | Falling investment attractiveness and activity (as a consequence, increased implementation time) | Low level of qualification (reflected in the absence of educational centers) | Accelerated transition to combined power supply sources | Coastal abrasion | Lack of specific technical legislation |
Transportation and logistical isolation | Volatility of prices for energy resources | Unemployment | Depreciation of energy infrastructure | Accidents at production sites | Tightening of environmental quality standards |
Trading isolation | Supply disruptions during the inter-navigation period (the risk relates to the importation of agricultural products) | Migration outflow of the population (ecological, socio-economic) | Complicated construction of transportation infrastructure | Accidents at production sites (especially in LNG production) | Lack of consideration of the specifics of remote regions |
Technological isolation | Planned unprofitability of the region (lack of funds for maintaining energy and utility infrastructure) | Risk of epidemics (due to climate change) | Low commercialization of innovations (in digital and manufacturing technologies) | Permafrost thawing (release of bound carbon, reduction in soil bearing capacity) | Establishment of new expenditure commitments |
Threat to the safety of passage through the Bering Strait | Dependence of the county’s economy on precious metals mining | Lack of comfortable housing conditions (high deterioration of the housing stock, lack of quality domestic water supply) | Lack of technology clusters (in the form of R&D centers) | Destruction of natural geochemical barriers | Obstruction of trade policy |
Suspension of membership in international projects | Increase in expenditures for the repair and maintenance of facilities | Complicated social and labor conditions (complexity of adaptation of labor migrants) | Disproportion in the location of the main generating capacities | Weak ecosystem resilience | Lack of measures for attracting funds from parent companies to subsidiaries |
Slowdown in the implementation of national projects and federal programs | Unfavorable financing terms (due to tighter credit conditions, leasing, and microfinance lagging behind) | Deterioration of the quality of healthcare (low availability of medicines) | Low development of the sphere of construction materials production | Lack of large-scale emergency strongholds | Establishment of conditions for the passage of ships through the NSR |
Appendix C
Risk/ATPC | Western ATPC | Central ATPC | Eastern ATPC | |||
---|---|---|---|---|---|---|
P | Threat to national safety | Trading isolation | Transportation and logistical isolation | Technological isolation | Transportation and logistical isolation | Trading isolation |
Number of attacks on refineries and other industrial facilities of the fuel and energy complex in 2022: 11 | Export and import growth rate: 1.41% | Number of railroad tracks from the “big land” to the region: 4 | The level of availability of industry technology: 70% | Number of railroad tracks from the “big land” to the region: 1 | Export and import growth rate: 1.5% | |
E | Unfavorable financing terms | Logistics costs | Falling investment attractiveness and activity | Increase in expenditures for the repair and maintenance of facilities | Falling investment attractiveness and activity | Supply disruptions during the inter-navigation period |
Insurance contribution rate for AZRF residents: 7.5% | Freight transportation tariff index growth rate: 33.8% | Growth rate of investment activity: 2% | Share of emergency housing stock: 10% | Rate of decrease in investment activity: 12% | Aviation mobility: 0.58 trips per 1 person/year | |
S | Shortage of qualified personnel | Migration outflow the of population | Migration outflow of the population | Low level of qualification | Low level of qualification | Migration outflow of the population |
Need for 89.9 thou. new workers by 2035 | Population growth rate: 7% | Population growth rate: 3% | Need for 52.1 thou. new workers by 2035 | Decrease in enrollment in Arctic universities and their branches: 71% | Population growth rate: 0.2% | |
T | Depletion of an easily accessible mineral resource base | Low balance of the transportation network | Depreciation of energy infrastructure | Underdeveloped energy connections | Depreciation of energy infrastructure | Complicated construction of transportation infrastructure |
Exploration cost in the structure of production projects: 30% | Growth rate of road density: 28% | Degree of depreciation of fixed assets: 47.1% | Total length of main power grids: 18,740.8 km | Degree of depreciation of fixed assets: 45.2% | Share of highways meeting regulatory requirements: 50.42% | |
E | Increase in waste volumes | Impact of objects of accumulated harm | Growing technogenic and anthropogenic impact by the mining sector | Secondary contamination of drinking water in water supply networks | Accidents at production sites | Permafrost thawing |
Growth rate of production and consumption waste generation: 30% | Number of objects (water areas) of accumulated harm: 13 | Reduction in agricultural land areas by 27.8 thou. hectares | Degree of depreciation of fixed assets of water supply and wastewater disposal and treatment: 31.6% | Number of man-made emergencies in 2020: 2 | Reduction in pile bearing capacity: 18% | |
L | Lack of specific technical legislation | Tightening of environmental quality standards | Lack of specific technical legislation | Establishment of new expenditure commitments | Tightening of environmental quality standards | Lack of consideration of the specifics of remote regions |
Number of spheres of legal regulation in the field of technical norming and standardization: 8 | Physical volume index of environmental expenditures: 130.7 | Number of spheres of legal regulation in the field of technical norming and standardization: 8 | Income tax for companies producing and exporting LNG: 34% | Physical volume index of environmental expenditures: 160.2% | Timeframe for the implementation of energy infrastructure projects: 14 months |
Appendix D
Risk/ Scenario | Negative | Baseline | Positive | |||
---|---|---|---|---|---|---|
P | Transportation and logistical isolation | Technological isolation | Transportation and logistical isolation | Technological isolation | Transportation and logistical isolation | Technological isolation |
Number of railroad tracks from the “big land” to the region: 38 | The level of availability of industry technology: 80% | Number of railroad tracks from the “big land” to the region: 41 | The level of availability of industry technology: 135% | Number of railroad tracks from the “big land” to the region: 41 | The level of availability of industry technology: 152.42% | |
E | Falling investment attractiveness and activity | Increase in expenditures for the repair and maintenance of facilities | Falling investment attractiveness and activity | Increase in expenditures for the repair and maintenance of facilities | Falling investment attractiveness and activity | Increase in expenditures for the repair and maintenance of facilities |
Growth rate of investment activity: 13.65% | Share of emergency housing stock: 3.67% | Growth rate of investment activity: 13.54% | Share of emergency housing stock: 0.99% | Growth rate of investment activity: 11.7% | Share of emergency housing stock: 0.61% | |
S | Migration outflow of the population | Low level of qualification | Migration outflow of the population | Low level of qualification | Migration outflow of the population | Low level of qualification |
Population growth rate: 8% | Need for 57.66 thou. new workers by 2035 | Population growth rate: 12.67% | Need for 5.8 thou. new workers by 2035 | Population growth rate: 15% | A surplus of 0.61 thou. new jobs through 2035 | |
T | Depreciation of energy infrastructure | Underdeveloped energy connections | Depreciation of energy infrastructure | Underdeveloped energy connections | Depreciation of energy infrastructure | Underdeveloped energy connections |
Degree of depreciation of fixed assets: 47.1% | Total length of main power grids: 35,264.2 km | Degree of depreciation of fixed assets: 0% | Total length of main power grids: 41,310.9 km | Degree of depreciation of fixed assets: 0% | Total length of main power grids: 46,341.7 km | |
E | Growing technogenic and anthropogenic impact by the mining sector | Secondary contamination of drinking water in water supply networks | Growing technogenic and anthropogenic impact by the mining sector | Secondary contamination of drinking water in water supply networks | Growing technogenic and anthropogenic impact by the mining sector | Secondary contamination of drinking water in water supply networks |
Reduction in agricultural land areas by 27.8 thou. hectares | Degree of depreciation of fixed assets of water supply and wastewater disposal and treatment 7.6% | Reduction in agricultural land areas by 3.02 thou. hectares | Degree of depreciation of fixed assets of water supply and wastewater disposal and treatment 0% | Reduction in agricultural land areas by 3.02 thou. hectares | Degree of depreciation of fixed assets of water supply and wastewater disposal and treatment 0% | |
L | Lack of specific technical legislation | Establishment of new expenditure commitments | Lack of specific technical legislation | Establishment of new expenditure commitments | Lack of specific technical legislation | Establishment of new expenditure commitments |
Number of spheres of legal regulation in the field of technical norming and standardization: 8 | Income tax for companies producing and exporting LNG: 11.93% | Number of spheres of legal regulation in the field of technical norming and standardization: 25 | Income tax for companies producing and exporting LNG: 6.81% | Number of spheres of legal regulation in the field of technical norming and standardization: 25 | Income tax for companies producing and exporting LNG: 11.93% |
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Region (Resource) | Production Volume in 2021, mln Tons [28] | Production Volume in 2025, mln Tons [29] | Production Volume in 2030, mln Tons | Production Volume in 2035, mln Tons |
---|---|---|---|---|
YaNAO (oil) | 35.983 | 60.803 | 84.986 | 85.599 |
NAO (oil) | 11.507 | 22.534 | 27.794 | 23.308 |
Krasnoyarsk Krai (oil) | 15.641 | 23.083 | 19.961 | 17.648 |
Komi Republic (oil) | 13.4 | 14.57 | – | – |
Krasnoyarsk Krai (coal) | 0.4 | 5 | 10 | 10 |
Komi Republic (coal) | 8.85 | 9.2 | 10.2 | 6.7 |
Chukotka A. Okrug (coal) | 0.85 | 2 | 2 | 2 |
Region | Production Volume in 2021, bln m3 [31] | Production Volume in 2025, bln m3 [29] | Production Volume in 2030, bln m3 | Production Volume in 2035, bln m3 |
---|---|---|---|---|
NAO | 0.18 | 0.407 | 4.46 | 6.30 |
YaNAO | 598.67 | 672.43 | 663.83 | 597.5 |
Krasnoyarsk Krai | 7.11 | 9.62 | 7.28 | 6.92 |
Criteria | P | E | S | T | E | L | Weight, % |
---|---|---|---|---|---|---|---|
P | 1.00 | 3.00 | 3.00 | 3.00 | 0.20 | 1.00 | 21.46 |
E | 0.33 | 1.00 | 3.00 | 3.00 | 1.00 | 3.00 | 19.93 |
S | 0.33 | 0.33 | 1.00 | 1.00 | 0.20 | 5.00 | 10.22 |
T | 0.33 | 0.33 | 1.00 | 1.00 | 1.00 | 5.00 | 13.79 |
E | 5.00 | 1.00 | 5.00 | 1.00 | 1.00 | 3.00 | 28.56 |
L | 1.00 | 0.33 | 0.20 | 0.20 | 0.33 | 1.00 | 6.04 |
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Zhukovskiy, Y.; Tsvetkov, P.; Koshenkova, A.; Skvortsov, I.; Andreeva, I.; Vorobeva, V. A Methodology for Forecasting the KPIs of a Region’s Development: Case of the Russian Arctic. Sustainability 2024, 16, 6597. https://doi.org/10.3390/su16156597
Zhukovskiy Y, Tsvetkov P, Koshenkova A, Skvortsov I, Andreeva I, Vorobeva V. A Methodology for Forecasting the KPIs of a Region’s Development: Case of the Russian Arctic. Sustainability. 2024; 16(15):6597. https://doi.org/10.3390/su16156597
Chicago/Turabian StyleZhukovskiy, Yuriy, Pavel Tsvetkov, Anastasia Koshenkova, Ivan Skvortsov, Iuliia Andreeva, and Valeriya Vorobeva. 2024. "A Methodology for Forecasting the KPIs of a Region’s Development: Case of the Russian Arctic" Sustainability 16, no. 15: 6597. https://doi.org/10.3390/su16156597
APA StyleZhukovskiy, Y., Tsvetkov, P., Koshenkova, A., Skvortsov, I., Andreeva, I., & Vorobeva, V. (2024). A Methodology for Forecasting the KPIs of a Region’s Development: Case of the Russian Arctic. Sustainability, 16(15), 6597. https://doi.org/10.3390/su16156597