Impact of 3D-Printing Technologies on the Transformation of Industrial Production in the Arctic Zone
Abstract
:1. Introduction and Statistics Overview
- circulating resources, in particular the integration of new materials for obtaining new properties of the final product, or obtaining a fundamentally new product, or reducing production costs;
- production technologies, which is expressed in the integration of new capital equipment.
- Adaptability. Production complexes operating in the Arctic zone should be able to quickly and, in a non-resource-consuming way, adjust to new conditions of external and internal environment;
- Scalability. Production complexes of the Arctic zone should be commensurately effective in the production of goods at both small and large scales;
- Learning. Since the Arctic zone is unique, errors in the creation of such complexes are unavoidable. Therefore, without the existence of a system of accumulation and subsequent use of bad experiences, such complexes cannot exist;
- Virtual openness. Such complexes should be able to communicate quickly and effectively with the managing, financial and other subsystems located outside the given territory.
2. Literature Overview
3. Methodology
- Cm—total cost of materials;
- Cw—cost of wages;
- Ceq—cost of operation of equipment.
- Cm—aggregate price of all purchased materials (including transportation costs, etc.);
- N—number of products produced from one batch of material;
- T—piece-calculating time (time spent for production of one item);
- Ch—cost of one working hour of the machine operator or the machine tool setter (supposing that is the one person);
- Tp—processing time (time spent by the machine tool for processing the item);
- Ta—auxiliary time, including time for installation and removal of items, time for detaching and securing the item, time for management, time for measurement;
- Tpr—time for preventive maintenance (part of basic and auxiliary time);
- Tr—time for rest and personal needs (part of basic and auxiliary time);
- Tpf—time for preparation and finish works;
- Pte—the power of the machine tool;
- LF—load factor of the electric engine;
- Pkh—price of kilowatt hour;
- E—efficiency of the electric engine;
- Pt—purchase price of each tool used in the process of manufacturing;
- Tt—operating time of each tool;
- Ttu—permissible operation time of the tool until its complete unworthiness;
- Cdm—cost of annual depreciation of the machine tool;
- Tm—estimated working minutes of the machine tool per year;
- Cda—cost of annual depreciation of auxiliary equipment;
- Ta—estimated working minutes of auxiliary equipment per year;
- Pc—price of the necessary coolant;
- Tc—estimated working minutes of coolant before replacement;
- Am—area occupied by the machine tool;
- V—value of the production unit rent per month;
- Au—the area of the rented production unit;
- Tmsup—supposed working time of the machine tool per month (in minutes).
4. Results
5. Discussion
- Absolutely unattractive;
- Practically unattractive;
- The attractiveness is uncertain;
- Attractive enough;
- Extremely attractive.
- Extremely low value of the indicator;
- Low value of the indicator;
- The average value of the indicator;
- Admissible value of the indicator;
- High value of the indicator.
6. Conclusions
Author Contributions
Acknowledgments
Conflicts of Interest
References
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No. | 1st Level | 2nd Level | Notation | Units | Direction of Influence |
---|---|---|---|---|---|
1 | Potential reduction in material costs | The rate of material cost reduction | X1 | % | ↑=>↑ |
2 | The growth rate of the market capacity | X2 | % | ↑=>↑ | |
3 | Comparative remoteness from the main producers of the material | X3 | Score | ↑=>↓ | |
4 | Comparative remoteness from the main consumers of the material | X4 | Score | ↑=>↓ | |
5 | Number of non-returnable defected products | X5 | % | ↑=>↑ | |
6 | Number of non-recyclable wastes | X6 | % | ↑=>↑ | |
7 | The ratio of the price of the material to the analogues | X7 | 1/$ | ↑=>↓ | |
8 | The cost of pretreatment of the material | X8 | $ | ↑=>↑ | |
9 | Potential reduction in labor costs | Comparative level of personnel qualification | Y1 | Score | ↑=>↓ |
10 | Comparative number of staff | Y2 | People | ↑=>↓ | |
11 | Potential increase in personnel wages | Y3 | $ | ↑=>↓ | |
12 | Potential increase in labor intensity of maintenance staff | Y4 | $ | ↑=>↓ | |
13 | Potential reduction in equipment operating costs | Comparative cost of additive installation | Z1 | $ | ↑=>↓ |
14 | Useful lifetime of the additive installation | Z2 | Year | ↑=>↑ | |
15 | Comparative cost of additive installation service | Z3 | $ | ↑=>↓ | |
16 | Power consumption level of additive installation | Z4 | KWh/hour | ↑=>↓ | |
17 | Cost of auxiliary equipment and consumables | Z5 | $ | ↑=>↓ | |
18 | Probability of equipment failure | Z6 | % | ↑=>↓ | |
19 | Prevalence of additive installation | Z7 | Score | ↑=>↑ | |
20 | Footprint | Z8 | М2 | ↑=>↓ |
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Konnikov, E.A.; Konnikova, O.A.; Rodionov, D.G. Impact of 3D-Printing Technologies on the Transformation of Industrial Production in the Arctic Zone. Resources 2019, 8, 20. https://doi.org/10.3390/resources8010020
Konnikov EA, Konnikova OA, Rodionov DG. Impact of 3D-Printing Technologies on the Transformation of Industrial Production in the Arctic Zone. Resources. 2019; 8(1):20. https://doi.org/10.3390/resources8010020
Chicago/Turabian StyleKonnikov, Evgenii A., Olga A. Konnikova, and Dmitriy G. Rodionov. 2019. "Impact of 3D-Printing Technologies on the Transformation of Industrial Production in the Arctic Zone" Resources 8, no. 1: 20. https://doi.org/10.3390/resources8010020
APA StyleKonnikov, E. A., Konnikova, O. A., & Rodionov, D. G. (2019). Impact of 3D-Printing Technologies on the Transformation of Industrial Production in the Arctic Zone. Resources, 8(1), 20. https://doi.org/10.3390/resources8010020