Drivers of Spatial Heterogeneity in the Russian Forest Sector: A Multiple Factor Analysis
Abstract
:1. Introduction
2. Methods and Data Description
2.1. Literature Review
2.2. Dataset Description
2.3. Methodology
- The initial dataset of variables was converted into a new set of uncorrelated principal components (PCs). These principal components are ordered by the level of explained variance in all of the original variables so that the first few PCs retain most of the variation [60].
- The preliminary analysis on the relationships between all initial factors was conducted by creating the variable correlation plot. On this plot each variable is a point in the component space. The coordinates for the variables are given by the correlations between a component and a variable [61].
- To identify the most important factors in explaining spatial heterogeneity in the Russian forest sector, the contributions of the variables to the first two PCs were calculated.
- Finally, to detect the possible clusters and outliers among regions the graphical visualization of spatial heterogeneity in Russian forestry was obtained by projecting all observations (regions) in a two-dimensional space. On this plot the axes are represented by the first two PCs, and the coordinates of a particular region are determined by its score for the given PC.
3. Results
4. Discussion
- Labor market. In contrast to the Western part of Russia, the Siberian and Far Eastern federal districts have low population density (3.90 and 1.17 inhabitants per square kilometer, respectively), distributed mostly along the Trans-Siberian Railway. The steady outflow of the qualified labor force to the Western parts of Russia causes staff shortages. Moreover, salaries in the forestry sector are lower than the average for the economy and do not cover the cost of living in severe climatic conditions and the difficulty of work.
- Geographic location. The production and trade structure of Siberian and Far Eastern regions depend on Asian demand for low-processed wood products. Another problem is a sparse and poor population that cannot provide a sufficient domestic demand for high value-added products in these areas. In addition, the vast territory makes it unprofitable to deliver products from the Far East to the regions of central Russia. The mixture of these factors makes production of wooden commodities with high value added inherently uncompetitive.
- Climatic change. The global warming trend is increasing the frequency of fires and pest outbreaks. Combined with a lack of infrastructure, this leads to large losses of boreal forests, which are difficult to recover from. In addition, there is strong evidence of a gradual reduction in logging season durations in Siberia due to climatic change [68].
- Lack of control. The vast territories with severe climate, low population density, and lack of transport accessibility are hard to control and monitor. Moreover, the contribution of the timber industry to Russian GDP is less than 2% and the sector is usually not a major focus of policymakers.
- Lack of governmental expenditures and investments. The forest management sector in Russia is severely underfunded. In Section 3 we show that, in relative terms, the Siberian and Far Eastern federal districts are ranked last in terms of the factual regional costs in the field of forest relations, despite the fact that these territories suffer the greatest losses. Furthermore, even money spent on reforestation does not guarantee proper care of seedlings.
- Quality of statistical data. A detailed assessment of the quality and variety of Russian forest statistical data has shown that despite the large number of indicators present in the databases, some basic indicators of the development of the industry are not reflected [11]. For example, information on the condition of forest roads in Russia is almost absent, which makes it difficult both to assess the current state of the infrastructure and to plan its further development. Observations on most indicators are also limited to 10–15 years, which is too short for most kind of statistical analysis routines. In addition, there are structural changes in the data, e.g., due to the adoption of new classifiers. For this reason, the list of forest industry products observed in different periods of time is highly heterogeneous and not fully comparable. All these problems, together with an underestimation of the impact of fires and the volume of illegal logging, lead to inefficient forest policy.
5. Conclusions
- Conducting MFA on the dataset of all Russian regions and 34 variables showed the differences in forestry development between Russian regions. This result is consistent with the previous comparative advantage analysis and emphasizes the export-oriented direction of Russian timber industry development.
- The factors making the largest contributions to spatial heterogeneity in Russian forestry are: wood stock, share of FSC-certified forests, losses from fires and pests, public expenditures in the forestry, employees and salaries, cut volumes, comparative advantages in wood trade, profitability, and net profits of the enterprises. Although the initial dataset gives a good description of Russian forestry, other important indicators were not included in the analysis. For instance, the road density has a significant impact on land-use outcomes [15]. This is particularly true in the comparison of European and Asian territories of Russia. Another important difference between the regions of Russia concerns the structure of harvested tree species. Coniferous timber accounts for 80% of the logging in Siberia and the Far East. By comparison, in the North-Western Federal District the share of conifers is only 62%, whereas more than 40% of all Russian hardwoods are harvested in this territory. These differences can have a major impact on the performance of timber companies in the markets and should be studied more thoroughly in future research.
- A positive linkage was found between the share of illegal logging in the total wood stock and the proportion of forest area affected by fires. Furthermore, the volume of public expenditures is negatively related with the regional forested area and wood stock. This emphasizes the underfunding of the forest management activities in the vast territories of Siberia and the Far East, which suffer from deforestation more than other Russian regions. This pattern leads to negative consequences such as increased CO2 emissions, and severe damage to undisturbed forests and ecosystems.
- The leaders of the timber industry in Russia are mostly located at the Northwestern, Siberian and Far Eastern federal districts. The North-Caucasian and Southern regions do not participate actively in timber production and trade, whereas Central, Volga and Ural regions are distributed relatively evenly on the factor map.
- The Western and Eastern regions of Russia are opposed to each other in terms of the effectiveness and sustainability of forestry and forest management. The success of the Northwestern regions is due to several historical and geographical reasons, including foreign investments, closeness to Moscow and Saint-Petersburg as the most powerful financial and economical centers, productive connections with the EU market leaders, and a dense road network compared to the Asian part of Russia,. On the contrary, there are many factors that create the path dependence problem that limits the future development of Siberia and the Far East, including the labor market, geographic location, climatic change, lack of control, insufficient forestry funding, and poor quality of available forestry statistics.
- In our opinion, the future drivers of forestry development in Russia should involve the government support of investment projects, including small enterprises and professional development programs for the employees. Establishment of the private forest ownership mechanism for some pilot areas can also be considered. More than 75 mln ha of abandoned agricultural lands could be used for forestry purposes. This possibility is now being widely discussed by the scientific community and policymakers. Approval of this initiative would exempt farmland owners from fines for illegal afforestation, in addition to enhancing the climate-regulating functions of the forest in the area. In the territories of Siberia and the Far East, more attention should be paid to measures to prevent fires because most occur near populated areas.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Group | Variables | Description | Mean |
---|---|---|---|
Stock | Stock | Wood stock per ha of forest area (m3/ha) | 139.5 |
FSC | Share of FSC-certified forested land in the total forest area (%) | 7.0% | |
Forest area | Share of forested land in the total area of the region (%) | 35.7% | |
Reforestation | The ratio of the area of reforestation and afforestation to the felled and deadwood area (%) | 123.1 | |
Loss | Loss | Percentage of deadwood in forested land (%) | 0.03% |
Fires | Proportion of forest area affected by fires in forested land (%) | 0.3% | |
Pests | Share of forest area affected by the pest outbreaks in forested land (%) | 2.2% | |
Forestry | Public expenditures | Factual expenditures on the governmental forest management activities, from all sources of funding per thousand ha (US$) | 9191.1 |
Forestry: Employees | Share of employment in the forest management sector in the total labor force (%) | 0.1% | |
Forestry: Salary | Average monthly nominal gross salary in the forest management sector per employee (US$) | 382.5 | |
Forestry: Net profit | Net profit in the forest management sector per employee (US$) | 225.7 | |
Forestry: Profitability | Profitability of the cost of sales in the forest management sector (%) | 15.3 | |
Forestry: Shipped | Sales of goods and services by the forest sector per employee (1000 US$) | 9.2 | |
Logging | Cut: Employees | Share of the logging sector employment in the total labor force (%) | 0.2% |
Cut: Salary | Average monthly nominal gross salary in the logging sector per employee (US$) | 363.7 | |
Cut: Net profit | Net profit in the logging sector per employee (US$) | 846.8 | |
Cut: Profitability | Profitability of the cost of sales in the logging sector (%) | 7.9 | |
Cut: Shipped | Volume of shipments of goods and services in the logging sector per employee (1000 US$) | 20.3 | |
Illegal cut | Share of illegal logging in the total wood stock (%) | 0.001% | |
Cut | Share of logging in the total wood stock (%) | 0.3% | |
Wood: Employees | Share of the wood processing sector employment in the total labor force (%) | 0.6% | |
Wood: Salary | Average monthly nominal gross salary in the wood processing sector per employee (US$) | 384.1 | |
Wood | Wood: Net profit | Net profit in the wood processing sector per employee (US$) | 692.8 |
Wood: Profitability | Profitability of the cost of sales in the wood processing sector (%) | 5.8 | |
Wood: Shipped | Volume of shipments of goods and services in the wood processing sector per employee (1000 US$) | 34.8 | |
Wood: RTA | Revealed trade advantage index calculated for the wood processing sector | 0.9 | |
Wood: PIP | The number of Priority Investment Projects (PIP) for wood processing in the region (items) | 1.7 | |
Paper | Paper: Employees | Share of the pulp and paper sector employment in the total labor force (%) | 0.3% |
Paper: Salary | Average monthly nominal gross salary in the pulp and paper sector per employee (US$) | 419.5 | |
Paper: Net profit | Net profit in the pulp and paper sector per employee (US$) | 5186.4 | |
Paper: Profitability | Profitability of the cost of sales in the pulp and paper sector (%) | 9.5 | |
Paper: Shipped | Volume of shipments of goods and services in the pulp and paper sector per employee (1000 US$) | 68.6 | |
Paper: RTA | Revealed trade advantage index calculated for the pulp and paper sector | 1.7 | |
Paper: PIP | The number of Priority Investment Projects (PIP) in the pulp and paper industry in the region (items) | 0.2 |
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Gordeev, R.V.; Pyzhev, A.I.; Yagolnitser, M.A. Drivers of Spatial Heterogeneity in the Russian Forest Sector: A Multiple Factor Analysis. Forests 2021, 12, 1635. https://doi.org/10.3390/f12121635
Gordeev RV, Pyzhev AI, Yagolnitser MA. Drivers of Spatial Heterogeneity in the Russian Forest Sector: A Multiple Factor Analysis. Forests. 2021; 12(12):1635. https://doi.org/10.3390/f12121635
Chicago/Turabian StyleGordeev, Roman V., Anton I. Pyzhev, and Miron A. Yagolnitser. 2021. "Drivers of Spatial Heterogeneity in the Russian Forest Sector: A Multiple Factor Analysis" Forests 12, no. 12: 1635. https://doi.org/10.3390/f12121635
APA StyleGordeev, R. V., Pyzhev, A. I., & Yagolnitser, M. A. (2021). Drivers of Spatial Heterogeneity in the Russian Forest Sector: A Multiple Factor Analysis. Forests, 12(12), 1635. https://doi.org/10.3390/f12121635