Application of Scenario Forecasting Methods and Fuzzy Multi-Criteria Modeling in Substantiation of Urban Area Development Strategies
Abstract
:1. Introduction
- Renovation of urban space is a complex process aimed at enhancing economic activity, increasing sustainability, and creating new competitive advantages for the city;
- The interests of various parties, primarily residents and potential investors, must be coordinated when implementing projects to transform territories;
- The process of interaction with the owners of obsolete objects located in the territory of redevelopment is carried out by buying out real estate objects at a certain market value. Or the owner is involved in the implementation of the project along with external investors who are attracted by the city authorities;
- Minimization of risks and negative effects in the implementation of adaptive management programs for the development of territories is possible by taking into account the comprehensive impact of the project: on the local budget, on changes in real estate prices, on the level of investment and unemployment at the project development stage. Monitoring of the implementation of the relevant project may also be carried out subsequently. This will allow us to make timely adjustments if necessary.
- There is no mechanism for agreeing on the development goals of the territory;
- There is no mechanism for taking into account the mutual influence of factors and cumulative effects;
- The uncertainty factor of the initial information is not always taken into account when forming criteria for evaluating alternatives.
2. Materials and Methods
- Analysis of the effectiveness of the use of territorial and natural resources;
- Analysis of options for the use of territories;
- Analysis of investment activity;
- Analysis of the dynamics of construction and reconstruction of housing;
- Analysis of the effectiveness of the functioning of transport, engineering, and social infrastructure;
- Analysis of the environmental situation.
2.1. Stage 1. Obtaining Initial Data on the Study Area
2.2. Stage 2. Analysis of the Urban Context of the Study Area
2.3. Stage 3. Preliminary Spatial and Economic Modeling of the Territory
2.4. Stage 4. Creation of a Cognitive Model of the Integrated Area Development
- Financial expression—increase in income from taxes, business, etc.;
- Non-financial expression—increase in the value of city assets (infrastructure and real estate), improving the quality of life of the population, increasing the competitiveness of the city, etc.).
2.5. Stage 5. Fuzzy Multi-Criteria Evaluation of Alternative Projects for the Area Development
- Interpretation of the criteria as fuzzy sets defined on universes of the discourse of variants by membership functions;
- Determination of the membership functions of the fuzzy sets on the basis of expert information about paired comparisons of variants by the 9-point Saaty scale [47];
- Ranking of variants on the basis of intersections of fuzzy sets, criteria that correspond to the Bellman–Zadeh scheme known in decision theory;
- Ranking of criteria by the method of paired comparisons and interpretation of the ranks obtained as the degree of concentration of the corresponding membership functions.
2.6. Stage 6. Draft Decision Coordination and Obtaining Rights to Land Plots
2.7. Stage 7. Development of an Architectural and Urban Planning Concept
2.8. Stage 8. Development and Approval of Design Documentation
3. Results
- Localization;
- Presence of boundaries and respect for distances;
- Openness or limited place of business;
- Availability of the created project;
- Permeability of the territory for visual perception;
- The possibility of unhindered movement of the population, including people with limited mobility;
- The scale of the proposed development and the achievement of the stylistic unity of the elements, taking into account the existing environment.
- Provision of territory with green spaces;
- Public and business infrastructure and adjacent spaces;
- Social and leisure infrastructure and adjacent spaces.
- State and municipality represented by the city administration (head of the urban settlement of Pallasovka);
- Department for Land and Property Relations and Taxes, Pallasovka;
- Department of Construction and Housing and Communal Services of Pallasovka;
- Department of Economics of Pallasovka;
- Chamber of Control and Accounts of the Volgograd Oblast;
- Office of the Federal Service for State Registration, Cadaster and Cartography for the Volgograd Oblast;
- Prosecutor’s office of Pallasovka;
- Local population (owners of land and property complexes);
- Insurance companies;
- Investors, banks;
- Entrepreneurs (legal entities and individual entrepreneurs).
- Increasing the territory use efficiency.
- 1.1. Increase in tax revenues to the city budget (tax deductions).
- 1.2. Improving the harmony of the architectural ensemble of urban space (development of infrastructure, landscaping, green spaces).
- 1.3. Creation of a favorable environment for the involvement of the population in the cultural and sports life of the city (growth in the number of social, leisure, and sports facilities).
- 1.4. Increasing environmental friendliness
- 1.5. Reducing the population migration level.
- 1.6. Growth in the well-being of the population (decrease in unemployment, increase in incomes of the population).
- 1.7. Attracting investors for city development.
3.1. Scenario 1: Change of Land Use
3.2. Scenario 2: Change in the Size of a Vacant Land Plot, Change in the Devaluation of Building Objects
3.3. Scenario 3: Change of Owner’s Authority
3.4. Solution of a Multicriteria Problem
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Types of Information | Description | Sources |
---|---|---|
Statistical | Demographic, production, financial, environmental indicators, etc. | Statistical and financial database, state real estate cadaster, state cadaster of natural resources, censuses, surveys, monitoring information systems |
Spatial | Areas of functional zones, parameters of objects, length and density of the transport network, parameters of engineering infrastructure, parameters of landscaping, relief features, types of vegetation, and other semantic information | GIS, cartographic fund |
Regulatory-Reference | Laws, regulations, sanitary norms and rules, standards, etc. | Legislative information bases, industry information funds |
Analytical | Results of forecasts, expert analysis, data mining | Databases of monitoring systems, expert sourcing systems |
N | Factor | Description |
---|---|---|
1 | External factors | |
1.1 | Legislative Restrictions | Regulatory framework for construction |
1.2 | Value of Surrounding Development | Objects of historical and cultural heritage, building after 2000 |
1.3 | Location | Natural and climatic conditions, area relief, position relative to the central part of the city |
1.4 | Cultural and Historical Value | National mentality, cultural and historical features of the territory |
2 | Adjustable factors | |
2.1 | Land Use | Changing the functional use by changing the permitted use of the object, taking into account the most rational use, revaluation of the cadastral value of the object (changes in objects profitability) |
2.2 | Size of Vacant Land Plots | Variation in the parameters of the land plot, based on the availability of free space, the proposed boundaries for the implementation of the integrated area development |
2.3 | Devaluation of Existing Objects | Change in the technical condition (wear and tear) of the existing building, energy efficiency class of objects, aesthetic appearance of objects, compliance with the requirements for the number of stores (height) of buildings |
2.4 | Engineering Infrastructure | Availability of engineering communications, their technical condition |
2.5 | Transport Infrastructure | Transport links with local centers of city districts |
2.6 | Recreational Potential | Availability of recreation facilities (park, square, boulevard, alley, water body) |
2.7 | Owner Powers | Change in scope of rights of the real estate owner |
3 | Target factors | |
3.1 | Investment Potential | Changes in the economic attractiveness of the city, sources of economic development, changes in the income level of the population |
3.2 | Social Effect | Socio-ecological characteristics of the territory (change in population, ecological state of the urban environment, comfort of living) |
Index | Description |
---|---|
Region, district | Russia, Volgograd Oblast, city of Pallasovka |
Geospatial location characteristic | Pallasovka is a city (since 1967) in Russia, the administrative center of the Pallasovsky district of the Volgograd Oblast. It belongs to the small towns of Russia in terms of population. The city is located in the steppe in the northeast of the Volgograd region. Distance by road to the regional center, the city of Volgograd—280 km, to the nearest large city (Saratov)—230 km |
Intracity location | The city of Pallasovka is conditionally divided into the following parts: “Center”, “Daws”, “3rd Youth Brigade”, “6th Quarter”, “Zalineiny District”, “Zarechny District” and “Dachi”. The object of study is located in the Zarechny area. Cadastral quarter 34:23:190,066 |
Microdistrict predominant development | Residential low-rise buildings and individual residential buildings (construction period 1960–1980), administrative buildings, retail and sports facilities |
Prestige of the microdistrict | Medium: located in close proximity to the central part of the city. |
Availability of public transport/transport accessibility (subjective assessment) | Medium: a public transport stop is located on one of the streets limiting the microdistrict |
Area ecological situation | Good: located at a slight distance from the central park of the city, the Bulbin River; the communal warehouse complex located on the territory is not subject to negative environmental impact |
Availability of social infrastructure facilities (subjective assessment) | An area with a moderately developed infrastructure: in the immediate vicinity of the quarter there is a secondary school No. 12, the Kolos sports stadium, the Romashka kindergarten, a sports school, and a regional house of culture; on the territory of the quarter there is a sports and recreation complex Sokol; at a slight distance from the quarter there is a youth center Spektr; Central district hospital and children’s polyclinic are located at a considerable distance |
Objects of the industrial infrastructure of the microdistrict | Enterprises of public utility and warehouse purposes (middle class of sanitary hazard) are located on the territory of the quarter |
Distance from the main streets (highways) of the city | The quarter is located in close proximity to the main streets of the city (Ostravskaya St., Budenny St., Krasnoarmeyskaya St.) |
Condition of the territory (subjective assessment) | Poor improvement of the quarter territory: no pedestrian paths, no landscaping, the roadway is worn out |
Functional zones within the boundaries of the cadastral quarter | There are two zones: (i) the zone for the formation of residential areas with the placement of apartment buildings 4–5 floors (a wide range of local services is allowed, utilities without exceeding the permissible levels of environmental impact); (ii) the zone to ensure the legal conditions for the formation of public utility enterprises of the middle class of sanitary hazard, requiring the organization of sanitary protection zones with a radius of 300 m (some commercial services are allowed that contribute to the development of production activities; a combination of various types of permitted use of real estate in a single zone is possible only subject to regulatory sanitary requirements) |
Advantages | Disadvantages |
---|---|
Proximity to the central part of the city (the center of business and cultural activity of the population) | Inconsistency in the legal statuses of land plots located on the quarter territory |
Variability of permitted use of the territory | Restriction on the number of stories (height) of the buildings |
Proximity to the developed infrastructure of the city | Low efficiency of the use of existing buildings, the presence of vacant land plots |
Close proximity to consumers (population) | Insignificant socio-economic effects of exploitation |
Name of Indicator | Dimension | Numerical Values for the Project | ||
---|---|---|---|---|
Construction of a Sports Center with a Swimming Pool | Construction of an Ice Arena | Construction of a Building of the Medical and Diagnostic Center | ||
Total building area | m2 | 4378 | 2022.59 | 2629.73 |
Structural volume of the building | m3 | 20,377 | 14,641.29 | 35,769.80 |
Total land area | m2 | 4228 | 4432.95 | 4197 |
Built-up area | m2 | 2114 | 2211.98 | 1865 |
Capacity | people | up to 100 (grandstand) | up to 500 | 1000 |
Priority Vector Name | Project | ||
---|---|---|---|
Swimming Pool | Ice Arena | Medical and Diagnostic Center | |
Priority vectors for object uniqueness | 0.67742 | 0.22581 | 0.09678 |
Priority vectors for social significance | 0.66667 | 0.16667 | 0.16667 |
Priority vectors for operational complexity | 0.74469 | 0.14894 | 0.16667 |
Priority vectors for environmental impact | 0.15789 | 0.52632 | 0.3158 |
Priority vectors for the project payback period | 0.67742 | 0.22581 | 0.09677 |
Priority vectors for project budget efficiency | 0.65217 | 0.21739 | 0.13043 |
Fuzzy Solution | Project | ||
---|---|---|---|
Swimming Pool | Ice Arena | Medical and Diagnostic Center | |
Intersection of Particular Criteria | 0.15789 | 0.14894 | 0.09678 |
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Sadovnikova, N.; Savina, O.; Parygin, D.; Churakov, A.; Shuklin, A. Application of Scenario Forecasting Methods and Fuzzy Multi-Criteria Modeling in Substantiation of Urban Area Development Strategies. Information 2023, 14, 241. https://doi.org/10.3390/info14040241
Sadovnikova N, Savina O, Parygin D, Churakov A, Shuklin A. Application of Scenario Forecasting Methods and Fuzzy Multi-Criteria Modeling in Substantiation of Urban Area Development Strategies. Information. 2023; 14(4):241. https://doi.org/10.3390/info14040241
Chicago/Turabian StyleSadovnikova, Natalia, Oksana Savina, Danila Parygin, Alexey Churakov, and Alexey Shuklin. 2023. "Application of Scenario Forecasting Methods and Fuzzy Multi-Criteria Modeling in Substantiation of Urban Area Development Strategies" Information 14, no. 4: 241. https://doi.org/10.3390/info14040241
APA StyleSadovnikova, N., Savina, O., Parygin, D., Churakov, A., & Shuklin, A. (2023). Application of Scenario Forecasting Methods and Fuzzy Multi-Criteria Modeling in Substantiation of Urban Area Development Strategies. Information, 14(4), 241. https://doi.org/10.3390/info14040241