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Automation of Negative Infrastructural Externalities Assessment Methods to Determine the Cost of Land Resources Based on the Development of a “Thin Client” Model

Author

Listed:
  • Elena Bykowa

    (Department of Engineering Geodesy, Saint Petersburg Mining University, 21-Line, 2, 199106 St. Petersburg, Russia)

  • Maria Skachkova

    (Department of Engineering Geodesy, Saint Petersburg Mining University, 21-Line, 2, 199106 St. Petersburg, Russia)

  • Ivan Raguzin

    (Department of Engineering Geodesy, Saint Petersburg Mining University, 21-Line, 2, 199106 St. Petersburg, Russia)

  • Irina Dyachkova

    (Department of Engineering Geodesy, Saint Petersburg Mining University, 21-Line, 2, 199106 St. Petersburg, Russia)

  • Maxim Boltov

    (Department of Information Systems and Computer Science, Saint Petersburg Mining University, 21-Line, 2, 199106 St. Petersburg, Russia)

Abstract

This article discusses the need to transform real estate valuation methods. It is associated with the problems of obtaining unreliable results affecting the subsequent adoption of management decisions. As an important element of land plots assessment, the authors define the Negative Infrastructural Externalities arising from the presence of infrastructure and other regime-forming facilities. These externalities represent the loss of title holders due to the encumbrances arising from the use of land plots. The world community (and the authors as part of it) sees one of the transformation methods in the automation of the evaluation process. Therefore, the purpose of this study is to develop a mechanism of automating the Negative Infrastructural Externalities assessment process in the conditions of a non-existent and weak market activity of land relations. Modern trends dictate the saving of hardware, labor and money resources; in this connection, the methods of Negative Infrastructural Externalities assessment are implemented on the basis of the “thin client” technology. The research is based on the following methods: the analytical method is used to perform a critical analysis of the problem area and to substantiate the research topic’s relevance; methods of object-oriented programming and methods of modular programming (Cowan’s axiom of modularity) are used as tools for developing the web application logic, as well as the interaction of its individual elements; the attribute-driven design approach is used in the creation of software architectures. The result of the study is the developed and substantiated architecture of a web application for assessing negative infrastructural external factors in determining the land value, the implemented modular structure of the specified web application and the developed conceptual model of the database. The practical implementation of the listed proposals is made by means of the Python programming language. The advantage of the created automated system is the possibility of multi-disciplinary use of the expert assessment approach when changing the settings.

Suggested Citation

  • Elena Bykowa & Maria Skachkova & Ivan Raguzin & Irina Dyachkova & Maxim Boltov, 2022. "Automation of Negative Infrastructural Externalities Assessment Methods to Determine the Cost of Land Resources Based on the Development of a “Thin Client” Model," Sustainability, MDPI, vol. 14(15), pages 1-29, July.
  • Handle: RePEc:gam:jsusta:v:14:y:2022:i:15:p:9383-:d:877118
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    References listed on IDEAS

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