Мultifactorial fuzzy analysis for transfer demand modeling to touristic towns

Authors

  • А. Б. Білоус Національний університет «Львівська політехніка» вул. Степана Бандери, 12, м. Львів, Україна, 79013, Ukraine
  • І. А. Могила Національний університет «Львівська політехніка» вул. Степана Бандери, 12, м. Львів, Україна, 79013, Ukraine https://orcid.org/0000-0001-9710-6191

DOI:

https://doi.org/10.15587/1729-4061.2011.1910

Keywords:

Мultifactorial analysis, fuzzy set theory, transportation demand predicting

Abstract

In work is represented improvement of new approach in tourist travel demand modeling, which combines behavioral travel demand model and direct demand model. Multifactorial fuzzy analysis is used for estimating of mode utilities (power of trip generation and zone attractiveness). This gives direct demand model behavioral basis of disaggregating model, in which travel choice is considered as decision-making process. This approach also combines two different theories in sphere decision making: discrete choice theory (based on probability theory) and multifactorial fuzzy analysis (based on fuzzy set theory)

Author Biographies

А. Б. Білоус, Національний університет «Львівська політехніка» вул. Степана Бандери, 12, м. Львів, Україна, 79013

Кандидат технічних наук, доцент

Кафедра транспортних технологій

І. А. Могила, Національний університет «Львівська політехніка» вул. Степана Бандери, 12, м. Львів, Україна, 79013

Аспірант

Кафедра транспортних технологій

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How to Cite

Білоус, А. Б., & Могила, І. А. (2012). Мultifactorial fuzzy analysis for transfer demand modeling to touristic towns. Eastern-European Journal of Enterprise Technologies, 1(4(49), 32–38. https://doi.org/10.15587/1729-4061.2011.1910

Issue

Section

Mathematics and Cybernetics - applied aspects