Affiliation:
1. Lviv Polytechnic National University, Department of Artificial Intelligence, Lviv, Ukraine
2. Lviv Polytechnic National University, Department of Electronics and Information Technology, Lviv, Ukraine
Abstract
In this paper the initialization of the city is considered, which consists of
several steps, including the creation of city objects with their locations,
creation of residents with their attributes and own daily schedules, etc. A
description of the model is provided as a tuple of attributes. The adequacy
of the simulation model is checked based on the statistical data from the
city of Lviv, Ukraine. Generated locations of city ecosystem objects are
presented. The daily schedule of residents is simulated. A possible work
schedule for each specialty is given, and separate schedules are created for
working days and holidays. A unique schedule is predicted for the resident,
which depends on their age and work specialty. The dynamics of visits to
facilities by residents on weekdays and at weekends are analyzed. Based on
the conducted experiments, the adequacy of the model and its realistic
reflection of the functioning of the city's ecosystem during the day are
proven. It means that by using this model, researchers can assess the impact
of different behavioral scenarios on the residents within the city ecosystem
more reliably. This enables a better understanding of how certain actions or
changes in behavior can affect the spread and control of diseases in a
specific geographic area. This model has the potential to serve as a
foundation for future modeling of systems at the medium and macro scales.
Publisher
National Library of Serbia
Subject
Geology,Geography, Planning and Development,Earth-Surface Processes,Demography,Tourism, Leisure and Hospitality Management
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