Characteristic of WiFi Network Based on Space Model with Using Turning Bands Co-simulation Method

  • Anna Kamińska-ChuchmałaEmail author
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 950)


Recently, mostly users prefer an access to the wireless network than wired. Due to the fact of mobility of users and choosing of mobile devices such as smartphone, tablet, smartwatch etc. Extensively growth of wireless network users affect on reliable connection to the network. In this research parameters from Access Points (APs) contained in PWR-WiFi an open WiFi network belonging to Wrocław University of Science and Technology (WUST) in Poland are investigated. A central issue in this paper is to create space models prediction of WiFi network efficiency by Turning Bands Method (TBM). Statistical analysis of considered WiFi daily data were conducted. Acquired results were discussed and conclusions with future research directions to WiFi network efficiency predictions were drawn.


WiFi Wireless network efficiency Space models Turning bands method Co-simulation method 


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Copyright information

© Springer Nature Switzerland AG 2020

Authors and Affiliations

  1. 1.Faculty of Computer Science and ManagementWrocław University of Science and TechnologyWrocławPoland

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