Abstract:
With the increase in the use of mobile devices fitted with wireless local area networks (WLANS) technologies there is need for accelerated studies on these systems to improve on the quality of service (QoS) provided to the users. Different methods have been used in signal modeling including deterministic and empirical models. This
study is aimed at comparing the performance of predicting Wi-Fi signal propagation along a corridor using Adaptive Neural Fuzzy Inference System (ANFIS), log10 distance (LOG10D)-ANFIS, LOG10D Particle Swarm Optimization (PSO) trained ANFIS and
LOG10D-PSO trained ANFIS with a random input. The mean error, root mean square and standard deviation of the predicted signal were determined and compared. The study was undertaken using a Wi-Fi router as the transmitter and a mobile phone as the receiver in the process of data collection. The measured values were then used in the
modeling. It was found that the predicted values based on PSO trained ANFIS with a random input were close to actual measured values as from the undertaken analysis giving the best prediction.
Keywords; Wi-Fi, QoS, WLANS, LOG10D, ANFIS, PSO
Description:
Proceedings of the Sustainable Research and Innovation Conference, JKUAT Main Campus, Kenya 8- 10 May, 2019