Title :
Body Shadowing and Furniture Effects for Accuracy Improvement of Indoor Wave Propagation Models
Author :
Ayadi, Mounir ; Ben Zineb, A.
Author_Institution :
SupCom, Ariana, Tunisia
Abstract :
Generally empirical models are developed on the basis of measurements achieved in empty buildings. But in practice human bodies and furniture presence induce a considerable fluctuation leading to huge differences between predictions and real measurements. In this paper a new indoor large scale path loss empirical model is presented. The model design, in addition to the considered phenomena in conventional empirical formulation, integrates additional suggestions recommended by electromagnetic techniques such as body shadowing and furniture effects. To achieve this work, a large number of experimental measurements have been carried on and saved in consequently voluminous databases. Their management and exploitation have considered data mining and especially neural networks to perform the new model called neural model. To prove model enhancement and accuracy we compare the “neural model” predictions with measurements. Obtained results show that the mean error is close to zero, the standard deviation is about 4.47 dB with a correlation factor of 97%.
Keywords :
buildings (structures); data mining; furniture; neural nets; radiowave propagation; telecommunication computing; accuracy improvement; body shadowing; data mining; electromagnetic techniques; empirical formulation; empirical model; empty buildings; furniture effects; indoor wave propagation; large scale path loss; neural networks; Biological neural networks; Computational modeling; Frequency measurement; Mathematical model; Neurons; Shadow mapping; Indoor propagation; calibration; data mining; measurements; neural network;
Journal_Title :
Wireless Communications, IEEE Transactions on
DOI :
10.1109/TWC.2014.2339275