Morteza FarhidMohammad Hossein SedaaghiMousa Shamsi
In this paper, we investigate the impacts of network topology on the performance of a distributed estimation algorithm, namely combine-then-adaptive (CTA) diffusion LMS, based on the data with or without the assumptions of temporal and spatial independence with noisy links. The study covers different network models, including the regular, small-world, random and scale-free whose the performance is analyzed according to the mean stability, mean-square errors, communication cost (link density) and robustness. Simulation results show that the noisy links do not cause divergence in the networks. Also, among the networks, the scale free network (heterogeneous) has the best performance in the steady state of the mean square deviation (MSD) while the regular is the worst case. The robustness of the networks against the issues like node failure and noisier node conditions is discussed as well as providing some guidelines on the design of a network in real condition such that the qualities of estimations are optimized.
Azam KhaliliMohammad Ali TinatiAmir Rastegarnia
Vahid VahidpourAmir RastegarniaAzam KhaliliWael M. BazziSaeid Sanei
Ying LiuChunguang LiK.S. TangZhaoyang Zhang
Ehsan LariReza ArabloueiNaveen K. D. VenkategowdaStefan Werner