From Sigmoid Power Control Algorithm to Hopfield-like Neural Networks: "SIR" ("Signal"-to-"Interference"-Ratio)-Balancing Sigmoid-Based Networks- Part I: Continuous Time
Zekeriya Uykan

TL;DR
This paper introduces a Sigmoid-based SIR balancing neural network that unifies power control algorithms in wireless communications with Hopfield networks, demonstrating its effectiveness through simulations.
Contribution
It presents a novel Sigmoid-based SIR balancing neural network that bridges wireless power control and Hopfield networks, highlighting its unique features and advantages.
Findings
The proposed Sgm'SIR'NN exhibits Hopfield-like features.
Simulations show improved performance over traditional Hopfield networks.
Abstract
Continuous-time Hopfield network has been an important focus of research area since 1980s whose applications vary from image restoration to combinatorial optimization from control engineering to associative memory systems. On the other hand, in wireless communications systems literature, power control has been intensively studied as an essential mechanism for increasing the system performance. A fully distributed power control algorithm (DPCA), called Sigmoid DPCA, is presented by Uykan in [10] and [11], which is obtained by discretizing the continuous-time system. In this paper, we present a Sigmoid-based "Signal-to-Interference Ratio, (SIR)" balancing dynamic networks, called Sgm"SIR"NN, which includes both the Sigmoid power control algorithm (SgmDPCA) and the Hopfield neural networks, two different areas whose scope of interest, motivations and settings are completely different. It's…
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Taxonomy
TopicsNeural Networks and Applications · Blind Source Separation Techniques · Speech and Audio Processing
