Self-Organizing Complex Networks with AI-Driven Adaptive Nodes for Optimized Connectivity and Energy Efficiency
Azra Seyyedi, Mahdi Bohlouli, SeyedEhsan Nedaaee Oskoee

TL;DR
This paper presents an AI-enhanced self-organizing network model where adaptive nodes autonomously optimize connectivity and energy efficiency, demonstrating high resilience and stability in dynamic environments.
Contribution
It introduces a novel AI-driven approach using MLP-based decision-making at each node, building on Hamiltonian methods to improve network robustness and energy efficiency.
Findings
Achieves stable complete connectivity in simulations
Demonstrates robustness against structural disruptions
Optimizes energy consumption in static and mobile scenarios
Abstract
High connectivity and robustness are critical requirements in distributed networks, as they ensure resilience, efficient communication, and adaptability in dynamic environments. Additionally, optimizing energy consumption is also paramount for ensuring sustainability of networks composed of energy-constrained devices and prolonging their operational lifespan. In this study, we introduce an Artificial Intelligence (AI)-enhanced self-organizing network model, where each adaptive node autonomously adjusts its transmission power to optimize network connectivity and redundancy while lowering energy consumption. Building on our previous Hamiltonian-based methodology, which is designed to lead networks toward globally optimized states of complete connectivity and minimal energy usage, this research integrates a Multi-Layer Perceptron (MLP)-based decision-making model at each node. By…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Molecular Communication and Nanonetworks · Neural Networks and Applications
