Optimal Adaptive Random Multiaccess in Energy Harvesting Wireless Sensor Networks
Nicolo Michelusi, Michele Zorzi

TL;DR
This paper develops a decentralized energy management scheme for energy-harvesting wireless sensor networks, using game theory to approximate optimal policies that maximize long-term utility with low complexity.
Contribution
It introduces a game-theoretic approach to derive a symmetric Nash equilibrium policy for decentralized energy management in EH sensor networks, with proven uniqueness and near-optimal performance.
Findings
SNE achieves within 3% of optimal utility.
Algorithm efficiently computes SNE for large batteries.
Identifies energy-limited and network-limited operational regimes.
Abstract
Wireless sensors can integrate rechargeable batteries and energy-harvesting (EH) devices to enable long-term, autonomous operation, thus requiring intelligent energy management to limit the adverse impact of energy outages. This work considers a network of EH wireless sensors, which report packets with a random utility value to a fusion center (FC) over a shared wireless channel. Decentralized access schemes are designed, where each node performs a local decision to transmit/discard a packet, based on an estimate of the packet's utility, its own energy level, and the scenario state of the EH process, with the objective to maximize the average long-term aggregate utility of the packets received at the FC. Due to the non-convex structure of the problem, an approximate optimization is developed by resorting to a mathematical artifice based on a game theoretic formulation of the multiaccess…
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