Fast Reinforcement Learning for Energy-Efficient Wireless Communications
Nicholas Mastronarde, Mihaela van der Schaar

TL;DR
This paper introduces a unified reinforcement learning framework for energy-efficient wireless communication that combines physical-layer and system-level techniques, achieving faster convergence without prior system knowledge.
Contribution
It proposes a novel online reinforcement learning approach that integrates power control, adaptive modulation, coding, and dynamic power management for energy efficiency in wireless systems.
Findings
Converges up to 100 times faster than existing algorithms.
Does not require prior knowledge of traffic or channel statistics.
Reduces learning time significantly compared to conventional methods.
Abstract
We consider the problem of energy-efficient point-to-point transmission of delay-sensitive data (e.g. multimedia data) over a fading channel. Existing research on this topic utilizes either physical-layer centric solutions, namely power-control and adaptive modulation and coding (AMC), or system-level solutions based on dynamic power management (DPM); however, there is currently no rigorous and unified framework for simultaneously utilizing both physical-layer centric and system-level techniques to achieve the minimum possible energy consumption, under delay constraints, in the presence of stochastic and a priori unknown traffic and channel conditions. In this report, we propose such a framework. We formulate the stochastic optimization problem as a Markov decision process (MDP) and solve it online using reinforcement learning. The advantages of the proposed online method are that (i)…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
