DQLEL: Deep Q-Learning for Energy-Optimized LoS/NLoS UWB Node Selection
Zohreh Hajiakhondi-Meybodi, Arash Mohammadi, Ming Hou, Konstantinos N., Plataniotis

TL;DR
This paper proposes DQLEL, a deep Q-learning framework that optimizes UWB node selection for indoor positioning, balancing accuracy and energy efficiency without complex NLoS mitigation.
Contribution
Introduces a novel deep reinforcement learning-based node selection method for UWB indoor positioning that improves accuracy and energy efficiency simultaneously.
Findings
Significantly improves localization accuracy.
Reduces battery consumption of UWB beacons.
Outperforms existing methods in simulations.
Abstract
Recent advancements in Internet of Things (IoTs) have brought about a surge of interest in indoor positioning for the purpose of providing reliable, accurate, and energy-efficient indoor navigation/localization systems. Ultra Wide Band (UWB) technology has been emerged as a potential candidate to satisfy the aforementioned requirements. Although UWB technology can enhance the accuracy of indoor positioning due to the use of a wide-frequency spectrum, there are key challenges ahead for its efficient implementation. On the one hand, achieving high precision in positioning relies on the identification/mitigation Non Line of Sight (NLoS) links, leading to a significant increase in the complexity of the localization framework. On the other hand, UWB beacons have a limited battery life, which is especially problematic in practical circumstances with certain beacons located in strategic…
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Taxonomy
MethodsQ-Learning
