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Main Authors: Yun, Sinwoong, Kim, Dongsun, Park, Chanwon, Lee, Jemin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.13936
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author Yun, Sinwoong
Kim, Dongsun
Park, Chanwon
Lee, Jemin
author_facet Yun, Sinwoong
Kim, Dongsun
Park, Chanwon
Lee, Jemin
contents As the demand on artificial intelligence (AI)-based applications increases, the freshness of sensed data becomes crucial in the wireless sensor networks. Since those applications require a large amount of computation for processing the sensed data, it is essential to offload the computation load to the edge computing (EC) server. In this paper, we propose the sensing and computing decision (SCD) algorithms for data freshness in the EC-enabled wireless sensor networks. We define the η-coverage probability to show the probability of maintaining fresh data for more than η ratio of the network, where the spatial-temporal correlation of information is considered. We then propose the probability-based SCD for the single pre-charged sensor case with providing the optimal point after deriving the η-coverage probability. We also propose the reinforcement learning (RL)- based SCD by training the SCD policy of sensors for both the single pre-charged and multiple energy harvesting (EH) sensor cases, to make a real-time decision based on its observation. Our simulation results verify the performance of the proposed algorithms under various environment settings, and show that the RL-based SCD algorithm achieves higher performance compared to baseline algorithms for both the single pre-charged sensor and multiple EH sensor cases.
format Preprint
id arxiv_https___arxiv_org_abs_2401_13936
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning-based sensing and computing decision for data freshness in edge computing-enabled networks
Yun, Sinwoong
Kim, Dongsun
Park, Chanwon
Lee, Jemin
Systems and Control
As the demand on artificial intelligence (AI)-based applications increases, the freshness of sensed data becomes crucial in the wireless sensor networks. Since those applications require a large amount of computation for processing the sensed data, it is essential to offload the computation load to the edge computing (EC) server. In this paper, we propose the sensing and computing decision (SCD) algorithms for data freshness in the EC-enabled wireless sensor networks. We define the η-coverage probability to show the probability of maintaining fresh data for more than η ratio of the network, where the spatial-temporal correlation of information is considered. We then propose the probability-based SCD for the single pre-charged sensor case with providing the optimal point after deriving the η-coverage probability. We also propose the reinforcement learning (RL)- based SCD by training the SCD policy of sensors for both the single pre-charged and multiple energy harvesting (EH) sensor cases, to make a real-time decision based on its observation. Our simulation results verify the performance of the proposed algorithms under various environment settings, and show that the RL-based SCD algorithm achieves higher performance compared to baseline algorithms for both the single pre-charged sensor and multiple EH sensor cases.
title Learning-based sensing and computing decision for data freshness in edge computing-enabled networks
topic Systems and Control
url https://arxiv.org/abs/2401.13936