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一种基于强化学习的能量收集水下传感器网络新型介质访问策略

A Novel Medium Access Policy Based on Reinforcement Learning in Energy-Harvesting Underwater Sensor Networks.

作者信息

Eriş Çiğdem, Gül Ömer Melih, Bölük Pınar Sarısaray

机构信息

Department of Computer Engineering, Bahcesehir University, Istanbul 34353, Turkey.

Informatics Institute, Istanbul Technical University, Istanbul 34467, Turkey.

出版信息

Sensors (Basel). 2024 Sep 6;24(17):5791. doi: 10.3390/s24175791.

Abstract

Underwater acoustic sensor networks (UASNs) are fundamental assets to enable discovery and utilization of sub-sea environments and have attracted both academia and industry to execute long-term underwater missions. Given the heightened significance of battery dependency in underwater wireless sensor networks, our objective is to maximize the amount of harvested energy underwater by adopting the TDMA time slot scheduling approach to prolong the operational lifetime of the sensors. In this study, we considered the spatial uncertainty of underwater ambient resources to improve the utilization of available energy and examine a stochastic model for piezoelectric energy harvesting. Considering a realistic channel and environment condition, a novel multi-agent reinforcement learning algorithm is proposed. Nodes observe and learn from their choice of transmission slots based on the available energy in the underwater medium and autonomously adapt their communication slots to their energy harvesting conditions instead of relying on the cluster head. In the numerical results, we present the impact of piezoelectric energy harvesting and harvesting awareness on three lifetime metrics. We observe that energy harvesting contributes to 4% improvement in first node dead (FND), 14% improvement in half node dead (HND), and 22% improvement in last node dead (LND). Additionally, the harvesting-aware TDMA-RL method further increases HND by 17% and LND by 38%. Our results show that the proposed method improves in-cluster communication time interval utilization and outperforms traditional time slot allocation methods in terms of throughput and energy harvesting efficiency.

摘要

水下声学传感器网络(UASNs)是探索和利用海底环境的重要资产,吸引了学术界和工业界开展长期水下任务。鉴于水下无线传感器网络中电池依赖性的重要性日益凸显,我们的目标是通过采用时分多址(TDMA)时隙调度方法来最大化水下采集的能量,以延长传感器的运行寿命。在本研究中,我们考虑了水下环境资源的空间不确定性,以提高可用能量的利用率,并研究了一种用于压电能量采集的随机模型。考虑到实际的信道和环境条件,提出了一种新颖的多智能体强化学习算法。节点根据水下介质中的可用能量观察并学习其传输时隙的选择,并自主地使其通信时隙适应其能量采集条件,而不是依赖簇头。在数值结果中,我们展示了压电能量采集和采集意识对三个寿命指标的影响。我们观察到,能量采集使首个节点死亡(FND)时间提高了4%,半数节点死亡(HND)时间提高了14%,最后一个节点死亡(LND)时间提高了22%。此外,具有采集意识的TDMA-RL方法使HND进一步提高了17%,LND提高了38%。我们的结果表明,所提出的方法提高了簇内通信时间间隔利用率,在吞吐量和能量采集效率方面优于传统的时隙分配方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a298/11487392/c84b1a6b26d3/sensors-24-05791-g001.jpg

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