Mobile Crowdsensing for Data Freshness: A Deep Reinforcement Learning Approach

Zipeng Dai, Hao Wang, C. Liu, Rui Han, Jian Tang, Guoren Wang
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引用次数: 12

Abstract

Data collection by mobile crowdsensing (MCS) is emerging as data sources for smart city applications, however how to ensure data freshness has sparse research exposure but quite important in practice. In this paper, we consider to use a group of mobile agents (MAs) like UAVs and driverless cars which are equipped with multiple antennas to move around in the task area to collect data from deployed sensor nodes (SNs). Our goal is to minimize the age of information (AoI) of all SNs and energy consumption of MAs during movement and data upload. To this end, we propose a centralized deep reinforcement learning (DRL)-based solution called "DRL-freshMCS" for controlling MA trajectory planning and SN scheduling. We further utilize implicit quantile networks to maintain the accurate value estimation and steady policies for MAs. Then, we design an exploration and exploitation mechanism by dynamic distributed prioritized experience replay. We also derive the theoretical lower bound for episodic AoI. Extensive simulation results show that DRL-freshMCS significantly reduces the episodic AoI per remaining energy, compared to five baselines when varying different number of antennas and data upload thresholds, and number of SNs. We also visualize their trajectories and AoI update process for clear illustrations.
移动人群感知数据新鲜度:一种深度强化学习方法
移动众感(MCS)数据采集正在成为智慧城市应用的数据来源,但如何保证数据的新鲜度研究较少,但在实践中却非常重要。在本文中,我们考虑使用一组移动代理(MAs),如无人机和无人驾驶汽车,它们配备了多个天线,在任务区域内移动,从部署的传感器节点(SNs)收集数据。我们的目标是最小化所有SNs的信息年龄(AoI)和MAs在移动和数据上传过程中的能耗。为此,我们提出了一种基于集中式深度强化学习(DRL)的解决方案,称为“DRL- freshmcs”,用于控制MA轨迹规划和SN调度。我们进一步利用隐式分位数网络来保持MAs的准确值估计和稳定策略。然后,我们设计了一种基于动态分布式优先体验回放的探索开发机制。我们还推导出了插曲型AoI的理论下界。大量的仿真结果表明,与5个基线相比,当改变不同的天线数量、数据上传阈值和SNs数量时,DRL-freshMCS显著降低了每剩余能量的情景AoI。我们还可视化了它们的轨迹和AoI更新过程,以获得清晰的插图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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