真实物理动态下最小化信息年龄的强化学习

Sihua Wang, Mingzhe Chen, W. Saad, Changchuan Yin, Shuguang Cui, H. Poor
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引用次数: 4

摘要

研究了物联网(IoT)设备的信息年龄(AoI)和总能耗加权和的最小化问题。特别是,每个物联网设备都监控遵循非线性动力学的物理过程。由于物理过程的动态性随时间的变化而变化,因此每个设备必须对物理系统的实时状态进行采样,并将状态信息发送给基站(BS),以便对物理过程进行监控。实际物理过程的动态性会影响到每个器件的采样频率和状态更新方案。特别是,由于物理过程变化迅速,必须增加每个设备的采样频率以捕获这些物理动态。同时,采样频率的变化也会影响设备的能耗。因此,有必要在每个时隙确定一个设备子集来对物理过程进行采样,以便使用最小的能量准确地监测物理过程的动态。将该问题表述为一个优化问题,其目标是使AoI和设备总能耗的加权和最小。为了解决这一问题,提出了一种基于重复更新q -学习(RUQL)算法的机器学习框架。提出的方法使BS能够克服有偏差的动作选择问题(例如,一个agent总是采取一组动作而忽略其他动作),从而动态快速地找到设备采样和状态更新策略,从而使所有设备的AoI和能耗之和最小。北京大学统计科学中心对北京pm2.5污染的真实数据进行了模拟,结果表明,与传统的Q-learning方法相比,该算法可将AoI的总和降低26.9%。
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Reinforcement Learning for Minimizing Age of Information under Realistic Physical Dynamics
In this paper, the problem of minimizing the weighted sum of age of information (AoI) and total energy consumption of Internet of Things (IoT) devices is studied. In particular, each IoT device monitors a physical process that follows nonlinear dynamics. As the dynamic of the physical process varies over time, each device must sample the real-time status of the physical system and send the status information to a base station (BS) so as to monitor the physical process. The dynamics of the realistic physical process will influence the sampling frequency and status update scheme of each device. In particular, as the physical process varies rapidly, the sampling frequency of each device must be increased to capture these physical dynamics. Meanwhile, changes in the sampling frequency will also impact the energy usage of the device. Thus, it is necessary to determine a subset of devices to sample the physical process at each time slot so as to accurately monitor the dynamics of the physical process using minimum energy. This problem is formulated as an optimization problem whose goal is to minimize the weighted sum of AoI and total device energy consumption. To solve this problem, a machine learning framework based on the repeated update Q-learning (RUQL) algorithm is proposed. The proposed method enables the BS to overcome the biased action selection problem (e.g., an agent always takes a subset of actions while ignoring other actions), and hence, dynamically and quickly finding a device sampling and status update policy so as to minimize the sum of AoI and energy consumption of all devices. Simulations with real data of PM 2.5 pollution in Beijing from the Center for Statistical Science at Peking University show that the proposed algorithm can reduce the sum of AoI by up to 26.9% compared to the conventional Q-learning method.
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