Online Surveillance of IoT Agents in Smart Cities Using Deep Reinforcement Learning

Ahmad Alenezi
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Abstract

In the context of today's smart cities, the effective operation of online surveillance of IoT agents is crucial for maintaining public safety and security. To achieve this, collaboration and cooperation among these autonomous IoT agents are indispensable. While the existing research has focused on collaboration amongst the neighboring agents or implicit cooperation, real-world scenarios often necessitate broader forms of collaboration. In response to this need, we introduce a novel framework that leverages visual signals and observations to facilitate collaboration among online surveillance. Our proposed framework incorporates the Multi-Agent POsthumous Credit Assignment (MA-POCA) algorithm as a training mechanism. The empirical results demonstrate that our framework consistently outperforms the base model in various performance metrics. Specifically, it exhibits superior performance in group cumulative reward, cumulative reward, and episode length. Furthermore, our proposed model excels in policy loss performance measures when compared to base model.
利用深度强化学习对智能城市中的物联网代理进行在线监控
在当今智慧城市的背景下,物联网代理在线监控的有效运行对于维护公共安全和安保至关重要。为此,这些自主物联网代理之间的协作与合作必不可少。虽然现有的研究主要集中在相邻代理之间的协作或隐式合作,但现实世界的场景往往需要更广泛的协作形式。针对这一需求,我们提出了一个新颖的框架,利用视觉信号和观察结果促进在线监控之间的协作。我们提出的框架采用了多代理恶意信用分配(MA-POCA)算法作为训练机制。实证结果表明,我们的框架在各种性能指标上始终优于基础模型。具体来说,它在群体累积奖励、累积奖励和情节长度方面表现出了卓越的性能。此外,与基础模型相比,我们提出的模型在策略损失性能指标方面表现出色。
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