Context-based Reasoning through Fuzzy Logic for Edge Intelligence

Ramin Firouzi, R. Rahmani, T. Kanter
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Abstract

With the advent of edge computing, the Internet of Things (IoT) environment has the ability to process data locally. The complexity of the context reasoning process can be scattered across several edge nodes that are physically placed at the source of the qualitative information by moving the processing and knowledge inference to the edge of the IoT network. This facilitates the real-time processing of a large range of rich data sources that would be less complex and expensive compare to the traditional centralized cloud system. In this paper, we propose a novel approach to provide low-level intelligence for IoT applications through an IoT edge controller that is leveraging the Fuzzy Logic Controller along with edge computing. This low-level intelligence, together with cloud-based intelligence, forms the distributed IoT intelligence. The proposed controller allows distributed IoT gateway to manage input uncertainties; besides, by interacting with its environment, the learning system can enhance its performance over time, which leads to improving the reliability of the IoT gateway. Therefore, such a controller is able to offer different context-aware reasoning to alleviate the distributed IoT. A simulated smart home scenario has been done to prove the plausibility of the low-level intelligence concerning reducing latency and more accurate prediction through learning experiences at the edge.
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基于模糊逻辑的边缘智能上下文推理
随着边缘计算的出现,物联网(IoT)环境具有本地处理数据的能力。上下文推理过程的复杂性可以分散在几个边缘节点上,这些节点通过将处理和知识推理移动到物联网网络的边缘,在物理上位于定性信息的来源。这有助于实时处理大范围的丰富数据源,与传统的集中式云系统相比,这些数据源不那么复杂和昂贵。在本文中,我们提出了一种新颖的方法,通过利用模糊逻辑控制器和边缘计算的物联网边缘控制器为物联网应用提供低级智能。这种低级智能与基于云的智能一起构成了分布式物联网智能。该控制器允许分布式物联网网关管理输入的不确定性;此外,通过与环境的交互,学习系统可以随着时间的推移增强其性能,从而提高物联网网关的可靠性。因此,这样的控制器能够提供不同的上下文感知推理,以缓解分布式物联网。通过模拟智能家居场景,证明了通过边缘学习经验减少延迟和更准确预测的低水平智能的可行性。
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