Fog-Based Computing Architecture for Enhancing Secondary Distribution Grid Services Management
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Abstract
In monitoring the health of secondary distribution networks (SDNs), power utility providers have faced an increasing need to deploy intelligent solutions with affordable sensing and data-driven technologies. Existing manual-based approaches are not capable of collecting large volumes of real-time operational data to achieve significant monitoring of the SDN network for reliable power distribution. Effective monitoring would require real-time sensing, scalable high-performance computing, and appropriate grid-based applications designed for efficient data processing. This paper presents a computing architecture for grid services monitoring to enhance real-time fault management in SDN. The architecture leverages wireless sensor networks, a hybrid cloud-fog computing architecture, and a heuristic-based application coordination mechanism to efficiently manage grid applications. Experimental results indicate that coordination mechanism improved workload distribution by up to 70% in fog nodes and to 40% in the cloud. A fog-based architecture provided low latency improvements of 70% compared with that of cloud-only architectures. This signifies that most of the data processing was pushed to the local fog nodes, which is crucial for distributed fault management applications.
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