An edge tier task offloading to identify sources of variance shifts in smart grid using a hybrid of wrapper and filter approaches
Version 2 2024-06-04, 04:38Version 2 2024-06-04, 04:38
Version 1 2022-01-24, 08:20Version 1 2022-01-24, 08:20
journal contribution
posted on 2024-06-04, 04:38authored byNGT Gunaratne, M Abdollahian, Shamsul HudaShamsul Huda, M Ali, G Frontino
Smart grid is one of the major geo-distributed internets of things (IoT) networks. To support different functionalities of the smart grid such as continuous monitoring, the grid generates massive volumes of data. In a centralized system, majority of control decisions are accomplished at the cloud tier. This generates several drawbacks including limited bandwidth, privacy leakage, data confidentiality and integrity risk, and a single point of failure. Therefore, edge-computing paradigm is one of the possible solutions to avoid the drawbacks and make the system more trustworthy. This paper proposes an edge intelligence-based monitoring paradigm that can use data at the thing tier to monitor large variance shifts of control variables. We propose a Multivariate Exponentially Weighted Moving Variance (MEWMV) chart and a hybrid of wrapper and filter techniques to monitor the variables. The proposed approach can identify variables responsible for the out-of-control signals while considering the correlation among variables. This enables the grid to offload the decision task to the edge tier thus avoiding the latency, risks of data integrity and providing faster monitoring facilities. A case study on the smart grid indicates that the proposed hybrid can identify variables responsible for the out-of-control signals more accurately than existing approaches.
History
Journal
IEEE Transactions on Green Communications and Networking
Volume
6
Pagination
329-340
Location
Piscataway, NJ
eISSN
2473-2400
Language
English
Publication classification
C1 Refereed article in a scholarly journal
Issue
1
Publisher
Institute of Electrical and Electronics Engineers (IEEE)