A Big Data Architecture Design for Smart Grids Based on Random Matrix Theory
X. He, Q. Ai, C. Qiu, W. Huang, L. Piao, H. Liu

TL;DR
This paper introduces a big data architecture for smart grids using random matrix theory, enabling high-dimensional data analysis, anomaly detection, and regional management for large-scale interconnected power systems.
Contribution
It proposes a novel data-driven architecture based on RMT for smart grid analysis, including a group-work mode that enhances regional data processing and system awareness.
Findings
Effective anomaly detection using MSR in high-dimensional data
Decoupling large-scale systems through regional MSRs
Validated architecture with five case studies in power systems
Abstract
Model-based analysis tools, built on assumptions and simplifications, are difficult to handle smart grids with data characterized by 4Vs data. This paper, using random matrix theory (RMT), motivates data-driven tools to perceive the complex grids in highdimension; meanwhile, an architecture with detailed procedures is proposed. In algorithm perspective, the architecture performs a high-dimensional analysis, and compares the findings with RMT predictions to conduct anomaly detections. Mean Spectral Radius (MSR), as a statistical indicator, is defined to reflect the correlations of system data in different dimensions. In management mode perspective, a group-work mode is discussed for smart grids operation. This mode breaks through regional limitations for energy flows and data flows, and makes advanced big data analyses possible. For a specific large-scale zone-dividing system with…
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