Score: 0

Scalable Cloud-Native Architectures for Intelligent PMU Data Processing

Published: December 23, 2025 | arXiv ID: 2512.22231v1

By: Nachiappan Chockalingam , Akshay Deshpande , Lokesh Butra and more

Potential Business Impact:

Makes power grids smarter and safer.

Business Areas:
Application Performance Management Data and Analytics, Software

Phasor Measurement Units (PMUs) generate high-frequency, time-synchronized data essential for real-time power grid monitoring, yet the growing scale of PMU deployments creates significant challenges in latency, scalability, and reliability. Conventional centralized processing architectures are increasingly unable to handle the volume and velocity of PMU data, particularly in modern grids with dynamic operating conditions. This paper presents a scalable cloud-native architecture for intelligent PMU data processing that integrates artificial intelligence with edge and cloud computing. The proposed framework employs distributed stream processing, containerized microservices, and elastic resource orchestration to enable low-latency ingestion, real-time anomaly detection, and advanced analytics. Machine learning models for time-series analysis are incorporated to enhance grid observability and predictive capabilities. Analytical models are developed to evaluate system latency, throughput, and reliability, showing that the architecture can achieve sub-second response times while scaling to large PMU deployments. Security and privacy mechanisms are embedded to support deployment in critical infrastructure environments. The proposed approach provides a robust and flexible foundation for next-generation smart grid analytics.

Page Count
6 pages

Category
Computer Science:
Distributed, Parallel, and Cluster Computing