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.
翻译:相量测量单元(PMU)产生的高频、时间同步数据对实时电网监测至关重要,然而PMU部署规模的不断扩大给延迟、可扩展性和可靠性带来了重大挑战。传统的集中式处理架构日益难以应对PMU数据的体量与速度,特别是在具有动态运行条件的现代电网中。本文提出了一种用于智能PMU数据处理的可扩展云原生架构,该架构将人工智能与边缘计算和云计算相结合。所提出的框架采用分布式流处理、容器化微服务和弹性资源编排,以实现低延迟数据采集、实时异常检测和高级分析。通过整合用于时间序列分析的机器学习模型,增强了电网的可观测性与预测能力。研究建立了分析模型以评估系统延迟、吞吐量和可靠性,结果表明该架构在扩展至大规模PMU部署的同时,可实现亚秒级响应时间。架构内嵌安全与隐私机制,以支持在关键基础设施环境中的部署。所提出的方法为下一代智能电网分析提供了稳健且灵活的基础。