In wide-area measurement systems (WAMS), phasor measurement unit (PMU) measurement is prone to data missingness due to hardware failures, communication delays, and cyber-attacks. Existing data-driven methods are limited by inadaptability to concept drift in power systems, poor robustness under high missing rates, and reliance on the unrealistic assumption of full system observability. Thus, this paper proposes an auxiliary task learning (ATL) method for reconstructing missing PMU data. First, a K-hop graph neural network (GNN) is proposed to enable direct learning on the subgraph consisting of PMU nodes, overcoming the limitation of the incompletely observable system. Then, an auxiliary learning framework consisting of two complementary graph networks is designed for accurate reconstruction: a spatial-temporal GNN extracts spatial-temporal dependencies from PMU data to reconstruct missing values, and another auxiliary GNN utilizes the low-rank property of PMU data to achieve unsupervised online learning. In this way, the low-rank properties of the PMU data are dynamically leveraged across the architecture to ensure robustness and self-adaptation. Numerical results demonstrate the superior offline and online performance of the proposed method under high missing rates and incomplete observability.
翻译:在广域测量系统中,相量测量单元的测量数据常因硬件故障、通信延迟及网络攻击而出现缺失。现有数据驱动方法存在以下局限:难以适应电力系统中的概念漂移、在高缺失率下鲁棒性较差,以及依赖系统完全可观测这一不切实际的假设。为此,本文提出一种用于重构缺失PMU数据的辅助任务学习方法。首先,提出一种K跳图神经网络,使其能够直接在由PMU节点构成的子图上进行学习,从而克服系统不完全可观测的限制。随后,设计了一个由两个互补图网络构成的辅助学习框架以实现精确重构:时空图神经网络从PMU数据中提取时空依赖关系以重构缺失值,另一个辅助图神经网络则利用PMU数据的低秩特性实现无监督在线学习。通过这种方式,PMU数据的低秩特性在整体架构中得以动态利用,从而确保方法的鲁棒性与自适应性。数值实验结果表明,在高缺失率与不完全可观测条件下,所提方法在离线和在线场景中均表现出优越性能。