一种鲁棒且可解释的电力电子数据驱动异常检测方法

Alexander Beattie, Pavol Mulinka, Subham S. Sahoo, I. Christou, Charalampos Kalalas, Daniel Gutierrez-Rojas, P. Nardelli
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引用次数: 1

摘要

及时准确地检测电力电子设备中的异常对于维护复杂的生产系统变得越来越重要。稳健且可解释的策略有助于减少系统停机时间,抢占或减轻基础设施网络攻击。这项工作首先解释当前数据集和机器学习算法输出中存在的不确定性类型。然后介绍和分析了对抗这些不确定性的三种技术。我们进一步提出了两种异常检测和分类方法,即矩阵轮廓算法和异常变压器,并将其应用于电力电子变流器数据集。具体来说,矩阵轮廓算法被证明非常适合作为一种可推广的方法来检测流时间序列数据中的实时异常。迭代矩阵配置文件的STUMPY python库实现用于创建检测器。创建一系列自定义过滤器并将其添加到检测器中,以调整其灵敏度、召回率和检测准确性。数值结果表明,通过简单的参数调整,该检测器在各种故障场景下都具有较高的精度和性能。
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A Robust and Explainable Data-Driven Anomaly Detection Approach For Power Electronics
Timely and accurate detection of anomalies in power electronics is becoming increasingly critical for maintaining complex production systems. Robust and explainable strategies help decrease system downtime and preempt or mitigate infrastructure cyberattacks. This work begins by explaining the types of uncertainty present in current datasets and machine learning algorithm outputs. Three techniques for combating these uncertainties are then introduced and analyzed. We further present two anomaly detection and classification approaches, namely the Matrix Profile algorithm and anomaly transformer, which are applied in the context of a power electronic converter dataset. Specifically, the Matrix Profile algorithm is shown to be well suited as a generalizable approach for detecting real-time anomalies in streaming time-series data. The STUMPY python library implementation of the iterative Matrix Profile is used for the creation of the detector. A series of custom filters is created and added to the detector to tune its sensitivity, recall, and detection accuracy. Our numerical results show that, with simple parameter tuning, the detector provides high accuracy and performance in a variety of fault scenarios.
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