Patrizi Gabriele, Garzon Alfonso Cristian, Calandroni Leandro, Bartolini Alessandro, Iturrino Garcia Carlos, Paolucci Libero, Grasso Francesco, Ciani Lorenzo
Department of Information Engineering, University of Florence, Via di Santa Marta, 3, 50139 Florence, Italy.
Sensors (Basel). 2024 Sep 6;24(17):5807. doi: 10.3390/s24175807.
The problem of Power Quality analysis is becoming crucial to ensuring the proper functioning of complex systems and big plants. In this regard, it is essential to rapidly detect anomalies in voltage and current signals to ensure a prompt response and maximize the system's availability with the minimum maintenance cost. In this paper, anomaly detection algorithms based on machine learning, such as One Class Support Vector Machine (OCSVM), Isolation Forest (IF), and Angle-Based Outlier Detection (ABOD), are used as a first tool for rapid and effective clustering of the measured voltage and current signals directly on-line on the sensing unit. If the proposed anomaly detection algorithm detects an anomaly, further investigations using suitable classification algorithms are required. The main advantage of the proposed solution is the ability to rapidly and efficiently detect different types of anomalies with low computational complexity, allowing the implementation of the algorithm directly on the sensor node used for signal acquisition. A suitable experimental platform has been established to evaluate the advantages of the proposed method. All the different models were tested using a consistent set of hyperparameters and an output dataset generated from the principal component analysis technique. The best results achieved included models reaching 100% recall and a 92% F1 score.
电能质量分析问题对于确保复杂系统和大型工厂的正常运行变得至关重要。在这方面,快速检测电压和电流信号中的异常情况以确保迅速响应并以最低维护成本最大化系统可用性至关重要。本文中,基于机器学习的异常检测算法,如一类支持向量机(OCSVM)、孤立森林(IF)和基于角度的离群点检测(ABOD),被用作直接在传感单元上对测量的电压和电流信号进行快速有效聚类的首要工具。如果所提出的异常检测算法检测到异常,则需要使用合适的分类算法进行进一步调查。所提出解决方案的主要优点是能够以低计算复杂度快速有效地检测不同类型的异常,从而允许在用于信号采集的传感器节点上直接实现该算法。已建立一个合适的实验平台来评估所提方法的优点。所有不同模型均使用一组一致的超参数以及由主成分分析技术生成的输出数据集进行测试。取得的最佳结果包括模型达到100%的召回率和92%的F1分数。