A Novel Methodology for Unsupervised Anomaly Detection in Industrial Electrical Systems

被引:0
|
作者
Carratu, Marco [1 ]
Gallo, Vincenzo [1 ]
Dello Iacono, Salvatore [2 ]
Sommella, Paolo [1 ]
Bartolini, Alessandro [3 ]
Grasso, Francesco [3 ]
Ciani, Lorenzo [3 ]
Patrizi, Gabriele [3 ]
机构
[1] Univ Salerno, Dept Ind Engn, I-84084 Fisciano, Italy
[2] Univ Brescia, Dept Engn, I-5123 Brescia, Italy
[3] Univ Florence, Dept Informat Engn, I-50139 Florence, Italy
关键词
Anomaly detection; fault detection; industrial power systems; machine learning; predictive maintenance (PdM);
D O I
10.1109/TIM.2023.3318684
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The recent development of highly automated machinery and intelligent industrial plants has increasingly enabled the continuous monitoring of their efficiency and condition, with the aim of maintaining high production efficiency and minimal malfunctions. Typical condition monitoring and fault detection applications are often achieved using acoustic and vibrational techniques, but the availability of distributed electrical measurements opens new opportunities for industrial fault detection with minimal impact on electrical systems. Even if artificial intelligence (AI)-based approaches can be used to model industrial equipment by means of measures made on electrical systems to which they are connected, machine learning algorithms have been demonstrated to be particularly adequate for this purpose due to the huge amount of data produced by interconnected sensors and devices. In this context, the aim of this work is to propose a new unsupervised analysis methodology for detecting anomalies in industrial machinery using electrical current values and other parameters measured on the power grid. The proposed framework is aimed at incorporating the advantages of machine learning algorithms and those of traditional analysis, optimizing their operation to improve performance and execution time; this also incorporates a methodology for analyzing the temporal dynamics of the anomaly based on short-time Fourier transform (STFT) to strengthen the performance of the detection. The results obtained showed excellent performance, both compared to the evaluations of a technical expert and to other methodologies used in the literature, with zero false positives (FPs) detected in all datasets tested and a negligible number of undetected outlier events, less than 4% of the total in the datasets.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Unsupervised Learning Approach for Anomaly Detection in Industrial Control Systems
    Choi, Woo-Hyun
    Kim, Jongwon
    APPLIED SYSTEM INNOVATION, 2024, 7 (02)
  • [2] MADICS: A Methodology for Anomaly Detection in Industrial Control Systems
    Perales Gomez, Angel Luis
    Fernandez Maimo, Lorenzo
    Huertas Celdran, Alberto
    Garcia Clemente, Felix J.
    SYMMETRY-BASEL, 2020, 12 (10):
  • [3] Unsupervised Anomaly Detection for Network Data Streams in Industrial Control Systems
    Liu, Limengwei
    Hu, Modi
    Kang, Chaoqun
    Li, Xiaoyong
    INFORMATION, 2020, 11 (02)
  • [4] A Novel Unsupervised Anomaly Detection Framework for Early Fault Detection in Complex Industrial Settings
    Hinojosa-Palafox, Eduardo Antonio
    Rodriguez-Elias, Oscar Mario
    Pacheco-Ramirez, Jesus Horacio
    Hoyo-Montano, Jose Antonio
    Perez-Patricio, Madain
    Espejel-Blanco, Daniel Fernando
    IEEE ACCESS, 2024, 12 : 181823 - 181845
  • [5] Unsupervised industrial anomaly detection with diffusion models
    Xu, Haohao
    Xu, Shuchang
    Yang, Wenzhen
    JOURNAL OF VISUAL COMMUNICATION AND IMAGE REPRESENTATION, 2023, 97
  • [6] Anomaly Detection on Industrial Electrical Systems using Deep Learning
    Carratu, Marco
    Gallo, Vincenzo
    Pietrosanto, Antonio
    Sommella, Paolo
    Patrizi, Gabriele
    Bartolini, Alessandro
    Ciani, Lorenzo
    Catelani, Marcantonio
    Grasso, Francesco
    2023 IEEE INTERNATIONAL INSTRUMENTATION AND MEASUREMENT TECHNOLOGY CONFERENCE, I2MTC, 2023,
  • [7] A Survey on Unsupervised Anomaly Detection Algorithms for Industrial Images
    Cui, Yajie
    Liu, Zhaoxiang
    Lian, Shiguo
    IEEE ACCESS, 2023, 11 : 55297 - 55315
  • [8] RUAD: Unsupervised anomaly detection in HPC systems
    Molan, Martin
    Borghesi, Andrea
    Cesarini, Daniele
    Benini, Luca
    Bartolini, Andrea
    FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2023, 141 : 542 - 554
  • [9] Unsupervised Contextual Anomaly Detection for Database Systems
    Li, Sainan
    Yin, Qilei
    Li, Guoliang
    Li, Qi
    Liu, Zhuotao
    Zhu, Jinwei
    PROCEEDINGS OF THE 2022 INTERNATIONAL CONFERENCE ON MANAGEMENT OF DATA (SIGMOD '22), 2022, : 788 - 802
  • [10] An unsupervised anomaly detection approach based on industrial big data
    Zhang, Cong
    Zhu, Yongsheng
    Ren, Zhijun
    Chen, Kaida
    2019 2ND WORLD CONFERENCE ON MECHANICAL ENGINEERING AND INTELLIGENT MANUFACTURING (WCMEIM 2019), 2019, : 703 - 709