One-Class Convolutional Neural Networks for Water-Level Anomaly Detection

被引:2
|
作者
Nicholaus, Isack Thomas [1 ]
Lee, Jun-Seoung [2 ]
Kang, Dae-Ki [1 ]
机构
[1] Dongseo Univ, Dept Comp Engn, 47 Jurye Ro, Busan 47011, South Korea
[2] Infran R&D Ctr, 12th Flr KT Mok Dong Tower 201 Mokdongseo Ro, Seoul 07994, South Korea
基金
新加坡国家研究基金会;
关键词
convolutional neural network; one-class classification; anomaly detection; water-level anomaly; synthetic data; SUPPORT;
D O I
10.3390/s22228764
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Companies that own water systems to provide water storage and distribution services always strive to enhance and efficiently distribute water to different places for various purposes. However, these water systems are likely to face problems ranging from leakage to destruction of infrastructures, leading to economic and life losses. Thus, apprehending the nature of abnormalities that may interrupt or aggravate the service or cause the destruction is at the core of their business model. Normally, companies use sensor networks to monitor these systems and record operational data including any fluctuations in water levels considered abnormalities. Detecting abnormalities allows water companies to enhance the service's sustainability, quality, and affordability. This study investigates a 2D-CNN-based method for detecting water-level abnormalities as time-series anomaly pattern detection in the One-Class Classification (OCC) problem. Moreover, since abnormal data are usually scarce or unavailable, we explored a cheap method to generate synthetic temporal data and use them as a target class in addition to the normal data to train the CNN model for feature extraction and classification. These settings allow us to train a model to learn relevant pattern representations of the given classes in a binary classification fashion using cross-entropy loss. The ultimate goal of these investigations is to determine if any 2D-CNN-based model can be trained from scratch or if transfer learning of any pre-trained CNN model can be partially trained and used as the base network for one-class classification. The evaluation of the proposed One-Class CNN and previous approaches have shown that our approach has outperformed several state-of-the-art approaches by a significant margin. Additionally, in this paper, we mention two interesting findings: using synthetic data as the pseudo-class is a promising direction, and transfer learning should be dealt with considering that underfitting can happen because the transferred model is too complicated for training data.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] One-class graph neural networks for anomaly detection in attributed networks
    Xuhong Wang
    Baihong Jin
    Ying Du
    Ping Cui
    Yingshui Tan
    Yupu Yang
    [J]. Neural Computing and Applications, 2021, 33 : 12073 - 12085
  • [2] One-class graph neural networks for anomaly detection in attributed networks
    Wang, Xuhong
    Jin, Baihong
    Du, Ying
    Cui, Ping
    Tan, Yingshui
    Yang, Yupu
    [J]. NEURAL COMPUTING & APPLICATIONS, 2021, 33 (18): : 12073 - 12085
  • [3] Anomaly Detection for a Water Treatment System Based on One-Class Neural Network
    Boateng, Emmanuel Aboah
    Bruce, J. W.
    Talbert, Douglas A.
    [J]. IEEE ACCESS, 2022, 10 : 115179 - 115191
  • [4] SAOCNN: Self-Attention and One-Class Neural Networks for Hyperspectral Anomaly Detection
    Wang, Jinshen
    Ouyang, Tongbin
    Duan, Yuxiao
    Cui, Linyan
    [J]. REMOTE SENSING, 2022, 14 (21)
  • [5] One-Class Convolutional Neural Network
    Oza, Poojan
    Patel, Vishal M.
    [J]. IEEE SIGNAL PROCESSING LETTERS, 2019, 26 (02) : 277 - 281
  • [6] Evaluation of one-class algorithms for anomaly detection in home networks
    de Melo, Pedro H. A. D.
    Martins de Resende, Adriano Araujo
    Miani, Rodrigo Sanches
    Rosa, Pedro Frosi
    [J]. 2021 IEEE 33RD INTERNATIONAL CONFERENCE ON TOOLS WITH ARTIFICIAL INTELLIGENCE (ICTAI 2021), 2021, : 682 - 689
  • [7] Multi-Scale One-Class Recurrent Neural Networks for Discrete Event Sequence Anomaly Detection
    Wang, Zhiwei
    Chen, Zhengzhang
    Ni, Jingchao
    Liu, Hui
    Chen, Haifeng
    Tang, Jiliang
    [J]. KDD '21: PROCEEDINGS OF THE 27TH ACM SIGKDD CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2021, : 3726 - 3734
  • [8] Improving one-class SVM for anomaly detection
    Li, KL
    Huang, HK
    Tian, SF
    Xu, W
    [J]. 2003 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS, VOLS 1-5, PROCEEDINGS, 2003, : 3077 - 3081
  • [9] A NEW ONE-CLASS SVM FOR ANOMALY DETECTION
    Chen, Yuting
    Qian, Jing
    Saligrama, Ventatesh
    [J]. 2013 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2013, : 3567 - 3571
  • [10] Industrial Anomaly Detection and One-class Classification using Generative Adversarial Networks
    Lai, Y. T. K.
    Hu, J. S.
    Tsai, Y. H.
    Chiu, W. Y.
    [J]. 2018 IEEE/ASME INTERNATIONAL CONFERENCE ON ADVANCED INTELLIGENT MECHATRONICS (AIM), 2018, : 1444 - 1449