Incipient fault detection of sensors used in wastewater treatment plants based on deep dropout neural network

被引:0
|
作者
Barasha Mali
Shahedul Haque Laskar
机构
[1] National Institute of Technology Silchar,
[2] Sant Longowal Institute of Engineering and Technology,undefined
来源
SN Applied Sciences | 2020年 / 2卷
关键词
Wastewater treatment plant; Sensors; Incipient fault; Neural network; Deep learning; Dropout;
D O I
暂无
中图分类号
学科分类号
摘要
Risk of sudden collapse of any industrial plant increases if small magnitude incipient faults are not detected at an early stage. The paper proposes an optimized Monte Carlo deep dropout neural network (MC-DDNN) to identify incipient faults of sensors installed in wastewater treatment plants using the historical dataset of the plant . Such faults usually remain invisible or are misinterpreted as noise signals due to their small magnitude but can be overcome by the proposed method. MC-DDNN easily identifies the incipient faults of sensors installed in a simulated wastewater treatment benchmark model as well as sensors installed in a real industrial plant. The tabulated results show the estimated probability of incipient fault in terms of percentage probability as detected by the MC-DDNN. The dissolved oxygen (DO) sensor incipient faults in benchmark simulation model (BSM2) are detected with probability ranging from 4.9% to 23.4% and DO, pH and mixed liquor suspended solids (MLSS) sensors of effluent treatment plant (ETP) are detected with probability ranging from 0.07% to 11.43%. This estimated probability of faults indicates the small magnitude of the faults and hence proves that the method is capable of identifying faults at an early stage to issue warnings for early maintenance of the plant.
引用
收藏
相关论文
共 50 条
  • [21] A fast training neural network and its updation for incipient fault detection and diagnosis
    Rengaswamy, R
    Venkatasubramanian, V
    COMPUTERS & CHEMICAL ENGINEERING, 2000, 24 (2-7) : 431 - 437
  • [22] Deep Neural Networks-based Air Data Sensors Fault Detection for Aircraft
    Dong, Yiqun
    Wen, Jiongran
    Zhang, Youmin
    Ai, Jianliang
    PROCEEDINGS OF THE 33RD CHINESE CONTROL AND DECISION CONFERENCE (CCDC 2021), 2021, : 442 - 447
  • [23] Sliding window neural network based sensing of bacteria in wastewater treatment plants
    Alharbi, Mohammed
    Hong, Pei-Ying
    Laleg-Kirati, Taous-Meriem
    JOURNAL OF PROCESS CONTROL, 2022, 110 : 35 - 44
  • [24] Online detection for bearing incipient fault based on deep transfer learning
    Mao, Wentao
    Ding, Ling
    Tian, Siyu
    Liang, Xihui
    MEASUREMENT, 2020, 152
  • [25] Series Arc Fault Detection Based on Random Forest and Deep Neural Network
    Jiang, Jun
    Li, Wei
    Wen, Zhe
    Bie, Yifan
    Schwarz, Harald
    Zhang, Chaohai
    IEEE SENSORS JOURNAL, 2021, 21 (15) : 17171 - 17179
  • [26] A Deep Double-Convolutional Neural Network-Based Fault Detection
    Wang, Xiuli
    Li, Zhongxin
    Liang, Jing
    Li, Yang
    2023 IEEE 2ND INDUSTRIAL ELECTRONICS SOCIETY ANNUAL ON-LINE CONFERENCE, ONCON, 2023,
  • [27] Fault detection method of power insulator based on deep convolution neural network
    Wang Y.
    Zhang W.
    Distributed Generation and Alternative Energy Journal, 2021, 36 (02): : 97
  • [28] Fault detection of dissolved oxygen sensor in wastewater treatment plants
    Li, Xuemeng
    Chai, Wei
    Liu, Tong
    Qiao, Junfei
    IECON 2020: THE 46TH ANNUAL CONFERENCE OF THE IEEE INDUSTRIAL ELECTRONICS SOCIETY, 2020, : 225 - 230
  • [29] Novel Fault Detection Approach of Biological Wastewater Treatment Plants
    Baklouti, Imen
    Mansouri, Majdi
    Ben Hamida, Ahmed
    Nounou, Hazem
    Nounou, Mohamed
    2018 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS (SMC), 2018, : 2669 - 2674
  • [30] Wastewater treatment sensor fault detection using RBF neural network with set membership estimation
    Chi, Binbin
    Guo, Longhang
    PROCEEDINGS OF THE 2019 31ST CHINESE CONTROL AND DECISION CONFERENCE (CCDC 2019), 2019, : 2685 - 2690