Modeling a Fault Detection Predictor in Compressor using Machine Learning Approach based on Acoustic Sensor Data

被引:0
|
作者
Divya, M. N. [1 ,2 ]
Narayanappa, C. K. [3 ]
Gangadharaiah, S. L. [4 ]
机构
[1] VTU, MSRIT, VTU Res Ctr, Belagavi, Karnataka, India
[2] REVA Univ, Sch ECE, Bengaluru, India
[3] MS Ramaiah Inst Technol, Dept Med Elect, Bangalore, Karnataka, India
[4] MS Ramaiah Inst Technol, Dept Elect & Commun, Bengaluru, India
关键词
Air-compressor; fault detection; LSTM; multi-layer perception; ANN; acoustic sensor data; SYSTEM; MAINTENANCE; RELIABILITY;
D O I
10.14569/IJACSA.2021.0120973
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Proper functioning of the air compressor ensures stability for many critical systems. The ill-effect of the breakdown caused by the wear and tear in the system can be mitigated if there exists an effective automated fault classification system. Traditionally, the simulation-based methods help to extend to identify the faults; however, those systems are not so effective enough to build real-time adaptive methods for the fault detection and its type. This paper proposes an effective model for the fault classification in the air compressor based on the real-time empirical acoustic sensor time-series data were taken on a sampling frequency of 50Khz. In the proposed work, the time-series datais transformed into the frequency domain using fast Fourier transforms,where half of the signals are considered due to its symmetric representation. Afterward, a masking operation is carried out to extract significant feature vectors fed to the multilayer perception neural network The uniqueness of the proposed system is that it requires less trainable parameters, thus reduces the training time and imposes lower memory overhead. The model is benchmarked with performance metric accuracy, and it is found that the proposed masked feature set-based MLP-ANN exhibits an accuracy of 91.32% In contrast, the LSTM based fault classification model gives only 83.12% accuracy, takes more training time, and consumes more memory. Thus, the proposed model is realistic enough to be considered a real-time monitoring system of the fault and control. However, other performance metrics like precision, recall, and Fl-Score are also promising with the LSTM based fault classifier.
引用
下载
收藏
页码:650 / 667
页数:18
相关论文
共 50 条
  • [1] A Machine Learning approach to fault detection in transformers by using vibration data
    Tavakoli, A.
    De Maria, L.
    Valecillos, B.
    Bartalesi, D.
    Garatti, S.
    Bittanti, S.
    IFAC PAPERSONLINE, 2020, 53 (02): : 13656 - 13661
  • [2] Data Fault Detection in Wireless Sensor Networks Using Machine Learning Techniques
    Priya, P. Indira
    Muthurajkumar, S.
    Daisy, S. Sheeba
    WIRELESS PERSONAL COMMUNICATIONS, 2022, 122 (03) : 2441 - 2462
  • [3] Data Fault Detection in Wireless Sensor Networks Using Machine Learning Techniques
    P. Indira Priya
    S. Muthurajkumar
    S. Sheeba Daisy
    Wireless Personal Communications, 2022, 122 : 2441 - 2462
  • [4] Fault Detection in Wireless Sensor Networks: A Machine Learning Approach
    Warriach, Ehsan Ullah
    Tei, Kenji
    2013 IEEE 16TH INTERNATIONAL CONFERENCE ON COMPUTATIONAL SCIENCE AND ENGINEERING (CSE 2013), 2013, : 758 - 765
  • [5] Acoustic signal based fault detection on belt conveyor idlers using machine learning
    Liu, Xiangwei
    Pei, Deli
    Lodewijks, Gabriel
    Zhao, Zhangyan
    Mei, Jie
    ADVANCED POWDER TECHNOLOGY, 2020, 31 (07) : 2689 - 2698
  • [6] A fault detection approach based on machine learning models
    Castañon, LEG
    Ortiz, RJC
    Morales-Menéndez, R
    Ramírez, R
    MICAI 2005: ADVANCES IN ARTIFICIAL INTELLIGENCE, 2005, 3789 : 583 - 592
  • [7] OLTC Fault detection Based on Acoustic Emission and Supported by Machine Learning
    Cichon, Andrzej
    Wlodarz, Michal
    ENERGIES, 2024, 17 (01)
  • [8] Data processing and augmentation of acoustic array signals for fault detection with machine learning
    Janssen, L. A. L.
    Arteaga, I. Lopez
    JOURNAL OF SOUND AND VIBRATION, 2020, 483
  • [9] Detection of acoustic signals from Distributed Acoustic Sensor data with Random Matrix Theory and their classification using Machine Learning
    Bencharif, Billel Alla Eddine
    Olcer, Ibrahim
    Ozkan, Erkan
    Cesur, Berke
    Aygul, Cem
    SPIE FUTURE SENSING TECHNOLOGIES (2020), 2020, 11525
  • [10] Hybrid Learning Approach to Sensor Fault Detection with Flight Test Data
    de Silva, Brian M.
    Callaham, Jared
    Jonker, Jonathan
    Goebel, Nicholas
    Klemisch, Jennifer
    McDonald, Darren
    Hicks, Nathan
    Kutz, J. Nathan
    Brunton, Steven L.
    Aravkin, Aleksandr Y.
    AIAA JOURNAL, 2021, 59 (09) : 3490 - 3503