공기압축기의 이상 진단을 위한 딥러닝 기반 분석

Translated title of the contribution: Deep Learning-Based Analysis for Abnormal Diagnosis of Air Compressors

Mingyu Kang, Yohwan Hyun, Chibum Lee

Research output: Contribution to journalArticlepeer-review

Abstract

Due to recent development of sensor technology and IoT, research is being actively conducted on PHM (Prognostics and Health Management), a methodology that collects equipment or system status information and determines maintenance using diagnosis and prediction techniques. Among various research studies, research on anomaly detection technology that detects abnormalities in assets through data is becoming more important due to the nature of industrial sites where it is difficult to obtain failure data. Conventional machine learning-based and statistical-based models such as PCA, KNN, MD, and iForest involve human intervention in the data preprocessing process. Thus, they are not suitable for time series data. Recently, deep learning-based anomaly detection models with better performances than conventional machine learning models are being developed. In particular, several models with improved performance by fusing time series data with LSTM, AE (Autoencoder), VAE (Variational Auto Encoder), and GAN (Generative Adversarial Network) are attracting attention as anomaly detection models for time series data. In the present study, we present a method that uses Likelihood to improve the evaluation method of existing models.

Translated title of the contributionDeep Learning-Based Analysis for Abnormal Diagnosis of Air Compressors
Original languageKorean
Pages (from-to)209-215
Number of pages7
JournalJournal of the Korean Society for Precision Engineering
Volume39
Issue number3
DOIs
StatePublished - 2022

Keywords

  • Air compressor
  • Anomaly detection
  • Deep learning
  • Mahalanobis distance
  • Multivariate data
  • Prognostics and health management

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