4.6 Article

Anomaly Detection Based on Time Series Data of Hydraulic Accumulator

Journal

SENSORS
Volume 22, Issue 23, Pages -

Publisher

MDPI
DOI: 10.3390/s22239428

Keywords

accumulator; pulsating pressure data; CNN; autoencoder; anomaly detection

Funding

  1. Autonomous Ship Technology Development Program - Ministry of Trade, Industry, and Energy (MOTIE, Korea) [K_G012001614002]
  2. National Research Foundation of Korea (NRF) - Ministry of Education [2022R1F1A1073764]
  3. National Research Foundation of Korea [2022R1F1A1073764] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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This study develops anomaly detection algorithms to detect abnormalities of pulsating pressure in hydraulic accumulators. The algorithms include threshold averaging algorithm, support vector machine (SVM), XGBoost, convolutional neural network (CNN), CNN autoencoder, and long short-term memory (LSTM) autoencoder models. The results show that these algorithms and models have high accuracy in detecting anomalies.
Although hydraulic accumulators play a vital role in the hydraulic system, they face the challenges of being broken by continuous abnormal pulsating pressure which occurs due to the malfunction of hydraulic systems. Hence, this study develops anomaly detection algorithms to detect abnormalities of pulsating pressure for hydraulic accumulators. A digital pressure sensor was installed in a hydraulic accumulator to acquire the pulsating pressure data. Six anomaly detection algorithms were developed based on the acquired data. A threshold averaging algorithm over a period based on the averaged maximum/minimum thresholds detected anomalies 2.5 h before the hydraulic accumulator failure. In the support vector machine (SVM) and XGBoost model that distinguish normal and abnormal pulsating pressure data, the SVM model had an accuracy of 0.8571 on the test set and the XGBoost model had an accuracy of 0.8857. In a convolutional neural network (CNN) and CNN autoencoder model trained with normal and abnormal pulsating pressure images, the CNN model had an accuracy of 0.9714, and the CNN autoencoder model correctly detected the 8 abnormal images out of 11 abnormal images. The long short-term memory (LSTM) autoencoder model detected 36 abnormal data points in the test set.

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