Abstract

In a complex system, condition monitoring (CM) can collect the system working status. The condition is mainly sensed by the pre-deployed sensors in/on the system. Most existing works study how to utilize the condition information to predict the upcoming anomalies, faults, or failures. There is also some research which focuses on the faults or anomalies of the sensing element (i.e., sensor) to enhance the system reliability. However, existing approaches ignore the correlation between sensor selecting strategy and data anomaly detection, which can also improve the system reliability. To address this issue, we study a new scheme which includes sensor selection strategy and data anomaly detection by utilizing information theory and Gaussian Process Regression (GPR). The sensors that are more appropriate for the system CM are first selected. Then, mutual information is utilized to weight the correlation among different sensors. The anomaly detection is carried out by using the correlation of sensor data. The sensor data sets that are utilized to carry out the evaluation are provided by National Aeronautics and Space Administration (NASA) Ames Research Center and have been used as Prognostics and Health Management (PHM) challenge data in 2008. By comparing the two different sensor selection strategies, the effectiveness of selection method on data anomaly detection is proved.

Highlights

  • In modern industry, systems are becoming more and more complex, especially for the machine system

  • After the system condition collected by pre-deployed sensors, the sensor data sets can be utilized for the following analysis

  • In order to evaluate the effectiveness of sensor selection strategy on data anomaly detection, we first calculate the mutual information among the sensors in the two groups, respectively

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Summary

Introduction

Systems are becoming more and more complex, especially for the machine system. The operational, environmental and working conditions of the aircraft engine can be monitored by utilizing these sensors. This article is the extension of our previous work [27] and aims at discovering the correlation between sensor selection strategy and data anomaly detection. The influence of sensor selection strategy on data anomaly detection is studied in this article. In this way, the correctness of condition data can help enhance the result of fault diagnosis and failure prognosis. To prove the influence of sensor selection strategy on data anomaly detection, mutual information is utilized to find the target sensor and the training sensor. The claimed correlation between sensor selection strategy and data anomaly detection is one typical problem in the engineering system.

Aircraft Engine for Condition Monitoring
Permutation Entropy
Mutual Information
Gaussian Process Regression
Anomaly Detection Metrics
Experimental Results and Analysis
Sensor Data Description
Sensor Selection Procedure
Data Anomaly Detection and Analysis
Conclusions
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