Anomaly Detection for Aviation Safety Based on an Improved KPCA Algorithm

Author:

Zhang Xiaoyu1ORCID,Chen Jiusheng1ORCID,Gan Quan1

Affiliation:

1. College of Electronics, Information & Automation, Civil Aviation University of China, Tianjin 300300, China

Abstract

Thousands of flights datasets should be analyzed per day for a moderate sized fleet; therefore, flight datasets are very large. In this paper, an improved kernel principal component analysis (KPCA) method is proposed to search for signatures of anomalies in flight datasets through the squared prediction error statistics, in which the number of principal components and the confidence for the confidence limit are automatically determined by OpenMP-based K-fold cross-validation algorithm and the parameter in the radial basis function (RBF) is optimized by GPU-based kernel learning method. Performed on Nvidia GeForce GTX 660, the computation of the proposed GPU-based RBF parameter is 112.9 times (average 82.6 times) faster than that of sequential CPU task execution. The OpenMP-based K-fold cross-validation process for training KPCA anomaly detection model becomes 2.4 times (average 1.5 times) faster than that of sequential CPU task execution. Experiments show that the proposed approach can effectively detect the anomalies with the accuracy of 93.57% and false positive alarm rate of 1.11%.

Funder

National Natural Science Foundation of China

Publisher

Hindawi Limited

Subject

Electrical and Electronic Engineering,General Computer Science,Signal Processing

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1. Anomaly Detection Model-Based Analysis of Aircraft Flight Data;2024 IEEE 2nd International Conference on Control, Electronics and Computer Technology (ICCECT);2024-04-26

2. Overview of Application in Data Mining Techniques to QAR Data Ansys;2022 2nd International Conference on Big Data Engineering and Education (BDEE);2022-08

3. Anomaly Detection and Cause Analysis During Landing Approach Using Recurrent Neural Network;Journal of Aerospace Information Systems;2021-10

4. Fault Detection and Identification for Nonlinear Process Based on Inertia-Based KEPCA and a New Combined Monitoring Index;Journal of Electrical and Computer Engineering;2021-07-13

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