Author:
Chen Jie,Xu Qingshan,Guo Yingchao,Chen Runfeng
Abstract
The faults of the landing gear retraction/extension(R/E) system can result in the deterioration of an aircraft’s maneuvering conditions; how to identify the faults of the landing gear R/E system has become a key issue for ensuring aircraft take-off and landing safety. In this paper, we aim to solve this problem by proposing the 1-D dilated convolutional neural network (1-DDCNN). Aiming at developing the limited feature information extraction and inaccurate diagnosis of the traditional 1-DCNN with a single feature, the 1-DDCNN selects multiple feature parameters to realize feature integration. The performance of the 1-DDCNN in feature extraction is explored. Importantly, using padding dilated convolution to multiply the receptive field of the convolution kernel, the 1-DDCNN can completely retain the feature information in the original signal. Experimental results demonstrated that the proposed method has high accuracy and robustness, which provides a novel idea for feature extraction and fault diagnosis of the landing gear R/E system.
Funder
National Nature Science Foundation of China
Aeronautical Science Foundation of China
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference17 articles.
1. Deep learning;LeCun;Nature,2015
2. Deep learning in neural networks: An overview;Schmidhuber;Neural Netw.,2015
3. Generalization and network design strategies;LeCun;Connect. Perspect.,1989
4. Gligorijevic, J., Gajic, D., and Brkovic, A. Online Condition Monitoring of Bearings to Support Total Productive Maintenance in the Packaging Materials Industry. Sensors, 2016. 16.
5. Convolutional neural network based fault detection for rotating machinery;Janssens;J. Sound Vib.,2016
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