Author:
Gareev Albert,Protsenko Vladimir,Stadnik Dmitriy,Greshniakov Pavel,Yuzifovich Yuriy,Minaev Evgeniy,Gimadiev Asgat,Nikonorov Artem
Abstract
This paper examines the effectiveness of neural network algorithms for hydraulic system fault detection and a novel neural network architecture is suggested. The proposed gated convolutional autoencoder was trained on a simulated training set augmented with just 0.2% data from the real test bench, dramatically reducing the time needed to spend with the actual hardware to build a high-quality fault detection model. Our fault detection model was validated on a test bench and showed accuracy of more than 99% of correctly recognized hydraulic system states with a 10-s sampling window. This model can be also leveraged to examine the decision boundaries of the classifier in the two-dimensional embedding space.
Funder
Ministry of Education and Science of the Russian Federation
Russian Foundation for Basic Research
Image Processing Systems Institute ‒ Branch of the Federal Scientific Research Centre “Crystallography and Photonics” of the Russian Academy of Sciences
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Cited by
13 articles.
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