Litcius/Paper detail

A Fault Diagnosis Method of Rotating Machinery Based on One-Dimensional, Self-Normalizing Convolutional Neural Networks

Jingli Yang, Shuangyan Yin, Yongqi Chang, Tianyu Gao

2020Sensors26 citationsDOIOpen Access PDF

Abstract

Aiming at the fault diagnosis issue of rotating machinery, a novel method based on the deep learning theory is presented in this paper. By combining one-dimensional convolutional neural networks (1D-CNN) with self-normalizing neural networks (SNN), the proposed method can achieve high fault identification accuracy in a simple and compact architecture configuration. By taking advantage of the self-normalizing properties of the activation function SeLU, the stability and convergence of the fault diagnosis model are maintained. By introducing α -dropout mechanism twice to regularize the training process, the overfitting problem is resolved and the generalization capability of the model is further improved. The experimental results on the benchmark dataset show that the proposed method possesses high fault identification accuracy and excellent cross-load fault diagnosis capability.

Topics & Concepts

OverfittingFault (geology)Convolutional neural networkBenchmark (surveying)Artificial intelligenceComputer scienceGeneralizationDropout (neural networks)Process (computing)Identification (biology)Artificial neural networkActivation functionConvergence (economics)Pattern recognition (psychology)AlgorithmMachine learningMathematicsBotanyMathematical analysisEconomic growthGeodesyBiologyEconomicsOperating systemGeographyGeologySeismologyMachine Fault Diagnosis TechniquesEngineering Diagnostics and ReliabilityFault Detection and Control Systems