شماره ركورد كنفرانس :
5513
عنوان مقاله :
Bearing Fault Detection Based on Audio Signal Using Pre Trained Deep Neural Networks
پديدآورندگان :
Rostami Mohammad Reza mohammad79.mr23@gmail.com Electrical Engineering Department, Hamedan University of Technology Hamedan 6516913733, Iran , Alipoor Ghasem alipoor@hut.ac.ir Electrical Engineering Department, Hamedan University of Technology Hamedan 6516913733, Iran
كليدواژه :
Fault Detection , Roller Bearing , Deep Learning , Audio signals , Pre , Training
عنوان كنفرانس :
نخستين همايش ملي هوش مصنوعي و فناوري هاي آينده نگر
چكيده فارسي :
In the current study, we delve into advanced deep learning techniques, focusing on Convolutional Neural Network (CNN) and deep Multi-Layer Perceptron (MLP) architectures to enhance fault detection in crucial machine components such as rolling bearings. The main idea is to utilize a Stacked Auto-Encoder (SAE) to initialize the model and improve its feature extraction capability. Moreover, departing from traditional vibration-based analyses, we pioneer the use of audio signals for fault detection. These ideas are investigated for CNN and MLP architectures, and the performance of the pre-trained models is compared with that of two other models, namely models with the same architectures trained from scratch and the SAE encoder equipped with a softmax classifier. Comprehensive testing and comparison reveal that integrating a pre-trained SAE model into the Deep Neural Network (DNN) can result in remarkable error detection through prior feature learning
چكيده لاتين :
In the current study, we delve into advanced deep learning techniques, focusing on Convolutional Neural Network (CNN) and deep Multi-Layer Perceptron (MLP) architectures to enhance fault detection in crucial machine components such as rolling bearings. The main idea is to utilize a Stacked Auto-Encoder (SAE) to initialize the model and improve its feature extraction capability. Moreover, departing from traditional vibration-based analyses, we pioneer the use of audio signals for fault detection. These ideas are investigated for CNN and MLP architectures, and the performance of the pre-trained models is compared with that of two other models, namely models with the same architectures trained from scratch and the SAE encoder equipped with a softmax classifier. Comprehensive testing and comparison reveal that integrating a pre-trained SAE model into the Deep Neural Network (DNN) can result in remarkable error detection through prior feature learning.