Research on Fault Diagnosis of Air Conditioner Based on Deep Learning

Zhiting Liu, Yuhua Wang, Yuexia Zhou
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引用次数: 1

Abstract

The essence of intelligent fault diagnosis is to classify the feature of faults by machine learning. It is difficult and key to extract fault characteristics of signals efficiently. The general feature extraction methods include time frequency domain feature extraction, Empirical Mode Decomposition (EMD), Wavelet Transform and Variational Mode Decomposition (VMD). However, these methods require a certain prior experience and require reasonable analysis and processing of the signals. In this paper, in order to effectively extract the fault characteristics of the  air conditioner's vibration signal, the stacked automatic encoder (SAE) is used to extract the feature of  air conditioner’s vibration signal, and the Softmax function is used to identify the  air conditioner's working condition. The SAE performs unsupervised learning on the signal, and Softmax function performs supervised learning on the signal. The number of hidden layers and the number of hidden layer's nodes  are determined through experiments. The effects of learning rate, learning rate decay, regularization, dropout, and batch size on the correct rate of the model in supervised learning and unsupervised learning are analyzed. Thereby realizing the fault diagnosis of the air conditioner. The recognition correct rate of deep learning model reached 99.92\%. The deep learning fault diagnosis method proposed in this paper is compared with EMD and SVM, VMD and SVM two kind of fault diagnosis methods.
基于深度学习的空调故障诊断研究
智能故障诊断的本质是通过机器学习对故障特征进行分类。有效地提取信号的故障特征是故障诊断的难点和关键。一般的特征提取方法包括时频域特征提取、经验模态分解(EMD)、小波变换和变分模态分解(VMD)。然而,这些方法需要一定的先验经验,需要对信号进行合理的分析和处理。为了有效提取空调振动信号的故障特征,本文采用堆叠式自动编码器(SAE)对空调振动信号进行特征提取,并采用Softmax函数对空调的工作状态进行识别。SAE对信号进行无监督学习,Softmax函数对信号进行监督学习。通过实验确定隐层数和隐层节点数。分析了有监督学习和无监督学习中学习率、学习率衰减、正则化、dropout和批大小对模型正确率的影响。从而实现对空调的故障诊断。深度学习模型的识别正确率达到99.92%。本文提出的深度学习故障诊断方法与EMD和SVM、VMD和SVM两种故障诊断方法进行了比较。
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