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基于1DDCNN和PCA信息融合的滚动轴承FLHI智能提取方法 被引量:3
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作者 罗鹏 胡茑庆 +2 位作者 沈国际 程哲 周子骏 《振动与冲击》 EI CSCD 北大核心 2021年第8期143-149,共7页
滚动轴承故障预测方法的核心在于健康指数(HI)的构建,绝大部分已经提出的HI都是基于专家经验人工构造的,且往往只能适用于部件某一特定退化阶段的趋势分析。为解决上述问题,结合振动信号的一维特性,提出一种基于一维深度卷积神经网络(1D... 滚动轴承故障预测方法的核心在于健康指数(HI)的构建,绝大部分已经提出的HI都是基于专家经验人工构造的,且往往只能适用于部件某一特定退化阶段的趋势分析。为解决上述问题,结合振动信号的一维特性,提出一种基于一维深度卷积神经网络(1DDCNN)结合主成分分析(PCA)的滚动轴承全寿命健康指数(FLHI)智能提取法;利用1DDCNN对原始时域信号自适应提取特征,深度挖掘能够表征研究对象健康状态的退化特征矩阵,而后利用PCA法对提取的特征矩阵进行融合,从而实现研究对象的FLHI智能提取。滚动轴承试验振动信号实测结果表明,相较于传统健康指数,FLHI在趋势性、鲁棒性和单调性方面更具有优势。 展开更多
关键词 一维深度卷积神经网络(1ddcnn) 主成分分析(PCA) 全寿命健康指数(FLHI) 智能提取
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Research on the mechanical fault diagnosis method based on sound signal and IEMD-DDCNN
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作者 Haoning Pu Zhan Wen +4 位作者 Xiulan Sun Lemei Han Yanhe Na Hantao Liu Wenzao Li 《International Journal of Intelligent Computing and Cybernetics》 EI 2023年第3期629-646,共18页
Purpose–The purpose of this paper is to provide a shorter time cost,high-accuracy fault diagnosis method for water pumps.Water pumps are widely used in industrial equipment and their fault diagnosis is gaining increa... Purpose–The purpose of this paper is to provide a shorter time cost,high-accuracy fault diagnosis method for water pumps.Water pumps are widely used in industrial equipment and their fault diagnosis is gaining increasing attention.Considering the time-consuming empirical mode decomposition(EMD)method and the more efficient classification provided by the convolutional neural network(CNN)method,a novel classification method based on incomplete empirical mode decomposition(IEMD)and dual-input dual-channel convolutional neural network(DDCNN)composite data is proposed and applied to the fault diagnosis of water pumps.Design/methodology/approach–This paper proposes a data preprocessing method using IEMD combined with mel-frequency cepstrum coefficient(MFCC)and a neural network model of DDCNN.First,the sound signal is decomposed by IEMD to get numerous intrinsic mode functions(IMFs)and a residual(RES).Several IMFs and one RES are then extracted by MFCC features.Ultimately,the obtained features are split into two channels(IMFs one channel;RES one channel)and input into DDCNN.Findings–The Sound Dataset for Malfunctioning Industrial Machine Investigation and Inspection(MIMII dataset)is used to verify the practicability of the method.Experimental results show that decomposition into an IMF is optimal when taking into account the real-time and accuracy of the diagnosis.Compared with EMD,51.52% of data preprocessing time,67.25% of network training time and 63.7%of test time are saved and also improve accuracy.Research limitations/implications–This method can achieve higher accuracy in fault diagnosis with a shorter time cost.Therefore,the fault diagnosis of equipment based on the sound signal in the factory has certain feasibility and research importance.Originality/value–This method provides a feasible method for mechanical fault diagnosis based on sound signals in industrial applications. 展开更多
关键词 Fault identification Neural nets ddcnn IEMD MFCC
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