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HYDRAULIC SYSTEM FAULT DIAGNOSIS BASED ON EMD AND IMPROVED PSO-ELMAN ANN

机译:基于EMD和改进的PSO-ELMAN神经网络的液压系统故障诊断

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摘要

The element parameters of engineering machinery hydraulic system are detected, the fault eigenvector is extracted, and the information is applied to neural network fault diagnosis. Experience mode decomposition (EMD) is used to extract fault characteristic vectors in this paper, combined with the pressure, temperature and flow rate of dominant signal as neural network's inputs. In addition, the paper improves the Elman neural network learning algorithm by the PSO algorithm. It can effectively increase network convergence rate and computing power. The particle swarm is used to optimize Elman neural network weights and the threshold value and then applied in the fault diagnosis system by training the network. The results show that the method increases the neural network convergence rate and reduces diagnoses error.
机译:检测工程机械液压系统的要素参数,提取故障特征向量,并将其应用于神经网络故障诊断。本文将经验模式分解(EMD)结合主信号的压力,温度和流量作为神经网络的输入,提取故障特征向量。另外,本文通过PSO算法对Elman神经网络学习算法进行了改进。它可以有效地提高网络收敛速度和计算能力。粒子群算法用于优化Elman神经网络权重和阈值,然后通过训练网络将其应用于故障诊断系统。结果表明,该方法提高了神经网络的收敛速度,减少了诊断错误。

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