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Research on Fault Diagnosis Method Based on RSAPSO-DBN

机译:基于RSAPSO-DBN的故障诊断方法研究

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In view of the fact that the existing traditional methods of mechanical equipment have a large dependence on the data signal processing method, this paper uses the Deep Belief Network (DBN) based fault diagnosis method. The DBN is made up of a number of restricted Restricted Boltzmann Machines (RBM). The last layer uses a back propagation network (BP network) to fine tune the network. DBN directly uses the original data as input to reduce the influence of human factors in feature extraction, but the excessive interference factors in the original data make the diagnosis result difficult to reach the ideal result. Therefore, in order to further improve the diagnostic accuracy of DBN, this paper proposes a random self-adapting particle swarm optimization algorithm (RSAPSO) to optimize the BP classifier of the last layer of DBN. Through simulation experiments, it is found that the use of particle swarm optimization DBN effectively improves the accuracy of fault diagnosis than the standard DBN.
机译:鉴于现有的机械设备传统方法对数据信号处理方法的依赖性很大,本文采用基于深信度网络(Deep Belief Network,DBN)的故障诊断方法。 DBN由许多受限制的Boltzmann机器(RBM)组成。最后一层使用反向传播网络(BP网络)对网络进行微调。 DBN直接使用原始数据作为输入,以减少人为因素对特征提取的影响,但是原始数据中过多的干扰因素使诊断结果难以达到理想的结果。因此,为了进一步提高DBN的诊断准确性,本文提出了一种随机自适应粒子群优化算法(RSAPSO)对DBN最后一层的BP分类器进行优化。通过仿真实验发现,与标准DBN相比,使用粒子群优化DBN可以有效提高故障诊断的准确性。

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