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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Design and Application of Deep Belief Network Based on Stochastic Adaptive Particle Swarm Optimization
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Design and Application of Deep Belief Network Based on Stochastic Adaptive Particle Swarm Optimization

机译:基于随机自适应粒子群优化的深度信仰网络的设计与应用

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摘要

Due to the problem of poor recognition of data with deep fault attribute in the case of traditional superficial network under semisupervised and weak labeling, a deep belief network (DBN) was proposed for deep fault detection. Due to the problems of deep belief network (DBN) network structure and training parameter selection, a stochastic adaptive particle swarm optimization (RSAPSO) algorithm was proposed in this study to optimize the DBN. A stochastic criterion was proposed in this method to make the particles jump out of the original position search with a certain probability and reduce the probability of falling into the local optimum. The RSAPSO-DBN method used sample data to train the DBN and used the final diagnostic error rate to construct the fitness value function of the particle swarm algorithm. By comparing the minimum fitness value of each particle to determine the advantages and disadvantages of the model, the corresponding minimum fitness value was selected. Using the number of network nodes, learning rate, and momentum parameters, the optimal DBN classifier was generated for fault diagnosis. Finally, the validity of the method was verified by bearing data from Case Western Reserve University in the United States and data collected in the laboratory. Comparing BP (BP neural network), support vector machine, and heterogeneous particle swarm optimization DBN methods, the proposed method demonstrated the highest recognition rates of 87.75% and 93.75%. This proves that the proposed method possesses universality in fault diagnosis and provides new ideas for data identification with different fault depth attributes.
机译:由于在半化和弱标签下传统肤质网络的情况下对具有深度故障属性的数据识别不良的问题,提出了深度故障检测的深度信念网络(DBN)。由于深度信仰网络(DBN)网络结构和训练参数选择,在该研究中提出了一种随机自适应粒子群优化(RSAPSO)算法,以优化DBN。在该方法中提出了一种随机标准,使粒子以某种概率跳出原始位置搜索,并降低落入局部最佳的可能性。 RSAPSO-DBN方法使用样本数据来训练DBN并使用最终的诊断误差率来构造粒子群算法的适应性值函数。通过比较每种颗粒的最小健身值来确定模型的优点和缺点,选择了相应的最小健身值。使用网络节点的数量,学习率和动量参数,为故障诊断产生最佳DBN分类器。最后,通过在美国案例西部储备大学的轴承数据和在实验室收集的数据来验证该方法的有效性。比较BP(BP神经网络),支持向量机和异质粒子群优化DBN方法,所提出的方法证明了87.75%和93.75%的最高识别率。这证明了该方法具有普遍性的故障诊断,并为具有不同故障深度属性的数据识别提供了新的思路。

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