Chi Zhang’s research while affiliated with Nanjing Tech University and other places

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Publications (2)


Fitness curves of the six functions.
The IDBO-DBN-ELM fault diagnosis model.
The flowchart of IVMD-GDE-DBN-ELM diagnosis model.
Fault diagnosis experiment platform.
Time-domain waveform and spectrum of vibration signal.

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Improved DBO-VMD and optimized DBN-ELM based fault diagnosis for control valve
  • Article
  • Publisher preview available

April 2024

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28 Reads

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5 Citations

Dengfeng Zhang

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Chi Zhang

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Xiaodong Han

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Control valves play a vital role in process production. In practical applications, control valves are prone to blockage and leakage faults. At the small control valve openings, the vibration signals exhibit the drawbacks of significant interference and weak fault characteristics, which causes subpar fault diagnosis performance. To address the issue, a diagnostic model based on optimized variational mode decomposition (VMD) and improved deep belief network-extreme learning machine (DBN-ELM) is proposed. Firstly, good point set population initialization, nonlinear convergence factor, and adaptive Gaussian–Cauchy mutation strategies are applied in the dung beetle optimization algorithm (DBO) to escape local optima. Then, the improved DBO (IDBO) is used to optimize VMD parameters to obtain a series of modal components. Next, the generalized dispersion entropy (GDE) is formed by the combination of generalized Gaussian distribution and refined composite multiscale fluctuation-based dispersion entropy. The maximum correlation coefficient modal components are applied to extract GDE. Finally, the IDBO is applied to optimize the parameters of the DBN-ELM network to improve the classification performance of control valve faults. The comparative experiment results demonstrate that the proposed model can extract effective features and the diagnostic accuracy reaches 99.87%.

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Citations (2)


... Li et al. [8] achieved vibration fault feature extraction of rolling bearings based on VMD. However, although VMD can effectively separate mixed multi-component signals, its decomposition effect is greatly influenced by the number of modes and penalty factors [9]. During the working process of the cutting head, the energy structure of the vibration signal will change with the change of the fault form of the cutting head. ...

Reference:

A fault identification method for cutting head of the roadheader based on parameter optimization VMD and RCMFDE
Improved DBO-VMD and optimized DBN-ELM based fault diagnosis for control valve

... B. Song et al. [26] described a method to optimize the hyperparameters of the CNN-BiLSTM model through an improved PSO algorithm, and used the optimized CNN-BiLSTM model to complete the task of bearing fault diagnosis, which can effectively classify fault signals. C. Zhang et al. [27] described a fault diagnosis model based on an improved PNN, using the improved DBO algorithm to optimize the smoothing factor of the PNN, thereby improving the accuracy of fault classification. The optimization algorithm can adaptively find the optimal parameters of the model, but heuristic algorithms are prone to becoming stuck in local optima during the iterative optimization process. ...

Improved Probabilistic Neural Network Based Fault Diagnosis of Control Valve
  • Citing Conference Paper
  • September 2023