Mechanical Fault Diagnosis with Noisy Multisource Signals via Unified Pinball Loss Intuitionistic Fuzzy Support Tensor Machine

In this paper, a challenging and significant intelligent fault diagnosis task is investigated, in which multisource sensor signals with intense noise and outlier disturbances are jointly analyzed. Such a scenario has hardly been considered in industrial research. To this end, we develop a novel tens...

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Veröffentlicht in:IEEE transactions on industrial informatics 2024-01, Vol.20 (1), p.1-10
Hauptverfasser: Zhang, Yifang, Han, Bing, Han, Min
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description In this paper, a challenging and significant intelligent fault diagnosis task is investigated, in which multisource sensor signals with intense noise and outlier disturbances are jointly analyzed. Such a scenario has hardly been considered in industrial research. To this end, we develop a novel tensor-based nonlinear classifier called unified pinball loss intuitionistic fuzzy support tensor machine (UPIFSTM), which can successfully solve the above tasks and improve the performance of fault diagnosis in practical applications. First, the noisy multisource signals are converted into time-frequency images and reconstructed into tensor samples to mine the time domain, frequency domain features and coupled structure information in the spatial domain. Next, we design two nonlinear forms of nonmembership functions in the tensor space, and obtain an intuitionistic fuzzy score for each training sample to enhance the robustness of the model. Subsequently, pinball loss function is introduced to better handle noise sensitivity and resampling instability problems. Note that, we employ the tensor robust principal component analysis method to accurately recover the low-rank tensors corrupted by sparse noise from the original tensors. Finally, two numerical examples are presented to verify the feasibility and validity of the proposed method.
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subjects Fault diagnosis
Feature extraction
Image reconstruction
Industrial research
intuitionistic fuzzy support tensor machine
Mathematical analysis
Noise sensitivity
noisy multisource signals
Outliers (statistics)
pinball loss
Principal components analysis
Resampling
Robustness (mathematics)
Stability analysis
Support vector machines
tensor robust principal component analysis
Tensors
Time-frequency analysis
Training
title Mechanical Fault Diagnosis with Noisy Multisource Signals via Unified Pinball Loss Intuitionistic Fuzzy Support Tensor Machine
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