Time-domain waveform and spectrum of vibration signal.

Time-domain waveform and spectrum of vibration signal.

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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...

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