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Using Deep Neural Networks for On-Load Tap Changer Audio-Based Diagnostics

Adnan Secic, Matej Krpan, Igor Kuzle

2021IEEE Transactions on Power Delivery16 citationsDOI

Abstract

This paper proposes a sound separation methodology based on deep learning neural network (DLNN) to extract useful diagnostic material in non-invasive audio-based On-Load Tap Changer (OLTC) diagnostics. The proposed methodology has been experimentally verified on both artificial mixtures (created by reproducing the targeted data by the speakers placed next to the active transformers) and actual mixtures (recorded by the microphone during OLTC live operation in the field). The results show that the method produces high-quality estimates (correlation to referent fingerprints <inline-formula xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink"><tex-math notation="LaTeX">$\rho &gt; 0.9$</tex-math></inline-formula> ) compared to other sound separation methods, e.g. Independent Component Analysis (ICA). The proposed framework can also perform source separation from a monaural mixture (mixture recorded with a single microphone only), which is impossible for ICA methods. Moreover, the results show that DLNN trained with healthy OLTC data produces diagnostically valuable estimates even when fed with a faulty OLTC audio mixture. For that reason, once trained, the DLNN can produce the diagnostic signal estimates from monaural mixtures that can be used with existing vibration-based diagnostic methods.

Topics & Concepts

MicrophoneArtificial neural networkMonauralComputer scienceSource separationSpeech recognitionIndependent component analysisTransformerArtificial intelligencePattern recognition (psychology)Audio signalEngineeringSpeech codingVoltageSound pressureTelecommunicationsElectrical engineeringBlind Source Separation TechniquesPhonocardiography and Auscultation TechniquesMachine Fault Diagnosis Techniques