Machine learning for parameters diagnosis of spark discharge by electro-acoustic signal
Jun 俊 XIONG 熊,
Shiyu 诗宇 LU 卢,
Xiaoming 晓明 LIU 刘
et al.
Abstract:Discharge plasma parameter measurement is a key focus in low-temperature plasma research. Traditional diagnostics often require costly equipment, whereas electro-acoustic signals provide a rich, non-invasive, and less complex source of discharge information. This study harnesses machine learning to decode these signals. It establishes links between electro-acoustic signals and gas discharge parameters, such as power and distance, thus streamlining the prediction process. By building a spark discharge platform… Show more
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