Machine learning for parameters diagnosis of spark discharge by electro-acoustic signal

Jun Xiong, Shiyu Lu, Xiaoming Liu, Wenjun Zhou, Xiaoming Zha, Xuekai Pei
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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 to collect electro-acoustic signals and implementing a series of acoustic signal processing techniques, the Mel-Frequency Cepstral Coefficients (MFCCs) of the acoustic signals are extracted to construct the predictors. Three machine learning models (Linear Regression, k-Nearest Neighbors, and Random Forest) are introduced and applied to the predictors to achieve real-time rapid diagnostic measurement of typical spark discharge power and discharge distance. All models display impressive performance in prediction precision and fitting abilities. Among them, the k-Nearest Neighbors model shows the best performance on discharge power prediction with the lowest mean square error (MSE=0.00571) and the highest R-squared value (R^2=0.93877). The experimental results show that the relationship between the electro-acoustic signal and the gas discharge power and distance can be effectively constructed based on the machine learning algorithm, which provides a new idea and basis for the online monitoring and real-time diagnosis of plasma parameters.
利用机器学习对电声信号进行火花放电参数诊断
放电等离子体参数测量是低温等离子体研究的重点。传统的诊断方法通常需要昂贵的设备,而电声信号则提供了丰富、非侵入性且不太复杂的放电信息源。这项研究利用机器学习来解码这些信号。它在电声信号和气体放电参数(如功率和距离)之间建立了联系,从而简化了预测过程。通过构建火花放电平台来收集电声信号,并采用一系列声学信号处理技术,提取声学信号的梅尔-频率倒频谱系数(MFCC)来构建预测器。在预测器中引入并应用了三种机器学习模型(线性回归、k-近邻和随机森林),以实现对典型火花放电功率和放电距离的实时快速诊断测量。所有模型在预测精度和拟合能力方面都表现出色。其中,k-近邻模型在放电功率预测方面表现最佳,均方误差(MSE=0.00571)最小,R 平方值(R^2=0.93877)最高。实验结果表明,基于机器学习算法可以有效构建电声信号与气体放电功率和距离之间的关系,为等离子体参数的在线监测和实时诊断提供了新的思路和依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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