基于可见数字图像灰度共生矩阵的交流电晕放电阶段研究

Ziqing Guo, Qizheng Ye, Yuwei Wang
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引用次数: 0

摘要

在气体放电的光学图像数字化处理中,形态学研究主要集中在紫外图像上,利用可见光图像的灰度纹理信息对气体放电状态的研究相对较少。由于光电探测技术的进步,可见图像中包含了更丰富的空间结构信息,使得检测灰度纹理信息的特征成为可能。本文将50Hz交流高压电源应用于室温常压下15mm的针面间隙。利用高分辨率数码相机获得秒级放电图像。将灰度共生矩阵的研究方法引入到电晕放电图像处理中。利用垂直(90°)和水平(0°)方向的对比度、熵、相关性和期望值比来描述电晕的发展状态。计算结果表明,对比度和熵能有效反映电晕预击穿状态,相关性能有效反映初始状态。期望值比能有效反映放电在正半周期内的生长、抑制和间隙穿透过程,与示波器电信号具有良好的相关性。该方法使我们能够利用可见光图像来研究交流电晕的阶段,为低温等离子体诊断提供了一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Stages of AC corona discharge Based on Visible Digital Images Gray-level Co-occurrence Matrix
In terms of optical image digital processing of gas discharge, the morphological research is mainly engaged in the image of UV, which has relatively few studies on discharge state by using grayscale texture information of visible images. Thanks to the progress of photoelectric detecting technique, the visible image contains more abundant space structure information, which makes it possible to detect the characteristic of grayscale texture information. In this paper, the 50Hz AC high voltage power source was applied to the 15mm needle-plane gap under room temperature and atmospheric pressure. The discharge images in the time scale of seconds were obtained by a high resolution digital camera. We introduce the research method of gray-level co-occurrence matrix into the corona discharge image processing. Contrast, entropy, correlation and the expected value ratio of vertical (90°) and horizontal (0°) directions are used to describe the state of corona development. The calculation results show that the contrast and entropy can effectively reflect the corona pre-breakdown state, and the correlation can effectively reflect the initial state. The expected value ratio can effectively reflect the process of growth, suppression, and gap-penetration of the discharge in the positive half cycle, which has a good correlation with the oscilloscope electrical signals. The method allows us to take advantage of visible light images to study the stages of AC corona, which provides a new method of low temperature plasma diagnostics.
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