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Investigation on electrical treeing behaviour at needle defects in cable insulation under AC voltage with the help of image processing algorithms and deep neural networks

机译:交流电压下电缆绝缘电缆缺陷电气曲线缺陷的电气树行为研究借助于图像处理算法和深神经网络

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In this paper, videos of voltage tests on needle defects in XLPE-MV-Cable-specimen are used to gain more information about the electrical treeing behavior in XLPE cable insulation. Accordingly, the maximum length of electrical treeing towards the opposite electrode inside the cable insulation will be investigated over time (treeing growth rate) to identify the influence of different parameters such as needle tip radius, gap distance and voltage level. Therefore, the growth rate of initiated electrical treeing (ET) during application of 50-Hz-AC has been investigated by using an image processing algorithm for image segmentation, edge detection and digital morphology. In contrast to conventional breakdown analyses, like time till treeing inception, inception-voltage or time till breakdown, this paper focuses on the treeing behavior over time. The automatic treeing identification will be evaluated manually, to check the performance of the program. This contribution shall state a first step into the automatic treeing identification by image processing algorithms and will give more insight in the treeing propagation in insulating material at an artificial needle tip failure.
机译:在本文中,XLPE-MV-CABLE-PEMPIMEN中针缺陷的电压测试视频用于获得有关XLPE电缆绝缘中电曲线行为的更多信息。因此,将通过时间(树木生长速率)来研究电缆绝缘内部的电缆内部的相对电极的最大长度,以识别不同参数,例如针尖半径,间隙距离和电压电平的影响。因此,通过使用用于图像分割,边缘检测和数字形态的图像处理算法研究了在施加50-Hz-AC期间的发起电力树(ET)的生长速率。与传统的击穿分析相反,如Time The Time The Timing Inception,Inception-电压或时间,直到故障,这篇论文集中在树桩行为上随着时间的推移。将手动评估自动树识别,以检查程序的性能。该贡献应通过图像处理算法向自动变树识别进行说明,并将在人工针尖端故障中提供更高的树木材料中的树木传播中的更多洞察力。

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