基于电缆数字孪生体中波浪过程的研究数据,为神经网络训练创建电缆绝缘击穿图像库

А.А. Yurov, А.V. Lukonin, D.Е. Srorojenko, D. Kuimov
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引用次数: 0

摘要

这项工作的目的是创建一个电缆线路绝缘击穿图像库,用于训练集成到高压测试设备中的功能单元的神经网络,该网络基于电缆线路数字孪生波过程研究的数据。通过在现场实验中用负极性高直流电压测试电缆线路时,确定其波过程的特征特性,并在数学模型上验证这些结果,实现了这一目标。在验证模型上计算出的数据阵列是建立绝缘击穿图像库的主要原始信息。最重要和最有意义的成果是建立了绝缘击破图像库,并采用神经网络库中的图像来近似输入数据的算法,将人工智能集成到测试阶段确定绝缘缺陷位置的过程中。结果的意义在于减少确定损伤区域的方法和仪器误差,因为所有阶段的数据收集和分析都是由测试单元内置的功能模块执行的,此外,计算是自动执行的,这最大限度地减少了人为因素对结果的影响,降低了对电气实验室人员的要求。这类设备的引入,将缩短事故完全消除的时间,提高线路线路恢复工作的速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Creation of a library of images of cable line insulation breakdown for neural network training based on data from the study of wave processes in the digital twin of the cable line
The aim of the work is to create a library of images of cable line insulation breakdown for training a neural network of a functional unit integrated into a high voltage test facility based on data from the study of wave processes in the digital twin of a cable line. The goal is achieved by determining the characteristic properties of the wave process in a cable line when tested with high direct voltage of negative polarity during field experiments and verifying these results on a mathematical model. The calculated data array on the verified model is the main volume of primary information for creating a library of images of insulation breakdown. The most important and significant results are the creation of a library of images of insulation breakdown and the adaptation of the algorithm for approximating input data with images from the neural network library, the integration of artificial intelligence into the process of determining the location of defective insulation at the test stage. The significance of the results is to reduce the methodological and instrumental error in determining the damage zone, since all stages of data collection and analysis are performed by a functional module built into the test unit, in addition, the calculation is performed automatically, which minimizes the role of anthropogenic factors on the result and reduces the requirements for the personnel of the electrical laboratory, the introduction of such equipment will reduce complete the time of elimination of the accident and increase the speed of restoration work on the route of the line.
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来源期刊
E3S Web of Conferences
E3S Web of Conferences Energy-Energy (all)
CiteScore
0.90
自引率
0.00%
发文量
1133
期刊介绍: E3S Web of Conferences is an Open Access publication series dedicated to archiving conference proceedings in all areas related to Environment, Energy and Earth Sciences. The journal covers the technological and scientific aspects as well as social and economic matters. Major disciplines include: soil sciences, hydrology, oceanography, climatology, geology, geography, energy engineering (production, distribution and storage), renewable energy, sustainable development, natural resources management… E3S Web of Conferences offers a wide range of services from the organization of the submission of conference proceedings to the worldwide dissemination of the conference papers. It provides an efficient archiving solution, ensuring maximum exposure and wide indexing of scientific conference proceedings. Proceedings are published under the scientific responsibility of the conference editors.
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