基于高压输电线路的电气设备压缩端和跳线端热预测,以柬埔寨电力公司为例

Singhen Suos, Lixiao Cong
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引用次数: 0

摘要

高压架空输电线路系统是柬埔寨电力公司(EDC)输送高压电力的方法之一,EDC是柬埔寨最大的公司,它从一个电源传输到另一个配电,特别是长距离传输到客户。在电力系统中,压缩死端和跳线端子是最重要的设备之一,在高压输电系统中也起着重要的作用。此外,不良或松动的连接可能成为产生影响传输功率的热的热点,对于电气设备的测量热能,他们可以通过红外成像和测量相机技术来观察和量化为热成像。这种检测热输出的方法被称为红外热成像(IRT)。红外热像仪不仅是一种经济高效的技术,而且是一种强大的诊断设备,可以提高系统的效率和可靠性,提高电能质量,提高工人的安全,防止停电,昂贵的设备故障和线路损耗。使用神经网络(NN)与线性回归(LR)模型进行比较。本文根据EDC记录的输电线路使用IRT的历史报告,以天气因素、风速、运行时间和线路负荷为输入参数,考虑调度工作的实际情况。使用平均绝对百分比误差(MAPE)、均方误差(MSE)、均方根误差(RMSE)和平均绝对误差(MAE)来计算这两种方法的预测精度。根据两种模型的作用结果,神经网络(NN)模型具有更好的性能精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction the Thermal of Compression Dead-end and Jumper Terminal for Electrical Equipment Based on High Voltage Transmission Lines, Case Study of Electricity Du Cambodia (EDC)
The high voltage overhead transmission line system is one of the methods of delivering electric power at a high voltage of Electricity Du Cambodia (EDC) is the largest company in Cambodia’s location, which transmitted from one source to another distribution, especially over a long distance to the customers. In an electrical power system, compression dead end and jumper terminal is one of the most important pieces of equipment and play important roles in the transmission system high voltage as well. Moreover, a bad or loose connection can be made a hot spot for generating the thermal that affecting for transmitting power, for the survey thermal energy of electrical equipment that they can to observed and quantified as thermography by applying infrared imaging and measuring the camera techniques. This method of detecting heat output is known as infrared thermography (IRT). Infrared thermography is not only a cost-effective technology but also powerful diagnostic equipment for improving system efficiency and dependability, power quality, and worker safety, and preventing outages, expensive equipment failure, and line losses. Using the Neural Network (NN) in the comparison to the Linear Regression (LR) model. This paper regarded schedule working actual base on the history of transmission line reports of using IRT which was noted by EDC, and the input parameters were the weather factors, wind speed, duration of operation, and load on the line. The prediction accuracy of these two methodologies was calculated with the use of the mean absolute percentage error (MAPE), Mean Square Error (MSE), Root Mean Square Error (RMSE), and Mean Absolute Error (MAE). Based on the act result of the two models, the Neural Network (NN) model is better performance accuracy.
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