Anhui Sanlian College of Electrical and Electronic Engineering, Anhui, Hefei 230601, China.
Wanda Tire, Anhui, Hefei 230601, China.
Comput Intell Neurosci. 2022 Aug 16;2022:7247881. doi: 10.1155/2022/7247881. eCollection 2022.
At present, due to the large-scale use of different kinds of power electronic devices in the power system, the problem of harmonic pollution in the power grid is becoming more and more serious, which will lead to a serious decline in the production, transmission, and utilization rate of electric energy, overheat electrical devices, generate vibration and interference, and then affect the aging and service life of the lines. In order to effectively reduce the harmonic problems caused by different levels of the power system, it is necessary to analyze the harmonic components. In this paper, the BP neural network learning algorithm is introduced into the harmonic problems of the power system. The mapping relationship between input and output signals is obtained by using the BP neural network algorithm, and the harmonic frequency, amplitude, and phase contained in the obtained data are analyzed. According to the type of equipment with problems in the operation of the power system and the rapid diagnosis of existing defects, the problems are quickly located and the causes are analyzed. The practical results show that the BP neural network learning algorithm proposed in this paper has higher detection accuracy and analysis speed for the difficult problems in the power system.
目前,由于电力系统中大规模使用了各种电力电子设备,电网中的谐波污染问题越来越严重,这将导致电能的生产、传输和利用率严重下降,电气设备过热,产生振动和干扰,从而影响线路的老化和使用寿命。为了有效降低电力系统各级产生的谐波问题,有必要对谐波分量进行分析。本文将 BP 神经网络学习算法引入到电力系统的谐波问题中,通过 BP 神经网络算法得到输入与输出信号之间的映射关系,对所得到的数据中包含的谐波频率、幅值和相位进行分析。根据电力系统运行中设备出现问题的类型和现有缺陷的快速诊断,快速定位问题并分析原因。实际结果表明,本文提出的 BP 神经网络学习算法对电力系统中的难题具有更高的检测精度和分析速度。