采用预处理输入的改进型人工神经网络导纳继电器

G. Chawla, M. Sachdev, G. Ramakrishna
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引用次数: 1

摘要

本文针对传统中继设计中存在的一些问题,提出了一种改进的距离中继预处理算法。直接从电力系统获得的瞬时电流和电压值被用来获得处理后的输入。该算法与神经网络方法相结合,消除了大多数数值继电器算法中通常使用的相量估计过程。神经网络被训练来识别处理输入之间的相位差,从而消除了计算相量的需要。神经网络处理后的输入与继电器的预期输出有直接关系,这有助于使用小于一个完整周期的数据窗口来准确检测故障,使算法比传统设计更快。基于神经网络的继电器用纯正弦值进行了训练,并在PSCADtrade仿真的17总线电力系统上进行了测试。结果表明,与传统的继电保护算法相比,该算法在保持继电保护边界完整性的同时,能够在更短的时间内检测到故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved ANN based admittance relay using pre-processed inputs
This paper addresses some of the issues associated with the conventional relay designs and presents an improved distance relaying pre-processing algorithm. Instantaneous current and voltage values obtained directly from the power system have been used to obtain the processed inputs. The presented algorithm has been combined with a neural network approach to eliminate the process of phasor estimation, which is usually used in most numerical relaying algorithms. The neural network has been trained to recognize the phase difference between the processed inputs, and therefore eliminates the need of calculating phasors. The processed inputs given to the neural network have a direct relationship with the outputs expected from a relay, which helps to use a data window lesser than one full cycle to accurately detect faults, making the algorithm faster than traditional designs. The neural network based relay has been trained using pure sinusoidal values and tested on a 17-bus power system simulated in PSCADtrade. The results show that the relay is able to detect faults in lesser time as compared to conventional relay algorithms while maintaining the integrity of relay boundaries.
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