利用人工神经网络对输电线路故障进行检测、分类和定位

E. B. M. Tayeb, O. A. A. A. Rhim
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引用次数: 63

摘要

输电线路和其他电力系统部件一样,由于各种随机原因会发生意外故障。这些故障中断了电力系统运行的可靠性。当不可预测的故障发生时,需要保护系统来防止这些故障的传播,并保护系统免受由此导致的异常运行。这些保护系统的功能是检测和分类故障,以及确定故障线路的位置,如电压和/或电流线路的大小。然后,在保护继电器向断路器发送跳闸信号后,断开(隔离)故障线路。神经网络的特点,如学习能力、泛化能力和并行处理能力等,使其在许多系统中的应用成为理想选择。使用神经网络作为模式分类器是它们最常见和最强大的应用之一。本文介绍了反向传播(BP)神经网络结构作为输电线路系统故障检测、分类和隔离的一种替代方法。主要目的是实现输电线路系统距离保护的完整方案。为此,将距离保护任务细分为不同区域的故障检测、故障识别(分类)和故障定位的不同神经网络。讨论了三种常见故障;单相接地故障、双相故障和双相接地故障。研究结果为电力系统继电保护系统的开发提供了一种可靠的、有吸引力的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transmission line faults detection, classification and location using artificial neural network
Transmission lines, among the other electrical power system components, suffer from unexpected failures due to various random causes. These failures interrupt the reliability of the operation of the power system. When unpredicted faults occur protective systems are required to prevent the propagation of these faults and safeguard the system against the abnormal operation resulting from them. The functions of these protective systems are to detect and classify faults as well as to determine the location of the faulty line as in the voltage and/or current line magnitudes. Then after the protective relay sends a trip signal to a circuit breaker(s) in order to disconnect (isolate) the faulty line.The features of neural networks, such as their ability to learn, generalize and parallel processing, among others, have made their applications for many systems ideal. The use of neural networks as pattern classifiers is among their most common and powerful applications. This paper presents the use of back-propagation (BP) neural network architecture as an alternative method for fault detection, classification and isolation in a transmission line system. The main goal is the implementation of complete scheme for distance protection of a transmission line system. In order to perform this, the distance protection task is subdivided into different neural networks for fault detection, fault identification (classification) as well as fault location in different zones. Three common faults were discussed; single phase to ground faults, double phase faults and double phase to ground faults. The result provides a reliable and an attractive alternative approach for the development of a protection relaying system for the power transmission systems.
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