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Design and Evaluation a Distance Relay Model Based On Artificial Neural Networks (ANN)

机译:基于人工神经网络(ANN)的距离中继模型的设计和评估

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Delivering high-quality electrical power requires an efficient, reliable protective system that can handle failures on transmission lines, which occur due to varies random causes. Detecting, classifying, and locating faults can prevent further damage to electrical supply equipment. The digital technology has brought unquestionable improvements in numerical relay design in terms of criteria signals estimation in a short time, better filtering, self-monitoring features, etc. However, it did not make a breakthrough in power system protection, as far as security, dependability, and speed of operation are concerned. The relaying task, however, can be approached as a pattern recognition problem. To improve the performance of protection, Artificial Neural Networks (ANN) approach has been perceived by researchers in power system protection field. By monitoring the relaying inputs, the relay can be trained using ANN to classify the ongoing signals between faults and all other conditions. Therefore, this paper presents an intelligent method to design an online Simulink model of a distance relay. The Artificial Neural Network ANN, three-layer, Feed-forward networks with backpropagation algorithm for each phase (voltage and current) were selected to achieve this design. The designed relay is composed of fault detection and fault type algorithm block, fault classification algorithm block, and fault location algorithm block, as well as the best network structure for each of the previous blocks, which have been determined. Moreover, the relay was evaluated under approximately all various fault types and different fault locations. The Simulation results show that the ANN method is effective in detecting faults on transmission lines.
机译:提供高质量的电力需要高效,可靠的保护系统,该系统应能够处理由于各种随机原因而导致的传输线上的故障。检测,分类和定位故障可以防止进一步损坏供电设备。数字技术在数字继电器设计方面带来了毋庸置疑的改进,包括在短时间内进行标准信号估计,更好的滤波,自监视功能等。但是,就安全性而言,它并没有在电力系统保护方面取得突破,可靠性和操作速度受到关注。但是,可以将中继任务作为模式识别问题来解决。为了提高保护的性能,电力系统保护领域的研究人员已经意识到了人工神经网络(ANN)的方法。通过监视继电器输入,可以使用ANN对继电器进行训练,以对故障和所有其他条件之间的持续信号进行分类。因此,本文提出了一种设计距离继电器在线Simulink模型的智能方法。选择了人工神经网络ANN,三层前馈网络,每相(电压和电流)都采用反向传播算法来实现此设计。设计的继电器由故障检测和故障类型算法块,故障分类算法块和故障位置算法块以及已确定的每个先前块的最佳网络结构组成。此外,在几乎所有各种故障类型和不同故障位置下对继电器进行了评估。仿真结果表明,人工神经网络方法可以有效地检测出输电线路的故障。

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