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Fault Detection and Classification of Power System Busbar using Artificial Neural Network

机译:人工神经网络电力系统母线故障检测与分类

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Fault analysis is an important consideration in power system planning, protection and overall system reliability assessment. When a fault occurs at some point in the network, normal operating conditions are upset; if the fault is persistent severe loss of load, property damage and steep economic losses can arise as undesirable consequences. Relay, circuit breakers and other protective elements are used to prevent such damages. Different types of faults in busbar are classified using the bus voltages and line fault current. In this paper, we have proposed an effective way of fault detection and classification in busbars using Artificial Neural Network (ANN). This can make the power system protection more effective. We have considered IEEE 9-bus system and a dataset has been generated using PSAF CYME software. This dataset is used to train and test our network in MATLAB software. The algorithm can be used for any bus system given the voltage magnitude and angles, which will be helpful for the authorities to get notified and solve the problem as soon as possible, since repair mechanism of each type of fault is different from others.
机译:故障分析是电力系统规划,保护和整体系统可靠性评估的重要考虑因素。当在网络中的某个点发生故障时,正常的操作条件是令人生畏的;如果故障持续严重损失负载,则可能会导致财产损失和陡峭的经济损失作为不良后果。继电器,断路器和其他保护元件用于防止这种损坏。使用总线电压和线路故障电流分类母线中的不同类型的故障。在本文中,我们已经提出了使用人工神经网络(ANN)的汇流栏中的故障检测和分类的有效途径。这可以使电力系统保护更有效。我们已经考虑了IEEE 9-Bus系统,并且使用PSAF CYME软件生成了数据集。此数据集用于在Matlab软件中培训和测试我们的网络。算法可用于给定电压幅度和角度的任何总线系统,这将有助于当局获得通知并尽快解决问题,因为每种类型的故障的修复机制不同于其他类型。

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