基于人工神经网络的输电系统故障识别

C. Asbery, Y. Liao
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引用次数: 3

摘要

电力传输系统是复杂的网状网络,它将大量的能量从发电点直接输送到消费点。电力故障可以使系统瘫痪,因为电流必须围绕故障进行引导,从而导致许多潜在的问题,如过载、客户服务中断或级联故障。因此,尽可能快速有效地识别这些故障的分类和定位至关重要。这项工作旨在利用人工神经网络根据测量的电压和电流来确定故障类型和位置。最终,一旦开发成功,该解决方案可用于多种传输电路拓扑以及不同故障类型和电阻的故障检测和分类。
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Electric Transmission System Fault Identification Using Artificial Neural Networks
Electric transmission systems are complex mesh networks that direct large amounts of energy from the point of generation to the point of consumption. Electric faults can cripple a system as power flows must be directed around the fault therefore leading to numerous potential issues such as overloading, customer service interruptions, or cascading failures. Therefore, identifying the classification and location of these faults as quickly and efficiently as possible is crucial. This work aims to utilize artificial neural networks to determine fault type and location based on measured voltages and currents. Eventually, once developed, this solution could be utilized for fault detection and classification on several transmission circuit topologies as well as with different fault types and resistances.
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