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Application of support vector machines for fault diagnosis in power transmission system

机译:支持向量机在输电系统故障诊断中的应用。

摘要

Post-fault studies of recent major power failures around the world reveal that mal-operation and/or improper co-ordination of protection system were responsible to some extent. When a major power disturbance occurs, protection and control action are required to stop the power system degradation, restore the system to a normal state and minimise the impact of the disturbance. However, this has indicated the need for improving protection co-ordination byudadditional post-fault and corrective studies using intelligent/knowledge-based systems. A process to obtain knowledge-base using support vector machines (SVMs) is presented for ready post-fault diagnosis purpose. SVMs are used as Intelligence tool to identify the faulted line that is emanating and finding the distance from the substation. Also, SVMs are compared with radial basis function neural networks in datasets corresponding to different fault on transmission system. Classification and regression accuracies are is reported for both strategies. The approach is particularly important for post-fault diagnosis of any mal-operation of relays following a disturbance in the neighbouring line connected to the same substation. This may help to improve the fault monitoring/diagnosis process, thus assuring secure operation of the power systems. To validate the proposed approach, results on IEEE 39-Bus New England system are presented for illustration purpose.
机译:故障后对全球最近发生的重大电源故障的研究表明,保护系统的误操作和/或不当的协调在一定程度上是造成责任的原因。当发生重大电源干扰时,需要采取保护和控制措施以停止电源系统降级,将系统恢复到正常状态并最大程度地减少干扰的影响。但是,这表明需要通过基于智能/知识的系统进行常规的故障后和纠正研究来改善保护协调。提出了一种使用支持​​向量机(SVM)获取知识库的过程,以进行故障后诊断。 SVM被用作智能工具,以识别正在发出的故障线路并查找与变电站的距离。此外,在与传输系统上不同故障相对应的数据集中,将SVM与径向基函数神经网络进行了比较。报告了两种策略的分类和回归准确性。该方法对于故障诊断后继发于连接到同一变电站的相邻线路中的继电器是否有任何误动作特别重要。这可能有助于改善故障监视/诊断过程,从而确保电源系统的安全运行。为了验证所提出的方法,在IEEE 39-Bus New England系统上的结果仅供说明。

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