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Combined Fault Location and Classification for Power Transmission Lines Fault Diagnosis With Integrated Feature Extraction

机译:具有综合特征提取的输电线路故障定位与分类相结合的方法

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摘要

Accurate and timely diagnosis of transmission line faults is key for reliable operations of power systems. Existing fault-diagnosis methods rely on expert knowledge or extensive feature extraction, which is also highly dependent on expert knowledge. Additionally, most methods for fault diagnosis of transmission lines require multiple separate subalgorithms for fault classification and location performing each function independently and sequentially. In this research, an integrated framework combining fault classification and location is proposed by applying an innovative machine-learning algorithm: the summation-wavelet extreme learning machine (SW-ELM) that integrates feature extraction in the learning process. As a further contribution, an extension of the SW-ELM, i.e., the summation-Gaussian extreme learning machine (SG-ELM), is proposed and successfully applied to transmission line fault diagnosis. SG-ELM is fully self-learning and does not require ad-hoc feature extraction, making it deployable with minimum expert subjectivity. The developed framework is applied to three transmission-line topologies without any prior parameter tuning or ad-hoc feature extraction. Evaluations on a simulated dataset show that the proposed method can diagnose faults within a single cycle, remain immune to fault resistance and inception angle variation, and deliver high accuracy for both tasks of fault diagnosis: fault type classification and fault location estimation.
机译:准确及时地诊断传输线故障是电力系统可靠运行的关键。现有的故障诊断方法依赖于专家知识或广泛的特征提取,这也高度依赖于专家知识。另外,大多数用于传输线故障诊断的方法都需要多个单独的子算法来进行故障分类和定位,从而独立且顺序地执行每个功能。在这项研究中,通过应用一种创新的机器学习算法,提出了一种将故障分类和定位相结合的集成框架:求和小波极限学习机(SW-ELM),它在学习过程中集成了特征提取。作为进一步的贡献,提出了SW-ELM的扩展,即求和-高斯极限学习机(SG-ELM),并将其成功地应用于输电线路故障诊断。 SG-ELM是完全自学习的,不需要临时提取特征,因此可以以最少的专家主观性进行部署。所开发的框架可应用于三种传输线拓扑,而无需事先进行任何参数调整或临时特征提取。对模拟数据集的评估表明,所提出的方法可以在单个周期内诊断故障,不受故障阻力和起始角度变化的影响,并且在故障诊断的两个任务(故障类型分类和故障位置估计)方面均具有很高的准确性。

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