论文标题

使用集合学习的高压多终端直流网络中的故障位置

Fault location in High Voltage Multi-terminal dc Networks Using Ensemble Learning

论文作者

Flavin, Timothy, Mitra, Bhaskar, Nagaraju, Vidhyashree, Meyur, Rounak

论文摘要

大型电力传输网络的故障的精确位置对于更快的维修和恢复过程至关重要。使用模块化多级转换器(MMC)技术的高压直流电流(HVDC)网络已发现其互连的多末端网络的突出性。这允许以较低的成本进行大型大量电力传输。但是,他们应对DC故障的挑战。已广泛研究和研究了在DC故障下隔离网络的快速有效方法。成功隔离后,必须精确定位故障。后的电压和当前签名是多个因素的函数,因此在多末端网络上准确定位故障是具有挑战性的。在本文中,我们讨论了一种基于数据驱动的集合学习方法,以进行准确的故障位置。在这里,我们利用极端梯度提升(XGB)方法来准确的故障位置。所提出的算法对测量噪声,故障位置,电阻和电流限制电感的敏感性是在电源系统计算机辅助设计(PSCAD)/电磁瞬变(包括DC)的径向三端MTDC网络上进行的。

Precise location of faults for large distance power transmission networks is essential for faster repair and restoration process. High Voltage direct current (HVdc) networks using modular multi-level converter (MMC) technology has found its prominence for interconnected multi-terminal networks. This allows for large distance bulk power transmission at lower costs. However, they cope with the challenge of dc faults. Fast and efficient methods to isolate the network under dc faults have been widely studied and investigated. After successful isolation, it is essential to precisely locate the fault. The post-fault voltage and current signatures are a function of multiple factors and thus accurately locating faults on a multi-terminal network is challenging. In this paper, we discuss a novel data-driven ensemble learning based approach for accurate fault location. Here we utilize the eXtreme Gradient Boosting (XGB) method for accurate fault location. The sensitivity of the proposed algorithm to measurement noise, fault location, resistance and current limiting inductance are performed on a radial three-terminal MTdc network designed in Power System Computer Aided Design (PSCAD)/Electromagnetic Transients including dc (EMTdc).

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