基于DFIG的有源配电网中双向电能表孤岛检测

Shailesh Verma, S. Dutta, P. Sadhu, M. J. Bharata Reddy, D. Mohanta
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引用次数: 3

摘要

随着电力市场的放松管制,配电体系结构已大量集成分布式发电技术。dg的出现改革了电网管理,导致了微电网技术等概念的出现。尽管dg具有平滑电网运行、改善电能质量和管理反复无常的需求等巨大优势,但它也有一些局限性,比如计划外的孤岛。长时间的意外孤岛会严重破坏公用事业资源,危及安全性和可维护性。因此,拥有一个能够快速可靠地检测孤岛的保护方案至关重要。尽管最近开发了许多技术,但它们要么缺乏一致性,要么缺乏快速性。所提出的方法是基于直接从双向电能表测量电压,并使用恒q变换(CQT)处理这些信号。该技术利用人工神经网络(ANN)来判断微电网的异常是由于故障还是孤岛运行造成的。通过MATLAB仿真验证了该算法的有效性。该方法考虑了风力发电DG微电网中的各种孤岛事件和非孤岛事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Islanding detection using bi-directional energy meter in a DFIG based active distribution network
With the deregulation of the electrical power market, the distribution architecture has now heavily integrated distributed generation (DG) technologies. The presence of DGs has reformed power grid management leading to concepts such as micro-grid technology. Despite its huge advantages like smoothing power grid operations, improving power quality and managing capricious demand, DGs have limitations like unplanned islanding. Prolonged accidental islanding can seriously damage utility resources and compromise the safety and serviceability. Thus, it's critical to have a protection scheme which enables quick and reliable islanding detection. Though many techniques have been developed recently, they lack either consistency or swiftness. The proposed methodology is based on voltage measurement directly from a bi-directional energy meter and processing of these signals with constant-Q transform (CQT). This technique determines, if the abnormity in a micro-grid is because of any fault or an island operation by using artificial neural network (ANN). The proposed algorithm and its efficiency is demonstrated and justified with MATLAB simulations. Various islanding events as well as non-islanding events in a wind based DG micro-grid is considered for the proposed method.
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