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Fault Location in Active Distribution Networks Using Multiple Measurement-Based Bayesian Learning

机译:基于多个基于测量的贝叶斯学习的有源配电网故障定位

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Efficient and accurate fault location techniques are beneficial to pinpoint fault position and reduce power outages. Faced with this issue, this paper proposes a novel fault location technique for active distribution networks that utilizes multiple measurement-based Bayesian learning. Specifically, fault location problem in this paper is firstly transformed into solving a block-sparse signal recovery model. In order to enhance robustness in noisy conditions and achieve satisfactory recovery performance, this paper extends the recovery model to a multiple measurement-based model and adopts a block-sparse Bayesian learning (BSBL) algorithm for block-sparse signal recovery. The proposed method requires only a limited number of distribution-level synchronized measurements to be placed, instead of yielding a full observable network. The effectiveness of the proposed method under different noise levels is verified by using IEEE 33-node active distribution system.
机译:高效,准确的故障定位技术有利于查明故障位置并减少断电。面对这个问题,本文提出了一种新的主​​动分布网络故障定位技术,该技术利用了基于多个测量的贝叶斯学习。具体来说,本文首先将故障定位问题转化为求解块稀疏信号恢复模型。为了增强在嘈杂条件下的鲁棒性并获得令人满意的恢复性能,本文将恢复模型扩展到基于多次测量的模型,并采用块稀疏贝叶斯学习(BSBL)算法进行块稀疏信号恢复。所提出的方法仅需要放置有限数量的分布级同步测量,而不是产生完整的可观察网络。通过使用IEEE 33节点有源分配系统,验证了该方法在不同噪声水平下的有效性。

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