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A new dynamic security assessment framework based on semi-supervised learning and data editing

机译:基于半监督学习和数据编辑的新动态安全评估框架

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摘要

In this paper, we propose a new online dynamic security assessment (DSA) framework based on semi-supervised learning and data editing. To reduce the number of labeled samples used by supervised learning in conventional DSA, which is required to ensure a high generalization performance of a classifier, we augment the training set with a large number of unlabeled samples that are easily computed. As an alternative to computationally expensive time-domain simulations, the unlabeled samples are labeled by an algorithm called tri-training. To reduce the noise that comes with incorrectly labeled samples, we use data editing, which significantly improves the classification performance. We demonstrate the performance of the proposed framework in a case study using the IEEE 39-bus New England test system with different levels of wind penetration. The results show that the proposed DSA framework reduces the number of labeled samples required to train the neural network used as an online transient stability classifier, which significantly reduces the computational burden associated with the training of the classifier.
机译:在本文中,我们提出了一种基于半监督学习和数据编辑的新的在线动态安全评估(DSA)框架。为了减少传统DSA中监督学习所使用的标记样本的数量,这是确保分类器的高泛化性能所必需的,我们将培训集扩充到易于计算的大量未标记的样本。作为计算昂贵的时域模拟的替代方案,未标记的样本由称为Tri训练的算法标记。为了减少标记错误的样本的噪声,我们使用数据编辑,从而显着提高了分类性能。我们展示了拟议的框架在案例研究中的表现,使用IEEE 39公交车新英格兰测试系统具有不同的风渗透。结果表明,所提出的DSA框架减少了培训用作在线瞬态稳定分类器的神经网络所需的标记样本的数量,这显着降低了与分类器训练相关的计算负担。

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