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Input space decomposition and multilevel classification approach for ANN-based transient security assessment

机译:基于ANN的暂态安全评估的输入空间分解和多级分类方法

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This paper proposes an ANN-based multilevel classification approach for fast transient stability assessment of large power systems. A two-level classifier incorporating two feedforward ANNs is built to obtain a stability index for security classification using some general abstract post-fault attributes as its inputs. The ANNs are trained by a newly-developed semi-supervised learning algorithm. The proposed approach can not only distinguish whether a power system is stable or unstable based on the specific post-fault attributes but also provide a relative stability quantifier. The numerical results on applications to the 10-unit New England power system demonstrate the validity of the proposed approach for transient security assessment.
机译:本文提出了一种基于ANN的多级分类方法,用于大功率系统的快速稳定性稳定性评估。构建了包含两个前馈ANNS的两级分类器,以获得使用某些常规抽象后故障属性作为其输入的安全分类的稳定性索引。 ANNS受到新开发的半监督学习算法的培训。所提出的方法不仅可以区分基于特定故障后属性的电力系统是否稳定或不稳定,还提供相对稳定性量化。对10元新英格兰电力系统应用的数值结果展示了瞬态安全评估方法的有效性。

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