Security assessment using neural computing

B.H. Chowdhury, B. Wilamowski
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引用次数: 9

Abstract

The advantage of fast computation capability of an artificial neural network (ANN) is used to introduce an iterative scheme for security assessment of power systems. Two related approaches are shown which demonstratedly work satisfactorily. The idea of feedback in a single-layer feedforward neural network is experimented yielding higher accuracy. The ANN is trained by using a set of data obtained from off-line analysis of the power network. After training, an approximate solution for a given condition may be found almost immediately. The approximate solution obtained is judged adequate for assessing the security of the power system. A case study is also presented for demonstrating the applicability of the approach.<>
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基于神经计算的安全评估
利用人工神经网络快速计算能力的优势,提出了一种电力系统安全评估的迭代方案。给出了两种相关的方法,并证明其效果令人满意。对单层前馈神经网络的反馈思想进行了实验,得到了更高的精度。该人工神经网络是利用电网离线分析得到的一组数据进行训练的。经过训练后,几乎可以立即找到给定条件的近似解。所得到的近似解足以用于电力系统的安全性评估。本文还提出了一个案例研究来证明该方法的适用性
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