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首页> 外文期刊>IEEE Transactions on Power Systems >An on-line self-learning power system stabilizer using a neural network method
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An on-line self-learning power system stabilizer using a neural network method

机译:基于神经网络方法的在线自学电力系统稳定器

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摘要

Based on the extensive theoretical analysis of a self-learning algorithm, a novel on-line neural network self-learning algorithm is proposed. This algorithm aims to learn the inverse dynamics of a controlled system. Samples can be easily obtained by the measurements. A reference model or a given orbit is used to generate ideal system responses. A scheme for on-line real-time implementation of such a controller is given. The proposed algorithm has been used to design a self-learning power system stabilizer. Simulation results show that the proposed self-learning neural network based PSS is very effective in damping out the lower frequency oscillations.
机译:基于对自学习算法的广泛理论分析,提出了一种新颖的在线神经网络自学习算法。该算法旨在学习受控系统的逆动力学。通过测量可以容易地获得样品。参考模型或给定的轨道用于生成理想的系统响应。给出了一种在线实时实现这种控制器的方案。该算法已被用于设计自学习电力系统稳定器。仿真结果表明,所提出的基于PSS的自学习神经网络在抑制低频振荡方面非常有效。

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