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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Comparison of a spiking neural network and an MLP for robust identification of generator dynamics in a multimachine power system.
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Comparison of a spiking neural network and an MLP for robust identification of generator dynamics in a multimachine power system.

机译:尖峰神经网络和MLP的比较,用于可靠地识别多机电源系统中的发电机动力学。

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摘要

The application of a spiking neural network (SNN) and a multi-layer perceptron (MLP) for online identification of generator dynamics in a multimachine power system are compared in this paper. An integrate-and-fire model of an SNN which communicates information via the inter-spike interval is applied. The neural network identifiers are used to predict the speed and terminal voltage deviations one time-step ahead of generators in a multimachine power system. The SNN is developed in two steps: (i) neuron centers determined by offline k-means clustering and (ii) output weights obtained by online training. The sensitivity of the SNN to the neuron centers determined in the first step is evaluated on generators of different ratings and parameters. Performances of the SNN and MLP are compared to evaluate robustness on the identification of generator dynamics under small and large disturbances, and to illustrate that SNNs are capable of learning nonlinear dynamics of complex systems.
机译:比较了尖峰神经网络(SNN)和多层感知器(MLP)在多机电力系统中在线识别发电机动力学的应用。应用了通过尖峰间间隔传达信息的SNN的集成和发射模型。神经网络标识符用于预测多机电源系统中发电机之前的速度和端子电压偏差。 SNN分两步开发:(i)通过离线k均值聚类确定的神经元中心,以及(ii)通过在线训练获得的输出权重。在第一步中确定的SNN对神经元中心的敏感性是在具有不同额定值和参数的生成器上评估的。比较了SNN和MLP的性能,以评估在小扰动和大扰动下发电机动态识别的鲁棒性,并说明SNN具有学习复杂系统非线性动力学的能力。

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