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首页> 外文期刊>IEEE transactions on systems, man and cybernetics. Part C >Neural-network-based fuzzy model and its application to transient stability prediction in power systems
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Neural-network-based fuzzy model and its application to transient stability prediction in power systems

机译:基于神经网络的模糊模型及其在电力系统暂态稳定预测中的应用

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We present a general approach to deriving a new type of neural network-based fuzzy model for a complex system from numerical and/or linguistic information. To efficiently identify the structure and the parameters of the new fuzzy model, we first partition the output space instead of the input space. As a result, the input space itself induces corresponding partitions within each of which inputs would have similar outputs. Then we use a set of hyperrectangles to fit the partitions of the input space. Consequently, the premise of an implication in the new type of fuzzy rule is represented by a hyperrectangle and the consequence is represented by a fuzzy singleton. A novel two-layer fuzzy hyperrectangular composite neural network (FHRCNN) can be shown to be computationally equivalent to such a special fuzzy model. The process of presenting input data to each hidden node in a FHRCNN is equivalent to firing a fuzzy rule. An efficient learning algorithm was developed to adjust the weights of an FHRCNN. Finally, we apply FHRCNNs to provide real-time transient stability prediction for use with high-speed control in power systems. From simulation tests on the IEEE 39-bus system, it reveals that the proposed novel FHRCNN can yield a much better performance than that of conventional multilayer perceptrons (MLP's) in terms of computational burden and classification rate.
机译:我们提出了一种通用的方法,可以从数字和/或语言信息中为复杂系统导出一种新型的基于神经网络的模糊模型。为了有效地识别新模糊模型的结构和参数,我们首先划分输出空间而不是输入空间。结果,输入空间本身会引发相应的分区,每个分区内的输入将具有相似的输出。然后,我们使用一组超矩形来拟合输入空间的分区。因此,在新型模糊规则中蕴涵的前提由超矩形表示,而结果由模糊单例表示。新型两层模糊超矩形复合神经网络(FHRCNN)可以在计算上等效于这种特殊的模糊模型。将输入数据呈现给FHRCNN中的每个隐藏节点的过程等效于触发模糊规则。开发了一种有效的学习算法来调整FHRCNN的权重。最后,我们应用FHRCNN来提供实时瞬态稳定性预测,以用于电力系统中的高速控制。从对IEEE 39总线系统的仿真测试可以看出,在计算负担和分类率方面,所提出的新颖FHRCNN可以比传统的多层感知器(MLP)产生更好的性能。

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