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NEURAL NETWORK MODEL IDENTIFICATION BASED ON THE SUBTRACTIVE CLUSTERING METHOD

机译:基于减法聚类的神经网络模型识别

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A new algorithm for training radial basis function neural networks is presented in this paper. The algorithm, which is based on the subtractive clustering technique, has a number of advantages compared to the traditional learning algorithms, including faster training times and more accurate predictions. Due to these advantages the method proves suitable for developing discrete-time models for complex dynamical systems.
机译:提出了一种训练径向基函数神经网络的新算法。与传统的学习算法相比,基于减法聚类技术的算法具有许多优势,包括更快的训练时间和更准确的预测。由于这些优点,该方法被证明适用于开发复杂动力系统的离散时间模型。

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