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首页> 外文期刊>Nonlinear analysis. Hybrid systems: An International Multidisciplinary Journal >Identification of a class of hybrid dynamic systems with feed-forward neural networks: About the validity of the global model
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Identification of a class of hybrid dynamic systems with feed-forward neural networks: About the validity of the global model

机译:具有前馈神经网络的一类混合动力系统的辨识:关于全局模型的有效性

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摘要

This paper addresses the problem of the identification of a class of Hybrid Dynamic System (HDS). The class herein considered is characterised by continuous inputs, continuous outputs and binary discrete inputs. The proposed approach focuses the attention on the identification of a global model that predicts the continuous outputs of the HDS. The accuracy of this global model is discussed and several simulation examples are investigated in order to study the validity of the obtained neural network global model. The originality of this approach consists in the identification of a HDS without needing to cluster the data or to know the current mode because it considers the identification of HDS in terms of the architectures and the learning algorithms developed for Feed-Forward neural networks.
机译:本文解决了识别一类混合动力系统(HDS)的问题。本文考虑的类别的特征在于连续输入,连续输出和二进制离散输入。所提出的方法将注意力集中在预测HDS连续输出的全局模型的识别上。讨论了该全局模型的准确性,并研究了几个仿真示例,以研究所获得的神经网络全局模型的有效性。这种方法的独创性在于无需对数据进行聚类或了解当前模式即可识别HDS,因为它根据针对前馈神经网络开发的体系结构和学习算法考虑了对HDS的识别。

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