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Structure-unknown non-linear dynamic systems: identification through neural networks

机译:未知结构的非线性动力系统:通过神经网络识别

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摘要

Explores the potential of using parallel distributed processing (neural network) approaches to identify the internal forces of structure-unknown non-linear dynamic systems typically encountered in the field of applied mechanics. The relevant characteristics of neural networks, such as the processing elements, network topology, and learning algorithms, are discussed in the context of system identification. The analogy of the neural network procedure to a qualitatively similar non-parametric identification approach, which was previously developed by the authors for handling arbitrary non-linear systems, is discussed. The utility of the neural network approach is demonstrated by application to several illustrative problems.
机译:探索使用并行分布式处理(神经网络)方法识别在应用力学领域中通常会遇到的结构未知的非线性动力系统的内部力的潜力。在系统识别的背景下,讨论了神经网络的相关特征,例如处理元素,网络拓扑和学习算法。讨论了神经网络过程与定性相似的非参数识别方法的类比,该方法先前由作者开发用于处理任意非线性系统。通过应用于几个说明性问题,证明了神经网络方法的实用性。

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