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A 2D Hopfield Neural Network approach to mechanical beam damage detection

机译:机械光束损伤检测的2D Hopfield神经网络方法

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The aim of this paper is to present a method based on a 2D Hopfield Neural Network for online damage detection in beams subjected to external forces. The underlying idea of the method is that a significant change in the beam model parameters can be taken as a sign of damage occurrence in the structural system. In this way, damage detection can be associated to an identification problem. More concretely, a 2D Hopfield Neural Network uses information about the way the beam vibrates and the external forces that are applied to it to obtain time-evolving estimates of the beam parameters at the different beam points. The neural network organizes its input information based on the Euler–Bernoulli model for beam vibrations. Its performance is tested with vibration data generated by means of a different model, namely Timonshenko’s, in order to produce more realistic simulation conditions.
机译:本文的目的是提出一种基于2D Hopfield神经网络的在线检测外力损伤梁的方法。该方法的基本思想是,可以将梁模型参数的重大变化视为结构系统中发生损伤的标志。这样,损坏检测可以与识别问题相关联。更具体地说,二维Hopfield神经网络使用有关光束振动方式和作用于光束的外力的信息,以获得不同光束点处光束参数随时间变化的估计。神经网络基于用于光束振动的Euler-Bernoulli模型来组织其输入信息。为了测试更真实的仿真条件,使用了另一种模型(即Timonshenko模型)生成的振动数据对它的性能进行了测试。

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