Decentralized parametric damage detection based on neural networks

作者:Wu ZS; Xu B*; Yokoyama K
来源:Computer-Aided Civil and Infrastructure Engineering, 2002, 17(3): 175-184.
DOI:10.1111/1467-8667.00265

摘要

In this paper based on the concept of decentralized information structures and artificial neural networks, a decentralized parametric identification method for damage detection of structures with multi-degrees-of-freedom (MDOF) is conducted. First, a decentralized approach is presented for damage detection of substructures of an MDOF structure system by, using neural networks. The displacement and velocity measurements from a substructure of a healthy, structure system and the restoring force corresponding to this substructure are used to train the decentralized detection neural networks for the purpose of identifying the corresponding substructure. By using the trained decentralized detection neural networks, the difference of the interstory restoring force between the damaged substructures and the undamaged substructures can be calculated. An evaluation index, that is, relative root mean square (RRMS) error is presented to evaluate the condition of each substructure for the purpose of health monitoring. Although neural networks have been widely, used for nonparametric identification, in this paper, the decentralized parametric evaluation neural networks for substructures are trained for parametric identification. Based on the trained decentralized parametric evaluation neural networks and the RRMS error of substructures, the structural parameter of stiffness of each subsystem can be forecast with high accuracy. The effectiveness of the decentralized parametric identification is evaluated through numerical simulations. It is shown that the decentralized parametric evaluation method has the potential of being a practical tool for a damage detection methodology applied to structure-unknown smart civil structures.

  • 出版日期2002-5