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Moving force identification based on particle swarm optimization

机译:基于粒子群算法的运动力识别

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摘要

Moving force is very important for bridge design, structural analysis and structural health monitoring. Some studies on moving force identification (MFI) attract extensive attentions in the past decades. A novel two-step MFI method is proposed based on particle swarm optimization (PSO) and time domain method (TDM) in this study. The new proposed MFI method includes two steps. In the first step, the PSO is used to identify the constant loads without matrix inversion. In the second step, the conventional TDM is employed to estimate the rest time-varying loads where the Tikhonov regularization and general cross validation (GCV) are introduced to improve the MFI accuracy and to select optimal regularization parameters, respectively. A simply supported beam bridge subjected to moving forces is taken as a numerical simulation example to assess the performance of the proposed method. The illustrated results show that the new two-step MFI method can more effectively identify the moving forces compared to the conventional TDM and the improved Tikhonov regularization method, the proposed new method can provide more accurate MFI results on two moving forces under eight combinations of bridge responses.
机译:移动力对于桥梁设计,结构分析和结构健康监测非常重要。在过去的几十年中,有关移动力识别(MFI)的一些研究引起了广泛的关注。本文提出了一种基于粒子群优化(PSO)和时域方法(TDM)的新型两步MFI方法。新提出的MFI方法包括两个步骤。第一步,使用PSO来确定恒定负载而无需矩阵求逆。第二步,采用传统的TDM来估计静止时变负载,其中引入了Tikhonov正则化和通用交叉验证(GCV)来分别提高MFI准确性和选择最佳正则化参数。以承受移动力的简支梁桥为数值模拟实例,评估了该方法的性能。结果表明,与传统的TDM和改进的Tikhonov正则化方法相比,新的两步MFI方法可以更有效地识别运动力,该新方法可以在八种桥组合下对两个运动力提供更准确的MFI结果。回应。

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