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Dynamic fuzzy wavelet neural network for system identification, damage detection and active control of highrise buildings.

机译:动态模糊小波神经网络,用于高层建筑的系统识别,损伤检测和主动控制。

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摘要

A multi-paradigm nonparametric model, dynamic fuzzy wavelet neural network (WNN) model, is developed for structural system identification of three dimensional highrise buildings. The model integrates chaos theory (nonlinear dynamics theory), a signal processing method (wavelets), and two complementary soft computing methods (fuzzy logic and neural network). An adaptive Levenberg-Marquardt-least-squares learning algorithm is developed for adjusting parameters of the dynamic fuzzy WNN model. The methodology is applied to one five-story test frame and two highrise moment-resisting building structures. Results demonstrate that the methodology incorporates the imprecision existing in the sensor data effectively and balances the global and local influences of the training data. It therefore provides more accurate system identifications and nonlinear approximation with a fast training convergence.; A nonparametric system identification-based model is developed for damage detection of highrise building structures subjected to seismic excitations using the dynamic fuzzy WNN model. The model does not require complete measurements of the dynamic responses of the whole structure. A damage evaluation method is proposed based on a power density spectrum method. The multiple signal classification method is employed to compute the pseudospectrum from the structural response time series. The methodology is validated using experimental data obtained for a 38-story concrete test model. It is demonstrated that the WNN model together with the pseudospectrum method is effective for damage detection of highrise buildings based on a small amount of sensed data.; A nonlinear control model is developed for active control of highrise three dimensional building structures including geometrical and material nonlinearities, coupling action between lateral and torsional motions, and actuator dynamics. A dynamic fuzzy wavelet neuroemulator is developed for predicting the structural response in future time steps. A neuro-genetic algorithm is developed for finding the optimal control forces without the pre-training required in a neural network-based controller. Both neuroemulator and neuro-genetic algorithm are validated using two irregular three-dimensional steel building structures, a twelve-story structure with vertical setbacks and an eight-story structure with plan irregularity. Numerical validations demonstrate that the control methodology can significantly reduce the structural displacements of three-dimensional buildings subjected to various seismic excitations.
机译:建立了多范式非参数模型,即动态模糊小波神经网络(WNN)模型,用于三维高层建筑的结构系统识别。该模型集成了混沌理论(非线性动力学理论),信号处理方法(小波)和两种互补的软计算方法(模糊逻辑和神经网络)。提出了一种自适应的Levenberg-Marquardt-最小二乘学习算法,用于调整动态模糊WNN模型的参数。该方法适用于一个五层测试框架和两个高层抗弯建筑结构。结果表明,该方法有效地结合了传感器数据中存在的不精确性,并平衡了训练数据的全局和局部影响。因此,它提供了更精确的系统识别和非线性近似,并具有快速的训练收敛性。基于动态模糊WNN模型,开发了一种基于非参数系统识别的模型,用于高层建筑结构在地震激励下的损伤检测。该模型不需要完整测量整个结构的动力响应。提出了一种基于功率密度谱法的损伤评估方法。采用多信号分类方法根据结构响应时间序列计算伪谱。使用从38层混凝土测试模型中获得的实验数据验证了该方法。结果表明,基于少量感测数据,WNN模型与伪谱方法一起用于高层建筑的损伤检测是有效的。开发了一种非线性控制模型,用于主动控制高层三维建筑结构,包括几何和材料非线性,横向和扭转运动之间的耦合作用以及执行器动力学。开发了动态模糊小波神经模拟器,用于预测未来时间步长中的结构响应。开发了一种神经遗传算法,用于寻找最佳控制力而无需在基于神经网络的控制器中进行预训练。神经仿真器和神经遗传算法均使用两个不规则的三维钢结构建筑,垂直挫折的十二层结构和计划不规则的八层结构进行了验证。数值验证表明,该控制方法可以显着减少经受各种地震激励的三维建筑物的结构位移。

著录项

  • 作者

    Jiang, Xiaomo.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Engineering Civil.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 239 p.
  • 总页数 239
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;
  • 关键词

  • 入库时间 2022-08-17 11:42:22

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