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Neuro-genetic algorithm for non-linear active control of structures

机译:非线性主动控制结构的神经遗传算法

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In a companion paper, a new non-linear control model was presented I-or active control of three-dimensional (3D) building structures including geometrical and material non-linearities, coupling action between lateral and torsional motions, and actuator dynamics (Int. J. Numer Meth. Engng; DOI: 10.1002me.2195). A dynamic fuzzy wavelet neuroemulator was presented for predicting the structural response in future time steps. In this paper, a new neuro-genetic algorithm or controller is presented for finding the optimal control forces. The control algorithm does not need the pre-training required in a neural network-based controller, which improves the efficiency of the general control methodology significantly. Two 3D steel building structures, a 12-story structure with vertical setbacks and an 8-story structure with plan irregularity, are used to validate the neuro-genetic control algorithm under three different seismic excitations. Numerical validations demonstrate that the new control methodology significantly reduces the displacements of buildings Subjected to various seismic excitations including structures with plan and elevation irregularities. Copyright (c) 2008 John Wiley & Sons, Ltd.
机译:在随附的论文中,提出了一种新的非线性控制模型,即对三维(3D)建筑结构进行I或主动控制,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(Int。 J.Numer Meth.Engng; DOI:10.1002 / nme.2195)。提出了一种动态模糊小波神经仿真器,用于预测未来时间步长的结构响应。在本文中,提出了一种新的神经遗传算法或控制器,用于寻找最佳控制力。该控制算法不需要基于神经网络的控制器中所需的预训练,从而显着提高了通用控制方法的效率。两种3D钢结构建筑,一个具有垂直挫折的12层结构和一个具有平面不规则性的8层结构,被用来验证在三种不同地震激励下的神经遗传控制算法。数值验证表明,新的控制方法可以显着减少建筑物在受到各种地震激励的情况下的位移,包括平面和高程不规则的结构。版权所有(c)2008 John Wiley&Sons,Ltd.

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