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Optimal placement of active control devices and sensors in frame structures using multi-objective genetic algorithms

机译:使用多目标遗传算法在框架结构中优化布置主动控制设备和传感器

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Active control efficiency is highly dependent on the control algorithm and device types as well as the locations of the devices and sensors in a building. A gene manipulation, multi-objective genetic algorithm is proposed to optimize the placement of active devices and sensors in frame structures to reduce active control cost and increase the structural control strategy's effectiveness. Gene manipulation uses engineering judgment to modify the encoded variable information defining the number of devices and sensors per floor in selected Pareto-optimal front individuals. The proposed methodology evolves Pareto-optimal layouts that minimize the number of devices/sensors used while also minimizing the building interstory drift for a 20-story steel-frame building under earthquake loading. The results indicate that the number and location of the devices and sensors in the layouts obtained strongly depends on the desired maximum drift. Also, the location of the sensors significantly impacts the efficiency of the active controller in reducing interstory drifts. In simulation trials, the proposed gene manipulation method obtained layouts that distributed devices and sensors more evenly over the building height than layouts obtained using standard multi-objective methods, resulting in greater control efficiency. The primary benefit of implementing the proposed gene manipulation was in reducing the number of multi-objective genetic algorithm generations required by up to 40% without negatively impacting the quality of Pareto-optimal device/sensor layout solutions obtained. Copyright © 2011 John Wiley & Sons, Ltd.
机译:主动控制效率在很大程度上取决于控制算法和设备类型,以及建筑物中设备和传感器的位置。提出了一种基因操纵多目标遗传算法,以优化主动装置和传感器在框架结构中的位置,以降低主动控制成本,提高结构控制策略的有效性。基因操纵使用工程判断来修改编码的变量信息,该信息定义了选定的帕累托最优前锋个体中每层的设备和传感器的数量。拟议的方法改进了帕累托最优布局,该布局可以最大程度地减少所使用的设备/传感器的数量,同时还可以最大程度减少地震荷载下20层钢框架建筑的建筑层间偏移。结果表明,设备和传感器在布局中的数量和位置在很大程度上取决于所需的最大漂移。而且,传感器的位置会显着影响主动控制器在减少层间漂移方面的效率。在模拟试验中,提出的基因操纵方法获得的布局比使用标准多目标方法获得的布局在建筑物高度上更均匀地分布设备和传感器,从而提高了控制效率。实施提出的基因操作的主要好处是,将所需的多目标遗传算法生成数量减少了40%,而不会对所获得的Pareto最优设备/传感器布局解决方案的质量产生负面影响。版权所有©2011 John Wiley&Sons,Ltd.

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