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Optimal placement of sensors for structural system identification and health monitoring using a hybrid swarm intelligence technique

机译:使用混合群智能技术优化传感器位置,以进行结构系统识别和健康监测

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Setting up a health monitoring system for large-scale civil engineering structures requires a large number of sensors and the placement of these sensors is of great significance for such spatially separated large structures. In this paper, we present an optimal sensor placement (OSP) algorithm by treating OSP as a combinatorial optimization problem which is solved using a swarm intelligence technique called particle swarm optimization (PSO). We propose a new hybrid PSO algorithm by combining a self-configurable PSO with the Nelder-Mead algorithm to solve this rather difficult combinatorial problem of OSP. The proposed algorithm aims precisely to achieve the best identification of modal frequencies and mode shapes. Numerical experiments have been carried out by considering civil engineering structures to evaluate the performance of the proposed swarm-intelligence-based OSP algorithm. Numerical studies indicate that the proposed hybrid PSO algorithm generates sensor configurations superior to the conventional iterative information-based approaches which have been popularly used for large structures. Further, the proposed hybrid PSO algorithm exhibits superior convergence characteristics when compared to other PSO counterparts.
机译:建立用于大型土木工程结构的健康监测系统需要大量传感器,并且这些传感器的位置对于这种在空间上分离的大型结构具有重要意义。在本文中,我们通过将OSP视为组合优化问题,提出了一种最优传感器放置(OSP)算法,该问题是使用一种称为粒子群优化(PSO)的群体智能技术来解决的。通过将可自配置的PSO与Nelder-Mead算法相结合,我们提出了一种新的混合PSO算法,以解决OSP的这一相当困难的组合问题。所提出的算法正好旨在实现对模态频率和模态形状的最佳识别。通过考虑土木工程结构进行了数值实验,以评估所提出的基于群智能的OSP算法的性能。数值研究表明,提出的混合PSO算法产生的传感器配置优于已广泛用于大型结构的传统基于迭代信息的方法。此外,与其他PSO对应算法相比,所提出的混合PSO算法具有更好的收敛性。

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