基于改进粒子群算法的结构测点优化方法研究

Guan Lu, Tongyang Feng, Xinyong Ma, Yiming Xu
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引用次数: 0

摘要

针对工字钢结构应力状态分析过程中测点多、优化难的问题,提出了一种基于模拟退火和遗传算法的改进粒子群优化算法,综合考虑应力状态识别误差和测点优化,对测点进行筛选。首先,将遗传算法的初始化、选择、交叉和变异融入到粒子群优化中;其次,在突变部分引入了模拟退火的思想。改进的粒子群优化算法改善了标准粒子群优化算法局部寻优过早和较差的问题。与标准粒子群算法相比,改进后的粒子群算法稳定性更好,抗早熟能力更强,准确率提高60%。工字钢测点选择和应力状态识别的仿真结果表明,改进的粒子群算法在应力状态识别的测点选择过程中具有较高的效率。力状态识别对选择点的误差小于3%。在工程应用中,为应力状态识别提供了较好的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Structural Measuring Point Optimization Method Based on Improved Particle Swarm Optimization
Aiming at the problem of too many measuring points and difficult optimization in the process of I-beam structure stress state analysis, an improved particle swarm optimization algorithm based on simulated annealing and genetic algorithm is proposed, which considers the identification error of stress state and the optimization of measuring points comprehensively to screen the measuring points. Firstly, the initialization, selection, crossover and mutation of genetic algorithm are integrated into particle swarm optimization; secondly, the idea of simulated annealing is introduced into the mutation part. The improved particle swarm optimization algorithm improves the premature and poor local optimization of the standard particle swarm optimization algorithm. Compared with the standard particle swarm optimization, the improved particle swarm optimization has better stability, stronger anti-premature ability and 60% higher accuracy. The simulation results of measuring point selection and stress state identification of I-beam show that the improved particle swarm optimization algorithm has high efficiency in the process of point selection of stress state identification. The error of force state identification to select points is less than 3%. In engineering application, it provides a better method for stress state identification.
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