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An integrated particle swarm optimizer for optimization of truss structures with discrete variables

机译:集成粒子群优化器,用于优化具有离散变量的桁架结构

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摘要

This study presents a particle swarm optimization algorithm integrated with weighted particle concept and improved fly-back technique. The rationale behind this integration is to utilize the affirmative properties of these new terms to improve the search capability of the standard particle swarm optimizer. Improved fly-back technique introduced in this study can be a proper alternative for widely used penalty functions to handle existing constraints. This technique emphasizes the role of the weighted particle on escaping from trapping into local optimum(s) by utilizing a recursive procedure. On the other hand, it guaranties the feasibility of the final solution by rejecting infeasible solutions throughout the optimization process. Additionally, in contrast with penalty method, the improved fly-back technique does not contain any adjustable terms, thus it does not inflict any extra ad hoc parameters to the main optimizer algorithm. The improved fly-back approach, as independent unit, can easily be integrated with other optimizers to handle the constraints. Consequently, to evaluate the performance of the proposed method on solving the truss weight minimization problems with discrete variables, several benchmark examples taken from the technical literature are examined using the presented method. The results obtained are comparatively reported through proper graphs and tables. Based on the results acquired in this study, it can be stated that the proposed method (integrated particle swarm optimizer, iPSO) is competitive with other metaheuristic algorithms in solving this class of truss optimization problems.
机译:本研究提出了一种结合了加权粒子概念和改进的反激技术的粒子群优化算法。集成的基本原理是利用这些新术语的肯定性来提高标准粒子群优化器的搜索能力。这项研究中引入的改进的反激技术可以作为广泛使用的惩罚函数来处理现有约束的适当替代方法。该技术强调了加权粒子在通过使用递归过程逃避陷入局部最优值中的作用。另一方面,它通过拒绝整个优化过程中不可行的解决方案来保证最终解决方案的可行性。另外,与惩罚方法相比,改进的反激技术不包含任何可调整项,因此不会对主优化器算法造成任何额外的临时参数。改进后的反激方法作为独立的单元,可以轻松地与其他优化器集成以处理约束。因此,为了评估所提出的方法在解决具有离散变量的桁架重量最小化问题方面的性能,使用所提出的方法检查了一些来自技术文献的基准示例。通过适当的图表比较地报告了获得的结果。根据本研究获得的结果,可以说,该方法(集成粒子群优化器,iPSO)在解决此类桁架优化问题方面与其他元启发式算法相比具有竞争优势。

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