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Solving equilibrium standby redundancy optimization problem by hybrid PSO algorithm

机译:用混合PSO算法解决均衡备用冗余优化问题

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摘要

Redundancy allocation is a direct way of enhancing the series-parallel system lifetime and reliability. Since it is difficult to obtain the exact probability distributions about the lifetimes of components, fuzzy random variables are used to characterize them. Under the given system weights and cost constraints, we maximize the equilibrium optimistic system lifetime of redundant elements. This paper proposes an equilibrium optimization model for the standby redundancy system. Since the exact analytical expressions of the equilibrium optimistic system lifetimes are unavailable in general case, the proposed model cannot be analytically solved. Under mild assumptions, the new equilibrium model can be divided into its equivalent stochastic programming subproblems. Moreover, a new approximation method is proposed to solve the general equilibrium model. For the equivalent stochastic programming subproblems, sample average approximation (SAA) is adapted to gain their SAA problems. A hybrid particle swarm optimization algorithm with local search is designed to solve the SAA problems. Several numerical experiments are conducted to investigate the effectiveness of proposed model and designed solution method. The comparative studies indicate the randomness, and fuzziness cannot be ignored in the equilibrium standby redundancy optimization problem.
机译:冗余分配是一种引进串联系统寿命和可靠性的直接方式。由于难以获得关于组件的寿命的确切概率分布,因此模糊的随机变量用于表征它们。在给定的系统权重和成本约束下,我们最大限度地提高了冗余元件的均衡乐观系统寿命。本文提出了一种备用冗余系统的平衡优化模型。由于均衡乐观系统的确切分析表达式在一般情况下不可用,因此该模型不能被分析解决。在温和的假设下,新的均衡模型可以分为其等同的随机编程子问题。此外,提出了一种新的近似方法来解决一般均衡模型。对于等效随机编程子问题,样本平均近似(SAA)适于获得SAA问题。具有本地搜索的混合粒子群优化算法旨在解决SAA问题。进行了几个数值实验,以研究所提出的模型和设计解决方法的有效性。比较研究表明,在均衡待机冗余优化问题中,不能忽略随机性和模糊性。

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