论文标题
2型模糊可靠性冗余分配问题及其使用粒子群优化算法的解决方案
Type-2 fuzzy reliability redundancy allocation problem and its solution using particle swarm optimization algorithm
论文作者
论文摘要
在本文中,提出了模糊的多目标可靠性冗余分配问题(FMORRAP),该问题可最大化系统的可靠性,同时在2型模糊不确定性下同时最大程度地减少系统成本。在拟议的公式中,与系统相关的高阶不确定性(例如参数,制造,环境和设计人员的不确定性)是用Interval Type 2模糊集(IT2 FS)建模的。间隔2型会员功能(IT2 MF)不确定性的占地面积可以通过捕获几位系统专家的多种观点来适应这些不确定性。我们认为IT2 MF表示子系统的可靠性和成本,这些可靠性和成本将通过扩展原理进一步汇总,以根据其配置(即串联和并行序列)评估总系统可靠性和成本。我们提出了一种基于粒子群优化(PSO)的新型解决方案方法来解决FMORRAP。为了证明两种公式的适用性,即平行fmorrap和并行串联fmorrap,我们对各种数值数据集进行了实验模拟。决策者/系统专家对目标(系统可靠性和成本)分配了不同的重要性,并且这些偏好由一组权重表示。最佳结果是从我们的解决方案方法中获得的,并且使用这些不同的权重集建立了帕累托最佳前沿。实施了遗传算法(GA),以比较我们提出的溶液方法获得的结果。在PSO和GA之间进行了统计分析,发现基于PSO的Pareto溶液的表现优于GA。
In this paper, the fuzzy multi-objective reliability redundancy allocation problem (FMORRAP) is proposed, which maximizes the system reliability while simultaneously minimizing the system cost under the type 2 fuzzy uncertainty. In the proposed formulation, the higher order uncertainties (such as parametric, manufacturing, environmental, and designers uncertainty) associated with the system are modeled with interval type 2 fuzzy sets (IT2 FS). The footprint of uncertainty of the interval type 2 membership functions (IT2 MFs) accommodates these uncertainties by capturing the multiple opinions from several system experts. We consider IT2 MFs to represent the subsystem reliability and cost, which are to be further aggregated using extension principle to evaluate the total system reliability and cost according to their configurations, i.e., series parallel and parallel series. We proposed a particle swarm optimization (PSO) based novel solution approach to solve the FMORRAP. To demonstrate the applicability of two formulations, namely, series parallel FMORRAP and parallel series FMORRAP, we performed experimental simulations on various numerical data sets. The decision makers/system experts assign different importance to the objectives (system reliability and cost), and these preferences are represented by sets of weights. The optimal results are obtained from our solution approach, and the Pareto optimal front is established using these different weight sets. The genetic algorithm (GA) was implemented to compare the results obtained from our proposed solution approach. A statistical analysis was conducted between PSO and GA, and it was found that the PSO based Pareto solution outperforms the GA.