Optimization Methods for Redundancy Allocation in Large Systems

F. Leon, P. Cașcaval, C. Bǎdicǎ
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引用次数: 2

Abstract

This paper addresses the issue of optimal allocation of spare modules in large series-redundant systems in order to obtain a required reliability under cost constraints. Both cases of active and standby redundancy are considered. Moreover, for a subsystem with standby redundancy, two cases are examined: in the first case, all the spares are maintained in cold state (cold standby redundancy) and, in the second one, to reduce the time needed to put a spare into operation when the active one fails, one of the spares is maintained in warm conditions. To solve this optimization problem, for the simpler case of active redundancy an analytical method based on the Lagrange multipliers technique is first applied. Then the results are improved by using Pairwise Hill Climbing, an original fine-tuning algorithm. An alternative approach is an innovative evolutionary algorithm, RELIVE, in which an individual lives for several generations and improves its fitness based on local search. These methods are especially needed in case of very large systems.
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大型系统中冗余分配的优化方法
本文研究了大型串联冗余系统中备件的优化配置问题,以在成本约束下获得所需的可靠性。考虑了主备冗余的两种情况。此外,对于具有备用冗余的子系统,研究了两种情况:在第一种情况下,所有备件保持在冷状态(冷备用冗余);在第二种情况下,为了减少在主备故障时将备用备件投入运行所需的时间,将其中一个备件保持在热状态。为了解决这一优化问题,首先采用了一种基于拉格朗日乘子技术的解析方法。然后利用一种新颖的微调算法——双爬坡算法对结果进行改进。另一种方法是一种创新的进化算法,RELIVE,其中一个个体可以生存几代,并根据局部搜索来提高其适应度。这些方法在非常大的系统中特别需要。
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