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首页> 外文期刊>European Journal of Operational Research >A novel minimal cut-based algorithm to find all minimal capacity vectors for multi-state flow networks
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A novel minimal cut-based algorithm to find all minimal capacity vectors for multi-state flow networks

机译:一种新的基于切割的算法,可以找到多状态流量网络的所有最小容量向量

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摘要

y Real systems, such as computer systems, can be modeled as network topologies with vertices and edges. Owing to equipment failures and maintenance requirements, the capacities of edges have several states. Such systems are regarded as multi-state flow networks (MSFN). System reliability of an MSFN is the probability that the required flow (i.e., demand) can successfully be sent from the source to the sink. By adopting a minimal path (MP) approach, system reliability can be computed in terms of all minimal capacity vectors meeting the demand d. A minimal capacity vector is called a d-MP. Although several algorithms have been presented in the literature for finding all d-MP, improving efficiency in the search for all d-MP is always a challenge. A group approach with both the concepts of minimal cut and MP is developed in this study, narrowing the search range of feasible flow vectors. An algorithm based on the group approach is then proposed to improve the efficiency of the d-MP search. According to the structure of the proposed algorithm, parallel computing can be implemented with significant improvement in the efficiency of the d-MP generation, where the proposed algorithm is compared with previous ones based on three benchmarks, in terms of CPU time. (C) 2019 Elsevier B.V. All rights reserved.
机译:y实际系统(如计算机系统)可以用顶点和边缘建模为网络拓扑。由于设备故障和维护要求,边缘的能力有几个州。这些系统被视为多状态流量网络(MSFN)。 MSFN的系统可靠性是所需流量(即,需求)可以成功从源发送到宿宿者的概率。通过采用最小路径(MP)方法,可以根据满足需求的所有最小容量向量来计算系统可靠性。最小容量矢量称为D-MP。虽然在文献中呈现了几种算法来查找所有D-MP,但提高了所有D-MP的搜索效率始终是一个挑战。在本研究中开发了一种具有最小剪切和MP概念的群体方法,缩小可行流量矢量的搜索范围。然后提出了一种基于组方法的算法来提高D-MP搜索的效率。根据所提出的算法的结构,可以在D-MP生成的效率下实现并行计算,其中提出的算法与基于CPU时间的三个基准相比,将所提出的算法与先前的基准相比。 (c)2019 Elsevier B.v.保留所有权利。

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