Various networks such as cloud computing, water/gas/electricity networks, wireless sensor networks, transportation networks, and 4G/5G networks, have become an integral part of our daily lives. A binary-state network (BN) is often used to model network structures and applications. The BN reliability is the probability that a BN functions continuously; that is, that there is always a simple path connected between a specific pair of nodes. This metric is a popular index for designing, managing, controlling, and evaluating networks. The traditional BN reliability assumes that the reliability of each arc is known in advance. However, this is not always the case. Functioning components operate under different environments; moreover, a network might have newly installed components. Hence, the reliability of these components is not always known. To resolve the aforementioned problems, in which the reliability of some components of a network are uncertain, we introduce the fuzzy concept for the analysis of these components, and propose a new algorithm to solve this uncertainty-component BN reliability problem. The time complexity of the proposed algorithm is analyzed, and the superior performance of the algorithm is demonstrated through examples.
翻译:云计算、水/气体/电力网络、无线传感器网络、运输网络和4G/5G网络等各种网络已成为我们日常生活的一个组成部分。二元状态网络(BN)常常被用来建模网络结构和应用程序。 BN可靠性是BN连续运行的概率;也就是说,特定节点之间总是有一条简单的连接路径。这个指标是设计、管理、控制和评价网络的流行指数。传统的BN可靠性假定每个弧的可靠性是预先知道的。然而,情况并非如此。功能化的部件在不同环境中运作;此外,网络也可能有新安装的部件。因此,这些部件的可靠性并不总是为人所知。为了解决上述问题,即网络某些部件的可靠性不确定,我们引入了分析这些部件的模糊概念,并提出新的算法来解决不确定性-成份 BN可靠性问题。提议的算法在时间上很复杂,而算法的优异性表现通过实例来证明。