首页> 外文期刊>Computing and informatics >Depth-First Event Ordering in BDD-Based Fault Tree Analysis
【24h】

Depth-First Event Ordering in BDD-Based Fault Tree Analysis

机译:基于BDD的故障树分析中的深度优先事件排序

获取原文
       

摘要

In BDD-based fault tree analysis, the size of BDD encoding fault trees heavily depends on the chosen ordering. From a theoretical point of view, finding the best ordering is an intractable task. So, heuristics are used to get good orderings. The most simple, and often one of the best heuristics is depth first left most (DFLM) heuristic. Although having been used widely, the performance of DFLM heuristic is still only vaguely understood, and not much formal work has been done. This paper starts from two different research objects: fault tree without repeated events (NRFT) and fault tree with repeated events (RFT). For NRFT, the BDD generated according to DFLM ordering is proved to be the smallest BDD with the size equal to the total number of events. For RFT, a randomized algorithm is firstly proposed to create reliable benchmarks including large number of random fault trees with different specificities. Then, these benchmarks are used to perform two types of experiments to study the performance of DFLM heuristic. For RFT with small number of repeated events, it is found that the sizes of the BDD built over DFLM orderings are only slightly larger than the sizes of the RFT with different specificities. However, with the increase of the number of repeated events, we encounter the size explosion problem, and the change of repeated event distribution patterns will have a significant impact on the sizes of the BDD built over DFLM orderings. We also find that the number of repeated events is the more important measure than some other specificities (shape, logical type of top gate and OR/AND gate distribution) to estimate the level of the difficulty in BDD-based fault tree analysis.
机译:在基于BDD的故障树分析中,BDD编码故障树的大小在很大程度上取决于所选的顺序。从理论上讲,找到最佳顺序是一项艰巨的任务。因此,试探法用于获得良好的排序。最简单且通常是最好的启发式方法之一是深度优先最左侧(DFLM)启发式方法。尽管已被广泛使用,但对DFLM启发式算法的性能仍然只有模糊的了解,并且没有做太多正式的工作。本文从两个不同的研究对象开始:无重复事件的故障树(NRFT)和有重复事件的故障树(RFT)。对于NRFT,根据DFLM排序生成的BDD被证明是最小的BDD,其大小等于事件总数。对于RFT,首先提出了一种随机算法来创建可靠的基准,其中包括大量具有不同特性的随机故障树。然后,这些基准用于执行两种类型的实验,以研究DFLM启发式算法的性能。对于具有少量重复事件的RFT,发现根据DFLM顺序构建的BDD的大小仅略大于具有不同特异性的RFT的大小。但是,随着重复事件数量的增加,我们遇到了大小爆炸问题,重复事件分布模式的变化将对基于DFLM排序构建的BDD的大小产生重大影响。我们还发现,在基于BDD的故障树分析中,重复事件的数量比其他一些特殊性(形状,顶门的逻辑类型以及“或/与”门的分布)更重要,可以用来估计难度级别。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号