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Quantitative analysis of dynamic fault trees using improved Sequential Binary Decision Diagrams

机译:使用改进的顺序二叉决策图对动态故障树进行定量分析

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Dynamic fault trees (DFTs) are powerful in modeling systems with sequence- and function dependent failure behaviors. The key point lies in how to quantify complex DFTs analytically and efficiently. Unfortunately, the existing methods for analyzing DFTs all have their own disadvantages. They either suffer from the problem of combinatorial explosion or need a long computation time to obtain an accurate solution. Sequential Binary Decision Diagrams (SBDDs) are regarded as novel and efficient approaches to deal with DFTs, but their two apparent shortcomings remain to be handled: That is, SBDDs probably generate invalid nodes when given an unpleasant variable index and the scale of the resultant cut sequences greatly relies on the chosen variable index. An improved SBDD method is proposed in this paper to deal with the two mentioned problems. It uses an improved ite (If-Then-Else) algorithm to avoid generating invalid nodes when building SBDDs, and a heuristic variable index to keep the scale of resultant cut sequences as small as possible. To confirm the applicability and merits of the proposed method, several benchmark examples are demonstrated, and the results indicate this approach is efficient as well as reasonable. (C) 2015 Elsevier Ltd. All rights reserved.
机译:动态故障树(DFT)在具有依赖于序列和功能的故障行为的建模系统中非常强大。关键在于如何有效地分析和量化复杂的DFT。不幸的是,现有的分析DFT的方法都有其自身的缺点。它们要么遭受组合爆炸的问题,要么需要很长的计算时间才能获得准确的解决方案。顺序二元决策图(SBDD)被认为是处理DFT的新颖而有效的方法,但是它们的两个明显缺陷仍有待解决:也就是说,当给定令人不快的变量索引和结果切割的规模时,SBDD可能会生成无效节点。序列在很大程度上取决于所选的变量索引。为了解决上述两个问题,本文提出了一种改进的SBDD方法。它使用改进的ite(If-Then-Else)算法来避免在构建SBDD时生成无效节点,并使用启发式变量索引来使生成的剪切序列的规模尽可能小。为了证实该方法的适用性和优点,通过几个基准实例进行了验证,结果表明该方法既有效又合理。 (C)2015 Elsevier Ltd.保留所有权利。

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