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An overview of fault tree analysis and its application in model based dependability analysis

机译:故障树分析的概述及其在基于模型的可靠性分析中的应用

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Fault Tree Analysis (FTA) is a well-established and well-understood technique, widely used for dependability evaluation of a wide range of systems. Although many extensions of fault trees have been proposed, they suffer from a variety of shortcomings. In particular, even where software tool support exists, these analyses require a lot of manual effort. Over the past two decades, research has focused on simplifying dependability analysis by looking at how we can synthesise dependability information from system models automatically. This has led to the field of model-based dependability analysis (MBDA). Different tools and techniques have been developed as part of MBDA to automate the generation of dependability analysis artefacts such as fault trees. Firstly, this paper reviews the standard fault tree with its limitations. Secondly, different extensions of standard fault trees are reviewed. Thirdly, this paper reviews a number of prominent MBDA techniques where fault trees are used as a means for system dependability analysis and provides an insight into their working mechanism, applicability, strengths and challenges. Finally, the future outlook for MBDA is outlined, which includes the prospect of developing expert and intelligent systems for dependability analysis of complex open systems under the conditions of uncertainty. (C) 2017 Elsevier Ltd. All rights reserved.
机译:故障树分析(FTA)是一种建立完善且易于理解的技术,广泛用于各种系统的可靠性评估。尽管已经提出了故障树的许多扩展,但是它们具有各种缺点。特别是,即使存在软件工具支持,这些分析也需要大量的人工。在过去的二十年中,研究集中在通过研究如何从系统模型自动合成可靠性信息来简化可靠性分析。这导致了基于模型的可靠性分析(MBDA)领域的发展。作为MBDA的一部分,已经开发出了不同的工具和技术来自动化可靠性分析伪像(如故障树)的生成。首先,本文回顾了标准故障树的局限性。其次,回顾了标准故障树的不同扩展。第三,本文回顾了许多著名的MBDA技术,其中故障树被用作系统可靠性分析的一种手段,并提供了对其工作机制,适用性,优势和挑战的见解。最后,概述了MBDA的未来前景,包括在不确定性条件下开发用于复杂开放系统可靠性分析的专家和智能系统的前景。 (C)2017 Elsevier Ltd.保留所有权利。

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