基于模糊马尔可夫模型的机器人可靠性研究

M. Leuschen, I. Walker, Joseph R. Cavallaro
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引用次数: 42

摘要

在过去的几年中,机器人的新应用增加了机器人可靠性和容错性的重要性。可靠性工程的标准方法依赖于概率模型,由于在设计和原型阶段缺乏足够的概率信息,这种方法通常不适合这项任务。模糊逻辑为概率范式提供了另一种选择,即可能性,它更适合于机器人环境中的可靠性。本文开发的模糊马尔可夫建模技术是一种在相当不确定的情况下分析容错设计的技术,例如在组件故障率的汇编中可以看到。它足够详细,可以提供有用的信息,同时保持情况固有的模糊性(不确定性)。它可以很好地与模糊故障树(一种成熟的模糊可靠性工具)结合使用。也许最重要的是,它直接建立在现有的可靠性技术上,使得它很容易添加到可靠性工具箱中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robot reliability through fuzzy Markov models
In the past few years, new applications of robots have increased the importance of robotic reliability and fault tolerance. Standard approaches of reliability engineering rely on the probability model, which is often inappropriate for this task due to a lack of sufficient probabilistic information during the design and prototyping phases. Fuzzy logic offers an alternative to the probability paradigm, possibility, that is much more appropriate to reliability in the robotic context. Fuzzy Markov modeling, the technique developed in this paper, is a technique for analyzing fault tolerant designs under considerable uncertainty, such as is seen in compilations of component failure rates. It is sufficiently detailed to provide useful information while maintaining the fuzziness (uncertainty) inherent in the situation. It works well in conjunction with fuzzy fault trees, a well-established fuzzy reliability tool. Perhaps most importantly, it builds directly on existing reliability techniques, making it easy to add to reliability toolboxes.
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