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Inference-based ambiguity management in decentralized decision-making: decentralized diagnosis of discrete event systems

机译:基于推断的分散决策的歧义管理:离散事件系统的分散诊断

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The task of decentralized decision-making involves interaction of a set of local decision-makers, each of which operates under limited sensing capabilities and is thus subjected to ambiguity during the process of decision-making. In a prior work by R. Kumar and S. Takai (2005) we made a key observation that such ambiguities are of differing gradations and presented a framework for inferencing over various local control decisions of varying ambiguity levels to arrive at a global control decision. We develop a similar framework for performing diagnosis in a decentralized setting. For each event-trace executed by a system being monitored, each local diagnoser issues its own diagnosis decision (failure or non-failure or unsure), tagged with a certain ambiguity level zero being the minimum). A global diagnosis decision is taken to be a "winning" local diagnosis decision, i.e., one with a minimum ambiguity level. The computation of an ambiguity level for a local decision requires an assessment of the self-ambiguities as well as the ambiguities of the others, and an inference based up on such knowledge. In order to characterize the class of systems for which any fault can be detected within a uniformly bounded delay, we introduce the notion of N-inference-diagnosability for failures (also called N-inference-diagnosability), where the index N represents the maximum ambiguity level of any winning local decision. We show that the codiagnosability introduced by W. Qiu and R. Kumar (2006) is the same as 0-inference F-diagnosability; the conditional F-codiagnosability introduced by Y. Wang et al.(2004), Y. Wang et al. (2005) is a type of 1-inference F-diagnosability; and the class of higher-index inference F-diagnosable systems strictly subsumes the class of lower-index ones.
机译:分散决策的任务涉及一组本地决策者的互动,每个决策者在有限的传感能力下运作,因此在决策过程中受到歧义。在R.Kumar和S. Takai(2005)的事先工作中,我们提出了一个关键观察,即这种歧义的渐变是不同的渐变,并提出了一个推论各种局部控制决策的框架,不同的歧义水平达到全球控制决定。我们开发了一个类似的框架,用于在分散的设置中执行诊断。对于被监视系统执行的每个事件跟踪,每个本地诊断器都会发出自己的诊断决策(失败或非故障或不确定),标记为最小值为零的特定模棱两可级别。全球诊断决定是“获胜”本地诊断决策,即一个具有最低歧义水平的人。用于局部决策的歧义水平的计算需要评估自我模糊以及其他人的含糊之处,以及基于这些知识的推理。为了表征在均匀界延迟内可以检测到任何故障的系统类别,我们介绍了对失败(也称为N引诱性诊断性)的N-推理诊断性的概念,其中索引n表示最大值任何获胜的地方决定的模棱两可水平。我们表明,由W.邱和R.Kumar(2006)引入的Codiagno可核性与0-推断F诊断性相同; Y. Wang等人引入的条件F-Codiagno可恢复性。(2004),Y. Wang等人。 (2005)是一种1推理F诊断性;和较高索引推理F诊断系统的类严格载于较低索引类别。

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