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Reliability Information Fusion Based on Bayesian Generalized Mean Operator

机译:基于贝叶斯广义均值算子的可靠性信息融合

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Reliability assessment is difficult for such complex systems as aerospace and aircraft in the case that the field test sample is small for limited money or time. Otherwise, during the development of such complex systems, a lot of information related to reliability can be easily got, such as test data of subsystem and components, test data of similarity products, expert experience etc. In order to improve the confidence level of statistical inference, we should make full use of such reliability information. This paper proposes a fusion approach based on Generalized Mean Operator(GMO), which can effectively represents the redundancy and complementary among multi-source information. The unknown parameters of the fusion model are estimated by the second maximum likelihood estimation method (ML-II).To illustrate the efficiency of the approach, a simulation example is given.
机译:如果现场测试样品在有限的金钱或时间上很小,那么对于航空航天等复杂系统而言,可靠性评估就很困难。否则,在开发此类复杂系统的过程中,很容易获得许多与可靠性有关的信息,例如子系统和组件的测试数据,相似产品的测试数据,专家经验等。推论,我们应该充分利用这种可靠性信息。提出了一种基于广义均值算子(GMO)的融合方法,该方法可以有效地表示多源信息之间的冗余性和互补性。通过第二种最大似然估计方法(ML-II)估计融合模型的未知参数。为说明该方法的有效性,给出了一个仿真示例。

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