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Fully Bayesian reliability assessment of multi-state systems with overlapping data

机译:具有重叠数据的多状态系统的完全贝叶斯可靠性评估

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摘要

The failure data at the system level are often limited, resulting in high uncertainty to system reliability assessment. Integrating data drawn from various structural levels of the target system (e.g. the system, subsystems, assemblies and components), i.e. the multi-level data, through Bayesian analysis can improve the precision of system reliability assessment. However, if the multi-level data are overlapping, it is challenging for Bayesian integration to develop the likelihood function. Especially for multi-state systems (MSS), the Bayesian integration with overlapping data is even more difficult. The major disadvantage of previous approaches is the intensive computation for the development of the likelihood function caused by the workload to opt the appropriate combinations of the vectors of component states consistent with the overlapping data. An improved fully Bayesian integration approach from a geometric perspective is proposed for the reliability assessment of MSS with overlapping data. In this method, a specific combination of component states is regarded as a state vector, which leads to a specific system state of the MSS, and all state vectors generate a system state space. The overlapping data are regarded as the constraints which create hyperplanes in the system state space. And a point in a hyperplane corresponds to a particular combination of the state vectors. In the light of the features of the constraints, the proposed approach introduces space partition and hyperplane segmentation, which reduces the selection workload significantly and simplifies the likelihood function for overlapping data. Two examples demonstrate the feasibility and efficiency of the proposed approach.
机译:系统级别的故障数据通常很有限,导致系统可靠性评估的不确定性很高。通过贝叶斯分析集成从目标系统的各种结构级别(例如系统,子系统,组件和组件)中提取的数据(即多级数据)可以提高系统可靠性评估的准确性。但是,如果多级数据重叠,则贝叶斯积分开发似然函数将是一个挑战。特别是对于多状态系统(MSS),具有重叠数据的贝叶斯集成更加困难。先前方法的主要缺点是用于开发由工作量引起的似然函数的密集计算,以选择与重叠数据一致的分量状态向量的适当组合。从几何角度出发,提出一种改进的完全贝叶斯积分方法,用于重叠数据的MSS的可靠性评估。在这种方法中,组件状态的特定组合被视为状态向量,这导致MSS的特定系统状态,并且所有状态向量都生成系统状态空间。重叠的数据被视为在系统状态空间中创建超平面的约束。超平面中的一个点对应于状态向量的特定组合。根据约束的特点,提出的方法引入了空间划分和超平面分割,从而大大减少了选择工作量,简化了重叠数据的似然函数。两个例子说明了该方法的可行性和有效性。

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