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首页> 外文期刊>Nuclear Science, IEEE Transactions on >Bayesian Inference Modeling of Total Ionizing Dose Effects on System Performance
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Bayesian Inference Modeling of Total Ionizing Dose Effects on System Performance

机译:总电离剂量对系统性能的贝叶斯推理模型

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摘要

A probabilistic Bayesian modeling method for determining the effects of radiation-induced component-level parameter shifts on system-level performance is described. The modeling method incorporates information about the system design and component-level degradation into a Bayesian network and performs inference on the constructed network using Markov chain Monte Carlo approaches, producing distributions for the range of component responses. Deterministic simulations use the results of the Bayesian inference to determine the combined impact of multiple degraded components on system performance quantities. The goal of the modeling approach is to turn uncertain information into actionable knowledge. The utility of this approach is demonstrated using a case study based on total ionizing dose degradation of line-sensor components in a simple line-tracking robot system.
机译:描述了确定辐射引起的组件级参数偏移对系统级性能的影响的概率贝叶斯建模方法。该建模方法将有关系统设计和组件级降级的信息合并到贝叶斯网络中,并使用马尔可夫链蒙特卡洛方法对构建的网络进行推断,从而生成组件响应范围的分布。确定性仿真使用贝叶斯推断的结果来确定多个降级组件对系统性能量的综合影响。建模方法的目标是将不确定的信息转化为可操作的知识。通过在简单的直线跟踪机器人系统中基于线传感器组件总电离剂量退化的案例研究,证明了该方法的实用性。

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