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Using Bayes belief networks in industrial FMEA modeling and analysis

机译:在工业FMEA建模和分析中使用贝叶斯信念网络

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This paper presents the use of Bayes probabilistic networks as a new methodology for encoding design failure modes and effects analysis (BN-FMEA) models of mechatronic systems. The method employs established Bayesian belief network theory to construct probabilistic directed acyclic graph (DAG) models which represent causal and statistical dependencies between system-internal and -external (customer and world) state and event variables of the physical system. A new class of severity variables is also defined. Root probabilities and conditional probability and severity utility tables are generated and attached to the graph structure for use in inferencing and design trade-off evaluation. BN-FMEA provides a language for design teams to articulate-with greater precision and consistency and less ambiguity-physical system failure cause-effect relationships, and the uncertainty about their impact on customers and the world. Demonstration software developed at Stanford illustrates how BN-FMEA can be applied to FMEA modeling of an inkjet printer. The software supports knowledge acquisition of BN-FMEA models, and generates from the belief net model criticality matrices and Pareto charts conformant with established FMEA standards such as SAE 1998. The approach supports traditional design FMEA objectives, identification of system failure modes, and provides improved knowledge representation and inferencing power. Limitations of the BN-FMEA methodology are also discussed. Finally, BN-FMEB is presented as a basis for improved integration of design and diagnostic modeling of mechatronic systems.
机译:本文介绍了使用贝叶斯概率网络作为对机电系统的设计失效模式和影响分析(BN-FMEA)模型进行编码的新方法。该方法采用已建立的贝叶斯信念网络理论来构建概率有向无环图(DAG)模型,该模型表示物理系统的系统内部和外部(客户和世界)状态和事件变量之间的因果关系和统计关系。还定义了一类新的严重性变量。生成根概率,条件概率和严重性效用表,并将其附加到图结构中,以用于推理和设计权衡评估。 BN-FMEA为设计团队提供了一种表达的语言-精度更高,一致性更高,含糊不清-物理系统故障的因果关系以及它们对客户和整个世界的影响的不确定性。斯坦福大学开发的演示软件演示了如何将BN-FMEA应用于喷墨打印机的FMEA建模。该软件支持BN-FMEA模型的知识获取,并从信念网模型的关键性矩阵和符合既定FMEA标准(例如SAE 1998)的Pareto图表中生成。该方法支持传统的FMEA目标设计,系统故障模式的识别并提供改进的功能。知识表示和推理能力。还讨论了BN-FMEA方法的局限性。最后,介绍了BN-FMEB,作为改进机电系统设计和诊断模型集成的基础。

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