Diagnostic Bayesian networks modeling based on multi-signal flow graphs
-
摘要: 多信号流图与贝叶斯网络是两种不同的建模方法,对两种建模方法的异同分析表明多信号流图到贝叶斯网络的转化是可行的.为了降低诊断贝叶斯网络模型的开发费用,提出了一种基于多信号流图的诊断贝叶斯网络建模方法,从模型结构和模型参数两个方面论述了多信号流图向诊断贝叶斯网络的转化方法.依据该方法生成的诊断贝叶斯网络模型具有应对复杂系统故障诊断的证据冲突及不确定性问题的优点.实验证明所获得的诊断贝叶斯网络模型的诊断准确性与多信号流图模型一致.Abstract: The similarities and differences between multi-signal flow graphs and Bayesian networks were analysed, which show that the conversion of multi-signal flow graphs to Bayesian networks is feasible. A diagnostic Bayesian networks modeling method was proposed based on multi-signal flow graphs in order to reduce the diagnostic Bayesian network models development cost. The method includes the conversion of the structure of multi-signal flow graphs to the structure of Bayesian networks and the conversion of information of multi-signal flow graphs to the conditional probabilities table of Bayesian networks. The diagnostic Bayesian network model is good at dealing with uncertainty and conflicting evidence in complex systems fault diagnosis. The experiment results show that the diagnosis accuracy of diagnostic Bayesian network models is the same with multi-signal flow graph models.
-
Key words:
- Bayesian networks /
- modeling /
- fault /
- diagnosis /
- uncertainty analysis /
- multi-signal flow graphs
-
[1] Deb S, Pattipati K R, Raghavan V, et al. Multi-signal flow graphs: a novel approach for system testability analysis and fault diagnosis[J]. IEEE Aerospace and Electronic Systems Magazine,1995,10(5):14-25 [2] Pearl J. Probabilistic reasoning in intelligence systems: networks of plausible inference[M]. San Francisco: Morgan Kaufmann, 1988 [3] Przytula K W, Milford R. An efficient framework for the conversion of fault trees to diagnostic Bayesian network models Proceedings of 2006 IEEE Aerospace Conference. Piscataway, NJ: IEEE Press, 2006:1-14 [4] Przytula K W, Thompson D. Development of Bayesian diagnostic models using troubleshooting flow diagrams Proceedings of 2001 SPIE AeroSense. Orlando: SPIE Press, 2001:110-120 [5] Bangs O, Wuillemin P H. Top-down construction and repetitive structures representation in Bayesian networks Proceedings of the 13th International Artificial Intelligence Research Society Conference. Florida: AAAI Press, 2000: 282-286 [6] Lerner U, Parr R, Koller D, et al. Bayesian fault detection and diagnosis in dynamic systems Proc of the 17th National Conference on AI. Austin: AAAI Press,2000:531-537 [7] Langseth H, Bangs O. Parameter learning in object-oriented Bayesian networks[J]. Annals of Mathematics and Artificial Intelligence, 2001,32(1-4):221-243 [8] 龚勇,景小宁,陈云翔,等.基于多信号流图的飞控系统实时故障诊断[J].电光与控制, 2006, 13(6):89-92 Gong Yong, Jing Xiaoning, Chen Yunxiang, et al. Real-time fault diagnosis for flight control system based on multi-signal flow graphs[J]. Electronics Optics & Control,2006,13(6):89-92(in Chinese)
点击查看大图
计量
- 文章访问数: 3740
- HTML全文浏览量: 116
- PDF下载量: 911
- 被引次数: 0