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基于AI-ESTATE贝叶斯诊断的软件架构设计 被引量:4
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作者 孙小进 郭恩全 陈晓明 《国外电子测量技术》 2013年第11期23-27,33,共6页
为了提高水中兵器智能化故障诊断水平,实现诊断知识的可互换性和可移植性,设计了一种基于AI-ESTATE贝叶斯故障诊断的软件架构。简要分析了全测试环境人工智能交换与服务(AI-ESTATE)标准及其体系结构,并结合最新的贝叶斯网络技术,提出了... 为了提高水中兵器智能化故障诊断水平,实现诊断知识的可互换性和可移植性,设计了一种基于AI-ESTATE贝叶斯故障诊断的软件架构。简要分析了全测试环境人工智能交换与服务(AI-ESTATE)标准及其体系结构,并结合最新的贝叶斯网络技术,提出了相关实体的诊断模型标准化信息模型。最后在AI-ESTATE的架构概念和诊断系统的层次框架结构的基础上,设计了一种基于AI-ESTATE贝叶斯故障诊断技术的软件架构,同时给出了其实验验证的软件流程图。该软件架构的设计能够为电子装备故障诊断系统的软件开发提供一种新的解决方案。 展开更多
关键词 AI-ESTATE 贝叶斯故障诊断 可扩展标记语言 软件架构
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Combination of Multi-class Probability Support Vector Machines for Fault Diagnosis 被引量:2
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作者 蔡云泽 胡中辉 +2 位作者 尹汝泼 李烨 许晓鸣 《Journal of Donghua University(English Edition)》 EI CAS 2006年第1期12-17,共6页
To deal with multi-source multi-class classification problems, the method of combining multiple multi-class probability support vector machines (MPSVMs) using Bayesian theory is proposed in this paper. The MPSVMs are ... To deal with multi-source multi-class classification problems, the method of combining multiple multi-class probability support vector machines (MPSVMs) using Bayesian theory is proposed in this paper. The MPSVMs are designed by mapping the output of standard support vector machines into a calibrated posterior probability by using a learned sigmoid function and then combining these learned binary-class probability SVMs. Two Bayes based methods for combining multiple MPSVMs are applied to improve the performance of classification. Our proposed methods are applied to fault diagnosis of a diesel engine. The experimental results show that the new methods can improve the accuracy and robustness of fault diagnosis. 展开更多
关键词 support vector machines data fusion Bayesian theory fault diagnosis.
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Probabilistic SDG model description and fault inference for large-scale complex systems 被引量:4
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作者 杨帆 Xiao Deyun 《High Technology Letters》 EI CAS 2006年第3期239-244,共6页
Large-scale complex systems have the feature of including large amount of variables that have complex relationships, for which signed directed graph (SDG) model could serve as a significant tool by describing the ca... Large-scale complex systems have the feature of including large amount of variables that have complex relationships, for which signed directed graph (SDG) model could serve as a significant tool by describing the causal relationships among variables. Although qualitative SDG expresses the causing effects between variables easily and clearly, it has many disadvantages or limitations. Probabilistic SDG proposed in the article describes deliver relationships among faults and variables by conditional probabilities, which contains more information and performs more applicability. The article introduces the concepts and con- struction approaches of probabilistic SDG, and presents the inference approaches aiming at fault diagnosis in this framework, i.e. Bayesian inference with graph elimination or junction tree algorithms to compute fault probabilities. Finally, the probabilistic SDG of a typical example of 65t/h boiler system is given. 展开更多
关键词 signed directed graph (SDG) hazard assessment fault diagnosis Bayesian network
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