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Development of ME-GI dual-fuel engine fault diagnosis expert system based on self-learning ontology

机译:基于自学习本体的ME-GI双燃料发动机故障诊断专家系统的开发

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In order to meet intelligent requirement of the expert system in the process of fault diagnosis, a fault diagnosis system architecture which based on self-learning ontology was proposed in this paper. The fault diagnosis knowledge structure was defined; the relevant structure ontology and core fault ontology were constructed. Based on design of data warehouse of fault diagnosis, the decision tree in machine learning and Apriori algorithm were used to acquire fault knowledge to realize ontology self-learning. Taking the Hydraulic Control System of ME-GI dual-fuel engine as a prototype, the Hydraulic Control System diagnosis expert system was developed based on self-learning ontology.
机译:为了满足专家系统在故障诊断过程中的智能需求,提出了一种基于自学习本体的故障诊断系统架构。定义了故障诊断知识结构;构造了相关的结构本体和核心故障本体。在故障诊断数据仓库设计的基础上,利用机器学习决策树和Apriori算法获取故障知识,实现本体自学习。以ME-GI双燃料发动机的液压控制系统为原型,基于自学习本体开发了液压控制系统诊断专家系统。

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