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复杂系统故障诊断的现状和发展趋势 被引量:2

The Status Quo of Complex System Fault Diagnosis and Developing Trend
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摘要 简述了复杂系统故障诊断的意义,介绍了故障诊断方面采用的理论方法和主要内容,指出了复杂系统故障诊断的发展趋势。 This paper describes the significance of complex system fault diagnosis, introduces fault diagnosis theory, method and main contents and points out the developing trend of fault diagnosis.
出处 《机械管理开发》 2007年第5期78-79,共2页 Mechanical Management and Development
关键词 复杂系统 故障诊断 理论 发展趋势 Complex system Fault diagnosis Theory Developing trend
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共引文献94

同被引文献14

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