首页> 外文会议>International Mechanical Engineering Congress and Exposition 2007 >AGENT BASED SOFT COMPUTING APPROACH FOR COMPONENT FAULT DETECTION AND ISOLATION OF CNC X-AXIS DRIVE SYSTEM
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AGENT BASED SOFT COMPUTING APPROACH FOR COMPONENT FAULT DETECTION AND ISOLATION OF CNC X-AXIS DRIVE SYSTEM

机译:基于Agent的CNC X轴驱动系统组件故障检测与隔离的软计算方法

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A novel agent based soft computing approach is proposed for fault detection and isolation (FDI) systems for industrial plants, in particular a highly nonlinear CNC X-axis drive system's component fault detection. The fuzzy-neuro architecture utilizes fuzzy clustering to build a nominal model, several fuzzy agents with local expertise, a fuzzy moderator for estimation of fault location, and finally several neuro-based (RBF) agents to estimate fault size. To illustrate the merits of the proposed method, it is applied to diagnosis of component faults of a CNC X-axis drive system amid significant noise levels. Simulation results demonstrate that the resulting FDI system is able to properly locate the fault types under all test conditions, and is sensitive to faults sizes as small as 0.5%.
机译:提出了一种新颖的基于代理的软计算方法,用于工业设备的故障检测和隔离(FDI)系统,尤其是高度非线性的CNC X轴驱动系统的组件故障检测。模糊神经体系结构利用模糊聚类构建名义模型,具有本地专业知识的几种模糊代理,用于估计故障位置的模糊主持人,最后使用几种基于神经的(RBF)代理来估计故障大小。为了说明该方法的优点,将其应用于在噪声水平较高的情况下,对CNC X轴驱动系统的组件故障进行诊断。仿真结果表明,所得的FDI系统能够在所有测试条件下正确定位故障类型,并且对故障尺寸小至0.5%敏感。

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