Neural network application to diagnostics of pneumatic servo-motor actuated control valve

Yurii A. Korablev, N. A. Logutova, M. Shestopalov
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引用次数: 4

Abstract

This paper presents an approach for development of a diagnostic system on the base of ANFIS networks for creation of reference models of pneumatic servo-motor actuated control valve in the mode without faults. Detection, localization and identification of faults is carried out on the basis of the analysis of extreme values of residuals. The idea of this approach is illustrated on a practical example of the diagnostic task solution for benchmark model of pneumatic servo-motor actuated control valve developed by the European university project DAMADIC'S in MATLAB/SIMULINK.
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神经网络在气动伺服马达控制阀诊断中的应用
本文提出了一种基于ANFIS网络的无故障状态下气动伺服马达控制阀参考模型建立诊断系统的开发方法。在残差极值分析的基础上进行故障的检测、定位和识别。以欧洲大学DAMADIC项目在MATLAB/SIMULINK中开发的气动伺服电机控制阀基准模型诊断任务解决方案为例,说明了该方法的思想。
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