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Neural network classifiers applied to condition monitoring of a pneumatic process valve actuator

机译:神经网络分类器应用于气动过程阀执行器的状态监测

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摘要

As modern process plants become more complex, the ability to detect and identify the faulty operation of pneumatic control valves is becoming increasingly important. In this work, a neural network pattern classifier is employed to carry out fault diagnosis and identification upon the actuator of a Fisher-Rosemount 667 industrial process valve. The network is trained with experimental data obtained directly from a software package that comes with the valve. This has eliminated the need for additional instrumentation of the valve. Using this software, tests are carried out to obtain experimental parameters associated with the valve performance for incorrect supply pressure, diaphragm leakage, and vent blockage faults. Specifically, the valve signature and dynamic error band tests are used to directly obtain lower and upper bench sets, minimum, maximum, and average dynamic errors, as well as the dynamic linearity. Additionally, valve deadband and hysteresis are measured graphically from the available valve signature plots for each faulty condition. The relationships between these parameters, for each fault, form signatures that are subsequently learned by a multilayer feedforward network trained by error back-propagation. The test results show that the resulting network has the ability to detect and identify various magnitudes of each fault. It is also observed that a smaller network with a shorter training time results when the valve deadband and hysteresis are included in the training data. Thus, the extra effort required to extract these parameters from the valve signature plots is justified.
机译:随着现代加工厂变得越来越复杂,检测和识别气动控制阀的故障操作的能力变得越来越重要。在这项工作中,采用神经网络模式分类器对Fisher-Rosemount 667工业过程阀的执行器进行故障诊断和识别。通过直接从阀门随附的软件包中获得的实验数据对网络进行培训。这消除了对阀门的附加仪表的需求。使用该软件进行测试,以获得与阀门性能相关的实验参数,用于不正确的供气压力,隔膜泄漏和通风口堵塞故障。具体来说,阀特性和动态误差带测试用于直接获得上下工作台组,最小,最大和平均动态误差以及动态线性。此外,对于每种故障情况,可从可用的阀特征图以图形方式测量阀死区和磁滞。对于每个故障,这些参数之间的关系形成签名,这些签名随后由经过错误反向传播训练的多层前馈网络学习。测试结果表明,生成的网络具有检测和识别每个故障的各种幅度的能力。还可以观察到,当阀门死区和滞后现象包括在训练数据中时,会形成一个具有较短训练时间的较小网络。因此,从阀特征曲线提取这些参数所需的额外工作是合理的。

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