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ARTIFICIAL NEURAL NETWORK MODEL FOR DIAGNOSING THE PERFORMANCE AND THE CONDITIONS OF AIR-OPERATED VALVES

机译:用于诊断空气阀性能和空气阀的性能的人工神经网络模型

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Air-operated valves(AOVs) are used to control or shut off the flow in the nuclear power plants. In particular, the failure of safety-related AOV could have significant impacts on the safety of the nuclear power plants and therefore, their performances have been tested and evaluated periodically. However, the current method to evaluate the performance needs to be revised to enhance the accuracy and to identify defects of AOV independently of personal skills. This paper introduce the ANN(Artificial Neural Network) model to diagnose the performance and the condition altogether. Test facilities were designed and configured to measure the signals such as supply pressure, control pressure, actuator pressure, stem displacement and stem thrust. Tests were carried out in various conditions which simulate defects with leak/clogged pipes, the bent stem and so on. First, the physical models of an AOV are developed to describe its behavior and to parameterize the characteristics of each component for evaluating the performance. Secondly, CNN(Convolutional Neural Network) architectures are designed considering the developed physical models to make a lead to the optimal performance of ANN. To train the ANN effectively, the measured signals were divided into several regions, from each of which the features are extracted and the extracted features are combined for classifying the defects. In addition, the model can provide the parameters of maximum available thrust, which is the key factor in periodic verification of AOV with the required accuracy and classify more than 10 different kinds of defects with high accuracy.
机译:空气阀(AOV)用于控制或关闭核电厂的流动。特别是,安全相关AOV的失败可能对核电厂的安全产生重大影响,因此,它们的性能已经过期测试和评估。然而,需要修改目前的评估性能的方法,以提高准确性,并独立于个人技能识别AOV的缺陷。本文介绍了ANN(人工神经网络)模型,以诊断性能和条件完全。设计并配置了测试设施,以测量电源压力,控制压力,致动器压力,茎位移和杆推力等信号。在各种条件下进行测试,该条件模拟泄漏/堵塞管道,弯曲阀杆等的缺陷。首先,开发了AOV的物理模型来描述其行为,并参数化每个组件的特征以评估性能。其次,考虑开发的物理模型,设计了CNN(卷积神经网络)架构,以导致ANN的最佳性能。为了有效地训练ANN,将测量的信号分成若干区域,每个区域被提取,并且提取的特征组合用于对缺陷进行分类。此外,该模型可以提供最大可用推力的参数,这是AOV的周期性验证的关键因素,具有所需的精度,并以高精度分类超过10种不同类型的缺陷。

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