使用卷积神经网络分割电机操作阀门的信号

Konstantin I. Kotsoyev, Yevgeny L. Trykov, I. Trykova
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引用次数: 0

摘要

电机操作阀(MOV)是核电站中数量最多的部件之一。与MOV诊断有关的一个重要问题是,在核电站机组全功率运行期间,缺乏对MOV技术状态的过程(在线)自动控制。在这方面,一个重要的任务是基于MOV“打开”和“关闭”操作期间消耗的电流和电压信号的MOV诊断。电流和电压信号表示按一定间隔测量的时间序列。电流(和电压)信号可以在线接收,并包含在线诊断MOV状态所需的所有信息。从本质上讲,该方法允许从电流和电压信号中计算有功功率信号,并使用可诊断动动的值从有功功率信号的特定部分(段)中提取特征(“诊断信号”)。本文研究了有源电力信号的自动分割问题。为了实现这一目标,我们开发了一种基于卷积神经网络的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of a convolutional neural network to segment signals of motor operated valves
Motor operated valves (MOV) are one of the most numerous classes of the nuclear power plant components. An important issue concerned with the MOV diagnostics is the lack of in-process (online) automated control for the MOV technical condition during full power operation of the NPP unit. In this regard, a vital task is that of the MOV diagnostics based on the signals of the current and voltage consumed during MOV ‘opening’ and ‘closing’ operations. The current and voltage signals represent time series measured at regular intervals. The current (and voltage) signals can be received online and contain all necessary information for the online diagnostics of the MOV status. Essentially, the approach allows active power signals to be calculated from the current and voltage signals, and characteristics (‘diagnostic signs’) to be extracted from particular portions (segments) of the active power signals using the values of which MOVs can be diagnosed. The paper deals with the problem of automating the segmentation of active power signals. To accomplish this, an algorithm has been developed based on using a convolutional neural network.
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