Application of hierarchical agglomerative clustering to create a basic classes library of a VVER 1000/1200 reactor facility

G. V. Arkadov, I. Trykova, Denis V. Zvyagincev, K. I. Kotsoev
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Abstract

In reactor plants with a water-water power reactor (VVER), free, weakly fixed and foreign objects may appear in the main circulation circuit, posing a threat to the integrity of the equipment and the safety of the reactor plant. For the purpose of early detection of these objects, the NPP is equipped with a system for detecting loose/weakly fixed objects (SOSP).In addition to the detection of loose/weakly fixed objects, the functions of the SOSP include the classification of registered events.The possibility of applying the classification algorithm is based on the fact that the signals from the operation of standard equipment are highly repeatable, even in the presence of noise, while a free object is characterized by a large stochastic component and its own deterministic class cannot be formed for it.Classification reduces the number of false alarms, allowing you to select signals from regular operations, while signals from one process must be assigned to one class.The idea of ​​the article is to "train" SOSP on a certain archive of data characterizing the normal functioning of the reactor plant, create a library of "base" classes and set the boundaries of each class so that, on the one hand, take into account the possible variability of signal parameters due to noise.Having defined the base classes, we can state that if a newly received signal falls into one of the classes, then it reflects the regular operation of the RI, while signals that do not fall into any of the classes may be the result of the appearance of a free/weakly fixed object.The article analyzes a lot of events accumulated in the archive of one of the existing SOSP.Their clustering was carried out, as a result of which the classes of events corresponding to regular technological operations were identified.For each class, the center of the class and the allowable limits of deviations from the center are calculated.All class centers obtained are benchmarks against which the SOSP either classifies a newly detected event in real time or characterizes it as "unclassified".
应用层次聚合聚类建立VVER 1000/1200反应堆设施的基本类库
在水水动力堆(VVER)的反应堆装置中,主循环回路中可能出现游离的、弱固定的和外来的物体,对设备的完整性和反应堆装置的安全构成威胁。为了及早发现这些物体,核电站配备了一个检测松散/弱固定物体(SOSP)的系统。除了检测松散/弱固定物体外,SOSP的功能还包括对注册事件进行分类。应用分类算法的可能性是基于这样一个事实,即标准设备的运行信号具有高度可重复性,即使在存在噪声的情况下也是如此,而自由物体具有很大的随机成分,无法形成自己的确定性类。分类减少了假警报的数量,允许您从常规操作中选择信号,而来自一个进程的信号必须分配给一个类。本文的思想是在描述反应堆装置正常运行的某个数据档案上“训练”SOSP,创建一个“基本”类库,并设置每个类的边界,这样一方面考虑到信号参数可能由于噪声而发生的变化。定义了基类之后,我们可以声明,如果新接收到的信号属于其中一个类,那么它反映了RI的正常操作,而不属于任何类的信号可能是出现自由/弱固定对象的结果。本文对某现有SOSP档案中积累的大量事件进行了分析。对它们进行了聚类,结果确定了与常规技术操作相对应的事件类别。对于每个类,计算类的中心和允许偏离中心的极限。获得的所有类中心都是SOSP对新检测到的事件进行实时分类或将其定性为“未分类”的基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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