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Making the investigation of huge data archives possible in an industrial context an intuitive way of finding non-typical patterns in a time series haystack

机译:使在工业环境中对大型数据档案进行调查成为一种在时间序列大海捞针中查找非典型模式的直观方法

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Modern nuclear power plants are equipped with a vast variety of sensors and measurement devices. Vibrations, temperatures, pressures, flow rates are just the tip of the iceberg representing the huge database composed of the recorded measurements. However, only storing the data is of no value to the information-centric society and the real value lies in the ability to properly utilize the gathered data. In this paper, we propose a knowledge discovery process designed to identify non-typical or anomalous patterns in time series data. The foundations of all the data mining tasks employed in this discovery process are based on the construction of a proper definition of non-typical pattern. Building on this definition, the proposed approach develops and implements techniques for identifying, labelling and comparing the sub-sections of the time series data that are of interest for the study. Extensive evaluations on artificial data show the effectiveness and intuitiveness of the proposed knowledge discovery process.
机译:现代核电站配备了各种各样的传感器和测量设备。振动,温度,压力,流率只是冰山一角,代表着由记录的测量值组成的庞大数据库。但是,仅存储数据对以信息为中心的社会没有价值,真正的价值在于正确利用收集到的数据的能力。在本文中,我们提出了一种知识发现过程,旨在识别时间序列数据中的非典型或异常模式。此发现过程中使用的所有数据挖掘任务的基础都是基于对非典型模式的正确定义的构建。在此定义的基础上,所提出的方法开发并实施了用于识别,标记和比较研究所关注的时间序列数据子部分的技术。对人工数据的广泛评估显示了所提出的知识发现过程的有效性和直观性。

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