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Simplified time series representations for efficient analysis of industrial process data

机译:简化的时间序列表示形式,可有效分析工业过程数据

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摘要

The data storage capacities of modern process automation systems have grown rapidly. Nowadays, the systems are able to frequently carry out even hundreds of measurements in parallel and store them in databases. However, these data are still rarely used in the analysis of processes. In this article, preparation of the raw data for further analysis is considered using feature extraction from signals by piecewise linear modeling. Prior to modeling, a preprocessing phase that removes some artifacts from the data is suggested. Because optimal models are computationally infeasible, fast heuristic algorithms must be utilized. Outlines for the optimal and some fast heuristic algorithms with modifications required by the preprocessing are given. In order to illustrate utilization of the features, a process diagnostics framework is presented. Among a large number of signals, the procedure finds the ones that best explain the observed short-term fluctuations in one signal. In the experiments, the piecewise linear modeling algorithms are compared using a massive data set from an operational paper machine. The use of piecewise linear representations in the analysis of changes in one real process measurement signal are demonstrated.
机译:现代过程自动化系统的数据存储能力迅速增长。如今,该系统能够频繁地并行执行数百次测量并将其存储在数据库中。但是,这些数据仍然很少用于过程分析中。在本文中,考虑通过分段线性建模从信号中使用特征提取来准备原始数据以进行进一步分析。在建模之前,建议进行一个预处理阶段,以从数据中删除一些伪像。由于最佳模型在计算上不可行,因此必须使用快速启发式算法。给出了优化算法和一些快速启发式算法的概述,并进行了预处理所需的修改。为了说明功能的利用,提出了过程诊断框架。该程序在大量信号中找到最能解释一个信号中观察到的短期波动的信号。在实验中,使用来自操作造纸机的大量数据对分段线性建模算法进行了比较。演示了在一个实际过程测量信号的变化分析中分段线性表示的使用。

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