单变量系统稳态检测的逐次差分法

Manoj K. Gootam, N. Kubal, Ulaganathan Nallasivam
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引用次数: 0

摘要

需要使用在线数据进行稳态检测,以解决统计数据协调、实时优化和控制器性能监控等问题。本文提出了一种利用时间序列(单变量)数据的连续差分来求解单变量系统的新方法。该方法很简单,因为它所基于的参数很容易调整,因为它们相当直观。此外,该方法不需要像多项式插值等其他方法那样进行任何模型拟合,因此计算时间较少。为了评估上述方法的性能,基于其准确检测一组工业时间序列数据中存在的稳态部分的性能进行了对比分析。将该方法的性能与目前文献中现有的三种最佳方法进行了比较。分析表明,该方法鲁棒性最强,其性能优于现有的三种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Successive difference method for steady state detection in univariate system
The use of online data for steady-state detection is required to solve problems like statistical data reconciliation, real time optimization and controller performance monitoring. In this paper, a new method for univariate system is proposed, which makes use of successive differences of time series (single variate) data. The method is simple because the parameters on which it is based are easy to tune as they are rather intuitive. Also this method needs less computation time as it does not involve any model fitting exercise as the case with other methods like polynomial interpolation technique. In order to assess the performance of the above method, a comparison analysis based on its performance in accurately detecting the steady state part that is present in a set of industrial time series data was performed. The performance of this method is compared with the three best existing methods that are available in the current literature. This analysis showed that the proposed method, Successive Difference method is most robust and its performance is better than the existing three methods.
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