Paper
12 March 2002 Data mining on time series of sequential patterns
Author Affiliations +
Abstract
Ordinary Time Series Analysis has long tradition in statistics [3] and it has also been considered in Data Mining [4,13]. Sequential patterns that are common in many measurements in process industry and in elsewhere have also been considered [1,14,11] in Data Mining. However, in some cases these two approaches can be merged together into a suitable transform. This kind of 2D-transform should be selected such a way that the basis functions support the Data Mining and the interpretation of results. As an example a runnability problem on a paper machine was considered. There were problems with fluctuations in paper basis weight. Data mining was successfully applied to the problem to identify and to remove the disturbances. The whole disturbance analysis was based on 86 sequential patterns consisting of 62 point-wise measurements in cross direction. These measurements were acquired from the process control system. The consecutive 86 patterns were Slant-transformed and the results were data mined. It was quite easy to find out the uneven static distribution of pressure in the head box and to find that the pressure fluctuated in the head box. Based on the considered case it can be claimed that Data Mining might be a good tool in many trouble shooting problems.
© (2002) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Ari J. E. Visa "Data mining on time series of sequential patterns", Proc. SPIE 4730, Data Mining and Knowledge Discovery: Theory, Tools, and Technology IV, (12 March 2002); https://doi.org/10.1117/12.460225
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KEYWORDS
Data mining

Process control

Autoregressive models

Head

Data modeling

Distance measurement

Fourier transforms

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