Article ID Journal Published Year Pages File Type
1134975 Computers & Industrial Engineering 2012 15 Pages PDF
Abstract

This paper presents an experience based on the use of association rules from multiple time series captured from industrial processes. The main goal is to seek useful knowledge for explaining failures in these processes. An overall method is developed to obtain association rules that represent the repeated relationships between pre-defined episodes in multiple time series, using a time window and a time lag. First, the process involves working in an iterative and interactive manner with several pre-processing and segmentation algorithms for each kind of time series in order to obtain significant events. In the next step, a search is made for sequences of events called episodes that are repeated among the various time series according to a pre-set consequent, a pre-established time window and a time lag. Extraction is then made of the association rules for those episodes that appear many times and have a high rate of hits. Finally, a case study is described regarding the application of this methodology to a historical database of 150 variables from an industrial process for galvanizing steel coils.

► We use association rules to seek useful knowledge to explain industrial failures. ► First, we look for significant events in each time series. ► Next, we look for sequences of events, called episodes, within a time window. ► Rules obtained represent the repeated relationships between episodes. ► Case study is related to an industrial process for galvanizing steel coils.

Related Topics
Physical Sciences and Engineering Engineering Industrial and Manufacturing Engineering
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