Le Goc Marc, Benayadi Nabil



This paper is concerned with the discovery of expert’s knowledge from a sequence of alarms provided by a knowledge based system monitoring a dynamic process. The discovering process is based on the principles and the tools of the Stochastic Approach framework where a sequence is represented with a Markov chain from which binary relations between discrete event classes can be find and represented as abstract chronicle models. The problem with this approach is to reduce the search space as close as possible to the relations between the process variables. To this aim, we propose an adaptation of the J-Measure to the Stochastic Approach framework, the BJ-Measure, to build an entropic based heuristic that help in finding abstract chronicle models revealing strong relations between the process variables. The result of the application of this approach to a real world system, the Sachem system that controls the blast furnace of the Arcelor-Mittal Steel group, is provided in the paper, showing how the combination of the Stochastic Approach and the Information Theory allows finding the a priori expert’s knowledge between blast furnace variables from a sequence of alarms.


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Paper Citation

in Harvard Style

Goc Marc L. and Nabil B. (2008). DISCOVERING EXPERT’S KNOWLEDGE FROM SEQUENCES OF DISCRETE EVENT CLASS OCCURRENCES . In Proceedings of the Tenth International Conference on Enterprise Information Systems - Volume 2: ICEIS, ISBN 978-989-8111-37-1, pages 253-260. DOI: 10.5220/0001695702530260

in Bibtex Style

author={Le Goc Marc and Benayadi Nabil},
booktitle={Proceedings of the Tenth International Conference on Enterprise Information Systems - Volume 2: ICEIS,},

in EndNote Style

JO - Proceedings of the Tenth International Conference on Enterprise Information Systems - Volume 2: ICEIS,
SN - 978-989-8111-37-1
AU - Goc Marc L.
AU - Nabil B.
PY - 2008
SP - 253
EP - 260
DO - 10.5220/0001695702530260