Knowledge representation and inference techniques to improve the management of gas and oil facilities |
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Authors: | Gian Piero Zarri |
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Affiliation: | 1. State Key Laboratory of Synthetical Automation for Process Industries, Northeastern University, Shenyang 110819, China;2. National Engineering Research Center of Metallurgical Automation, Shenyang, China;3. Control System Centre, The University of Manchester, PO Box 88, Manchester M60 1QD, UK;1. Advanced Computing Research Centre, School of IT & Mathematical Sciences, University of South Australia, Australia;2. Johannes Kepler University Linz, Austria;1. Petroleum Engineering Modelling Laboratory, Department of Scientific Computing, Federal University of Paraíba, Brazil;2. Graduate Program in Mechanical Engineering, Federal University of Paraíba, Brazil |
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Abstract: | This paper describes an experimental work carried out in the framework of an important European project to create and make use of a wide-ranging knowledge base in the gas/oil domain. In the context of this work, “knowledge base” means a collection of formal statement relating, with a negligible loss of information, the inner content (the ‘meaning’) of “complex events” included in two different “storyboards”. These events – originally presented under the form of unstructured natural language information – concern some general activities proper to the management of gas/oil facilities, like recognizing and monitoring gas leakage alarms in a gas processing plant or triggering the different steps needed to activate a gas turbine. To express this sort of information and to set up the knowledge base, the NKRL (Narrative Knowledge Representation Language) formalism has been used. NKRL is a conceptual meta-model and Computer Science environment expressly created to deal, in an ‘intelligent’ and complete way, with complex and content-rich ‘narrative’ data sources. The final knowledge base has been firstly tested in depth using the standard NKRL querying and information retrieval tools. High-level inference procedures have then been used, both “transformation rules” – unsuccessful queries are ‘transformed’ to produce results that are ‘semantically similar’ to those searched for initially – and “hypothesis rules” – information in the knowledge base is automatically aggregated to supply a sort of ‘causal’ explanation of some retrieved events. |
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