Intelligent requirements engineering from natural language and their
chaining toward CAD models
- URL: http://arxiv.org/abs/2007.07825v1
- Date: Tue, 14 Jul 2020 17:53:01 GMT
- Title: Intelligent requirements engineering from natural language and their
chaining toward CAD models
- Authors: Alain-J\'er\^ome Foug\`eres and Egon Ostrosi
- Abstract summary: This paper assumes that design language plays an important role in how designers design and on the creativity of designers.
Designers use and develop models as an aid to thinking, a focus for discussion and decision-making and a means of evaluating the reliability of the proposals.
- Score: 0.6091702876917279
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper assumes that design language plays an important role in how
designers design and on the creativity of designers. Designers use and develop
models as an aid to thinking, a focus for discussion and decision-making and a
means of evaluating the reliability of the proposals. This paper proposes an
intelligent method for requirements engineering from natural language and their
chaining toward CAD models. The transition from linguistic analysis to the
representation of engineering requirements consists of the translation of the
syntactic structure into semantic form represented by conceptual graphs. Based
on the isomorphism between conceptual graphs and predicate logic, a formal
language of the specification is proposed. The outcome of this language is
chained and translated in Computer Aided Three-Dimensional Interactive
Application (CATIA) models. The tool (EGEON: Engineering desiGn sEmantics
elabOration and applicatioN) is developed to represent the semantic network of
engineering requirements. A case study on the design of a car door hinge is
presented to illustrates the proposed method.
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