Identification of explanatory variables for DMU preparation process evaluation by using machine learning techniques
Communication avec acte
Date
2016Résumé
Being able to estimate a priori the impact of DMU preparation scenarios for a dedicated activity would help identifying the best scenario from the beginning. Machine learning techniques are a means to a priori evaluate a DMU preparation process without to perform it by predicting its criteria of evaluation. For that, a representative database of examples must be developed that contains the right explanative and output variables. However, the key explanative variables are not clearly identified. This paper proposes a method for the selection of the most significant explanatory variables among all the database variables. In addition to using these variables for learning, this will allow to formalize the knowledge.
Fichier(s) constituant cette publication
Cette publication figure dans le(s) laboratoire(s) suivant(s)
Documents liés
Visualiser des documents liés par titre, auteur, créateur et sujet.
-
Communication avec acteEssential when adapting CAD model for finite element analysis, the defeaturing ensures the feasibility of the simulation and reduces the computation time. Processes for CAD model preparation and defeaturing tools exist but ...
-
Article dans une revue avec comité de lectureControlling the well-known triptych costs, quality and time during the different phases of the Product Development Process (PDP) is an everlasting challenge for the industry. Among the numerous issues that are to be ...
-
Communication avec acteThis paper adresses the way machine learning techniques based on neural networks can be used to predict the impact of simplification processes on CAD model for heat transfer FEA purposes.
-
Article dans une revue avec comité de lecturePERNOT, Jean-Philippe; DANGLADE, Florence; VERON, Philippe (CAD Solutions LLC (imprimé) and Taylor & Francis Online (en ligne), 2013)Numerical simulations play more and more important role in product development cycles and are increasingly complex, realistic and varied. CAD models must be adapted to each simulation case to ensure the quality and reliability ...
-
Communication avec acteLEBERT, Déborah; PLOUZEAU, Jeremy; FARRUGIA, Jean-Philippe; DANGLADE, Florence; MERIENNE, Frédéric (Springer Nature Switzerland, 2022-08-28)Ensuring continued quality is challenging, especially when customer satisfaction is the provided service. It seems to become easier with new technologies like Artificial Intelligence. However, field data are necessary to ...