Title of article :
A contemporary study into the application of neural network techniques
employed to automate CAD/CAM integration for die manufacture
Author/Authors :
Lian Ding ، نويسنده , , Jason Matthews، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2009
Abstract :
In recent years, collaborative research between academia and industry has intensified in finding a successful
approach to take the information from a computer generated drawings of products such as casting
dies, and produce optimal manufacturing process plans. Core to this process is feature recognition. Artificial
neural networks have a proven track record in pattern recognition and there ability to learn seems
to offer an approach to aid both feature recognition and process planning tasks. This paper presents an
up-to-date critical study of the implementation of artificial neural networks (ANN) applied to feature recognition
and computer aided process planning. In providing this comprehensive survey, the authors consider
the factors which define the function of a neural network specifically: the net topology, the input
node characteristic, the learning rules and the output node characteristics. In additions the authors have
considered ANN hybrid approaches to computer aided process planning, where the specific capabilities of
ANN’s have been used to enhance the employed approaches.
Keywords :
Computer aided process planning , Feature Recognition , Artificial neural networks , Casting die machining
Journal title :
Computers & Industrial Engineering
Journal title :
Computers & Industrial Engineering