Understanding Multi-state Generative Process Planning

نویسنده

  • David J. Cooper
چکیده

Generative Process Planning systems provide a powerful means of generating manufacturing process plans from a product model. However, the vast majority of current commercial and experimental systems are limited in several ways: they tend to be specialized for metal-machining processes, they tend to focus on one state of the product at a time, and in general they lack an intelligent product model to work with and must use sophisticated feature-recognition techniques to elicit feature information from geometric models. This paper describes a generic mechanism for modeling all kinds of manufacturing operations through all stages of the manufacturing process, including capturing all the intermediate “in-process” states for the part or assembly.

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تاریخ انتشار 2002