Loading…

Defective Product Research of Intelligent Manufacturing Oriented to MC-VE

Detailed and in-depth requirements are analyzed on the intelligent manufacturing of mixed cloud (MC-VE) virtual enterprise. The function and contents are introduced in detail on product quality management of intelligent manufacturing based on the Internet of things. Annotation of decision process is...

Full description

Saved in:
Bibliographic Details
Published in:Chemical engineering transactions 2015-12, Vol.46
Main Authors: G.R. Li, Y.F. Ge, Y.X. Wang, S.P. Hu
Format: Article
Language:English
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:Detailed and in-depth requirements are analyzed on the intelligent manufacturing of mixed cloud (MC-VE) virtual enterprise. The function and contents are introduced in detail on product quality management of intelligent manufacturing based on the Internet of things. Annotation of decision process is listed on the defective product. The different types of processing are done on the defective product. At first explanations has been carried concessions release and repair business on the defective products. Then detailed annotation is done on the rework of defective products and restructuring the business in the future. At last the abandonment business is on defective products. By the research of the product defective based on the Internet of thing, it is concluded that the details handling countermeasures and methods of defective product. It could be checked on the quality of our products of defective product and queries of detailed operating, which realizes the requirements of real-time knowing the product's quality. The system could be applied for the products of input in the MC-VE. And the system is opened and extended for other parts. There are detailed analysis of product quality and judgment and processing of defective product based on MC-VE. It makes more rationalization and intelligent of products management, which improving the efficiency of intelligent manufacturing.
ISSN:2283-9216
DOI:10.3303/CET1546185