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 Location:  Home » Books » Science » Online pattern-based part quality monitoring of the injection molding process.: An article from: Polymer Engineering and ScienceDecember 1, 2008  
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Online pattern-based part quality monitoring of the injection molding process.: An article from: Polymer Engineering and Science
Authors: Suzanne L.b. Woll, Douglas J. Cooper
Publisher: Society of Plastics Engineers, Inc.
Category: Book

Buy New: $5.95

Format: Html
Language: English (Published)
Media: Digital
Pages: 24

ASIN: B00096KX5W

Publication Date: June 15, 1996
Release Date: July 28, 2005
Availability: Available for download now

Editorial Reviews:

Product Description
This digital document is an article from Polymer Engineering and Science, published by Society of Plastics Engineers, Inc. on June 15, 1996. The length of the article is 6918 words. The page length shown above is based on a typical 300-word page. The article is delivered in HTML format and is available in your Amazon.com Digital Locker immediately after purchase. You can view it with any web browser.

From the author: The quality of injection molded parts is currently monitored in the plant using techniques that focus on the statistical analysis of discrete data and, in particular, peak values. This paper presents an alternative online technique for part quality monitoring that focuses on the analysis of complete data patterns. Specifically, this paper discusses the application of artificial neural networks (ANNs) as part quality monitoring tools. The method of approach is to train a back propagation network (BPN) to associate part quality with the corresponding data pattern produced during injection. In Part I of this work, the data pattern consists of a series of discrete values and the part quality measure is defined as part weight. In Part II, the data pattern is the measurement profile observed from a pressure sensor placed in the mold cavity and the part quality measure is defined as part length. Results show that ANNs are successful in predicting part quality based on data patterns when an entire sensor profile is analyzed. Furthermore, demonstrations show that the approach is superior in predicting part quality when compared to statistical techniques now widely practiced by the injection molding process industry.

Citation Details
Title: Online pattern-based part quality monitoring of the injection molding process.
Author: Suzanne L.B. Woll
Publication: Polymer Engineering and Science (Refereed)
Date: June 15, 1996
Publisher: Society of Plastics Engineers, Inc.
Volume: v36 Issue: n11 Page: p1477(12)

Distributed by Thomson Gale


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