The dynamic T 2 chart for monitoring feedback-controlled processes

IIE Transactions - Tập 34 - Trang 1043-1053 - 2002
Fugee Tsung1, Daniel W. Apley1
1Department of Industrial Engineering and Engineering Management, Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong

Tóm tắt

As manufacturing quality has become a decisive factor in global market competition, statistical quality techniques such as Statistical Process Control (SPC) are widely used in industry. With advances in information, sensing, and data collection technology, large volumes of data are routinely available in processes employing Automatic Process Control (APC) and Engineering Process Control (EPC). Although there is a growing need for SPC monitoring in these feedback-controlled environments, an effective implementation scheme is still lacking. This research provides a monitoring method, termed the dynamic T 2 chart that improves the detection of assignable causes in feedback-controlled processes.

Tài liệu tham khảo

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