Title of article :
Measurement of bivariate attributes using a novel statistical model
Author/Authors :
JrJung Lyu & MingNan Chen، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Reducing process variability is essential to many organisations. According to the pertinent literature, a
quality system that utilizes quality techniques to reduce process variability is necessary. Quality programs
that respond to measurement precision are central to quality systems, and the most common method of
assessing the precision of a measurement system is repeatability and reproducibility (R&R). Few studies
have investigated R&R using attribute data.
In modern manufacturing environments, automated manufacturing is becoming increasingly common;
however, a measurement resolution problem exists in automatic inspection equipment, resulting in clusters
and product defects. It is vital to monitor effectively these bivariate quality characteristics. This study
presents a novel model for calculating R&R for bivariate attribute data. An alloy manufacturing case is
utilized to illustrate the process and potential of the proposed model. Findings can be employed to evaluate
and improve measurement systems with bivariate attribute data.
Keywords :
measurement system analysis , attribute data , repeatability , reproducibility
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS