A production process may be out of control because its mean or variance or both are changing over time. The quality cont
Posted: Sun Jul 10, 2022 10:43 am
A production process may be out of control because its mean or variance or both are changing over time. The quality control manager at Just for Kicks, the manufacturer of Silly String, develops a control chart to detect changes in the process variance. A random sample of 8 cans of Silly String is pulled from the production line each shift. Each can is tested in the aerosol lab to obtain its spray rate (measured in grams per second), and the sample range for each sample is computed. The sample ranges for 20 consecutive shifts are shown on the following R chart. SAMPLE MEAN 0.10 0.08 0.06 0.04 0.02 0 0 O 000 4 O oooo 8 12 SAMPLE NUMBER O 16 The average sample range for the 20 samples is R = 0.042. 20 ➡+ Center Line UCL -Δ- LCL (?
Selected rows from the Factors for x and R Control Charts table in your text are displayed in the following table. Sample Size n 8 12 16 d₂ d3 2.059 0.88 2.847 0.82 3.258 0.778 3.532 0.75 Source: American Society for Testing and Materials, ASTM Manual on Presentation of Data and Control Chart Analysis, Philadelphia, PA, 1976. The sampling distribution of the sample range is the basis for developing an R chart. An estimate of the mean of the sampling distribution is , and an estimate of the standard deviation of the sampling distribution is Add the center line, lower control limit, and upper control limit to the chart. The quality control engineer uses the R chart to identify whether or not the process variation is in a state of control. She concludes that the process is because: Given the previous conclusion, it to develop and interpret an x chart.