Control Charts for Attributes

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Presentation transcript:

Control Charts for Attributes Swamynathan.S.M

Definition Where measurements are not possible. The term Attribute refers to those quality characteristics that conform to specifications or do not conform to specifications. Attribute are used: Where measurements are not possible. Where measurements can be made but are not made because of time, cost, or need.

Defect: Defect is appropriate for use when evaluation is in terms of usage. Nonconformity is appropriate for conformance to specifications. The term Nonconforming Unit is used to describe a unit of product or service containing at least one nonconformity.

defective Defective is analogous to defect and is appropriate for use when unit of product or service is evaluated in terms of usage rather than conformance to specifications. Limitations of variable control charts: These charts cannot be used for quality characteristics which are attributes.

Types of Attribute Charts: Nonconforming Units (based on the Binomial distribution): p chart, np chart. Nonconformities (based on the Poisson distribution): c chart, u chart.

P chart The P Chart is used for data that consist of the proportion of the number of occurrences of an event to the total number of occurrences. It is used in quality to report the fraction or percent nonconforming in a product, quality characteristic, or group of quality characteristics.

Calculate the trial central line and control limits = average of p for many subgroups n = number inspected in a subgroup

Example Sub- group Number Inspected n np p 1 300 12 0.040 2 3 0.010 9 0.030 4 0.013 5 0.0 6 0.020 7 8 0.003 19 16 0.053 25 0.007 Total 7500 138

P chart p UCL p-bar LCL Subgroup 5 10 15 20 25 0.053 0.04 0.03 0.02 0.01 LCL 5 10 15 20 25 Subgroup

np Chart The np chart is almost the same as the p chart. Central line = npo If po is unknown, it must be determined by collecting data, calculating UCL, LCL.

Example

c Chart The procedures for c chart are the same as those for the p chart. If count of nonconformities, is unknown, it must be found by collecting data, calculating UCL & LCL. = average count of nonconformities

Example

u Chart The u chart is mathematically equivalent to the c chart.

Example

For January 30:

Advantages of attribute control charts Allowing for quick summaries, that is, the engineer may simply classify products as acceptable or unacceptable, based on various quality criteria. Thus, attribute charts sometimes bypass the need for expensive, precise devices and time-consuming measurement procedures. More easily understood by managers unfamiliar with quality control procedures.

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