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CHAPTER 10 Quality Control/ Acceptance Sampling McGraw-Hill/Irwin Operations Management, Eighth Edition, by William J. Stevenson Copyright © 2005 by The McGraw-Hill Companies, Inc. All rights reserved.
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Quality Measures and Tradeoffs Conformance whether the product meets its specifications Availability to ensure that the design will have an adequate expected useful life Design Grade, i.e., the ranking of attributes
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Phases of Quality Assurance Acceptance sampling Process control Continuous improvement Inspection before/after production Inspection and corrective action during production Quality built into the process The least progressive The most progressive
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Inspection How Much/How Often Where/When Centralized vs. On-site InputsTransformationOutputs Acceptance sampling Process control Acceptance sampling
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Sampling vs. Complete Inspection Reasons for 100% Inspection: Extreme costs of defects When unit variability is extremely high Major assembled consumer units Lots that have been rejected
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Cost Optimal Amount of Inspection Inspection Costs Cost of inspection Cost of passing defectives Total Cost
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Where to Inspect in the Process Raw materials and purchased parts Finished products Before a costly operation Before an irreversible process Before a covering process
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Examples of Inspection Points
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Statistical Process Control: Statistical evaluation of the output of a process during production Quality of Conformance: A product or service conforms to specifications
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Statistical Quality Control Measures
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Sampling Plans Acceptance sampling: Form of inspection applied to lots or batches of items before or after a process, to judge conformance with predetermined standards Sampling plans: Plans that specify lot size, sample size, number of samples, and acceptance/rejection criteria Single-sampling Double-sampling Multiple-sampling
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Single Sapling Plan
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Double Sapling Plan
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Operating Characteristic Curve 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0.05.10.15.20.25 Probability of accepting lot Lot quality (fraction defective) 3%
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Decision Criteria 0 1.00 Probability of accepting lot Lot quality (fraction defective) “Good”“Bad” Ideal Not very discriminating
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OC Curve The discriminating power of acceptance plans (ability to reject bad lots and accept good lots) is enhanced by increasing sample size (n) Type 1 Errors: The rejection of good lots (Producer ’ s Risk). Type 2 Errors: The acceptance of bad lots (Consumer ’ s Risk).
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Statistical Process Control Variations and Control Random variation: Natural variations in the output of a process, created by countless minor factors Assignable variation: A variation whose source can be identified
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Control Chart Purpose: to monitor process output to see if it is random A time ordered plot representative sample statistics obtained from an on going process (e.g. sample means) Upper and lower control limits define the range of acceptable variation
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Control Chart 0123456789101112131415 UCL LCL Sample number Mean Out of control Normal variation due to chance Abnormal variation due to assignable sources
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Statistical Process Control The essence of statistical process control is to assure that the output of a process is random so that future output will be random.
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Statistical Process Control The Control Process Define Measure Compare Evaluate Correct Monitor results
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Sampling Distribution Sampling distribution Process distribution Mean
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Normal Distribution Mean 95.44% 99.74% Standard deviation
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Control Limits Sampling distribution Process distribution Mean Lower control limit Upper control limit
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SPC Errors Type I error Concluding a process is not in control when it actually is. Type II error Concluding a process is in control when it is not.
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Type I Error Mean LCLUCL /2 Probability of Type I error
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Observations from Sample Distribution Sample number UCL LCL 1234
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Control Charts for Variables Mean control charts Used to monitor the central tendency of a process. X bar charts Range control charts Used to monitor the process dispersion R charts Variables generate data that are measured.
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Control Charts Sampling by Variables Sampling by variables: It involves measurement- Chart of the sample means X Chart of the item range R
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Mean and Range Charts UCL LCL UCL LCL R-chart x-Chart Detects shift Does not detect shift (process mean is shifting upward) Sampling Distribution
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x-Chart UCL Does not reveal increase Mean and Range Charts UCL LCL R-chart Reveals increase (process variability is increasing) Sampling Distribution
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Control Chart for Attributes p-Chart - Control chart used to monitor the proportion of defectives in a process c-Chart - Control chart used to monitor the number of defects per unit Attributes generate data that are counted.
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Control Charts Sampling by Attributes Sampling by Attributes: It is either good or bad (P) denotes the fraction of interest (e.g., defective, too light) This fraction follows a binomial distribution For n > 30 or P = 0.5, use normal distribution
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Use of p-Charts When observations can be placed into two categories. Good or bad Pass or fail Operate or don ’ t operate When the data consists of multiple samples of several observations each
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Use of c-Charts Use only when the number of occurrences per unit of measure can be counted; non- occurrences cannot be counted. Scratches, chips, dents, or errors per item Cracks or faults per unit of distance Breaks or Tears per unit of area Bacteria or pollutants per unit of volume Calls, complaints, failures per unit of time
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Use of Control Charts At what point in the process to use control charts What size samples to take What type of control chart to use Variables Attributes
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Run Tests Run test – a test for randomness Any sort of pattern in the data would suggest a non-random process All points are within the control limits - the process may not be random
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Nonrandom Patterns in Control charts Trend Cycles Bias Mean shift Too much dispersion
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Counting Above/Below Median Runs(7 runs) Counting Up/Down Runs(8 runs) U U D U D U D U U D B A A B A B B B A A B Figure 10.12 Figure 10.13 Counting Runs
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Process mean Lower specification Upper specification 1350 ppm 1.7 ppm +/- 3 Sigma +/- 6 Sigma 3 Sigma and 6 Sigma Quality
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Improving Process Capability Simplify Standardize Mistake-proof Upgrade equipment Automate
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Limitations of Capability Indexes Process may not be stable Process output may not be normally distributed Process not centered but C p is used
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