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OPSM301 Operations Management Spring 2012

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Presentation on theme: "OPSM301 Operations Management Spring 2012"— Presentation transcript:

1 OPSM301 Operations Management Spring 2012
Class 23: Statistical Quality Control

2 Statistical Quality Control
The quantitative aspects of quality management Processes usually exhibit some variation in their output Assignable variation: variation that is caused by factors that can be identified and managed Common variation: variation that is inherent in the process itself

3 Natural Variations Also called common causes
Affect virtually all production processes Expected amount of variation, inherent due to: - the nature of the system - the way the system is managed - the way the process is organised and operated can only be removed by - making modifications to the process - changing the process Output measures follow a probability distribution For any distribution there is a measure of central tendency and dispersion

4 Assignable Variations
Also called special causes of variation Exceptions to the system Generally this is some change in the process Variations that can be traced to a specific reason considered abnormalities often specific to a certain operator certain machine certain batch of material, etc. The objective is to discover when assignable causes are present Eliminate the bad causes Incorporate the good causes

5 Statistical Quality Control Objectives
1.Detect and eliminate assignable variation (statistical process control) If there is no assignable variation, Process is in control We use Process Control charts to maintain this 2.Reduce normal variation (process capability) If normal variation is as small as desired, Process is capable We use capability index to check for this

6 1. Statistical Process Control: Control Charts
Can be used to monitor ongoing production process quality 970 980 990 1000 1010 1020 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 LCL UCL

7 Process Control Chart Information: Monitor process variability over time Control Limits: Average + z Normal Variability Decision Rule: Ignore variability within limits as “normal” Investigate variation outside as “abnormal” Errors: Type I - False alarm (unnecessary investigation) Type II - Missed signal (to identify and correct)

8

9 Shows sample means over time Monitors process mean
X-bar – Chart Shows sample means over time Means of the values in a sample Monitors process mean

10 Each of these represents one sample of five boxes of cereal
Samples To measure the process, we take samples and analyze the sample statistics following these steps Each of these represents one sample of five boxes of cereal (a) Samples of the product, say five boxes of cereal taken off the filling machine line, vary from each other in weight Frequency Weight #

11 The solid line represents the distribution
Samples To measure the process, we take samples and analyze the sample statistics following these steps The solid line represents the distribution (b) After enough samples are taken from a stable process, they form a pattern called a distribution Frequency Weight

12 Population and Sampling Distributions
Three population distributions Beta Normal Uniform Distribution of sample means Standard deviation of the sample means = sx = s n Mean of sample means = x | | | | | | | -3sx -2sx -1sx x +1sx +2sx +3sx 99.73% of all x fall within ± 3sx 95.45% fall within ± 2sx

13 Sampling Distribution
Sampling distribution of means Process distribution of means x = m (mean) It may be useful to spend some time explicitly discussing the difference between the sampling distribution of the means and the mean of the process population.

14 Samples To measure the process, we take samples and analyze the sample statistics following these steps (c) If only natural causes of variation are present, the output of a process forms a distribution that is stable over time and is predictable Prediction Weight Time Frequency

15 Samples To measure the process, we take samples and analyze the sample statistics following these steps Prediction ? (d) If assignable causes are present, the process output is not stable over time and is not predicable Weight Time Frequency

16 For x-Charts when we know s
Setting Chart Limits For x-Charts when we know s Upper control limit (UCL) = x + zsx Lower control limit (LCL) = x - zsx where x = mean of the sample means or a target value set for the process z = number of normal standard deviations (=3) sx = standard deviation of the sample means = s/ n s = population standard deviation n = sample size

17 Setting Control Limits
Hour Mean Hour Mean Hour 1 sample item Weight of Number Oat Flakes 1 17 2 13 3 16 4 18 5 17 6 16 7 15 8 17 9 16 Mean 16.1 s = 1 n = 9 Sample size For 99.73% control limits, z = 3

18 Setting Control Limits
Hour 1 Sample Weight of Number Oat Flakes 1 17 2 13 3 16 4 18 5 17 6 16 7 15 8 17 9 16 Mean 16.1 s = 1 Hour Mean Hour Mean n = 9 For 99.73% control limits, z = 3 UCLx = x + zsx = (1/3) = 17 LCLx = x - zsx = (1/3) = 15

19 Setting Control Limits
Control Chart for sample of 9 boxes Variation due to assignable causes Out of control Sample number | | | | | | | | | | | | 17 = UCL 15 = LCL 16 = Mean Variation due to natural causes Out of control

20 Type of variables control chart Shows sample ranges over time
R – Chart Type of variables control chart Shows sample ranges over time Difference between smallest and largest values in sample Monitors process variability Independent from process mean

21 Range (R) Chart Average Range R = 10.1 psi
UCL LCL Average Range R = 10.1 psi Standard Deviation of Range = 3.5 psi Control Limits: (3)(3.5) = [0, 20.6] Process Is “In Control” (i.e., variation is stable) Copyright © 2013 Pearson Education Inc. publishing as Prentice Hall

22 Mean and Range Charts (a)
These sampling distributions result in the charts below (Sampling mean is shifting upward but range is consistent) x-chart (x-chart detects shift in central tendency) UCL LCL R-chart (R-chart does not detect change in mean) UCL LCL

23 Mean and Range Charts (b)
These sampling distributions result in the charts below (Sampling mean is constant but dispersion is increasing) x-chart (x-chart does not detect the increase in dispersion) UCL LCL R-chart (R-chart detects increase in dispersion) UCL LCL

24 Process Control and Improvement
Out of Control In Control Improved UCL LCL

25 Important points to remember
Control charts are used to differentiate normal variability from assignable/abnormal variability X-bar chart monitors control of process mean R-chart monitors control of process variability An improvement in the process implies lower normal variability

26 2. Process Capability Example:Producing bearings for a rotating shaft
Specification Limits Design requirements: Diameter: 1.25 inch ±0.005 inch Lower specification Limit:LSL= =1.245 Upper Specification Limit:USL= =1.255

27 Relating Specs to Process Limits
Process performance (Diameter of the products produced=D): Average 1.25 inch Std. Dev: inch Question:What is the probability That a bearing does not meet specifications? (i.e. diameter is outside (1.245,1.255) ) Frequency Diameter 1.25 P(defect)= = or 1.2% This is not good enough!!

28 Histogram Specs Mean = 82.5 psi, Standard Deviation = 4.2 psi
Fraction Defective = 26% (Theoretical = 30.1%)

29 Process capability If P(defect)> then the process is not capable of producing according to specifications. To have this quality level (3 sigma quality), we need to have: Lower Spec: mean-3 Upper Spec:mean+3 If we want to have P(defect)0, we aim for 6 sigma quality, then, we need: Lower Spec: mean-6 Upper Spec:mean+6 What can we do to improve capability of our process? What should  be to have Six-Sigma quality? We want to have: ( )/ = 6  = inch We need to reduce variability of the process. We cannot change specifications easily, since they are given by customers or design requirements.

30 Process Capability Index Cpk
Shows how well the parts being produced fit into the range specified by the design specifications Want Cpk larger than one When two numbers below are not the same, indicates mean has shifted For our example: Cpk tells how many standard deviations can fit between the mean and the specification limits. Ideally we want to fit more, so that probability of defect is smaller

31 Next Time Assignment is due on May 8 Quiz on Quality


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