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LSSG Green Belt Training Measure: Finding and Measuring Potential Root Causes DMAIC Six Sigma - Measure Objectives Identify Inputs and Outputs Control Improve Measure Process Capability Analyze Define Measure Determine key inputs and outputs for the process and measures to be analyzed Collect data and compare customer requirements to process variation Revise Charter Validate project opportunity and perform charter revision Agenda for Measure 1. 2. 3. 4. Types of Measures/Setting Targets Data Collection and Prioritization, MSA SPC, Control Charts Process Capability Measures Purpose of measurement: Performance of a process vs. Expectations Objective Lose 13 Pounds in 3 months Secondary Objective Lose 1 Pound per week Select Measures Driver(s) Calories consumed less Calories burned Critical Success Factors (Drivers Run 4 miles/day and consume less than 1500 calories/day “SMART” Objectives Clear operational definitions E.g. Losing Weight Must measure both the result (Y) and the drivers (Xs). Measure daily – to determine if CSFs are met, and to make adjustments to plan. LSS Measurement Measurement Plan Data What data type? Operational Definitions and Procedures How measured? What conditions? How to ensure consistency of measurement? By who? Where measured? What sample size? What is the data collection plan? Measurement vs. Control Causes/ Effects Measurement System Control System Historical data Current data Measurement is not control! So, what is it? Setting Targets Set Targets Objective/Meaningful Management-employees collaboration Team goal compatible with value stream objective Balanced Score Card Perspectives Financial Customer Internal Process Learning & Growth Agenda for Measure 1. 2. 3. 4. Types of Measures/Setting Targets Data Collection and Prioritization, MSA SPC, Control Charts Process Capability Data Collection and Prioritization Some Collection Tools Customer Survey Work / Time Measurement Check Sheet Some Prioritization Tools Pareto Analysis Fishbone Diagram Cause and Effect Matrix Work Measurement Goals of Work Measurement Scheduling work and allocating capacity Motivating workers / measuring performance Evaluating processes / creating a baseline Determining requirements of new processes Time Studies Typically using stop watches For infrequent information - estimates OK Measure person, machine, and delays independently Medium Duration - not too short; not too long Eliminate Bias - Compute Standard times from observed times Time Study: Calculations Step 1: Collect Data (Observed Time) Step 2: Calculate Normal Time from Observed Time, where: Normal Time Observed Time per unit * (1 Performanc e Rating) use when operator works faster then normal Step 3: Calculate Standard Time from Normal Time, where: Standard Time Normal Time per unit * (1 Allowances ) Time Study: Numerical Example A worker was observed and produced 40 units of product in 8 hours. The supervisor estimated the employee worked about 15 percent faster than normal during the observation. Allowances for the job represent 20 percent of the normal time for breaks, lunch and 5S. Determine the Standard Time per unit. Data Analysis Tools Run Chart 0.58 12 10 8 6 4 2 0 Diameter Defects Scatter Diagram 0.54 0.5 0.46 0 10 20 Hours of Training 30 1 2 3 4 5 6 7 8 9 10 11 12 Time Can be used to illustrate the relationships between factors such us quality and training Can be used to identify when equipment or processes means are drifting away from specs Histogram Control Chart Frequency 500 UCL 480 460 440 LCL 420 Data Ranges Can be used to display the shape of variation in a set of data 400 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 Use to identify if the process is predictable (in control) Cause and Effect Diagram Machine Man Effect Environmental Method Material Pareto Charts Root Cause Analysis 80% of the problems may be attributed to 20% of the causes Design Assy. Instruct. Purch. Training Other Continuous Improvement Process Orlando Remanufacturing And Distribution Center Phase 1: Internal Kickbacks Equipment To Be Remanufactured Tear Down And Wash Remanufacture Reassembly Final Clean-up Unit Not OK To Customer QA Five Most Common Reasons For Returns From QA Missing/ Wrong Part Dirt/Rust Defective Part Leaks Poor Insulation Impact of Reasons for Returns from QA Weighted Average Leaks Dirt/Rust Stainless Missing/ Defective Poor Steel Wrong Part Part Insulation Weighted Avg. = % Occurring X Defect Cost (0-10, Based on Time to Repair) Why Dirt? (Fishbone) Environment Machinery Materials Cleansing Compounds Tools for $$ Dust/Humidity Space Limitations Larger Wire Brushes Poor Lighting Dirt Rework Attention to Detail Lack of Communication QA to IT Training Rinse Measurement Methods Man Environment Dust/Humidity Poor Lighting Space Limitations Materials Cleansing Compounds Need Larger WireBrushes Machines Best Tools for $$? Methods Reworking Steel after Valves are Installed Need to Rinse Parts off after Sandblasting People Need More Training More Attention to Detail – Do it Right First Time Measurement QA Manager Fixes Some Things Without Informing the Technicians Why Leaks? (Fishbone) Environment Machinery Materials “O” Rings Old Reengineer Rims Poor Lighting Bad Tubing High Temperature Leaks No Leak Testing Prior to QA Quality Check Identify Most Occurrences Measurement Use Wrong Clamps Forget to Connect Methods Mishandle Units Don’t Crimp Properly Man Environment High Temperatures Poor Lighting Materials Bad Tubing “O” Rings Too Old (Dry) Machines Need Rims That Make it Easier to Install Tubing Methods Check Units for Ways They Could Leak Does Testing Create Leaks? People Use Wrong Clamps Don’t Crimp Properly Forget to Connect Measurement No Testing for Leaks Prior to QA Which Mfr./Model Leak the Most? Variation Analysis Most variation without “special” causes will be normally distributed Variation is typically classifiable into the 6 M’s Variation is additive Variation in the process inputs will generate more variation in the process output Variation is Present in All Processes! Output Measurement System Analysis (MSA) Goal - To identify if the measurement system can distinguish between product variation and measurement variation 2 2 obseerved 2product gage Some key dimensions Accuracy Precision Bias Tools: Gage R&R, DOE, Control Charts Agenda for Measure 1. 2. 3. 4. Types of Measures/Setting Targets Data Collection and Prioritization, MSA SPC, Control Charts Process Capability SPC vs. Acceptance Sampling Acceptance Sampling: Used to inspect a batch prior to, or after the process Send to Accept Take Receive Lot Customer Meet Sample Criteria? Rework Reject /Waste Statistical Process Control (SPC): Used to determine if process is within process control limits during the process and to take corrective action when out of control 500 UCL 480 460 440 LCL 420 400 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 Statistical Process Control Process in Statistical Control Statistical process control is the use of statistics to measure the quality of an ongoing process UCL LCL A Process is in control when all points are inside the control limits Process not in Statistical Control UCL LCL A Process is not in control when one or more points is/are outside the control limits Process not in Statistical Control UCL LCL Special Causes When to Investigate In Control UCL Even if in control the process should be investigated if any non random patterns are observed OVER TIME LCL 1 Trend - Constant Increase/Decrease 2 3 4 5 6 UCL Close to Control Limit UCL LCL 1 2 3 4 5 6 LCL 1 2 3 4 5 Cycles UC L UCL Consecutive Points Below/Above Mean LCL 5 10 15 20 LCL 1 2 3 4 5 6 Control Chart Development Steps 1 2 Identify Measurement INPUTS OUTPUT X’s 3 Y’s Start 0.1 Sample Sample Size Defective p 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 Total 100 100 100 100 100 100 100 100 100 100 100 100 100 100 100 1500 4 3 5 6 2 1 6 7 3 8 1 2 1 9 1 59 0.04 0.03 0.05 0.06 0.02 0.01 0.06 0.07 0.03 0.08 0.01 0.02 0.01 0.09 0.01 Improve Process 4 Determine Control Limits Collect Data Eliminate Special Causes 0.08 Reduce Common Cause Variation 0.06 Improve Average 0.04 0.02 Defects 0 0 2 4 6 8 10 12 14 16 18 A B C D Frequently Used Control Charts Attribute: Go/no-go Information, sample size of 50 to 100 Defectives p-chart, np-chart Defects c-chart, u-chart Variable: Continuous data, usually measured by the mean and standard deviation, sample size of 2 to 10 X-charts for individuals (X-MR or I-MR) X-bar and R-charts X-bar and s-charts SPC Attribute Measurements Normal Distribution: Z-Value p-Chart Control Limits T o tal N u m b er o f D efectiv es p= T o tal N u m b er o f O b serv atio n s m -3 Sp = p (1 - p ) n UCL = p + Z sp LCL = p - Z sp -2 -1 0 1 2 3 Z Z- VALUE is the number of Standard Deviations from the mean of the Normal Curve p Sp percentage defects (mean) Standard deviation of p Z Number of standard deviations n Number of observation per sample (i.e., sample size) UCL Upper control limit LCL Lower control limit p-Chart Example 1. 2. Calculate the sample proportion, p, for each sample Calculate the average of the sample proportions Sample Sample Size Defective p 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 Total 100 100 100 100 100 100 100 100 100 100 100 100 100 100 100 1500 4 3 5 6 2 1 6 7 3 8 1 2 1 9 1 59 0.04 0.03 0.05 0.06 0.02 0.01 0.06 0.07 0.03 0.08 0.01 0.02 0.01 0.09 0.01 59 p= = 0.0393 1500 3. Calculate the sample standard deviation sp = 4. p (1 - p) = n .0393(1 - .0393) = .0194 100 Calculate the control limits (where Z=3) UCL = p + Z sp = .0393 3(.0194) = .0976 LCL = p - Z sp = .0393 - 3(.0194) = - 0.0189 0 5. Plot the individual sample proportions, the average of the proportions, and the control limits 0.1 0.08 0.06 0.04 0.02 0 0 2 4 6 8 10 12 14 16 18 SPC Continuous Measurements n 2 3 4 5 6 7 8 9 10 A2 1.88 1.02 0.73 0.58 0.48 0.42 0.37 0.34 0.31 D3 0 0 0 0 0 0.08 0.14 0.18 0.22 D4 3.27 2.57 2.28 2.11 2.00 1.92 1.86 1.82 1.78 X-bar, R Chart Control Limits x Chart Limits UCL = x + A 2 R LCL = x - A 2 R R Chart Limits Shewhart Table of Control Chart Constants UCL = D 4 R LCL = D 3 R SPC Continuous Measurements UCL = x + A 2 R 10.54 .58(0.58) = 10.87 LCL = x - A 2 R 10.54 - .58(0.58) = 10.19 Sample 1 1 10.6 2 10.7 3 10.5 4 10.9 5 10.9 Sample Sample Mean Range 10.7 Sample Mean 0.4 2 10.4 11.0 10.4 10.7 10.7 10.6 0.6 3 10.8 10.8 10.8 10.2 10.5 10.6 0.6 4 10.3 10.2 10.3 10.4 11.0 10.4 0.8 5 11.0 10.7 10.9 10.6 10.8 10.8 0.4 6 10.9 10.0 10.4 10.1 10.5 10.4 0.8 UCL 10.90 10.80 X-bar Chart 10.70 Means Observation 10.60 10.50 10.40 10.30 10.20 10.10 1 2 3 4 5 6 7 8 9 10 11 12 13 Sample 7 10.8 10.4 10.5 10.7 10.7 10.6 0.4 8 10.1 10.3 10.9 10.2 10.4 10.4 0.8 9 11.0 10.5 10.7 10.8 10.7 10.7 0.5 10 10.8 10.9 10.4 10.3 10.4 10.6 0.6 11 10.5 11.0 10.5 10.8 10.8 10.7 0.5 12 10.2 10.1 10.7 10.8 10.2 10.4 0.7 13 10.8 10.6 10.3 10.4 11.0 10.6 0.7 14 15 LCL UCL = D 4 R (2.11)(0.58) 1.22 LCL = D 3 R (0)(0.58) 0 Sample Range R UCL 1.25 1.05 14 10.1 10.3 10.3 10.3 10.8 10.3 0.7 15 10.1 10.1 10.3 10.2 10.1 10.2 0.2 0.65 10.54 0.58 0.45 Total Average Chart 0.85 0.25 LCL 0.05 -0.15 1 2 3 4 5 6 7 8 Sample 9 10 11 12 13 14 15 Proper Assessment of Control Charts Find special causes and eliminate If special causes treated like common causes, opportunity to eliminate specific cause of variation is lost. Leave common causes alone in the short term If common causes treated like special causes, you will most likely end up increasing variation (called “tampering”) Taking the right action improves the situation Quarterly Audit Scores Did something unusual happen? Score 0 1 2 3 Quarter 4 5 6 Quarterly Audit Scores What do these lines represent? Score 0 1 2 3 Quarter 4 5 6 Quarterly Audit Scores Now what do you think? Score 0 1 2 3 Quarter 4 5 6 Agenda for Measure 1. 2. 3. 4. Types of Measures/Setting Targets Data Collection and Prioritization SPC, Control Charts Process Capability Process Capability Introduction “Voice of the Process” (The “Voice of the Data”) Based on natural (common cause) variation Tolerance limits (The “Voice of the Customer”) Customer requirements/Specs Process Capability A measure of how “capable” the process is to meet customer requirements Compares process limits to tolerance limits Process Capability Scenarios A C specification specification natural variation natural variation B D specification specification natural variation natural variation Process Capability Index, Cpk Capability Index shows if the process is capable of meeting customer specifications X LTL UTL - X Cpk = min or 3 3 Find the Cpk for the following: Mean = 50.50 Stdev = 1.5 A process has a mean of 50.50 and a variance of 2.25. The product has a specification of 50.00 ± 4.00 50.00 ± 4.00 Interpreting the Cpk Cpk > or = 0.33 Cpk > or = 0.67 Cpk > or = 1.00 Cpk > or = 1.33 Cpk > or = 1.67 Cpk > or = 2.00 Capable at 1 * Capable at 2 * Capable at 3 Capable at 4 Capable at 5 Capable at 6 * Processes with Cpk < 1 are traditionally called “not capable”. However, improving from 1 to 2, for example, is extremely valuable. Calculating Yield 100 units Task 1 96 units 4 rwk Traditional Yield (TY) Task 2 98 units 2 rwk TY 0.9910 0.90 Task 3 95 units 5 rwk Task 4 Total Output of the Final Task Total Number of Units Started Rolled Throughput Yield (RTY): another way to get “Sigma” level RTY cum( 0.99100 0.37 90 units 10 rwk 96 units Task 5 TY 96 0.96 100 Units Produced Without Re work ) Total Number of Units Started RTY 0.96 * 0.98 * 0.95 * 0.90 * 0.96 0.77 The Hidden Factory = TY - RTY The Hidden Factory = 0.96-0.77 =0.19 Traditional Yield assessments ignore the hidden factory! Six Sigma Quality Level Six Sigma results in at most 3.4 DPMO - defects per million opportunities (allowing for up to 1.5 sigma shift). Is Six Sigma Quality Possible? IRS Tax Advice DPMO Doctor Prescription Writing 1,000,000 100,000 Restaurant Bills 93% good Airline Baggage Handling 99.4% good 10,000 Payroll Processing 99.98% good 1,000 100 Domestic Airline Flight Fatality Rate (0.43PMM) 10 1 1 2 3 4 5 6 SIGMA Source: Motorola Inc. Six Sigma Quality DPMO Six Sigma Shift Total Number of Defects 1,000,000 opportunit ies The drift away from target mean over time 3.4 defects/million assumes an average shift of 1.5 standard deviations With the 1.5 sigma shift, DPMO is the sum of 3.39767313373152 and 0.00000003, or 3.4. Instead of plus or minus 6 standard deviations, you must calculate defects based on 4.5 and 7.5 standard deviations from the mean! Without the shift, the number of defects is .00099*2 = .002 DPMO. Z 4.5 6.0 7.5 P(<Z) 0.99999660232687 0.99999999901341 0.99999999999997 1 - P(<Z) 0.00000339767313 0.00000000098659 0.00000000000003 * 1,000,000 3.39767313373152 0.00098658770042 0.00000003186340 Quality Levels and DPMO Defects per million opportunities Assumes 1.5 sigma shift of the mean Sigma Level DPMO (Defects per million opportunities) Reduction from previous sigma level 1.0 697672 2.0 308770 55.74% 3.0 66811 78.36% 4.0 6210 90.71% 5.0 233 96.25% 6.0 3.4 98.54% Regardless of the current process sigma level, a very significant improvement in quality will be realized by a 1-sigma improvement! Is Six Sigma Quality Desirable? 99% Quality means that 10,000 babies out of 1,000,000 will be given to the wrong parents! One out of 100 flights would result in fatalities. Would you fly? What is the quality level for Andruw Jones?