The Quality Improvement Model

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Presentation transcript:

The Quality Improvement Model Define Process The Quality Improvement Model Select Measures Collect & Interpret Data Is Process Capable? Is Process Stable ? No Investigate & Fix Special Causes This module covers this step Purpose: Determine the adequacy of the process with respect to customer /management needs. Yes Is Process Capable ? No Improve Process Capability Yes Use SPC to Maintain Current Process

Capable Process A stable process that meets customer requirements. Histogram Control Chart UCL Capable process produce everything within customer specifications Stability is a crucial prerequisite for capability CL LCL 8 22 24 2 4 6 10 12 14 16 18 20 26 28 30 32 Run Order Lower Spec Upper Spec Target Capability assessments for unstable processes, may not be indicative of how the process is actually performing.

Assessing Process Capability Counting Measures The average percent defectives. The average number of defects. Instrument Measures Comparing both the center of the process and the process variation Counting Measures - Process average IS your capability Instrument Measures - Look at the center and the variability of the process

Capability Assessment for Counting Measures “Order Entry Process” Week 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Total # Errors 22 27 24 26 320 25 30 35 Avg=16.0 LCL=4.0 UCL=28.0 Number of Errors Control Chart Process is stable - confirmed by control chart “Is this process adequate as is?” “What are management’s expectations for this process?” Not all processes need to be improved right now. Others may need to be worked on first, then return to this one. Customer focus is important, even if the customer doesn’t provide input easily. They may just say, “no errors is what I want.” Is this process adequate as is? Should it be improved?

Measures of Process Capability = Specification Range True Process Range = USL - LSL C p 6sc C p < 1.0 ® Process is not capable of meeting specs C p = 1.0 ® Process is marginally capable C p > 1.0 ® Process is capable of meeting specs Problem: We are assuming the process has a target that is in the center of the specification range, and that the process is in fact centered on that target. = Distance from process average to closest specification limit 1 2 True Process Range = min (USL - x , - LSL) C pk 3sc Note: a negative result is possible if the process average is outside specifications C pk < 1.0 ® Process is not capable of meeting specs C pk = 1.0 ® Process is marginally capable C pk > 1.0 ® Process is capable of meeting specs Benefits: • Optimal values are attained by running exactly between specs. • Can (must) be used for 1-sided specifications Warning: Capability assessments for unstable processes, may not be indicative of how the process is actually performing.

Process Capability In the short term? In the long term? USL LSL How much material is out of spec? In the short term? In the long term?

Process Capability Ratios USL LSL Voice of The Process Voice of The Customer

Process Capability - The Strategy Centering –The Process Is On Target Spread – Reduce The Variation LSL USL Defects

Process Capability Ratios 2 Key Metrics for Measuring Capability X - LSL USL - X C  Min( , ) pk 3 3

Process Capability Ratios - Concept Total Tolerance C  p Process Spread

CP & CPK Measure Short-term Capability Is The Process In Control ? Is It Producing Defects ? A Short-term Capability study covers a relatively short period of time (days, weeks) generally consisting of 30 to 50 data points. The actual number depends on the subject under study.

Long Term Performance Short term Capability Is The Process In Control ? Is It Producing Defects ? A long-term capability study covers a relatively long period of time (weeks, months) generally consisting of 100-200 data points. Again, the actual amount depends on the subject under study.

A Further Look at Capability Compare the estimates of the process deviations from the short-term and long-term data Descriptive Statistics Variable N Mean StdDev short term 30 30.6 2.23 long term 180 33.8 4.44 What is the difference between the short-term and the long-term data? What implication does this have in doing capability studies?

Measures of Process Performance = Specification Range True Process Range USL - LSL 6ss pk Distance from process average to closest specification limit 1 2 min (USL - x , - LSL) 3ss Problem: We are assuming the process has a target that is in the center of the specification range, and that the process is in fact centered on that target. Note: a negative result is possible if the process average is outside specifications Benefits: • Optimal values are attained by running exactly between specs. • Can (must) be used for 1-sided specifications < 1.0 ® Process Performance is not meeting specs = 1.0 Process Performance is marginally meeting specs > 1.0 Process Performance is meeting specs Ppk

Performance vs. Capability Days Sales Outstanding for 55 Days DSO These data show that the process, if well controlled can perform much better than it currently is

Capability vs. Performance Days Sales Outstanding for 55 Days DSO Capability: Only random or short term variability (Cp & Cpk) Process Performance: Total Variation including shifts and drifts (Pp & Ppk)

Process Performance Ratios X - LSL USL - X P  Min( , ) pk 3 3 The P-family of indices are computationally the same as the C-family of ‘capability’ indices, but use the observed long-term standard deviation.

WARNING!!! Statistical Assumptions Made In Capability Studies 1. Data Comes From a Stable Process If not, work towards getting the process in control Don’t despair, you can still make some assumptions about your process in the mean time 2. Data are Normally Distributed If not, transform it (ask the instructor) If Items #1 and #2 aren’t met, results will be misleading