1 / 21

Six Sigma Quality Engineering

Six Sigma Quality Engineering. Week 11 Improve Phase. Objectives. Overview of Design of Experiments A structured method to learn about a process by changing many factors at the same time. It occurs in Improvement Phase. Fractional factorial experiments are used for initial screening

addison
Télécharger la présentation

Six Sigma Quality Engineering

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Six Sigma Quality Engineering Week 11 Improve Phase

  2. Objectives • Overview of Design of Experiments • A structured method to learn about a process by changing many factors at the same time. • It occurs in Improvement Phase. • Fractional factorial experiments are used for initial screening • Full factorial experiments are smaller and more precise • Graphical Analysis • Main effects plots • Interaction plots • Cube plots • Statistical Analysis • P value for main effects and interactions

  3. Six Sigma - DMAIC Roadmap

  4. Improve Phase Goal: • Develop, try out, and implement solutions that address root causes Output: • Planned, tested actions that eliminate or reduce the impact of the identified root causes • Key Deliverables • Solutions • Risk Assessment on Solution • Pilot Results • Implementation Plans Improve Establish Optimum Process Select Solutions Prepare improvement Plans Develop, try out & implement solutions that address root causes • Improvement Strategies • Screen Critical Inputs (DOE Plan) • Refine Model • Define & Confirm Y = f (x) • FMEA for Solution • Cost Benefit Analysis • Verify Metrics • Prioritization Matrix • Document ‘To Be’ Process • Pilot Solution • Implementation & Deployment Plans • Process Documentation

  5. Generate solutions including Perform cost-benefit Benchmarking and select analysis for the best approach based on preferred solution screening criteria 1 2 3 4 5 6 7 8 9 10 A B C D E G F G H I J Recommend a solution involving key stakeholders. Use FMEA to identify Pilot the solution on risks associated with the a small scale and Use DOE and response solution and take evaluate the results surface optimization to preventive actions quantify relationships. Improve Phase Generating Solutions Cost-Benefit Analysis Design of Experiments A 4 B 1 C 3 D 2 Selecting the Solution Implementation Piloting Assessing Risks Full scale Test Original Develop & Execute a full plan for implementation and change management

  6. Design of Experiments

  7. What is a Designed Experiment? • A method to change all the factors at once in a structured pattern to determine their effects on the output(s) • The structured pattern is known as an orthogonal array A B A X B 1 -1 -1 1 2 1 -1 -1 3 -1 1 -1 4 1 1 1 0 0 0

  8. Full Factorial Designs • Full Factorial: Examines factor effects and interaction effects. These become large rather quickly. • 22 Full Factorial = 2 factors, 2 levels = 4 runs • 23 Full Factorial = 3 factors, 2 levels = 8 runs • 24 Full Factorial = 4 factors, 2 levels = 16 runs • 25 Full Factorial = 5 factors, 2 levels = 32 runs • Used after initial screening experiments or where the process is simple or well known. The experiment is run to optimize the process using a vital few factors.

  9. Example of a 23 Full Factorial Design Run

  10. Fractional Factorial Designs • Fractional Factorial: Examines factor effects and a carefully selected portion of interaction effects. • Shrinks the number of runs for each fraction by one half. • 27 Full Factorial = 7 factors, 2 levels = 128 runs • 2(7-1) 1/2 Fractional Factorial = 7 factors, 2 levels = 64 runs • 2(7-2) 1/4 Fractional Factorial = 7 factors, 2 levels = 32 runs • 2(7-3) 1/8 Fractional Factorial = 7 factors, 2 levels = 16 runs • 2(7-4) 1/16 Fractional Factorial = 7 factors, 2 levels = 8 runs

  11. Fractional Factorial Designs • Uses interaction column settings to estimate the effects of main factors. • Used for initial screening designs to isolate the important (vital few) factors. • One DoE leads to another. Fractional Factorial DoE’s lead to smaller Full Factorial DoE’s.

  12. Basic Experimental Terms

  13. The Idea of Confounding A B BC C AB AC ABC -1 -1 1 1 -1 1 -1 1 2 (a) 3 (b) 5 (c) 8 (abc) 1 - 1 -1 1 1 1 1 1 1 -1 -1 1 -1 -1 1 1 -1 1 -1 1 Same Signs Was “Y” affected by A or by the interaction of B and C?

  14. Basic Experimental Terms

  15. Basic Experimental Terms

  16. Basic Experimental Terms

  17. General Comments • In general, industry considers 3rd and 4th order interactions to be negligible. • Fractional Factorial experiments “pool” the effects of interactions to estimate residual error. • No replicates are run - USE WITH CAUTION! • Use Fractional Factorial Experiments for screening, then follow up with Full Factorial Designs. • Keep your experiments simple

  18. Be Proactive! • DOE is a proactive tool. • If DoE output is inconclusive: • You may be working with the wrong variables • Your measurement system may not be capable • The range between high and low levels may be insufficient • There is no such thing as a failed experiment • Something is always learned • New data prompts asking new questions and generates follow-on studies

  19. Design of Experiments Minitab practice

  20. Design Resolution The resolution number tells you what factor and interactions will be confounded with one another.

  21. Questions? Comments?

More Related