START. Six-Sigma Programs. Selected Topics in Assurance Related Technologies. START 99-5, Six. Introduction. Background



Similar documents
Six Sigma. Breakthrough Strategy or Your Worse Nightmare? Jeffrey T. Gotro, Ph.D. Director of Research & Development Ablestik Laboratories

START Selected Topics in Assurance

START Selected Topics in Assurance

STATISTICAL REASON FOR THE 1.5σ SHIFT Davis R. Bothe

Process Capability Analysis Using MINITAB (I)

Statistical Process Control (SPC) Training Guide

Six Sigma Strategies: Creating Excellence in the Workplace

Certified Quality Process Analyst

Quality Management in Purchasing

Lean Six Sigma Analyze Phase Introduction. TECH QUALITY and PRODUCTIVITY in INDUSTRY and TECHNOLOGY

Six Sigma, ISO 9001 and Baldrige

THE PROCESS CAPABILITY ANALYSIS - A TOOL FOR PROCESS PERFORMANCE MEASURES AND METRICS - A CASE STUDY

Applying Six Sigma at 3M

SPC Response Variable

MG1352 TOTAL QUALITY MANAGENMENT UNIT I INTRODUCTION PART-A

Michael Kickuth and Thomas Friedli

Statistical Process Control OPRE

SALES TRAINING INTERNATIONAL LTD FACT SHEET. Six Sigma

Early Childhood Education and Care

THE SIX SIGMA BLACK BELT PRIMER

Unit-5 Quality Management Standards

Certified Six Sigma Yellow Belt

BODY OF KNOWLEDGE CERTIFIED SIX SIGMA YELLOW BELT

Confidence Intervals for Cp

TAGUCHI APPROACH TO DESIGN OPTIMIZATION FOR QUALITY AND COST: AN OVERVIEW. Resit Unal. Edwin B. Dean

QbD Approach to Assay Development and Method Validation

QUALITY TOOLBOX. Understanding Processes with Hierarchical Process Mapping. Robert B. Pojasek. Why Process Mapping?

Assay Development and Method Validation Essentials

Role of Design for Six Sigma in Total Product Development

Management Report Corporate Profile Annual Report 2014 Continental AG 42

CHAPTER 1 THE CERTIFIED QUALITY ENGINEER EXAM. 1.0 The Exam. 2.0 Suggestions for Study. 3.0 CQE Examination Content. Where shall I begin your majesty?

Quality Data Analysis and Statistical Process Control (SPC) for AMG Engineering and Inc.

INFLUENCE OF MEASUREMENT SYSTEM QUALITY ON THE EVALUATION OF PROCESS CAPABILITY INDICES

Measurement Systems Correlation MSC for Suppliers

MEASURING THE RETURN ON YOUR COMMUNICATIONS INVESTMENT

Process Quality. BIZ Production & Operations Management. Sung Joo Bae, Assistant Professor. Yonsei University School of Business

STATISTICAL QUALITY CONTROL (SQC)

Issue 1.0 Jan A Short Guide to Quality and Reliability Issues In Semiconductors For High Rel. Applications

Introduction to Statistical Quality Control, 5 th edition. Douglas C. Montgomery Arizona State University

A new ranking of the world s most innovative countries: Notes on methodology. An Economist Intelligence Unit report Sponsored by Cisco

Control CHAPTER OUTLINE LEARNING OBJECTIVES

The Philosophy of TQM An Overview

IndustryWeek Best Plants Benchmarking Database Sample Report Version 12.0

Supervisor of Banks: Proper Conduct of Banking Business [9] (4/13) Sound Credit Risk Assessment and Valuation for Loans Page 314-1

Statistical Quality Control

. new ideas are made use of, or used, in a. . solutions are extensive in their. . the impact of solutions extends to

Chapter 5. Risk and Return. Copyright 2009 Pearson Prentice Hall. All rights reserved.

TOYOTA AND ITS COMPONENT SUPPLIERS CASE STUDY

The views expressed in this publication do not necessarily reflect the official views of the Asian Productivity Organization (APO) or any APO member.

δ Charts for Short Run Statistical Process Control

Metrics-Led Sales Training

Sigma (σ) is a Greek letter used to represent the statistical term standard deviation

THE RELIABILITY ENGINEER SOLUTIONS TEXT

CERTIFIED QUALITY ENGINEER (CQE) BODY OF KNOWLEDGE

Canonical Correlation Analysis

Supplier quality guideline. VOSS Automotive Group Issue Rev00

Lean, Six Sigma, and the Systems Approach: Management Initiatives for Process Improvement

SIPOC: A Six Sigma Tool Helping on ISO 9000 Quality Management Systems

Simulation and Lean Six Sigma

Supplier Requirements Manual M M 0 3

Online Graduate Certificate in Supply Chain Management

Test Plan Template (IEEE Format)

The Benefits of PLM-based CAPA Software

Variables Control Charts

Advanced Topics in Statistical Process Control

THIS PAGE WAS LEFT BLANK INTENTIONALLY

FINAL DOCUMENT. Quality Management Systems - Process Validation Guidance. The Global Harmonization Task Force

KEYS TO SUCCESSFUL DESIGNED EXPERIMENTS

Supplier Quality Requirements (SQR) for External Process and/or Product Providers

Introduction. How do we measure innovation? The Oslo Manual and innovation surveys

Additional sources Compilation of sources:

The Two Key Criteria for Successful Six Sigma Project Selection Advantage Series White Paper By Jeff Gotro, Ph.D., CMC

Branding the Government As An Employer of Choice

FMEA and HACCP: A comparison. Steve Murphy Marc Schaeffers

3. Deployment CHAMPION (CENTER MANAGER) Master Black Belt. Black Belt (GE-TS group) Black Belt (AUTOMATION group) Black Belt (GE-PS group)

Evaluating Wellness Programs:

KPMG Lean Six Sigma The right place and the right time is here and now

The Impact of Lean Six Sigma on the Overall Results of Companies

PH.D THESIS ON A STUDY ON THE STRATEGIC ROLE OF HR IN IT INDUSTRY WITH SPECIAL REFERENCE TO SELECT IT / ITES ORGANIZATIONS IN PUNE CITY

10 Essential Steps to Portfolio Management

Body of Knowledge for Six Sigma Green Belt

HP Hard Disk Drive Quality System The Driving Force of Reliability

Statistical Process Control Basics. 70 GLEN ROAD, CRANSTON, RI T: F:

Interpretation of Financial Statements

AS9100 B to C Revision

DC Traction Power Supply. Powerful, efficient and safe. siemens.com/mobility

Enhance Production in 6 Steps Using Preventive Maintenance

2011 Global Fashion Product Lifecycle Management Product Leadership Award

GLB QM 02. Supplier Quality Manual 03. 7/11/12 Supplier Quality 1 of 18. Revision Level. Issue Date Issuing Department Page

Software Quality. Unit 2. Advanced techniques

*Quality. Management. Module 5

Op amp DC error characteristics and the effect on high-precision applications

MEANING & SIGNIFICANCE OF STATISTICAL PROCESS CONTROL [SPC] Presented by, JAYA VARATHAN B SANKARAN S SARAVANAN J THANGAVEL S

BEYOND THE BASICS OF MRP: IS YOUR SYSTEM DRIVING EXCESSIVE ORDER QUANTITITES? Michael D. Ford, CFPIM, CSCP, CQA, CRE Principal, TQM Works Consulting

Production Rules Configurator Rules-based analysis of production data With ConnectedManufacturing Solutions by Bosch Software Innovations

1 Introduction to ISO 9001:2000

Section 3. Sensor to ADC Design Example

Transcription:

START Selected Topics in Assurance Related Technologies Six-Sigma Programs Volume 6, Number 5 Introduction In 1988, Motorola Corp. became one of the first companies to receive the now well-known Baldrige National Quality Award. The intent of this award is to recognize firms that are deemed worthy role models for other businesses. The specific Motorola innovation that attracted the most attention was its six-sigma program. The emphasis was that modern technology was so complex that the old ideas about acceptable quality levels were no longer acceptable. Background Six-sigma is basically thought of as a process quality goal. However, it must always be remembered that quality processes are just one of the key elements of product reliability. Designing for reliability encompasses a great deal more than this. If the individual parts themselves do not start with an adequate level of quality and reliable design is not adequately addressed during the development, final product reliability at the six-sigma level is simply not possible. While building on SPC as its foundation, an effective six-sigma program actually represents a paradigm shift. It goes far beyond just measuring, identifying and segregating defective items; it entails an entirely new management approach. It requires trusting all of the members of the workforce and educating and training of them (including top management). The intent is a participative-management process that emphasizes employee involvement at all levels. The program goal is teamwork. The primary objective of this new approach is to assure total customer satisfaction. Understanding the customer, his needs and desires should be the focus of the effort. An essential corollary to this principle is the fact that there are actually a variety of customers. These customers include, for example, the next department in the assembly sequence and the product distributor as well as the ultimate consumer. Each customer must be recognized and his or her individual needs and/or desires must be addressed in their proper context. As a normal result of the manufacturing process, all manufactured items are subject to item-to-item variation. This variation is the enemy of quality. Sigma (σ) is the standardized statistical measure of the variability or the dispersion within a given population of items. Specifically it is the distance between the standard deviation and the mean of the population. The formula for σ is: σ= where: ( x µ ------------------------- )2 n σ = standard deviation x = individual measures of some parameter of interest µ = mean of the process n = number of items in the population These facts have long been recognized and the science of statistical process control (SPC) was designed specifically to measure and to control product variation within acceptable limits. These techniques helped to assure that the vast majority of items produced were acceptable. Inspection procedures were then relied upon to identify and to START 99-5, Six A publication of the Reliability Analysis Center

subsequently remove nonconforming items before delivery of the product to the customer. The Six-Sigma Concept Historically, controlling a manufacturing process to a nominal + or three-sigma variation was considered adequate for most manufacturing processes. This resulted in 99.73% of the items being within specification or conversely, 0.27% were out-of-spec. The out-of-spec. items were then (hopefully) removed following inspection. This level of defects, however, is nowhere near acceptable with today s highly complex equipment in our worldwide, highly competitive and quality-conscience marketplace. The six-sigma concept, while based upon SPC, carries the concept a great deal farther. A manufacturing process actually controlled to + or six-sigma (a total spread of 12σ) would assure that 99.9999998% of the items were within specification, or only 0.0000002% (or 2 parts per billion) out-of-spec. Assuming a normal or Gaussian distribution (which is realistic for the typical parameters of interest), this represents seven orders of magnitude improvement, as shown in Figure 1. - + Performance. It is vital that the reader has a clear understanding of what these metrics are and the difference between them. Process Capability (C p ) is a measure of the ability of a process to produce acceptable products. C p can be considered to be a short term metric. It is measured by comparing the variation in the product to the upper and lower specification limits, assuming that the product mean value is centered between the upper and lower specification limits. A high C p (e.g., C p = 2) indicates that the process is under control and capable of reproducing the desired characteristic. It makes no statement about whether the process is centered on the desired mean. The formula is: USL LSL C p = ------------------------------- 6σ where: USL = Upper Specification Limit LSL = Lower Specification Limit Process performance (C pk ) combines both variance and off-target process means. C pk can be considered to be a long term metric, i.e., it also accounts for process drift. A high C pk indicates that the process is actually reproducing the desired characteristic within the desired limits. It makes no statement about the inherent process capability, other than its minimum value. The formula is: -6σ -5σ -4σ -3σ -2σ -1σ 0 +1σ +2σ +3σ +4σ +5σ +6σ 66.26% C pk = Minimum_of_ Target LSL USL T et --------------------------------- ;---------------------------------- arg 3σ 3σ 95.46% 99.73% 99.9937% 99.999943% 99.9999998% Figure 1. Normal Distribution Essential SPC Metrics Two essential SPC metrics associated with six-sigma programs are Process Capability and Process From this equation, we can see that when C pk and C p are identical the process mean is on target. In most of the literature, however, it is assumed that the actual process performance is somewhat degraded from the optimum, i.e., that the actual mean of the manufacturing process has been displaced somewhat from the process nominal specification target. 2

Typically a 1.5-sigma shift, as shown in Figure 2, is assumed. Thus, when the process mean is 1.5σ off target, the shortest distance from the process mean to either specification limit is 4.5σ. This is reflected in C pk by reduction from 2.0 to 1.5. Thus while a theoretical six-sigma program would appear to require a C pk = 2.0, in practice a C pk = 1.5 is more frequently used. PPM 100,000 10,000 1,000 100 10 1 Three Sigma 66,803 PPM Two Sigma 308,733 PPM Four Sigma 6,200 PPM 1988, 45% 1990, 28% 1991, 9% Five Sigma 233 PPM Errors in IRS advice via telephone Restaurant Doctor Prescription Payroll Airline Baggage Digital Equipment Co. 1990 Best in Class, Six Sigma 3.4 PPM Motorola 1990 Domestic Airline Fatality Rate 0.52 PPM Motorola 6σ Goal Sigma 2 3 4 5 6 7 Figure 3. Typical Quality Estimates Lower Specification Limit 1.5σ 4.5σ Nominal Target Process Mean Figure 2. Process Performance Defects Upper Specification Limit In spite of the degradation of process performance resulting from this 1.5σ shift of the process mean, the process is still capable of producing items with an equivalent defect rate of only 3.4 parts per million (e.g., + or 4.5σ). While these techniques were developed in a manufacturing environment, it is also important to understand that the application of a six-sigma program is not just limited to the manufacturing arena. It can also be applied to virtually any process-oriented business; even those not described by a normal distribution. For example, questions to the IRS are answered either correctly or not. This is actually a binomial process. Still, such cases can be related to the others through their error rate. For a relative feel for how six-sigma results might compare with other measures of quality in the real world, see Figure 3. Implementing a Six-Sigma Program Implementation of six-sigma program requires close cooperation between the product design effort and the design of the manufacturing process. One of the goals of product design is to increase the allowable tolerance to the maximum that will still permit successful functioning of the product. On the other hand, process design has the goal of minimizing the variation of the process that reproduces the characteristic required for successful functioning of the product, and the centering the process on target (nominal) value of the desired characteristic. Typically, there are three primary sources of product variation: a) insufficient design margin, b) use of less than optimal parts or materials and c) inadequate process control. All of these sources of variation need to be addressed if optimum process capability is to be reached. Design Margin. The first step is to identify the critical parameters for the item, and to address the specification limits for them. Many times the specification limits have been set rather subjectively without sufficient study. A Design of Experiments (DOE) approach, Taguchi Methodology or Robust Design approach should help to assure that the specification limits are optimally selected. 3

Other import design reliability tools that should also be considered at this point in the design effort due to their potential impact upon design margins would include Failure Mode and Effects Analysis (FMEA), Fault Tree Analysis (FTA), Worst Case Circuit Analysis (WCCA) and Accelerated Testing. The basic premise is that it is much easier, and more cost effective, to eliminate bias from the design target characteristics than it is to reduce the variation itself. What we want is a robust design, one that is very insensitive to all subsequent variations in the manufacturing process, variability in the environmental operating conditions and possible future deterioration with age. The achievement of a robust design allows the specification limits on parts dimensions, materials composition, and the myriad of other parameters that appear on drawings and specification to be less stringent without a commensurate loss of reliability. Incoming Components and Materials. One goal of a six-sigma program is to completely eliminate incoming inspection, whenever possible. Suppliers should be expected to incorporate the necessary process controls to detect and correct manufacturing defects well before the completion of their finished product. The total cost to acquire materials from a supplier and the cycle time required to produce these materials is influenced by the suppliers manufacturing yield and any non-productive steps added to the manufacturing process in an attempt to inspect in quality of the supplied materials. Key contributors to process variation comes from the differences in the incoming material quality, particularly if there are multiple suppliers. In some instances it may be best to reduce the number of suppliers and to concentrate instead on improving a few preferred suppliers. To meet six-sigma requirements, control of these suppliers must go far beyond just incoming inspection; an actual partnership with the vendor may need to be established to assure compliance. Inadequate Process Control. Total process characterization is the key to adequate process control. This involves establishing specific values of C p and C pk for each of the critical parameters and then optimizing the manufacturing process. An intimate knowledge of the manufacturing process and its physical basis is thus required to identify and eliminate these causes of variability. A closed-loop Failure Reporting, Analysis and Corrective Action System (FRACAS) might also be an effective tool at this point to help identify and correct these problems. The tools of SPC must be mastered in order to identify the sources of long-term variation in the presence of background noise, to measure any reduction in variability, and to gain early warning of disturbing influences. Success requires first bringing each process into control, making the process stable so that over the short term there is a well-defined σ. Then the systematic causes of long-term variation must also be reduced or eliminated. Motorola s approach to implementing its six-sigma program is documented in its well known Six Steps to Six-Sigma shown in Table 1. Obviously each of these steps, in turn, can then be expanded further. Table 1. Motorola Six Steps to Six-Sigma 1. Identify the product you create or the service that you provide. 2. Identify the Customer(s) for your product or service, and determine what they consider important. 3. Identify your needs (to provide product/service so that it satisfies the Customer). 4. Define the process for doing the work. 5. Mistake-proof the process for doing the process and eliminate wasted effort. 6. Ensure continuous improvement by measuring, analyzing, and controlling the improved process. Many companies, other than Motorola, even in such diverse industries as banking and hospitals have successfully implemented a six-sigma program within their corporate structure. One of the most prominent of these is GE. GE launched a major corporate wide 4

six-sigma initiative in 1995 and claims 150% savings of its original investment during just the first two years of operation. Since then GE has effectively employed six-sigma programs in a number of their diverse operating divisions including Medical Systems, Power Systems, Electrical Distribution & Control and Plastics. For Further Study: 1. Web Sites: Additional information on six-sigma and related topics can be obtained from the following web sites: a. www.mpcps.com b. www.qualityamerica.com c. www.6-sigma.com d. www.sixsigmaqualtec.com e. www.gelearningsolutions.com 2. Publications: a. Paul E. Fieler, Understanding Motorola s Six-Sigma Program, Tutorial Notes 1990 International Reliability Physics Symposium. b. Mario Perez-Wilson, Six-Sigma, Understanding the Concept, Implications and Challenges, Advanced Systems Consultants, P.O. Box 1176, Scottsdale AZ 85252. c. Thomas Pyzdek, The Complete Guide to Six-Sigma (602) 423-0081. d. E. E. Lewis, Introduction to Reliability Engineering, especially Chap. 4, Quality and its Measures, John Wiley & Sons, Inc. e. Anthony Coppola, Tutorial: Measuring Process Variation or, Why does 6σ = 3.4 ppm?, RAC Journal, Volume 5, No. 3. f. GE Six-Sigma Quality Coach, 1-888-722-0990. g. Rod Bothwell et al, Reliability Evaluation: A Field Experience form Motorola s Cellular Base Transceiver Systems, 1995 Proceedings Annual Reliability and Maintainability Symposium. h. Anthony Coppola, Practical Tools for the Reliability Engineer, RAC publication STAT. Future Issues: RAC s Selected Topics in Assurance Related Technologies (START) are intended to get you started in knowledge of a particular subject of immediate interest in reliability, maintainability and quality. Some of the upcoming topics being considered are: Mechanical Reliability Software Reliability About the Author: Norman B. Fuqua is a Senior Engineer with Alion Science and Technology. He has 40 years of varied experience in the field of dependability, reliability and maintainability and has applied these principles to a variety of military, space and commercial programs. At Alion Science and Technology, and its predecessor IIT Research Institute (IITRI), he has been responsible for reliability and maintainability training and for the planning and implementation of various dependability, reliability and maintainability study programs. Mr. Fuqua developed unique distance learning Webbased and Windows TM -based computer-aided reliability training courses. He is the developer and lead instructor for the Reliability Analysis Center s (RAC) popular Design Reliability Training Course. This three-day course has been presented almost 200 times to some 6000+ students in the US, England, Denmark, Norway, Sweden, Finland, Germany, Israel, Canada, Australia, Brazil, and India. Audiences have included space, military, industrial and commercial clients. He is also the lead developer and instructor for a twoday Dependability Training Course for an Automotive Supplier and a three-day Robust Circuit Design Training Course. These courses enable mechanical and electronic design engineers and reliability engineers to utilize advanced software-based tools in producing designs that exhibit minimum sensitivity to both internal and external variations. 5

Mr. Fuqua holds a Bachelor of Science degree in Electrical Engineering from the University of Illinois, Urbana Illinois, is a Registered Professional Engineer (Quality Engineer) in California, and a Senior Member of the IEEE and the IEEE Group on Reliability. He is a former Member of the Editorial Board, Electrical and Electronics Series, for Marcel Dekker Inc., and the Education and Training Editor for the SAE Communications in Reliability, Maintainability and Supportability Journal. He is also a former Member of the EOS/ESD Association, and Chairman of three different EOS/ESD Association Standards Committees. He is the author of a number of technical papers, eight RAC publications and a reliability college textbook published by Marcel Dekker Inc. Other START Sheets Available Many Selected Topics in Assurance Related Technologies (START) sheets have been published on subjects of interest in reliability, maintainability, quality, and supportability. START sheets are available on-line in their entirety at <http://rac. alionscience.com/rac/jsp/start/startsheet.jsp>. For further information on RAC START Sheets contact the: Reliability Analysis Center 201 Mill Street Rome, NY 13440-6916 Toll Free: 888.RAC.USER Fax: 315.337.9932 or visit our web site at: <http://rac.alionscience.com> About the Reliability Analysis Center The Reliability Analysis Center is a world-wide focal point for efforts to improve the reliability, maintainability, supportability, and quality of manufactured components and systems. To this end, RAC collects, analyzes, archives in computerized databases, and publishes data concerning the quality and reliability of equipments and systems, as well as the microcircuit, discrete semiconductor, electronics, and electromechanical and mechanical components that comprise them. RAC also evaluates and publishes information on engineering techniques and methods. Information is distributed through data compilations, application guides, data products and programs on computer media, public and private training courses, and consulting services. Alion, and its predecessor company IIT Research Institute, have operated the RAC continuously since its creation in 1968. 6