SIX SIGMA: A FRAMEWORK FOR TOTAL QUALITY MANAGEMENT

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six sigma: a framework for total quality management

EXECUTIVE SUMMARY

This paper introduces Six Sigma as a quality improvement initiative and quality management framework. The motivation for Six Sigma, as well as the scheme for its implementation, is outlined. Although the strength of Six Sigma lies in its deployment of statistical tools and the application of statistical thinking, the features of Six Sigma are highlighted in a non-technical language in this paper. Some comments are also given on the requisites for the effectiveness of Six Sigma at the organizational level.

What is Six Sigma?

Six Sigma is a business management strategy originally developed by Motorola, USA in 1986. As of 2010[update], it is widely used in many sectors of industry, although its use is not without controversy.

Six Sigma seeks to improve the quality of process outputs by identifying and removing the causes of defects (errors) and minimizing variability in manufacturing and business processes. It uses a set of quality management methods, including statistical methods, and creates a special infrastructure of people within the organization (“Black Belts”, “Green Belts”, etc.) who are experts in these methods. Each Six Sigma project carried out within an organization follows a defined sequence of steps and has quantified financial targets (cost reduction or profit increase).

The term six sigma originated from terminology associated with manufacturing, specifically terms associated with statistical modeling of manufacturing processes. The maturity of a manufacturing process can be described by a sigma rating indicating its yield, or the percentage of defect-free products it creates. A six-sigma process is one in which 99.99966% of the products manufactured are statistically expected to be free of defects (3.4 defects per million). Motorola set a goal of “six sigma” for all of its manufacturing operations, and this goal became a byword for the management and engineering practices used to achieve it.

Why is Six Sigma

l Intense competitive pressures – especially from rapid globalization.

l Greater consumer demand for high quality products and services, little tolerance for failures of any type.

l Top management (and stockholder) recognition of the high costs of poor quality.

l The availability and accessibility of large data bases and the increasing ability to explore, understand, and use the data.

Historical Overview

Six Sigma originated as a set of practices designed to improve manufacturing processes and eliminate defects, but its application was subsequently extended to other types of business processes as well. In Six Sigma, a defect is defined as any process output that does not meet customer specifications, or that could lead to creating an output that does not meet customer specifications.

Bill Smith first formulated the particulars of the methodology at Motorola in 1986. Six Sigma was heavily inspired by six preceding decades of quality improvement methodologies such as quality control, TQM, and Zero Defects, based on the work of pioneers such as Shewhart, Deming, Juran, Ishikawa, Taguchi and others.

Like its predecessors, Six Sigma doctrine asserts that:

  • Continuous efforts to achieve stable and predictable process results (i.e., reduce process variation) are of vital importance to business success.
  • Manufacturing and business processes have characteristics that can be measured, analyzed, improved and controlled.
  • Achieving sustained quality improvement requires commitment from the entire organization, particularly from top-level management.

Features that set Six Sigma apart from previous quality improvement initiatives include:

  • A clear focus on achieving measurable and quantifiable financial returns from any Six Sigma project.
  • An increased emphasis on strong and passionate management leadership and support.
  • A special infrastructure of “Champions,” “Master Black Belts,” “Black Belts,” “Green Belts”, etc. to lead and implement the Six Sigma approach.
  • A clear commitment to making decisions on the basis of verifiable data, rather than assumptions and guesswork.

The term “Six Sigma” comes from a field of statistics known as process capability studies. Originally, it referred to the ability of manufacturing processes to produce a very high proportion of output within specification. Processes that operate with “six sigma quality” over the short term are assumed to produce long-term defect levels below 3.4 defects per million opportunities (DPMO). Six Sigma’s implicit goal is to improve all processes to that level of quality or better.

Six Sigma is a registered service mark and trademark of Motorola Inc. As of 2006[update] Motorola reported over US$17 billion in savings from Six Sigma.

Other early adopters of Six Sigma who achieved well-publicized success include Honeywell (previously known as AlliedSignal) and General Electric, where Jack Welch introduced the method. By the late 1990s, about two-thirds of the Fortune 500

organizations had begun Six Sigma initiatives with the aim of reducing costs and improving quality.

In recent years[update], some practitioners have combined Six Sigma ideas with lean manufacturing to yield a methodology named Lean Six Sigma.

Six Sigma Methods

Six Sigma projects follow two project methodologies inspired by Deming‘s Plan-Do-Check-Act Cycle. These methodologies, composed of five phases each, bear the acronyms DMAIC and DMADV.

  • DMAIC is used for projects aimed at improving an existing business process.
  • DMADV is used for projects aimed at creating new product or process designs.

DMAIC

The DMAIC project methodology has five phases:

  • Define the problem, the voice of the customer, and the project goals, specifically.
  • Measure key aspects of the current process and collect relevant data.
  • Analyze the data to investigate and verify cause-and-effect relationships. Determine what the relationships are, and attempt to ensure that all factors have been considered. Seek out root cause of the defect under investigation.
  • Improve or optimize the current process based upon data analysis using techniques such as design of experiments, poka yoke or mistake proofing, and standard work to create a new, future state process. Set up pilot runs to establish process capability.
  • Control the future state process to ensure that any deviations from target are corrected before they result in defects. Implement control systems such as statistical process control, production boards, and visual workplaces, and continuously monitor the process.

DMADV or DFSS

The DMADV project methodology, also known as DFSS (“Design For Six Sigma”) features five phases:

  • Define design goals that are consistent with customer demands and the enterprise strategy.
  • Measure and identify CTQs (characteristics that are Critical To Quality), product capabilities, production process capability, and risks.
  • Analyze to develop and design alternatives, create a high-level design and evaluate design capability to select the best design.
  • Design details, optimize the design, and plan for design verification. This phase may require simulations.
  • Verify the design, set up pilot runs, implement the production process and hand it over to the process owner(s).

Tools and methods used in Six Sigma

Within the individual phases of a DMAIC or DMADV project, Six Sigma utilizes many established quality-management tools that are also used outside of Six Sigma. The following table shows an overview of the main methods used.

Implementation roles

One key innovation of Six Sigma involves the “professionalizing” of quality management functions. Prior to Six Sigma, quality management in practice was largely relegated to the production floor and to statisticians in a separate quality department. Formal Six Sigma programs borrow martial arts ranking terminology to define a hierarchy (and career path) that cuts across all business functions.

Six Sigma identifies several key roles for its successful implementation.

  • Executive Leadership includes the CEO and other members of top management. They are responsible for setting up a vision for Six Sigma implementation. They also empower the other role holders with the freedom and resources to explore new ideas for breakthrough improvements.
  • Champions take responsibility for Six Sigma implementation across the organization in an integrated manner. The Executive Leadership draws them from upper management. Champions also act as mentors to Black Belts.
  • Master Black Belts, identified by champions, act as in-house coaches on Six Sigma. They devote 100% of their time to Six Sigma. They assist champions and guide Black Belts and Green Belts. Apart from statistical tasks, they spend their time on ensuring consistent application of Six Sigma across various functions and departments.
  • Black Belts operate under Master Black Belts to apply Six Sigma methodology to specific projects. They devote 100% of their time to Six Sigma. They primarily focus on Six Sigma project execution, whereas Champions and Master Black Belts focus on identifying projects/functions for Six Sigma.
  • Green Belts are the employees who take up Six Sigma implementation along with their other job responsibilities, operating under the guidance of Black Belts.

Some organizations use additional belt colours, such as Yellow Belts, for employees that have basic training in Six Sigma tools.

Certification

In the United States, Six Sigma certification for both Green and Black Belts is offered by the Institute of Industrial Engineers and by the American Society for Quality.

In addition to these examples, there are many other organizations and companies that offer certification. There currently is no central certification body, either in the United States or anywhere else in the world.

Origin and meaning of the term “six sigma process”

Graph of the normal distribution, which underlies the statistical assumptions of the Six Sigma model. The Greek letter ? (sigma) marks the distance on the horizontal axis between the mean, µ, and the curve’s inflection point. The greater this distance, the greater is the spread of values encountered. For the curve shown above, µ = 0 and ? = 1. The upper and lower specification limits (USL, LSL) are at a distance of 6? from the mean. Because of the properties of the normal distribution, values lying that far away from the mean are extremely unlikely. Even if the mean were to move right or left by 1.5? at some point in the future (1.5 sigma shift), there is still a good safety cushion. This is why Six Sigma aims to have processes where the mean is at least 6? away from the nearest specification limit.

The term “six sigma process” comes from the notion that if one has six standard deviations between the process mean and the nearest specification limit, as shown in the graph, practically no items will fail to meet specifications. This is based on the calculation method employed in process capability studies.

Capability studies measure the number of standard deviations between the process mean and the nearest specification limit in sigma units. As process standard deviation goes up, or the mean of the process moves away from the center of the tolerance, fewer standard deviations will fit between the mean and the nearest specification limit, decreasing the sigma number and increasing the likelihood of items outside specification.

Role of the 1.5 sigma shift

Experience has shown that processes usually do not perform as well in the long term as they do in the short term. As a result, the number of sigmas that will fit between the process mean and the nearest specification limit may well drop over time, compared to an initial short-term study. To account for this real-life increase in process variation over time, an empirically-based 1.5 sigma shift is introduced into the calculation. According to this idea, a process that fits six sigmas between the process mean and the nearest specification limit in a short-term study will in the long term only fit 4.5 sigmas – either because the process mean will move over time, or because the long-term standard deviation of the process will be greater than that observed in the short term, or both.

Hence the widely accepted definition of a six sigma process as one that produces 3.4 defective parts per million opportunities (DPMO). This is based on the fact that a process that is normally distributed will have 3.4 parts per million beyond a point that is 4.5 standard deviations above or below the mean (one-sided capability study). So the 3.4 DPMO of a “Six Sigma” process in fact corresponds to 4.5 sigmas, namely 6 sigmas minus the 1.5 sigma shift introduced to account for long-term variation. This takes account of special causes that may cause a deterioration in process performance over time and is designed to prevent underestimation of the defect levels likely to be encountered in real-life operation.

Sigma levels

A control chart depicting a process that experienced a 1.5 sigma drift in the process mean toward the upper specification limit starting at midnight. Control charts are used to maintain 6 sigma quality by signaling when quality professionals should investigate a process to find and eliminate special-cause variation.

The table below gives long-term DPMO values corresponding to various short-term sigma levels.

Note that these figures assume that the process mean will shift by 1.5 sigma toward the side with the critical specification limit. In other words, they assume that after the initial study determining the short-term sigma level, the long-term Cpk value will turn out to be 0.5 less than the short-term Cpk value. So, for example, the DPMO figure given for 1 sigma assumes that the long-term process mean will be 0.5 sigma beyond the specification limit (Cpk = –0.17), rather than 1 sigma within it, as it was in the short-term study (Cpk = 0.33). Note that the defect percentages only indicate defects exceeding the specification limit to which the process mean is nearest. Defects beyond the far specification limit are not included in the percentages.

Sigma level DPMO Percent defective Percentage yield Short-term Cpk Long-term Cpk
1 691,462 69% 31% 0.33 –0.17
2 308,538 31% 69% 0.67 0.17
3 66,807 6.7% 93.3% 1.00 0.5
4 6,210 0.62% 99.38% 1.33 0.83
5 233 0.023% 99.977% 1.67 1.17
6 3.4 0.00034% 99.99966% 2.00 1.5
7 0.019 0.0000019% 99.9999981% 2.33 1.83

Software used for Six Sigma

There are generally four classes of software used to support Six Sigma:

Ø Analysis tools, which are used to perform statistical or process analysis.

Ø Program management tools, used to manage and track a corporation’s entire Six Sigma program

Ø DMAIC and Lean online project collaboration tools for local and global teams.

Ø Data Collection tools that feed information directly into the analysis tools and significantly reduce the time spent gathering data

Application

Six Sigma mostly finds application in large organizations. An important factor in the spread of Six Sigma was GE’s 1998 announcement of $350 million in savings thanks to Six Sigma, a figure that later grew to more than $1 billion. According to industry consultants like Thomas Pyzdek and John Kullmann, companies with less than 500 employees are less suited to Six Sigma implementation, or need to adapt the standard approach to make it work for them. This is due both to the infrastructure of Black Belts that Six Sigma requires, and to the fact that large organizations present more opportunities for the kinds of improvements Six Sigma is suited to bringing about.

Advantages

The advantages of Six Sigma do not exactly lie in huge cost benefits that can be realized by its implementation. The glaring examples of many corporations having saved billions of dollars are true benefits but the intangible results, such as having met the expectations of customers, and being able to improve employee relations are also paramount. Because some corporations have experienced its failure to meet stated goals, some critics often raise questions about the feasibility of implementing Six Sigma, while still others are dismissing it plainly.

Obviously, in almost all cases, the reasons for Six Sigma failure have been external factors such as wrong or misguided selection of the tools, lack of application and lack of support from upper management. It is important to keep in mind that the successful implementation of Six Sigma requires a top down approach and perseverance throughout. Also important to the process is proper and thorough Six Sigma training.

Financial Benefits:

Cash flow increases due to creation of additional revenue. Through this process although cost decreases and increased profitability can be seen. It is important that all professionals involved in Six Sigma implementation have proper Six Sigma training. Although Six Sigma training is relatively expensive, the financial benefits of supporting it greatly outweigh the upfront costs.

Customer Service Benefit:

In 1999, Citibank’s strategy for improving customer service using Six Sigma methodology led to key projects in streamlining customer banking services and optimizing business processes that led to customer dissatisfaction and then eventually to lost accounts. (Reference 4) By implementing a reporting process to benchmark superior performance and identify areas of opportunity from the customer perspective, Citibank began incorporating business practices and services that would enhance existing customer loyalty and work to gain market share with enhanced products and business expectations.

Operational Benefits Of Six Sigma Training:

Employee satisfaction due to improvement in work flow, reduction in process times and steps, better usage of work space, etc. result from implementation of Six Sigma. One major operational reason for choosing Six Sigma is its success in waste reduction and redundancy. Waste reduction is measured in terms of improving time, product movement and decreasing material consumption.

Efficiency Benefit:

Six Sigma can assist companies in refining process to ensure materials and resources are used only as they are needed. With this effort to identify and eliminate excess, companies are able to preserve valuable resources. The Dow Chemical Company shared their Six Sigma successes in a case study released at the Texas Technology Showcase in 2003. (Reference 5) In its Styrene Unit Energy Envelope Project, Dow was able to reduce energy output by 80 MMBtu per hour. The project was successful in identifying opportunities to improve overall plant efficiency and reduce emissions.

Criticism

Lack of originality:

Noted quality expert Joseph M. Juran has described Six Sigma as “a basic version of quality improvement”, stating that “there is nothing new there. It includes what we used to call facilitators. They’ve adopted more flamboyant terms, like belts with different colors. I think that concept has merit to set apart, to create specialists who can be very helpful. Again, that’s not a new idea. The American Society for Quality long ago established certificates, such as for reliability engineers.”

Role of consultants:

The use of “Black Belts” as itinerant change agents has (controversially) fostered an industry of training and certification. Critics argue there is overselling of Six Sigma by too great a number of consulting firms, many of which claim expertise in Six Sigma when they only have a rudimentary understanding of the tools and techniques involved.

Potential negative effects:

A Fortune article stated that “of 58 large companies that have announced Six Sigma programs, 91 percent have trailed the S&P 500 since”. The statement is attributed to “an analysis by Charles Holland of consulting firm Qualpro (which espouses a competing quality-improvement process).” The summary of the article is that Six Sigma is effective at what it is intended to do, but that it is “narrowly designed to fix an existing process” and does not help in “coming up with new products or disruptive technologies.” Advocates of Six Sigma have argued that many of these claims are in error or ill-informed.

A BusinessWeek article says that James McNerney‘s introduction of Six Sigma at 3M may have had the effect of stifling creativity. It cites two Wharton School professors who say that Six Sigma leads to incremental innovation at the expense of blue-sky work. This phenomenon is further explored in the book, Going Lean, which describes a related approach known as lean dynamics and provides data to show that Ford‘s “6 Sigma” program did little to change its fortunes.

Based on arbitrary standards

While 3.4 defects per million opportunities might work well for certain products/processes, it might not operate optimally or cost effectively for others. A pacemaker process might need higher standards, for example, whereas a direct mail advertising campaign might need lower standards. The basis and justification for choosing 6 (as opposed to 5 or 7, for example) as the number of standard deviations is not clearly explained. In addition, the Six Sigma model assumes that the process data always conform to the normal distribution. The calculation of defect rates for situations where the normal distribution model does not apply is not properly addressed in the current Six Sigma literature.

Criticism of the 1.5 sigma shift

The statistician Donald J. Wheeler has dismissed the 1.5 sigma shift as “goofy” because of its arbitrary nature. Its universal applicability is seen as doubtful.

The 1.5 sigma shift has also become contentious because it results in stated “sigma levels” that reflect short-term rather than long-term performance: a process that has long-term defect levels corresponding to 4.5 sigma performance is, by Six Sigma convention, described as a “6 sigma process.” The accepted Six Sigma scoring system thus cannot be equated to actual normal distribution probabilities for the stated number of standard deviations, and this has been a key bone of contention about how Six Sigma measures are defined. The fact that it is rarely explained that a “6 sigma” process will have long-term defect rates corresponding to 4.5 sigma performance rather than actual 6 sigma performance has led several commentators to express the opinion that Six Sigma is a confidence trick.

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