Design Cost Engineering Through Quality Function Deployment

DOI : 10.17577/IJERTV2IS4896

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Design Cost Engineering Through Quality Function Deployment

Shashank Singh Pawar, Dr. Devendra Singh Verma

Department of Mechanical Engineering, Institute of Engineering & Technology, Devi Ahilya Vishwavidyalaya, Indore (M.P.), India

Abstract

Growing concerns regarding the environment impact of product has increase the awareness of the customer about the environment. The customer demand for environment friendly product is increasing rapidly. Hence the manufacturer has shifted the focus to the product which has less impact on environment. Therefore in the conceptual design of the product the environment, quality and cost aspects must be considered during the decision making process. In this research paper quality function deployment is applied on a product to improve the quality aspect using green parameters and multi attribute utility theory is used to optimize the cost of the product.

Keywords: Quality Function Deployment (QFD), Multi Attribute Utility theory (MAUT).

  1. Introduction

    Due to increase in awareness of customer about environment issues, eco-friendly products have gained more and more importance. Such interests in customers about environment issues have forced the manufacturer to consider the environment impact of the product during the design stage. When environment requirements are considered during the product design stage the cost becomes relatively low. In this research paper Green parameters are used to

    enhance the quality of the product using quality function deployment (QFD). After that the optimized estimated cost of the product on the basis of its feature attributes is evaluated with the help of multi attribute utility theory (MAUT) model.

  2. Literature Review

    Technique for order preference by similarity to ideal solution TOPSIS was initially developed by Hwang and Yoon (1981), subsequently discussed by many (Chu, 2004; Peng, 2000). TOPSIS finds the best alternatives by minimizing the distance to the ideal solution and maximizing the distance to the nadir or

    negative-ideal solution (Jahanshahloo et al., 2006). All alternative solutions can be ranked according to their closeness to the ideal solution.

    QFD begins with identifying customers and asking the question: what customer want. Most of our customers needs through marketing research and sales are collected (Fung et al., 2003). Quality attributes that extend to all stages of product development processes from design to final production was called Quality Function Deployment (Hwang and Teo, 2002). QFD is implemented by a series of matrices, the quality tables, also called HOQ, which provide detailed guidance throughout the service development process (Cohen, 1995).

    Multi attribute utility theory (MAUT) is a set of systematic procedures design for quantifying an individuals preference (Keeney and Raiffa, 1976). Ting et al. (1999) first constructed a cost estimation model by means of MAUT which also combines historic data to avoid the object judgment.

  3. Methodology

    1. QFD Matrix

      The material which has low impact on environment and is cheap as compared to the material currently using in the product design is substituted to obtain less impact on environment as well as the reduction in cost. In this research paper the Mg-Al is

      substituted for the material used in digital camera in its upper body. Mg-Al alloy is cheaper, thinner and recyclable. It reduced the weight of the upper body, reduces the volume of the camera body and increases the rate of recycling of material.

    2. MAUT Model

      Attribute

      Levels

      Complexity

      Quality

      Material

      Size

      Material Amount

      Disposal

      1

      Extemely Simple

      Economic

      ABS Plastic

      Small

      Small Amount

      Small Amount

      2

      Simple

      Medium

      Mg-Al

      Medium

      Moderate Amount

      Moderate Amount

      3

      Somewhat Simple

      High

      Mg-Al

      Large

      Large Amount

      Large Amout

      4

      Simple-Medium

      Special Perpose

      ABS Plastic

      5

      Medium

      or

      6

      Medium-Complex

      Mg-Al

      7

      Somewhat Complex

      8

      complex

      9

      Extreme Complex

      Attribute

      Levels

      Complexity

      Quality

      Material

      Size

      Material Amount

      Disposal

      1

      Extemely Simple

      Economic

      ABS Plastic

      Small

      Small Amount

      Small Amount

      2

      Simple

      Medium

      Mg-Al

      Medium

      Moderate Amount

      Moderate Amount

      3

      Somewhat Simple

      High

      Mg-Al

      Large

      Large Amount

      Large Amout

      4

      Simple-Medium

      Special Perpose

      ABS Plastic

      5

      Medium

      or

      6

      Medium-Complex

      Mg-Al

      7

      Somewhat Complex

      8

      complex

      9

      Extreme Complex

      Based on Ting et al. (1999) and Dong et al. (2003), cost is estimated through the following equations:

        1. Application of MAUT Model:

          This section describes a case study of estimating the cost of a digital camera with MAUT model. Attributes and feature levels for the product cost estimation of digital camera are shown in table.

          Table1.

          Attributes and feature level for the product.

          . . + 1 1

          = =1

          =1

          =1

          1+W =

          (1 + . )

          Cost Index(CI) = aeb [U(x)]

          Where,

          U(X) = Utility value of alternative depending on the level of each attribute

          X = (x1, x2, x3, x4, xm)

          W = Scaling Factor

          wi = Weight for attribute i m = number of attributes

          Ui(xi) = Utility value of attribute i at level xi Cost (X) = Estimative cost depending on each xi a, b = parameters of regression model

          e = base of natural logarithm.

          Feature levels of product design are selected on the basis of attribute of the product. The utility value of the attribute is calculated on the basis of its utility function type. After that the utility value is converted into cost index by using regression model.

  4. Case tudy

    An example of digital camera is illustrated in this research work in which some of the features of digital camera are considered during the product development process. Various feature levels are classified as per its attributes. As shown in table 1. After that design levels are selected in accordance with the designed attributes. On which multi attribute utility theory is applied to convert the utility value of the feature levels into the cost index with the help of regression model.

    Various levels of the product design are selected on the basis of product attribute. As shown in table 1.

    Table2.

    Feature Levels for product design

    Cost Attribute (i)

    Weight

    Highest Level

    Utility

    (wi)

    (xi)

    Function type

    Complexity for Product

    0.7

    9

    Convex

    Quality of Product

    0.9

    4

    Linear

    Material in Mfg.

    0.6

    5

    Linear

    Size of Product

    0.4

    3

    Linear

    Energy Consumption

    0.6

    3

    Linear

    Reverse Logistics

    0.3

    5

    Linear

    Strong (9)

    O

    Medium(4)

    Weak (1)

    x

    Strong Negative

    x

    Medium Negative

    Strong Positive

    Medium Positive

    Strong (9)

    O

    Medium(4)

    Weak (1)

    x

    Strong Negative

    x

    Medium Negative

    Strong Positive

    Medium Positive

    x

    x

    x

    x

    UTE IMPORTANCE 65 23 55 25 22

    UTE IMPORTANCE 65 23 55 25 22

    x

    CUSTOMER DEMAND

    FUNCTIONAL CHARACTERISTICS

    Mega Pixel

    Number of Colors

    Material Used

    Easy Dimensioning

    Easy Functioning

    Cost of Designing

    Eco Friendly Product

    Quality Picture

    5

    Attractive Appearance

    2

    Weight Specification

    3

    Size Specification

    1

    Operating Complexity

    2

    Competitive Price

    5

    Energy Saving

    4

    FUNCTIONAL SPECIFICATION

    14 to 16 Mega Pixel

    White, Black & Grey

    Eco Friendly Product

    Medium Size Preferred

    Easy Manually Operated

    Competitive Price

    ABSOL

    Figure: House of Quality Matrix

    55

    58

    RELATIVE IMPORTANCE (%)

    21

    8

    18

    8

    7

    18

    19

    Table3.

    Utility Value U(x) calculation

    Cost Attribute (i)

    Design Level

    Utility Value Attribute

    (xi)

    Ui(xi)

    Complexity for Product

    6

    0.2296

    Quality of Product

    3

    0.75

    Material in Mfg.

    2

    0.2

    Size of Product

    2

    0.67

    Energy Consumption

    2

    0.67

    Reverse Logistics

    2

    0.4

    Cost (Rupee) 12990

    U(X) 0.8365

    With above data, regression model is constructed:

    Cost (CI) = 6.816 e [8.7 x U (x)]

    The estimative cost = 9870 Rupees.

      1. Application of QFD

    The house of quality represents the relationship between the customer demand and technical attributes.

    Following symbolic notations are used in QFD model:

  5. Conclusion

    It can be concluded that when the changes in the designing level occur, the cost of the product get change. In this study, Quality Function Deployment is used to enhance the quality of the product using green parameters. And the MAUT model used to calculate the estimated cost during design stage of the product with the help of regression model. The slight changes in level of the product reduce the design cost of the product.

  6. References

  1. Anthony Halog, Frank Schultmann and Otto Rantz, Quality function deployment for technique selection for

    optimum environmental performance improvement, Journal of Cleaner Production 9 (2001) 387-394.

  2. Cathal M. Brugha, Structuring and weighting criteria in multi criteria decision making, Internation Conference on Multi criteria Decision Making, Stewart, T.J. and Van den Honert, R.C.(eds.): Springer-Verlag, p. 229-242.

  3. Chengsong Dong, Chuck Zhang and Ben Wang, Integration of green quality function deployment and fuzzy multi attribute utility theory based cost estimation for environment conscious product development, International Journal of Environmentally Conscious Design & Manufacturing, Vol. 11, No.1,2003.

  4. James S. Dyer and Peter C. Fishburn, Multi criteria decision making, Multi attribute utility theory: The next ten years, Management Science, Vol. 38, No. 5, pp. 645-654.

  5. Jurgen Bode and Richard Y. K. Fung, Cost engineering with quality function deployment, Computer Ind. Engineering, Vol. 35, No. 3-4, pp. 587-590, 1998.

  6. Keijiro Masui, Tomohiko Sakao and Atsushi Inaba, Development of a DfE in Japan- Quality function deployment for environment.

  7. Mehmet Ali Ilgin and Surendra M. Gupta, Environmentally conscious manufacturing and product recovery, Journal of Environmental Management 91 (2010) 563-591.

  8. Nai-Jen Chang and Cher-Min Fong, Green product quality, green corporate image, green customer satisfaction, and green customer loyalty, African Journal of Business Management, Vol. 4(13), pp.2836-2844.

  9. Selcuk Yalcin, Customer focused new product design process using target costing and quality function deployment, Middle Eastern Finance and Economics, ISSN: 1450-2889 Issue 11 (2011).

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