Abstract
Selection of the appropriate automated guided vehicle (AGV) for a manufacturing company is a very important but at the same time a complex problem because of the availability of wide-ranging alternatives and similarities among AGVs. Although, the available studies in the literature developed various fuzzy models, they do not propose any approaches to measure the benefits generated by incorporating fuzziness in their selection models. This paper aims to fill this gap by trying to quantify the level of benefit provided by employing the fuzzy numbers in the multi attribute decision making (MADM) models. Technique for Order Preference by Similarity to Ideal Solution (TOPSIS) is used as the MADM approach to rank the AGV in this paper. In the paper, by increasing the fuzziness level steadily in the fuzzy numbers, the obtained AGV rankings are compared with the ranking obtained with the crisp values. The statistical significance of the differences between the ranks is calculated using Spearman’s rank-correlation coefficient. It can be observed from the results that as the vagueness and imprecision increases, fuzzy numbers instead of crisp numbers should be used. On the other hand, in situations where there is a low level of fuzziness or the average value of the fuzzy number can be guessed, using crisp numbers will be more than adequate.
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Sule, D.R.: Manufacturing facilities: location, planning and design. PWS Publishing Company, Boston (1994)
Sujono, S., Lashkari, R.S.: A multi-objective model of operation allocation and material handling system selection in FMS design. International Journal of Production Economics 105, 116–133 (2007)
Kim, K.S., Eom, J.K.: Expert system for selection of material handling and storage systems. International Journal of Industrial Engineering 4, 81–89 (1997)
Fisher, E.L., Farber, J.B., Kay, M.G.: MATHES: an expert system for material handling equipment selection. Engineering Costs and Production Economics 14, 297–310 (1998)
Chan, F.T.S., Ip, R.W.L., Lau, H.: Integration of expert system with analytic hierarchy process for the design of material handling equipment selection system. Journal of Materials Processing Technology 116, 137–145 (2001)
Fonseca, D.J., Uppal, G., Greene, T.J.: A knowledge-based system for conveyor equipment selection. Expert Systems with Applications 26, 615–623 (2004)
Kulak, O.: A decision support system for fuzzy multi-attribute selection of material handling equipments. Expert Systems with Applications 29, 310–319 (2005)
Chakraborthy, S., Banik, D.: Design of a material handling equipment selection model using analytic hierarchy process. International Journal of Advanced Manufacturing Technology 28, 1237–1245 (2006)
Hwang, C.L., Yoon, K.: Multiple Attribute Decision Making—Methods and Applications—A State of Art Survey. Springer, Berlin (1982)
Sen, P., Yang, J.-B.: Multiple Criteria Decision Support in Engineering Design. Springer, London (1998)
Chu, T.-C., Lin, Y.-C.: A fuzzy TOPSIS method for robot selection. Int. J. Adv.. Manufacturing. Technology 21, 284–290 (2003)
Chen, C.-T.: Extensions of the TOPSIS for group decision-making under fuzzy environment. Fuzzy Sets System 114, 1–9 (2000)
Byun, H.S., Lee, K.H.: A decision support system for the selection of a rapid prototyping process using the modified TOPSIS method. Int. J. Adv. Manufacturing. Technology 26, 1338–1347 (2004)
Miller, I., Freund, J.E., Johnson, R.A.: Probability and Statistics for Engineers, 4th edn. Prentice Hall, Englewood Cliffs (1990)
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Sawant, V.B., Mohite, S.S. (2009). Investigations on Benefits Generated By Using Fuzzy Numbers in A TOPSIS Model Developed For Automated Guided Vehicle Selection Problem. In: Sakai, H., Chakraborty, M.K., Hassanien, A.E., Ślęzak, D., Zhu, W. (eds) Rough Sets, Fuzzy Sets, Data Mining and Granular Computing. RSFDGrC 2009. Lecture Notes in Computer Science(), vol 5908. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-10646-0_36
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DOI: https://doi.org/10.1007/978-3-642-10646-0_36
Publisher Name: Springer, Berlin, Heidelberg
Print ISBN: 978-3-642-10645-3
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