Decision Modeling for Appraising Material Handling Equipments under Qualitative Indices
Keywords:
Material Handling Equipment, Generalized Interval-Valued Trapezoidal, Fuzzy Numbers (GIVTFNs) Modeling, Decision Support Framework, Assessment.Abstract
Material handling equipments (MHEs) are the important part of every manufacturing and industrial firms, which
remains involved during the process of manufacturing, distribution, consumption, disposal etc. Assessing the
importance of MHE is crucial and it can influence the profit of the concerned firm. Thus, in this work, the
authors responded towards MHE characteristics and equipped an assessment platform for appraising MHE
indices, which can be utilized in defining the status of the indices relating the MHE. A Multi-Criterion Decision
Making (MCDM) framework under the arena of Material Handling Equipment (MHE) is developed by the
authors and a decision support model is presented by the authors to describe the level of the indices pertaining to
the selection of MHE. Modeling based on Generalized Interval-Valued Trapezoidal Fuzzy Numbers (GIVTFNs)
is presented to reciprocate towards the uncertainty and impreciseness of the MHE indices. A single level
hierarchy platform is presented by the authors for demonstrating the scientific realization of the projected work.
A fuzzy performance important index framework for MHE indices is discussed in this study to recognize the
strong and ill MHE indices. In this study, the authors presented a decision support framework, which can clutch
the subjective views of the decision makers. In this study, the chief objective of the authors is to distribute
methodological way for determining the importance of distinguishes MHE indices.
Downloads
References
Chakraborty, S. & Banik, D. (2006). Design of a material handling equipment selection model using analytic
hierarchy process. International Journal of Advance Manufacturing Technology, 28(11-12), 1237–1245.
Chen, C. T. (2000). Extensions of the TOPSIS for group decision-making under fuzzy environment. Fuzzy Sets
and Systems, 114(1), 1–9.
Chen, S. M. (1995). Arithmetic operations between vague sets. Proceeding of international joint conference of
CFSA/TFIS/SOFT’95 on fuzzy theory and applications, Taipei Taiwan, Republic of China, 206–211.
Datta, S., Sahu, N. & Mahapatra, S. (2013). Robot selection based on grey-MULTIMOORA approach. Grey
Systems: Theory and Application, 3(2), 201-232.
Deb, S. K., Bhattacharyya, B. & Sorhkel, S. K. (2002). Material handling equipment selection by fuzzy multi
criteria decision-making methods, Proceedings of AFSS 2002, International Conference on Fuzzy Systems, 99-
, India.
Egbelu, P. J. & Tanchoco, J. M. A (1984). Characterization of automatic guided vehicle dispatching rules.
International Journal of Production Research, 22(3), 359-374.
Karande, P. & Chakraborty, S. (2013). Material handling equipment selection using weighted utility additive
theory. Journal of Industrial Engineering, 1-9, http://dx.doi.org/10.1155/2013/268708.
Lin, C. T., Chiu, H. & Tseng, Y. H. (2006). Agility evaluation using fuzzy logic. International Journal of
Production Economics, 101(2), 353-368.
Liu, P. & Jin, F. (2012). A multi-attribute group decision-making method based on weighted geometric
aggregation operators of interval-valued trapezoidal fuzzy numbers. Applied Mathematical Modelling, 36(6),
–2509.
Journal of Graphic Era University
Vol. 7, Issue 1, 1-9, 2019
ISSN: 0975-1416 (Print), 2456-4281 (Online)
Maniya, K. D. & Bhatt, M. G (2011). A multi-attribute selection of automated guided vehicle using the AHP/M-
GRA technique. International Journal of Production Research, 49(20), 6107-6124.
Hassan, M. D. Mohsen (2010). A framework for selection of material handling equipment in manufacturing and
logistics facilities. Journal of Manufacturing Technology Management, 21(2), 246-268.
Sahu A. K., Sahu, A. K. & Sahu, N. K. (2017). Appraisements of material handling system in context of fiscal
and environment extent: a comparative grey statistical analysis. International Journal of Logistics Management,
(1), 2-28.
Sahu, N. K., Sahu A. K. & Sahu, A. K (2015a). Appraisement and benchmarking of third party logistic service
provider by exploration of risk based approach. Cogent Business and Management, 2(1), 1-21.
Sahu A. K., Sahu, N. K. & Sahu, A. K. (2015b). Benchmarking CNC machine tool using hybrid fuzzy
methodology a multi indices decision making approach, International Journal of Fuzzy System Applications,
(2), 28-46.
Sahu, A. K., Sahu, N. K., & Sahu, A. K. (2016a). Application of modified MULTI-MOORA for CNC machine
tool evaluation in IVGTFNS environment: an empirical study. International Journal of Computer Aided
Engineering and Technology, 8(3), 234-259.
Sahu, A. K., Sahu, A. K., & Sahu, N. K. (2016b). Appraisal of partner enterprises under GTFNS environment:
agile supply chain. International Journal of Decision Support System Technology, 8(3), 1-19.
Secundo, G., Magarielli, D., Esposito, E. & Passiante, G. (2017). Supporting decision-making in service
supplier selection using a hybrid fuzzy extended AHP approach: a case study. Business Process Management
Journal, 23(1), 196-222.
Wei, S. H. & Chen, S. M. (2009). Fuzzy risk analysis based on interval-valued fuzzy numbers. Expert System
with Applications, 36(2), 2285 - 2299.
Zadeh, L. A. (1965). Fuzzy sets. Information and Control, 8, 338-353.
Zadeh, L. A. (1975). The concept of a linguistic variable and its application to approximate reasoning,
Information Sciences, 8(3), 199-249