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Materials selection using complex proportional assessment and evaluation of mixed data methods

机译:使用复杂的比例评估和混合数据评估的材料选择

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摘要

Material selection is a very fast growing multi-criteria decision-making (MCDM) problem involving a large number of factors influencing the selection process. Proper choice of material is a critical issue for the success and competitiveness of the manufacturing organizations in the global market. Selection of the most appropriate material for a particular engineering application is a time consuming and expensive process where several candidate materials available in the market are taken into consideration as the tentative alternatives. Although a large number of mathematical approaches is now available to evaluate, select and rank the alternative materials for a given engineering application, this paper explores the applicability and capability of two almost new MCDM methods, i.e. complex proportional assessment (COPRAS) and evaluation of mixed data (EVAMIX) methods for materials selection. These two methods are used to rank the alternative materials, for which several requirements are considered simultaneously. Two illustrative examples are cited which prove that these two MCDM methods can be effectively applied to solve the real time material selection problems. In each example, a list of all the possible choices from the best to the worst suitable materials is obtained which almost match with the rankings as derived by the past researchers.
机译:材料选择是一个快速增长的多标准决策(MCDM)问题,涉及许多影响选择过程的因素。正确选择材料对于制造组织在全球市场上的成功和竞争力至关重要。为特定工程应用选择最合适的材料是一个耗时且昂贵的过程,其中考虑了市场上可用的几种候选材料作为尝试性选择。尽管现在可以使用大量数学方法来评估,选择和排列给定工程应用中的替代材料,但是本文探索了两种几乎新的MCDM方法的适用性和能力,即复杂比例评估(COPRAS)和混合评估数据(EVAMIX)进行材料选择的方法。这两种方法用于对替代材料进行排名,同时考虑了几个要求。列举了两个说明性的例子,证明了这两种MCDM方法可以有效地解决实时材料选择问题。在每个示例中,将获得从最佳到最差的合适材料的所有可能选择的列表,这些列表几乎与过去研究人员得出的排名相匹配。

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