Selection of peanut butter machine by the integrated PSI-SV-MARCOS method

IF 0.6 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Knowledge-Based and Intelligent Engineering Systems Pub Date : 2023-07-13 DOI:10.3233/kes-230044
Melike Toslak, A. Ulutaş, Salim Ürea, Željko Stević
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引用次数: 4

Abstract

Production enterprises are enterprises that produce goods or services that aim to meet human needs such as machinery-equipment materials and labour. In order for a manufacturing enterprise to carry out its activities successfully, it must make the right choice when choosing its inputs. The correct execution of production activities and the selection of machinery, which requires high capital investments, also affect the efficiency of the enterprises, the correct use of materials and their costs. Therefore, it is an important decision for business managers to choose the right machine. At this stage, multi-criteria decision making (MCDM) methods are used for choosing the right machine. MCDM methods are methods used in the evaluation of alternatives using more than one criterion. In addition, the MCDM method is used in machine selection as well as in many areas. In this study, PSI, SV and MARCOS methods, which are among the MCDM methods, were used for peanut butter machine selection. First, the criteria and alternatives to be used for the peanut butter machine selection were determined by interviewing a peanut butter factory manager. In the study, while the criteria weights were determined, PSI and SV methods were used, while the machines were ranked with the MARCOS method. In addition, the MARCOS method was compared with other MCDM methods such as PIV, CODAS and WEDBA methods. After the rankings were found according to the methods, the relations between the rankings were examined using the Spearman Correlation method. The main purpose of the study is to determine the suitable butter machine for a peanut paste production factory. Contribution of this study to the literature PSI, SV and MARCOS methods were used together for the first time. In addition, no study has been found in the literature related to peanut butter machine. Therefore, this study is original and contributes to the literature.
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采用集成PSI-SV-MARCOS方法选择花生酱机
生产企业是指以满足人的需要(如机器、设备、材料和劳动力)为目的生产商品或服务的企业。制造企业在选择投入时必须做出正确的选择,才能成功地开展生产活动。生产活动的正确执行和机械的选择,这需要很高的资金投入,也影响着企业的效率,材料的正确使用及其成本。因此,选择合适的机器是企业管理者的一个重要决策。在此阶段,采用多准则决策(MCDM)方法来选择合适的机器。MCDM方法是使用多个标准对备选方案进行评估的方法。此外,MCDM方法用于机器选择以及许多领域。本研究采用MCDM方法中的PSI法、SV法和MARCOS法进行花生酱机器的选择。首先,通过对花生酱工厂经理的访谈,确定了花生酱机器选择的标准和选择方案。在研究中,在确定标准权重的同时,使用PSI和SV方法,同时使用MARCOS方法对机器进行排名。此外,还将MARCOS方法与PIV、CODAS、WEDBA等其他MCDM方法进行了比较。在根据方法找到排名后,使用Spearman相关法检验排名之间的关系。本研究的主要目的是为花生酱生产工厂确定合适的黄油机。本研究对文献的贡献是首次将PSI、SV和MARCOS方法结合使用。另外,在文献中也没有发现与花生酱机相关的研究。因此,本研究具有原创性,对文献有贡献。
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来源期刊
CiteScore
2.10
自引率
0.00%
发文量
22
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