Busca avançada
Ano de início
Entree


A decision making model based on fuzzy inference to predict the impact of SCOR (R) indicators on customer perceived value

Texto completo
Autor(es):
Zanon, Lucas Gabriel ; Munhoz Arantes, Rafael Ferro ; Del Rosso Calache, Lucas Daniel ; Ribeiro Carpinetti, Luiz Cesar
Número total de Autores: 4
Tipo de documento: Artigo Científico
Fonte: INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS; v. 223, p. 17-pg., 2020-05-01.
Resumo

Customer perceived value (CPV) is critical for supply chain management, due to its link with satisfaction and market share. In addition, value perception is a consequence of several factors including operational performance. Hence, analyzing the cause and effect relationship between CPV and supply chain performance can help decision makers to identify attributes of performance that need improvement efforts so as to enhance CPV. However, modeling this relationship is very dependent of cognitive judgments associated with incomplete or imprecise information. To overcome this, fuzzy inference has been largely used in supply chain management. However, no study was found that applies this soft computing technique with natural language processing to investigate the impact of supply chain performance on CPV. Therefore, this article proposes a decision making model based on fuzzy inference to help predicting the impact on CPV of the performance indicators of the SCOR (R) (Supply Chain Operations Reference) model. The SCOR (R) level 1 indicators were applied as a mean to assess CPV in a multidimensional way, to enable benchmarking with other supply chains and to facilitate the communication with stakeholders. It is an axiomatic prescriptive model-based research that includes an illustrative application based on the distribution of beverages to final customers. Analysis of the response surfaces of both Fuzzy Inference Systems allowed identification of the attributes of performance that most impact CPV, therefore providing the possibility of anticipation and prioritization. The model is adaptable to various supply chain configurations. Also, it provides the possibility of internalizing CPV as a driver for supply chain continuous improvement initiatives. (AU)

Processo FAPESP: 18/14831-5 - Proposta de um método de priorização de riscos de fornecimento baseado na aplicação das técnicas fuzzy e mapa cognitivo para a tomada de decisão em grupo
Beneficiário:Rafael Ferro Munhoz Arantes
Modalidade de apoio: Bolsas no Brasil - Mestrado
Processo FAPESP: 16/14618-4 - Gestão de desempenho de fornecedores: estudo de técnicas multicritério e de inteligência artificial para decisão em grupo
Beneficiário:Luiz Cesar Ribeiro Carpinetti
Modalidade de apoio: Auxílio à Pesquisa - Regular