A long-term energy efficiency prediction model for the Brazilian automotive industry


Autoria(s): CASTRO, DJAN MAGALHÃES
Data(s)

05/08/2016

Resumo

According to law number 12.715/2012, Brazilian government instituted guidelines for a program named Inovar-Auto. In this context, energy efficiency is a survival requirement for Brazilian automotive industry from September 2016. As proposed by law, energy efficiency is not going to be calculated by models only. It is going to be calculated by the whole universe of new vehicles registered. In this scenario, the composition of vehicles sold in market will be a key factor on profits of each automaker. Energy efficiency and its consequences should be taken into consideration in all of its aspects. In this scenario, emerges the following question: which is the efficiency curve of one automaker for long term, allowing them to adequate to rules, keep balancing on investment in technologies, increasing energy efficiency without affecting competitiveness of product lineup? Among several variables to be considered, one can highlight the analysis of manufacturing costs, customer value perception and market share, which characterizes this problem as a multi-criteria decision-making. To tackle the energy efficiency problem required by legislation, this paper proposes a framework of multi-criteria decision-making. The proposed framework combines Delphi group and Analytic Hierarchy Process to identify suitable alternatives for automakers to incorporate in main Brazilian vehicle segments. A forecast model based on artificial neural networks was used to estimate vehicle sales demand to validate expected results. This approach is demonstrated with a real case study using public vehicles sales data of Brazilian automakers and public energy efficiency data.

Formato

application/pdf

Identificador

http://www.fumec.br/revistas/sigc/article/view/3698

Idioma(s)

en

Publicador

Universidade FUMEC

Relação

http://www.fumec.br/revistas/sigc/article/view/3698/2006

Direitos

Direitos autorais 2016 Projetos e Dissertações em Sistemas de Informação e Gestão do Conhecimento

Fonte

Monographs in Information Systems and Knowledge Management; v. 5, n. 1 (2016): Janeiro-Junho

Projetos e Dissertações em Sistemas de Informação e Gestão do Conhecimento; v. 5, n. 1 (2016): Janeiro-Junho

2358-5501

Palavras-Chave #Computer Science #G.1.6 Optimization
Tipo

info:eu-repo/semantics/article

info:eu-repo/semantics/publishedVersion

Applied Research;Sistematic Literature Review

Contribuinte(s)