Mathematics optimization models for downstream and midstream petroleum sectors. Literature review and future research directions

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Jonnathan Morales
https://orcid.org/0000-0002-7167-4534
William Quitiaquez
https://orcid.org/0000-0001-9430-2082
Isaac Simbaña
https://orcid.org/0000-0002-3324-3071

Abstract

This article resumes a literature review about Integer Linear and No-linear programming models (MILP and MINLP) applied to petroleum supply chain, especially for Downstream and Midstream sectors. These sectors work in the hydrocarbons’ production, tailored and distribution for final uses, such as intermediate distillates and LPG. The aim of this research is contrast different research articles of operations research, especially which considered multiproduct pipeline transport. The main aim of this article has focused on a future approach of research for petroleum supply chain in the Downstream and Midstream sectors. Of the articles analyzed, the 32 articles tailored a MILP, about of 26 tailored a fuel`s distribution structure in Downstream sector. There is not evidence of MILP and MINLP researched in Ecuador. Finally, discuses about futures lines of research in this topic, such as applied a MILP for operative programing in multi-products pipelines network of Ecuador’s petroleum supply chain. Tools that in the future will lead take effectives decisions a tactic and operative level, considered whole variables in the distributions multi-products pipelines network for satisfied the demand.

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How to Cite
Morales, J., Quitiaquez, W., & Simbaña, I. (2020). Mathematics optimization models for downstream and midstream petroleum sectors. Literature review and future research directions. Revista Técnica "energía", 17(1), PP. 103–111. https://doi.org/10.37116/revistaenergia.v17.n1.2020.398
Section
PRODUCCIÓN Y USO DE LA ENERGÍA
Author Biographies

Jonnathan Morales, Universidad Politécnica Salesiana

Nació en Quito, Ecuador en 1989.  Se tituló de Ingeniero Químico de la Universidad Central del Ecuador en 2014. Actualmente cursa la Maestría en Producción y Operaciones Industriales en la Universidad Politécnica Salesiana. Su interés se centra en campos de Programación lineal y optimización de procesos industriales.

William Quitiaquez

Nació en Quito en 1988.  Recibió su título de Ingeniero Mecánico de la Universidad Politécnica Salesiana en 2011; de Magister en Gestión de Energías de la Universidad Técnica de Cotopaxi, en 2015; de Magister en Ingeniería de la Universidad Pontificia Bolivariana de Medellín, en 2019. Actualmente, obtuvo la distinción de Candidato a Doctor en la Universidad Pontificia Bolivariana de Medellín, su campo de investigación se encuentra relacionado a Fuentes Renovables de Energía, Termodinámica, Transferencia de Calor.

Isaac Simbaña

Nació en Quito, Ecuador en 1990.  Recibió su título de Ingeniero Mecánico de la Universidad Politécnica Salesiana en 2018. Sus campos de investigación están relacionados a Procesos de Manufactura, así como el estudio de Transferencia de Calor y Fuentes Renovables de Energía.

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