Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach
In studying petroleum supply chain networks, past studies have largely segregated three critical decision-making aspects: integrated planning, uncertainties, and multi-objective setting. This study focuses on consolidating these aspects and proposes a stochastic, multi-objective, mixed-integer linea...
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doaj-d47c8ee7dc854b05b4101092da6296212021-05-14T04:19:04ZengElsevierOperations Research Perspectives2214-71602021-01-018100189Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approachPramesh Pudasaini0Corresponding author.; Department of Civil Engineering, Pulchowk Campus, Institute of Engineering, Tribhuvan University, Patandhoka Road, Pulchowk, Lalitpur, NepalIn studying petroleum supply chain networks, past studies have largely segregated three critical decision-making aspects: integrated planning, uncertainties, and multi-objective setting. This study focuses on consolidating these aspects and proposes a stochastic, multi-objective, mixed-integer linear programming model for strategic and tactical planning of downstream petroleum supply chain (DPSC) networks. Demand, considered the uncertain parameter, is modeled using a two-stage stochastic approach based on scenarios. The model—designed for multiple supply centers, distribution centers, products, and transportation modes—also considers transshipment between the centers. The objective functions consider simultaneous minimization of transportation cost and product loss cost that is incurred during transportation between the centers. The application of the proposed model is demonstrated with a case study of a real-world DPSC network undergoing construction of new pipelines and expansion of storage facilities. The augmented ε-constraint method is used to solve the model. Interesting trade-offs in the case study are analyzed, aiding the decision-makers in exploiting the model as a decision-support tool to better understand the complexity, flexibility, and risk of integrated decision-making under uncertainty.http://www.sciencedirect.com/science/article/pii/S2214716021000129Uncertainty modelingMulti-objective optimizationMultimodal transportationIntegrated planningPetroleum supply chain |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Pramesh Pudasaini |
spellingShingle |
Pramesh Pudasaini Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach Operations Research Perspectives Uncertainty modeling Multi-objective optimization Multimodal transportation Integrated planning Petroleum supply chain |
author_facet |
Pramesh Pudasaini |
author_sort |
Pramesh Pudasaini |
title |
Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach |
title_short |
Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach |
title_full |
Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach |
title_fullStr |
Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach |
title_full_unstemmed |
Integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach |
title_sort |
integrated planning of downstream petroleum supply chain: a multi-objective stochastic approach |
publisher |
Elsevier |
series |
Operations Research Perspectives |
issn |
2214-7160 |
publishDate |
2021-01-01 |
description |
In studying petroleum supply chain networks, past studies have largely segregated three critical decision-making aspects: integrated planning, uncertainties, and multi-objective setting. This study focuses on consolidating these aspects and proposes a stochastic, multi-objective, mixed-integer linear programming model for strategic and tactical planning of downstream petroleum supply chain (DPSC) networks. Demand, considered the uncertain parameter, is modeled using a two-stage stochastic approach based on scenarios. The model—designed for multiple supply centers, distribution centers, products, and transportation modes—also considers transshipment between the centers. The objective functions consider simultaneous minimization of transportation cost and product loss cost that is incurred during transportation between the centers. The application of the proposed model is demonstrated with a case study of a real-world DPSC network undergoing construction of new pipelines and expansion of storage facilities. The augmented ε-constraint method is used to solve the model. Interesting trade-offs in the case study are analyzed, aiding the decision-makers in exploiting the model as a decision-support tool to better understand the complexity, flexibility, and risk of integrated decision-making under uncertainty. |
topic |
Uncertainty modeling Multi-objective optimization Multimodal transportation Integrated planning Petroleum supply chain |
url |
http://www.sciencedirect.com/science/article/pii/S2214716021000129 |
work_keys_str_mv |
AT prameshpudasaini integratedplanningofdownstreampetroleumsupplychainamultiobjectivestochasticapproach |
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