Biodiesel Supply Chain Optimization Modeled with Geographical Information System (GIS) and Mixed-Integer Linear Programming (MILP) for the Northern Great Plains ... View Full Text


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Article Info

DATE

2018-10-24

AUTHORS

Hyunju Jeong, Heidi L. Sieverding, James J. Stone

ABSTRACT

Drought-tolerant, industrial oilseeds such as Camelina sativa (camelina) grown on marginal land are being considered as feedstock alternatives to meet the increasing biofuel demand and reduce the dependency on water and food resources. However, crops grown on rural, marginal lands are not well-connected with transportation networks and biofuel plants. Transportation routes and biofuel plant development should be optimized for sustainable biofuel development. This study aimed at developing a supply chain optimization model for biodiesel produced from camelina oilseed. A mixed integer linear programming (MILP) model associated with geographic information system (GIS) was built. Three echelons of camelina oilseed supply, biodiesel production, and biodiesel and by-product (livestock meal) demand were considered to optimize the numbers, locations, and capacities of new plants, transportation routes, and the utilization rate of existing plants at a minimum cost. A case study was conducted for the northern Great Plains (NGP) region of Montana, South Dakota, and North Dakota. Transportation cost compared to plant construction cost was a decisive factor in supply chain configuration. The model developed in this study simulates minimum cost transportation routes directly through the GIS network analysis, which is differentiated from other studies analyzing the shortest routes in GIS and calculating their transportation costs in models. This is beneficial in seeking economic routes which incorporate multiple modes for regions having a spartan infrastructure. More... »

PAGES

1-12

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URI

http://scigraph.springernature.com/pub.10.1007/s12155-018-9943-y

DOI

http://dx.doi.org/10.1007/s12155-018-9943-y

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