Location Allocation of Corn Stover Pretreatment Facilities in South Korea Under an Agent-Based Simulation Framework

This research proposes a novel location allocation framework that utilizes agent-based simulation for the efficient production of corn stover-based bioethanol, which requires dedicated pretreatment facilities for the feedstock. The framework comprises two main modules: (1) a Pretreatment Facility Mo...

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Bibliographic Details
Published inApplied sciences Vol. 15; no. 17; p. 9488
Main Authors Kim, Youngjin, Seo, Junyoung, Kim, Sojung
Format Journal Article
LanguageEnglish
Published 29.08.2025
Online AccessGet full text
ISSN2076-3417
2076-3417
DOI10.3390/app15179488

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Summary:This research proposes a novel location allocation framework that utilizes agent-based simulation for the efficient production of corn stover-based bioethanol, which requires dedicated pretreatment facilities for the feedstock. The framework comprises two main modules: (1) a Pretreatment Facility Module that assesses the performance of the corn stover-based bioethanol supply chain based on the interactions among three types of agents, namely order agent, pretreatment agent, and transport agent, and (2) an Optimization Module designed to determine the optimal supply chain configuration by selecting the most suitable number and locations for pretreatment facilities to achieve the lowest total operational cost. The framework is implemented in a case study for South Korea, which aims to raise the bioethanol blending ratio from 4% in 2025 to 8% by 2030. Experimental results reveal that, within the bioethanol supply chain comprising eight farms and four refineries, a 1% increase in bioethanol blending ratio leads to an increase in the demand for approximately 2229 kL of ethanol (10,225 tons of corn stover), and the proposed framework enables to identify the optimal location of pretreatment facilities in the subject supply chain according to the change in ethanol demand.
ISSN:2076-3417
2076-3417
DOI:10.3390/app15179488