The carbon footprint of China's import coffee: a scenario analysis

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The carbon footprint of China's import coffee: a scenario analysis

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dc.contributor Universidade Federal de Santa Catarina. pt_BR
dc.contributor.advisor Chaves, Gisele de Lorena Diniz
dc.contributor.author Amaro Filho, Douglas
dc.date.accessioned 2025-12-16T15:21:16Z
dc.date.available 2025-12-16T15:21:16Z
dc.date.issued 2025-08-09
dc.identifier.uri https://repositorio.ufsc.br/handle/123456789/271335
dc.description TCC(graduação) - Universidade Federal de Santa Catarina, Centro Tecnológico, Engenharia de Produção. pt_BR
dc.description.abstract China’s rapidly expanding coffee market has triggered a structural shift in global trade, prioritizing long-haul imports of Arabica beans over regional sourcing, an operational reality that has caused maritime emissions to rise significantly faster than trade volumes. This study aims to quantify the historical maritime CO₂ emissions of this specific supply chain and project its future carbon footprint to determine the most effective levers for decarbonization. To achieve this, a bottom-up, port-to-port stochastic simulation model was constructed in Python, utilizing the Energy Efficiency Operational Indicator (EEOI) to analyze trade flows from the top five origin countries to China and integrating decelerating demand forecasts with 20 distinct scenarios to test the system's sensitivity to random disruptions, strategic sourcing shifts, and five specific decarbonization pathways. Historical analysis (2015-2024) confirmed that sourcing distance was the primary driver of emissions, which grew 618% against a 352% volume increase; however, the forecast (2025-2050) reveals that technological efficiency is the only dominant lever for the future, with the "High Adoption" technology profile achieving a 53% absolute decrease in annual emissions by 2050 compared to the 2024 baseline, whereas the "Gradual Nearshoring" scenario failed to reverse the absolute growth trend. This research provides a granular, route-specific assessment of the carbon intensity of China's green coffee imports, challenging the efficacy of sourcing-based solutions in terroir-driven industries by demonstrating that supply chain restructuring is less effective than operational efficiency improvements. While limited to the port-to-port maritime segment and relying on interpolated fleet-wide efficiency data, the findings imply that industry decarbonization efforts should prioritize the acceleration of fleet modernization and drop-in fuels, such as sustainable biofuels, over unrealistic attempts to alter established trade routes. pt_BR
dc.description.abstract China’s rapidly expanding coffee market has triggered a structural shift in global trade, prioritizing long-haul imports of Arabica beans over regional sourcing, an operational reality that has caused maritime emissions to rise significantly faster than trade volumes. This study aims to quantify the historical maritime CO₂ emissions of this specific supply chain and project its future carbon footprint to determine the most effective levers for decarbonization. To achieve this, a bottom-up, port-to-port stochastic simulation model was constructed in Python, utilizing the Energy Efficiency Operational Indicator (EEOI) to analyze trade flows from the top five origin countries to China and integrating decelerating demand forecasts with 20 distinct scenarios to test the system's sensitivity to random disruptions, strategic sourcing shifts, and five specific decarbonization pathways. Historical analysis (2015-2024) confirmed that sourcing distance was the primary driver of emissions, which grew 618% against a 352% volume increase; however, the forecast (2025-2050) reveals that technological efficiency is the only dominant lever for the future, with the "High Adoption" technology profile achieving a 53% absolute decrease in annual emissions by 2050 compared to the 2024 baseline, whereas the "Gradual Nearshoring" scenario failed to reverse the absolute growth trend. This research provides a granular, route-specific assessment of the carbon intensity of China's green coffee imports, challenging the efficacy of sourcing-based solutions in terroir-driven industries by demonstrating that supply chain restructuring is less effective than operational efficiency improvements. While limited to the port-to-port maritime segment and relying on interpolated fleet-wide efficiency data, the findings imply that industry decarbonization efforts should prioritize the acceleration of fleet modernization and drop-in fuels, such as sustainable biofuels, over unrealistic attempts to alter established trade routes. pt_BR
dc.format.extent 122 pt_BR
dc.language.iso eng pt_BR
dc.publisher Florianópolis, SC. pt_BR
dc.rights Open Access. en
dc.subject Emissões Marítimas; Cadeia de Suprimentos; Descarbonização; Simulação Estocástica; Combustíveis Alternativos pt_BR
dc.subject Maritime Emissions; Supply Chain; Decarbonization; Stochastic Simulation, Alternative Fuels pt_BR
dc.title The carbon footprint of China's import coffee: a scenario analysis pt_BR
dc.type TCCgrad pt_BR


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