2020 Virtual AIChE Annual Meeting
(680e) Integrating Machine Learning and Process Simulation to Estimate Energy and Greenhouse Gas Emissions of Activated Carbon Production
Several researches have evaluated the environmental impacts of AC production through Life Cycle Assessment (LCA) [3â7]. However, most studies have focused on AC produced from specific feedstock (e.g., coconut shell) and operational parameters, and thus their results cannot be extended to other feedstocks with different operational conditions. In this work, we integrated machine learning and process simulation to estimate the primary energy and Greenhouse Gas (GHG) emissions of AC produced from different feedstocks with varying operational conditions. Artificial neural network (ANN), a machine learning technique, was trained by a large dataset collected from literatures and used to predict the yield of steam AC production [8]. The trained ANN model was integrated with pyrolysis kinetic model [9] and Aspen Plus process simulation to estimate the overall energy and mass balance that were used to estimate overall primary energy consumption and GHG emissions [10].
The results indicated large variations in primary energy consumption and GHG emissions across 73 different woody biomass species (43.4-277 MJ/kg AC and 3.96-22.0 kg CO2-eq./kg AC). A sensitivity analysis was conducted and the results showed the large impacts of biomass composition (e.g., hydrogen and oxygen content) and operational parameters (e.g., activation temperature). Such understandings will be helpful for feedstock selection and process optimization. For example, the results showed that higher hydrogen content (and H/C molar ratio) of biomass increases the primary energy consumption, and higher oxygen content (and O/C molar ratio) increases the energy recovery ratio. This conclusion will be useful for selecting suitable biomass for energy-efficient AC production. The process-based environmental data generated from this work can be used a transparent data source for future LCA studies related to AC or AC applications (e.g., wastewater treatment). Although this study focuses on AC made from woody biomass, the integrated modeling framework can be applied to other types of biomass or bio-based products.
References
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