4.8 Article

Characterizing Model Uncertainties in the Life Cycle of Lignocellulose-Based Ethanol Fuels

Journal

ENVIRONMENTAL SCIENCE & TECHNOLOGY
Volume 44, Issue 22, Pages 8773-8780

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/es102091a

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Funding

  1. Natural Sciences and Engineering Research Council of Canada
  2. Government of Ontario
  3. General Motors
  4. AUTO21 Network Centre of Excellence

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Renewable and low carbon fuel standards being developed at federal and state levels require an estimation of the life cycle carbon intensity (LCCI) of candidate fuels that can substitute for gasoline, such as second generation bioethanol. Estimating the LCCI of such fuels with a high degree of confidence requires the use of probabilistic methods to account for known sources of uncertainty. We construct life cycle models for the bioconversion of agricultural residue (corn stover) and energy crops (switchgrass) and explicitly examine uncertainty using Monte Carlo simulation. Using statistical methods to identify significant model variables from public data sets and Aspen Plus chemical process models, we estimate stochastic life cycle greenhouse gas (GHG) emissions for the two feedstocks combined with two promising fuel conversion technologies. The approach can be generalized to other biofuel systems. Our results show potentially high and uncertain GHG emissions for switchgrass-ethanol due to uncertain CO(2) flux from land use change and N(2)O flux from N fertilizer. However, corn stover-ethanol, with its low-in-magnitude, tight-in-spread LCCI distribution, shows considerable promise for reducing life cycle GHG emissions relative to gasoline and corn-ethanol. Coproducts are important for reducing the LCCI of all ethanol fuels we examine.

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