Title of article :
Quantifying and reducing uncertainty in life cycle assessment
using the Bayesian Monte Carlo method
Author/Authors :
Shih-Chi Lo، نويسنده , , Hwong-Wen Ma، نويسنده , , Shang-Lien Lo، نويسنده ,
Issue Information :
هفته نامه با شماره پیاپی سال 2005
Abstract :
The traditional life cycle assessment (LCA) does not perform quantitative uncertainty analysis. However, without
characterizing the associated uncertainty, the reliability of assessment results cannot be understood or ascertained. In this study,
the Bayesian method, in combination with the Monte Carlo technique, is used to quantify and update the uncertainty in LCA
results. A case study of applying the method to comparison of alternative waste treatment options in terms of global warming
potential due to greenhouse gas emissions is presented. In the case study, the prior distributions of the parameters used for
estimating emission inventory and environmental impact in LCAwere based on the expert judgment from the intergovernmental
panel on climate change (IPCC) guideline and were subsequently updated using the likelihood distributions resulting from both
national statistic and site-specific data. The posterior uncertainty distribution of the LCA results was generated using Monte
Carlo simulations with posterior parameter probability distributions. The results indicated that the incorporation of quantitative
uncertainty analysis into LCA revealed more information than the deterministic LCA method, and the resulting decision may
thus be different. In addition, in combination with the Monte Carlo simulation, calculations of correlation coefficients facilitated
the identification of important parameters that had major influence to LCA results. Finally, by using national statistic data and
site-specific information to update the prior uncertainty distribution, the resultant uncertainty associated with the LCA results
could be reduced. A better informed decision can therefore be made based on the clearer and more complete comparison of
options.
Keywords :
Bayesian Monte Carlo simulation , Life Cycle Assessment , Probabilistic uncertainty analysis , coefficients of variation
Journal title :
Science of the Total Environment
Journal title :
Science of the Total Environment