posted on 2018-06-21, 00:00authored byLongwen Ou, Guanqun Luo, Allison Ray, Chenlin Li, Hongqiang Hu, Stephen Kelley, Sunkyu Park
Feedstock
price and availability are key challenges for biorefinery
development. Biomass blending has been suggested as a route to overcome
these limitations. However, the impacts of feedstock blending on the
uncertainty in hydrolyzed sugar yields remain unclear. This study
quantifies the uncertainties in the sugar yields from hydrolysis of
the blends of corn stover, switchgrass, and grass clippings by considering
both feedstock compositional variation and model uncertainty. The
results indicate that feedstock blending reduces the uncertainties
in sugar yields and delivers feedstock of more uniform quality. A
60/35/5 blend of corn stover, switchgrass, and grass clippings on
average achieves a glucose yield of 32.6 g/100 g of biomass, which
is comparable to those of corn stover (33.3 g/100 g) and switchgrass
(32.9 g/100 g), but drastically higher than that of grass clippings
(21.7 g/100 g). This same blend also achieves the lowest variance
in glucose yield (2.9 g/100 g) compared to corn stover (3.1 g/100
g), switchgrass (3.3 g/100 g), and grass clippings (5.6 g/100 g).
A further investigation on the breakdown of the variability of the
hydrolyzed sugar yields reveals that the reduction in the variability
of sugar yields for blended feedstocks is achieved by reduced feedstock
compositional variation. Based on these results, the optimization
of blending ratios is performed with respect to three objectives:
(1) to maximize the probability of meeting the sugar yields target,
(2) to maximize the expected sugar yields, and (3) to maximize
sugar yields per unit feedstock expense, while satisfying constraints
of feedstock availability and price. The maximized probability of
meeting the sugar yield target, expected sugar yield, and glucose
yield per unit feedstock expense are 91.33%, 32.66 g of sugar/100
g of biomass, and 40.83 g/$, respectively. The optimization method
developed in this study is readily applied to other combinations of
feedstocks, biofuel production processes, and constraints.