30.3 Generation of Lignocellulosic and Starchy Wastes
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and possess rich quantity of carbohydrates thus, showing the potential of being con-
verted into biofuel.
The lignocellulosic feedstock for biobutanol production is categorized into waste
biomass, virgin biomass and energy crops. All natural terrestrial plants like grasses,
bushes, and trees are virgin biomass. Waste biomass is generated as a low quality
by-product from various industrial and agricultural sectors which includes, rice
straw, corn straw, wheat straw, pineapple peel, palm kernel, etc. [20]. Energy crops
like Elephant grass (Pennisetum purpureum), switch grass (Panicum virgatum),
poplar tree (Populus), carrot grass (Parthenium hysterophorus) and sugarcane
(Saccharum officinarum) have high lignocellulosic content [21]. The major portion
of lignocellulosic resources available for biofuel production is generated from the
agricultural activities. Some of the lignocellulosic resources already investigated for
biofuel production are wheat straw, corn stalk, oil palm biomass, rice straw, and
sugarcane bagasse. The energy crops such as phragmites, switch grass, and king
grass have been also explored for biobutanol production [21].
Starch residues generated from agro-industrial activities shows a greater poten-
tial for being converted into biobutanol economically. It was estimated that
4 × 107 tons/year of starch waste is generated worldwide from agricultural activities.
Starch waste biomass generated from agricultural activities provides a compelling
advantage for biobutanol production since this biomass is readily available,
inexpensive and can be easily hydrolyzed into fermentable sugars. Biobutanol
production from starchy resources is often cost-effective due to lower pretreatment
costs and having a renewable fuel from waste greatly lowers waste treatment and
disposal costs.
30.3.2
Composition of Lignocellulose and Starchy Residues
The structural composition of lignocellulose is a key factor in biochemical con-
version of biomass into biofuel and can have significant influence on biofuel
productivity and cost of production. The composition analysis of lignocellulosic
feedstock reported by several studies revealed that the ratios of various constituents
present in the lignocellulose vary depending upon the plant type, age of the plant,
growth stage, and geographical location. The variability in feedstock composition
affects the process economics and conversion yield of biobutanol production;
therefore a reliable and effective method of biomass analysis is essential.
The efficiency of biomass to biofuel conversion is decided by estimating the lignin
and carbohydrate content present in the lignocellulosic materials by sulfuric acid
hydrolysis method. A review by Sluiter et al. [22] reveals the history of compositional
analysis of biomass based on sulfuric acid approach. For large-scale application,
the standard wet method of chemical analysis of lignocellulosic feed stock is not
feasible as it suffers from the drawback such as labor intensive and time consum-
ing process. Hou et al. [23] proposed an integrated method to analyze the chemical
composition of feedstock by multivariate calibration model. This method combines
the traditional chemical analysis with spectrophotometer. The study suggested that
near infrared (NIR) spectrophotometer analysis is able to provide rapid quantitative