JOURNAL
Biorefining of wheat straw: accounting for the
distribution of mineral elements in pretreated biomass by an extended
pretreatment–severity equation.
Duy Michael
Le1,2, Hanne R Sørensen1, Niels Ole Knudsen1, Jan K Schjoerring3 and Anne S
Meyer2*
Abstract
Background: Mineral elements
present in lignocellulosic biomass feedstocks may accumulate in biorefinery
process streams and cause technological problems, or alternatively can be
reaped for value addition. A better understanding of the distribution of minerals
in biomass in response to pretreatment factors is therefore important in
relation to development of new biorefinery processes. The objective of the
present study was to examine the levels of mineral elements in pretreated wheat
straw in response to systematic variations in the hydrothermal pretreatment
parameters (pH, temperature, and treatment time), and to assess whether it is
possible to model mineral levels in the pretreated fiber fraction.
Results: Principal component analysis of
the wheat straw biomass constituents, including mineral elements, showed
that the recovered levels of
wheat straw constituents after different hydrothermal pretreatments could be
divided into
two groups: 1) Phosphorus,
magnesium, potassium, manganese, zinc, and calcium correlated with xylose and
arabinose (that is, hemicellulose), and levels of these constituents present in
the fiber fraction after pretreatment varied depending on the
pretreatment-severity; and 2) Silicon, iron, copper, aluminum correlated with
lignin and cellulose levels, but the levels of these constituents showed no
severity-dependent trends. For the first group, an expanded
pretreatment-severity equation, containing a specific factor for each
constituent, accounting for variability due to pretreatment pH, was developed.
Using this equation, the mineral levels could be predicted with R2 > 0.75;
for some with R2 up to 0.96.
Conclusion: Pretreatment conditions,
especially pH, significantly influenced the levels of phosphorus, magnesium,
potassium, manganese, zinc, and calcium in the resulting fiber fractions. A new
expanded pretreatment-severity equation is proposed to model and predict
mineral composition in pretreated wheat straw biomass.
Keywords: Hydrothermal pretreatment,
Lignocellulose, pH, Minerals, Severity modeling.
Introduction
In second-generation bioethanol
production, instead of sucrose and starch, lignocellulosic agricultural waste
streams are utilized as carbohydrate feed stocks, hence avoiding the ethical
issues associated with turning food into fuel [1]. The regionally preferred
type of lignocellulosic
biomass depends on its local
availability. In Europe, where wheat dominates (47% of the cereal crop
production in Europe in 2012 was wheat [2]), wheat straw is therefore the most
important biomass for secondgeneration bioethanol production. A generalized
linear process for producing secondgeneration bioethanol involves pretreatment
to open the biomass structure, enzymatic hydrolysis of the cellulose and
hemicellulose to form glucose and xylose, and fermentation of glucose, or of
both glucose and xylose, into ethanol (most recently based on evolution of the
xylose utilization rate in Saccharomyces cerevisiae by various techniques
[3,4]). Recently, there has been increasing interest in expanding the concept
from production of bioethanol to biorefineries, where the co-processing streams
are used for production of various chemicals, building blocks or functional
products, and/or other energy carriers [5-7]. Agglomeration, formation of
deposits, slagging, fouling, and corrosion problems are well-described
technological problems caused by mineral elements during thermochemical
conversion of lignocellulosic biomass (other than wood) [8,9]. In the context
of biorefining of lignocellulosic biomass, mineral elements may accumulate in
certain streams, which may challenge the processing, and cause wear and tear of
equipment. Alternatively, these may provide opportunities for recovery and
recycling of scarce metals, and/or for creating novel high-value applications
[10-12]. However, detailed information about the mineral content of the product
streams is an overlooked subject in plant biomass biorefining, and information
about the distribution of mineral elements in lignocellulosic biomass streams
is sparse in the literature, despite such information being an important
prerequisite for designing optimal biorefinery processes. The current study was
based on the hypothesis that
the distribution of various
minerals in wheat straw during hydrothermal pretreatment can be predicted and
consequently controlled by the pretreatment conditions, such as temperature,
treatment time, and pH during pre-soaking of the biomass. The objective of this
study
was to examine the levels of
certain mineral elements in pretreated wheat straw in response to a systematic
pretreatment campaign, and to evaluate how the behavior of these elements can
be modeled.
Results
Composition and pretreatment
factor analysis Composition of the fiber fraction after hydrothermal
pretreatment of wheat straw is shown in Figure 1, and summarized
as content and recovery ranges
for all biomass constituents measured in Table 1. Between 92% and 94% (by
weight) of the dry matter of the biomass could be accounted for in the fiber
fractions resulting from different pretreatment factor combinations (Figure 1).
The three
main components, xylose, glucose,
and lignin, varied in relative concentration, but constituted between 80% and
86% of the dry matter of all the fiber fractions (calculated from data shown in
Figure 1). Although potassium was the most abundant mineral element in wheat
straw before pretreatment, silicon was present in around 8 to 12-fold higher
concentration than
potasium after pretreatment
(Table 1). Potassium was solubilized from the fiber fraction, and silicon hence
became the most abundant mineral element in each fiber fraction. Silicon was
particularly dominant following pretreatment with high temperatures and low pH,
constituting
up to 74% by mass of all mineral
elements (data not shown). Recovery of lignin and glucose in the fiber
fractions was typically in the range of 80 to 90%. For silicon and ash, the
recoveries were in the range of 60 to 80% and 40 to 60%, respectively (Figure 2).
For these components,


no general trends in response to
the pretreatment parameters could be observed, and multiple linear
regression revealed no
statistically significant dependency on the main factors (P > 0.05). Removal
of silicon from the fiber fraction explains some of the removal of ash (Figure
2), but removal of potassium is expected to be more important for this, as it
was the most abundant mineral element in the untreated wheat straw, and only 4
to 11% was recovered after pretreatment (Table 1). By contrast, low pH and high
temperatures resulted in reduced amounts of xylose, arabinose, phosphorus,
magnesium, and calcium recovered in the washed fiber fraction (Figure 3). The
response surfaces of arabinose, calcium, and magnesium were similar, showing
high recovery at low temperatures and high pH and low recovery at low pH almost
independently of the other main factors. Xylose, phosphorus, zinc, and
manganese also showed high recovery at high pH and low temperatures, but also
showed decreasing recovery at low pH when the temperature was increased (Figure
3). Potassium in general showed low recovery in the fiber fraction under all
pretreatment conditions (Figure 3). Backwards model reduction resulted in no
significant interaction terms (P > 0.1) for xylose or phosphorus (Table 2),
and treatment time was not a significant factor for these constituents (P >
0.2). By contrast, the two other main factors, namely pH and temperature, were
statistically significant in the models (P < 0.005) (Table 2). Two
interaction terms involving pH were significant for calcium, magnesium, and
potassium, as pH turned out to be the crucial factor for the recovery of these

Figure 2 Recovery of glucose, lignin, silicon
(Si), and ash in the washed fiber fraction of hydrothermal pretreated wheat
straw (weight base, dry matter). No
dependency of the pretreatment conditions were observed by multiple linear
regression (whole model P > 0.05)

Figure 3 Response surface modeling of (a) xylose,
(b) arabinose, (c) phosphorus, (d) magnesium, (e) calcium, (f) potassium, (g)
zinc, and (h) manganese recovered in the washed fiber fraction after
hydrothermal pretreatment of wheat straw. Treatment time was fixed atthe
center value of 18 minutes, as this factor was non-significant in all models.

elements in the fiber fraction
(Table 2).
Treatment time was
not a significant main factor, and temperature was significant in the model
only through its interaction with pH. The model for arabinose had one
significant interaction term (temperature × pH), while treatment time and pH
were the only significant main factors (P < 0.1)
(Table 2).
Correlation
between biomass constituents
Correlation between the
recoveries of each constituent in the fiber fraction after hydrothermal
pretreatment was studied by principal component analysis (PCA) and cluster
analysis. We found that 81.5% of the variation in the data could be explained
by the first two PCs. The PCA scores revealed that the first and most important
PC was controlled by pH and
temperature, while the second PC seemed to be governed by treatment time
(data not shown). The PCA
loadings plot with the two first PCs caused separation into two groups: those
that were dependent and those that were independent of process conditions
during pretreatment. In Figure 4, constituents dependent on process conditions
were localized to the top left corner of the plot, and were water-soluble
cations and hemicellulosic constituents, such as arabinose and xylose.
Constituents independent of process conditions were localized to the bottom
right corner, and comprised water-insoluble ions, lignin, and cellulose (Figure
4). Cluster analysis corroborated this separation, but further
separated the constituents into a
total of five clusters
(Figure 5).
The water-soluble components
group was divided in two clusters, with little variation along the first PC,
which accounted for 55% of the variation in the data. One of the clusters
containing the hemicellulosic constituents (arabinose, xylose) and two
water-soluble cations (magnesium, potassium) had a lower magnitude for the
second loading, meaning that their variation was explained to a greater degree
by the first PC compared to the other cluster, which in general had a higher
negative value for the second loading (Figure 4). The three clusters in the
water-insoluble components group (Lignin, glucose; silicon; iron, aluminum,
copper (Figure 5)) were spread in the loadings for both the first and second
PC, so the resemblance within clusters could not be described by these two PCs
alone. Optimization of cpH for prediction of fiber fraction composition To
predict the composition of the fiber fraction after hydrothermal pretreatment,
an extended pretreatmentseverity function with an empirical constant, cpH, was
developed and used. The approach was validated by comparing the model for
recovery of hemicellulose in this study with data from similar pretreatments on
wheat straw published in the literature (Figure 6).

The optimization of cpH revealed
that the pretreatmentseverity function could not be generalized for all
constituents of the biomass, as some elements were more sensitive to the
pretreatment conditions than others. cpH was a direct measure of how sensitive
the content of a specific constituent was to pH, as for example, low cpH values
resulted in low influence of pH on the pretreatment-severity function (see Eq.
(1)). Plotting pretreatment-severity against recovery of each constituent while
modifying cpH through an iterative systematic approach, and fitting either a
linear or exponential function to each plot, yielded fits of varying R2 values.
The highest R2 value was obtained when the chosen cpH most accurately described
the pH sensitivity of the given constituent, so the plot with this cpH value
was presented in Figures 7 and 8 for all constituents, where R2 > 0.75 could
be obtained. Silicon, iron, copper and aluminum had R2 values below this
threshold. Some data were linear and some were exponential, so it was necessary
to fit both types of functions to the data and choose the best fit (highest
R2).


Lignin and glucose content in the
fiber fraction increased with increasing pretreatment-severity, while the
xylose, phosphorus, calcium, zinc, and manganese content decreased linearly
with pretreatment-severity. The arabinose, potassium, and magnesium content
showed an exponential decrease with increasing pretreatmentseverity (Figures 7
and 8), whereas silicon, iron, aluminum, and copper levels were insensitive to
variation in the pretreatment-severity, as they produced insignificant response
models in the design. As observed for the cpH values presented in Figures 7 and
8, the constituents could be divided into two groups: less pH-sensitive
constituents (cpH between 0.044 and 0.069) (Figure 7) and more pH-sensitive
constituents (cpH between 0.201 and 0.330) (Figure 8). The first group
consisted of potassium and the main structural components of wheat straw, that
is, glucose, xylose, arabinose, and lignin. The remaining elements (phosphorus,
magnesium, calcium, zinc and manganese) constituted the more pH-sensitive
group.
Discussion
Composition
and pretreatment factor analysis
The changes in composition of
wheat straw after hydrothermal pretreatment were as expected in terms of
xylose, arabinose, and glucose content (Figure 1) [14]. Xylose and arabinose
content decreased with high pretreatment-severity, whereas glucose content
increased with pretreatment-severity because its recovery was not dependent on
pretreatment conditions, and hence, it constituted a larger proportion of the
fiber fraction when hemicellulose was solubilized. Ammonium hydroxide has a
milder effect than other alkaline solutions (NaOH and KOH) on lignin [15], so
recovery of lignin did not increase with increasing pH. As the objective of
this study was to investigate the behavior of the mineral components during
hydrothermal pretreatment, and to learn about their interactions with the
biomass, thus retaining lignin in the fiber fraction was intended. Retention of
lignin in the fiber fraction caused minimal variation between samples in terms
of the structural components, so that these variations did not overshadow the
variations of the less abundant mineral components. The mineral composition of
wheat straw was, in general, in agreement with literature (8850 to 17320 ppm
silicon, 50 to 560 ppm aluminum, 70 to 350 ppm iron, 3090 to 4870 ppm calcium,
440 to 660 ppm magnesium, 90 to 190 ppm Na, 4120 to 20720 ppm potassium, 270 to
760 ppm phosphorus) [16]. Some elements were above the stated ranges, but this
was expected, because of seasonal and geographical variations. Potassium was the
only element solubilized from the fiber fraction under all pretreatment conditions,
yielding a low recovery range (Table 1, Figure 3f ). This was also as expected,
because potassium is exclusively present in the aqueous phase of plant cells,
so it is easily leached from the biomass during pre-soaking and pretreatment.
Potassium is known to be highly abundant in wheat straw, especially in the
cytoplasm and aqueous environments of the vacuole, where it stabilizes the
ionic strength of enzymes and osmotic pressure of the cells [17]. Magnesium, in
spite of being 70% freely diffusible and present at fairly high concentrations
in the cytoplasm, [17] required pre-soaking in acid before it could be solubilized
from the fiber fraction (Figure 3d). The same effect of acid pre-soaking was
observed for calcium (Figure 3e). Magnesium and calcium are deposited in wheat
straw cell walls, where they are associated with carboxyl and phenolic hydroxyl
groups of organic components, making them resistant to solubilization [18].
Neither calcium nor magnesium was leached from the relatively intact cell walls
(for example, see high recoveries at high pH and low temperatures in Figure
3d). The similarity in results from response surface modeling of calcium and
magnesium (Figure 3) to some structural components of the biomass, especially
arabinose but also to some degree xylose, indicates that the integrity of the
cell wall influences the solubilization of calcium and magnesium.
Correlation
between biomass constituents
Using PCA, it was possible to
group the wheat straw constituents into two main groups: water-soluble and
water-insoluble constituents (Figure 4). In the water-insoluble group, lignin
and glucose were clustered together. This was not surprising considering that
these components interact strongly in lignocellulosic fibers, and are both
insoluble across the range of pretreatment conditions tested in this study.
Silicon formed a separate cluster, reflecting its unique properties relative to
the other elements. Silicon is deposited as SiO2 · nH2O, either in intimate
association with the organic components of plant cell walls or in silica bodies
formed within the lumen of specialized cells [19-21]. Owing to the insoluble
nature of SiO2, even releasing it from the organic material would not remove
silicon from the insoluble fraction. Coupled with the high recovery range for
silicon in the fiber fraction (Table 1), the implications of these findings are
that the vast majority of the silicon is likely to remain associated with
lignin and thus accumulate in the lignin residue stream during the further processing
of the biomass. Aluminum, iron, and copper were also clustered together. These
are all toxic elements for plants if they are accumulated at high
concentrations in their free form [18,22,23]. The plants therefore need to
control and immobilize these elements to protect themselves from the toxic
effects.
Aluminum is strongly bound to
negatively charged groups in cell walls and is water-insoluble, hence it is not
solubilized from the fiber fraction. Iron and copper are also present in an
insoluble form in plants [17,18], and are believed to be mainly associated with
insoluble cell wall components or phytate [24]. However, some iron in plants is
stored in soluble ferritin complexes [25]. As with aluminum and copper, a
fraction of the iron was solubilized during hydrothermal pretreatment, but the
rest remained in the fiber fraction, regardless of the pretreatment conditions.
These findings signify that in relation to biorefining, iron and copper are
likely to be distributed between both the aqueous and solid fractions, and to
gradually become solubilized during further processing via the enzymatic
cellulose and hemicelluloses hydrolysis and fermentation steps. Whether such
gradual solubilization may function as a nutrient supply during
the fermentation, or exert
negative effects, warrants further in-depth examination. In the water-soluble
group, arabinose and xylose were located close together in the loadings plot,
which was meaningful because in wheat straw they are associated in
arabinoxylan. Magnesium and potassium belonged to the same cluster as xylose
and arabinose. These two mineral elements are present at relatively high
concentrations in the cytoplasm [17], and as the straw matures, they may become
loosely bound to negatively charged components within the straw matrix. The
present results indicate that magnesium and potassium are unlikely to accumulate
in the insoluble fiber streams or in the lignin residue after fermentation in
lignocellulose to ethanol processing. The remaining elements (calcium, phosphorus,
manganese, zinc) in the water-soluble group belonged to another cluster; their
common denominator is that they are all restricted in their movement in plant
cells. Calcium and phosphorus interact in calcium–phosphate,
calcium–phospholipid, and calcium–phytate complexes [17], and this could
explain their similar behavior. Manganese and zinc were found to be present in
the fiber fraction at very low concentrations. The low concentrations of
manganese and zinc were either due to their low initial abundance in wheat
straw, or because they were solubilized during pretreatment, as they exist
either as free ions or bound in protein complexes [17]. Manganese and zinc were
clustered together with calcium and phosphorus, because the remaining manganese
and zinc left in the fiber fraction during hydrothermal pretreatment can
interact with the cell wall matrix in a similar fashion to calcium and phosphorus.
Optimization
of cpH for prediction of fiber fraction composition
It is desirable to be able to
predict the composition of the fiber fraction based on the severity of
hydrothermal pretreatment. The temperature and time dependency of the
composition of the fiber fraction was expected to follow the classic
pretreatment-severity equation [26], where 14.75 is an arbitrary empirical
constant based on the activation energy [27]. The pH dependency varied according
to the constituent. Therefore, including pH in pretreatment-severity merely by
subtracting pH in the classic method [28] did not result in satisfactory fits;
in other words, an additional factor, cpH, was needed. We assumed that there
was an underlying dependency of a given constituent on the combined
pretreatmentseverity, which was linear at low pretreatment-severity, but when
pretreatment-severity was increased to a level where most of the constituent
was solubilized, leaving no or only strongly restricted residual constituents
in the fiber fraction, the dependency was assumed to attain an exponentially
decaying nature. Not knowing if the range of pretreatment conditions chosen in
this study were in the linear or exponential range for the constituents, we had
to fit both a linear and exponential function to the data and choose which of
the two gave the best fit (highest R2) for each constituent. As shown in Figure
7b, an exponential function yielded the best fit for arabinose. This was
because the pretreatment effectively solubilized arabinose from the fiber
fraction, so at high pretreatment-severity the arabinose content approached
zero. By contrast, for xylose (Figure 7a), higher pretreatment-severity was
needed before an exponential decay could be expected. The magnesium and
potassium contents also exhibited an exponential decay, although to a lesser
degree than arabinose. Magnesium and potassium were clustered together with
arabinose and xylose (Figure 5), and are both elements that occur at high
concentrations in the cytoplasm [17]. The remaining magnesium (~10%) and
potassium (~4%) recovered in the fiber fraction after hydrothermal pretreatment
at high pretreatment-severity might be more recalcitrant to solubilization than
the rest, causing exponential decay of their contents at increasing
pretreatment-severity. For potassium in Figure 8b, removing the point of low
pretreatment-severity, which appeared to be an outlier, still resulted in an
exponential decaying function. The pH dependencies of carbohydrates, lignin,
and potassium were lower than those of the other mineral elements, as observed
by comparing cpH factors (Figures 7 and 8); cpH values of xylose and arabinose
were low. As pH constituted merely a contribution to the severity of
pretreatment by opening up the cell wall, it had no direct implications on
solubilization of xylose and arabinose. For elements with high cpH (phosphorus,
magnesium, calcium, zinc, manganese), low pH could, in addition to opening up
the cell wall, increase the solubility of the elements. The solubility of
calcium phytate, for example, increases significantly below pH 4 [29]. As seen
in Figure 7, contents of glucose and lignin increased with higher
pretreatment-severity, because the relative proportion of glucose and lignin
increased when xylose and arabinose contents decreased. Variations in glucose
and lignin recoveries in the fiber fraction did not depend on the severity of
pretreatment, so any change in content must have been governed by removal of
other main constituents of the fiber fraction, namely hemicellulose. This
explains why the cpH of glucose and lignin were in
the range of those of xylose and
arabinose.
Conclusion
By optimizing a factor, cpH,
indicating pH dependency for each constituent of the biomass, it was possible
to model the composition of the wheat straw fiber fraction after hydrothermal pretreatment
with respect to xylose, arabinose, glucose, lignin, and mineral elements at
varying pretreatment-severities. Solubilization of phosphorus and the mineral
elements magnesium, calcium, zinc, and manganese showed high pH dependency. At
low pH, these elements were solubilized so that less than 20% by weight compared
with the initial amounts present in the untreated wheat straw were recovered in
the fiber fraction. At high pH, recovery of these elements was temperature-dependent,
presumably due to a combined effect of opening of the cell walls by
solubilizing cell wall constituents (mainly hemicellulose) and increased
solubility of some elements at acidic pH. The levels of other elements in the fiber fraction, that is,
iron, copper, aluminum and silicon, did not depend on pretreatment conditions,
and hence could not be modeled.
Materials
and methods
Wheat straw material Wheat
(Triticum aestivum L.) straw was grown and harvested in Denmark in 2012, and
cut into pieces approximately 10 cm long prior to hydrothermal pretreatment (see
below). The chemical composition of the untreated wheat straw (determined
according to National Renewable Energy Laboratory (NREL) procedures [30,31] and
multi-elemental analyses respectively (the latter method is described further
below) was: 337 g/kg dry matter (DM) glucose, 225 g/kg DM xylose, 30 g/kg DM
arabinose, 182 g/kg DM lignin, 57 g/kg DM extractives (fats and proteins), 92
g/kg DM ash, 13.4 g/kg DM potassium, 12.4 g/kg DM silicon, 4.0 g/kg DM calcium,
1.7 g/kg DM phosphorus, 1.1 g/kg DM iron, 1.1 g/kg DM aluminum, 0.9 g/kg DM magnesium,
0.1 g/kg DM sodium, 0.1 g/kg DM manganese,0.1 g/kg DM zinc, and 0.01 g/kg DM
copper. Throughout this study, contents of monosaccharides are presented as
dehydrated values.
Hydrothermal
pretreatment
Hydrothermal pretreatments were
performed in controlled batch runs using Mini-IBUS equipment (Technical University
of Denmark, Risø Campus, Roskilde, Denmark). Wheat straw (1 kg DM) was soaked
at pH 2, 6 or 10 for 30 minutes, and thereafter treated at 170°C, 183°C or
196°C for 14, 18, or 22 minutes according to a
Box-Behnken statistical design
with duplicate runs of the center point. pH was adjusted with sulfuric acid and
ammonium hydroxide; the concentrations needed to reach the desired pH values of
the soaking straw was determined on a small scale prior to the pretreatment
campaign. After hydrothermal pretreatment, the pressure was relieved in the
reactor, and the biomass was immediately pressed to 30 ± 4% DM. Afterwards, the
fiber fraction was washed in Milli-Q-grade deionized water (1:8 solid: liquid ratio)
for 30 minutes at 50°C and 150 rpm, and pressed to 34 ± 5% DM. Liquid fractions
were discarded, while all fiber fractions were weighed, frozen ,and then stored
at −24°C until further analysis.
Chemical
analysis
Fiber fractions after
hydrothermal pretreatment were analyzed for chemical composition by methods
based on the standard NREL analytical procedures [30,31]. The analysis of all
samples was performed in duplicate with a coefficient of variation (CV) of less
5%, and included DM and ash content determination and strong sulfuric acid
hydrolysis for structural carbohydrates and lignin. Untreated wheat straw was
subjected to ethanol extraction for 24 hours prior to strong acid hydrolysis
because of its high content of extractives (fats and proteins).
Multi-element
analysis
Multi-element analyses of the
untreated wheat straw and fiber fractions were conducted by inductively coupled
plasma-optical emission spectroscopy (Optima 5300 DV, PerkinElmer, Waltham, MA,
USA). To enable silicon analysis with low background values, the sample
introduction system was mounted with a hydrogen fluoride (HF)-resistant,
silicon-free kit comprising a Dura Mist nebulizer, a Tracey TFE spray chamber,
and a Sapphire injector. Prior to analysis, samples (100 mg) were digested at
2,300°C for 25 minutes in a medium consisting of a mixture (v/v) of 47.3% HNO3,
4% H2O2, and 2.65% HF in Teflon tubes in a pressurized microwave oven
(UltraWave, Milestone Inc., Sorisole, Italy). The addition of HF ensured that
silicon was solubilized and remained in solution during the analysis. Before
analysis, samples were diluted to 3.5% HNO3 with Milli-Q element water (Merck
Millipore). Data quality was evaluated using a certified reference material
(spinach; NCS ZC73013, National Analysis Center for Iron and Steel, China),
internal standard additions of silicon, and true blanks. Data were processed
using WinLab32 software (v3.1.0.0107; PerkinElmer, Waltham, MA, USA). For each
element, more than one wavelength was used for analysis to decrease the possibility
of matrix interference.
Statistical
analysis
R statistical software (v3.0.2)
was used for statistical data analysis [32]. Response surface modeling was
performed on the recoveries of constituents in the fiber fraction and presented
as perspective plots of the response surfaces. PCA was performed to study and
visualize correlations between the constituents of the fiber fractions. Score
plots were used to deduce which PCs were governed by which pretreatment
factors, while loading plots were used to show the correlation between the
different constituents. Cluster analyses were performed by ascendant hierarchical
clustering using the ClustOfVar package [33]. To allow prediction of fiber
fraction composition after hydrothermal pretreatment, an empirical factor, denoted
cpH, in an extended pretreatment-severity equation, Eq. (1), was optimized in
the interval 0 to 1 to obtain the best linear or exponential fit to the data. log
Re ð Þ¼Log t⋅eT−100 14:75 _ _ −cpH⋅pHinitial
ð1Þ where Re is the extended pretreatment-sevxerity factor, tis the treatment
time in minutes, T is the treatment temperature (°C), and 100 is the reference
temperature (°C). 14.75 is a fitted value of an arbitrary activation energy
constant (ω) when assuming pseudo-first-order kinetics [26,34]. All models were
validated by QQ plot of the residuals (data not shown). Abbreviations HF:
Hydrofluoric acid; NREL: National Renewable Energy Laboratory; PC: Principal
component; PCA: Principal component analysis. Competing interests The authors declare
that they have no competing interests. Authors’ contributions DL carried out
and participated in the design of the experiments, conducted the statistical
analysis and modeling of the data, and drafted the manuscript; HS and NK
participated in the design of the experiments, and in discussion and
interpretation of the results; JS was responsible for the multi-element analysis,
and the interpretation and discussion of these results; and AM contributed to
conceiving the study, designing the experiments, analyzing the data, and
writing the manuscript. All authors read and approved the final manuscript. Acknowledgement
We thank Ingelis Larsen and Tomas Fernqvist (Technical University of Denmark,
Risø campus) for their assistance in the laboratory and execution of the
hydrothermal pretreatment campaign. This work was supported by
the Danish National Advanced
Technology Foundation via the Technology Platform ‘Biomass for the 21st
century—B21st’. Author details 1DONG Energy, Kraftværksvej 53, DK-7000
Fredericia, Denmark. 2Center for BioProcess Engineering, Department of Chemical
and Biochemical Engineering, Technical University of Denmark, DK-2800 Lyngby,
Denmark. 3Plant and Soil Science Section, Department of Plant and Environmental
Sciences, Faculty of Science, University of Copenhagen, DK-1871 Frederiksberg
C, Copenhagen, Denmark. Received: 10 April 2014 Accepted: 16 September 2014
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