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In-depth interpretation of mid-infrared spectra of various synthetic fuels for the chemometric prediction of aviation fuel blend properties Sebastian S. Scheuermann, Stephan Forster, and Sebastian eibl Energy Fuels, Just Accepted Manuscript • DOI: 10.1021/acs.energyfuels.6b03178 • Publication Date (Web): 07 Feb 2017 Downloaded from http://pubs.acs.org on February 8, 2017
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Energy & Fuels
In-depth interpretation of mid-infrared spectra of various synthetic fuels for the chemometric prediction of aviation fuel blend properties
S. S. Scheuermann, S. Forster, S. Eibl Abstract The aim of this work was to predict composition and nine selected physico-chemical properties of fossil/synthetic aviation fuel blends by chemometric analysis of mid infrared spectra. Therefore IR spectra of various mixtures with six different synthetic hydrocarbon fuels were recorded and comprehensively interpreted supported by data from GCxGC-MS analysis of these fuels. Deep insight has been gained on how individual blend components are differentiated in principal component analysis (PCA) and how they influence physicochemical properties by means of partial least squares regression. A chemometric model has been established to determine the amount of an individual synthetic fuel in a blend with a precision of < 1 vol% and a detection limit of < 2 vol %. The quality of prediction of physico-chemical properties is good enough to compete with results obtained by established test methods. Keywords: Synthetic Fuels; MIR-Spectroscopy; Chemometrics; GCxGC-MS
Introduction The use of synthetic hydrocarbons as blend components for fossil aviation
turbine
fuels
is
an
actively
pursued
goal,
either
for
reasons of energy security, or for environmental reasons [1, 2]. Therefore,
most
aviation
turbine
fuel
specifications
allow
the
addition of up to 50 percent by volume of synthetic hydrocarbons to the fossil fuel. However, the respective blend still has to meet the physico-chemical requirements stipulated for neat fossil fuels plus some additional ones [3]. A variety of pathways for the production of synthetic fuels have been
shown
to
be
in
principal
feasible
[4,
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and
some
are
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currently approved to actually produce blend components for aviation turbine fuels. These are the Fischer-Tropsch process, hydrotreatment of esters and fatty acids, and the synthesis of iso-paraffins from hydroprocessed fermented sugars [3]. Production pathways for synthetic aviation fuels in general aim at producing classes of chemical compounds that can as well be found in fossil fuels. Therefore, admixture of such synthetic products to fossil fuels does not basically alter their chemical composition. This in turn allows the use of aviation fuels containing synthetic hydrocarbons in existent systems. From an analytical standpoint the chemical similarity of synthetic and fossil aviation fuels poses a challenge for determining the content of synthetic hydrocarbons in a random fuel sample. Chemometric analysis of fourier transform infrared (FTIR) spectra of fossil fuels – especially in the near infrared region – has proven to be a powerful tool to predict e.g. physico-chemical properties from conveniently obtainable spectroscopic data [6, 7]. Beyond that, it has been shown, that it is possible to predict, whether a fossil fuel contains synthetic components or not [8, 9]. However, it is not self-evident,
that
IR-spectroscopy
is
the
method
of
choice
to
differentiate between hydrocarbons of synthetic and fossil origin, because the latter chemically correspond very well to those present in fossil fuels [10]. Also, more sophisticated techniques such as GCxGC-TOFMS can be used to reliably predict properties of fossil fuels [11, 12]. Within
the
scope
of
this
work,
emphasis
was
laid
on
trying
to
explain why IR-spectroscopy is sensitive towards the presence of synthetic fuels. In contrast to near-infrared, mid-infrared spectra provide
rich
Therefore, fuels
structural
mid-infrared
have
been
information spectra
recorded
and
of
on
a
the
broad
interpreted
respective variety
to
shed
of
analyte. synthetic
light
on
the
spectroscopic differences between these synthetic fuel types. The detailed interpretation of IR-spectra was based on
compositional
details of the fuels, derived from GCxGC-MS analysis [13, 14]. Furthermore, fuels
(Jet
synthetic
IR-spectra A-1)
fuels
of
blended were
a with
recorded
variety varying and
of
fossil
amounts
analysed
aviation of
using
the
turbine
different
partial
least
squares regression and principal component analysis. The aim was to
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predict (i) type and content of synthetic in fossil fuel and (ii) selected
physico-chemical
prediction
of
fuel
properties.
To
calibrate
physico-chemical
properties,
data
for
for
fuel
the
blends
described in a related study were used [15]. Materials The synthetic fuels used for these investigations can be divided into three groups. The first group includes two complex mixtures of n- and mainly iso-alkanes, namely a fuel produced by the coal-toliquids process (CTL; provided by SASOL, Sasolburg, South Africa) and a hydrotreated vegetable oil (HVO; provided by Honeywell UOP, Pasadena]. The second group comprises fuels which almost exclusively contain
one
or
two
trimethyldodecane
(Farnesane,
biotechnologically Emeryville,
specific
CA,
obtained
produced USA)
iso-alkanes.
through
farnesene;
and
a
These
mixture
are
hydrogenation
provided of
2,6,10-
by
basically
of
Amyris, 2,2,4,6,6-
pentamethylheptane and 2,2,4,4,6,8,8-heptamethylnonane (provided by GEVO,
Englewood,
CO,
USA).
The
alcohol-to-jet process through
latter
fuel
is
produced
dehydration of
C2
to C5
by
an
alcohols,
oligomerisation and hydrogenation and is called ATJ-SPK (alcohol-tojet synthetic paraffinic kerosene). Two synthetic fuels containing n-, iso- and cyclo-alkanes, as well as aromatic compounds belong to the
third
group.
In
detail
these
are
a
kerosene
produced
by
catalytic hydrothermolysis of triglycerides, other esters or fatty acids
(ReadiJet;
provided
by
Applied
Research
Associates
(ARA),
Panama City, Florida, USA)[16] and an alcohol-to-jet fuel where the synthesis
includes
in
addition
to
the
above
mentioned
steps
an
aromatization step (ATJ-SKA, alcohol-to-jet synthetic kerosene with aromatics; provided by Swedish Biofuels AB, Stockholm, Sweden). Synthetic
fuels
were
volumetrically
mixed
with
each
of
six
commercially available Jet A-1 fuels with aromatic contents of 13.7, 15.1, 16.2, 18.1 (two samples), and 21.6 vol% in proportions given in Tab. 1. Some of these binary mixtures were analyzed for their physico-chemical
properties
(grey
shade
in
Tab.
1;
for
clarity
individual Jet A-1 fuels are not differentiated). Ternary mixtures always containing 50 vol% Jet A-1 were mixed from the same Jet A-1 fuels containing 21.6 vol% aromatics for HVO/Farnesane, HVO/ATJ-SPK,
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HVO/CTL
and
a
Jet
A-1
containing
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16.2
vol%
aromatics
for
Farnesane/CTL, Farnesane/ATJ-SPK, ATJ-SPK/CTL (see Tab. 2). In total 228 samples were investigated. Experimental GCxGC-MS analyses were performed on a Shimadzu GC-2010 Plus gas chromatograph (split-mode, and helium as carrier gas), equipped with a ZOEX ZX1 modulator and coupled to a Shimadzu GCMS-QP2010 Ultra mass spectrometer operated in electron ionisation mode. The column combination consisted of 30 m of a Restek Rxi-1ms (0.25 mm i.d.; 0.25 µm film) column coupled to 3 m of a SGE Analytical Science BPX 50 (0.15 mm i.d.; 0.15 µm film) column. GCxGC plots were created with Chromaleont S.r.l. ChromSquare 2.1.01 Software. Infrared spectra were recorded with a Bruker Tensor 27 spectrometer equipped
with
a
100 µm
flow-through
ZnSe-cuvette
at
a
spectral
-1
resolution of 4 cm . Principal Component Analyses (PCA) and Partial Least Square (PLS) regressions were performed with the quant2-module of
the
Bruker
OPUS®
7.0
application
software
and
CAMO
The
Unscrambler® 10.2 [17]. Spectra were pretreated by smoothing, using 5
data
points
and
calculating
the
first
derivative
of
selected
spectral regions (731 data points) given in Fig. 4. PLS are carried out on the basis of cross validation for all samples (centered data, leave-out samples: 1), typically predicting all parameters in one model. The number of latent variables for PLS was typically 8-10 for each parameter, as recommended by the software. Results and Discussion The main goal of the current investigation was to shed light on the IR-spectroscopic differences between fossil and synthetic fuels and thus explain, why chemometry is suited to detect synthetic fuels in mixtures with fossil ones. Therefore it was necessary to initially assess the fuels’ compositions using gas-chromatographic techniques and then use these data to help to interpret IR-spectra of the synthetic and fossil fuels in detail. Gas-chromatographic analyses
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Farnesane and ATJ-SPK consist of just one, respectively two isoalkanes, and the chemical structures of these compounds are given in Tab. 3. CTL and HVO are complex mixtures of exclusively n- and isoalkanes in the range of n-C8 to n-C13 (CTL) and n-C8 to n-C17 (HVO) [15]. The composition of the remaining synthetic fuels ReadiJet and ATJ-SKA, however, is more complex since they contain a variety of substances from different classes of hydrocarbons. Therefore GCxGCMS is the method of choice to analyse these fuels. The respective chromatograms of ReadiJet and ATJ-SKA as well as that of a typical Jet A-1 are shown in Fig. 1 - 3. Apart from prominent peaks for n-alkanes (n-C8 to n-C16), the gaschromatogram of ReadiJet is characterized by peaks of a homologous series of alkyl-substituted cyclohexanes and –pentanes; for reasons of
clarity
only
chromatogram.
two
Aromatic
peak
couples
compounds
have
are
been
primarily
indexed
in
represented
the by
a
homologues series of n-alkylbenzenes with alkyl substituents ranging from 3 to 8 C-atoms. As for other aromatics, weak peaks for indaneand tetrahydronaphthalene-derivatives are present. Naphthalene and alkylnaphthalenes were identified as well. However, their peaks do not appear in the presented chromatograms, because the modulation time
has
been
optimized
for
high
resolution
of
compounds
with
polarities up to those of tetrahydronaphthalenes. The
composition
exhibits
of
significant
ATJ-SKA peaks
is
less
for
complex.
iso-alkanes
The
with
chromatogram
boiling
points
between those of n-C8H18 and n-C13H28. Yet, the most intense peaks group around the total time of retention of n-C11H24. Peaks for some di- and tri-substituted methyl- and ethylbenzenes were identified as well,
whereas
tetrahydronaphthalenes
n-alkanes,
cycloalkanes,
and naphthalenes are
widely
indanes, absent in the
mixture. The chromatogram of the fossil Jet A-1 fuel features peaks for a series of n-alkanes (primarily n-C8 to n-C14), as well as for isoalkanes. Regarding those compounds, ReadiJet and the fossil Jet A-1 are closely related. Cycloalkanes can be found as well, however, in comparison to ReadiJet, their amount appears to be low. Aromatic compounds are represented by di- and tri-substituted methyl- and ethylbenzenes, quite similar to those found in ATJ-SKA. Indanes,
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tetrahydronaphthalenes and naphthalenes found in fossil Jet A-1 are essentially similar to those found in ReadiJet. Infrared-spectroscopic analyses Fig.
4
shows
synthetic
IR
fuels.
spectra
of
Aromatic
the
investigated
components
in
Jet
neat A-1,
fossil
and
ATJ-SKA
und
ReadiJet are indicated by significant bands characteristic for the C-H-valence and benzene ring vibrations at 3020 cm-1, 1607 cm-1 and 1505 cm-1 [18-20]. Their intensity roughly corresponds to the overall content
of
aromatic
compounds
of
21.6
%,
15.8
%,
19.7
%,
respectively [15]. The used six Jet A-1 fuels (not depicted) show slightly varying intensities of bands characteristic for aromatic components contents.
which The
correspond
pattern
of
to
weak
the
respective
bands,
however,
variations does
not
in
differ
significantly among the different fuels and has been assigned in Tab.
4.
Monosubstituted
aromatics
such
as
alkyl
benzenes
are
-1
indicated predominantly by a band at 700 cm . An additional band at 740 cm-1, also characteristic for the monosubstituted benzene ring might be superimposed. In accordance to GC analysis n-alkyl benzenes are prominent in ReadiJet.
Jet A-1 and ATJ-SKA contain di- and
trisubstituted benzenes as indicated by bands in a range from 770 to 815
cm-1.
Especially
a
prominent
band
at
806
cm-1
indicates
a
comparably high content of di- and trisubstituted benzenes in Jet A1, followed by ATJ-SKA. Bands characteristic for aliphatic hydrocarbons can be assigned more easily as compared to the strongly superimposing bands of aromatics. ATJ-SPK
shows
characteristic
intensive for
t-butyl
bands
at
groups
in
1244
cm-1
and
1205
cm-1
2,2,4,6,6-pentamethylheptane
and 2,2,4,4,6,8,8-heptamethylnonane. Among the other fuels, only CTL contains
minor
amounts
of
hydrocarbons
carrying
t-butyl
groups. -1
Terminal i-propyl groups are indicated by a band at 1169 cm , which is
most
intensive
for
farnesane
(2,6,10-trimethyldodecan).
Significantly lower amounts of hydrocarbons with terminal i-propyl groups are detected in CTL, HVO, ATJ-SKA and Jet A-1. A band at 1154 cm-1 representing an isolated methyl substituent in a carbon chain neighbored by two CH2-groups is also most intensive for farnesane and weaker in spectra of CTL, HVO, ATJ-SKA and Jet A-1. Weak bands at
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1169 cm-1 and 1154 cm-1 therefore are indicative for mixtures of isoalkanes in fossil fuels such as Jet A-1. A prominent band at 1124 cm-1 in the spectrum of ATJ-SKA and CTL is attributed to the C-Cvalence
vibrations
of
two
neighbored
groups
each
composed
of
a
single methyl substituent along the carbon chain. This band is not typical
for
iso-alkanes
present
in
fossil
fuels
and
not
for
Farnesane and ATJ-SPK since the latter contain hydrocarbons composed predominantly of t-butyl and i-propyl building blocks. Additional structural information with respect to the presence of tbutyl
and i-propyl groups is provided by bands for -1
vibration of CH3-groups between 971 cm ATJ-SPK
the rocking
-1
to 918 cm . Correspondingly,
(2,2,4,6,6-pentamethylheptan
and
2,2,4,4,6,8,8-
heptamethylnonan) with numerous CH3-groups in its molecules exhibits the
most
intensive
bands
at
971
cm-1
to
925
cm-1,
followed
by
farnesane (2,6,10-trimethyldodecan) with an intermediate intensity of these bands in the spectrum. In the spectra of the remaining fuels, the intensities of these bands decrease further, in the order CTL, HVO, ATJ-SKA, ReadiJet and Jet A-1. Bands at 770 cm-1 and 739-735 cm-1 characteristic for terminal ethyl and n-propyl groups, respectively, cannot be found for ATJ-SPK, as expected. However, they are observed for the remaining non-aromatic fuels (CTL, HVO, Farnesane); whereupon a band at 739 cm-1 may also be attributed to rocking vibrations of less than four subsequent CH2groups present in Farnesane. However, superimposing bands especially of aromatic components do not allow and unambiguous assignment in the spectral region from 730 to 820 cm-1. The band at 722 cm-1 is characteristic for at least four subsequent CH2-groups predominantly found in n-alkanes. According to the IR-spectra, n-alkanes are only observed in HVO, ReadiJet and Jet A-1. ReadiJet contains the highest amounts of n-alkanes and the lowest amounts of methyl branched isoalkanes among the investigated fuels, as nearly none of the above discussed
bands
between
1300
cm-1
und
900
cm-1
are
observed.
In
contrast to that, spectra of ATJ-SKA exhibit no significant band a 722
cm-1
since
the
fuel
contains
predominantly
iso-alkanes.
Cycloalkanes and alkylated cycloalkanes are best identified by a band at 890 cm-1, which is almost exclusively observed in spectra of ReadiJet.
This
finding
is
confirmed
by
GCxGC-MS
analysis
which
shows, that ReadiJet contains significant amounts of cycloalkanes.
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In
summary,
IR-spectroscopy
Page 8 of 31
significantly
indicates
aromatic
and
alkane components and is explicitly able to differentiate alkane components
by
Complementarily, aromatic
means
of
GCxGC-MS
components.
their allows
Yet,
methyl a
substitution
detailed
IR-spectroscopy
pattern.
identification
is
sensitive
of
towards
substitution patterns of aromatic compounds and is able to nicely differentiate between mono- and di-/tri-substituted aromatics. Principial component analysis (PCA) Principal component analysis (PCA) allows exploring
complex data
sets in order to identify correlations between dependent variables. Here PCA is applied to check, whether fuels of fossil as well as of synthetic origin can be reliably identified and distinguished and to find out how variations in fuel composition are reflected in the corresponding IR-spectra. Basic information on PCA is given in [21]. PCA
was
performed
based
on
IR-spectra
of
all
investigated
fuel
mixtures. Only shaded regions of the spectra (Fig. 4) are used for chemometric analysis, for example, intensive CH2- and CH3-valence and deformation bands in a spectral range from 3040 cm-1 to 2770 cm-1 and 1500 cm-1 to 1340 cm-1 are excluded. Fig. 5 and 6 depict the variance for the five chosen principal components (PC) and the respective scores and loadings for the first two and three PCs, respecitvely. For
a
more
convenient
interpretation
of
the
loadings,
they
are
presented in the integrated form. Usually PCA works with the IRspectra´s first derivatives. The first PC already covers 76 % of the variance, indicating the high quality of the PCA. The score plot allows a clear distinction of the neat fuels. IR-bands characteristic for ATJ-SPK (1244 cm-1, 1205 cm-1, 971 cm-1, 925 cm-1) show pronounced positive loadings on PC1 (Fig. 6). Accordingly PC1 is suited best to differentiate ATJSPK in the scores plot (right side in Fig. 5). In contrast, bands characteristic for aromatic compounds (1607 cm-1, 1505 cm-1, 806 cm-1, 770 cm-1, 700 cm-1) especially in Jet A-1, ReadiJet and ATJ-SKA load negatively on PC1 and the respective loadings are therefore located on the left side in Fig. 5. Aromatic compounds dominate the loadings on PC2, which covers 16% of the variance. Therefore, loadings for fuels with increasing contents of aromatics are found close to the
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bottom in the scores plot. Jet A-1 containing 21.6 % aromatics is followed by ReadiJet (19.7 %) and the other Jet A-1 fuels (18.1 % 13.7
%).
However,
PC2
does
not
allow
to
differentiate
between
monoalkylbenzenes and di-/trialkylbenzenes, because the respective bands (700 cm-1 / 740 cm-1 and 770 to 815 cm-1), all strongly load on PC2. Therefore PC2 does not allow to differentiate between ReadiJet (aromatics fraction: predominantly monoalkylbenzenes) and Jet A-1 as well
as
ATJ-SKA
(aromatics
fraction:
predominantly
di-
/trialkylbenzenes), which is however possible by considering PC4 and PC5 (not depicted in Fig. 6). Bands at 770 to 815 cm-1 strongly load on PC4, whereas bands at 700 cm-1 / 740 cm-1 strongly load on PC5. IR-spectra of Farnesane exhibit most intensive bands at 1169 cm-1 and 1154 cm-1. Spectra of CTL and HVO also feature these bands, but with less intensity. These bands positively load on PC2 and therefore the scores of these fuels are located closer to the top of Fig. 5. PC3 (not depicted in Fig. 5) is most sensitive towards long chain nalkanes as found in Jet A-1, ReadiJet and HVO (intensive band 722 cm-1, positive load). A band at 1124 cm-1 negatively loads on PC3. It is not typical for mineral oil based mixtures of n- and iso-alkanes. However, it
is indicative for
ATJ-SKA and
CTL and
allows their
separation from the other investigated fuels. It
can
provide
be
concluded,
significant
that
IR-spectra
information,
of
which
the
can
investigated
be
used
to
fuels
reliably
discriminate the various synthetic and fossil fuel types. Specific compounds in the fuels and their corresponding IR-spectroscopical features
are
prospects
to
identified
by
discriminate
PCA. the
Advantageously,
fuels
just
by
PCA
the
exceeds
evaluation
the of
selected IR-bands characteristic for certain functional groups or structural peculiarities, as the overall spectral information
is
exploited. Loadings
for
fossil/synthetic
fuel
mixtures
are
located
between
those of the respective neat fuels in the score plot. The loadings of the binary Jet A-1/ATJ-SPK mixtures therefore form a straight line connecting the loadings of neat Jet A-1 and neat ATJ-SPK. Loadings of Jet A-1/ATJ-SPK mixtures prepared from Jet A-1 with lower contents of aromatics and 50 to 100% ATJ-SPK appear above this straight line. Both lines merge at the loading of neat ATJ-SPK. Even loadings of
ternary mixtures all
containing 50% Jet
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located, where they are expected, according to the observed loadings on PC1 and PC2. However, the density of data points prohibits a detailed attribution in Fig. 5. By
including
determine
all
the
PCs,
content
PCA
of
IR
of
each
spectra fuel
promises
component
by
a
pathway
to
multivariate
statistics. Chemometric quantitative analysis of fuel composition In general chemometric analysis uses chemical data (e.g. IR spectra) which
depend
contents
of
properties).
on
several
different Using
independent
fuels
in
a
variables mixture
multivariate statistics,
(here:
or
types
and
physico-chemical
a correlation can
be
drawn between the experimentally determined properties of a fuel mixture and its composition [22, 23]. The resulting training set forms the basis to predict the respective properties of an unknown fuel sample from its FTIR-spectrum. In the underlying investigation the chemometric method utilizes partial
least
squares regression
(PLS) [24]. A PLS model was established to quantify the amounts of different types of synthetic fuels in a mixture. Fig. 7A exemplarily shows the correlation of a mixture´s true ATJ-SPK content with the predicted. With a Root Mean Square Error of Cross validation (RMSECV) of 0.15 vol%, the average deviation of predicted fuel content from the true value is remarkably low, and the correlation coefficient (R²) is with 0.9999 very close to 1. It therefore can already be concluded from PCA alone, that determination of the amount of ATJ-SPK in a fuel mixture is highly reliable. For the other fuel components similar RMSECV are obtained (Tab. 5), all below 1 %. It has to be mentioned that RMSECV of 0.07 vol% for the aromatics content in all investigated fuel blends is lower, as the true aromatics content only ranges from 0 to 21.6 vol% and not from 0 to 100 vol% (Fig 7B). The detection limit for a fuel component in a mixture can be derived from the inserts in Fig. 7. The calculated contents for ATJ-SPK free mixtures vary in the range from -0.3 to 0.4 vol%, for CTL free mixtures within -0.8 to 1.2 vol% and for Jet A-1 free mixtures within -1.0 to 1.5 vol%, analogue to the increasing RMSECV. Results
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are expected to become reliable for contents higher than 2 vol% independent of the fact whether a low amount of synthetic fuel is detected in a fossil fuel or vice versa. In
summary,
the
precision
of
the
predicted
composition
is
well
suited for practical application. Chemometric determination of physico-chemical properties Physico-chemical
properties
of
the
synthetic
fuels
and
their
mixtures with fossil fuels are reported in [15]. For the current work viscosity, freezing point and flash point, initial and final distillation temperatures as well as distillation temperatures for fractions of 10, 50 and 90 vol% were taken into account. Tab. 6 summarizes these properties for the neat fuels. Fig. 8 exemplarily shows the results of a chemometric analysis (PLS) by
means
of predicted vs. true values for density
and freezing
point. Tab. 7 summarizes the results with respect to the statistics of
the
single
PLS
for
all
physico-chemical
properties.
Best
correlation is observed for density with a correlation factor R2 = 0.9997, whereas significant point (R
2
observed
for freezing
= 0.8936). Therefore, the relative deviation is lowest for
predicted (7.4%).
deviations are
density
(0.03%),
and
models
are
Chemometric
highest
for
established
the
freezing
typically
point
using
8-10
latent variables. With lower numbers of latent variables, predicted values
are
predicting
less
precise,
properties
but
of
the
fuel
robustness
mixtures
of
not
the
model
included
in
for the
calibration set may be increased. How
the
composition
properties,
is
of
the
fuel
characterized
by
influences the
its
physico-chemical
regression
coefficients.
Weighted regression coefficients (650 – 1300 cm-1) for the prediction of these properties are shown in Fig. 9. In principal, the property of a sample is calculated by summation of the products of regression coefficient and associated absorbance value for each wave number. Therefore examination of curves of regression coefficients allows estimating
the
physico-chemical
influence property.
of
a
For
spectral example
region the
on
the
predicted
predicted
content
of
aromatics is increased by positive regression coefficients at 700 cm-1, 740 cm-1, 806 cm-1, 1505 cm-1 and 1607 cm-1 characteristic for
11 ACS Paragon Plus Environment
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aromatic
compounds.
It
is
Page 12 of 31
decreased
by
negative
regression
coefficients at 722 cm-1, 1124 cm-1, 1154 cm-1 and 1169 cm-1 which indicate the presence of aliphatic compounds. The progression of the regression coefficients representing density is very similar to the one characteristic for the aromatics. Therefore it can be concluded that the content of aromatics strongly influences density of a fuel sample. As diaromatic compounds typically show higher densities than monoaromatics,
regression
coefficients
for
wavenumbers
-1
characteristic for diaromatics (769-815 cm ; especially 806 cm-1) are positive
and
higher
than
those
for
monoaromatics
at
cm-1.
700
ReadiJet which contains a fairly high amount of aromatic compounds therefore
exhibits
the
highest
density
among
the
investigated
synthetic fuels (see Tab. 6). For aliphatic components, cycloalkanes exhibit higher densities compared to n- and iso-alkanes. Therefore slightly
positive
regression
coefficients
are
observed
for
the
-1
wavenumber characteristic for cycloalkanes (890 cm ). In general, wavenumbers characteristic for iso-alkanes (1169 cm-1, 1154 cm-1, 1124 cm-1) are associated with negative regression coefficients. If an iso-alkane, however, carries a t-butyl group, negative influence on density is less pronounced, indicated by a less negative regression coefficient for 1244 cm-1. The lowest regression coefficient is obtained for n-alkanes (722 cm1
). Therefore, PLS-based description of how the different types of
hydrocarbons
influence
density
of
fuel
mixtures
nicely
reflects
reality. The curve of the regression coefficients for initial boiling point shows
a
strongly
negative
value
at
722
cm-1,
meaning
that
predominantly aliphatic compounds decrease the initial distillation temperatures.
Even
though
infrared
spectroscopy
is
not
able
to
differentiate short- and long-chain alkanes in complex mixtures, it is assumed that low boiling, short hydrocarbons are most represented at
722
cm-1.
coefficients
As
distillation
is
observed.
coefficient at 722 cm cm-1
(dominant
-1
Whereas
a
change
the
in
negative
regression regression
loses its influence, those at 770 cm-1 and 806
IR-bands
for
distillation
temperatures.
monoaromatic
compounds,
regression
progresses
coefficients
diaromatics) The
presence
predominantly at
700
contribute
cm-1,
of
indicated is
lower by
responsible
12 ACS Paragon Plus Environment
to
high
boiling negative for
lower
Page 13 of 31
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Energy & Fuels
distillation
temperatures.
Within
the
range
of
regression
coefficients characteristic for iso-alkanes, especially at 1169 cm-1 and 1154 cm-1 positive values are observed up to a distillation fraction
of
50
wavenumbers,
%.
the
Because
presence
of of
its
intensive
IR
bands
2,6,10-trimethyldodecane
at
these
(farnesane)
leads to increased predicted distillation temperatures which is in agreement
with
Therefore,
the
high
chemometric
boiling
point
prediction
of
of
the
farnesane
distillation
(249°C). range
is
strongly influenced by farnesane content. Similar observations can be made for ATJ-SPK which consists mainly of two iso-alkanes with comparatively
high
boiling
points
(2,2,4,6,6-pentamethylheptane:
178 °C and 2,2,4,4,6,8,8-heptamethylnonane: 240 °C). Therefore the presence of ATJ-SPK leads to high regression coefficients at 971 cm-1. However, this is not consistent with the strong IR bands of ATJ-SPK, which do not result in positive regression coefficients at 1244 and 1205 cm-1 (terminal t-butyl groups). Approaching
the
final
distillation
temperature,
again
aliphatic
compounds exert a strong influence. However, they are responsible for the prediction of high distillation temperatures due to positive regression coefficients at 722 cm-1. At this stage of distillation, high boiling aliphatic compounds are most represented at 722 cm-1. HVO with dominant IR bands at 722 cm-1 shows the highest distillation temperatures
for
the
90
%
fraction
and
the
highest
final
distillation temperature within the investigated samples (see Tab. 6), because
it contains
high boiling n-alkanes up to 17
carbon
atoms. The influence of farnesane content on regression coefficients at 1169 cm-1 and 1154 cm-1 is strong for distillation temperatures up to the 50 % fractions but less pronounced for higher fractions. For 90
%
distillation
fractions
and
higher,
2,6,10-trimethyldodecane
loses influence since its boiling point lies within the range of typical distillation temperatures for these high boiling fractions. The same trend is observed for regression coefficients at 971 cm-1 attributed
to
the
pentamethylheptane
influence and
of
ATJ-SPK
containing
2,2,4,6,6-
2,2,4,4,6,8,8-heptamethylnonane.
Especially
at this stage of distillation the primary constituent of ATJ-SPK (2,2,4,6,6-pentamethylheptane) has already vapored from the mixture (see above).
13 ACS Paragon Plus Environment
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Page 14 of 31
The regression coefficients for flash point are very similar to that for
initial
stages
hydrocarbons
of
distillation
temperature,
as
the
volatile
are responsible for ignition temperature. The flash
point is low in the presence of low boiling aliphatic compounds (722 cm-1) and high in the presence of higher boiling aromatic compounds (740 cm-1, 770 cm-1, 806 cm-1), as to be expected. On the contrary, the curve of the regression coefficients for freezing point is very similar
to
that
of
the
final
distillation
temperature,
as
the
presence of high boiling and melting hydrocarbons is decisive. The regression coefficients for viscosity seem to be very similar to that for distillation temperatures for the 50 % fraction. A detailed attribution of how blend components affect viscosity is difficult. For example, no significant influence of n-alkanes (722 cm-1) is observed and high viscosity values are calculated for di-aromatics (806 cm-1) but low values for mono-aromatics (700 cm-1). However, the temperature value for the 50 % distillation fraction seems to be a good
indicator
for
the
overall
blend
composition
and
therefore
characterizes viscosity well. In summary, the influence of the fuel´s composition on its physicochemical property is well described by the PLS of IR spectra. The predicted values for the investigated properties are mostly precise enough
to
compete
with
traditionally
determined
values
by
the
established test methods (see Tab. 7). A detailed attribution of bands in the IR spectra can be used to identify how certain classes of
substances
properties. bands,
differently
However,
correlation
for
affect
compounds
factors
are
various
in
low
close
to
physico-chemical
amounts zero
with
which
weak
IR
makes
it
difficult to link structural features of fuel compounds with their impact on physico-chemical property. This is especially true for freezing point, for which minority species may be responsible, and therefore
the
large
RMSECV
is
explained
(Fig.
7B).
Moreover,
according to [15] non-linear curve progression of freezing point vs. blend ratio was observed in some cases. Conclusion Six synthetic hydrocarbon fuels from various production pathways have been investigated by mid infrared (MIR) spectroscopy and GCxGC-
14 ACS Paragon Plus Environment
Page 15 of 31
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Energy & Fuels
MS.
Chromatographic
interpret
and
MIR-spectra
distinct
structural
individual
mass-spectrometric
in
order
to
peculiarities
synthetic
fuels.
This
data
assign of
spectral
the
approach
were
used
to
features
to
constituents was
chosen
of
to
the
utilize
insights gained from highly sophisticated analytical techniques to improve
performance
of
the
fast
and
routinely
applicable
IR-
spectroscopic method. Based on this, deep insight has been gained on how the different kinds of synthetic fuels can be distinguished by principal component analysis. Beyond that, chemometric analysis of MIR-spectra of various blends of synthetic and fossil fuels proved to be well suited to predict content of synthetic fuel as well as selected physico-chemical fuel properties.
It
is
possible
synthetic fuel in
to
determine
content
and
kind
a blend with a precision of < 1 vol%
of
and a
detection limit of < 2 vol%. As for prediction of physico-chemical properties it was explained how
they
depend
composition
of
on
the
individual fuel
has
blend
been
components:
correlated
with
The
chemical
results
from
partial least squares regression. On this basis it was possible to explain
the
reasons
why
some
parameters
can
be
determined
with
higher precision than others: For example, freezing point, where minority
species
may
play
a
vital
role
but
cannot
be
detected
spectroscopically. In
contrast
to
commonly
used
near
infrared
spectroscopy
in
conjunction with chemometric analysis, the distinct bands in MIR spectra allow to comprehensibly proof, whether predicted results by chemometrics are reliable. However,
with
increasing
availability
of
synthetic
fuels
on
the
market, mixtures of several (new) kinds of synthetic fuels with fossil ones will occur. This means, that it will be necessary to expand the current models from binary and ternary mixtures to cover multi-component mixtures of synthetic fuels. Even though correlation factors might change or parameters of the multivariate data analysis may have to be adapted for new synthetic fuel types, the underlying basic principles of how composition influences property prediction remain valid. With respect to robust field application, a next step would be to transfer this approach to raman-spectroscopy which is promising to
15 ACS Paragon Plus Environment
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perform the analysis directly in the tank of a vehicle and to omit any kind of sample preparation.
16 ACS Paragon Plus Environment
Page 16 of 31
Page 17 of 31
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Energy & Fuels
References [1] Wilson, G. R.; Edwards, T.; Corporan, E.; Freerks, R. L. Energy Fuels 2013, 27, 962-966. [2]
Probstein,
R.
F.;
Hicks,
R.
E.
Synthetic
fuels,
Dover
Publication Inc, Mineola N.Y., 2006. [3] ASTM D7566-14c; Standard Specification for Aviation Turbine Fuel Containing Synthesized Hydrocarbons [4] Wang, W.-C.; Tao, L. Renewable and Sustainable Energy Reviews 2016, 53, 801-822. [5] Damartzis, T.; Zabaniotou, A. Renewable and Sustainable Energy Reviews 2011, 15, 366-378. [6] Fodor, G.E.; Kohl, K.B.; Mason, R.L. Anal. Chem. 1996, 68 (1),
23–30. [7] Fodor, G. E.; Kohl, K. B. Energy Fuels 1993, 7, 598-601. [8] Morris, R. E.; Hammond M. H.; Cramer, J. A.; Johnson, K. J.; Giordano, B. C.; Kramer, K. E.; Rose-Pehrsson, S. L. Energy Fuels, 2009, 23, 1610–1618. [9] Cramer J.A.; Morris, R. E.; Giordano, B.; Rose-Pehrsson S. L. Energy Fuels, 2009, 23 (2), 894–902. [10] Morris, R. E.; Hammond, M. H.; Shaffer, R. E.; Gardner W. P.; Rose-Pehrsson, S. L. Energy Fuels, 2004, 18 (2), 485–489. [11] Kehimkar, B.; Hoggard, J. C.; Marney, L. C.; Billingsley M. C.; Fraga, C. G.; Bruno, T. J.; Synovec, R. E. J. Chromatogr A, 2014, 1327, 132-140.
[12] Kehimkar, B.; Parsons, B. A.; Hoggard, J. C.; Billingsley M. C.; Bruno, T. J.; Synovec, R. E. Anal. Bioanal. Chem., 2015, 407, 321-320. [13] Fraga C. G.; Prazen, B. J.; Synovec, R. E. Anal. Chem., 2000, 72 (17), 4154–4162. [14] Van der Westhuizen, R.; Ajam, M.; De Coning, P.; Beens, J.; de Villiers, A.; Sandra, P. J. Chrom. A, 2011, 1218 (28), 4478–4486. [15] Zschocke, A.; Scheuermann, S.; Ortner, J. High Biofuel Blends in Aviation; www.hbba.eu; ENER/C2/2012/420-1. [16] Lixiong, L.; Coppola, E.; Rine, J.; Miller, J. L.; Walker, D. Energy Fuels, 2010, 24 (2), 1305–1315. [17]
Camo
Software
AS,
The
Unscrambler
Gaustadalléen 21, Oslo, Norway, 2016.
17 ACS Paragon Plus Environment
®
10.2
Handbook,
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 18 of 31
[18] Hummel, O.; Scholl, F. Atlas of Polymer and Plastics analysis, Vol. 2; Carl Hanser Verlag Munich, 1988. [19] Lin-Vien, D,; Colthup, N.B.; Fateley, W.G.; Grasselli, J.G. The Handbook of Infrared and Raman characteristic Frequencies of Organic Molecules,
Academic
Press
San
Diego,
New
York,
Boston,
London,
Sydney Tokyo Toronto, 1991. [20]
Socrates
G.
Infrared
and
Raman
characteristic
group
frequencies, 2nd Ed.; John Wiley & Sons Chichester, 1994. [21] Kessler, W., Multivariate Datenanalyse für die Pharma-, Biound Prozessanalytik; Wiley-VCH Weinheim, 2007. [22] Mark, H.; Workman, J. Chemometrics in spectroscopy, Academic Press-Elsevier, 2007. [23]
Varmuza
statistical
K.;
analysis
Filzmoser, in
P.
Introduction
Chemometrics;
CRC
Press,
to
multivariate
Boca
Raton
2009. [24] Geladi, P.; Kowalski B.R. Anal. Chim. Acta, 1986, 185, 1-17.
18 ACS Paragon Plus Environment
FA,
8 7 6 5
retention time [s]
4 3 2 1
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
9
Page 19 of 31
5
10
15
20
25
30
35
40
retention time [min] Figure 1: GCxGC plot of ReadiJet
19 ACS Paragon Plus Environment
45
50
55
8 7 6 5
retention time [s]
4 3 2 1
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 20 of 31
9
Energy & Fuels
5
10
15
20
25
30
35
40
retention time [min] Figure 2: GCxGC plot of ATJ-SKA
20 ACS Paragon Plus Environment
45
50
55
8 7 6 5
retention time [s]
4 3 2 1
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
9
Page 21 of 31
5
10
15
20
25
30
35
40
retention time [min] Figure 3: GCxGC plot of Jet A-1
21 ACS Paragon Plus Environment
45
50
55
806 770 740 722 700
971 925 890
1505
1607
∫∫
A B
absorbance [a.u.]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 22 of 31
1244 1205 1169 1154 1124
Energy & Fuels
C D E F G ∫∫ 3000
2500
1500
-1
1000
wavenumbers [cm ] Figure 4:
IR spectra of the neat fuels: A: Jet A-1 B: ATJ-SKA C: ReadiJet D: Farnesane E: CTL F: HVO G: AJT-SPK (Spectral regions used for chemometric analyses are shaded. Spectra are vertically shifted.)
22 ACS Paragon Plus Environment
Page 23 of 31
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
0.3
PC2
Farnesane
0.2 HVO
CTL
0.1 ATJ-SPK 0 -0.2
-0.1
0
0.1
0.2
0.3
0.4
0.5 80%
Jet A-1 (13.7%)
0.7
PC1
70%
ATJ-SKA (15.6%) -0.1
60%
Jet A-1 (16.2%)
50% 40%
Jet A-1 (18.1%)
Readi Jet
0.6
30%
-0.2 20%
(19.7%)
Jet A-1 (21.6%)
-0.3
Figure 5: Score plot (PC1 vs PC2) and variance of a principal component analysis based on IR-spectra of all investigated samples. Neat fuels are marked with large squares. For neat fuels containing aromatics the aromatics content is given. ATJ-SPK content is indicated in Jet A-1/ATJ-SPK mixtures.
23 ACS Paragon Plus Environment
Energy & Fuels
PC3
1.2 806
700
1.6
971
1169 1154 1124
2
PC2 770
1205
1244
PC1
0.8 0.4
925
1505
1607
722
∫∫
0 -0.4 -0.8 1700
1500
∫∫
-1.2 1300
1200
1100
1000
900
800
700
600
wave numbers [cm-1] Figure 6:
Loadings of a principal component analysis based on IRspectra of all investigated samples for PC1 to PC3. (Loadings were integrated for a better comparison with the IR spectra)
100
A
calc. aromatics content [vol%]
calc. ATJ-SPK content [vol%]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 24 of 31
80 60 40 RMSECV= 0.15 vol%
20
R²= 0.9999 0 0
20
40
60
80
100
true AtJ-SPK content [vol%]
Figure 7:
B
20
15
10 RMSECV= 0.07 vol%
5
R²= 0.9998 0 0
5
10
15
20
true aromatics content [vol%]
Exemplary results for the chemometric quantification of ATJ-SPK (A) and aromatics content (B) in the investigated fuel mixtures. Insets show very low contents. Root mean square error of cross validation (RMSECV) and correlation coefficient (R2) are given.
24 ACS Paragon Plus Environment
Page 25 of 31
825
-40
calc. freezing point [°C]
R²= 0.9997
800
775
RMSECV= 0.23 kg/m3
750 750
B
-45
A calc. density [kg/m3]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
775
800
true density [kg/m3]
-50
R²= 0.9836
-55 -60 -65 -70 -75
RMSECV= 3.0 vol%
-80 825
-80
-70
-60
-50
-40
true freezing point [°C]
Figure 8: Exemplary results for the chemometric determination of the density (A) and the freezing point (B) of the investigated fuel mixtures. Root mean square error of cross validation (RMSECV) and correlation coefficient (R2) are given.
25 ACS Paragon Plus Environment
weighted regression coefficients [-]
770 760 740 722 700
806
Page 26 of 31
890
971
1124
1169 1154
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
1244
Energy & Fuels
0
viscosity
0
freez. pt.
0
flash pt.
0
dist.final
0
dist.90%
0
dist.50%
0
dist.10%
0
dist.ini.
0
aromatics
0
density
1300
1200
1100
1000
900
wavenumbers
800
700
600
[cm-1]
Figure 9: Weighted regression coefficients for the prediction of various physico-chemical properties based on IR-spectra of all investigated samples (PLS was calculated not using the first derivatives of the spectra for a better comparison with IR spectra
26 ACS Paragon Plus Environment
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Energy & Fuels
Tables Table 1: Contents of fuel components [vol%] of the investigated binary mixtures, each containing Jet A-1 (complete data set for physico-chemical properties is only determined for grey shaded mixtures) Jet A-1
CTL
ATJ-SPK
HVO
Farnesane
ReadiJet
AtJ-SKA
0 0.05 0.1 0.5 1 5 10 20 30 40 50 60 70 (65) 80 (75) 90 95 100
100 99.95 99.9 99.5 99 95 90 80 70 60 50 40 30 20 10 5 0
100 99.95 99.9 99.5 99 95 90 80 70 60 50 40 30 20 10 5 0
100 99.95 99.9 99.5 99 95 90 80 70 60 50 40 30 20 10 5 0
100 99.95 99.9 99.5 99 95 90 80 70 60 50 35 20 10 0
100 90 70 50 25 0
100 99 95 90 80 70 60 50 40 30 20 10 0
Table 2: Contents of fuel components [vol%] for the investigated ternary mixtures; Combinations of synthetic fuels 1 and 2: HVO/Farnesane; HVO/CTL; HVO/ATJ-SPK; Farnesane/CTL; Farnesane/ATJSPK; CTL/ATJ-SPK
Jet A-1
Synthetic Fuel 1
Synthetic Fuel 2
50 50 50 50 50 50 50
1 5 10 25 40 45 49
49 45 40 25 10 5 1
27 ACS Paragon Plus Environment
Energy & Fuels
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Page 28 of 31
Table 3: Contents of components identified by IR spectroscopy and GCxGC-MS
ATJ-SPK Farnesane a)
b)
GCxGC-MS
IR
HVO
CTL
alkanes (C8-C17)
alkanes (C8-C13)
Readi Jet
ATJ-SKA
isocomplex mixture: alkanes + cf. Fig. 1 mono aromatics: cf. Fig. 2
Jet A-1 complex mixture: cf. Fig. 3
n-alkane
-
-
h
l
h
-
m
iso-alkane
h
h
m
h
l
m
l
-
-
-
-
m
-
l
-
-
-
-
h
m
m
-
-
-
-
l
l
h
cyclo alkane mono aromatics diaromatics
a) ATJ-SPK contains: 2,2,4,6,6-pentamethyl-heptane (~80%), 2,2,4,4,6,8,8-heptmethylnonane (~10%) and C12-iso-alkanes (~10%) b) 2,6,10-trimethyl-dodecane
h: high; m: medium; l: low
28 ACS Paragon Plus Environment
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Energy & Fuels
Table 4: Assignment of IR-bands (bands of aromatic components are grey shaded)
Group frequency [cm-1]
Functional group / assignment
ATJSPK
1339
τ (CH2), δas (CH)
-
w
w
vw
w
w
w
1244
ν (C-C)* in
vs
-
-
w
vw
-
-
1205
ν (C-C)* in
s
-
-
vw
-
-
-
1169
ν (C-C)* in
vw
m
w
w
m
-
vw
1154
ν (C-C)* in
vw
m
w
w
m
-
vw
1124
ν (C-C)* in
-
-
-
m
m
-
-
971
ϱ (CH3)
s
w
-
-
-
-
vw
967
ϱ (CH3)
-
m
w
w
w
w
-
935
ϱ (CH3)
-
m
-
-
-
-
-
925
ϱ (CH3)
m
-
-
-
-
-
-
918
ϱ (CH3)
-
m
vw
w
w
-
-
890
ν (C-C) in cycloalkanes
-
-
-
-
-
w
vw
770 769-815
δ (CH2)-CH3
-
w
vw
vw
m
w
m
740
ƴ (CH) in di-, tri-aromatics
FarneHVO sane
CTL
ATJ- Readi SKA Jet
Jet A-1
-
-
-
-
m
s
m
vw
m
sh
vw
-
-
-
722
ƴ (CH) in mono-aromatics ϱ R-(CH2)n