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Issue
33 April 2003 |
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Traditionally, human sensory panels
have been used to analyze odors. The disadvantages of human sensory panels include
subjectivity, poor reproducibility (i.e., results fluctuate depending on time
of day, health of the panel members, prior odors analyzed, fatigue, etc.), time
consumption, and large labor expense. Also, human panels can not be used to assess
hazardous odors, work in continuous production, or remote operation. The main
motivation for electronic noses is the development of a qualitative, low-cost,
real-time, and portable method to perform reliable, objective, and reproducible
measures of volatile compounds and odors.
The development of electronic noses has been inspired by the physiology behind
human olfaction since biological olfactory systems contain many of the desired
properties for electronic noses.
1. Physiology of olfaction
Olfaction is the result of a cascade of physiological events that are initiated
by the first contact of an odorant with the nasal epithelium and end-up with
the conscious perception and fine discrimination of smell.
First of all, odorants have to be carried by inhaled air into the nasal cavity
and where they reach the nasal epithelium. This region contains nerve endings
of the fifth cranial or trigeminal nerve. About 70 % of odors are said to stimulate
the trigeminal nerve although, in general, they may be several times less sensitive
than the olfactory receptors of the Regio olfactoria.
In humans, the olfactory epithelium is located in the roof of the nasal cavity,
just below and between the eyes (Figure 1). The olfactory region of each of
the two nasal passages in humans is a small area of about 2.5 cm². The
olfactory epithelium is specially designed in order to allow the olfactory transduction
upon the contact with an odorant. The olfactory epithelium is made up of three
kinds of cells: supporting cells, basal cells, and receptor cells (Figure 2).
The supporting cells produce the mucus which covers the olfactory epithelium.
The basal cells are stem cells. They divide regularly producing fresh receptor
cells to replace those that die. The receptor cells are ciliated sensory neurons
embedded into the layer of supporting cells. The cilia of the sensory neurons
are immersed in a layer of mucous. On the opposite side the neuronal cells form
axons that send their signal to the brain via glomeruli in the olfactory bulb,
mitral cells, and the olfactory nerve tract. Humans possess approximately 50
million primary sensory receptor cells each having 8 - 20 cilia that are whip-like
extensions 30 - 200 microns in length. Interestingly, the sensory neurons of
dogs which have a more developed sense of smell than humans have about 100 cilia.
Figure 1: Functional anatomy and structure of the human olfactory system
The odorant receptors are located in the cilial membrane. They contain 7 helical
transmembrane regions and are linked to a G-protein. However, before reaching
the receptor, an odorant molecule has to dissolve in the mucous layer around the
cilia and diffuse to the site of action. Passive diffusion of an odorant through
the mocous layer depends on its physical and chemical properties. Alternatively,
odorant binding proteins may support facilitated diffusion.
Figure 2: Structure of the olfactory epithelium
Receptor binding of odor molecules leads to a number of events necessary for signal
amplification (Figure 3). This includes G-protein activation and conversion of
ATP to the "second messenger" cyclic AMP in the Cytosol. cAMP opens-up
ligand-gated sodium channels for the facilitated diffusion of Na+ into the cell.
The influx of Na+ reduces the potential across the plasma membrane.
Figure 3: Sensory transduction. Within the cilia of the olfactory sensory
cells a cascade of enzymatic activity transduces the binding of an odorant molecule
to a receptor into an electrical signal.
If this depolarisation reaches threshold, it generates an action potential which
is conducted along the olfactory nerve to the brain. Signal transduction means
that a translation of a chemical into an electrical signa, is completed.
The brain evaluates the odor pattern and is able to associate it to other sensations,
e.g. taste and appearance. This information can be stored, retrieved and matched
with new input. So far it is not fully understood how the enormous repertoire
of odors is detected. In the sixties, J.-E. Moore postulated the theory of the
seven primary odors (ethereal, camphoraceous, musky, floral, pepperminty, pungent,
putrid) for each having its own type of receptor. However, in the light of current
research it is obvious that odor perception requires a combinatorial strategy.
Most odor molecules are recognized by more than one receptor and most receptors
recognize several odors, probably related by chemical property. Typical features
of an odorant molecule are listed in Table 1.
Table 1: Essential physical and chemical properties of an odorant molecule
- Sufficiently high
vapor pressure
|
|
|
|
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- Some ability to
dissolve in water and in fat
|
- Molecular weight
smaller than 300
(to date, no known odorant possesses a molecular weight greater than
294)
|
2. Electronic noses
Although the enormous sensitivity of the human nose is an ideal prerequisite for
its use as an analytical tool its inherent subjectivity and poor reproducibility
have been stimulating factors for the development of several alternatives for
detecting volatile chemicals.
Some alternative methods are still using the human sense of smell as the basis
for detecting an odor. One example is to measure odor concentration by olfactometry,
comprising of an olfactometer and a human panel. The olfactometer dilutes a
sample of odorous gas with a neutral gas (defined temperature, humidity, and
purity) at a prescribed ratio and presents the mixture to panelists. The dilution
at which the odor is first detected is referred to as the threshold dilution
and is used to determine the concentration of the odor expressed as odor units.
An other alternative is the combination of gas chromatography and olfactometry
(GC-O) in which the human nose plays the role of the detector. This technique
is also referred to as sniffing GC. After chromatographic separation the smeller
records the odor intensity at the sniffing port of the chromatograph. GC-O exhibits
powerful capabilities that can be applied to flavors and perfumes, as well as
to any odoriferous products (e.g. pollutants).
However, using the human nose as a sensor to measure odor concentration is
labor-intensive, time consuming, presents difficulty if on-site measurements
are desired and, requires a large panelist population in order to achieve confidence.
Thus, the need for instrumentation to simulate the sensitivity of the human
nose, as well as provide consistency in odor measurement remains without question.
Consequently, in England in the early 1980s Dodd and Persaud introduced the
array concept of aroma detection. This was the first experimental electronic
nose described in literature.
2.1 Definition
The electronic nose has previously been defined as "
an instrument,
which comprises an array of chemical sensors with partial specifity and an appropriate
pattern-recognition system, capable of recognizing simple or complex odors".
Accordingly, an electronic nose is composed of two main components: the sensing
system and the pattern recognition system, capable of recognizing simple or
complex odors. And an individual sensor used for the detection of a particular
substance, e.g. CO-sensor, is thus no electronic nose.
The sensing system can be an array of several chemical sensors with partial
selectivity. Not only electronic chemical sensors but also optical or other
transducer signals have been described.
The number of different sensors used in an electronic nose is a compromise
between
- quantity and complexity of the data collected and
- broad and over-lapping sensitivity of the array
Commercially available instruments use 6 to 48 sensors.
The terms electronic nose, artificial nose, mechanical nose and odor-sensing
system are used as synonyms.
2.2 Comparison between human and electronic noses
Although electronic noses are systems
that, just like the human nose, try to characterize different gas mixtures their
performance is far from that of our olfactory sense. For example, they are not
as sensitive to many odorous compounds as our nose.
Table 2 compares schematically some typical features of human and electronic
noses.
Table 2: Schematic comparison between human and electronic noses
| HUMAN |
ELECTRONIC |
| ~ 10 million
receptors, self generated |
5 - 100
chemical sensors manually replaced |
| 10 - 100
selectivity classes |
5 ~ 100
selectivity patterns |
Initial
reduction of number of signals (~1000 to 1)
|
"smart"
sensor arrays can mimic this? |
| Adaptive |
Perhaps
possible |
| Saturates |
Persistent |
| Signal
treatment in real time |
Pattern
recognition hardware may do this |
| Identifies
a large number of odors |
Has to
be trained for each application |
| Cannot
detect some simple molecules |
Can
detect also simple molecules (H2, H2O, CO2
) |
| Detects
some specific molecules |
Not possible
in general at very low concentrations |
| Associative
with sound, vision, experience, etc. |
Multisensor
systems possible |
| Can
get "infected" |
Can
get poisoned |
2.3 Sensor technology
The task of a sensor of an electronic nose is, like that of a sensory neuron in
the olfactory epithelium, to convert the contact of an odorous molecule into a
detectable signal.
A number of technologies is available, where chemical species are used to create
an electrically or optically measurable signal. A few of the devices used in
electronic noses are listed in Table 3, with a brief description.
Table 3: Examples of gas sensor technologies
| Type
|
Sensitive
material |
Detection
principle |
| semi-conducting
metal oxides (M.O.S., Taguchi) |
doped
semi-conducting metal oxides (SnO2, GaO) |
resistance
change |
| quartz
crystal microbalance (QMB); surface acoustic wave (SAW) |
organic
or inorganic layers (gas chromatography) |
frequency
change due to mass change |
| conducting
polymers |
modified
conducting polymers |
resistance
change |
| catalytic
field-effect sensors (MOSFET) |
catalytic
metals |
workfunction
change |
| pellistor |
catalysts |
temperature
change due to chemical reactions |
| fluorescence
sensors |
organic
dyes |
light intensity
changes |
| electrochemical
cells |
solid
or liquid electrolytes |
current
or voltage change |
| infra
red sensors |
- |
IR
absorption |
In an electronic nose a number of serially arranged singular sensors or an integrated
sensor array may be used. Electronic noses using several transducer technologies
are known as hybrid systems.
Most commercial odor sensing systems use the following transducer technologies
(Figure 4):
- Sensor arrays based on metal oxide sensors (MOS)
- Sensor arrays based on conducting polymers
- Sensor arrays based on mass sensitive piezo-electric sensors
- Mass spectrometers
Figure 4: Photographs of different chemical sensors. (A) metal
oxide sensor. (B) surface acoustic wave sensor. (C) quartz micro balance
sensor. (D) conducting polymer sensor array.
2.3.1. Quartz crystal microbalance (QCM)
A quartz crystal microbalance (QCM) sensor comprises a quartz crystal
coated with a chemically-selective film. The crystal is configured in
an oscillator circuit and typically has a base frequency of 10 MHz. When
vapours from the sample interact with the coating film, some are absorbed,
causing an increase in the mass of the film. This in turn leads to a decrease
in the frequency of the sensor and this is measured as the response. The
frequency shift is typically about some hundred Hertz. The advantages
of QCMs include high selectivity, high sensitivity, stability over wide
temperature ranges, low response to humidity, and good reproducibility.
The coatings are often materials used as stationary phases in gas chromatography.
The huge amount of available coating materials allows to specifically
adapt the selectivity across the full spectrum of organic compounds.
2.3.2. Surface acoustic wave sensors (SAW)
A surface acoustic wave (SAW) sensor is similar to a QCM sensor in the
use of mass change on a piezoelectric crystal to indicate presence and
concentration of the odorant molecules. However, SAW sensors operate at
a higher frequency of oscillation. A SAW device consists of an input transducer,
a chemical adsorbent film, and an output transducer on a piezoelectric
quartz substrate. The input transducer launches an acoustic wave which
travels through the chemical film and is detected by the output transducer.
The device runs at a frequency in the range from 250 MHz to 1 GHz. Vapours
from the sample which are absorbed by the coating film cause a reduction
in the frequency of the sensor by increasing the mass of the film and
changing its visco-elastic properties. SAW sensors offer the same advantages
as QCMs but provide higher sensitivity. The disadvantage is the complexity
in the interface electronics.
2.3.3. Metal oxide sensors (MOS)
A metal-oxide semiconductor (MOS) sensor is a resistive device made from
a metal-oxide film (e.g., tin oxide). The odorant molecules undergo a
reduction reaction on the film surface producing a conductivity change
in the sensor. To remove the odorant molecules, an oxidation reaction
must take place. Heaters within the sensors aid in the oxidation process.
Selectivity can be modified by doping the metal oxide (e.g. with Pd,
Pt), modifying the operating temperature of the sensor, or varying the
geometry of the sensor.
The advantages of metal oxides include low cost, longevity, low response
to humidity, and electronic simplicity. The disadvantages include the
necessity to operate at high temperatures, restrictive selectivity, high
power requirements, and modest sensitivity (5-500 ppm).
2.3.4. Conducting polymer sensors
Conducting polymer sensors are another type of conductometric sensors.
A conductive polymer (CP) sensor is a semi-conducting polymer film coated
to adsorb specific species of molecules. When chemical vapours come into
contact with the absorbent, the chemicals absorb into the polymers, causing
them to swell. The swelling changes the resistance of the electrode, which
can be measured and recorded. The amount of swelling corresponds to the
concentration of the chemical vapour in contact with the absorbent. The
process is reversible, but some hysteresis can occur when exposed to high
concentrations.
Appropriate films of conducting polymers can be obtained by electrochemical
deposition across narrow electrode gaps. Often the selectivity of the
polymer films is altered by using polymer bilayers consisting of polypyrrole
and polyaniline or poly (3-methylthiophene).
Selectivity may also be influenced by varying the distance between the
electrodes.
The advantages of conductive polymers are wide selectivity, high sensitivity
(0.1 - 100 ppm), stability, and operation at ambient temperatures. The
biggest disadvantage is a strong sensitivity to humidity. Irreversible
binding of odorant molecules to the conducting polymers will cause poisoning
of the sensors which can be seen from a drift in the base resistance of
the sensor.
2.3.5. Mass selective sensors
Mass selective sensors use the proven technology of mass spectrometers.
The principle of the mass spectrometer is well known for detection of
chemicals in the vapour phase. Sampled gas mixtures are ionised, and charged
molecular fragments are produced. These fragments are sorted in a mass
filter according to their mass to charge ratio. The ions are detected
as electrical signals with an electron multiplier or a Faraday plate.
Mass selective sensors record without previous separation the total ion
current over a defined period of time. Most commercial instruments use
a quadrupole mass spectrometer. The mass range is typically from 1 to
200 amu.
Mass selective sensors seems in particular to be advantageous when dominant
matrices, e.g. water or alcohol, have to be analyzed. In such a case the
corresponding peak(s) can be eliminated and thus the significance of the
remaining mass peaks is increased. Mass selective sensors are also favorable
when quantitative information about specific compounds e.g. pollutants
or well defined off-odors are required.
2.4 Sampling
Apart from other technical requirements the reproducibility of the results
is markedly influenced by a representative sampling procedure. The concentration
of volatiles in a headspace depends on several factors. In order to yield
constant partial gas pressure and thus constant results of repetitive
measurements all these factors have to maintain constant. The main factors
as known from headspace GC are:
- Sample size
- Headspace volume
- Temperature
- Equilibrium time
- Type of carrier gas, its quality and relative humidity
- Pressure of carrier gas
Measurements can be performed by either bringing the sensoric part of
an electronic nose in the atmosphere which has to be analyzed or by transferring
a representative fraction of the headspace to the sensor array. In this
case again two opportunities can be distinguished: the static method uses
a fixed sample volume which is brought to the sensor and remains there
statically during a measuring cycle. Alternatively, a constant stream
of the headspace is drawn across the sensor during a complete measuring
cycle.
Sensitivity can be increased by several techniques, e.g. purge and trap
technology, which is commonly known from gas chromatography.
3. Data analysis
The raw signal generated by an array of odor sensors is typically a collection
of different electrical measure vs. time curves (Figure 5). These signals
need to be processed in a more or less sophisticated manner in order to
allow the recognition of a particular odor.
Figure 5: Typical sensor response of a conducting polymer sensor
array to a certain odorant.
A basic method for observing a data set is simply to plot all variables,
or a subset of variables, in a bar chart (Figure 6). Another form of output
is a scaled polar plot (Figure 7). Both can be obtained from the raw signal
by integration of the curve over a distinct period of time. This way of
visually displaying data is simple to interpret. Each vector on the polar
plot represents the output from one sensor. As the relative response of
each sensor changes when the sensor array is exposed to vapors from differing
samples, the overall shape and appearance of the polar plot vary.
Figure 6: Bar graph generated from the raw data shown in Figure 5. A:
Values taken as average signal from 15 to 75 sec. B: Values taken as average
signal from 55 to 75 sec.
Figure 7: Radar plot generated from the raw data shown in Figure
5. A: Values taken as average signal from 15 to 75 sec. B: Values taken
as average signal from 55 to 75 sec.
In order to express similarity or difference of two odors it may be useful
to calculate the distance of the two corresponding data sets.
As a chemical sensor system provides several variables, a multivariate
distance measure is therefore more appropriate than a simple univariate
distance measure. A multivariate distance is calculated in the original
or a reduced variable space. There are two main methods to calculate multivariate
distances. The euclidic distance is the length of the vector connecting
two points in the variable space.
The ED can be calculated according to
ED = 
Where xa is the response of sensor number n produced by sample A and
xb is the response of the same sensor upon contact with sample B.
However, the euclidic distance does not take the variation within classes
into account. A more appropriate distance measure between classes is the
statistical distance (also called Mahalanobis distance). The statistical
distance is calculated as the ratio between the euclidic distance and
the class variance in the direction of vector between class centres. Directions
with high variance within the classes will thus give a low statistical
distance.
3.1 Classification and dimension reduction
Classification is the task of making a model capable of assigning observations
into different classes. A classification is often combined with a dimension
reduction in variable space. A multi-sensor system produces data of high
dimensionality, i.e. a large number of variables characterizing each observation.
It is difficult to visualize more than three dimensions simultaneously.
Hence, methods to reduce the dimensionality of multivariate data sets
are important. The variable space is an essential concept in order to
grasp the ideas behind many data processing techniques. In the variable
space, variables are seen as orthogonal basis vectors. An observation
corresponds to a point in the sensor space, and a whole data set can be
seen as a point swarm in this space. A way to reduce the dimensionality
is to find new directions in the variable space and use only the most
influential directions as new variables. A basis change is made and a
dimensionality reduction is performed. In a principal component analysis,
a transformation (projection) in the variable space is made (Figure 8).
Directions are found that explain as much of the variance in a data set
as possible. These new directions, called principal components, are then
used as the new variables. Keeping only principal components with high
variation leads to a dimension reduction. There are other methods to reduce
the dimensionality in variable space. All these methods operate by finding
new directions optimizing a specific criterion, and only the most influential
directions are kept for the following visualization and classification.
Figure 8: Schematic picture of how a principal component (PCA)
score plot is made. The first principal component is the direction with
most of the variance in the data set. The low-dimensional projection of
the data can be used as a simple but good approximation of the data set.
3.3 Artificial neural network
An artificial neural network (ANN) is an information processing paradigm
that was inspired by the way biological nervous systems, such as the brain,
process information. The key element of this paradigm is the novel structure
of the information processing system. It is composed of a large number of
highly interconnected processing elements (neurons) working in unison to
solve specific problems (Figure 9). ANNs, like people, learn by example.
An ANN is configured for an application such identifying chemical vapours
through a learning process. Learning in biological systems involves adjustments
to the synaptic connections that exist between the neurons. This is true
of ANNs as well. For the electronic nose, the ANN learns to identify the
various chemicals or odors by example.
Figure 9: Schematic of an artificial neural network. It consists
of three interconnected layers of neurons. The computing neurons (hidden
and output layers) have a non-linear transfer function. The parameters of
the neurons are chosen through a minimization of the output error for a
kown training set.
The basic unit of an artificial neural network is the neuron. Each neuron
receives a number of inputs, multiplies the inputs by individual weights,
sums the weighted inputs, and passes the sum through a transfer function,
which can be, e.g., linear or sigmoid (linear for values close to zero,
flattening out for large positive or negative values). An ANN is an interconnected
network of neurons. The input layer has one neuron for each of the sensor
signals, while the output layer has one neuron for each of the different
sample properties that should be predicted. Usually, one hidden layer with
a variable number of neurons is placed between the input and output layer.
During the ANN training phase, the weights and transfer function parameters
in the ANN are adjusted such that the calculated output values for a set
of input values are as close as possible to the known true values of the
sample properties. The model estimation is more complex than for a linear
regression model due to the non-linearity of the model. The model adaptation
is made using the so-called back-propagation algorithm involving gradient
search methods, where each weight is changed in proportion to the error
it is causing.
4. Applications
In order to guarantee a certain standard of raw materials as well as final
products, quality control in different industries becomes increasingly important.
For many years, electronic noses have been in commercial use for a wide
variety of odor and volatile compound applications.
Their most popular applications currently are:
- Quality control in the food industry
- Quality control of packaging material
- Medical diagnostics
- Environmental monitoring
- Perfume and aroma industry
- Control of beverages, e.g. wine and beer
- Tobacco industry
- Coffee industry
- Assessment of car interiors
The following examples shall demonstrate how electronic noses may be
used in the cosmetical and pharmaceutical industry.
4.1 Classification of excipients
Figure 10 shows the PCA plot of different excipients frequently used to
formulate topical products. The PCA plot shows that polyethylene glycol
and propylene glycol can be easily distinguished whereas the less volatile
excipients (caprylic/capric trigycerides and octyldodecanol) are found
in the same cluster. Obviously the experimental set-up chosen does not
allow to discriminate between all of these substances.
Figure 10: Discrimination of different excipients in the principle
component analysis
4.2 Assessment of essential oils
Quality control in aroma and perfume industry is often a time consuming
and costly task. Routine analysis can be successfully performed using an
electronic nose.
Figure 11 shows the result of an analysis of three different natural
peppermint oils grown at different sites and one synthetic peppermint
aroma. After dimension reduction, the different classes can be visualized
showing a significant distance between the synthetic oil and the samples
from natural origin. Although the difference between the three natural
oils seems to be rather small, an artificial neural network was easily
able to recognize their origin.
Figure 11: PCA score plot of natural and synthetic peppermint oils.
Figure 12 shows the PCA plot of different batches of a synthetic peppermint
aroma. Aroma 1 and 2 are very similar whereas aroma 3 is clearly distinguished.
A sensorial analysis revealed a anis off-odor for this aroma.
Figure 12: PCA score plot of different batches of a synthetic peppermint
aroma.
4.3 Quantification of volatile components
The quality control of cosmetic and pharmaceutical preparations is an important
task. The content of volatile components can be easily monitored using an
electronic nose. Figure 13 shows the score plot of two series of mixtures
containing different amounts of the volatile insect repellent DEET (N,N-Diethyl-3-methyl-benzamide).
The content of DEET in a matrix of either polyethylene glycol 300 or caprylic/capric
triglyceride could be estimated directly from the headspace of the samples.
Even samples containing only 1 % of the active ingredient were clearly separated
from the pure excipients.
Figure 13: Discrimination of two series of binary mixtures containing
the insect repellent DEET. There is a clear separation between the pure
components (N,N-Diethyl-3-methyl-benzamide (DEET); Polyethylene Glycole
300 (PEG); Caprylic/Capric Triglyceride (MCT)) and the individual mixtures.
4.5 Screening of the physical stability of creams
The shelf live of creams is often limited due to physical instability, e.g.
creaming, coalescence or changes in colloidal structure. As all these changes
alter the distribution of volatile components within the formulation, the
physical changes will also affected the "odor" of a cream. Thus,
an electronic nose can be used as a tool to monitor the stability of a cream.
Figure 14 shows the PCA plot of a moderately stable o/w cream when stored
in a freeze thaw cycle test (-5/40° C) or at constantly 40° C.
It can be clearly seen that all samples are subject to changes during
two weeks storage. This effect is more pronounced when the samples passed
the cycling test. Stable preparations would have shown no difference in
the odor profile of sample before and after storage.
Figure 14: Score plot of a moderately stable cream stored for 2
weeks at different conditions. Storing the samples at constantly 40°
C has a smaller impact on the physical stability compared to a threeze-thaw
cycle.
5. Conclusions
The electronic nose mimics the behavior of the human nose. It uses many
of the concepts from biological olfaction including the sniffing, chemical
detection, and odor recognition processes. Although the human nose is often
more sensitive to odors than an electronic nose this new technology provides
a lot of advantages. In particular the possibility to evaluate odors objectively
without getting tired is a great step forward. Thus, this new type of instrumentation
should steadily open new fields of application in all industries.
6. Further literature
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USA, 1970
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Boeckh, J.: Die Wahrnehmung des unsichtbaren Riechens und Schmeckens: Moleküle
als Sinnesreize; Tagungsbeitrag EBC-Kongreß 1993
Buchbauer, G., Selos, S.: Neue Erkenntnisse über die molekularen Mechanismen
des Riechens; Euro Cosmetics, 12/1995, 12-23
Buchbauer, G., Selos, S.: Neue Erkenntnisse über die molekularen Mechanismen
des Riechens II; Euro Cosmetics, 1/1996, 22-37
Brunke, E.-J., Ritter, F., Schnaus, G.: Neue Ergebnisse zu sensorisch relevanten
Spurenkomponenten in Blütendüften; Dragoco Report 1/1996, 5-21
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der Wissenschaft, 4/1991, 60-69
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Hoefer, U., Felske, A., Schulz, G., Steiner, K.: SnO2-Multisensorsysteme
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1994, 11-16
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volatile chemicals; Department of Instrumentation and Analytical Science,
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Nase?; Nachr. Chem. Tech. Lab., 44, 11/1996, 1088-1092
Restrepo, D., Brand, J.B.: Molekulare Mechanismen des Riechens; Dragoco
Report 39, 1992, 122-127
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This article was published as follows: Rolf Daniels, Electronic Noses, Eurocosmetics
10 (2002/9) 20-29.
Author
Prof. Dr. Rolf Daniels

Prof. Dr. Rolf Daniels has a Ph.D. degree in Pharmaceutics. Before continuing
his academic career, he worked for Pfizer in the department of pharmaceutical
development for 2 years. In 1995 he became Professor of Pharmaceutics in the
Institute of Pharmaceutical Technology at the Technical University of Braunschweig.
His main interests are in the field of surfactant-free emulsions, stability
assessment of semi-solids, and controlled delivery of insect repellents. Since
1997 he has been head of the department Dermocosmetics of the Society of Dermopharmacy
(GD).