1. Introduction
First introduced in 2002 by Kosterev et al. [
1], Quartz Enhanced Photoacoustic Spectroscopy (QEPAS) has been widely employed for gas sensing applications. This technique relies on photoacoustic principles but exploits a Quartz tuning forks (QTF) as an optoacoustic transducer. The standard QTF is a low-cost piezoelectric element component used in the watch industry. Its fundamental resonance frequency draws a sharp and intense Lorentzian shaped line around 32.7 kHz. Despite the fact that the sensitivity of QEPAS has been proven through numerous sensing demonstrations, the original frequency is not the optimal one for photoacoustic sensing: some molecular deexcitations need to be addressed with lower frequencies [
2]. In addition, the time constant associated with the standard QTF complete deexcitation [
3] is relatively high compared to the commonly used lock-in amplifiers (LIA) time constants in photoacoustic sensing, which implies an out-of-equilibrium detection scheme of the QTF. However, its high-quality factor (Q) (Q~100,000 in vacuum and Q~8000 in atmospheric pressure) and its quadrupole geometry renders QEPAS nearly immune to ambient noises compared to the standard microphones used in classical photoacoustic spectroscopy (PAS). The detection scheme includes a laser source, wavelength modulated at the QTF resonance frequency (or its sub-harmonics) and slowly tuned across one or several gas absorption lines. For better matching between the relaxation time of the molecules and the QTF resonance frequency, water can be added to the gas mixture: for some slow-relaxing molecules, such as carbon monoxide [
4,
5], carbon dioxide [
6] and nitric oxide [
7], humidity works as a promotor of the photoacoustic effect by reducing the target molecules’ overall relaxation time. An alternative solution would be the reduction of the modulation frequency by employing custom QTFs that resonate at frequencies down to a few kHz. Indeed, several research groups have been working on the development of custom QTFs. The advantages of the newly introduced QTFs also rely on their shape as, not only do they operate at lower resonance frequencies, but they are also characterized by larger prongs spacing (up to 1.5 mm); this makes the alignment of the laser more comfortable and avoids the arising of photothermal perturbations during the measurements, especially at long wavelengths. A French team in ONERA (Paris, France) is focused on the development of a large QTF with very high quality factors [
8,
9], while an Italian team in Polysense (Bari, Italy) has realized custom QTFs dedicated to terahertz (THz) gas sensing [
10], with larger prong spacing (1 mm) well adapted to long wavelength quantum cascade lasers (QCLs). In Bari, the first custom QTFs were characterized by resonance frequencies as low as 2.8 kHz and quality factors varying between 7000 and 37,000 at atmospheric pressure. These QTFs were designed by etching a z-cut quartz wafer using photolithographic techniques, and electrical contacts were made with chromium and gold [
11,
12]. The first application was dedicated to the detection of methanol with a THz laser source using a QTF with a resonance frequency equal to 4245 Hz and a quality factor of 76,300 at 10 Torr [
10].
Subsequently, the geometry was adapted, targeting different frequencies [
13]. The influence of the prongs’ length and thickness on the frequency and quality factor of the QTF were investigated. Different shapes were tested in this second generation. By adding grooves on each side of the QTF, or by designing T-shaped prongs, a good compromise between low resonance frequencies, high quality factors and a small resistance has been found. The so-called “T-shape” QTF with a resonance frequency around 12 kHz and a Q-factor~14,000 at atmospheric pressure is now commercialized in an acoustic detection module produced by Thorlabs [
14].
While it is almost immune to acoustic noises, QEPAS is sensitive to environmental parameter variations. The temperature, pressure and humidity can modify the QTF properties, generating a shift in the resonance frequency (
f0) and/or decreasing the quality factor (Q) [
15]. The variations observed in QEPAS are expected to be due to concentration and gas density changes in the medium; however, as the measured output signal strongly depends on these exterior parameters, it appears important to either:
Follow the f0 and Q evolution in real time and operate a feedback correction on the optical and electrical setup, i.e., on the modulation of the laser and the LIA parameters.
Reduce their influence by maintaining their variations in a given controlled range.
In this paper, we propose to evaluate the stability of commercial and custom QTF parameters under humidity variations. As part of a collaboration with Polysense, we were able to build this study between a standard QTF and four of their designed QTFs.
2. Important QTF Parameters to Evaluate in QEPAS Sensing: Estimation of the Required Accuracy on f0 and Q
Most industrial gas sensors assure an accuracy of a few percent on the displayed value (signal amplitude, concentration). We have decided to follow this criterion to define an acceptable relative error of 1% on the QEPAS signal (Equation (1)). Therefore, the first step is to calculate the required accuracy for the
f0 and Q to not exceed this 1% error.
We consider here a QEPAS signal S modelized by a Lorentzian lineshape, centered on
f0 as the resonant frequency, describing the frequency response of a typical QTF. It corresponds to the well-known Butterworth-Von Dyke (BVD) electrical model of the component. The squared QEPAS signal is proportional to the squared admittance of the QTF, representing a Lorentzian function [
16]. This shape does not depend on the QEPAS sensing technique, harmonic detection by wavelength modulation (1f or 2f) or amplitude modulation. It represents the electrical response of the QTF to an acoustic excitation. We have:
where C is a constant taking into account the transimpedance gain and the BVD model parameters, which are included in the
f0 and Q as well. This 1% amplitude error can be converted in an error on the measured frequency
.
Isolating
in (2) gives:
Using (3), and noting that:
one can find the frequency error, and its numerical value for a commercial QTF with
f0 = 32 kHz and typical Q of 8000:
This variation in the frequency corresponds to the green curve in
Figure 1. This amplitude error can be converted in an error on the quality factor as well. At
f =
f0, the QEPAS signal has a linear relationship with Q, thus the error is easily obtained:
it is represented by the blue curve in
Figure 1. From these calculations, it can be concluded that a frequency shift of 0.28 Hz or a Q variation of 80 will lead to a 1% relative error on the QEPAS signal.
In this study, we will consider ten QTFs: two under the “AV-08” reference, two under the “T1-08” reference and six under the “commercial QTF” reference. “AV-08” and “T1-08” are custom QTFs realized by Polysense. The commercial QTFs come from Fox Electronics (NC38LF).
For each tested QTF, an estimation of Δ
f0 and ΔQ in relation to a 1% signal variation is calculated.
Table 1 summarizes the theoretical calculated values and describes the QTFs considered in this study.
Figure 2 presents the different tested QTFs.
3. Experimental Setup and Results
When an external perturbation is brought to an oscillating device, it oscillates according to the frequency imposed by the perturbation. When this perturbation is stopped, the oscillation returns to the inner frequency of the device: it represents the relaxation phase. In the presented experimental setup, a sinewave of frequency fexc and amplitude Vexc was generated using a waveform generator (Tektronix AFG 1022).
The measurement was performed following different steps:
The sinewave was used to electrically excite the QTF (during texc).
The excitation was stopped.
The relaxation signal was recorded on a LabVIEW program.
This setup was thoroughly described and explained in [
17]. The results of the performed study are exploited in this manuscript.
The frequency
fexc used for the exciting sinewave was also defined as a reference frequency for the LIA (Zurich Instruments MFLI). The signal recorded from the QTF was amplified with a homemade transimpedance amplifier and demodulated at
fexc by the LIA. The collected signal has an exponential decay shape. Its period and envelop are, respectively, described by Equations (8) and (9). While the former gives information about the instantaneous frequency of the QTF, the latter gives access to its quality factor.
For instance, fexc must be chosen to be close enough to f0 to obtain a good accuracy on the demodulated signal, but far enough to avoid f0 = fexc, leading to huge values of T. In parallel, Vexc must be chosen to be big enough to avoid uncertainty on the demodulated signal, but small enough to avoid the saturation of the LIA.
To determine the best experimental conditions, the effect of the sinewave parameters (fexc and Vexc) on the QTF parameters (f0 and Q) was measured.
The results of the commercial QTF are reported in
Figure 3. For each data point, the demodulated signal is recorded for 60 s at a rate of 1 Hz. The mean value and the standard deviation are calculated. The acceptable error intervals for
f0 and Q calculated in the previous section are represented by shaded areas. In
Figure 3a, V
exc is arbitrary fixed to 0.1 V
pp and
fexc is chosen to have |
f0 −
fexc| variation between 5 and 50 Hz. In
Figure 3b, |
f0 −
fexc| = 20 Hz and V
exc ranges between 3 and 300 mV
pp.
On one hand, for variations of |f0 − fexc| in the range of [5, 50] Hz, f0 showed a nearly flat response. These observations assure that the measurement is robust and will not be affected by a sudden shift in f0. On the other hand, for low amplitudes, the large error bars illustrate the random error caused by a poor signal-to-noise ratio (SNR). When the excitation amplitude increases, the dispersion decreases, and the mean values quickly converge. This preliminary study was useful for quantifying the errors in the characterization setup.
The same study was conducted for each QTF described in this paper. Finally, according to the results, |f0 − fexc|was chosen to be equal to 20 Hz, 2 Hz and 3 Hz for the commercial QTF, AV-08 group and T1-08 group, respectively. Vexc was chosen to be equal to 100 mVpp in all of the experiments.
Once these parameters are fixed, one can move on to the measurement and analysis of the shifts in f0 and Q under the humidity variation.
The behavior of the QTF parameters under humidity variation was assessed with a benchtop humidity chamber (ESPEC SH-242). The temperature in the chamber was set to 22 °C. The humidity was changed from 30% to 90% RH (percentage of relative humidity), with an increasing step of 10% occurring every 20 min. To confirm the observations and ensure their repeatability, a step to 50% and 30 %RH was added after the 90 %RH step. The humidity steps were long due to the response time of the humidity chamber, which was in the range of a few minutes.
The resonance frequency of each QTF, its quality factor, as well as the temperature and the different humidity steps were recorded and are presented in
Figure 4.
The study of the variation in the QTF parameters was made in two steps:
Investigating the deviation of f0 and Q during a stabilized value of humidity (arbitrary measured for 70 %RH) as it could be the case in a QEPAS experiment with controlled humidity.
The difference of the mean values of f0 and Q between 30% and 90 %RH is investigated considering the case of a real-life measurement, where the humidity would increase rapidly.
Figure 4a describes the variation in the commercial QTF parameters. It shows a shift of approximately 2 Hz when varying the humidity from 30 to 80 %RH and about 1.5 Hz between 80 and 90 %RH, which represents a maximum shift of approximately 3.5 Hz between the lowest and highest value of humidity. At a constant value of humidity, the
f0 variations were very small: ~0.025 Hz. The same investigations were realized for the custom QTFs, and the results are summarized in
Table 2. For each QTF, the largest shift of
f0 occurred at 90 %RH. The variation in
f0 when moving from 80 to 90 %RH was approximately equal to the shift that occurred when the humidity was increased from 30 to 80 %RH. It is also at 90 %RH that the largest error in the temperature was observed. This error, approximately equal to ±0.2 °C, occurred due to the difficulties of keeping this humidity value stable.
In
Table 2, the results are presented for a commercial QTF and for each group of custom QTFs. Several measurements were performed on the commercial QTFs, and the mean values were extracted from these experiments, including six QTFs.
4. Discussion
Usually, before any QEPAS measurement, a frequency sweep can be realized to estimate the exact resonance frequency of the QTF. Simultaneously, the measured frequency is used as the laser modulation frequency and demodulation frequency in the LIA. This frequency is also used as a reference in the demodulation of the collected signal. In controlled experimental conditions, there is no reason to observe significative changes between the measured frequency and the one used as a reference by the LIA. However, in real-life applications, the humidity, temperature and gas flow do not always remain constant. For example, in environmental gas monitoring, the humidity depends on the weather conditions. In breath analysis, the concentration of water is considered very high: close to 5%, i.e., 90 %RH, and can vary from one subject to another. The effect of the temperature on the QTF is well-known and specified by manufacturers. The frequency evolves in a parabolic shape when the temperature increases [
17]. The efficiency of the characterization technique used in this paper was first evaluated through temperature variation. It appeared to be a straightforward way to compare the obtained results to a certified reference. The effect of the humidity was questioned when the measurements started to use QTFs in atmospheric conditions, but the literature lacks information on the effect of that parameter. In the literature, the effect of the humidity on the resonance frequency was investigated when using QTFs as humidity sensors as they can be very sensitive to mass changes [
18]. Hygroscopic coating was added onto the QTFs’ prongs, and the effect of the different layers was investigated. The variations were measured with an oscillating circuit: the shift of the frequency is negative when the humidity increases and more pronounced for a thicker coating as the surface for water deposition is increased.
In QEPAS measurements, humidity can be useful to enhance the photoacoustic effect, but at the same time, can be a source of interferences and error. In this paper, the presented results are interpreted on the basis of an acceptable error of 1% on the QEPAS signal. The calculated variation of f0 leading this 1% error were equal to 0.28, 0.036 and 0.06 Hz, respectively, for the commercial, AV-08 and T1-08 groups.
At a constant value of humidity, i.e., by keeping the humidity level stable during the experiment, both the commercial and custom QTFs presented non-significative variations in their resonance frequency, showing that the characterization setup is stable and accurate. In fact, there was a factor of approximately 0.1 between the measured variations of f0 and the calculated values leading to 1% of error for each group of QTFs.
The comparison of the frequency variations between 30 and 90 %RH showed a difference in behavior between the custom QTFs and the commercial ones. Several commercial QTFs were tested; the dispersion of the data shows unpredictable variations in high humidity conditions (80–90 %RH), whereas both groups of custom QTF presented sustainable variation in the same conditions. For the commercial QTFs, the variation of f0, ranging between 0.5 and 3 Hz, was above the acceptable defined values. In this comparison, the AV-08 group presented more stable results than the T1-08. The measured values for AV-08 (resp., for T1-08) were approximately 0.0055 (resp., 0.05) and were five times (resp., 1.2 times) smaller than the calculated values.
Even if they were not especially designed for photoacoustic uses, the commercial QTFs presented very comparable QEPAS performances to the custom QTFs, as long as the humidity was stabilized during the measurement. Therefore, commercial QTFs remain a cheaper, smaller and efficient option for gas sensing. Nevertheless, in some applications, such as breath analysis, the relative humidity can reach 90% at the end of the exhalation, implying a large increase in the humidity in the sensor that usually operates at room humidity. The results obtained through these measurements showed more that the custom QTFs gave more reliable performances in this regard, while the commercial QTFs’ behavior can be unpredictable.
Most field sensors do not monitor only one type of information, such as the gas concentration, but often integrate temperature and humidity probes. The data of these environmental parameters can be displayed in real-time and eventually be used for post-process, data analysis and correlations, as well as for the real-time compensation of these parameters onto the output signal. The irregular variation of f0 leads us to focus our concern of this crucial parameter, which was taken into consideration at different stages in the experiments. However, the inconsistent variations in the quality factor are more complex to describe. For the commercial QTFs, the variation of Q from 30 to 90 %RH might be a cause of the instability in the system, while they are acceptable at a constant humidity value. For the custom QTFs, no trends can be extracted in the measurement of Q.
Different hypotheses can be proposed to explain the f0 and Q variations:
During the measurements presented in
Figure 4, the QTF was connected to a metallic support and the support was in mechanical contact with the metallic surface of the humidity chamber. The mechanical vibrations of the support, as well as the air flow generated by the fan present inside the chamber, are possibly the cause of this “degradation” observed in the Q. It was even more pronounced for the custom QTF due to their longer length and thinner thickness. The measurements presented in
Figure 3 were performed at a constant humidity level. These measurements were performed before launching the machine, i.e., with the machine’s door open; thus, the conditions of the temperature and humidity inside the chamber are equal to the ambient ones. The dispersion observed in this figure for the chosen parameters (|
f0 −
fexc| = 20 Hz and V
exc = 100 mV
pp) is less significant than that reported during the measurement performed with humidity variations.
The QTFs were exposed to high levels of humidity. The experiments presented in this paper were conducted at least two times. The surface of the QTFs was observed with a microscope. However, with a magnification down to 100x, no physical degradations of the QTFs were noticed.
In the investigation of the QTF as a humidity sensor [
18], the presence of small water droplets settling on the surface of the prongs due to their roughness was considered. This added non-uniform mass may be the cause of the observed damping.
5. Conclusions
In this work, the evaluation of custom and commercial QTFs’ parameters, along with humidity variations, was presented. Our attention was focused on the variation in the resonance frequency of the transducer as the QEPAS signal strongly relies on that parameter. The performed measurement has shed light on the importance of controlling the humidity during spectroscopy and sensing experiments as it has a non-neglectable impact on the stability of this frequency. By the mean of the developed experimental setup, we were able to monitor the f0 and Q variations under temperature and humidity changes. In real-life applications, such as breath analysis, the regulation of these parameters’ effect on the measurements becomes crucial. The consistency of the QTFs especially designed for gas sensing was proven during the experiment, while the commercial QTFs displayed more instability at high values of humidity. While we are still uncertain of the origin of the high dispersion observed in the commercial QTF, one must consider the necessity to perform additional measurements on each group of QTF in order to build a statistic and to potentially observe a trend. Further measurements for a better understanding of the humidity effect may imply the use of several coatings on the commercial QTFs or the development of custom QTFs with dimensions that are closer to the commercial ones.