Prototyping and Evaluation of 1D Cylindrical and MEMS-Based Helmholtz Acoustic Resonators for Ultra-Sensitive CO2 Gas Sensing
Abstract
1. Introduction
- High Accuracy and Long-Term Stability: [7] Frequency-based outputs are less affected by drift and electronic noise compared with analog voltage or current signals, resulting in more reliable performance.
- Exceptional Sensitivity: [8] Resonant sensors can detect very small variations in mass or force, allowing the precise detection of trace gases.
- Lower System Complexity and Cost: [9] We can often process frequency outputs without complex analog-to-digital converters.
- Robust Thermal Stability: [10] Compared with piezoresistive sensors, resonant sensors exhibit reduced susceptibility to temperature fluctuations, ensuring more consistent readings under varying environmental conditions.
2. Theory
2.1. Acoustic Resonance
2.2. Acoustic Resonance in a 1-D Cylindrical Resonator
- The resonance frequency for a 1-dimensional acoustic resonator for an open–open/closed–closed system and open–closed system [15] is as follows:
2.3. Resonance Frequency Shift with Gas Concentration
2.4. Microphone Helmholtz Resonance
2.5. Frequency Tracking Using Lock-In and Phase-Locked Loop
3. Simulations
- Pressure Acoustics, Frequency Domain: The acoustic pressure in the chamber is generated using this module. We generate this pressure in COMSOL using the following Equations [20]:
- Thermodynamics, Gas System: To simulate gas mixtures within the acoustic chamber, we use thermodynamic physics to manually define diluted gas compositions by specifying solvent and solute gases along with key mixture properties. This allows accurate replication of the behavior of the mass flow controller and enables the export of the mixture to the materials section for further simulation.
3.1. Boundary Conditions
3.1.1. Pressure Settings
- Left End of Cylinder: We apply a constant pressure of 1 Pa.
- Right End of Cylinder: Set to 0 Pa, simulating no pressure, but just a solid boundary.
3.1.2. Valve Configurations
3.1.3. Simulation Parameters
- We enable amplitude normalization to stabilize the solution.
- We disable port sweep to focus on stationary state analysis.
- The initial pressure settings across domains are set to 0 Pa.
- We select the external layer as an acoustic wall.
- We activate a domain probe for the inner cylinder.
3.2. Chemical and Thermodynamic Considerations
3.3. Selected Solvent and Bulk Species
- We select Nitrogen (N2) as the solvent, chosen for its mass and thermodynamic properties.
- Carbon dioxide (CO2) is designated as the bulk species, which primarily influences the system dynamics.
4. Experimental Setup and Methodology
4.1. Cylindrical Acoustic Resonator—Higher Concentrations
4.2. Cylindrical Acoustic Resonator—Trace Gas Concentrations
4.3. Helmholtz Resonator
5. Results and Discussion
5.1. Geometric Acoustic Resonance—Higher Concentrations
- The linear relationship between resonance frequency and speed of sound is substantiated by applying a linear regression model, which produces a coefficient of determination (R2) of 0.96, which confirms direct proportionality.
- The small-magnitude negative slope of −11.8 mV/Hz indicates a gradual decrease in the resonance frequency with increasing CO2 concentration, although with a relatively small rate of change.
- Consequently, we observe an increase in amplitude, approximately 50%, from the lowest point to the highest point, which can be attributed to the relationship between SPL and density, expressed as SPL , where represents the gas density.
- The coefficient of determination (R2) of 0.96 obtained from the linear regression analysis suggests robust consistency and reliability in the measurements. This indicates that the technique has significant potential for gas detection applications, particularly for CO2 detection and quantification.
5.2. Geometric Acoustic Resonance—Trace Gas Concentrations
- Sensitivity: We observe significant frequency shifts in the transition from 100 ppm to 0 ppm CO2 concentrations (Table 3), as the change in the mole fraction becomes progressively smaller, resulting in increasingly smaller changes in CO2.
- Repeatability: The magnitude of the error bars is comparable to the frequency shifts observed, indicating high measurement repeatability and precision.These errors are derived from the standard deviations calculated from the respective group of multiple datasets. This underscores the reliability of the experimental setup and data acquisition process.
5.3. Geometric Acoustic Resonance—Simulation
- The observed trend of frequency, amplitude, and speed of sound remains consistent across both simulations and experiments.
- Variation in gas concentration resulted in larger frequency shifts in the simulations compared with the experimental results, since the simulations performed by us are simulations with no external influence of microphone sensitivity, pressure induced gas flow, open valves, etc. These ideal results serve as benchmarks for future experiments with better sensitivity and resolution.
5.4. Helmholtz Resonance
- Repeatability: The raw frequency values seen in Figure 12 represent the mean of three consecutive measurement runs carried out for each gas concentration group. We computed the associated standard deviation and error values from this dataset, ensuring statistical reliability and measurement precision. This methodology improves the repeatability and precision of the reported results.
- Maximum Sensitivity: The Helmholtz resonance method exhibits the largest change in resonance frequency relative to pure N2 among all experiments carried out in this study so far (see Table 5). This indicates a high level of sensitivity to variations in gas composition. Equation (10) shows the direct proportionality between the speed of sound and the Helmholtz resonance.
- Geometry-Independent Tracking: These results demonstrate that the Helmholtz resonance, which is intrinsic to the microphone and independent of the geometry of the acoustic chamber, serves as an excellent parameter for tracking gas concentrations. This geometry independence offers potential advantages in sensor design and application versatility.
5.5. Comparison
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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No. | Sensor Type | Physical Change | Sensitivity (ppm) | Resolution (ppm) |
---|---|---|---|---|
1 | Semiconductor | Electrical conductivity | 5–500 | 0.1–10 |
2 | Field effect | Electrical polarization | 0.1–100 | 0.01–1 |
3 | Piezoelectric | Mass | 0.1–100 | 0.01–1 |
4 | Optical | Optical parameters | 0.1–1000 | 0.01–10 |
5 | Catalytic | Heat/temperature | 100–10,000 | 10–100 |
6 | Electrochemical | EMF or current | 0.05–500 | 0.01–1 |
Required CO2 in the Mixture (ppm) | Input CO2 (%) | CO2 Flow (slm) | N2 Flow (slm) |
---|---|---|---|
100 | 0.5 | 0.001 | 0.049 |
10 | 0.02 | 0.001 | 0.019 |
1 | 0.01 | 0.001 | 0.099 |
Reference | CO2 Concentration (ppm) | |
---|---|---|
N2—Group 1 | 1 | 25 |
N2—Group 1 | 10 | 141 |
N2—Group 2 | 100 | 200 |
Change in CO2 Concentration (ppb) w.r.t N2 | Change in Frequency () (mHz) |
---|---|
10 | 8 |
100 | 12 |
1000 | 28 |
10,000 | 76 |
Reference | CO2 Concentration [ppm] | at Helmholtz (mHz) |
---|---|---|
N2—Group 1 | 1 | 0.085 |
N2—Group 1 | 10 | 1.2 |
N2—Group 2 | 100 | 1.4 |
Type | Maximum Resolution (ppm) | (mHz) |
---|---|---|
Acoustic resonator (Simulated) | 0.001 | 8 |
Acoustic resonator | 1 | 0.025 |
Helmholtz resonator | 1 | 0.085 |
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Srivastava, A.; Sonar, R.; Bittner, A.; Dehé, A. Prototyping and Evaluation of 1D Cylindrical and MEMS-Based Helmholtz Acoustic Resonators for Ultra-Sensitive CO2 Gas Sensing. Gases 2025, 5, 21. https://doi.org/10.3390/gases5030021
Srivastava A, Sonar R, Bittner A, Dehé A. Prototyping and Evaluation of 1D Cylindrical and MEMS-Based Helmholtz Acoustic Resonators for Ultra-Sensitive CO2 Gas Sensing. Gases. 2025; 5(3):21. https://doi.org/10.3390/gases5030021
Chicago/Turabian StyleSrivastava, Ananya, Rohan Sonar, Achim Bittner, and Alfons Dehé. 2025. "Prototyping and Evaluation of 1D Cylindrical and MEMS-Based Helmholtz Acoustic Resonators for Ultra-Sensitive CO2 Gas Sensing" Gases 5, no. 3: 21. https://doi.org/10.3390/gases5030021
APA StyleSrivastava, A., Sonar, R., Bittner, A., & Dehé, A. (2025). Prototyping and Evaluation of 1D Cylindrical and MEMS-Based Helmholtz Acoustic Resonators for Ultra-Sensitive CO2 Gas Sensing. Gases, 5(3), 21. https://doi.org/10.3390/gases5030021