| Literature DB >> 26131672 |
Xiuzhen Guo1, Chao Peng2, Songlin Zhang3, Jia Yan4, Shukai Duan5, Lidan Wang6, Pengfei Jia7, Fengchun Tian8.
Abstract
In this paper, a novel feature extraction approach which can be referred to as moving window function capturing (MWFC) has been proposed to analyze signals of an electronic nose (E-nose) used for detecting types of infectious pathogens in rat wounds. Meanwhile, a quantum-behaved particle swarm optimization (QPSO) algorithm is implemented in conjunction with support vector machine (SVM) for realizing a synchronization optimization of the sensor array and SVM model parameters. The results prove the efficacy of the proposed method for E-nose feature extraction, which can lead to a higher classification accuracy rate compared to other established techniques. Meanwhile it is interesting to note that different classification results can be obtained by changing the types, widths or positions of windows. By selecting the optimum window function for the sensor response, the performance of an E-nose can be enhanced.Entities:
Keywords: MWFC; QPSO; SVM; electronic nose; feature extraction
Mesh:
Substances:
Year: 2015 PMID: 26131672 PMCID: PMC4541827 DOI: 10.3390/s150715198
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Pathogens in wound infection and their metabolites.
| Pathogens | Metabolites |
|---|---|
| Pyruvate, 2-nonanone, 2-undecanone, toluene, 1-undecene, 2-aminoacetophenone, esters, dimethyl disulfide, 2-heptanone, methyl ketones, dimethyl trisulfide, butanol, 2-butanone, sulphur compounds, isopentanol, isobutanol, isopentyl acetate | |
| Ethanol, decanol, dodecanol, methanethiol 1-propanol,indole, methyl ketones, lactic acid, succinic acid, formic acid, butanediol, dimethyl disulfide, octanol, dimethyl trisulfide, acetaldehyde, hydrogen sulfide, formaldehyde, acetic acid, aminoacetophenone, pentanols | |
| Isobutanol, isopentyl acetate, ethanol, ammonia, 1-undecene, methyl ketones, 2-methylamine, 2,5-dimethylpyrazine, isoamylamine, trimethylamine, formaldehyde isopentanol, aminoacetophenone, acetic acid |
Figure 1Sensor array.
Response characteristics of gas sensors.
| Sensors | Response Characteristics |
|---|---|
| TGS800 | Methane, carbon monoxide, isobutane, hydrogen, ethanol |
| TGS813 | Methane, propane, ethanol, isobutane, hydrogen, carbon monoxide |
| TGS816 | Combustible gases, methane, propane, butane, carbon monoxide, hydrogen, ethanol, isobutane |
| TGS822 | Organic solvent vapors, methane, carbon monoxide, isobutane, |
| TGS825 | Hydrogen sulfide |
| TGS826 | Ammonia, ethanol, isobutane, hydrogen |
| TGS2600 | Gaseous air contaminants, methane, carbon monoxide, isobutane, ethanol, hydrogen |
| TGS2602 | VOCs, odorous gases, ammonia, hydrogen sulfide, toluene, ethanol |
| TGS2620 | Vapors of organic solvents, combustible gases, methane, carbon monoxide, isobutane, hydrogen, ethanol |
| WSP2111 | Benzene, toluene, ethanol, hydrogen, formaldehyde, acetone |
| MQ135 | Ammonia, benzene series material, acetone, carbon monoxide, ethanol, smoke |
| MQ138 | Alcohols, aldehydes, ketones, aromatics |
| QS-01 | VOCs, hydrogen, carbon monoxide, methane, isobutane, ethanol, ammonia |
| SP3S-AQ2 | VOCs, methane, isobutane, carbon monoxide, hydrogen, ethanol |
| AQ | Carbon monoxide, methanol, ethanol, isopropanol, formaldehyde, acetaldehyde, sulfur dioxide, hydrogen, hydrogen sulfide, phenol, dimethyl ether, ethylene |
Figure 2Schematic diagram of the experimental system.
Figure 3Response of E-nose to a wound infected with P. aeruginosa.
Figure 4The schematic diagram of WFC technique.
Several kinds of common window functions.
| Window | Equation (N is the Width of the Window) |
|---|---|
| Triang | |
| Blackman | |
| Hamming | |
| Hanning | |
| Boxcar | |
| Gaussian |
Figure 5The schematic diagram of MWFC.
Figure 6Flow chart of the optimization process.
Brief description of the parameters extracted from the sensor response.
| Method | Description |
|---|---|
| Peak value | Max value of sensor response |
| Rising slope | |
| Descending slope | |
| FFT | Coefficients of the DC component and first order harmonic component |
| DWT | Approximation coefficientsWavelet function is db5 wavelets and decomposition level 13. |
| WFC | The area value of sensor response curve and window curve surrounded |
| MWFC | The three area values of sensor response curve and window curve surrounded during the window moving process |
Classification accuracy (%) of four positions based on different windows.
| Windows | Positions | |||
|---|---|---|---|---|
| 180 s | 330 s | 480 s | 930 s | |
| Triang | 85.0 | 90.0 | 95.0 | 90.0 |
| Blackman | 82.5 | 90.0 | 92.5 | 87.5 |
| Hamming | 85.0 | 87.5 | 92.5 | 90.0 |
| Hanning | 85.0 | 90.0 | 92.5 | 90.0 |
| Boxcar | 80.0 | 90.0 | 90.0 | 87.5 |
| Gaussian | 85.0 | 92.5 | 95.0 | 87.5 |
Classification accuracy (%) of different windows shaped different widths.
| Windows | Widths | |||||
|---|---|---|---|---|---|---|
| 32-points | 64-points | 128-points | 256-points | 512-points | 1024-points | |
| Triang | 92.5 | 95.0 | 92.5 | 92.5 | 90.0 | 90.0 |
| Blackman | 87.5 | 92.5 | 92.5 | 90.0 | 90.0 | 87.5 |
| Hamming | 90.0 | 92.5 | 90.0 | 90.0 | 87.5 | 85.0 |
| Hanning | 90.0 | 92.5 | 92.5 | 90.0 | 90.0 | 87.5 |
| Boxcar | 87.5 | 90.0 | 90.0 | 87.5 | 87.5 | 85.0 |
| Gaussian | 90.0 | 95.0 | 92.5 | 92.5 | 92.5 | 90.0 |
Figure 7The positions where each sensor obtains the peak value.
Figure 8Optimal importance factors with QPSO for 15 sensors.
Classification accuracy (%) of MWFC with SVM and RBF.
| Methods | Types | |||||
|---|---|---|---|---|---|---|
| Triang | Blackman | Hamming | Hanning | Boxcar | Gaussian | |
| RBF-MWFC | 87.5 | 85.0 | 90.0 | 85.0 | 85.0 | 90.0 |
| QPSO-RBF-MWFC | 92.5 | 87.5 | 92.5 | 90.0 | 87.5 | 90.0 |
| SVM-MWFC | 92.5 | 90.0 | 92.5 | 92.5 | 92.5 | 92.5 |
| QPSO-SVM-MWFC | 97.5 | 95.0 | 95.0 | 97.5 | 95.0 | 97.5 |
means without sensor optimization and with sensor optimization.
Accuracy comparison of various feature extraction techniques (%).
| Feature Extraction | Accuracy Rate |
|---|---|
| Peak value | 87.5 |
| Rising slope | 87.5 |
| Descending slope | 85 |
| FFT | 90.0 |
| DWT | 92.5 |
| WFC | 95.0 |
| MWFC | 97.5 |
Accuracy of various feature extraction techniques for other datasets (%).
| Feature Extraction | Accuracy Rate | |
|---|---|---|
| Dataset in [ | Dataset in [ | |
| Peak value | 85.33 | 82.11 |
| Rising slope | 88.00 | 80.49 |
| Descending slope | 82.67 | 81.30 |
| FFT | 89.33 | 83.74 |
| DWT | 90.67 | 86.17 |
| WFC | 92.00 | 89.43 |
| MWFC | 93.33 | 91.06 |
ANOVA Results.
| Sum of Squares | df | Mean Square | F | Significant | |
|---|---|---|---|---|---|
| Between Groups | 4.1817 | 6 | 0.6969 | 553.976 | 0 |
| Within Groups | 0.3434 | 273 | 0.0013 | ||
| Total | 4.5251 | 279 |
Figure 9PCA score plot of different features.