| Literature DB >> 26378537 |
Claudia Conesa1, Eduardo García-Breijo2, Edwin Loeff3, Lucía Seguí4, Pedro Fito5, Nicolás Laguarda-Miró6.
Abstract
Electrochemical Impedance Spectroscopy (EIS) has been used to develop a methodology able to identify and quantify fermentable sugars present in the enzymatic hydrolysis phase of second-generation bioethanol production from pineapple waste. Thus, a low-cost non-destructive system consisting of a stainless double needle electrode associated to an electronic equipment that allows the implementation of EIS was developed. In order to validate the system, different concentrations of glucose, fructose and sucrose were added to the pineapple waste and analyzed both individually and in combination. Next, statistical data treatment enabled the design of specific Artificial Neural Networks-based mathematical models for each one of the studied sugars and their respective combinations. The obtained prediction models are robust and reliable and they are considered statistically valid (CCR% > 93.443%). These results allow us to introduce this EIS-based technique as an easy, fast, non-destructive, and in-situ alternative to the traditional laboratory methods for enzymatic hydrolysis monitoring.Entities:
Keywords: bioethanol; electrochemical impedance spectroscopy; fermentable sugars; pineapple waste; saccharification
Mesh:
Substances:
Year: 2015 PMID: 26378537 PMCID: PMC4610418 DOI: 10.3390/s150922941
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Block diagram of the AVISPA device.
Figure 2A view of the designed double needle electrode.
Figure 3Averaged phase values of the impedance spectra of different sucrose concentration measurements for (a) the entire analyzed frequency range and (b) the selected range for data treatment (5.96 × 105 Hz–7.47 × 105 Hz).
Figure 4Principal component analysis (PCA) for the studied sucrose concentrations. R1–3: average of each replicate. The blue ellipsis indicates 95% confidence level.
Statistic values of Partial Least Square (PLS) discriminant analysis for the quantification of the studied fermentable sugars. (R2: coefficient of determination; RMSEP: Root Mean Square Error of Prediction; LV: Latent Variables.)
| Sugars | Statistics | ||
|---|---|---|---|
| R2 | RMSEP | LV | |
| 0.979 | 2.272 | 3 | |
| 0.958 | 2.103 | 2 | |
| 0.983 | 1.576 | 1 | |
Figure 5Correlation plot between experimental and predicted values of sucrose (g/L) by PLS statistical model (red line) and ideal behavior (green line).
Artificial neural network (ANN) results for the studied fermentable sugars (R2: coefficient of determination; RMSE: Root Mean Square Error).
| R2 | RMSE | ||
|---|---|---|---|
| 0.99 | 1.41 | ||
| 0.88 | 3.39 | ||
| 0.95 | 3.96 | ||
| 0.96 | 1.39 | ||
| 0.99 | 0.27 | ||
| 0.95 | 1.63 | ||
| 0.99 | 0.09 | ||
| 0.88 | 1.26 | ||
| 0.99 | 0.40 |
Figure 6Regression line plot of the obtained ANN model for the studied sucrose concentrations (g/L).
Figure 7Principal component analysis (PCA) for the studied fermentable sugars: glucose (G), fructose (F) and sucrose (S).
Confusion matrices for combined sugars quantification.
| Training | Validation | Test | Overall |
| Training | Validation | Test | Overall |
| Training | Validation | Test | Overall |