| Literature DB >> 34307653 |
Zhenzhen Lv1, Ming Hu1, Yixin Yang1, Jeren Makhdoumi2.
Abstract
In the current study, our goal was to obtain a robust model to predict the speed of sound in biodiesel. For this purpose, an extensive databank has been extracted from previously published papers. Then, a Support Vector Machine (SVM) has been optimized by Grey Wolf Optimization (GWO) method to analyze these data and determine the correlation between speed of sound in biodiesel and its related properties including pressure, temperature, molecular weight, and normal melting point. The results were very satisfactory because the values of statistical parameters R 2 and RMSE were obtained 1 and 1.4024, respectively. Here, this is the first time that the sensitivity analysis is used to estimate this target value. This analysis shows that the pressure widely affects the output values with relevancy factor 87.92. Also, our proposed method is highly accurate than other machine learning methods used in papers employed for this objective.Entities:
Year: 2021 PMID: 34307653 PMCID: PMC8270713 DOI: 10.1155/2021/5368987
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Details of the implemented GWO-SVM algorithm.
| Parameter | Value/comment |
|---|---|
| Kernel function | RBF |
| No. of train data | 786 |
| No. of test data | 262 |
| Optimization technique | GWO |
|
| 52263.664 |
|
| 0.5033 |
| Γ | 0.07825 |
Figure 1Sensitivity analysis on the input parameters.
Figure 2Outlier analysis to determine suspicious data points.
Figure 3Observational comparison of real values and their corresponding modeled values for test and train data.
Figure 4Regression plot to determine the accuracy of the proposed model in predicting actual values.
Figure 5Relative deviation analysis to determine the accuracy of the SVM-GWO model.
Statistical analyses based on the proposed SVM-GWO model.
| Set |
| MRE (%) | MSE | RMSE | STD |
|---|---|---|---|---|---|
| Train | 1.000 | 0.061 | 1.925445498 | 1.3876 | 1.0321 |
| Test | 1.000 | 0.061 | 1.966602271 | 1.4024 | 1.0542 |
| Total | 1.000 | 0.061 | 1.935734691 | 1.4024 | 1.0371 |
Comparison between the accuracy of different models in predicting target outcomes.
| Statistical parameter | SGB model | GP model | SVM-GWO model |
|---|---|---|---|
|
| 0.99996 | 0.99803 | 1.000 |
| RMSE | 1.55 | 8.81907 | 1.4024 |