Submitted:
19 February 2025
Posted:
19 February 2025
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Abstract
Keywords:
1. Introduction
2. Development of New Recipes Using Analytical Models and Genetic Algorithms
2.1. Prediction of Compound Properties with Analytical Models

2.2. Development of New Recipes Using Analytical Models
3. Materials and Methods
3.1. Materials and Characterisation
3.2. Laboratory Equipment for Compounding
4. Fitting the Models on the Dataset
5. Generating new recipes with GA
6. Practical Validation of the Identified Recipes
6.1. Shear Viscosity
6.2. Tensile Modulus
6.3. Impact Strength
7. Discussion
8. Conclusion
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Appendix A.1. Analytical Model for the Prediction of the Tensile Modulus
Appendix A.2. Model Coefficients for the AM for the Prediction of the Tensile Modulus
| Parameter | Value | Parameter | Value |
|---|---|---|---|
| 0.28412 | 0.0001 | ||
| 8.15142 | 8203.428 | ||
| 0.62736 | 4761.649 | ||
| 1.02487 | 4.166 | ||
| 1388.14 | 4.565 | ||
| 1631.38 | 4.002 |
Appendix A.3. Analytical Model for the Prediction of the Shear Viscosity
Appendix A.4. Model Coefficients for the AM for the Prediction of the Shear Viscosity
| Parameter | Value | Parameter | Value |
|---|---|---|---|
| 400.022 | 0.69034 | ||
| 0.00144 | 19.946 | ||
| 0.66601 | -188.420 | ||
| 2513.790 | 0.650 | ||
| 0.01328 |
Appendix A.5. Analytical Model for the Prediction of the Impact Strength
Appendix A.6. Model Coefficients for the AM for the Prediction of the Impact Strength
| Parameter | Value | Parameter | Value |
|---|---|---|---|
| 3.7129 | -147.4393 | ||
| 3.7494 | 1.8564 | ||
| -2.0589 | -23.8065 | ||
| 60.7621 | 22.8145 |
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| Shear rate [s-1] | 51 | 102 | 204 | 408 | 816 | 1632 |
| Shear viscosity [Pas] | 413.7 | 275.6 | 182.6 | 120.7 | 79.7 | 52.6 |
| Property | Average | Standard deviation |
|---|---|---|
| Tensile modulus | 2492.7 N/mm² | 24.08 N/mm² |
| Impact strength | 4.45 kJ/m² | 0.24 kJ/m² |
| Prediction | R² | MAE |
|---|---|---|
| Shear viscosity | 0.9904 | 7.696 |
| Tensile modulus | 0.9709 | 18.279 |
| Impact strength | 0.9196 | 0.218 |
| Parameter | Value/Setting |
|---|---|
| Number of generations | 1000 |
| Number of parents | 20 |
| Size of population | 100 |
| Genes | 4 |
| Mutation type | random |
| Mutation chance | 20% |
| Crossover type | single_point |
| Shear rate [s-1] | Percentage deviation in shear viscosity compared to target [%] | ||
| Recipe 1 | Recipe 2 | Recipe 3 | |
| 51 | 9.789 | 1.890 | 12.853 |
| 102 | 7.109 | 1.111 | 11.308 |
| 204 | 4.136 | 0.264 | 9.276 |
| 408 | 0.956 | 0.624 | 6.955 |
| 816 | 2.390 | 1.536 | 4.451 |
| 1632 | 5.880 | 2.464 | 1.815 |
| Recipe | Absolute percentage deviation [%] |
| Recipe 1 | 12.37 |
| Recipe 2 | 62.96 |
| Recipe 3 | 22.97 |
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