Integration of Experimental Analysis and Predictive Modeling with Crayfish Optimization for Enhanced Biogas and Methane Production in Anaerobic Digestion
Abstract
1. Introduction
2. Materials and Methods
2.1. Substrates
2.2. Analytical Methods
2.3. Experimental Setup
2.3.1. Analysis of Temperature Performance
2.3.2. Analysis of Mixing Regime (MR) Performance
2.3.3. Analysis of Mixing I-S Ratio Performance
2.3.4. Analysis of COD Load Performance
2.4. Kinetic Study
2.5. Crayfish Optimization Algorithm
3. Results
3.1. Experimental Data Analysis
3.1.1. Temperature Effects
3.1.2. Mixing Regime (MR) Effects
3.1.3. Mixing I-S Ratio Effects
3.1.4. COD Load Effects
3.2. Mathematical Model Evaluation
3.3. Optimization CFO Algorithm Results
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Parameter | Unit | AS | Inoculum |
|---|---|---|---|
| Total solid (TS) | g/L | 5.6 ± 0.62 | 2.32 ± 0.26 |
| Humidity (U) | % | 94.40 ± 2.11 | 97.68 ± 2.09 |
| Volatile solid (VS) | g/L | 3.89 ± 0.31 | 1.25 ± 0.09 |
| Ash | g/L | 1.03 ± 0.33 | 0.44 ± 0.02 |
| Fixed carbon F.C | g/L | 0.08 ± 0.01 | 0.44 ± 0.09 |
| TCOD | mg/L | 7500 ± 2.26 | 1248 ± 0.70 |
| SCOD | mg/L | 202 ± 0.58 | 289 ± 0.40 |
| C/N | - | 22.8:1 | 9.24:1 |
| Ammonia Nitrogen NH3-N | mg/L | 38 ± 2.04 | 17.24 ± 1.94 |
| Model | Mathematical Definition | Equation No |
| modified logistic | (1) | |
| first order | (2) | |
| Gompertz | (3) | |
| Statistical Measure | Mathematical Definition | Equation No |
| root mean square error | (4) | |
| square error | (5) | |
| determination coefficient | (6) | |
| (7) |
| Temperature Effect | |||||||||
|---|---|---|---|---|---|---|---|---|---|
| 25 °C | 35 °C | 55 °C | |||||||
| Gemperts | M.logistic | first order | M.logistic | M.logistic | first order | Gemperts | M.logistic | first order | |
| SSE | 0.006334 | 0.00853 | 0.007547 | 0.013465 | 0.016862 | 0.017302 | 0.019906 | 0.021666 | 0.029687 |
| R2 | 0.966857 | 0.955367 | 0.960509 | 0.955067 | 0.943732 | 0.942261 | 0.949149 | 0.944655 | 0.924164 |
| AdjR2 | 0.965753 | 0.95388 | 0.960509 | 0.953569 | 0.941856 | 0.940336 | 0.947454 | 0.94281 | 0.921636 |
| RMSE | 0.01453 | 0.016862 | 0.015603 | 0.021186 | 0.023708 | 0.024016 | 0.025759 | 0.026874 | 0.031458 |
| MR effect | |||||||||
| 20 rpm—once/day | 20 rpm—twice/day | 20 rpm—thrice/day | |||||||
| Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | |
| SSE | 0.014173148 | 0.017638993 | 0.019296884 | 0.004327871 | 0.005369151 | 0.007541901 | 0.002863 | 0.003176 | 0.00567 |
| R2 | 0.957310919 | 0.946871904 | 0.941878388 | 0.974404 | 0.968246 | 0.955396 | 0.977362 | 0.97489 | 0.955172 |
| AdjR2 | 0.95588795 | 0.945100967 | 0.939941001 | 0.973551 | 0.967187 | 0.953909 | 0.976607 | 0.974053 | 0.953678 |
| RMSE | 0.021736 | 0.024248 | 0.025362 | 0.012011 | 0.013378 | 0.015855 | 0.009769 | 0.010289 | 0.013747 |
| Mixing I-S ratio effect | |||||||||
| 01:02 | 02:01 | 01:01 | |||||||
| Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | |
| SSE | 0.02135 | 0.00075 | 0.031515 | 0.000406 | 0.000348 | 0.001333 | 0.008004 | 0.000231 | 0.012077 |
| R2 | 0.950635 | 0.998267 | 0.927134 | 0.995435 | 0.996087 | 0.984996 | 0.969318 | 0.999115 | 0.953707 |
| AdjR2 | 0.948989 | 0.998147 | 0.927134 | 0.99512 | 0.995817 | 0.984495 | 0.968296 | 0.999054 | 0.952164 |
| RMSE | 0.026677 | 0.005084 | 0.031884 | 0.00374 | 0.003463 | 0.006667 | 0.016334 | 0.002822 | 0.020064 |
| COD load effect | |||||||||
| 2500 mg/L | 5000 mg/L | 7500 mg/L | |||||||
| Gemperts | logistic | first order | Gemperts | logistic | first order | Gemperts | logistic | first order | |
| SSE | 0.016213 | 0.000686 | 0.027988 | 0.008463 | 0.000797 | 0.015799 | 0.000443 | 0.000495 | 0.001594 |
| R2 | 0.964471 | 0.998498 | 0.938668 | 0.980348 | 0.998149 | 0.963314 | 0.994844 | 0.994228 | 0.981434 |
| AdjR2 | 0.963287 | 0.998394 | 0.938668 | 0.979693 | 0.998022 | 0.963314 | 0.994488 | 0.99383 | 0.980816 |
| RMSE | 0.023247 | 0.004862 | 0.030047 | 0.016796 | 0.005242 | 0.022576 | 0.003906 | 0.004133 | 0.007288 |
| Temperature Effect | |||||||||
|---|---|---|---|---|---|---|---|---|---|
| 25 °C | 35 °C | 55 °C | |||||||
| Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | |
| SSE | 0.002638 | 0.003387 | 0.002751 | 0.008435 | 0.01022 | 0.009366 | 0.005193 | 0.005575 | 0.008105 |
| R2 | 0.955075 | 0.942311 | 0.953141 | 0.942626 | 0.930489 | 0.936294 | 0.948724 | 0.944947 | 0.919967 |
| AdjR2 | 0.953577 | 0.940388 | 0.951579 | 0.940713 | 0.928172 | 0.93417 | 0.945187 | 0.94115 | 0.9173 |
| RMSE | 0.009376 | 0.010625 | 0.009576 | 0.016768 | 0.018457 | 0.01767 | 0.013381 | 0.013866 | 0.016437 |
| MR effect | |||||||||
| 20 rpm—once/day | 20 rpm—twice/day | 20 rpm—thrice/day | |||||||
| Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | |
| SSE | 0.009252463 | 0.011101855 | 0.010552073 | 0.00203988 | 0.002469689 | 0.003665711 | 0.001751 | 0.002053 | 0.002554 |
| R2 | 0.944158944 | 0.932997373 | 0.936315453 | 0.970954 | 0.964834 | 0.947804 | 0.963843 | 0.95761 | 0.947255 |
| AdjR2 | 0.942297576 | 0.930763952 | 0.936315453 | 0.969986 | 0.962409 | 0.946064 | 0.962638 | 0.956197 | 0.945497 |
| RMSE | 0.017562 | 0.019237 | 0.01845 | 0.008246 | 0.009228 | 0.011054 | 0.007639 | 0.008272 | 0.009227 |
| Mixing I-S ratio effect | |||||||||
| 01:02 | 02:01 | 01:01 | |||||||
| Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | |
| SSE | 0.018484 | 0.033399 | 0.021186 | 0.001129 | 0.000149 | 0.001903 | 0.005341 | 8.19 × 10−5 | 0.007196 |
| R2 | 0.921082 | 0.857401 | 0.909546 | 0.965167 | 0.995415 | 0.941282 | 0.951424 | 0.999255 | 0.934554 |
| AdjR2 | 0.91564 | 0.847566 | 0.906531 | 0.964005 | 0.995099 | 0.939325 | 0.948074 | 0.999204 | 0.932373 |
| RMSE | 0.025246 | 0.033937 | 0.026574 | 0.006134 | 0.002264 | 0.007964 | 0.013572 | 0.001681 | 0.015488 |
| COD load effect | |||||||||
| 2500 mg/L | 5000 mg/L | 7500 mg/L | |||||||
| Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | Gemperts | M.logistic | first order | |
| SSE | 0.007707 | 0.017072 | 0.008986 | 0.006726 | 0.00063 | 0.009723 | 0.000392 | 0.000392 | 0.000872 |
| R2 | 0.956409 | 0.903441 | 0.949175 | 0.96986 | 0.997176 | 0.956432 | 0.987046 | 0.987063 | 0.971212 |
| AdjR2 | 0.954956 | 0.896782 | 0.947481 | 0.968856 | 0.996981 | 0.954979 | 0.986152 | 0.98617 | 0.970252 |
| RMSE | 0.016028 | 0.024263 | 0.017307 | 0.014974 | 0.004662 | 0.018003 | 0.003678 | 0.003676 | 0.005391 |
| Coefficient | Value (Biogas—Equation (8)) | Value (CH4—Equation (9)) |
|---|---|---|
| 0 | 0 | |
| 0 | 0 | |
| 0 | 0 | |
| 0 | 0 | |
| 0 | 0 | |
| 0.00869483772047593 | 0.00530622437869624 | |
| 0 | 0 | |
| 0 | 0 | |
| −1.19807143191201 × 10−9 | −1.06417436103144 × 10−9 | |
| 0 | 0 | |
| 0 | 0 | |
| −3.40545149055543 × 10−6 | −1.08334019466436 × 10−6 | |
| 0 | 0 | |
| 0 | 0 | |
| 4.61971617293939 × 10−7 | 3.18307053020739 × 10−7 |
| Iteration | MR (day−1) | Temperature (O C) | COD-L (mg/L) | I-S | Time (day) | Biogas (Nm3/kg.VS) |
|---|---|---|---|---|---|---|
| 1 | 1.290231 | 55 | 5511.089 | 1.229994 | 32 | 0.35879 |
| 2 | 1.347049 | 55 | 6903.771 | 0.567776 | 27.96315 | 0.3481 |
| 3 | 2.617621 | 51.39994 | 7325.872 | 0.921663 | 31.35594 | 0.359298 |
| 4 | 1.436975 | 53.751 | 5750.613 | 0.559632 | 32 | 0.370452 |
| 5 | 1.228184 | 54.33229 | 6221.902 | 0.543672 | 31.36753 | 0.371006 |
| 6 | 1.228184 | 52.33229 | 6221.902 | 0.543672 | 31.36753 | 0.365257 |
| 7 | 1.153993 | 47.23328 | 6438.655 | 0.662776 | 31.97926 | 0.354349 |
| 8 | 1.619987 | 50.6455 | 6074.201 | 0.675953 | 31.66534 | 0.359255 |
| 9 | 2.734133 | 50 | 6000 | 0.5 | 30 | 0.34609 |
| 10 | 2.395165 | 50 | 5366.586 | 0.715184 | 30 | 0.33723 |
| 11 | 2.951208 | 47.51219 | 5585.075 | 0.944714 | 28.95594 | 0.319016 |
| 12 | 1.157778 | 50 | 5391.739 | 0.5 | 32 | 0.358767 |
| 13 | 3 | 50 | 7000 | 0.5 | 32 | 0.3693 |
| 14 | 1 | 45 | 4000 | 1 | 32 | 0.328599 |
| 15 | 2 | 47 | 5500 | 0.7 | 32 | 0.348302 |
| 16 | 1.30252 | 49.7366 | 5680.789 | 0.594028 | 29 | 0.332522 |
| 17 | 1.245195 | 52 | 4751.023 | 0.5 | 32 | 0.357234 |
| 18 | 1 | 51 | 5704 | 0.914982 | 32 | 0.355871 |
| 19 | 1 | 47.47954 | 5704 | 0.867521 | 32 | 0.347516 |
| 20 | 1.4 | 52 | 5704 | 0.5 | 32 | 0.366567 |
| Iteration | MR (day−1) | Temperature (O C) | COD-L (mg/L) | I-S | Time (day) | CH4 (Nm3/kg.VS) |
|---|---|---|---|---|---|---|
| 1 | 1 | 50 | 6000 | 0.57502 | 30 | 0.212631 |
| 2 | 1 | 49 | 5550 | 0.5 | 29 | 0.204659 |
| 3 | 1.1 | 49 | 5940 | 0.6 | 28 | 0.199812 |
| 4 | 1.502993 | 50 | 5000 | 0.6 | 32 | 0.219522 |
| 5 | 1.1 | 45 | 4840 | 0.74 | 32 | 0.210317 |
| 6 | 1.5 | 51 | 5953.705 | 0.856298 | 29 | 0.207287 |
| 7 | 2.841298 | 52 | 6500 | 0.687 | 28 | 0.206363 |
| 8 | 1.398506 | 55 | 6828.325 | 0.687 | 20 | 0.170967 |
| 9 | 1.183269 | 45 | 5955.255 | 1.5 | 25 | 0.170539 |
| 10 | 1.28 | 53 | 4785 | 0.89 | 32 | 0.221544 |
| 11 | 1.22 | 49 | 5020 | 0.7245 | 32 | 0.217339 |
| 12 | 1.653234 | 50.96677 | 7410.991 | 1.01148 | 30.37847 | 0.214856 |
| 13 | 1.469268 | 50.60349 | 5191.106 | 1.430671 | 31.55174 | 0.214313 |
| 14 | 1.574399 | 47.332 | 4890.526 | 0.904273 | 31.2516 | 0.209266 |
| 15 | 2.952071 | 53.13098 | 6038.774 | 1.076022 | 25.97424 | 0.194106 |
| 16 | 3 | 50.33186 | 6864.293 | 1.262452 | 27.5764 | 0.196769 |
| 17 | 2.982078 | 51.42127 | 5677.448 | 0.706524 | 28.61833 | 0.206135 |
| 18 | 1.911993 | 46.84346 | 5319.559 | 1.410791 | 27.28556 | 0.185857 |
| 19 | 1.032372 | 50.53744 | 6530.269 | 1.217546 | 31.7373 | 0.219459 |
| 20 | 1.856972 | 50.68698 | 4017.732 | 0.813084 | 25.37138 | 0.178731 |
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Al bkoor Alrawashdeh, K.; Al-Samrraie, L.A.; Al-Bsoul, A.; Abdelhay, A.; Bani-Melhem, K.; Al-Kilani, M.R.; Elnakar, H.; Gul, E. Integration of Experimental Analysis and Predictive Modeling with Crayfish Optimization for Enhanced Biogas and Methane Production in Anaerobic Digestion. Processes 2026, 14, 2020. https://doi.org/10.3390/pr14122020
Al bkoor Alrawashdeh K, Al-Samrraie LA, Al-Bsoul A, Abdelhay A, Bani-Melhem K, Al-Kilani MR, Elnakar H, Gul E. Integration of Experimental Analysis and Predictive Modeling with Crayfish Optimization for Enhanced Biogas and Methane Production in Anaerobic Digestion. Processes. 2026; 14(12):2020. https://doi.org/10.3390/pr14122020
Chicago/Turabian StyleAl bkoor Alrawashdeh, Khalideh, La’aly A. Al-Samrraie, Abeer Al-Bsoul, Arwa Abdelhay, Khalid Bani-Melhem, Muhammad Rasool Al-Kilani, Haitham Elnakar, and Eid Gul. 2026. "Integration of Experimental Analysis and Predictive Modeling with Crayfish Optimization for Enhanced Biogas and Methane Production in Anaerobic Digestion" Processes 14, no. 12: 2020. https://doi.org/10.3390/pr14122020
APA StyleAl bkoor Alrawashdeh, K., Al-Samrraie, L. A., Al-Bsoul, A., Abdelhay, A., Bani-Melhem, K., Al-Kilani, M. R., Elnakar, H., & Gul, E. (2026). Integration of Experimental Analysis and Predictive Modeling with Crayfish Optimization for Enhanced Biogas and Methane Production in Anaerobic Digestion. Processes, 14(12), 2020. https://doi.org/10.3390/pr14122020

