Journal of System Simulation ›› 2026, Vol. 38 ›› Issue (5): 1255-1276.doi: 10.16182/j.issn1004731x.joss.25-0948E
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Li Quan1, Su Peng2, Wan Haiying2, Zhang Chengxi2, He Zhijian3, Ni Yiyang1, Zhao Zhonggai2, Liu Fei2
Online:2026-05-21
Published:2026-05-29
Contact:
Ni Yiyang
About author:Li Quan (1994-), male, lecturer, doctor, research areas: process modelling and optimization control.
Supported by:CLC Number:
Li Quan, Su Peng, Wan Haiying, Zhang Chengxi, He Zhijian, Ni Yiyang, Zhao Zhonggai, Liu Fei. Modeling of Penicillin Fermentation Process Based on a Multi-stage LHS-EPRCC Method[J]. Journal of System Simulation, 2026, 38(5): 1255-1276.
Table 3
LHS-EPRCC sensitivity index ranking for all dynamic model parameters during biomass growth stage
| Rank | Glucose | Biomass | Penicillin | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | -0.980 5 | 0.446 2 | 0.999 9 | 0.999 3 | 0.960 4 | 0.4232 | |||||||
| 2 | 0.973 5 | 0.510 4 | -0.657 1 | 0.000 1 | 0.910 0 | 0.416 6 | |||||||
| 3 | 0.909 0 | 0.045 1 | 0.295 6 | 6.34×10-5 | 0.908 4 | 0.152 0 | |||||||
| 4 | -0.169 5 | 0.000 2 | 0.202 1 | 3.99×10-5 | -0.486 3 | 0.006 4 | |||||||
| 5 | 0.049 4 | 5.24×10-5 | -0.028 2 | 4.53×10-7 | -0.451 1 | 0.006 2 | |||||||
| 6 | 0.038 9 | 1.07×10-8 | 0.023 2 | 5.75×10-9 | -0.224 2 | 0.004 9 | |||||||
| 7 | -0.028 0 | 1.93×10-9 | -0.017 9 | 1.39×10-9 | 0.038 4 | 0.000 2 | |||||||
| 8 | -0.023 1 | 1.21×10-9 | -0.012 9 | 2.25×10-10 | -0.029 6 | 2.23×10-5 | |||||||
| 9 | -0.017 7 | 1.86×10-10 | -0.011 9 | 1.88×10-11 | 0.024 8 | 1.02×10-8 | |||||||
| 10 | -0.012 4 | 2.33×10-18 | -0.010 6 | 5.09×10-20 | -0.024 9 | 6.20×10-13 | |||||||
| 11 | -0.006 9 | -0.006 3 | -0.023 0 | ||||||||||
Table 5
LHS-EPRCC sensitivity index ranking for all dynamic model parameters during growth stabilization stage
| Rank | Glucose | Biomass | Penicillin | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | -0.973 2 | 0.510 4 | 0.967 8 | 0.627 0 | 0.919 1 | 0.350 2 | |||||||
| 2 | -0.947 8 | 0.243 7 | -0.921 7 | 0.260 8 | -0.886 4 | 0.261 0 | |||||||
| 3 | 0.907 8 | 0.133 5 | 0.725 0 | 0.077 0 | -0.879 9 | 0.230 2 | |||||||
| 4 | 0.755 4 | 0.042 0 | -0.638 3 | 0.033 1 | 0.774 9 | 0.102 2 | |||||||
| 5 | -0.738 8 | 0.037 3 | 0.624 2 | 0.031 0 | 0.579 5 | 0.074 4 | |||||||
| 6 | 0.732 2 | 0.035 9 | -0.360 3 | 0.014 5 | -0.449 2 | 0.032 6 | |||||||
| 7 | 0.257 8 | 0.003 4 | -0.116 4 | 0.000 6 | 0.177 6 | 0.018 22 | |||||||
| 8 | 0.239 7 | 0.002 2 | 0.014 2 | 8.82×10-5 | 0.144 3 | 0.001 | |||||||
| 9 | 0.234 7 | 0.002 1 | 0.013 7 | 3.42×10-5 | -0.078 1 | 0.000 5 | |||||||
| 10 | -0.033 9 | 5.13×10-6 | 0.013 7 | 1.04×10-7 | 0.055 4 | 0.000 1 | |||||||
| 11 | 0.027 5 | -0.008 1 | 0.017 5 | ||||||||||
Table 4
LHS-EPRCC sensitivity index ranking for all dynamic model parameters during penicillin synthesis stage
| Rank | Glucose | Biomass | Penicillin | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | -0.899 5 | 0.464 77 | -0.743 0 | 0.085 5 | 0.726 2 | 0.266 4 | |||||||
| 2 | 0.898 5 | 0.209 0 | 0.731 2 | 0.469 8 | -0.615 | 0.193 3 | |||||||
| 3 | -0.855 6 | 0.149 44 | 0.677 3 | 0.325 9 | 0.413 | 0.192 2 | |||||||
| 4 | -0.696 1 | 0.114 55 | -0.562 5 | 0.130 2 | 0.364 3 | 0.185 2 | |||||||
| 5 | 0.690 2 | 3.80×10-2 | -0.318 1 | 0.014 1 | 0.292 7 | 0.161 5 | |||||||
| 6 | 0.648 4 | 3.55×10-2 | 0.314 1 | 0.013 2 | 0.183 | 0.150 0 | |||||||
| 7 | 0.198 7 | 4.86×10-3 | -0.228 7 | 0.000 9 | -0.155 3 | 0.022 7 | |||||||
| 8 | 0.063 2 | 8.99×10-4 | -0.112 3 | 0.000 3 | -0.119 3 | 0.014 0 | |||||||
| 9 | -0.027 2 | 1.19×10-4 | -0.019 4 | 1.26×10-5 | 0.074 3 | 0.000 3 | |||||||
| 10 | -0.027 1 | 5.72×10-7 | 0.017 4 | 6.03×10-9 | -0.042 7 | 0.000 2 | |||||||
| 11 | 0.021 2 | -0.009 5 | -0.010 9 | ||||||||||
Table 7
Mean squared error and mean absolute error
| Metabolite | Nominal model | Modified model | ||||||
|---|---|---|---|---|---|---|---|---|
| IPS | IPS | Total parameter | ||||||
| MSE | MAE | MSE | MAE | MSE | MAE | MSE | MAE | |
| Biomass | 0.158 6 | 0.681 7 | 2.455 3×10-6 | 0.000 9 | 1.859 7×10-5 | 0.411 0 | 7.170 5×10-7 | 0.000 3 |
| Penicillin | 0.072 5 | 0.240 9 | 1.164 8×10-8 | 0.000 8 | 8.193 8×10-6 | 0.022 1 | 2.978 2×10-8 | 0.000 2 |
| Glucose | 0.243 1 | 0.226 0 | 1.238 8×10-6 | 0.000 3 | 5.420 0×10-5 | 0.113 9 | 8.161 7×10-7 | 0.000 3 |
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