Submitted:
20 June 2025
Posted:
24 June 2025
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Abstract
Keywords:
1. Introduction
2. System Description
| Items | Values |
|---|---|
| Number of stages | 52 |
| Compression to ratio | 2.55 |
| Pressure of feed | 1.013 kPa |
| Pressure decreases across trays | 0.0035 kPa |
| Each stage's heat exchange area | 5 m2 |
| Rate of feed | 83.3 mol s-1 |
| Flow rate of reflux | 56.2 mol s-1 |
| Condenser duty | 853 kW |
| Compressor duty | 483 kW |
| Reboiler duty | 791 kW |
| Feed-in pre-heater duty | 500 kW |
| Time constant for compressor | 10 s |
| Condenser and reboiler time constants less than | 300 s |
| Weir height of less than | 0.1 meters |
| Elevation above the weir | <1.25% |
| The compressor's isentropic efficiency | 72% |
| Feed composition: (benzene/toluene) | 0.5 / 0.5 mol% |
| Coefficient of Heat Transfer Overall | 0.6 kW K-1 m-2 |
3. Machine Learning Models
3.1. Artificial Neural Network
3.2. Bidirectional Long Short-Term Memory
4. Results and Discussion

5. Conclusions
Acknowledgment
Abbreviations
| ANN | Artificial Neural Network |
| BiLSTM | Bidirectional Long Short-Term Memory |
| BUMDA | Binary Update Multi-Decision Algorithm |
| CO₂ | Carbon Dioxide |
| HIDiC | Heat-Integrated Distillation Column |
| MAE | Mean Absolute Error |
| MILP | Mixed-Integer Linear Programming |
| MINLP | Mixed-Integer Nonlinear Programming |
| MSE | Mean Squared Error |
| MV | Manipulated Variable |
| PCA | Principal Component Analysis |
| PCR | Principal Component Regression |
| PCs | principal components |
| PSO | Particle Swarm Optimization |
| R² | Coefficient of Determination |
| ReLU | Rectified Linear Unit |
| RMSE | Root Mean Squared Error |
| TAC | Total Annual Cost |
| TWPM | Transient Wave Propagation Model |
| WPM | Wave Propagation Model |
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| Models | Output | Set | MAE | MSE | R² |
|---|---|---|---|---|---|
| PCR | Top Comp. | Training | 0.00014 | 2.5E-06 | 0.9945 |
| Testing | 0.00016 | 0.000003 | 0.9932 | ||
| Bottom Comp. | Training | 0.00008 | 7E-07 | 0.9959 | |
| Testing | 0.00009 | 0.000001 | 0.9946 | ||
| ANN | Top Comp. | Training | 0.0001 | 1.5E-06 | 0.9968 |
| Testing | 0.00012 | 0.000002 | 0.9958 | ||
| Bottom Comp. | Training | 0.00005 | 6E-07 | 0.9975 | |
| Testing | 0.00007 | 9E-07 | 0.9964 | ||
| BiLSTM | Top Comp. | Training | 0.00007 | 1.2E-06 | 0.998 |
| Testing | 0.00009 | 1.8E-06 | 0.9972 | ||
| Bottom Comp. | Training | 0.00001 | 5E-07 | 0.9991 | |
| Testing | 0.00002 | 4E-07 | 0.9987 |
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