Comparison of Standalone and Hybrid Machine Learning Models for Prediction of Critical Heat Flux in Vertical Tubes
Abstract
:1. Introduction
2. Materials and Methods
2.1. Dataset Generation
2.2. Methodology
2.2.1. Look-Up Table (LUT) Method
2.2.2. Artificial Neural Network (ANN)
2.2.3. Support Vector Regression (SVR)
2.2.4. Random Forest (RF)
2.2.5. Data-Driven Hybrid Model
3. Simulation Settings
4. Performance Evaluations
4.1. Standalone ML Models (ANN vs. SVM vs. RF vs. LUT)
4.2. Comparison of Hybrid and Standalone Approaches
4.3. Sensitivity Analysis
5. Conclusions
- ○
- The hybrid approach using ANN outperforms both traditional ML techniques and the conventional LUT technique when it comes to predicting accuracy.
- ○
- Although standalone ML-based models performed better than the widely used conventional LUTs, the hybrid model greatly outperforms standalone ML models for prediction of CHF in vertical tubes for diverse set of operating parameters, with lower dispersion and non-biased parametric patterns.
- ○
- ML architecture can be greatly simplified in the hybrid framework as compared to its standalone version to reduce computing costs when working with big databases.
- ○
- From the parametric analysis in this work, it is confirmed that standalone ANN and hybrid (ANN + LUT) models have more suitable regression features between input and output than conventional LUT.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
AI | Artificial Intelligence |
ANN | Artificial neural network |
b | Bias term |
BPN | Backpropagation neural network |
C | Kernel function |
CHF | Critical heat flux |
D | Heated diameter |
DNB | Departure from nucleate boiling |
DNBR | Departure from nucleate boiling ratio |
DNN | Deep neural networks |
DT | Decision tree |
EPRI | Electric Power Research Institute |
f | Unknown function |
FNN | Feed-forward neural network |
G | Mass flux |
HONN | Higher order neural network |
L | Heated length |
LUT | Look-up table |
MAE | Mean absolute error |
MDNBR | Minimum value of DNBR |
MLP | Multi-layer perceptron |
MSE | Mean square error |
ML | Machine learning |
m | Number of data points |
P | Pressure |
PWR | Pressurized water reactor |
RBF | Radial basis function |
ReLU | Rectified Linear unit |
RF | Random Forest |
rRMSE | relative Root mean squared error |
SVR | Support Vector Regression |
w | Weight factor |
x | Local equilibrium/exit quality |
X | Input matrix |
y | Desired output |
yh | Hybrid model output |
ξ | Slack in SVR |
σ | Error |
σm | ML predicated error |
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Author | Mass-Flux (G) [kg/m2s] | Pressure (P) [MPa] | Equilibrium Quality (x) [-] | Heated Length (L) [mm] | Heated Diameter (D) [mm] | CHF [MW/m2] | No. of Samples |
---|---|---|---|---|---|---|---|
Inasaka [46] | 4300–6700 | 0.31–0.64 | −0.11 to −0.05 | 100 | 3 | 7.3–12.8 | 6 |
Williams [47] | 325–4683 | 2.7–15.2 | −0.02 to 0.92 | 1840 | 9.5 | 0.39–4.1 | 129 |
Kim [48] | 20–277 | 0.11–0.95 | 0.32 to 1.2 | 300–1770 | 6–12 | 0.12–1.6 | 512 |
Becker [49] | 100–5450 | 0.22–9.9 | 0 to 0.99 | 400–3750 | 3.9–25 | 0.28–7.5 | 3473 |
Lowdermilk [50] | 60–597 | 3.4 | 0.71 to 0.94 | 152 | 3 | 0.47–3.3 | 21 |
Clark [51] | 28–102 | 3.4–13.8 | 0.66 to 0.99 | 239 | 4.6 | 0.23–1.2 | 67 |
Reynold [52] | 1166–2889 | 3.6–10.7 | 0 to 0.47 | 229 | 4.6 | 3.6–9 | 67 |
Peskov [53] | 750–5361 | 10–20 | −0.23 to 0.13 | 400–1650 | 10 | 0.9–4.3 | 17 |
Thompson [54] | 542–7975 | 0.1–20.7 | −0.86 to 0.21 | 25–3048 | 1–37.5 | 1–19.3 | 1585 |
Total | 20–7975 | 0.1–20.7 | −0.86 to 1.2 | 25–3750 | 1–37.5 | 0.12–19.3 | 5877 |
Data-Driven Model | LUT |
---|---|
ML Approach | ANN, SVR, RF |
Best-estimate ANN approach | |
| 5/50/50/50/1 (5/100/100/100/50/1 if standalone ANN) |
| Adam |
| ReLU (Rectified Linear unit) |
| 0.001 |
Best-estimate SVR approach | |
| Kernel: Rbf, C: 100, Nu: 0.9 (Kernel: Rbf, C: 100, Nu: 1 if standalone SVR) |
Best-estimate RF approach | |
| 100 (300 if standalone RF) |
Approach | Test rRMSE (%) | Data-Points within ±10% Error | Data-Points within ±20% Error |
---|---|---|---|
LUT | 15.8 | 68% | 85% |
SVM | 15.5 | 72% | 86% |
RF | 14.7 | 80% | 89% |
ANN | 12.2 | 87% | 95% |
Hybrid SVM + LUT | 11.8 | 87% | 97% |
Hybrid RF + LUT | 10.7 | 89% | 99% |
Hybrid ANN + LUT | 9.3 | 91% | 100% |
Sensitivity Analysis Technique | Test RMSE (%) | Test Samples within ±10% Error |
---|---|---|
80% train + 20% test | 9.30 | 91% |
5-fold cross-validation | 9.15 | 89% |
10-fold cross-validation | 8.90 | 91% |
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Khalid, R.Z.; Ullah, A.; Khan, A.; Khan, A.; Inayat, M.H. Comparison of Standalone and Hybrid Machine Learning Models for Prediction of Critical Heat Flux in Vertical Tubes. Energies 2023, 16, 3182. https://doi.org/10.3390/en16073182
Khalid RZ, Ullah A, Khan A, Khan A, Inayat MH. Comparison of Standalone and Hybrid Machine Learning Models for Prediction of Critical Heat Flux in Vertical Tubes. Energies. 2023; 16(7):3182. https://doi.org/10.3390/en16073182
Chicago/Turabian StyleKhalid, Rehan Zubair, Atta Ullah, Asifullah Khan, Afrasyab Khan, and Mansoor Hameed Inayat. 2023. "Comparison of Standalone and Hybrid Machine Learning Models for Prediction of Critical Heat Flux in Vertical Tubes" Energies 16, no. 7: 3182. https://doi.org/10.3390/en16073182
APA StyleKhalid, R. Z., Ullah, A., Khan, A., Khan, A., & Inayat, M. H. (2023). Comparison of Standalone and Hybrid Machine Learning Models for Prediction of Critical Heat Flux in Vertical Tubes. Energies, 16(7), 3182. https://doi.org/10.3390/en16073182