Intelligent Modeling of the Incineration Process in Waste Incineration Power Plant Based on Deep Learning
Abstract
:1. Introduction
2. Basic Method Principle
2.1. Waste-to-Energy Treatment Technology
2.2. Lasso Algorithm
2.3. Model Building Based on Deep Learning
2.3.1. Convolutional Neural Network
2.3.2. Bi-LSTM Model
2.3.3. Intelligent Model of Incineration Process Based on Deep Learning
3. Intelligent Model of Waste-to-Energy Plant Incineration Process Based on Deep Learning
3.1. Variable Selection Based on the Lasso Algorithm
3.2. Calculation of Delay Time
3.3. Model Establishment
- (1)
- The initial variables are screened by mechanism analysis and the Lasso algorithm, and invalid variables and redundant variables are removed.
- (2)
- Data preprocessing, including outlier removal, noise reduction, and normalization.
- (3)
- The mutual information method is used to determine each delay time.
- (4)
- The model is established: first, the input variables after feature selection are input into the CNN layer of the model, and the deep time series features are extracted through the convolution and pooling layers. Secondly, they are sent to the BiLSTM layer to further strengthen the connection between the temporal features. The last layer is the fully connected layer, and the model output is completed.
4. Model Establishment and Result Analysis
4.1. Model Evaluation Indicators
4.2. Model Establishment Result Analysis
4.2.1. The Influence of Variable Selection on Modeling Results
4.2.2. The Influence of Different Models on the Modeling Results
5. Conclusions
- (1)
- In this paper, based on the historical operation data from waste-to-energy power plants, multi-dimensional feature sets including waste factors, grate operation factors, and air volume factors were used, and high-correlation feature parameters through the effective feature screening of multi-dimensional feature sets by Lasso algorithm were selected. The comparison of before and after feature selection shows that Lasso feature screening for multi-dimensional input feature parameters can improve model accuracy.
- (2)
- Compared with the traditional LSSVM, CNN, and LSTM models, the bidirectional network model based on feature selection and CNN-BiLSTM selected in this paper, can fully mine data features under multi-dimensional input feature parameters, and it has higher accuracy and applicability.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Serial Number | Variable Name | Unit | Variation Range |
---|---|---|---|
1 | primary air flow | Nm3/h | 13,500–23,069 |
2 | Unit 1 primary air flow | Nm3/h | 299–5932 |
3 | Unit 4 primary air flow | Nm3/h | 9721–17,763 |
4 | Unit 5 primary air flow | Nm3/h | 1423–13,173 |
5 | secondary air flow | Nm3/h | 4538–4673 |
6 | unit 1 material layer thickness | - | 11.98–74.25 |
7 | unit 5 material layer thickness | - | 1.27–5.05 |
8 | unit 1 conveying speed of sliding grate | mm/s | 0.14–2.80 |
Auxiliary Variable Number | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 |
---|---|---|---|---|---|---|---|---|
Delay Time | 260 | 290 | 240 | 90 | 210 | 280 | 70 | 250 |
Maximum Mutual Information | 0.7794 | 0.6983 | 0.8434 | 1.0875 | 0.9343 | 0.7260 | 1.2867 | 0.7999 |
Before Variable Selection (MAE/MAPE/RMSE) | After Variable Selection (MAE/MAPE/RMSE) | |
---|---|---|
T1 (°C) | 3.348/0.293/4.299 | 3.245/0.284/4.027 |
Q (t/h) | 0.060/0.232/0.075 | 0.051/0.196/0.064 |
CO2 (%) | 0.101/2.530/0.130 | 0.100/2.519/0.130 |
T2 (°C) | 0.274/0.121/0.407 | 0.240/0.100/0.364 |
T1 (°C) (MAE/MAPE/RMSE) | Q (t/h) (MAE/MAPE/RMSE) | T2 (°C) (MAE/MAPE/RMSE) | ||
---|---|---|---|---|
LSSVM | 4.226/0.423/5.239 | 0.178/0.654/0.432 | 0.156/3.106/0.177 | 1.324/0.849/1.637 |
CNN | 4.540/0.395/6.941 | 0.292/1.140/0.316 | 0.133/3.290/0.159 | 2.198/0.920/2.800 |
LSTM | 3.899/0.350/4.397 | 0.066/0.258/0.087 | 0.111/2.637/0.134 | 0.597/0.262/0.652 |
CNN-BiLSTM | 3.245/0.284/4.027 | 0.051/0.196/0.064 | 0.100/2.519/0.130 | 0.240/0.100/0.364 |
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Chen, L.; Wang, C.; Zhong, R.; Wang, J.; Zhao, Z. Intelligent Modeling of the Incineration Process in Waste Incineration Power Plant Based on Deep Learning. Energies 2022, 15, 4285. https://doi.org/10.3390/en15124285
Chen L, Wang C, Zhong R, Wang J, Zhao Z. Intelligent Modeling of the Incineration Process in Waste Incineration Power Plant Based on Deep Learning. Energies. 2022; 15(12):4285. https://doi.org/10.3390/en15124285
Chicago/Turabian StyleChen, Lianhong, Chao Wang, Rigang Zhong, Jin Wang, and Zheng Zhao. 2022. "Intelligent Modeling of the Incineration Process in Waste Incineration Power Plant Based on Deep Learning" Energies 15, no. 12: 4285. https://doi.org/10.3390/en15124285
APA StyleChen, L., Wang, C., Zhong, R., Wang, J., & Zhao, Z. (2022). Intelligent Modeling of the Incineration Process in Waste Incineration Power Plant Based on Deep Learning. Energies, 15(12), 4285. https://doi.org/10.3390/en15124285