Design of Soft-Sensing Model for Alumina Concentration Based on Improved Deep Belief Network
Abstract
:1. Introduction
2. Analysis of Aluminum Electrolysis Process
2.1. Core Parameter Analysis
2.2. Analysis of Different Operating Conditions
2.2.1. Anode Effect
- (1)
- Bright with special sounds and creaks, sparks occur around the anode.
- (2)
- Bubbles on the anode and electrolyte interface no longer precipitate, and electrolyte stops boiling.
- (3)
- Fluorocarbon gases are emitted, except for CO and CO2.
- (4)
- In the industrial electrolytic cell, the voltage rises when the anode effect occurs (generally 30–50 V, individual up to 120 V), and the low-voltage bulb in parallel with the electrolytic cell is shining. Under high-voltage and high-current density, the electrolyte and anode are overheated, and under constant-voltage supply, the series current of the electrolytic cell decreases sharply when the anode effect occurs.
- (1)
- Reduction in alumina concentration in electrolyte.
- (2)
- The concentration of the ion near the carbon anode increased, while the concentration of the oxygen-containing ion decreased.
- (3)
- The carbon anode potential increased to the ion discharge potential, and the carbon fluoride gas was precipitated, the anode surface was covered by a gas film.
2.2.2. Anode Changing
2.2.3. Aluminum Tapping
3. Principle of Improved Method
3.1. Empirical Mode Decomposition
- (1)
- Calculate the maximum and minimum values of the original time series x(t) and use the cubic spline curve to fit the upper and lower envelopes of the maximum and minimum values, respectively; the average value of the upper and lower extreme value envelopes is the mean line of the original time series.
- (2)
- Subtract the mean line from the original time series to check whether the remaining items are stationary and satisfy the IMF condition. Each IMF should satisfy the following two conditions: the numbers of local extreme points and zero-crossing points of the function are equal or at most one difference within the entire data sequence. For any point, the average envelope of local maximum (upper envelope) and local minimum (lower envelope) is 0. If the remaining items do not meet the IMF conditions, repeat the above process until the IMF components that meet the conditions are selected.
- (3)
- The above Equation (3) subtracts the selected IMF components from the original sequence and repeats the above process for the remaining sequences until all the IMF components are selected.
- (4)
- When the original sequence cannot continue to decompose more IMF components and becomes a monotonic function, the final residual part is the trend term of the entire sequence, which is commonly expressed by .
3.2. Optimized the Number of Hidden Layer Nodes by Particle Swarm Optimization
3.3. Design of Soft-Sensing Model
4. Experiment and Results
4.1. Data Acquisition
4.2. Simulation Experiment
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Components | Number of Hidden Layers | MAE | RMSE | R2 |
---|---|---|---|---|
IMF1 | 24–28 | 0.0536 | 0.0677 | 0.6877 |
IMF2 | 50–31 | 0.0301 | 0.0426 | 0.5932 |
IMF3 | 36–45 | 0.0182 | 0.0238 | 0.9039 |
IMF4 | 19–20 | 0.0103 | 0.0122 | 0.9844 |
IMF5 | 33–35 | 0.0063 | 0.0080 | 0.9548 |
IMF6 | 41–53 | 0.0017 | 0.0021 | 0.9981 |
IMF7 | 36–20 | 0.0072 | 0.0083 | 0.9979 |
REF | 21–23 | 0.0005 | 0.0005 | 0.9950 |
Methods | MAE | RMSE | R2 |
---|---|---|---|
DBN | 0.0219 | 0.0306 | 0.9950 |
EMD–PSO–DBN | 0.0184 | 0.0259 | 0.9881 |
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Li, X.; Liu, B.; Qian, W.; Rao, G.; Chen, L.; Cui, J. Design of Soft-Sensing Model for Alumina Concentration Based on Improved Deep Belief Network. Processes 2022, 10, 2537. https://doi.org/10.3390/pr10122537
Li X, Liu B, Qian W, Rao G, Chen L, Cui J. Design of Soft-Sensing Model for Alumina Concentration Based on Improved Deep Belief Network. Processes. 2022; 10(12):2537. https://doi.org/10.3390/pr10122537
Chicago/Turabian StyleLi, Xiangquan, Bo Liu, Wei Qian, Guoyong Rao, Lijuan Chen, and Jiarui Cui. 2022. "Design of Soft-Sensing Model for Alumina Concentration Based on Improved Deep Belief Network" Processes 10, no. 12: 2537. https://doi.org/10.3390/pr10122537
APA StyleLi, X., Liu, B., Qian, W., Rao, G., Chen, L., & Cui, J. (2022). Design of Soft-Sensing Model for Alumina Concentration Based on Improved Deep Belief Network. Processes, 10(12), 2537. https://doi.org/10.3390/pr10122537