Quality-Related Process Monitoring and Diagnosis of Hot-Rolled Strip Based on Weighted Statistical Feature KPLS
Abstract
:1. Introduction
2. Monitoring and Diagnosis of Quality-Related Faults of Hot-Rolled Strip Based on KPLS
Algorithm 1: The calculation algorithm of KPLS [19] | |
Step 1 | Set , , |
Step 2 | Select the first column of as . |
Step 3 | |
Step 4 | |
Step 5 | , |
Step 6 | |
Step 7 | Repeat step 3 to step 6 until converges. |
Step 8 | ; |
Step 9 | Get parameters , |
Step 10 | Set and repeat step 2 to step 9 until |
3. KPLS Quality-Related Process Monitoring and Diagnosis Based on Data Weighting
3.1. Introduction to the Hot Rolling Process
3.2. Strip Thickness Influence Weight
3.3. Monitoring and Diagnosis Model Based on Weighted Data Reconstruction
Algorithm 2: The WKPLS-based fault detection approach | |
Off-line training: | |
Step 1 | Collect process variable data and quality variable data . |
Step 2 | Normalization of process data by Equation (35). |
Step 3 | Quality influence weight by Equation (33) |
Step 4 | Reconstruct the feature data set by Equation (34). |
Step 5 | Run Algorithm 1 to calculate and . |
Step 6 | Given confidence limit , calculate thresholds and by Equation (15). |
On-line detecting: | |
Step 1 | Collect on-line samples . Additionally, the data reconstruction is carried out in Steps 2 to 4 of the offline training part. |
Step 2 | Calculate by Equation (17). |
Step 3 | Calculate statistics and by Equation (14). |
Step 4 | Calculate the contribution plot to identify the abnormal variables. |
4. Experiments and Results Analysis
4.1. Data Preprocessing
4.2. Influence Weight of Each Stand Variable
4.3. Thickness Monitoring Results Based on PLS and KPLS
4.4. Thickness Monitoring Results Based on Mechanism Data Fusion
4.5. Cause Identification of Quality Abnormity Based on Contribution Plot
4.6. Fault Detection Rate and False Alarm Rate of WKPLS Diagnosis Method
5. Conclusions
- (1)
- In this paper, the Gaussian radial basis kernel function is introduced to transform the nonlinear relationship into a linear relationship in the high-dimensional feature space. The ability of the model to process nonlinear data is improved.
- (2)
- Based on the rolling mechanism model, the thickness influence weight is constructed. The input features of the data model are weighted by the influence weight, which improves the physical interpretation ability of the data model to each variable.
- (3)
- The contribution diagram is introduced to identify the causes of abnormal thickness quality and determine the relevant variables that cause quality abnormalities.
- (4)
- The industrial verification was carried out by using the measured data of 1580 production line. It can be seen that the monitoring and diagnosis model of strip thickness quality related fault combined with rolling mechanism has high detection accuracy, and the accuracy can reach 96%.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Appendix B
References
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Name | Influence Coefficient | Expression | Name | Influence Coefficient | Expression |
---|---|---|---|---|---|
Roll gap influence coefficient | Front tension influence coefficient | ||||
Influence coefficient of incoming material thickness | Friction coefficient influence coefficient | ||||
Influence coefficient of back tension | Influence coefficient of deformation resistance of a rolled piece |
Stand No. | /mm | /mm | The Partial Differential Value of Thickness Difference Influences Coefficient | ||||
---|---|---|---|---|---|---|---|
Rolling Speed | Front Tension | Back Tension | Entry Gage | Temperature | |||
F1 | 38.00 | 20.10 | 6069.20 | 28.86 | - | 8496.15 | 17.92 |
F2 | 20.10 | 11.90 | 4340.37 | 33.74 | 18.58 | 8691.76 | - |
F3 | 11.9 | 7.15 | 4557.55 | 5.17 | 5.89 | 9293.33 | - |
F4 | 7.15 | 5.30 | 2004.74 | 4.28 | 2.22 | 7814.92 | - |
F5 | 5.30 | 3.79 | 1345.66 | 2.30 | 2.34 | 6893.20 | - |
F6 | 3.79 | 3.35 | 2082.96 | 2.25 | 11.95 | 5500.63 | - |
F7 | 3.35 | 3.00 | 864.60 | - | 4.24 | 5168.80 | 81.92 |
Variable Name | F1 | F2 | F3 | F4 | F5 | F6 | F7 |
---|---|---|---|---|---|---|---|
Rolling speed (m/s) | V11 | V21 | V31 | V41 | V51 | V61 | V71 |
Front tension (MPa) | V12 | V22 | V32 | V42 | V52 | V62 | - |
Post tension (MPa) | - | V23 | V33 | V43 | V53 | V63 | V72 |
Entry thickness (m) | V13 | V24 | V34 | V44 | V54 | V64 | V73 |
Rolling force (MN) | V14 | V25 | V35 | V45 | V55 | V65 | V74 |
Roll gap value (m) | V15 | V26 | V36 | V46 | V56 | V66 | V75 |
Roll bending force (N) | V16 | V27 | V37 | V47 | V57 | V67 | V76 |
Inlet temperature (°C) | V17 | - | - | - | - | - | - |
Outlet temperature (°C) | - | - | - | - | - | - | V77 |
Thickness (m) | - | - | - | - | - | - |
Stand No. | Influence Coefficient | |||||||
---|---|---|---|---|---|---|---|---|
Rolling Speed | Front Tension | Post Tension | Entry Thickness | Rolling Force | Roll Gap Value | Roll Bending Force | Temperature | |
F1 | 0.90721 | 0.00431 | - | 1.270 | 0.0000499 | 1.20478 | 0.00064 | 0.00268 |
F2 | 0.81740 | 0.00635 | 0.00350 | 1.637 | 0.0000606 | 1.50659 | 0.00057 | - |
F3 | 1.80425 | 0.00205 | 0.00233 | 3.679 | 0.0001224 | 2.71180 | 0.00118 | - |
F4 | 0.58210 | 0.00124 | 0.00065 | 2.269 | 0.0001051 | 1.50987 | 0.00127 | - |
F5 | 0.43436 | 0.00074 | 0.00075 | 2.225 | 0.0001390 | 1.59135 | 0.00199 | - |
F6 | 0.12107 | 0.00013 | 0.00069 | 0.320 | 0.0000286 | 0.26331 | 0.00099 | - |
F7 | 0.04069 | - | 0.00020 | 0.243 | 0.0000336 | 0.25505 | 0.00215 | 0.00385 |
Stand No. | Mean Value of Each Variable | |||||||
---|---|---|---|---|---|---|---|---|
Rolling Speed | Front Tension (MN) | Post Tension (MN) | Entry Thickness (m) | Rolling Force (kN) | Roll Gap Value (m) | Roll Bending Force (kN) | Temperature (°C) | |
F1 | 1.20 | 6.51 | - | 0.0194 | 24,130 | 0.02 | 1877.27 | 980 |
F2 | 2.10 | 8.86 | 6.51 | 0.0103 | 24,870 | 0.01 | 2629.76 | - |
F3 | 3.53 | 11.61 | 8.89 | 0.0056 | 22,130 | 0.0061 | 2290.81 | - |
F4 | 5.22 | 13.79 | 11.61 | 0.0048 | 14,370 | 0.0052 | 1187.13 | - |
F5 | 6.88 | 17.06 | 13.77 | 0.0037 | 11,450 | 0.0037 | 798.03 | - |
F6 | 8.30 | 19.91 | 17.05 | 0.0035 | 9190 | 0.0035 | 266.12 | - |
F7 | 9.32 | - | 19.95 | 0.0035 | 7600 | 0.0034 | 118.78 | 880 |
Method | PLS | KPLS | TPLS | WKPLS |
---|---|---|---|---|
Detection rate | 0.66 | 0.87 | 0.9 | 0.96 |
Steel Coil Number | Specifications (mm) | Fault Detection Rate (%) | False Alarm Rate (%) |
---|---|---|---|
8E00367A20xxAxxx | 3 × 870 | 97.21 | 4.12 |
8E00323A30xxAxxx | 3 × 866 | 95.60 | 6.42 |
8E00324A10xxAxxx | 3 × 866 | 94.14 | 6.61 |
8E00327A20xxAxxx | 3 × 861 | 98.02 | 4.33 |
8E00328A50xxAxxx | 3 × 866 | 95.60 | 6.42 |
Mean | 96.11 | 5.58 |
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Guo, H.; Sun, J.; Yang, J.; Peng, Y. Quality-Related Process Monitoring and Diagnosis of Hot-Rolled Strip Based on Weighted Statistical Feature KPLS. Sensors 2023, 23, 6038. https://doi.org/10.3390/s23136038
Guo H, Sun J, Yang J, Peng Y. Quality-Related Process Monitoring and Diagnosis of Hot-Rolled Strip Based on Weighted Statistical Feature KPLS. Sensors. 2023; 23(13):6038. https://doi.org/10.3390/s23136038
Chicago/Turabian StyleGuo, Hesong, Jianliang Sun, Junhui Yang, and Yan Peng. 2023. "Quality-Related Process Monitoring and Diagnosis of Hot-Rolled Strip Based on Weighted Statistical Feature KPLS" Sensors 23, no. 13: 6038. https://doi.org/10.3390/s23136038
APA StyleGuo, H., Sun, J., Yang, J., & Peng, Y. (2023). Quality-Related Process Monitoring and Diagnosis of Hot-Rolled Strip Based on Weighted Statistical Feature KPLS. Sensors, 23(13), 6038. https://doi.org/10.3390/s23136038