Self-Modulated KAN-DCA for Incipient Fault Detection in Industrial Processes
Abstract
1. Introduction
2. Problem Formulation and Preliminary
2.1. Problem Formulation
2.2. Preliminary—KAN
3. Heterogeneous Features
3.1. Construction of Heterogeneous Feature Streams
3.2. Computational Complexity of Process-Aware Features and SWSVs
3.3. Sensitivity Analysis of Process-Aware Features and SWSVs
4. Self-Modulated KAN-DCA (SMK-DCA)
4.1. DCA
4.2. SMK-DCA
4.3. Self-Modulation by DCA
5. Fault Detection Using SMK-DCA
5.1. Loss Function
5.2. Detection Logic
6. Case Study
6.1. Tennessee Eastman Process
6.1.1. Parameter Settings
6.1.2. Detection Performance
6.1.3. Ablation Experiments
6.1.4. Hyperparameter Discussion
6.2. Insulated-Gate Bipolar Transistor (IGBT) Power System
6.2.1. Parameter Settings
6.2.2. Detection Performance
6.2.3. Ablation Experiments
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Model | Backbone | FiLM | Trainable Parameters | Training Time (s) | Peak GPU Memory (MB) | Inference Time (ms/Sample) |
|---|---|---|---|---|---|---|
| SMM-DCA w/o FiLM | MLP | No | 98,905 | 14.17 | 1090.82 | 0.1222 |
| SMM-DCA | MLP | Yes | 123,865 | 14.94 | 1110.78 | 0.1269 |
| SMK-DCA w/o FiLM | KAN | No | 196,825 | 93.34 | 5070.42 | 0.7996 |
| SMK-DCA | KAN | Yes | 221,785 | 94.83 | 5087.68 | 0.8035 |
| Fault | CVRSA [9] | PTMD [46] | SFSA [10] | OTSMD [5] | SAGE-FA [7] | CVA [12] | DePPCA [8] | TWSFKECA [13] | SMK-DCA | ||
|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 99.75 | 99.50 | 100.00 | 99.12 | 99.88 | 99.75 | 99.90 | 99.90 | 100.00 | 100.00 | 99.50 |
| 2 | 99.00 | 97.88 | 98.50 | 97.50 | 98.13 | 99.50 | 99.20 | 99.20 | 100.00 | 100.00 | 97.75 |
| 4 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 | 100.00 | 100.00 | 100.00 | 93.21 | 100.00 |
| 5 | 88.75 | 99.88 | 100.00 | 99.88 | 100.00 | 99.88 | 100.00 | 100.00 | 46.97 | 27.02 | 99.88 |
| 6 | 99.88 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 7 | 99.88 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 8 | 98.00 | 97.62 | 98.75 | 99.75 | 98.25 | 99.88 | 98.60 | 98.50 | 100.00 | 100.00 | 97.50 |
| 10 | 77.00 | 97.25 | 95.62 | 81.25 | 89.88 | 96.63 | 96.20 | 96.40 | 90.75 | 81.79 | 96.88 |
| 11 | 95.75 | 99.25 | 96.38 | 99.12 | 75.13 | 99.38 | 93.20 | 93.60 | 100.00 | 94.22 | 99.25 |
| 12 | 99.62 | 99.75 | 100.00 | 100.00 | 99.88 | 99.50 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 13 | 95.38 | 94.75 | 96.00 | 94.12 | 95.25 | 96.13 | 96.40 | 96.40 | 100.00 | 100.00 | 98.38 |
| 14 | 99.25 | 99.88 | 100.00 | 99.88 | 100.00 | 99.88 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 |
| 16 | 86.75 | 100.00 | 97.62 | 97.25 | 92.88 | 99.13 | 97.10 | 97.10 | 96.10 | 70.38 | 100.00 |
| 17 | 97.62 | 97.38 | 98.00 | 96.88 | 96.63 | 98.13 | 97.80 | 97.90 | 100.00 | 100.00 | 97.62 |
| 18 | 90.88 | 89.75 | 91.12 | 90.00 | 89.75 | 99.25 | 91.90 | 91.60 | 100.00 | 100.00 | 89.50 |
| 19 | 52.62 | 99.88 | 99.88 | 98.00 | 90.38 | 99.88 | 99.90 | 99.90 | 89.02 | 87.57 | 99.75 |
| 20 | 84.62 | 91.50 | 92.38 | 93.25 | 91.13 | 97.63 | 92.10 | 92.10 | 97.11 | 97.11 | 91.37 |
| 21 | 57.63 | 68.62 | 58.13 | 95.25 | 56.63 | – | 63.40 | 64.80 | 55.64 | 42.49 | 99.00 |
| 3 | 10.00 | 14.50 | 16.75 | 25.12 | 2.25 | 73.03 | 9.20 | 10.40 | 82.23 | 63.01 | 91.13 |
| 9 | 13.12 | 9.88 | 14.25 | 14.25 | 2.13 | 92.26 | 7.90 | 9.00 | 91.33 | 61.71 | 95.87 |
| 15 | 10.50 | 28.62 | 24.62 | 23.50 | 7.75 | 99.50 | 44.80 | 52.90 | 60.40 | 44.36 | 91.50 |
| AFAR | 4.94 | 5.65 | 6.67 | 4.11 | 1.16 | – | 3.00 | 3.20 | 0.00 | 0.09 | 2.29 |
| AFDR | 78.86 | 85.04 | 84.67 | 85.91 | 80.28 | – | 85.10 | 85.70 | 90.93 | 83.95 | 97.37 |
| Fault | RATrans -Former [25] | CGST -AE [23] | TKAN [15] | AAE [26] | DALSTM -AE [24] | KD-MBVAE [28] | DAE-PCA [27] | ANCA [29] | SMK-DCA | |||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 99.87 | 99.60 | 99.30 | 99.75 | 100.00 | 100.00 | 99.00 | 100.00 | 99.87 | 98.00 | 35.50 | 99.50 |
| 2 | 98.50 | 98.50 | 97.50 | 98.88 | 98.00 | 99.00 | 98.00 | 98.62 | 98.00 | 96.50 | 90.00 | 97.75 |
| 4 | 100.00 | 99.90 | 99.80 | 98.88 | 100.00 | 100.00 | 100.00 | 100.00 | 92.00 | 97.30 | 5.60 | 100.00 |
| 5 | 98.62 | 99.90 | 99.30 | 41.63 | 100.00 | 100.00 | 100.00 | 100.00 | 9.87 | 98.10 | 27.10 | 99.88 |
| 6 | 100.00 | 99.90 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 98.00 | 95.30 | 100.00 |
| 7 | 100.00 | 99.90 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 99.12 | 98.40 | 33.50 | 100.00 |
| 8 | 99.37 | 98.40 | 97.10 | 99.13 | 98.00 | 99.00 | 97.00 | 98.25 | 97.75 | 100.00 | 94.90 | 97.50 |
| 10 | 85.00 | 88.00 | 66.60 | 68.75 | 94.00 | 86.00 | 78.00 | 88.87 | 74.00 | 93.10 | 29.80 | 96.88 |
| 11 | 83.63 | 95.60 | 69.00 | 81.25 | 96.00 | 81.00 | 99.00 | 83.25 | 57.62 | 97.80 | 22.00 | 99.25 |
| 12 | 99.75 | 99.80 | 98.90 | 99.38 | 100.00 | 100.00 | 100.00 | 99.75 | 99.75 | 98.50 | 99.10 | 100.00 |
| 13 | 95.50 | 95.80 | 94.40 | 95.38 | 95.00 | 95.00 | 95.00 | 95.37 | 94.00 | 93.00 | 92.40 | 98.38 |
| 14 | 100.00 | 99.90 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 99.87 | 98.50 | 0.00 | 99.88 |
| 16 | 91.12 | 91.30 | 75.50 | 63.13 | 98.00 | 94.00 | 89.00 | 92.50 | 89.87 | 100.00 | 13.60 | 100.00 |
| 17 | 97.00 | 97.80 | 95.10 | 93.38 | 98.00 | 96.00 | 97.00 | 97.12 | 82.12 | 100.00 | 27.50 | 97.62 |
| 18 | 91.62 | 91.90 | 89.30 | 93.13 | 91.00 | 91.00 | 95.00 | 90.62 | 90.25 | 90.90 | 88.00 | 89.50 |
| 19 | 74.00 | 67.90 | 22.00 | 20.63 | 100.00 | 90.00 | 95.00 | 94.50 | 88.62 | 92.60 | 0.40 | 99.75 |
| 20 | 77.88 | 81.40 | 68.60 | 72.75 | 92.00 | 90.00 | 90.00 | 86.25 | 74.12 | 90.00 | 20.60 | 91.37 |
| 21 | 49.75 | 64.50 | 65.90 | 47.88 | 58.00 | 62.00 | 63.00 | 61.00 | 34.37 | 73.40 | 47.00 | 99.00 |
| 3 | 16.00 | 17.90 | – | 21.13 | 11.00 | 8.00 | 4.00 | 7.50 | 4.00 | 98.00 | 11.90 | 91.13 |
| 9 | 15.00 | 16.80 | – | 16.63 | 8.00 | 8.00 | 5.00 | 5.50 | 2.88 | 98.30 | 1.90 | 95.87 |
| 15 | 23.50 | 21.90 | – | 31.50 | 17.00 | 20.00 | 8.00 | 13.25 | 5.00 | 38.00 | 11.10 | 91.50 |
| AFAR | 4.58 | 5.90 | – | 8.66 | 4.33 | – | – | 2.41 | 2.05 | 1.50 | 1.50 | 2.29 |
| AFDR | 85.53 | 82.20 | 85.50 | 73.49 | 83.52 | 81.86 | 81.52 | 81.54 | 71.12 | 92.78 | 40.34 | 97.37 |
| Fault | DD (Samples) | ||
|---|---|---|---|
| Fault 3 | 160 | 160 | 0 |
| Fault 9 | 160 | 162 | 2 |
| Fault 15 | 160 | 228 | 68 |
| Fault | SMKSA | SMK-DCA w/o Cyclic | SMK-CSA | SMM-DCA | SMK-DCA w/o FiLM | SMK-DCA-AE | SMK-DCA w/o MTR | SMK-DCA | ||
|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 99.75 | 99.75 | 99.62 | 99.75 | 99.38 | 99.50 | 99.38 | 99.50 | 99.25 | 99.50 |
| 2 | 98.38 | 98.12 | 97.88 | 98.12 | 97.38 | 97.75 | 97.38 | 97.62 | 97.75 | 97.75 |
| 4 | 100.00 | 99.62 | 100.00 | 100.00 | 99.88 | 100.00 | 99.75 | 100.00 | 99.62 | 100.00 |
| 5 | 28.88 | 100.00 | 99.88 | 100.00 | 99.75 | 99.88 | 99.75 | 99.88 | 99.75 | 99.88 |
| 6 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 | 100.00 |
| 7 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 | 100.00 |
| 8 | 97.88 | 97.62 | 97.50 | 97.62 | 97.25 | 97.38 | 97.25 | 97.38 | 97.25 | 97.50 |
| 10 | 51.75 | 79.87 | 97.25 | 97.12 | 96.63 | 96.88 | 96.50 | 96.75 | 93.88 | 96.88 |
| 11 | 78.75 | 65.12 | 99.25 | 99.25 | 99.12 | 99.62 | 99.00 | 99.25 | 98.75 | 99.25 |
| 12 | 99.12 | 99.75 | 99.88 | 99.88 | 100.00 | 100.00 | 100.00 | 100.00 | 99.62 | 100.00 |
| 13 | 95.25 | 94.87 | 94.75 | 94.88 | 96.63 | 100.00 | 95.38 | 94.87 | 93.88 | 98.38 |
| 14 | 100.00 | 100.00 | 99.88 | 99.88 | 99.88 | 99.88 | 99.88 | 99.88 | 99.75 | 99.88 |
| 16 | 42.38 | 82.50 | 100.00 | 100.00 | 100.00 | 99.25 | 100.00 | 100.00 | 100.00 | 100.00 |
| 17 | 95.00 | 93.63 | 99.25 | 100.00 | 97.12 | 97.38 | 97.00 | 97.38 | 97.00 | 97.62 |
| 18 | 90.00 | 89.62 | 90.12 | 90.25 | 89.25 | 89.50 | 89.25 | 89.50 | 89.12 | 89.50 |
| 19 | 38.37 | 75.62 | 99.88 | 99.88 | 99.38 | 99.75 | 99.25 | 99.50 | 94.88 | 99.75 |
| 20 | 55.87 | 86.00 | 91.75 | 91.75 | 91.13 | 91.37 | 91.00 | 91.25 | 89.50 | 91.37 |
| 21 | 51.12 | 42.00 | 71.13 | 84.50 | 90.38 | 97.62 | 90.00 | 90.00 | 67.50 | 99.00 |
| 3 | 4.25 | 0.00 | 41.50 | 100.00 | 93.50 | 85.62 | 93.88 | 95.63 | 66.62 | 91.13 |
| 9 | 3.75 | 0.13 | 37.00 | 100.00 | 81.87 | 92.38 | 82.00 | 87.62 | 59.38 | 95.87 |
| 15 | 5.25 | 0.50 | 47.00 | 64.12 | 40.88 | 91.75 | 41.00 | 73.75 | 27.50 | 91.50 |
| AFAR | 2.05 | 0.00 | 6.82 | 7.02 | 2.80 | 2.56 | 2.68 | 3.54 | 3.15 | 2.29 |
| AFDR | 68.37 | 76.41 | 88.74 | 96.05 | 93.78 | 96.93 | 93.70 | 95.70 | 89.08 | 97.37 |
| Fault | S1 | S2 | S3 | S4 | S5 | S6 | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| w/o | Cyc. | w/o | Cyc. | w/o | Cyc. | w/o | Cyc. | w/o | Cyc. | w/o | Cyc. | |
| 1 | 100.00 | 99.62 | 100.00 | 99.62 | 99.75 | 99.50 | 99.75 | 99.50 | 99.75 | 99.62 | 100.00 | 99.62 |
| 2 | 100.00 | 97.75 | 100.00 | 97.88 | 98.25 | 97.75 | 98.12 | 97.75 | 99.12 | 97.75 | 100.00 | 97.75 |
| 4 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 5 | 100.00 | 100.00 | 100.00 | 99.88 | 100.00 | 99.88 | 100.00 | 99.88 | 100.00 | 99.88 | 100.00 | 99.88 |
| 6 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 7 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 8 | 97.62 | 97.38 | 100.00 | 97.50 | 97.62 | 97.38 | 97.62 | 97.50 | 97.62 | 97.38 | 97.50 | 97.38 |
| 10 | 99.00 | 96.88 | 100.00 | 96.88 | 97.25 | 96.88 | 97.12 | 96.88 | 97.00 | 96.88 | 97.25 | 96.88 |
| 11 | 100.00 | 99.25 | 100.00 | 99.25 | 100.00 | 99.25 | 99.25 | 99.25 | 100.00 | 99.25 | 100.00 | 99.25 |
| 12 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 | 99.88 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 13 | 100.00 | 95.38 | 100.00 | 95.25 | 97.00 | 94.88 | 94.88 | 98.38 | 100.00 | 94.88 | 100.00 | 95.00 |
| 14 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 99.88 | 99.88 | 99.88 | 100.00 | 99.88 | 100.00 | 99.88 |
| 16 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 17 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 97.38 | 100.00 | 97.62 | 100.00 | 97.38 | 100.00 | 97.38 |
| 18 | 100.00 | 90.50 | 100.00 | 91.38 | 90.25 | 89.62 | 90.25 | 89.50 | 99.62 | 90.00 | 100.00 | 89.62 |
| 19 | 100.00 | 99.75 | 100.00 | 99.88 | 99.88 | 99.62 | 99.88 | 99.75 | 99.88 | 99.75 | 100.00 | 99.75 |
| 20 | 91.75 | 91.25 | 100.00 | 91.25 | 91.62 | 91.25 | 91.75 | 91.37 | 91.62 | 91.25 | 91.62 | 91.25 |
| 21 | 100.00 | 84.75 | 100.00 | 84.62 | 100.00 | 80.25 | 84.50 | 99.00 | 100.00 | 100.00 | 100.00 | 100.00 |
| 3 | 100.00 | 100.00 | 100.00 | 100.00 | 100.00 | 95.25 | 100.00 | 91.13 | 100.00 | 99.12 | 100.00 | 96.88 |
| 9 | 100.00 | 99.50 | 100.00 | 100.00 | 97.12 | 88.38 | 100.00 | 95.87 | 100.00 | 88.25 | 100.00 | 88.00 |
| 15 | 100.00 | 70.88 | 100.00 | 68.88 | 94.88 | 70.25 | 64.12 | 91.50 | 100.00 | 83.50 | 100.00 | 81.38 |
| AFAR | 39.82 | 6.70 | 75.09 | 6.34 | 13.27 | 2.20 | 7.02 | 2.29 | 11.46 | 5.54 | 19.38 | 5.27 |
| AFDR | 99.45 | 96.33 | 100.00 | 96.30 | 98.27 | 95.11 | 96.05 | 97.37 | 99.27 | 96.89 | 99.35 | 96.66 |
| Bandwidth Setting | FDR (%) of Fault 3 | FDR (%) of Fault 9 | FDR (%) of Fault 15 | AFAR (%) | AFDR (%) | |
|---|---|---|---|---|---|---|
| Scott | 1.389884 | 91.50 | 96.12 | 91.75 | 2.38 | 97.43 |
| Scott | 1.401600 | 91.13 | 95.87 | 91.50 | 2.29 | 97.37 |
| Scott | 1.415872 | 90.88 | 95.62 | 91.38 | 2.08 | 97.30 |
| Silverman | 1.404795 | 91.12 | 95.88 | 91.38 | 2.17 | 97.35 |
| Fault 3 FDR (%) | Fault 9 FDR (%) | Fault 15 FDR (%) | AFAR (%) | AFDR (%) | |
|---|---|---|---|---|---|
| 0.05 | 97.13 | 88.00 | 72.25 | 2.53 | 95.58 |
| 0.10 | 100.00 | 88.88 | 77.00 | 3.33 | 96.18 |
| 0.15 | 91.13 | 95.87 | 91.50 | 2.29 | 97.37 |
| 0.20 | 99.75 | 88.50 | 73.75 | 2.74 | 95.86 |
| Item | Value |
|---|---|
| Method | SMK-DCA |
| SVD time (ms/sample) | 0.0241 |
| Network inference time (ms/sample) | 0.4488 |
| Total latency (ms/sample) | 0.4729 |
| Sampling period | 1000 ms |
| Compatible with sampling period | Yes |
| Test peak GPU memory (MB) | 5829.03 |
| Methods | Fault 1 | Fault 2 |
|---|---|---|
| CVRSA [9] | 1.45/97.90 | 5.40/89.80 |
| SFSA [10] | 1.95/97.60 | 6.05/88.40 |
| PTMD [46] | 1.40/96.80 | 0.00/65.50 |
| OTSMD [5] | 7.80/96.95 | 13.25/83.70 |
| DePPCA() [8] | 2.15/23.70 | 16.35/68.55 |
| DePPCA() [8] | 2.95/95.45 | 4.35/57.45 |
| SAGE-FA [7] | 1.15/8.00 | 11.65/48.45 |
| RATransformer [25] | 1.85/47.55 | 11.45/72.90 |
| AAE [26] | 1.35/2.25 | 2.30/10.35 |
| DALSTM-AE [24] | 0.30/0.30 | 0.75/5.35 |
| DAE-PCA() [27] | 1.60/0.80 | 0.60/0.50 |
| DAE-PCA(Q) [27] | 2.05/88.15 | 8.10/59.40 |
| KD-MBVAE() [28] | 4.00/23.80 | 7.65/46.55 |
| KD-MBVAE() [28] | 3.55/97.35 | 89.30/100.00 |
| SMK-DCA | 0.05/97.50 | 1.55/98.60 |
| Fault | DD (Samples) | ||
|---|---|---|---|
| Fault 1 | 2001 | 2011 | 10 |
| Fault 2 | 2001 | 2029 | 28 |
| Method | Fault 1 | Fault 2 | ||
|---|---|---|---|---|
| FAR (%) | FDR (%) | FAR (%) | FDR (%) | |
| -SMKSA | 0.00 | 0.00 | 0.15 | 0.50 |
| -SMKSA | 0.00 | 0.00 | 0.00 | 0.00 |
| -SMKSA | 1.45 | 97.50 | 0.00 | 21.30 |
| SMK-DCA w/o Cyclic | 21.05 | 97.45 | 78.25 | 100.00 |
| SMK-CSA | 0.00 | 97.40 | 12.15 | 96.55 |
| SMM-DCA | 1.25 | 97.65 | 5.30 | 98.80 |
| SMK-DCA w/o FiLM | 0.00 | 97.40 | 17.80 | 100.00 |
| SMK-DCA-AE | 1.25 | 97.40 | 21.95 | 97.05 |
| SMK-DCA w/o MTR | 73.05 | 97.65 | 84.20 | 100.00 |
| SMK-DCA | 0.05 | 97.50 | 1.55 | 98.60 |
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© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Yu, X.; Gong, Y.; Chen, M. Self-Modulated KAN-DCA for Incipient Fault Detection in Industrial Processes. Processes 2026, 14, 1512. https://doi.org/10.3390/pr14101512
Yu X, Gong Y, Chen M. Self-Modulated KAN-DCA for Incipient Fault Detection in Industrial Processes. Processes. 2026; 14(10):1512. https://doi.org/10.3390/pr14101512
Chicago/Turabian StyleYu, Xiaomin, Yingchuan Gong, and Maoyin Chen. 2026. "Self-Modulated KAN-DCA for Incipient Fault Detection in Industrial Processes" Processes 14, no. 10: 1512. https://doi.org/10.3390/pr14101512
APA StyleYu, X., Gong, Y., & Chen, M. (2026). Self-Modulated KAN-DCA for Incipient Fault Detection in Industrial Processes. Processes, 14(10), 1512. https://doi.org/10.3390/pr14101512
