| Literature DB >> 36028528 |
Hao Jiang1, Zegang Yu2, Yonghua Wang2, Baowei Zhang2, Jiuxiang Song2, Jingdian Wei2.
Abstract
Considering the under-maintenance and over-maintenance of existing equipment maintenance methods, this paper studies a Condition Based Maintenance method for silk dryers. The entropy method is used to eliminate the influence of subjective factors to more objectively reflect the weight of different input parameters; optimizing the number of nodes in the hidden layer of the network to improve the prediction accuracy; and using the GA-BP neural network to establish a state prediction model of the equipment to solve the disadvantages of the BP neural network, for example, unstable prediction, easily falling into local optimum, and slow global search ability. Simulation experiments show that this method can effectively compensate for the shortcomings of the existing maintenance methods, and provide an effective scientific basis for dryer state maintenance.Entities:
Mesh:
Substances:
Year: 2022 PMID: 36028528 PMCID: PMC9418324 DOI: 10.1038/s41598-022-17714-x
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.996
Figure 1GA-BP neural network flow chart.
Entropy weights of various factors on motor vibration acceleration.
| Correlation | q | Order |
|---|---|---|
| Actual moisture | 0.857 | 1 |
| output temperature | 0.835 | 2 |
| Ambient temperature | 0.723 | 4 |
| environment humidity | 0.572 | 7 |
| Three-phase current | 0.482 | 9 |
| Active power | 0.668 | 5 |
| Reactive power | 0.623 | 6 |
| Power factor | 0.813 | 3 |
| Active energy | 0.451 | 10 |
| Reactive energy | 0.430 | 11 |
| frequency | 0.489 | 8 |
Entropy weights of various factors on equipment lubrication status.
| Correlation | q | Order |
|---|---|---|
| Actual moisture | 0.887 | 1 |
| output temperature | 0.821 | 2 |
| Ambient temperature | 0.792 | 3 |
| environment humidity | 0.759 | 4 |
| Three-phase current | 0.463 | 8 |
| Active power | 0.621 | 6 |
| Reactive power | 0.582 | 7 |
| Power factor | 0.698 | 5 |
| Active energy | 0.437 | 10 |
| Reactive energy | 0.414 | 11 |
| frequency | 0.428 | 9 |
Figure 2BP neural network model structure.
Comparison of the number of neurons in different hidden layers.
| Hidden layer neuron | Proportion reached /% | Running time/s |
|---|---|---|
| 3 | 62 | 3.53 |
| 5 | 71 | 3.25 |
| 7 | 79 | 3.12 |
| 9 | 90 | 2.85 |
| 11 | 87 | 2.82 |
| 13 | 82 | 2.78 |
Algorithm parameter settings.
| Training times | Number of input layers | Number of hidden layers | Number of output layers | |
|---|---|---|---|---|
| 1000 | 7 | 9 | 2 |
Figure 3Forecast results.
Figure 4Prediction error.
Prediction error of motor vibration acceleration/%.
| Vibration acceleration | 01 | 02 | 03 | 04 | 05 | 06 | 07 | 08 | 09 | 10 |
|---|---|---|---|---|---|---|---|---|---|---|
| GA-BP | 0.4 | 4.1 | 0.1 | 0.9 | 0.4 | 0.3 | 0.8 | 2.9 | 0.9 | 5.8 |
| BP | 3.8 | 3.4 | 6.0 | 6.5 | 4.6 | 3.0 | 4.5 | 4.9 | 4.9 | 6.2 |
Prediction error of equipment lubrication degree/%.
| Lubrication status | 01 | 02 | 03 | 04 | 05 | 06 | 07 | 08 | 09 | 10 |
|---|---|---|---|---|---|---|---|---|---|---|
| GA-BP | 3.3 | 10.1 | 6.5 | 26.0 | 22.1 | 1.5 | 19.4 | 8.5 | 2.7 | 50.5 |
| BP | 15.0 | 3.8 | 13.3 | 39.9 | 85.4 | 22.6 | 34.4 | 28.6 | 32.1 | 85.5 |