Comparative Study on Health Monitoring of a Marine Engine Using Multivariate Physics-Based Models and Unsupervised Data-Driven Models
Abstract
:1. Introduction
2. Theory of Data-Driven Models
2.1. Principle Component Analysis
2.2. Sparse Autoencoder Model
2.3. Status Indicator for Machine Health
3. Physics-Based Multivariate Models
4. Marine Engine Test Rig
5. Case Studies
5.1. Filter Blockage
5.2. Cylinder Leakage
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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No. | Short Form | Detail |
---|---|---|
1 | Pressure Intake Air | Intake air pressure of engine |
2 | Pressure Coolant In | Internal coolant water pressure at inlet |
3 | Pressure Coolant Out | Internal coolant water pressure at outlet |
4 | Pressure Cy1 Exhaust | Exhaust air pressure of cylinder 1 |
5 | Pressure Cy2 Exhaust | Exhaust air pressure of cylinder 2 |
6 | Pressure Fuel Supply | Pressure of fuel supply to engine |
7 | Pressure Ex Water In | External coolant water pressure at inlet |
8 | Pressure Ex Water Out | External coolant water pressure at outlet |
9 | Pressure Lub Oil | Lube oil pressure |
10 | Pressure Water Tank | Water pressure in water tank/load level |
11 | Engine Speed RPM | Averaged rotating speed of shaft |
12 | Temperature Gearbox | Gearbox housing temperature |
13 | Temperature Bushing | Journal bearing (before propeller) oil temperature |
14 | Temperature Coolant in | Internal coolant water temperature at inlet |
15 | Temperature Coolant Out | Internal coolant water temperature at outlet |
16 | Temperature Cy1 Exhaust | Exhaust air temperature of cylinder 1 |
17 | Temperature Cy2 Exhaust | Exhaust air temperature of cylinder 2 |
18 | Temperature Ex Water In | External coolant water temperature at inlet |
19 | Temperature Ex Water Out | External coolant water temperature at outlet |
20 | Temperature Lub Oil | Lube oil temperature |
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Fu, C.; Liang, X.; Li, Q.; Lu, K.; Gu, F.; Ball, A.D.; Zheng, Z. Comparative Study on Health Monitoring of a Marine Engine Using Multivariate Physics-Based Models and Unsupervised Data-Driven Models. Machines 2023, 11, 557. https://doi.org/10.3390/machines11050557
Fu C, Liang X, Li Q, Lu K, Gu F, Ball AD, Zheng Z. Comparative Study on Health Monitoring of a Marine Engine Using Multivariate Physics-Based Models and Unsupervised Data-Driven Models. Machines. 2023; 11(5):557. https://doi.org/10.3390/machines11050557
Chicago/Turabian StyleFu, Chao, Xiaoxia Liang, Qian Li, Kuan Lu, Fengshou Gu, Andrew D. Ball, and Zhaoli Zheng. 2023. "Comparative Study on Health Monitoring of a Marine Engine Using Multivariate Physics-Based Models and Unsupervised Data-Driven Models" Machines 11, no. 5: 557. https://doi.org/10.3390/machines11050557
APA StyleFu, C., Liang, X., Li, Q., Lu, K., Gu, F., Ball, A. D., & Zheng, Z. (2023). Comparative Study on Health Monitoring of a Marine Engine Using Multivariate Physics-Based Models and Unsupervised Data-Driven Models. Machines, 11(5), 557. https://doi.org/10.3390/machines11050557