Generalizable Temperature Nowcasting with Physics-Constrained RNNs for Predictive Maintenance of Wind Turbine Components (2404.04126v1)
Abstract: Machine learning plays an important role in the operation of current wind energy production systems. One central application is predictive maintenance to increase efficiency and lower electricity costs by reducing downtimes. Integrating physics-based knowledge in neural networks to enforce their physical plausibilty is a promising method to improve current approaches, but incomplete system information often impedes their application in real world scenarios. We describe a simple and efficient way for physics-constrained deep learning-based predictive maintenance for wind turbine gearbox bearings with partial system knowledge. The approach is based on temperature nowcasting constrained by physics, where unknown system coefficients are treated as learnable neural network parameters. Results show improved generalization performance to unseen environments compared to a baseline neural network, which is especially important in low data scenarios often encountered in real-world applications.
- Bearing temperature monitoring of a Wind Turbine using physics-based model. Journal of Quality in Maintenance Engineering, 23(4):479–488, 2017.
- Availability, operation and maintenance costs of offshore wind turbines with different drive train configurations. 20(2):361–378, 2017.
- New Tendencies in Wind Energy Operation and Maintenance. Applied Sciences, 11(4):1386, 2021.
- Physics informed neural networks for control oriented thermal modeling of buildings. Applied Energy, 314, 2022.
- Reliability of Wind Turbines. In Joachim Peinke, Peter Schaumann, and Stephan Barth (eds.), Wind Energy (Proceedings of the Euromech Colloquium), pp. 329–332. Springer Berlin Heidelberg, 2007.
- Long Short-Term Memory. Neural Computation, 9(8):1735–1780, 1997.
- Physics-informed machine learning. Nature Reviews Physics, 3(6):422–440, 2021.
- A survey of artificial neural network in wind energy systems. Applied Energy, 228:1822–1836, 2018.
- Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations. Journal of Computational Physics, 378:686–707, 2019.
- Wind Turbine Failures - Tackling current Problems in Failure Data Analysis. Journal of Physics: Conference Series, 753:072027, 2016.
- Maintenance optimization and inspection planning of wind energy assets: Models, methods and strategies. 192:105993, 2019.
- An integrated fault diagnosis and prognosis approach for predictive maintenance of wind turbine bearing with limited samples. Renewable Energy, 145:642–650, 2020.
- Wind turbine condition monitoring by the approach of SCADA data analysis. Renewable Energy, 53:365–376, 2013.
- Yigit A. Yucesan and Felipe A. C. Viana. A hybrid physics-informed neural network for main bearing fatigue prognosis under grease quality variation. Mechanical Systems and Signal Processing, 171, 2022.
- Zhenyou Zhang. Comparison of Data-driven and Model-based Methodologies of Wind Turbine Fault Detection with SCADA Data. 2014.
- Johannes Exenberger (1 paper)
- Matteo Di Salvo (1 paper)
- Thomas Hirsch (5 papers)
- Franz Wotawa (13 papers)
- Gerald Schweiger (8 papers)