260 likes | 394 Views
RESULTS OF THE CONTRIBUTIONS TO THE COMPETITION ON WIND TURBINE FAULT DETECTION AND ISOLATION. Presented by Peter Fogh Odgaard* At Wind Turbine Control Symposium at Aalborg University 28 th -29 th November 2011 *kk-electronic a/s, Denmark, peodg@kk-electronic.com
E N D
RESULTS OF THE CONTRIBUTIONS TO THE COMPETITION ON WIND TURBINE FAULT DETECTION AND ISOLATION Presented by Peter Fogh Odgaard* At Wind Turbine Control Symposium at Aalborg University 28th-29th November 2011 *kk-electronic a/s, Denmark, peodg@kk-electronic.com Contributions from: Stoustrup, J., Kinnaert, M., Laouti, N., Sheibat-Othman, N., Othman, S., Zhang, X., Zhang, Q., Zhao, S., Ferrari, R. M., Polycarpou, M. M., Parisini, T., Ozdemir, A., Seiler, P., Balas, G., Chen, W., Ding, S., Sari, A., Naik, A., Khan, A., Yin, S., Svard, C. & Nyberg, M.
Outline • Motivation • FDI/FTC Benchmark Model and Competition • Description of Selected Contributions • Results of the Selected Contributions • Planned Continuations • Is the Objectives meet?
Motivation • Increased reliability is of high important in order to minimize cost of energy of wind turbines. • Fault Detection and isolation (FDI) and Fault Tolerant Control (FTC) are some of the important solutions in obtaining this.
Objective • The benchmark model1 and competition should: • To attract attention from Academia to the FDI & FTC problem on wind turbines. • Provide a platform some how relating to wind turbines which all can use, and which can be used for comparisons. • A part of showing the potential of FDI and FTC in Wind Turbines. 1Odgaard, P.; Stoustrup, J. & Kinnaert, M. Fault Tolerant Control of Wind Turbines – a benchmark model Proceedings of the 7th IFAC Symposium on Fault Detection, Supervision and Safety of Technical Processes, 2009, 155-160
FDI/FTC Benchmark • A generic 4.8MW wind turbine is used.
Model Details • Pitch actuators Second order transfer function with constraints for each blade. Close loop system. • Converter First order transfer function with constraints. Close loop system. • Drive train modeled with a 3 state model. Including inertias from generator and rotor. • Simple Cp curve based aerodynamic model • Sensors modeled by band limited random noise blocks.
Faults • Sensor Faults • 1m1 fixed to 5 deg. 2000s-2100s • 2m2 scaled with a factor of 1.2. 2300s-2400s • 3m1fixed to 10 deg. 2600s-2700s • r,m1fixed to 1.4 rad/s. 1500s-1600s • r,m2 scaled with 1.1 and g,m1 scaled with 0.9. 1000s-1100s
Faults (II) • Actuator Faults • Hydraulic pressure drop in pitch actuator 2. Abrupt changed actuator dynamics. 2900s-3000s. • Increased air content in hydraulic oil in pitch actuator 3. Slowly changing actuator dynamics. 3500s-3600s. • Offset on with 100 Nm. 3800s- 3900s. • System Faults • Changed dynamics of drive train 4100s-4300s
Faults III • Seven additional tests were performed with time shifted fault occurrences, resulting in other point of operations for the faults.
FDI Requirements • Requirements to detection times • Sensors 10Ts • Converter 3Ts • Hydraulic oil leakage 8Ts • Air in oil 100Ts • Requirement to interval between false positive detections – 100000 samples, and three successive detections are accepted. • All faults should be detected.
Gausian Kernel Support Vector Machine solution2 • This scheme is based on a Support Vector Machine build on a Gaussian kernel. • In this design a vector of features is defined for each fault containing 2-4 relevant measurements, filtered measurements or combinations of these. • Data with and without faults were used for learning the model for FDI of the specific faults, based on this the vectors, kernel were found. 2Laouti, N., Sheibat-Othman, N. & Othman, S., Support Vector Machines for Fault Detection in Wind Turbines Proceedings of IFAC World Congress 2011, 2011, 7067-7072
Estimation Based solution3 • A fault detection estimator is designed to detect faults, and an additional bank of N isolation estimators are designed to isolate the faults. • Theestimators used for fault detection and isolation are designed based on the provided models including model parameters. • Each isolation estimator is designed based on a particular fault scenario under consideration. 3Zhang, X., Zhang, Q., Zhao, S., Ferrari, R. M., Polycarpou, M. M. & Parisini, T.Fault Detection and Isolation of the Wind Turbine Benchmark: An Estimation-Based Approach. Proceedings of IFAC World Congress 2011, 2011, 8295-8300
Up-Down Counter solution4 • Up-down counters are used in this solution for decision of fault detection and isolation based on residuals for each of the faults. • The fault detection and isolation residuals are based on residuals obtained by physical redundancy, parity equations and different filters. • Up-down counters based decisions depends on discrete-time dynamics and amplitude of the residuals. 4Ozdemir, A., Seiler, P. & Balas, G. Wind Turbine Fault Detection Using Counter-Based Residual ThresholdingProceedings of IFAC World Congress 2011, 2011, 8289-8294
Combined Observer and Kalman Filter solution5 • A diagnostic observer based residual generator is used for the faults in the Drive Train, in which the wind speed also is considered as a disturbance. It is decoupled from the disturbance and optimal. • A Kalman filter based scheme is designed for the other two subsystems. • GLR test and cumulative variance index are used for fault decision. • Filter banks are used for fault isolation. 5Chen, W., Ding, S., Sari, A., Naik, A., Khan, A. & Yin, S. Observer-based FDI Schemes for Wind Turbine Benchmark Proceedings of IFAC World Congress 2011, 2011, 7073-7078
General Fault Model solution6 • An automatic generated solution for FDI. • Main steps in the design are: • Generate a set of potential residual generators. • Select the most suitable residual • Design the diagnostic tests for the selected set of residual generators are designed. • A comparison between the estimated probability distributions of residuals is used for diagnostic tests and evaluated with current and no-fault data. 6Svard, C. & Nyberg, M. Automated Design of an FDI-System for the Wind Turbine Benchmark Proceedings of IFAC World Congress 2011, 2011, 8307-8315
Planned Continuations • Competition Part II – FTC – 2 invited sessions proposals submitted to IFAC Safeprocess 2012 • An extended version of this benchmark model by merging it with FAST. Planning a invited session on this for ACC 2013. Details and model available in primo 2012. With Kathryn Johnson • Competition Part III (2013) & Part IV (2014) on a simple wind farm model with faults. Details and model available in primo 2012. With JakobStoustrup
Is the Objective Meet? • Yes! • Higher than expected interest in the FDI and FTC parts of the competition. • General interest in the problem and benchmark model. • We hope to continue the momentum of this interest into the new initiatives.