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Master Thesis Presentation Blade Load Estimations by a Load Database for an Implementation in SCADA Systems 22-5-2017 Carlos Ochoa A. TUD idnr. 4145658 TU/e idnr. 0756832 October 23Th, 2012 Delft University of Technology Challenge the future CONTENTS 1. Introduction 2. Objective 3. OWEZ Data 4. Method 5. Load Comparison Between Turbines 6. Load Database Construction 7. Database Estimators Validation 8. Conclusions Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 2 1. Introduction • Real Wind Conditions Z Different inflow parameters affect the FT(V,u,z) turbine behavior, factors as: • Wind Speed • Wind Shear Occurrences MY(Ω) FG • Turbulence • Atmospheric stability • etc. All these parameters have an impact over the forces and moments of the turbine. Y Ω Q(V) Turbulence Wind Speed X FC Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 3 1. Introduction • Real Wind Conditions • Loads and Fatigue The cyclic loads affects the fatigue in the materials, this limits the lifetime of a wind turbine. In a wind turbine, the blades are structural components that have the largest provability of failure after determinate period. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 4 1. Introduction • Real Wind Conditions • Fatigue • SCADA Collect, monitor & storage of turbine behavior through the Standards Signals: • Generator rotational speed and acceleration • Electrical power output. • Pitch angle. • Lateral and longitudinal tower top acceleration. • Wind Speed and wind direction. Only the main Statistics of the selected variables are computed. • Min, max, average & standard deviation. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 5 2. Objectives Develop a method to estimate the blade load behavior by retrieving information from a measurement database depending on the standard signals of the wind turbine, which are usually stored by the SCADA system. How accurate are the fatigue damages and the cumulative fatigue estimations when comparing them against other load estimation methods results? Neural Networks Regression Techniques Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 6 3. OWEZ Data High frequency measurement data (32Hz) from two turbines were obtained trough a measuring campaign at OWEZ. 41 different signals were measured for each different turbine for several months. Key Signals Measured (32Hz): •Stain signals from the root of the blade • Edgewise • Flapwise •Other 70 signals • Standard signals Standard Reconstruction of SCADA data Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 7 4. Method The data was classified depending on the turbine, mean winds speed and turbulence intensity. Under each wind inflow condition different load behavior is produced. From these, Rainflow counting matrixes and load amplitudes histograms are obtained. From the load amplitude histograms, Load time Series Site Inflow Condition Characterization load estimators can be derived. The database. To perform elements of a the load estimation, the database can be retrieved by the use of the SCADA Turbulence Intensity groups of estimators are storage on a 2 4 6 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 8 10 12 14 16 18 20 22 24 30 Rainflow Counting Matrixes 28 26 24 22 0 20 Histograms Load Amplitude 18 16 14 12 Load Distribution 10 Functions 2940 8 6 4 2 2 4 6 8 10 12 14 16 18 20 22 24 Load Estimators Mean Wind Speed m s data. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 8 4. Method Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 9 4. Method To convert the Rainflow cycle matrixes to load histograms certain material characteristics were assumed. The geometry of the blade root (thickness and chord) was estimated. Stress Load Amplitude S [MPa] S-N Curve for the Assumed Material 300 250 A linear Goodman diagram was obtained from the use of the 200 150 assumed blade characteristics. By its use, load cycle histograms Red. Chi-S R^2 qr 1359.72611 0.54569 Equation 100 S = a N ^b Coefficient a b Value 433.668 Std Err or 9.6486 -0.09242 0.00247 were obtained. 50 2 10 3 10 4 10 5 10 6 10 7 10 Cycles to Failure N Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 10 5. Load Comparison Between Turbines From the OWEZ data, the load patterns from both turbines were compared. From all the wind conditions, the comparison results shown a remarkable similitude between loads. Histogram for the Wind Bin at 11 13 m s and 15 13 TI Case with Bins of 5 KNm. Edgewise Distribution Flapwise Distribution Ocurrences Ocurrences NNFlap Flap Ocurrences Ocurrences NNFlap Flap 100 100 10 10 1 1 0.1 0.1 0.01 0.01 0.001 00 200 400 600 800 200 400 600 800 Cycle Amplitude Amplitude KNm Cycle KNm 100 100 10 10 1 1 0.1 0.1 0.01 0.001 0.01 0 0 200 400 600 800 200 400 600 800 Cycle Amplitude KNm Cycle Amplitude KNm • Turbine 8 • Turbine 7 Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 11 6. Load Database Construction All the inflow condition measured were processed to obtain the load database. Interesting patterns came up when analyzing the changes of the load behavior trough the wind speed. Especially in the edgewise direction. Edgewise Mean Peak Load Variation with the Wind Speed Mean Loading (KNm) 500 400 300 200 100 0 4 8 12 16 20 24 Wind Speed (m/s) Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 12 6. Load Database Construction In contrast, other patterns came up when analyzing the load behavior changes trough the turbulence intensity. Edgewise Site Inflow Condition Characterization 4 6 8 10 12 14 16 18 20 22 24 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 2 4 6 0 Site Inflow Condition Characterization 2940 2 8 10 12 14 16 18 20 22 24 Mean Wind Speed m s Mean Wind Speed 7m/s. Turbulence Intensity: • 9% • 11% • 13% • 15% • 17% Turbulence Intensity Turbulence Intensity 2 4 6 8 10 12 14 16 18 20 22 24 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 2 4 6 0 2940 8 10 12 14 16 18 20 22 24 Mean Wind Speed m s Flapwise Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 13 6. Load Database Construction From all the load histograms generated, load distributions functions were constructed; all these were normalized to 10-min. All the load distribution functions were made by piecewise functions, for the edgewise case three polynomials were used. For the flapwise functions only two functions were used. Site Inflow Condition Characterization Turbulence Intensity 2 4 6 8 10 12 14 16 18 20 22 24 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 2 4 6 0 2940 8 10 12 14 16 18 20 22 24 Mean Wind Speed m s To fit better the tail behavior, a moving average with a ratio of 1:5 was used . The tails were fitted with a linear or a quadratic function in the logarithmic scale. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 14 6. Load Database Construction Respect to the idling condition, it was characterized only for all the speeds lower the cut-in wind speed. It was interesting to note the apparent gravity peak pattern seen in the flapwise direction. The same gravity peak appear at power production cases with low winds speeds. It is caused by the high pitching angles of the idling conditions. In the edgewise direction, it causes the appearance of a double peak. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 15 6. Load Database Construction From all the load distribution functions load estimators can be derived; they can take form as equivalent loads, fatigue damages or even maximum load values were obtained. The next are examples from the fatigue damages normalized for 10-min. Linear fatigue damage increase with the turbulence intensity for the edgewise direction, exponential for flapwise. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 16 7. Database Estimators Validation When comparing a single random 10-min. load sequence with the load distributions from the database, it was observed they does not match well. Scatter appears especially at the tail of the edgewise distribution. Site Inflow Condition Characterization Turbulence Intensity 2 4 6 8 10 12 14 16 18 20 22 24 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 30 28 26 24 22 20 18 16 14 12 10 8 6 4 2 2 4 6 0 2940 8 10 12 14 16 18 20 22 24 Mean Wind Speed m s Furthermore, it was noticed the histogram data points show spaces between bin counts. Not every 5KNm in the cycle load amplitude axis has a count. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 17 7. Database Estimators Validation From the database constructed is possible to estimate the cumulative fatigue of such turbine. It can be estimated with the database information and compared with the sum of all the 10-min. calculated fatigue damages. From: 200-300 KNm 11/20 counts From: 650 -700 KNm 7/10 counts The error range from 31.4% and 41%. They can be attributed to the scatter and the missed counts trough each single load histogram. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 18 7. Database Estimators Validation It was possible to improve the cumulative fatigue estimation by the use of a multiplication constant. The main idea was not to fix the final value of the estimation with the calculation result, but to make the slope of this line as similar as possible to the calculation line. The multiplication constant obtained was 0.835. With this, the errors diminished to 10.7% and 15%. Using the database from the turbine 7 data and its correction, the cumulative fatigue of the turbine 8 was estimated and its errors range from 9.44 to 10.3% Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 19 7. Database Estimators Validation From the database made with the turbine 7 another turbine cumulative fatigue was estimated. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 20 7. Database Estimators Validation For the previous results, all the single fatigue estimation were retrieved from the load database by means of the reconstructed SCADA data. For this, the pitching angle information is extremely useful to identify the turbine status. The main statistical values of the wind speed where used as well. Wind Direction In real life applications, other variables from the SCADA data, as the electrical power output or the generator Power Production Pitch Angle: 0-25° Idling Pitch Angle: 25-40° speed, could be used to corroborate the turbine status. The load estimators do not necessarily have to be retrieved from the database each 10-min. Start Up Pitch Angle: ~ 45° This period can be fixed by the frequency the SCADA system update its variables. Pause, Stop & E. Stop Pitch Angle: ~ 90° Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 21 8. Conclusions • It was possible to create a load estimation method based on previous turbine measurements and on SCADA data information. • The fatigue accumulation estimations from both turbines give back smaller errors than other methodologies. The errors range from 9 to 15%. • Estimations by neural networks produce errors ranging from 12 to 22% depending on the number of nodes used in the network. • Regression techniques have errors ranging from 2 to 23%. Nevertheless, the methodology proposed in this report still needs to be validated by more turbines. • Given the similar load patterns obtained from different turbines under the same wind conditions, the method developed could be applied to other couple of turbines. • Thanks to the cumulative loading estimation of the turbine blades, would help to determine wheatear or not to extend the turbine service lifetime or modify the turbine maintenance program, this could mean to be a significant monetary advantage. Blade Load Estimations by –Database for SCADA SET MSc Wind Energy 22 Thanks for the Attention Questions…? New York–Long 340MW BladeThe Load Estimations byIsland for Project SCADA SETSupport MSc –Database Wind Energy Esbjerg, Structure Design 23