©2011 AWS Truepower, LLC ALBANY BARCELONA BANGALORE 463 NEW KARNER ROAD | ALBANY, NY 12205 awstruepower.com | OVERVIEW OF SIX COMMERCIAL.

Slides:



Advertisements
Similar presentations
CFD Modeling of Wind Farms in Flat and Complex Terrain J. M. Prospathopoulos, E. S. Politis, P. K. Chaviaropoulos K. G. Rados, G. Schepers, D. Cabezon,
Advertisements

Wake Decay for the Infinite Wind Turbine Array
Work Package 1: Wake Modelling Pierre-Elouan Réthoré Research Scientist DTU Wind Energy – Aeroelastic Design Section – Risø Support by.
Section 2: The Planetary Boundary Layer
Wind Flow Over Forested Hills: Mean Flow and Turbulence Characteristics CEsA - Centre for Wind Energy and Atmospheric Flows, Portugal J. Lopes da Costa,
CFD Simulation: MEXICO Rotor Wake
ES 202 Fluid and Thermal Systems Lecture 28: Drag Analysis on Flat Plates and Cross-Flow Cylinders (2/17/2003)
Investigating the influence of farm layout on the energy production of simple wind park configurations Sercan Uysal Renewable Energy (MSc RENE) Master.
2 nd September 2014 REWS – using ANSYS CFX (CFD).
Wake effects within and between large wind projects:
Wake model benchmarking using LiDAR wake measurements of multi MW turbines Stefan Kern, Clarissa Belloni, Christian Aalburg GE Global Research, Munich.
OpenFOAM for Air Quality Ernst Meijer and Ivo Kalkman First Dutch OpenFOAM Seminar Delft, 4 november 2010.
NNMREC Arshiya Hoseyni Chime University of Washington Northwest National Marine Renewable Energy Center MSME Thesis Defense December 10 th, 2013.
Frankfurt (Germany), 6-9 June 2011 Muhammad Ali, Jovica V. Milanović Muhammad Ali – United Kingdom – RIF Session 4 – 0528 Probabilistic Assessment Of Wind.
Deep Water Offshore Wind Energy By Paul D. Sclavounos Horns Rev Wind Farm (Denmark) - Rated Power 160 MW – Water Depth 10-15m.
DETAILED TURBULENCE CALCULATIONS FOR OPEN CHANNEL FLOW
Simple Performance Prediction Methods Module 2 Momentum Theory.
1 Short Summary of the Mechanics of Wind Turbine Korn Saran-Yasoontorn Department of Civil Engineering University of Texas at Austin 8/7/02.
Uncertainty in Wind Energy
17/04/2008Presentation name1Risø DTU, Technical University of Denmark Technology developments and R&D landscape: Research overview from Risø Peter Hauge.
Wind Driven Circulation I: Planetary boundary Layer near the sea surface.
Wind Turbine Project Recap Wind Power & Blade Aerodynamics
AIAA SciTech 2015 Objective The objective of the present study is to model the turbulent air flow around a horizontal axis wind turbine using a modified.
Computational Modelling of Unsteady Rotor Effects Duncan McNae – PhD candidate Professor J Michael R Graham.
The Air-Sea Momentum Exchange R.W. Stewart; 1973 Dahai Jeong - AMP.
Design Process Supporting LWST 1.Deeper understanding of technical terms and issues 2.Linkage to enabling research projects and 3.Impact on design optimization.
Wind Modeling Studies by Dr. Xu at Tennessee State University
Monin-Obukhoff Similarity Theory
KIT – University of the State of Baden-Wuerttemberg and National Research Center of the Helmholtz Association INSTITUTE OF METEOROLOGY AND CLIMATE RESEARCH,
Advisor Martin Wosnik Graduate Co-Advisor Kyle Charmanski Characterize blade design/turbine performance in free stream in student wind tunnel (and validate.
Aerodynamics and Aeroelastics, WP 2
© Vattenfall AB Vattenfall Perspective on Wind in Forest Jens Madsen Principal R&D Engineer, Ph.D Vattenfall Research & Development AB.
The Buhl High-Induction Correction for Blade Element Momentum Theory Applied to Tidal Stream Turbines Dr. Ian Masters (Swansea University) Dr. Michael.
How to use CFD (RANS or LES) models for urban parameterizations – and the problem of averages Alberto Martilli CIEMAT Madrid, Spain Martilli, Exeter, 3-4.
Mechanistic Modeling and CFD Simulations of Oil-Water Dispersions in Separation Components Mechanistic Modeling and CFD Simulations of Oil-Water Dispersions.
AMBIENT AIR CONCENTRATION MODELING Types of Pollutant Sources Point Sources e.g., stacks or vents Area Sources e.g., landfills, ponds, storage piles Volume.
A control algorithm for attaining stationary statistics in LES of thermally stratified wind-turbine array boundary layers Adrian Sescu * and Charles Meneveau.
Effects of Scale on Model Offshore Wind Turbines An Examination of How Well Scaled Model Wind Turbines Can Represent Full Sized Counterparts Group Members:
KIT – University of the State of Baden-Wuerttemberg and National Research Center of the Helmholtz Association INSTITUTE OF METEOROLOGY AND CLIMATE RESEARCH,
Integrated Dynamic Analysis of Floating Offshore Wind Turbines EWEC2007 Milan, Italy 7-10 May 2007 B. Skaare 1, T. D. Hanson 1, F.G. Nielsen 1, R. Yttervik.
NUMERICAL SIMULATION OF WIND TURBINE AERODYNAMICS Jean-Jacques Chattot University of California Davis OUTLINE Challenges in Wind Turbine Flows The Analysis.
Technische Universität München Wind Energy Institute Technische Universität München Wind Energy Institute Detection of Wake Impingement in Support of Wind.
Tim Fletcher Post-doctoral Research Assistant Richard Brown Mechan Chair of Engineering Simulating Wind Turbine Interactions using the Vorticity Transport.
HELICOIDAL VORTEX MODEL FOR WIND TURBINE AEROELASTIC SIMULATION Jean-Jacques Chattot University of California Davis OUTLINE Challenges in Wind Turbine.
UPWIND, Aerodynamics and aero-elasticity
Experience of Modelling Forested Complex Terrain Peter Stuart, Ian Hunter & Nicola Atkinson 30 th October 2009.
Challenges in Wind Turbine Flows
Modelling the impact of wakes on power output at Nysted and Horns Rev R.J. Barthelmie, Indiana University USA/Risoe DTU DK K. Hansen, DTU Denmark S.T.
Wind Energy Program School of Aerospace Engineering Georgia Institute of Technology Computational Studies of Horizontal Axis Wind Turbines PRINCIPAL INVESTIGATOR:
Thermo-aero Dynamic Analysis of Wind Turbines P M V Subbarao Professor Mechanical Engineering Department Development of Characteristic Design Variables.
WIND TURBINE ENGINEERING ANALYSIS AND DESIGN Jean-Jacques Chattot University of California Davis OUTLINE Challenges in Wind Turbine Flows The Analysis.
NREL is a national laboratory of the U.S. Department of Energy Office of Energy Efficiency and Renewable Energy operated by the Alliance for Sustainable.
TRANSPORT OF CONTAMINANTS BY ATMOSPHERIC DUST AND AEROSOL Paola L. Colmenares Chemical Engineering University of Arizona Research supported by: NIEHS Superfund.
Optimization of Windfarm Layout
UPWIND, Aerodynamics and aero-elasticity
Thermo-aero Dynamic Analysis of Wind Turbines
Betz Theory for A Blade Element
An Analytical Model for A Wind Turbine Wake
SuperGen Assembly Cranfield University. 23rd Nov. 2016
Off-design Performance of A Rotor
Rotors in Complex Inflow, AVATAR, WP2
Identification of Fundamental Design Parameter for A Wind Turbine
Fluid Dynamic Analysis of Wind Turbine Wakes
The application of an atmospheric boundary layer to evaluate truck aerodynamics in CFD “A solution for a real-world engineering problem” Ir. Niek van.
E. Dellwik, A. Papettaa, J. Arnqvist, M. Nielsena and T. J. Larsena
Eric TROMEUR, Sophie PUYGRENIER, Stéphane SANQUER
Section 8, Lecture 1, Supplemental Effect of Pressure Gradients on Boundary layer • Not in Anderson.
Dual Induction theory for Wind Turbines
Layout Optimisation Brings Step Change in Wind Farm Yield
Micrositing for Wind Turbines
Presentation transcript:

©2011 AWS Truepower, LLC ALBANY BARCELONA BANGALORE 463 NEW KARNER ROAD | ALBANY, NY awstruepower.com | OVERVIEW OF SIX COMMERCIAL AND RESEARCH WAKE MODELS FOR LARGE OFFSHORE WIND FARMS EWEA CONFERENCE COPENHAGEN, DENMARK APRIL 18, 2012 PHILIPPE BEAUCAGE, SR. RESEARCH SCIENTIST MICHAEL BROWER, CHIEF TECHNICAL OFFICER NICK ROBINSON, DIRECTOR OF OPENWIND CHARLES ALONGE, R&D SPECIALIST

©2011 AWS Truepower, LLC Presentation Overview Background Validation of different modeling approaches:  Standard wake models  Hybrid model using IBL approach  Linear CFD-RANS model  Non-linear CFD-RANS model  Large-Eddy Simulations Results  Nysted wind farm  Horns Rev wind farm Conclusions Acknowledgments  J. Garza and colleagues at DONG Energy  R. Barthelmie at Indiana University  DONG Energy, Vattenfall and E.On  P.-E. Réthoré at the Risø /DTU

©2011 AWS Truepower, LLC Background Wind power projects have been steadily growing in size.  1000 MW + wind farms are now being proposed. Standard wake models (Modified Park, Eddy Viscosity, etc.) used in engineering were developed two decades ago for modest-size wind farms. They do not account for the interaction between multiple turbine wakes, or between wakes and the planetary boundary layer (PBL)  both of which become relatively more important in deep arrays i.e. large wind farms. → Serious doubts regarding the validity of standard wake models applied to large wind farms (“deep arrays”)

©2011 AWS Truepower, LLC Background GOAL : To validate and improve our estimated wake losses and energy productions. QUESTIONS : How to capture the interaction between multiple turbine wakes (deep array effect) as well as between wakes and the PBL? METHODOLOGY : Validate different modeling approaches  Standard engineering wake models  Hybrid model using IBL approach  Linear CFD-RANS model  Non-linear CFD-RANS model  Large-Eddy Simulations PBL = Planetary Boundary Layer

©2011 AWS Truepower, LLC Wind Turbine Aerodynamic: Actuator Disk Theory V disk = (1-a) · V 0 V wake = (1-2a) · V 0 a ≡ axial induction factor

©2011 AWS Truepower, LLC Overview of wake modeling approaches Standard wake models  Park / Modified Park (Jensen 1983, Katic et al. 1986)  Eddy Viscosity (Ainslie 1988) Hybrid wake model based on IBL approaches  Deep-Array Wake Model (Brower and Robinson 2009)  Large Wind Farm Model (Schlez and Neubert 2009) Physics-based models  Numerical Weather Prediction (NWP)  Computational Fluid Dynamics (CFD)  Reynolds-Averaged Navier-Stokes(RANS)  Detached-Eddy Simulation (DES)  Large-Eddy Simulation (LES) Turbine parameterization  Actuator disk model (Rankine-Froude, BEM, etc.)  Actuator line model  etc.

©2011 AWS Truepower, LLC Wake Models NameSoftwareTypeCommercial/ Research ParkAWS openWind, WAsP, WindPro, Etc. Engineering (Jensen/Katic) C Eddy ViscosityAWS openWind, WindFarmer, Etc. Engineering/RANS (Ainslie) C Deep-Array Wake Model AWS openWindIBL approach and engineering C/R FugaWAsPLinear RANSC/R WindModellerAnsysRANSC/R ARPS LESR

©2011 AWS Truepower, LLC Park model Based on a balance of momentum to model single wakes (Jensen 1983, Katic 1986) Assumes an initial velocity deficit immediately behind the turbine rotor, calculated from the turbine’s thrust coefficient (Ct) and an empirically determined wake-decay constant (k) The wake-decay constant sets the linear rate of expansion of the wake with distance downstream

©2011 AWS Truepower, LLC Eddy Viscosity model Based on Navier-Stokes equations with simplifying assumptions (Ainslie 1988) – No pressure gradient term; – Beyond 5 rotor diameter downstream the wake profile is roughly Gaussian and the centerline deficit decays monotonically; – Etc. Valid only at distances farther than ~ 2-3 rotor diameters downstream of a turbine. The model runs fast on any PC → suitable for turbine layout optimization. An industry standard for calculating wake losses

©2011 AWS Truepower, LLC Hybrid model based on internal boundary layer (IBL) growth and Eddy Viscosity (Brower and Robinson 2009) Assign a roughness to each turbine and assume that an internal boundary layer develops at the bottom and top of the turbine rotor (based on Frandsen 2007). Couple the IBL growth model with Eddy Viscosity The model runs fast on any PC → suitable for turbine layout optimization An industry standard for calculating wake losses (openWind). Deep Array Wake Model (DAWM)

©2011 AWS Truepower, LLC Fuga model Linear RANS model + actuator disk developed by Ris ø /DTU Designed for sites with homogeneous terrain and roughness Fully integrated within WAsP Garza, J. et al. (2011). “Evaluation of two novel wake models in offshore wind farms ". Proceedings from the EWEA Offshore conference, 29 Nov. - 1 Dec p.

©2011 AWS Truepower, LLC WindModeller model RANS model using a k-  turbulence closure. Based on the commercial RANS software Ansys CFX. Added of an actuator disk to model wakes. Does not take atmospheric stability into account (at the moment) Garza, J. et al. (2011). “Evaluation of two novel wake models in offshore wind farms ". Proceedings from the EWEA Offshore conference, 29 Nov. - 1 Dec p.

©2011 AWS Truepower, LLC Advanced Regional Prediction System (ARPS) Numerical Weather Prediction (NWP) model and Large-Eddy Simulation (LES) Fully compressible, non-hydrostatic Navier-Stokes equations – Dynamic model – Conservation of mass, momentum and energy Complete suite of physics parameterization schemes – 1.5-order turbulence closure: k-l model Initial and boundary conditions provided by a) an external data source (e.g. NAM analyses) or b) an atmospheric sounding.

©2011 AWS Truepower, LLC Actuator Disk Implementation in ARPS Based on the actuator disk theory (Adams et al. 2007, Réthoré et al. 2008), a wind turbine is modeled as :  Drag force due to the thrust force that a turbine exert on the upwind flow.  Source of turbulent kinetic energy representing the sub-grid scale turbulence due to the turbine-induced wakes. It includes the effects of the blade tip, blade shed and root vortices. C t (|u|) = thrust coefficient, C p (|u|) = power coefficient, u = wind speed vectors,  = air density, A = area swept by the blades. 14

©2011 AWS Truepower, LLC Nysted Wind Farm Number of turbines : 72 Array:8 × 9 Turbine:2.3 MW Rated capacity:166 MW Rotor diameter (D):82.4 m Hub Height:69 m Distance between turbines: 7D Water depth:6-14 m Distance from land:10 km Nysted, Denmark

©2011 AWS Truepower, LLC Results: Nysted The Park and EV model significantly overestimates the production (underestimates the wake loss) beginning at about the 4 th column from the front. DAWM performs very well. All models show better accuracy over 30° wide sector than 5°.

©2011 AWS Truepower, LLC Horns Rev Wind Farm Number of turbines : 80 Array:8 × 10 Turbine:2 MW Rated capacity:160 MW Rotor diameter (D):80 m Hub Height:70 m Distance between turbines: 7D Water depth:6-14 m Distance from land:14-20 km Horns Rev, Denmark

©2011 AWS Truepower, LLC Results: Horns Rev (Part 1) The Park and EV model significantly overestimates the production (underestimates the wake loss) beginning at about the 4 th column from the front. DAWM performs very well. ARPS performs relatively well but not for the 8 m/s case.

©2011 AWS Truepower, LLC Results: Horns Rev (part 2) These results were kindly provided by Garza et al. (2011). “Evaluation of two novel wake models in offshore wind farms”. Proceedings from the EWEA Offshore conference, 29 Nov. - 1 Dec p. The Fuga and WindModeller models align very well with the observed normalized power production within the third column of turbines. The Park model performs better at Horns Rev than it did at Nysted but, as with the EV model, the profile remains relatively flat after the fourth column The Jensen and Fuga models show better accuracy over 30° wide sector than 5°.

©2011 AWS Truepower, LLC ARPS → Large-Eddy Simulation wind speed

©2011 AWS Truepower, LLC ARPS → Large-Eddy Simulation wind speed m/s

©2011 AWS Truepower, LLC Conclusion The Park and Eddy Viscosity models works well within the first 3 columns. However, they are typically not able to capture the wake losses beyond the 3 rd column from the front (→ deep array effect). DAWM captures the wake losses in large array much better than either the EV or Park model. The Fuga and Windmodeller models also showed promise, though a full comparison was not possible. ARPS performed reasonably well for these initial tests and merits further research Need more detailed power production data with concurrent meteorological conditions (e.g. IEA WakeBench experiment) Acknowledgments  J. Garza and colleagues at DONG Energy  R. Barthelmie at Indiana University  DONG Energy, Vattenfall and E.On  P.-E. Réthoré at the Risø /DTU

©2011 AWS Truepower, LLC Thank you for your attention!