METHOD FOR COMPUTER-IMPLEMENTED DETERMINATION OF CONTROL PARAMETERS FOR WIND TURBINES
20220356869 · 2022-11-10
Inventors
- Ziad Azar (Sheffield, South Yorkshire, GB)
- Richard Clark (Worrall, Sheffield, GB)
- Alexander Duke (Sheffield, GB)
- Stuart Logan (Glasgow, GB)
- Arwyn Thomas (Breaston, GB)
- Zhan-Yuan Wu (Sheffield, GB)
Cpc classification
F05B2270/802
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
F03D15/00
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
F03D7/045
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
F05D2220/76
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
F03D7/047
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
F05B2270/305
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
Y02P70/50
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
F05B2270/20
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
F05B2270/32
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
Y02E10/72
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
F03D7/048
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
International classification
Abstract
A method for determining improved control parameters of a number of wind turbines of a wind park is provided. The method considers the impact of individual turbine manufacturing tolerances on the turbine performance, thereby avoiding under-utilization of those wind turbines. The method includes the steps of: receiving, by an interface, one or more actual manufacturing tolerances of characteristic values for each of the number of wind turbines; determining, by a processing unit, for each of the number of wind turbines a power versus wind speed map which is calculated from a given turbine model with the one or more actual manufacturing tolerances of the respective wind turbines as input parameters; and deriving, by the processing unit, the control parameters for each of the number of wind turbines from their associated power versus wind speed map.
Claims
1. A method for computer-implemented determination of improved control parameters of a number of wind turbines of a wind park, the method comprising: S1) receiving, by an interface, one or more actual manufacturing tolerances of characteristic values for each of the number of wind turbines; S2) determining, by a processing unit, for each of the number of wind turbines a power versus wind speed map which is calculated from a given turbine model with the one or more actual manufacturing tolerances of the respective wind turbines as input parameters; and S3) deriving, by the processing unit, the control parameters for each of the number of wind turbines from their associated power versus wind speed map.
2. The method according to claim 1, wherein the turbine model is a physical model which is based on a number of equations found by simulations and/or validated test data and/or look-up tables.
3. The method according to claim 1, wherein the one or more actual manufacturing tolerances are received, by an interface, from a database.
4. The method according to claim 1, wherein the one or more actual manufacturing tolerances are obtained by measurement.
5. The method according to claim 1, wherein the one or more characteristic values includes one or more of: an airgap; a magnet performance; a magnet dimension; a thermal conductivity; and a coil resistance.
6. The method according to claim 1, wherein as further input parameters of the given turbine model historical turbine sensor data and/or operating conditions are processed for determining, by the processing unit, for each of the number of wind turbines, the power versus wind speed map.
7. The method according to claim 1, wherein the given turbine model considers a drive train consisting of a rotor hub, a generator, a converter, and a transformer of the wind turbine.
8. The method according to claim 1, wherein the given turbine model considers blades and/or nacelle and/or gearbox and/or tower and/or cable and/or a transformer of the wind turbine.
9. A computer program product, comprising a computer readable hardware storage device having computer readable program code stored therein, said program code executable by a processor of a computer system to implement a method directly loadable into the internal memory of a digital computer, comprising software code portions for performing the steps of claim 1 when the product is run on a computer.
10. A system for computer-implemented determination of improved control parameters of a number of wind turbines of a wind park, comprising an interface configured to: receive one or more actual manufacturing tolerances of characteristic values for each of the number of wind turbines; and a processing unit configured to: determine, for each of the number of wind turbines, a power versus wind speed map which is calculated from a given turbine model with the one or more actual manufacturing tolerances of the respective wind turbines, as input parameters; and derive the control parameters for each of the number of wind turbines from their associated power versus wind speed map.
Description
BRIEF DESCRIPTION
[0020] Some of the embodiments will be described in detail, with reference to the following figures, wherein like designations denote like members, wherein:
[0021]
[0022]
DETAILED DESCRIPTION
[0023]
[0024] The method considers the impact of individual turbine manufacturing tolerances on the turbine performance, thereby avoiding under-utilization of those wind turbines. Due to the consideration of individual turbine manufacturing tolerances, at least some of them are able to be operated in an optimized manner resulting in an increasing AEP of the wind park.
[0025] Referring to
[0026] The manufacturing tolerances, typically different for every turbine (turbine DNA), of the characteristic values AG, MP, MDM, TC, CR are collated and stored in a database DB. For each turbine T1, . . . , Tn (where n corresponds to the number of wind turbines in the wind park), a manufacturing dataset MD.sub.T1, . . . , MD.sub.Tn may be stored containing the characteristic values AG, MP, MDM, TC, CR. The manufacturing dataset MD.sub.T1, . . . , MD.sub.Tn may be regarded as DNA of each individual wind turbine T1, . . . ,Tn. It is to be understood that, for embodiments of the present invention, storing of manufacturing data consisting of the manufacturing tolerances of characteristic values AG, MP, MDM, TC, CR may be made in any way, such as a lookup-table, associated maps, etc.
[0027] The manufacturing tolerances of the characteristic values AG, MP, MDM, TC, CR are received at the interface IF of a computer or computer system. The computer or computer system comprises the processing unit PU. The database DB may be stored in a memory of the computer (system) or an external storage of the computer (system). The database DB may be cloud based in another implementation. The processing unit PU is adapted to determine, for each of the number of wind turbines T1, . . . , Tn, a power versus wind speed map M.sub.T1, . . . , M.sub.Tn. The power versus wind speed map M.sub.T1, . . . , M.sub.Tn is calculated from a given turbine model with the manufacturing tolerances of the characteristic values AG, MP, MDM, TC, CR of the respective wind turbines T1, . . . , Tn as input parameters.
[0028] For each type of wind turbine, a specific turbine model may be provided. In an alternative embodiment, a specific turbine model may be used for a respective wind turbine of the wind park. In a further alternative embodiment, a common turbine model may be used for all wind turbines of the wind park.
[0029] The turbine model is a physical model which is based on a number of equations found by simulations and/or validated test data and/or look-up tables. The turbine model can be regarded as a “digital twin” for each individual wind turbine. The power versus wind speed maps M.sub.T1, . . . , M.sub.Tn of each individual wind turbine T1, . . . , Tn are unique maps resulting from the turbine model and the manufacturing tolerances of the characteristic values AG, MP, MDM, TC, CR.
[0030]
[0031] The turbine model TM calculates the losses of components within the drive train to account for the loss in power/energy between the turbine blade input and the output to grid during the electromechanical energy conversion and ancillary or supporting systems. As the loss mechanisms are temperature dependent and themselves generate heat, the turbine model TM is coupled or includes a thermal model for the generator GEN (generator thermal model GTM) and/or a thermal model for the converter CON (converter thermal model CTM) and is solved iteratively. The generator thermal model GTM and the converter thermal model CTM are coupled to components affecting the cooling of the drive train, such as cooling system COOLS (e.g., cooling fans), heat exchanger HX, and nacelle ambient NAAMB.
[0032] The turbine model TM calculates the available power P.sub.out at the (grid) output based on the input ambient conditions of wind speed WS and temperature ATMP. The turbine model TM can be used to assess the potential AEP for a given wind turbine and site by inputting current, historical, and/or predicted wind conditions over a given period of time. The use of the thermal models GTM, CTM allows for any control features such as high temperature curtailment to be accounted for accurately. Alternatively, the turbine model TM can be employed in real time to assess the potential output and/or impact of control decisions on a specific generator operating point. Furthermore, it may be used as reference against the actual turbine comparing actual and predicted operation in response to the operating conditions to act as a health monitor.
[0033] The inclusion of a thermal model allows components to be operated close to maximum permissible/safe limits without the need for large safety factors.
[0034] The turbine model TM can be implemented in a number of different environments/programming codes. Typically, it may be based on iterative solver routines to handle both thermal coupling and control algorithms. Where possible, reduced order models, look-up tables or functions (equations) are used to represent complex behaviors using suitable approximations and/or assumptions to ensure short computation times whilst maintaining a suitable level of accuracy.
[0035] The turbine model TM, as shown in
[0036] More detailed the turbine model TM includes the following sub-models:
[0037] A rotor model for modelling the rotor ROT by converting wind speed WS into a rotor/blade rotational speed RS and mechanical power P.sub.mech (i.e. input torque M).
[0038] An optional bearing model for modelling the bearing by accounting for non-ideal main bearings and hence power loss.
[0039] A generator model for modelling the generator GEN by considering the main mechanical to electrical energy conversion accounting for the torque capability, voltage production and losses incurred in conversion: This may be implemented by a numerical computation of the electromagnetic performance (e.g. Finite Element Analysis), an analytical model, or a hybrid of these which uses a Reduced Order Model (ROM) in which the generator performance is derived through a-priori numerical modelling and distilled into simpler functions or look-up tables. The generator model is also adapted to calculate losses incurred in the conversion such as winding copper losses and stator electrical steel iron losses. It accounts for control decisions.
[0040] A converter model for modelling the converter CON: for example, in a direct drive permanent magnet generator the variable frequency output of the generator is interfaced with the fixed frequency grid via a power electronic converter (active rectifier—DC link—inverter) which allows for control of the generator operating conditions. The load dependent switching and conduction losses in the converter are accounted for.
[0041] A cable loss model for modelling the cables CAB by consideration of Ohmic losses in connections cables.
[0042] An auxiliary/ancillary loss model for modelling auxiliary/ancillary components AUX by accounting for power consumed by supporting services such as cooling fans, pumps and hydraulic control systems as these losses detract from the available power at the grid.
[0043] A transformer loss model for modelling the transformer TRF by accounting for Ohmic winding losses and core losses which are dependent on load conditions.
[0044] Thermal models of the generator GEN and the converter CON: The performance and losses of the above components are temperature dependent. For example, the resistance and hence copper losses produced by the stator electrical windings increase due to the copper resistivity dependence on temperature and the flux produced by a permanent magnet (the field source in the generator) varies due to changes in the material remanence with temperature. As the losses themselves increase component temperature the above loss models are calculated iteratively with respective thermal model. As with the generator model, this may be implemented by a Reduced Order model using parameters derived from numerical modelling e.g., CFD and Thermal FEA to create an equivalent circuit or lumped parameter network.
[0045] A number of maps M.sub.R, M.sub.T1 and M.sub.T3 resulting from the turbine model TM is illustrated in the P-WS-diagram (power versus wind speed map PWM). In this diagram, a map M.sub.R of a wind turbine which is calculated based on nominal parameters (characteristic values) and two maps M.sub.T1 and M.sub.T3 for turbines T1, T3 are illustrated. By way of example only, the maps M.sub.T1 and M.sub.T3 of the turbines T1, T3 show that (at least some of) the actual parameters of the characteristic values AG, MP, MDM, TC, CR are different from that of the nominal turbine resulting in an additional power P for a given speed WS.
[0046] Based on their associated power versus wind speed maps control parameters CP can be derived for each individual turbine which are used for controlling the wind turbines. In the illustration of
[0047] Consideration of the impact of individual turbine manufacturing tolerances on the turbine performance and using them in a turbine model for each individual turbine allows for maximizing of an AEP through a wind park optimization by operating the turbines in an optimized manner at each location based on its individual turbine performance.
[0048] If the actual parameters within a manufacturing tolerance band of a specific turbine are better than the nominal data on which they are ordinary operated, the turbine model TM can provide a safe mechanism of making use of this additional margin with the result of producing higher AEP levels.
[0049] Comparing measured lifetime data in the form of historical data AD which are received from the processing unit in addition to the manufacturing data allows for a flexible exploitation of generous manufacturing margins to push the turbines harder and thus increase AEP. In addition, the processing unit PU is able to incorporate health monitoring features through a comparison of measured parameters, such as component temperatures against those which may be predicted by the turbine model TM.
[0050] The comparison of physical turbine data can be made with the associated turbine model TM to monitor situations where the turbine may be underperforming as well as providing possible insight into reasons of an underperforming. The comparison can flag potential issues and call for servicing as well as providing learning for future turbine development.
[0051] Although the present invention has been disclosed in the form of preferred embodiments and variations thereon, it will be understood that numerous additional modifications and variations could be made thereto without departing from the scope of the invention.
[0052] For the sake of clarity, it is to be understood that the use of “a” or “an” throughout this application does not exclude a plurality, and “comprising” does not exclude other steps or elements.