The present invention relates to the field of renewable energies and more particularly to the measurement of the resource of wind turbines, i.e. the wind, with wind prediction, turbine control (orientation, torque and speed regulation) and/or diagnosis and/or monitoring objectives.
A wind turbine allows the kinetic energy from the wind to be converted into electrical or mechanical energy. For conversion of wind to electrical energy, it is made up of the following elements:
Since the beginning of the 1990s, there has been renewed interest in wind power, in particular in the European Union where the annual growth rate is about 20%. This growth is attributed to the inherent possibility for carbon-emission-free electricity generation. In order to sustain this growth, the energy yield of wind turbines still has to be further improved. The prospect of wind power production increase requires developing effective production tools and advanced control tools in order to improve the performances of the machines. Wind turbines are designed to produce electricity at the lowest possible cost. They are therefore generally built so as to reach their maximum performance at a wind speed of approximately 15 m/s. It is not necessary to design wind turbines that maximize their yield at higher wind speeds, which are not common. In case of wind speeds above 15 m/s, it is necessary to lose part of the additional energy contained in the wind so as to avoid damage to the wind turbine. All wind turbines are therefore designed with a power regulation system.
For this power regulation, controllers have been designed for variable-speed aerogenerators. The purpose of the controllers is to maximize the electric power recovered, to minimize the rotor speed fluctuations, and to minimize the fatigue and the extreme moments of the structure (blades, tower and platform).
To optimize control, it is important to know the wind speed at the rotor of the wind turbine. Various techniques have been developed to that end.
According to a first technique, using an anemometer allows to estimate a wind speed at one point, but this imprecise technology does not enable to measure an entire wind field or to know the three-dimensional components of the wind speed or to know the vertical wind speed profile.
According to a second technique, a LiDAR (Light Detection And Ranging) sensor can be used. LiDAR is a remote sensing or optical measurement technology based on the analysis of the properties of a beam returned to the emitter. This method is notably used for determining the distance to an object by means of a pulse laser. Unlike radars based on a similar principle, LiDAR sensors use visible or infrared light instead of radio waves. The distance to an object or a surface is given by the measurement of the delay between the pulse and the detection of the reflected signal.
In the field of wind turbines, LiDAR sensors are announced as essential for proper functioning of large wind turbines, especially now that their size and power is increasing (today 5 MW, soon 12 MW for offshore turbines). This sensor enables remote wind measurements, first allowing wind turbines to be calibrated so that they can deliver maximum power (power curve optimization). For this calibration stage, the sensor can be positioned on the ground and vertically oriented (profiler), which allows to measure the wind speed and direction, as well as the wind gradient depending on the altitude. This application is particularly critical because it allows to know the energy generating resource. This is important for wind turbine projects since it conditions the financial viability of the project. However, this method may appear to be costly because it requires a LiDAR sensor fixedly arranged on the ground or the sea and vertically oriented, in addition to the LiDAR sensor provided on the wind turbine for the application described below.
A second application consists in setting this sensor on the nacelle of the wind turbine in order to measure the wind field in front of the turbine while being nearly horizontally oriented. A priori, measuring the wind field in front of the turbine allows to know in advance the turbulence the wind turbine is going to encounter shortly thereafter. However, current wind turbine control and monitoring techniques do not allow to take account of a measurement performed by a LiDAR sensor by estimating precisely the wind speed at the rotor, i.e. in the rotor plane. Such an application is notably described in patent application FR-3-013,777 (US-2015-145,253).
The wind speed varies as a function of altitude: the wind is stronger at a high altitude than at ground level. Knowing the vertical wind speed profile, in other words the wind speed gradient as a function of altitude, is useful in various wind turbine control applications. The document Wagner, Rozenn & Antoniou, Ioannis & M. Pedersen, Soøren & Courtney, Michael & Joørgensen, Hans. (2009). The Influence of the Wind Speed Profile on Wind Turbine Performance Measurements. Wind Energy. 12. 348-362. 10.1002/we.297 notably describes the relation between the wind speed profile and the wind turbine performances. According to examples, this vertical wind speed profile can be used in wind turbine energy evaluations or for controlling the pitch angle of the turbine blades.
Conventionally, the vertical wind speed profile used by LiDAR sensor manufacturers is obtained by means of offline applied methods based on the batch processing approach. These methods are therefore not suited for estimating the vertical wind speed profile in real time.
Furthermore, other methods for determining the vertical wind speed profile use mathematical representations thereof, among which the logarithmic profile or the power law.
The logarithmic wind profile was created from a model of the turbulent boundary layer on a flat plate by Prandtl. It was subsequently found to be valid in an unmodified form in strong wind conditions in the atmospheric boundary layer near the ground or sea surface. On the surface, the logarithmic wind profile is then given by:
where vz is the longitudinal wind speed at the height z, v* is the friction velocity, k=0.41 is the von Karman constant, z0 the surface roughness and ψm the diabatic correction of the vertical wind speed profile. This logarithmic profile depends only on constants, it is imprecise at high altitude and difficult to calibrate. Furthermore, this logarithmic profile is less precise than the power law.
The power law is written as follows:
with vz the longitudinal wind speed at the height z, z0 the reference height, vz0 the longitudinal wind speed at the reference height z0 and α the exponent of said power law.
This power law is generally used in wind energy evaluations, where the wind speed at the height of a wind turbine needs to be estimated from wind observations near the surface, or when wind speed data at different heights need to be adjusted to a standard height. In relation to the logarithmic law, the power law can be readily integrated over a height. This profile is widely used for engineering purposes due to its simplicity. Assuming neutral atmospheric conditions, it is well known that the power law produces more precise predictions for the wind speed than the logarithmic law, at heights ranging from 100 m to the upper part of the atmospheric boundary layer. For normal wind conditions on offshore sites (at sea), exponent α is set at 1/7. However, when a constant exponent is used, it does not take account of the variation as a function of time and the surface roughness. Furthermore, it does not take account of the displacement of the winds from the surface due to the presence of obstacles, such as the wind turbine in the present case. Using a constant exponent can therefore produce rather erroneous estimates of the vertical wind speed profile.
The purpose of the present invention is notably to determine, in real time, a precise vertical wind speed profile in a simple manner. The invention therefore relates to a method of determining the vertical profile of the wind speed upstream from a wind turbine, wherein wind speed measurements are performed by means of LiDAR sensor, then the exponent α of the power law is determined by means of an unscented Kalman filter and measurements, and this exponent α is applied to the power law in order to determine the vertical wind speed profile.
The invention relates to a method of determining the vertical profile of the wind speed upstream from a wind turbine, said wind turbine being equipped with a LiDAR sensor facing upstream of said wind turbine, wherein the following steps are carried out:
with vz the longitudinal wind speed at the height z, z0 the reference height, vz0 the longitudinal wind speed at the reference height z0 and α the exponent of said power law,
According to an embodiment of the invention, said unscented Kalman filter is applied to a state model comprising additive noise and multiplicative noise.
Advantageously, said state model is written:
with x(k)=α(k) the state variable at time k, y(k)=v1(k) the output of said state model corresponding to the longitudinal wind speed measured at time k at measurement point 1, η(k−1) the variation of exponent α at time k−1, v2(k) the longitudinal wind speed measured at time k at measurement point 2, z1 the height of measurement point 1, z2 the height of measurement point 2, ε1(k) the noise of speed v1 at time k, and ε2(k) the noise of speed v2 at time k.
Preferably, for applying said Kalman filter, the increasing random variable xa is considered:
with x(k)=α(k) the state variable at time k and ε2(k) the noise of speed v2 at time k.
According to an aspect, said exponent α of said power law is determined by carrying out the following steps:
with K the Kalman filter gain, Pxy the state-measurement cross-covariance, Pyy the predicted measurement covariance, my the predicted output mean, v1(k) the longitudinal wind speed measured at time k at measurement point 1.
Furthermore, the invention relates to a method of controlling a wind turbine equipped with a LiDAR sensor, wherein the following steps are carried out:
The invention further relates to a computer program product comprising code instructions designed to carry out the steps of a method according to one of the above features, when the program is executed on a unit for processing said LiDAR sensor.
Besides, the invention relates to a LiDAR sensor for a wind turbine. It comprises a processing unit implementing a method according to one of the above features.
Moreover, the invention relates to a wind turbine comprising a LiDAR sensor according to one of the above features, said LiDAR sensor being preferably arranged on the nacelle of said wind turbine or in the hub of the wind turbine.
Other features and advantages of the method according to the invention will be clear from reading the description hereafter of embodiments given by way of non-limitative example, with reference to the accompanying drawings wherein:
The present invention relates to a method of determining the vertical profile of the wind speed upstream from a wind turbine (the notion of “upstream” is defined according to the direction of the wind towards the turbine). The vertical wind speed profile is understood to be the wind speed gradient as a function of altitude. The determined vertical wind speed profile allows to determine the vertical wind variation upstream from the wind turbine and at the turbine rotor plane. According to the invention, the wind turbine is equipped with a LiDAR sensor arranged substantially horizontally to measure the wind speed upstream from the turbine.
According to the invention, the LiDAR sensor allows to measure the wind speed in at least one measurement plane upstream from the wind turbine. There are several types of LiDAR sensor, for example scanning LiDAR, continuous wave LiDAR or pulsed LiDAR sensors. Within the context of the invention, a pulsed LiDAR is preferably used. However, the other LiDAR technologies may also be used while remaining within the scope of the invention.
LiDAR sensors allow fast measurement. Therefore, using such a sensor enables fast, continuous and real-time determination of the vertical wind speed profile. For example, the sampling rate of the LiDAR sensor can range between 1 and 5 Hz (or even more in the future), and it can be 4 Hz. Furthermore, the LiDAR sensor allows to obtain information relative to the wind upstream from the wind turbine, which information is related to the wind flowing towards the turbine. The LiDAR sensor can therefore be used to determine the vertical wind speed profile.
Conventionally, a wind turbine 1 allows to convert the kinetic energy of the wind into electrical or mechanical energy. To convert the wind energy to electrical energy, it is made up of the following elements:
As can be seen in
Preferably, LiDAR sensor 2 can be mounted on nacelle 3 of wind turbine 1 or in the hub of wind turbine 1.
According to the invention, the method of determining the vertical wind speed profile upstream from the wind turbine comprises the following steps:
These steps are carried out in real time. The step of constructing the vertical wind speed profile model can be carried out beforehand and offline.
In this step, the wind speed is continuously measured in at least one measurement plane distant from the wind turbine, by means of the LiDAR sensor, at least at two measurement points located at different heights. Thus, the wind speed can be known upstream from the wind turbine in at least one measurement plane at two different heights. The height of the measurement points is considered along the vertical axis (axis z of
According to an implementation of the invention, the measurement planes can be at a longitudinal distance (along axis x in
Alternatively, the measurement planes may be closer or further away than the preferred range.
According to a non-limitative example embodiment, the LiDAR sensor can perform measurements for ten measurement planes, which can notably be located at distances of 50, 70, 90, 100, 110, 120, 140, 160, 180 and 200 m from the rotor plane respectively.
According to an embodiment of the invention, wind speed measurements can be performed at several measurement points at each height. For example, the wind speed can be measured at the two measurement points PT1, PT2 (“upper” points) and at the two measurement points PT3, PT4 (“lower” points). In this case, the wind speed measured at one height can be a combination (the average for example) of the wind speed measurements at this height.
In order to increase the precision of the next steps, the wind speed can be measured in several measurement planes.
According to an implementation of the invention, the LiDAR sensor can allow to measure the radial speed (along the axis of the LiDAR sensor measurement beam). In this case, the method can comprise a step of determining the longitudinal speed (along axis x of
This step consists in constructing a vertical wind speed profile model by means of a power law (or any equivalent law) of the form:
with vz the longitudinal wind speed at the height z, z0 the reference height, vz0 the longitudinal wind speed at the reference height z0 and α the exponent of said power law.
The method according to the invention allows to determine the variations over time of exponent α in order to make the wind speed model precise. One advantage of the power law is the simplicity thereof. Furthermore, the power law produces more precise wind speed predictions than the logarithmic law, in particular at heights ranging from 100 m to the upper part of the atmospheric boundary layer.
This step consists in determining exponent α of the power law by means of an unscented Kalman filter (UKF) and of wind speed measurements performed at the measurement points. The unscented Kalman filter is a filtering algorithm that uses a system model for estimating the current hidden state of a system, then it corrects the estimation using the available sensor measurements. The philosophy of UKF differs from the extended Kalman filter in that it uses the unscented transform to directly approximate the mean and the covariance of the target distribution. The unscented Kalman filter can comprise the steps of state prediction and measurement correction, these two steps being preceded by a prior step of calculating the “sigma points”. The sigma points are a set of samples calculated so as to allow the mean and covariance information to be propagated precisely through the space of a nonlinear function.
Such a filter is thus well suited for rapidly determining exponent α of the power law.
According to an embodiment of the invention, the unscented Kalman filter can be applied to a state model comprising additive noise and multiplicative noise. Additive and multiplicative noises come from the wind speed measurements at different heights. The noise is referred to as additive because it appears to be a term added to the state model. The noise is referred to as multiplicative because it appears to be a term multiplying the input of the state model. This embodiment allows to precisely determine exponent α of the power law.
Advantageously, the state model can be written:
with x(k)=α(k) the state variable at time k, y(k)=v1(k) the output of the state model corresponding to the longitudinal wind speed measured at time k at measurement point 1, η(k−1) the variation of exponent α at time k−1, v2(k) the longitudinal wind speed measured at time k at measurement point 2, z1 the height of measurement point 1, z2 the height of measurement point 2, ε1(k) the noise of speed v1 at time k, and ε2(k) the noise of speed v2 at time k. For this state model, ε1(k) is the additive noise and ε2(k) is the multiplicative noise.
In order to determine exponent α by means of the unscented Kalman filter, the increasing random variable xa can be considered:
with x(k)=α(k) the state variable at time k and ε2(k) the noise of speed v2 at time k.
According to an implementation of the invention, exponent α of the power law can be determined by carrying out the following steps:
with K the Kalman filter gain, Pxy the state-measurement cross-covariance, Pyy the predicted measurement covariance, my the predicted output mean, v1(k) the longitudinal wind speed measured at time k at measurement point 1.
According to an embodiment of the invention, the unscented Kalman filter can be used by means of the various steps described below.
x(k|k−1)
is the estimation of x(k) from the measurements of time k−1.
x(k|k)
is the estimation of x( ) from the measurements of time k.
P(k|k−1)
is the error variance from the measurements of time k−1.
P(k|k)
is the error variance from the measurements of time k
Q is the variance of the system noise η(k).
Since the equation is linear, the prediction step can be written:
x(k|k−1)=x(k−1|k−1)
P(k|k−1)=P(k−1|k−1)+Q
Things get more complicated for the correction step due to the presence of both additive and multiplicative noises. To overcome this problem, the following increasing random variable can be considered:
After the prediction step, the distribution of the increasing random variable xa(k) can be given as a normal distribution denoted by N:
with R2(k) the variance of noise ε2(k) of speed v2 at time k.
The sigma points denoted by X0, Xi, Xi+n associated with mean mxa and covariance matrix Pxa can be calculated as follows:
where n=2, S is a square root of Pxa and
with μ a scalar parameter determining the dispersion of the sigma points and K a secondary resize parameter.
Xi,x and Xi,ε can then be defined as the first and second components of Xi. The sigma points are propagated through the measurement model in the following form, for any i ranging between 1 and 2n:
The next step consists in calculating the predicted mean my, the predicted measurement covariance Pyy and the state-measurement cross-covariance Pxy.
with R1(k) the variance of noise ε1(k) of speed v1 at time k, Wim, Wic being weights defined by:
with ξ a parameter used for incorporating any prior knowledge of the distribution of the increasing random variable xa.
The Kalman filter gain, the state estimation and the covariance matrix at time k can then be expressed as:
Given that x(k)=α, these equations allow to determine exponent α of the power law, this exponent being variable over time.
This step consists in determining the vertical profile of the wind speed upstream from the wind turbine, using the vertical wind speed profile model constructed in step 2) with exponent α determined in step 3). Thus, the method according to the invention allows to determine the wind speed at any point in space upstream from the wind turbine.
Preferably, the method according to the invention allows to determine the longitudinal wind speed at any point in space upstream from the wind turbine.
According to an embodiment of the invention, we can consider in the power law reference z0 as the height of any measurement point of the LiDAR sensor (which may be different from the measurement points used in step 1)) and speed vz0 as the wind speed measured at the measurement point considered. The vertical wind speed profile can thus be determined in the measurement plane by applying the power law.
Alternatively, we can consider in the power law any reference z0 (a point in the rotor plane for example) and speed vz0 as the wind speed estimated (reconstructed) at the point considered. It is thus possible to determine the wind speed in any plane in space, including the rotor plane. To reconstruct the wind speed, any wind reconstruction method may be applied, notably the method described in patent application FR-3,068,139 (WO-2018/234,409), whose main steps are reminded hereafter:
The present invention also relates to a method of controlling a wind turbine equipped with a LiDAR sensor. The following steps are carried out for this method:
Precise real-time prediction of the vertical profile of the wind speed upstream from the wind turbine allows suitable wind turbine control in terms of minimization of the effects on the turbine structure and maximization of the recovered power. Indeed, by means of this control, the LiDAR allows to anticipate the speed of the wind flowing towards the turbine by means of these predictions, and thus to enable phase advance adaptation of the turbine equipments so that, at the estimated wind arrival time, the turbine is in the optimum configuration for this wind. Besides, the LiDAR sensor allows to reduce the loads on the structure, with the blades and the tower representing 54% of the cost. Therefore, using a LiDAR sensor allows to optimize the wind turbine structure and thus to decrease the costs and maintenance.
According to an implementation of the invention, the inclination angle of the blades and/or the electrical recovery torque of the wind turbine generator can be controlled as a function of the wind speed. Preferably, the individual inclination angle of the blades can be controlled. Other types of regulation devices can also be used. Controlling the blade inclination allows to optimize energy recovery as a function of the incident wind on the blades.
According to an embodiment of the invention, the inclination angle of the blades and/or the electrical recovery torque can be determined by means of wind turbine maps as a function of the wind speed at the rotor. For example, the control method described in patent application FR-2,976,630 A1 (US 2012-0,321,463) can be applied.
Furthermore, the invention relates to a computer program product comprising code instructions designed to carry out the steps of one of the methods described above (method of determining the vertical wind speed profile, control method). The program is executed on a unit for processing the LiDAR sensor, or on any similar medium connected to the LiDAR sensor or to the wind turbine.
According to an aspect, the present invention also relates to a LiDAR sensor for a wind turbine, comprising a processing unit configured to implement one of the methods described above (method of determining the vertical wind speed profile, control method).
According to an implementation of the invention, the LiDAR sensor can be a scanning LiDAR, a continuous wave LiDAR or a pulsed LiDAR sensor. Preferably, the LiDAR sensor is a pulsed LiDAR sensor.
The invention also relates to a wind turbine, notably an offshore (at sea) or an onshore (on land) wind turbine equipped with a LiDAR sensor as described above. According to an embodiment of the invention, the LiDAR sensor can be arranged on the nacelle of the wind turbine or in the hub of the wind turbine. The LiDAR sensor is so oriented as to perform a measurement of the wind upstream from the wind turbine (i.e. before the wind turbine and along the longitudinal axis thereof, designated by axis x in
For the embodiment of the control method, the wind turbine can comprise control means, for example for control of the inclination angle (or pitch angle) of at least one blade of the wind turbine or of the electrical torque, for implementing the method according to the invention.
The features and advantages of the method according to the invention will be clear from reading the application example hereafter.
For this example, we compare the wind speed estimated at a point upstream from the wind turbine, from the vertical wind speed profile determined with the method according to an embodiment of the invention. For a distance of 200 m upstream from the wind turbine, the wind speeds are therefore measured at two measurement points located at different heights so as to estimate, in real time, exponent α of the power law, using the method according to an embodiment of the invention. Then, for a distance of 100 m upstream from the wind turbine, the determined vertical wind speed profile is applied with exponent α to determine the longitudinal wind speed at a predetermined height by means of a measurement of the longitudinal wind speed at a known height.
A 4-beam pulsed LiDAR performing measurements in measurement planes located 100 m and 200 m away from the wind turbine is considered for this example.
Exponent α of the power law is determined from these speeds, by means of the method according to the invention.
The LiDAR sensor also measures the wind speed in the measurement plane located 100 m upstream from the wind turbine, at two known heights. In order to show the precise character of the method according to the invention, we consider on the one hand the wind speed measurement at the highest point at 100 m as a reference and we estimate on the other hand the wind speed at the highest measurement point at 100 m, by means of the method according to the invention, from the wind speed at the lowest measurement point at 100 m and exponent α determined in
Number | Date | Country | Kind |
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1906569 | Jun 2019 | FR | national |