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Article

Dynamic Response of a Permanent Magnet Synchronous Generator to a Wind Gust

1
University Politehnica Timisoara, Timisoara 300006, Romania
2
Romanian Academy, Centre for Advanced Technical Research, Timisoara 300223, Romania
*
Author to whom correspondence should be addressed.
Energies 2019, 12(5), 915; https://doi.org/10.3390/en12050915
Submission received: 5 February 2019 / Revised: 3 March 2019 / Accepted: 5 March 2019 / Published: 9 March 2019

Abstract

:
In this paper, a new analytical approach is proposed to investigate the electrical and mechanical behavior of a low-power permanent magnet synchronous generator (PMSG) in the presence of a wind gust. The proposed model for the wind gust and wind power system was analytically investigated using the optimal auxiliary functions method (OAFM), which has proven to be a reliable tool. The reaction of the system to a wind gust was explicitly obtained, which is useful for stability analysis, protection issues, and risk assessment concerning the PMSG. A substantial reduction of computations in analytically analysing a complicated dynamical system is ensured by this new approach, through some auxiliary functions and convergence-control parameters.

1. Introduction

Wind turbine dynamics recently became a subject of great interest for scientists [1,2], with the increasing importance of renewable, green energy harvesting technologies and their installations.
It is a known reality that both mechanical and electrical loads are greatly influenced by the action of the wind speed and its variations, which simultaneously affect the tower/nacelle and blade system, and also the electrical parameters or the mechanical behavior of the stator/rotor system. It has been shown that random wind fluctuations can excite significant variations in wind turbine torque as well as in generated electric power [3,4]. Other works reveal the dynamic response of permanent magnet synchronous generators (PMSGs) to specific wind speed profiles in order to assess both the electrical and mechanical stress of different components of the wind power station [5] or propose some modeling procedures for wind speed simulation, which are needed in the investigation of wind power systems [6].
The jumps in wind speed represented by wind gusts are often present in real operating conditions and can produce mechanical and electrical shocks, which can lead to damages from both mechanical and electrical points of view. From a mechanical point of view, the wind gusts generate torque pulsations in the drive train, and consequently an additional mechanical stress occurs. Therefore, it is very important to know how such wind variations affect the mechanical and electrical performance of the wind turbine in order to develop an efficient tool to evaluate and control the whole phenomenon. The influence of wind gusts on various wind power systems is a topic of increased interest for engineers. Giaourakis and Safacas [7] presented a quantitative and qualitative behavior analysis of a wind energy conversion system under a wind gust and converter faults, which was carried out via simulation. Borowy and Salameh [8] studied the dynamic response of a stand-alone wind energy conversion system with battery energy storage to a wind gust. Bystryk and Sullivan [9] analyzed control strategies for a small-scale wind turbine in intermittent wind gusts using a computer model.
Generally, such developments need some reliable models, which must obey the theory of electrical machines [10,11,12,13]. Once such a complex model is achieved, the solving process can be managed by various analytical and/or numerical approaches. Usually, perturbation methods or asymptotic approaches are used to solve these kinds of non-linear problems [14,15]. Moreover, recently, some new and emerging approaches were proposed to handle systems with strong nonlinearities or consider large parameters or large domains of definition. Among them may be mentioned the perturbation-iteration method (PIM), a technique which combines features of the perturbative and iterative approaches presented in [16], where it was found that it performs better than the well-known variational iteration method (VIM), since a few iterations are actually sufficient to obtain satisfactory results. Similar techniques are applied in Reference [17] for the Van der Pol oscillator and in Reference [18] for different types of non-linear equations, where the perturbation-iteration technique is compared with the early-stage version of the optimal homotopy asymptotic method. Other relatively new approaches are the homotopy analysis method (HAM) [19] and the homotopy perturbation method (HPM) [20], which are two homotopic approaches that have been successfully applied in solving numerous non-linear problems in science and engineering, for both of them the accuracy of the results increasing as the number of iterations increases, such that higher-order approximations provide more accurate results. Two other improved homotopic approaches are the optimal homotopy perturbation method (OHPM) [21] and the optimal homotopy asymptotic method (OHAM) [22,23], which are endowed with a rigorous and reliable procedure for convergence control, which lead to an increase in accuracy at a reduced number of iterations. Finally, among these new and emerging approaches intended for solving non-linear problems can be mentioned the modified differential transform method (MDTM) [24], which is used mainly in solving boundary values problems.
In this paper, the electrical and mechanical reaction of a low-power PMSG in the presence of a wind gust is investigated using a new approach, namely, the optimal auxiliary functions method (OAFM). Explicit analytical solutions are developed and analyzed in order to emphasize the effect of the wind gust from both mechanical and electrical points of view. Generally, such analytical approaches are very useful to further develop an efficient tool for protection issues and risk assessments concerning the PMSG.

2. Dynamic Model of the Wind-Power System

A wind-power system consists of different subsystems which should be separately modeled in view of the simulation of the whole system. Such subsystems are studied in this work. For this purpose, using the classical D–Q equivalent circuit models, the equations of the smooth-air-gap synchronous machine in the rotor reference frame can be written in the form [10,11,12,13]:
u D = R G i D + d ψ D d t ω E ψ Q u Q = R G i Q + d ψ Q d t + ω E ψ D ψ D = L G i D + ψ P M ψ Q = L G i Q
where uD, uQ, iD, and iQ are instantaneous values of D and Q axis stator voltage components and stator current components, respectively; RG and LG are electrical resistance and synchronous inductance of the generator phase windings; ψD and ψQ are instantaneous values of D and Q axis stator flux components; ψPM is the permanent magnet flux; and ωE is the electrical angular speed. The mechanical angular speed of the turbine-generator system is Ω M = ω E P 1 1 , where P1 is the number of pole pairs of the generator.
Since the system (1) has been written for motoring, the PMSG output voltages are:
u D = R L i D u Q = R L i Q
where RL is the electrical resistance of the external load connected to the output of the generator.
To investigate the electromechanical dynamic behavior, the motion equation of the generator can be written as [25]:
J M P 1 d ω E d t = T M + 3 2 P 1 ψ P M i Q ,
where JM is the axial moment of inertia (total inertia) and TM is the mechanical torque of the wind turbine, which can be expressed as [8,26]:
T M = 1 2 ρ π r 3 v 2 C t ( λ r ) , λ r = r ω E P 1 v ,
where ρ is the air density, r is the turbine radius, v is the wind speed, λr is the tip-speed ratio, and Ct is the torque coefficient provided by the turbine manufacturer:
C t ( λ r ) = 0.125 + 0.2092 λ r 0.1209 λ r 2.5 .
Using the values ρ = 1.225   Kg m - 3 , P 1 = 16 , and r = 2 . 5   m , the final form of the torque becomes:
T M = T M ( v , ω E ) = 3.758252931 v 2 + 0.982783141 v ω E 0.035079416 v ω E 2.5 .
The model of the wind speed is described by a variable function with respect to time, which simulates the manner in which the “wind profile” is altered. In this work it is considered that the wind profile contains two components:
v ( t ) = v m + v G ( t ) ,
where vm is the mean wind speed or the base wind velocity, which is a constant, and vG is the gust wind component. The base wind velocity vm is considered only in the case in which the generator is active, and the gust wind velocity component can be considered as the usual (1-cosine) gust [27]. Therefore, one can consider:
v m = const . ,    v G ( t ) = A 2 ( 1 cos 2 π T G t ) ,
where A is the gust peak and TG is the gust period.
The considered PMSG, which is a component of the wind power station, had the following characteristics in the steady-state regime: RG = 0.9 Ω, LG = 0.03 H, ψ P M = 1.42 Wb, P1 = 16 pole pairs, JM = 4.75 kgm2.
It was also considered that the nominal speed of rotation in the steady-state nominal regime was nN = 70 rpm, which means that ΩN = 7.330352856 rad·s−1 or ωN = 117.28 rad·s−1. In all cases, the index N denotes the nominal values (or rated values). The motion of the wind turbine is determined by the constant wind speed v N .
By means of the above values, from Equation (6) one retrieves TMN = 684.192163461 Nm and from Equation (3) for the steady-state regime one can obtain iQN = −20.158204693 A. Taking this last value into account and using Equations (1) and (2), it follows that iDN = −11.118492391 A; RLN = 5.479285888 Ω; uDN = 60.9213984503 V; uQN = 110.452566480 V; 2 I N = i D N 2 + i Q N 2 = 23.02116616 A; 2 U N = u D N 2 + u Q N 2 = 126.139550551 V.
It follows that in the nominal point of working, the wind turbine would develop the mechanical power P 1 N = T M N Ω N 5015 W and the electric generator would develop the electrical power P 2 N = 3 U N I N 4355.82 W.
For investigation purposes, it is often convenient to express the generator’s parameters, variables, and governing equations using dimensionless quantities. In this respect, these terms are divided by base quantities. The following set of base quantities is widely used in such investigations [10,25,28]: the base voltage UB (peak stator phase nominal voltage U B = 2 U N ); the base current IB (peak stator phase nominal current I B = 2 I N ); the base power SB (nominal apparent power S B = 3 U N I N ); the base angular speed ωB (nominal electrical angular speed ω B = ω N ). Based on this restricted set, one can obtain additional quantities, such as: the base torque T B = P 1 S B / ω B ; the base flux linkage ψ B = U B / ω B ; the base impedance Z B = U B / I B ; and the base time t B = 1 / ω B .
By means of the following notations:
u d = u D U B ;   u q = u Q U B ;   i d = i D I B ;   i q = i Q I B ;   ψ d = ψ D ψ B ;   ψ q = ψ Q ψ B ;   ψ p m = ψ P M ψ B ; ω = ω E ω B ;   r l = R L Z B ;   r g = R G Z B ;   x g = ω B L G Z B ;   T m = T M T B ;   k = J M ω B 3 3 P 1 2 U N I N ;   τ = t t B = ω B t
the governing Equations (1) may be written as:
d i d d τ ω i q + r l + r g x g i d = 0 d i q d τ + ω i d + r l + r g x g i q + ω ψ p m x g = 0 k d ω d τ T m ψ p m i q = 0
The initial conditions for Equations (10) are obtained from the working condition of a considered regime, established before the gust occurs, which is considered as the steady-state regime, characterized by a constant angular speed ω0, at a constant wind speed of vm = 10 m·s−1 and an external electrical load rl = 0.45248. Taking these data into account, considering the steady-state regime in Equation (10), one gets the following initial conditions:
i d ( 0 ) = 0.438786995 i q ( 0 ) = 0.843879596 ω ( 0 ) = 0.499239911
In this way, the governing equations become:
d i d d τ ω i q + 0.960143255 i d = 0 d i q d τ + ω i d + 0.960143255 i q + 2.061756973 ω = 0 d ω d τ 0.168386689 i q 0.000808844 v 2 0.024807429 v ω + 1.124718044 v ω 2.5 = 0
By means of the change of the variable τ = ω B t and considering A = 6, vm = 10 m·s−1, and TG = 12 in Equation (8), Equation (7) can be expressed as:
v ( τ ) = 10 + 3 ( 1 cos 2 π λ τ ) .
The dynamical system described above is analyzed in the following using a new solution procedure, namely the optimal auxiliary functions method.

3. Basic Ideas of the Optimal Auxiliary Functions Method

The most general form of a non-linear differential equation can be expressed as [29]:
L [ f ( τ ) ] + N [ f ( τ ) ] = 0 ,
where L is a linear operator, N is a non-linear operator, and f(τ) is an unknown function. The initial/boundary conditions are:
B ( f ( τ ) , d f ( τ ) d τ ) = 0 .
In the following, it is assumed that Equations (14) and (15) have an approximate solution in a two-component form:
f ˜ ( τ , C i ) = f 0 ( τ ) + f 1 ( τ , C i ) , i = 1 , 2 , , s ,
where the initial approximation f 0 ( τ ) and the first approximation f 1 ( τ , C i ) will be determined as follows. Substituting Equation (16) into Equation (14), it is obtained that
L ( f 0 ( τ ) ) + L ( f 1 ( τ , C i ) ) + N [ f 0 ( τ ) + f 1 ( τ , C i ) ] = 0 .
The initial approximation f 0 ( τ ) is determined from the linear equation
L [ f 0 ( τ ) ] = 0 B ( f 0 ( τ ) , d f 0 ( τ ) d τ ) = 0
and the first approximation f 1 ( τ , C i ) from the remaining equation
L [ f 1 ( τ , C i ) ] + N [ f 0 ( τ ) + f 1 ( τ , C i ) ] = 0 B ( f 1 ( τ ) , d f 1 ( τ ) d τ ) = 0
In general, Equation (19) is a non-linear differential equation which is often very difficult to solve. Now, the non-linear term from Equation (19) is expanded in the form:
N [ f 0 ( τ ) + f 1 ( τ , C i ) ] = N [ f 0 ( τ ) ] + k = 1 f 1 k ( τ ) k ! N ( k ) [ f 0 ( τ ) ] .
In order to avoid the difficulties that appear in solving the non-linear differential Equation (19) and to accelerate the rapid convergence of the first approximation—and implicitly of the approximate solution f ˜ ( τ ) —instead of the last term arising in Equation (19), another expression is proposed, such that Equation (19) can be written as
L [ f 1 ( τ , C i ) ] + A 1 ( f 0 ( τ ) , C i ) N [ f 0 ( τ ) ] + A 2 ( f 0 ( τ ) , C j ) = 0 B ( f 1 ( τ , C i ) , d f 1 ( τ , C i ) d τ ) = 0
where A 1 and A 2 are two arbitrary auxiliary functions depending on the initial approximation f 0 ( τ ) and several unknown parameters C i and C j , i = 1,2,…,p, j = p+1,p+2,….,s. The auxiliary functions A 1 and A 2 —called optimal auxiliary functions—are not unique, and are of the same form as f 0 ( τ ) or of the form of N [ f 0 ( τ ) ] , or combinations of the forms of f 0 ( τ ) and N [ f 0 ( τ ) ] . As illustrative examples, if f 0 ( τ ) or N [ f 0 ( τ ) ] are polynomial functions, then A 1 [ f 0 ( τ ) , C i ] and A 2 [ f 0 ( τ ) , C j ] are sums of polynomial functions; if f 0 ( τ ) or N [ f 0 ( τ ) ] contain exponential functions, then A 1 and A 2 would be sums of exponential functions; if f 0 ( τ ) or N [ f 0 ( τ ) ] are trigonometric functions, then A 1 and A 2 would be sums of trigonometric functions, and so on. If, in a special case, N [ f 0 ( τ ) ] = 0 , then it is clear that f 0 ( τ ) is an exact solution of Equations (11) and (12).
The unknown parameters C i and C j can be optimally identified using different methods. Among them, a reliable method would be minimizing the square residual error by
J ( C i , C j ) = a b R 2 ( τ , C i , C j ) d τ ,
where R ( τ , C i , C j ) = L [ f ˜ ( τ , C i , C j ) ] + N [ f ˜ ( τ , C i , C j ) ] ,   i = 1 , 2 , p ; j = p + 1 , p + 2 , , s . Then, the conditions of minimization would be
J C 1 = J C 2 = = J C s = 0 .
Alternatively, one can use other approaches such as the Ritz method, the collocation method, the Galerkin method, and so on. Finally, by this novel approach, after the identification of the optimal convergence-control parameters, the approximate solution to (16) is determined well. Our procedure proves to be a powerful tool for solving non-linear problems not depending on small or large parameters. It should be emphasized that our method contains the optimal auxiliary functions A1 and A2, which provides us with a simple way to adjust and control the convergence of the approximate solutions after only the first iteration.

4. Approximate Solution of the Dynamic Model of the Wind-Power System

In the following, the above-described procedure to obtain an approximate solution for Equations (11) and (12) is applied. The linear operators for System (12) are
L 1 ( i d ( τ ) ) = d i d ( τ ) d τ ;   L 2 ( i q ( τ ) ) = d i q ( τ ) d τ ;   L 3 ( ω ( τ ) ) = d ω ( τ ) d τ .
The approximate solutions given by Equation (16) in our case can be written as
i ˜ d ( τ ) = i d 0 ( τ ) + i d 1 ( τ , C i ) , i = 1 , 2 , i ˜ q ( τ ) = i q 0 ( τ ) + i q 1 ( τ , D j ) , j = 1 , 2 , ω ˜ ( τ ) = ω 0 ( τ ) + ω 1 ( τ , E k ) , k = 1 , 2 ,
The initial approximations id0, iq0, and ω0 are determined from Equations (18) and (11), which in this case read:
d i d 0 ( τ ) d τ = 0 i d 0 ( 0 ) = 0.438786995 d i q 0 ( τ ) d τ = 0 i q 0 ( 0 ) = 0.843879596 d ω 0 ( τ ) d τ = 0 ω 0 ( 0 ) = 0.499239911
The solution of System (26) is
i d 0 ( τ ) = 0.438786995 i q 0 ( τ ) = 0.843879596 ω 0 ( τ ) = 0.499239911
The non-linear operators for the system (12) are
N 1 ( i d , i q , ω ) = ω i q + 0.960143255 i d N 2 ( i d , i q , ω ) = ω i d + 0.960143255 i q + 2.061756973 ω N 3 ( i d , i q , ω ) = 0.168386689 i q 0.000808844 v 2 0.024807429 v ω + 1.124718044 v ω 2.5
where the wind velocity v is given by Equation (13). By substituting Equations (27) into Equations (28), it holds that
N 1 ( i d 0 , i q 0 , ω 0 ) = 0 N 2 ( i d 0 , i q 0 , ω 0 ) = 0 N 3 ( i d 0 , i q 0 , ω 0 ) = 0.159239505 + 0.1002444079 cos 2 π τ λ 0.003639798 cos 4 π τ λ + 0.1980691808 13 3 cos 2 π τ λ
The linear equations for the first approximation given by Equations (21), in this case are:
d i d 1 ( τ ) d τ + A 2 ( τ , C i ) = 0 , i d 1 ( 0 ) = 0 d i q 1 ( τ ) d τ + A 2 * ( τ , D j ) = 0 , i q 1 ( 0 ) = 0 d ω 1 ( τ ) d τ + A 1 ( τ , E k ) N 3 ( i d 0 , i q 0 , ω 0 ) + A 2 * * ( τ , E k ) = 0 , ω 1 ( 0 ) = 0
Taking Expression (29) and the initial condition from Equation (30) into account, in the following it is considered that
A 2 ( τ , C i ) = [ C 1 cos π τ λ + C 2 cos 3 π τ λ + C 3 cos 5 π τ λ + C 4 cos 7 π τ λ ] A 2 * ( τ , D i ) = [ D 1 cos π τ λ + D 2 cos 3 π τ λ + D 3 cos 5 π τ λ + D 4 cos 7 π τ λ + D 5 cos 9 π τ λ ] A 1 ( τ , E k ) = 0 A 2 * * ( τ , E k ) = [ E 1 cos π τ λ + E 2 cos 3 π τ λ + E 3 cos 5 π τ λ ]
The first approximations are obtained from Equations (30) and (31) under the form:
i d 1 ( τ ) = λ π [ C 1 sin π τ λ + 1 3 C 2 sin 3 π τ λ + 1 5 C 3 sin 5 π τ λ + 1 7 C 4 sin 7 π τ λ ] i q 1 ( τ ) = λ π [ D 1 sin π τ λ + 1 3 D 2 sin 3 π τ λ + 1 5 D 3 sin 5 π τ λ + 1 7 D 4 sin 7 π τ λ + 1 9 D 5 sin 9 π τ λ ] ω 1 ( τ ) = λ π [ E 1 sin π τ λ + 1 3 E 2 sin 3 π τ λ + 1 5 E 3 sin 5 π τ λ ]
The approximate solutions of Equations (11) and (12) are obtained from Equations (27), (32), and (25). The optimal values of Ci, Dj, and Ek were determined by the collocation method as follows:
C 1 = - 0.001880098936 , C 2 = 0.000249576329 , C 3 = 0.0001099044306 , C 4 = 0.000047008063 D 1 = - 0.000429218279 ,   D 2 = - 0.0001028685602 ,   D 3 = 0.000044633562 ,   D 4 = 0.000029287755 ,   D 5 = 0.000009332777 ,   E 1 = 0.001592362394 , E 2 = - 0.000310689633 , E 3 = - 0.000065075109
The approximate solution (16) for Equations (11) and (12) can be written as follows:
i d ( τ ) = - 0.438786995 - 0.842240332001 sin π λ τ + 0.111804356099 sin 3 π λ τ + + 0.049234613317 sin 5 π λ τ + 0.021058512367 sin 7 π λ τ
i q ( τ ) = - 0.843879596 - 0.192279746121 sin π λ τ - 0.046082708017 sin 3 π λ τ + + 0.019994791658 sin 5 π λ τ + 0.013120229226 sin 7 π λ τ + 0.004180865769 sin 9 π λ τ
ω ( τ ) = 0.499239911 + 0.713341093867 sin π λ τ - 0.139181686295 sin 3 π λ τ - 0.029152126573 sin 5 π λ τ
where λ = 1407.36.
Figure 1, Figure 2 and Figure 3 show the approximate solution of Equations (11) and (12) which, for validation purposes, were compared with numerical solutions obtained using a fourth-order Runge–Kutta method.
The changes occurring in the wind profile at the moment τ = 0 generated a non-stationary regime in the system characterized by a variation in the angular speed ω and also a significant variation in the currents of the generator id and iq. The angular speed increased from the value ω = 0.5 to ω = 1.35, which is by 2.7 times. Such increases in angular speed under the action of the wind gust could lead to an exceedance of the limit of overload and should be treated with special attention. From Figure 3, one can see that the angular speed of the turbine exceeded the nominal angular speed (ω = 1) by 35%.
These dynamic changes in the operating conditions generated by the wind gust affect the whole mechanical system of the turbine generator, which exhibits mechanical loads emphasized by the mechanical torque, illustrated in Figure 4. In Figure 4 a sudden increase of the torque by almost 20% can be observed, reaching a maximum at around τ = 350. The increasing gradient of the torque was higher than that of the wind speed, which produced substantial mechanical stress in the turbine under the action of the wind gust.
One can see from Figure 5 that under the action of the wind gust, the electrical power at the generator had a similar variation as the angular speed, since the electrical voltage is proportional with ω.

5. Conclusions

In the present work, a new technique is proposed to obtain an analytical solution to the dynamic model of a wind-power system. An effective analytic solution is obtained for the governing equations and, as far as we are aware, there are no analytical solutions available in the literature for this particular problem. Comparison with numerical integration results obtained using a fourth-order Runge–Kutta method revealed that the proposed analytical approach was very accurate. The obtained analytical solution was in very good agreement with the numerical integration results, which proves the validity of our procedure. This indicates that the proposed approach is valid even if the non-linear differential equation does not contain any small or large parameters, which is a problem when applying some other methods. Compared to other analytical methods known in the literature, the proposed approach is very easy to use since it does not need higher-order approximations to obtain very good results, and it is very accurate when applied to complex problems.
Our procedure provides us with a simple way to optimally control and adjust the convergence of the solution, and can give good approximations in a few terms after only the first iteration. The convergence of the approximate solution obtained by the OAFM is determined by the optimal auxiliary functions A1 and A2, where the values of the convergence-control parameters Ci, Dj, and Ek are optimally determined in a rigorous way.
The proposed dynamical model describing the generator wind turbine system under a simple wind gust allows for analysis of both mechanical and electrical phenomena and determining the performances of the dynamic regime produced by wind turbulence. It was proved that the wind speed can be considered in the system of equations describing the dynamic model to predict the system response to specific changes in speed. For this purpose, it is necessary to know the wind profile as a function of time. The present study is limited to only one type of wind profile, and in our future research work we intend to develop other approaches when modeling this profile describing the gust.
Finally, it is observed that the proposed approach allows an analytical solution to be obtained, which is very advantageous and useful for automatic control systems and protection systems used in this kind of aero-electric installation.
Concerning the proposed method as a whole, there are no known limitations to its application, and in our future works we will be concerned with applying this promising method to even more complicated strongly non-linear problems from real life.

Author Contributions

Conceptualization, N.H. and V.M.; Formal analysis, N.H. and V.M.; Funding acquisition, N.H. and F.D.; Investigation, N.H., V.M. and G.M.; Methodology, N.H., V.M. and G.M.; Project administration, N.H.; Resources, N.H.; Software, N.H.; Supervision, N.H.; Validation, N.H. and F.D.; Visualization, N.H.; Writing—original draft, N.H.; Writing—review & editing, F.D.

Funding

This research received no external funding.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Comparison between the approximate solution and numerical integration results for id: numerical, analytical solution (33) _______ numerical; _ _ _ _ _ analytical.
Figure 1. Comparison between the approximate solution and numerical integration results for id: numerical, analytical solution (33) _______ numerical; _ _ _ _ _ analytical.
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Figure 2. Comparison between the approximate solution and numerical integration results for iq: numerical, analytical solution (34) _______ numerical; _ _ _ _ _ analytical.
Figure 2. Comparison between the approximate solution and numerical integration results for iq: numerical, analytical solution (34) _______ numerical; _ _ _ _ _ analytical.
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Figure 3. Comparison between the approximate solution and numerical integration results for ω: numerical, analytical solution (35) _______ numerical; _ _ _ _ _ analytical.
Figure 3. Comparison between the approximate solution and numerical integration results for ω: numerical, analytical solution (35) _______ numerical; _ _ _ _ _ analytical.
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Figure 4. Variation in mechanical torque of the wind turbine during the wind gust.
Figure 4. Variation in mechanical torque of the wind turbine during the wind gust.
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Figure 5. Variation in electrical power during the wind gust P e = r l ( i d 2 + i q 2 ) .
Figure 5. Variation in electrical power during the wind gust P e = r l ( i d 2 + i q 2 ) .
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MDPI and ACS Style

Herisanu, N.; Marinca, V.; Madescu, G.; Dragan, F. Dynamic Response of a Permanent Magnet Synchronous Generator to a Wind Gust. Energies 2019, 12, 915. https://doi.org/10.3390/en12050915

AMA Style

Herisanu N, Marinca V, Madescu G, Dragan F. Dynamic Response of a Permanent Magnet Synchronous Generator to a Wind Gust. Energies. 2019; 12(5):915. https://doi.org/10.3390/en12050915

Chicago/Turabian Style

Herisanu, Nicolae, Vasile Marinca, Gheorghe Madescu, and Florin Dragan. 2019. "Dynamic Response of a Permanent Magnet Synchronous Generator to a Wind Gust" Energies 12, no. 5: 915. https://doi.org/10.3390/en12050915

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