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Robust-Adaptive Flux Observers in Speed Vector Control of Induction Motor Drives

Written By

Filote Constantin and Ciufudean Calin

Submitted: 26 December 2010 Published: 09 September 2011

DOI: 10.5772/25153

From the Edited Volume

Numerical Analysis - Theory and Application

Edited by Jan Awrejcewicz

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1. Introduction

The speed control of induction motors can be divided into two distinct strategies, depending on the type of dynamics that is required: scalar control (static control of the torque) and vector control (dynamic control of the torque) (Blaabjerg et al. 2005; Bose, 2000, 2006; Filote et al. 2009; Holtz, 2002; Leonhard, 1990; Umanand & Bhat, 1995; Vas, 1998).

Since the couple and flux levels depend on the motor behavior to frequency and voltage applied to it, maintaining the flux constant is strongly required in scalar control (V/f control). Despite the simplicity and the low cost implementation of the control method, it still presents the disadvantage of poor torque dynamics.

Vector control reassesses one of the advantages of direct current (dc) drives, which is the separation of speed and couple loops. According to its structure and to its own functioning principle, the dc drive is naturally field oriented, hence, the separation of the speed and current loops.

In the case of vector controllers of induction motor, the magnitude and phase stator current are controlled in accordance with the flux vector. There are three vector control strategies according to the type of drive-controlled flux: stator flux, rotor flux and air gap flux.

We can determine the magnitude and position of the rotor flux by using flux sensors (direct field-oriented control), estimators or observers (indirect field-oriented control) and by measuring some electrical and mechanical measurable states of electrical drives induction motor systems.

When the rotor flux estimation is performed after measuring only the electrical measurable states (voltages and stator currents), in this case we have a sensorless vector control system.

The implementation of the direct field-oriented control requires the measurement or calculation of the flux space vector (magnitude and position). The measurement of the air gap flux requires the use of some Hall sensors (Umanand & Bhat, 1995), which requires specially constructed induction motor. On one hand, they are very sensitive to temperature and mechanical vibrations. The flux signal is highly distorted by slot harmonics (Kreindler, 1994), whose spectrum and amplitude depend on the rotor speed (hence, the difficulty to be filtered).

The implementation of the indirect field-oriented control requires the identification of rotor flux instantaneous position, and the calculus of stator current prescribed value in sensorless vector control system (Gadue et. al. 2009; Griva et al. 1997; Lascu et al. 2004). The transformation of stator axes and calculus of commands have to be applied to the inverter to obtain this current. The flux estimation is dependent on the induction machine parameters.

In this chapter, we present a comparison of the performances among three rotor flux observers. If the rotor flux is applied as criterion in the vector control of induction motor, the value and direction of the flux needs to be known. Starting from two induction motor mathematical models, this section analyses theoretically and in terms of simulation, the performances of a conventional rotor flux simulator with a view to the temperature influence of the rotor resistance. Flux observers were used to estimate the flux, since classic methods do not seem to provide acceptable performances. This section analyses the performances of a robust-adaptive rotor flux observer, starting from a mathematical model and using simulation.

Section 2 presents the analysis of conventional flux simulators based on the current and tension model of the induction model. The numerical simulation results of the two simulators generate conclusions regarding their implementation in applications. In section 3, we introduce the adaptive flux observer and present simulation tests of its robustness in rotor resistance variation with temperature. Closed-loop vector control system with robust-adaptive flux observer is introduced in section 4. The correct estimation methods of the rotor flux magnitude and position are checked and we verify if the system orients itself after the rotor flux direction.

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2. Analysis of the conventional flux simulators

The structure of the adaptive observers is based on the combination of a simulator for the estimated magnitude with a corrector for the estimation error (Schauder, 1989). For the asynchronous motor, two types of such simulators can be inferred:

  • simulator based on a current model;

  • simulator based on a tension model.

2.1. Non-linear current model

An asynchronous motor model with a random orthogonal reference is going to be built to be used for flux observer and speed estimator simulation, in rotor resistance identification in sensorless vector control.

When the motor is sinusoidal voltage fed and it functions in a random reference, the equivalent classic single-phase scheme of asynchronous motor is built according to Fig. 1.

Figure 1.

Equivalent single-phase scheme of asynchronous motor in a random orthogonal reference

In a randomly oriented orthogonal reference, the vector equations of the asynchronous motor, considering d axes as the real axes (1), and q axes as the imaginary direction (j), can be written as follows:

{u¯s=Rsi¯s+dΦ¯sdt+jωdqΦ¯su¯r=0=Rri¯r+dΦ¯rdt+j(ωdqωm)Φ¯rE1

where:

{u¯s=usd+jusqu¯r=urd+jurq {i¯s=isd+jisqi¯r=ird+jirq
{Φ¯s=Φsd+jΦsqΦ¯r=Φrd+jΦrqE2

The expressions of stator and rotor fluxes, according to Fig. 1, can be written as follows:

{Φsd=Lsisd+MirdΦsq=Lsisq+Mirq
{Φrd=Lsird+MisdΦrq=Lsirq+MisqE3

The non-linear model of the asynchronous motor has as input data the stator orthogonal voltages that resulted from the three-phased voltages by means of a Park system transform [P(0)], and as output data, the stator currents and the rotor fluxes in the two orthogonal axes.

The expressions of rotor currents are obtained from relations (3), according to model input values:

{ird=1Lr(ΦrdMisd)irq=1Lr(ΦrqMisq)E4

The derived rotor flux expressions are obtained from rotor voltage equations (1):

{dΦrddt=Rrird+(ωdqωm)ΦrqdΦrqdt=Rrirq(ωdqωm)ΦrdE5

Relations (4) and (5) are replaced and the expressions of two model output are obtained according to the model input:

{dΦrddt=RrMLrisdRrLrΦrd+(ωdqωm)ΦrqdΦrqdt=RrMLrisqRrLrΦrq(ωdqωm)ΦrdE6

The stator flux expressions (3) of the two orthogonal axes are replaced in the stator voltage equations (1) and there results:

{disddt=1Ls(MdirddtRsisd+ωdqLsisq+ωdqMirq+usd)disqdt=1Ls(MdirqdtRsisqωdqLsisdωdqMird+usq)E7

The rotor current expressions obtained in (4) are replaced, and then, the relations (6) are replaced in (7) and we obtain:

{disddt=11M2LsLr{(RsLs+RrM2LsLr2)isd+(1M2LsLr)ωdqisq+RrMLsLr2Φrd+MLsLrωmΦrq}disddt=11M2LsLr{(1M2LsLr)ωdqisd(RsLs+RrM2LsLr2)isqMLsLrωmΦrd+RrMLsLr2Φrq}E8

The total dispersion coefficient is defined noted by:

σ=1M2LsLrE9
,

value which simplifies considerably the writing of the equations characterizing the non-linear model:

Relations (8) noted with (9) become:

{disddt=(RsσLs+Rr(1σ)σLr)isd+ωdqisq+Rr(1σ)σMLrΦrd+1σσMωmΦrqdisddt=ωdqisd(RsσLs+Rr(1σ)σLr)isq1σσMωmΦrd+Rr(1σ)σMLrΦrqE10

Differential equations (6) and (10) describe a system of “electrical” differential equations which can be expresses as a state vector system:

{ddtXe=AeXe+BeUeYe=CeXeE11

where:

  • state vector is:

Xe=[isdisqΦrdΦrq]TE12
  • excitation vector is:

Ue=[usdusq]E13
  • state matrix is:

Ae=[(RsσLs+Rr(1σ)σLr)ωdqRr(1σ)σMLr1σσMωmωdq(RsσLs+Rr(1σ)σLr)1σσMωmRr(1σ)σMLrMRrLr0RrLrωdqωm0MRrLr(ωdqωm)RrLr]E14
  • state matrix, vector and matrix of initial conditions are:

Be=[1σLs001σLs0000]E15
Ye=[isdisq]
Ce=[10000100]E16

A more simplified form can be used with respect to the notations if stator and rotor time constants are noted with:

τs=LsRsτr=LrRrE17
.

A state matrix becomes:

A=[(1στs+1σστr)ωdq1σσMτr1σσMωmωdq(1στs+1σστr)1σσMωm1σσMτrMTr01τrωdqωm0Mτr(ωdqωm)1τr]E18

This generalised non-linear model of the induction motor applies to a random reference both in transient and permanent regimes.

In a stator related reference, (d-q) (ds-qs), the condition for the equation system (11) is:

ωdq=0E19

Under these conditions, the differential equation system is:

ddt[isdisqΦsdΦsq]=[(1στs+1σστr)01σσMτr1σσMωm0(1στs+1σστr)1σσMωm1σσMτrMτr01τrωm0Mτrωm1τr][isdisqΦsdΦsq]+[1σLs01σLs00000][usdusq]E20

To this “electrical” differential equation system we add a “mechanical” equation system (m indices) which can be written as:

{ddtXm=AmXm+BmUmYm=CmXmE21

where,

Xm=[ωmmrez]Am=[FfJpJ00]Um=meE22

and

Bm=[pJ0]Cm=[1000]E23

The expression of the electromagnetic torque which is expressed according to model output values is:

me=32pMLr(ΦrdisqΦrqisd)E24

Relations (19), (20) and (23) underlay the achievement of current non-linear model of asynchronous motor (I_mas_md) that was used in all estimators and identification algorithms of induction motor parameters.

2.2. Voltage non-linear model

This model has two orthogonal axes and load torque as input values, and stator and rotor currents between the two axes as output values.

For a random reference d-q, the derivative expressions in relation with the rotor current times are calculated on the basis of the general relations (1), (3), thus resulting the following differential “electrical” system, expressed by means of state vectors:

{ddtXe=AeXe+BeUeYe=CeXeE25

where:

  • state vector is:

Xe=[isdisqirdirq]tTE26
  • excitation vector is:

Ue=[usdusq]E27
  • state matrix is:

Ae=[RsσLs(ωdqωm)M2σLsLr+ωdqσRrMσLsLrMσLsωm(ωdqωm)M2σLsLrωdqσRsσLsMσLsωmRrMσLsLrRsσLsωmMσLrRrσLrωdqωmσωdqM2σLsLrωmMσLrRsσLsωdqωmσ+ωdqM2σLsLrRrσLr]E28
  • excitation matrix, vector and matrix of the initial conditions are:

Be=[1σLs001σLsMσLsLr00MσLsLr] Ye=[isdisq]
Ce=[10000100]E29

To this differential system we add the “mechanical” state equations system (20), forming together voltage model V_mas_md.

2.3. Simulator based on the current model

Next, it will be demonstrated why the simulators cannot be used as flux observers, solution which will lead to the corrector’s removal from the adaptive calculus methods. The matrix state equations describing the working of an induction motor, in orthogonal co-ordinates d-q (Filote & Graur,1998; Filote et al. 2007, 2009; Marchensoni et al. 1994; Pană, 1995; Schauder, 1989), can be written in complex as:

[i˙¯sΦ˙¯r]=[a11a12a21a22][i¯sΦ¯r]+[b10][u¯s]E30

where:

{a11=RsσLsRr(1σ)σLr;a12=MσLsLr(RrLrjωm); {a21=MRrLra22=RrLr+jωm
{b1=MRrLrσ=1(M2LsLr)E31

The current model can be obtained if we consider the second equation from relation (29) that allows us to touch the estimated flux as:

Φ˙^¯r=a21i¯s+a22Φ^¯r=(MRrLr)i¯s+(RrLr+jωm)Φ^¯rE32

The estimation error is given by the difference between the value of the estimated flux and the real one:

ε¯=Φ^¯rΦ¯rE33
.

When the motor parameters are constant, the derivative of that error, which localizes the poles of the observer in complex plane, becomes:

ε˙¯=a22ε¯=(RrLr±jωm)ε¯E34
.

The relation (33) shows that the derivative of the estimation error depends only by motor variable parameters (rotor resistance and inductance, motor speed), so it can be controlled.

Because the poles in complex plane depend on the motor speed, the observer stability will decrease while the speed increases.

2.4. Simulator based on the tension model

The expression of the tension model can be obtained from the current model of the induction motor (29), written as follows:

{i˙¯s=a11i¯s+a12Φ¯r+b1usΦ˙¯r=a21i¯s+a22Φ¯rE35

If we replace the expression for the rotor flux in the first equation, from the relation (34), with that obtained from the second equation, there results the simulator based on the tension model, defined with the expression:

Φ˙^¯r=(a21a22a11a12)i¯s+a22a12i˙¯sa22b1a12u¯s=LrM(u¯sRsi¯s)(σLrLsM)i˙¯sE36

In that case, the derivative of the estimation error is:

ε˙=0E37
.

Therefore, the simulator based on tension model is a pure integrator. Because of this reason, the simulator based on model tension does not allow reducing the initial estimation error and, at the same time, it is very sensitive at low speeds.

The advantage that the estimation error variation does not depend on Rr results in the fact that the simulator is totally insensitive to the variation of rotor resistance. Consequently, the observations made above do not have to be taken into account.

2.5. Results of numerical simulator simulations

Next, the dependence of the rotor fluxes by the variation of the rotor resistance with the temperature, at the output of a conventional simulator based on the current model of the induction motor, will be presented.

As it is well known, the rotor resistance grows up with the temperature (Leonhard, 1990) and, because of this, the results obtained for a variation with +25% will be shown.

Analyzing the dependence between the orthogonal components, the rotor flux module and the rotor resistance variation with temperature in transitory starting conditions (low speeds), the following conclusions can be inferred:

  • the rotor flux doesn’t remain constant with the rotor resistance variation by temperature;

  • that variation concerns only the magnitude of both orthogonal components and the module of the rotor flux (Figures 2 and 3 );

Consequently, that model of the induction motor cannot be used as a flux observer into a pretentious vector control system as it is the orientation system after the rotor flux.

Figure 2.

Evolution of the flux orthogonal components with rotor resistance variation (low speeds).

It can be concluded that none of these simulators can be used with satisfactory results in rotor flux estimation for the asynchronous motor because of:

  • the sensibility of the performances at rotor’s resistance variation, for the simulator based on a current model (Fig. 2);

  • the unsatisfactory low speeds working, for the simulator based on the tension model;

The satisfactory solution for indirect determination of the rotor flux is that of a robust-adaptive flux observer. Such an observer (Bose, 2006; Vas, 1998) offers remarkable robustness, with respect to the variation of the rotor’s resistance, even for high values.

Figure 3.

Evolution of the rotor flux module due to the growth of the rotor resistance at low and high speeds.

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3. Rotor flux observer

The above-mentioned disadvantages can be eliminated if flux observers are used. The latter can calculate the phasor of the rotor flux (amplitude and orientation) on the basis of some electrical units (us tensions and is stator currents) and mechanical ones (m motor speed).

3.1. The structure of the flux observer

The structure of adaptive flux observers can be deduced from the linear model of induction motor (constant rotor speed) which is represented in a d-q system of axes, fixed on the stator and having a complex written form. This way of presentation is preferred because the study of the stability of these observers and the on-line determination of the parameters of the “matrix gate” require the fixation of the position of the poles in the complex plane.

The basic structure (Filote & Graur, 1998; Kubota et al. 1993; Pană, 1995; Schauder, 1989) of the adaptive observers consists of two essential functional elements:

  • a simulator which emulates estimated values in a reference system;

  • a corrector of estimated values based on an adjustable model, which is in fact a reaction loop which uses a gate to amplify, the error between the estimated value and the real one.

Φ˙^r=simulator + gate * (reaction value -estimated corrector value)

In the case of asynchronous motor, there are two possible simulators, mainly based on:

  • Current model;

  • Voltage model.

These simulators, taken separately, can use two types of correctors:

  • Stator equations;

  • Motor voltage model.

For each corrector type, we can use three types of reaction signals:

  • Stator voltage;

  • Stator current;

  • Stator current derivative.

Combining the above presented types of simulators, correctors and reaction signals leads us to physically achievable observer structures (Pană, 1995).

In Fig. 4, it is presented the GOPINATH type flux observer which is formed of:

- Simulator (reference model) based on the current model of asynchronous motor;- Corrector (adjustable model) based on motor stator equation- Model reaction value is stator current derivative (dis/dt), which is obtained from the corrector- Gate (auto-tuning) noted with g complex value.

From a mathematical point of view, this structure of the Gopinath flux observer can be represented as relation (37).

Figure 4.

The structure of the adaptive flux observer

Following the relation (37) and in accordance with Figure 4, we can obtain the mathematical model of the estimator (38):

Φ˙^¯r=a21i¯s+a22Φ^¯r+g¯[i˙¯s(a11i¯s+a12Φ^¯r+b1u¯s)]==(a22g¯a12)Φ^¯r+(a21g¯a11)i¯sg¯b1u¯s+g¯i˙¯sE38

3.2. The stability analysis

The essential element, which determines the stability of the flux observer, as well as its insensitivity to the motor parameters variation, is gate “g”, a complex number:

g=ga+jgbE39

When motor parameters are constant, we define the estimation error, expressed by the difference between the estimated and the real rotor flux:

ε¯=Φ^¯rΦ¯rE40

Dynamics of estimation error (system stability) is given by the first derivative of estimation error:

ε˙=(a22ga12)ε=hεE41
.

Relation (41) provides the position of the two complex joined poles of flux estimator; their coordinates are Re(-h) şi +/-Im(-h). As it can be noticed, the position of these two poles depends on rotor speed, by means of a22 şi a12 coefficients (relation 30).

According to stability criteria, the system is stable if and only if the poles are in the negative complex semi plane. Here, for each value of rotor speed we have to determine ga şi gb estimator gate coefficients, such as the two poles fulfil the stability condition. Performing the calculus in relation (41), we obtain:

RrLr+jωmMσLsLr(ga+jgb)(RrLrjωm)=α+jβE42

where and represent the coordinates imposed to the two observer poles. Balancing the real and imaginary parts leads to a two equation system providing gate coefficients equal to:

ga=(RrLrα+ωmβ(RrLr)2+ωm21)σLsLrMgb=(ωmαRrLrβ(RrLr)2+ωm2)σLsLrME43

The best position of the two poles, and respectively, can be obtained from the analysis of the sensitivity of the observer to the rotor resistance variation with the temperature. In the simplest case, we can adopt the position of the poles in the negative semi plane precisely on the negative axis, which leads to the following relations:

{α=k(RrLr)2+ωm2β=0(k>0)E44

One can notice that the values of the gate coefficients depend on the rotor speed consequently they must be calculated in real time (100-200 s).

3.3. The mathematical model of the flux observer

Explaining the coefficients from expression (6.3.10) offers the final form of the GOPINATH flux observer model:

Φ˙^¯r=(a22g¯a12)Φ^¯r+(a21g¯a11)i¯sg¯b1u¯s+g¯i˙¯sE45
(Φ˙rd+jΦ˙rq)=[RrLr+jωm(ga+jgb)MσLsLr(RrLrjωm)](Φrd+jΦrq)++[MRrLr(ga+jgb)(RsσLsRr(1σ)σLr)](isd+jisq)(ga+jgb)1σLs(usd+jusq)+(ga+jgb)(i˙sd+ji˙sq)E46

Generally, it is advisable that the mathematical model be tested as a matrix state equation, which can be simulated or implemented in software environments from MATLAB or SIMULINK.

Matrix form of flux observer obtained from (46) is:

[Φ˙rdΦ˙rq]=[(RrLrMRrσLsLr2gaMωmσLsLrgb)(ωm+MωmσLsLrgaMRrσLsLr2gb)(ωm+MωmσLsLrgaMRrσLsLr2gb)(RrLrMRrσLsLr2gaMωmσLsLrgb)][ΦrdΦrq]++[gaσLsgbσLs(MRrLr+RsσLsga+Rr(1σ)σLsga)(RsσLsgb+Rr(1σ)σLrgb)gagb0gbσLsgaσLs(RsσLsgb+Rr(1σ)σLrgb)(MRrLr+RsσLsga+Rr(1σ)σLrga)gbga0][usdusqisdisqi˙sdi˙sqωr]E47

3.4. Results of numerical rotor flux observer simulation

The presented model has been simulated with a SIMULINK for MATLAB, which allows the inclusion of the differential system equations (47) in a simulation scheme, as shown in Fig. 5.

In accordance with the simulation scheme in Fig. 5 the values of the orthogonal components and the estimated rotor flux modulus will be compared (Fig. 6), from the output of the adaptive flux observer, with the real ones obtained at the output of the induction motor represented by the model in current (Li et al. 2005; Zhang et al. 2006).

The success of design flux observers is determined by pole assigning. The observers’ sensitivity can be adjusted using gain coefficient (k).

Figure 5.

The simulation scheme of the observer-motor assembly.

The very good results obtained in the flux estimation; even for important variations of the rotor, resistance with temperature (100%, in Fig. 6) demonstrates the robustness of such an observer and recommends its utilization in the applications of vector control for induction motor.

Figure 6.

Comparative presentation of the estimated (forward of the output filter) and the real rotor flux modulus.

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4. Closed-loop vector control system

Figures 7 and 8 presents the bloc diagram of a rotor flux vector control system, which contains: robust-adaptive rotor flux observer, which estimates the instantaneous position and rotor flux module; vector flux analyzer that turns after rotor flux spatial vector; control algorithm and control voltage decupling block. Algorithm block is PI type and it is implemented on two control loops: closed-loop flux control and closed-loop torque control (Zhang et al. 2006).

The measured feedback values are the orthogonal components of the stator current and voltage, as well as the rotor's rotational speed. All these are applied on the robust-adaptive observer's input.

The flux analyzer calculates the modulus and the instantaneous position of the rotor flux vector, using the orthogonal components of the estimated flux. The modulus of the rotor flux and the rotor speed are feedback values in the two independent control loops of the vector control system.

The compensatory voltage block uses these two values in order to calculate the prescribed control voltage values for PWM inverter that powers the induction machine (Alexa et al. 2008; Lascu et al. 2004).

The inputs in the voltage decoupling block are the components of the stator control current, i*sdr and i*sqr which are provided by the two PI controls. The fitting of the transfer functions of the two PI controls in speed and flux is based on the relations obtained from the rotor flux orientation strategy for the reactive component i*sdr and from the expression of the electromagnetic torque for the active component of the stator current i*sqr.

Results of real time close-loop simulation of vector control system of robust-adaptive flux observer asynchronous motor are presented by the following wave forms.

Analysis of wave forms in Fig. 9 reveals their co-sinusoidal variation and the maintenance of the two orthogonal voltages. The maximal value stabilizes fast at a value corresponding to a ratio voltage/ frequency which is dynamically calculated for an approximate nN/2 speed.

Figure 7.

Evolution of orthogonal stator voltages in a vector control system with rotor flux estimator.

Figure 8.

Vector control of induction motor with speed rotor measurement [8].

Figure 9.

Modelling of the closed-loop vector control system

The current increase in transitory regime (Fig. 10) is not as important anymore as in the case of direct start from industrial power supply, although during the simulation, the response to step signal was monitored

Figure 10.

The evolution of orthogonal stator currents, a.c. values, for vector control with robust-adaptive rotor flux estimator (m* = 157 rad/s).

Oriented stator tensions (Fig. 11), from tension compensator output, are already d.c. values (slowly variable) after a very short time (0.01 - 0.02 s).

Figure 11.

The evolution of oriented orthogonal stator tensions (d.c. values), for vector control with robust-adaptive rotor flux estimator (m* = 157 rad/s).

Same observation can be made for the evolution of oriented control stator currents (Fig. 12) from the output of torque and flux regulators.

The response to step signal leads to obtaining the flux (Fig. 13a) and speed (Fig. 13a) prescribed values, after the transitory regime ends. Adjusting the two regulators can be improved, thus obtaining a better indicial response.

Figure 12.

The evolution of oriented orthogonal stator currents (d.c. values), for vector control with robust-adaptive rotor flux estimator (m* = 157 rad/s).

Figure 13.

The evolution of rotor speed (a) and rotor modulus flux (b) for a prescribed value m*=157 rad/s.

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5. Conclusion

The vector control principle re-establishes the analogy with the dc motor drive. In the case of rotor flux vector control, where the control achieved by using a reference system oriented after the rotor flux direction, the two control loops of the flux and of the electromagnetic torque get decoupled and do not influence each other.

In this reference system depending on the rotor flux, the control strategy for induction motor becomes identical with the one used for the dc motor drive. Consequently, the flux becomes stable by means of the reactive component of the stator current (isd) and the torque by means of its active component (isq).

On the orientation direction after the rotor flux, the orthogonal oriented reactive stator current component (isdλ) is similar to the excitation current of dc motor drive. If we perform the calculation on r direction, we obtain the following value for isdλ:

isdλ=imr=ΦrM=1Wb0.0617H16AE48

which is also confirmed by the results obtained during the simulation (Fig. 12a) for the orthogonal oriented reactive stator current component (isdλ). This current is similar to an excitation current iex of an dc motor drive with ex = 1Wb and with an inductance Lex equal to 61,7 mH.

iex=ΦexLex=1Wb0.0617H16AE49

Before the implementation of the control algorithm on DSP systems, the simulation was the only method to prove that the system orients itself after the correct direction of the rotor flux.

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Acknowledgments

The authors would like to acknowledge the financial support of the Romanian National Council for Project Management under Grant PN II No. 71-065 / 2007 and No. 22-137 / 2008.

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Written By

Filote Constantin and Ciufudean Calin

Submitted: 26 December 2010 Published: 09 September 2011