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Großformatige Linearmotorschieber werden in der Industrie (z.B. in der Fertigung von Flüssigkristallpaneelen) häufig eingesetzt. Ein geeignetes Steuerungsmodell ist wichtig, um Steuerungsmethoden zur Verbesserung der Steuerungsleistung abzuleiten. Obwohl in früheren Studien verschiedene Steuerungsmodelle großformatiger Linearmotorschieber entwickelt wurden, liegen noch keine Ergebnisse zu Steuerungsmodellen vor, die die Eigenschaften eines großformatigen Linearmotorschiebers vom Typ Portalschieber präzise wiedergeben. Im Allgemeinen kann eine Methode zur Ableitung einer Übertragungsfunktion mittels Frequenzgang angewandt werden, um ein genaues Steuerungsmodell zu erhalten, doch großformatige Linearmotorschieber haben einzigartige Eigenschaften, nämlich "Verzerrung" und "Kopplung", d.h. die nur aus dem Frequenzgang abgeleitete Übertragungsfunktion kann die experimentellen Ergebnisse nicht mit hoher Genauigkeit reproduzieren. In diesem Aufsatz berichten wir über eine Methode, um ein hochpräzises Steuerungsmodell eines großformatigen Linearmotorschiebers vom Typ Portalschieber zu erhalten.
Mit KI übersetzt
Abstract
Large-sized gantry-type linear motor sliders are widely used in industry (e.g. in liquid crystal panel production equipment). An appropriate control model is important for deriving control methods to improve control performance. Although various control models of large-sized gantry-type linear motor sliders have been developed in previous studies, no results are yet reported regarding control models which precisely reproduce characteristics of a large-sized gantry-type linear motor slider. In general, a method to derive a transfer function by using frequency responses can be employed to obtain an accurate control model, however, large sized gantry-type linear motor sliders have unique characteristics, namely “distortion” and “coupling”, thus the transfer function derived using only the frequency response cannot reproduce the experimental results with high accuracy. In this paper we report on a method to obtain a highly precise control model of a large sized gantry-type linear motor slider.
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Introduction
In recent years, number of applications of linear motors in industry has increased [1, 2]. For example, linear motors are used for carrying thin steel plates in the steel industry [3]. However, to carry heavy loads, the linear motor slider is required to have a sufficient power. When aiming at higher power of a single linear motor, special design and individual manufacturing are required to produce a large-sized motor. Special permanent magnets are used to achieve strong magnetic fields, which with other various issues inevitably contribute to costs [4‐6]. Therefore, low-cost gantry type linear motor sliders, which enable high output power, are used. Applications include for example liquid crystal panel production devices [7, 8] or feed drives of machining centers [9].
To improve control performance of a gantry-type linear motor slider, it is important to develop a precise control model. In the previous studies, a control model of large-sized gantry-type linear motor slider was developed by using a spring-mass-damper system [4]. However, all frequency characteristics (e.g. yawing vibration and pitching vibration [10], machine stand vibration [11]) were not considered in the control model, thus the accuracy of the control model was not sufficient. For example, the oscillation phenomenon, which occurs in the actual experimental machine when high feedback gain is applied, is not reproduced with the developed control model. Ref. [10] uses a model that takes pitching and yawing vibrations into consideration. However, in Ref. [10] feedback gain is gradually increased with a goal to the problem each time separately. Therefore, numerous experiments are required to increase feedback gain, which takes time and costs. As a method of deriving a model to be capable of reproducing all frequency responses in a single experiment, a method to derive a transfer function using frequency responses is available. However, large sized gantry-type linear motor sliders have unique characteristics, namely “distortion” and “coupling”. Ref. [12] proposes a control model that can reproduce all frequency characteristics and unique characteristics of the large sized gantry-type linear motor slider. However, since Ref. [12] does not consider friction, the experimental results cannot be accurately reproduced. In this paper we demonstrate that the experimental results could be accurately reproduced by considering friction.
Figure 1 shows a large-sized gantry-type linear motor slider which is used in this research. The experimental equipment is comprised of two sliders arranged in parallel and linked by two attachments and a top bar. This experimental equipment has “distortion” and “coupling” which are the problems of large machines [12]. The sliders have linear encoders that measure the position of each table with a resolution of 0.5 µm. Table 1 shows the main specifications of each linear motor slider.
Figure 2 shows a block diagram of the defined control model. Here f1 and f2 are force references to each linear motor slider, G1(s), G2(s), G3(s) and G4(s) are transfer functions from each force reference to each acceleration, s is Laplace operator, xt1 and xt2 are positions of two tables, “Approximation of distortion” block is same block used in Ref. [4] and [12] which outputs the measured distortion of Fig. 3, and xfb1 and xfb2 are positions of each table affected by the distortion.
By using the measured frequency responses, transfer functions which approximate the measured frequency responses were derived. Vibration of the experimental machine was excited by inputting a white noise signal to each linear motor and an acceleration signal was acquired from accelerometers which were attached to the top bar of the experimental machine [12]. Transfer functions Gi, which correspond to G1(s), G2(s), G3(s) and G4(s), are defined as described by Eq. (1).
$$ G_{i} (s) = \frac{{b_{i2} s^{2} + b_{i1} s + b_{i0} }}{{s^{2} + a_{i1} s + a_{i0} }} $$
(1)
In order to determine coefficients of Gi(s), evaluation functions Ji were defined as described by Eq. (2) for each Gi (i = 1,2,3 and 4), where j is imaginary unit, fk [Hz] = 0.5 × k are frequency responses of Hi with frequencies fk, and wi(fk) are weight functions, applied to each frequency.
Since Ji represent the differences of frequency responses between Gi and Hi, the optimal coefficients of Gi were derived by minimizing Ji. In this case, values of the weight functions around 100 Hz were set larger than other weight values because all frequency responses have vibration mode at around 100 Hz. Equation (3) shows the condition of the weight function wi(fk).
Table 2 shows the coefficients of transfer functions which are determined by this method. Figure 4 shows comparison of frequency responses Hi and frequency responses of identified transfer functions Gi. Frequency responses of identified transfer functions Gi does not approximate the low-frequency region, but it can be confirmed that the vibration around 100 Hz existing in the experimental machine is well approximated. Therefore, this paper considers that each transfer function can approximate each frequency response.
Table 2
Coefficients of identified transfer functions
i
1
2
3
4
ai1
151.83
117.84
115.93
138.88
ai0
4.46 × 105
4.29 × 105
4.31 × 105
4.51 × 105
bi2
3.77
− 0.159
− 0.157
3.79
bi1
475.89
324.79
299.97
468.46
bi0
7.95 × 105
6.25 × 105
6.24 × 105
7.76 × 105
Fig. 4
Measured frequency responses and frequency responses of identified transfer functions. aH1 and G1, bH2 and G2, cH3 and G3, dH4 and G4
Since the two tables of the gantry-type linear motor slider are coupled by the top bar and the attachments, the position difference between the two tables does not exceed a certain range. Figure 5 shows the measured position difference when 40 N step force reference was input to one of the linear motor sliders [4]. A difference between (a) and (b) is a difference in input. According to these results, it is verified that position difference between the two tables without distortion converges to a certain value when step force input is applied to one of the linear motor sliders. However, the derived transfer function cannot reproduce this characteristic. Therefore, the transfer function needs to be modified.
Fig. 5
Measured position difference between two tables. a Step force reference input to F1, b Step force reference input to F2
In order to reproduce the characteristic caused by coupling of the two tables, the position difference between the two tables should converge to a certain value when the input step force reference is applied to one of the two sliders in the control model.
According to the final value theorem, the final values of position difference for step force reference can be written as Eqs. (4) and (5). Two responses of the position differences to force reference f1(t) and f2(t) were defined as e1(t) and e2(t) respectively.
To develop a control model which reproduces the characteristics caused by the tables coupling, Eqs. (4) and (5) should converge. Convergence conditions of these limits can be written as Eqs. (6)–(8) by using coefficients of transfer functions Gi as shown in Eq. (1).
To satisfy these equations, coefficients of transfer functions in the control model were modified. In this case, not to change the frequency characteristics of the resonance point, poles of each transfer function should not be changed. Therefore, the coefficients of numerator of transfer function, b11, b20, b30, and b41 were replaced by b′11, b′20, b′30 and b′41 as shown in Eqs. (10) to (13) respectively.
Then the modified transfer functions were defined as G′1(s), G′2(s), G′3(s) and G′4(s). Table 3 shows the coefficients of each modified transfer function. For the following discussion, the control model using G′1(s), G′2(s), G′3(s) and G′4(s) instead of G1(s), G2(s), G3(s) and G4(s) is defined as a modified control model.
Table 3
Coefficients of modified transfer functions
i
1
2
3
4
ai1
151.83
117.84
115.93
138.88
ai0
4.46 × 105
4.29 × 105
4.31 × 105
4.51 × 105
bi2
3.77
− 0.159
− 0.157
3.79
bi1
389.89
324.79
299.97
344.46
bi0
7.95 × 105
7.65 × 105
7.42 × 105
7.76 × 105
In the modified control model, responses of position difference for force references f1(t) and f2(t) were defined as e′1(t) and e′2(t) respectively.
Figure 6 shows the responses e′1(t) and e′2(t) for 40 N step force reference. It can be confirmed that both step responses converge to a certain value. Additionally, in comparison with results of actual experiment, shown in Fig. 5, convergence value is relatively close.
Fig. 6
Responses of e′1(t) and e′2(t) for step force reference. a Response of e′1(t), b Response of e′2(t)
Figure 7 shows comparison between measured frequency response, frequency response of identified transfer function, and frequency response of modified transfer function. It can be seen that influence on frequency response by the coefficients modifications is small enough for all frequency responses and each G′i well approximates the measured frequency response.
Fig. 7
Comparison of measured frequency responses Hi and transfer functions Gi and G′i. aH1, G1 and G′1, bH2, G2 and G′2, cH3, G3 and G′3, dH4, G4 and G′4
Therefore, it can be said that modified control model which reproduces the characteristics of coupled tables was derived without changing frequency characteristics of the identified control model.
Results and discussion
Verification of simulation model
In order to verify the validity of the modified control model, comparison between the simulation results of modified control model and actual experimental results was conducted. In the previous research, the results of control experiments which used the same experimental equipment as in this research were reported. In Ref. [4], P-PI control for each axis was applied for the control experiment and the results show that reaction force occurred between the two tables. In Ref. [14], a control method that suppresses reaction force was applied and the results show that the reaction force was suppressed with low feedback loop gain. However, with high feedback loop gain, vibration of force reference occurred.
In this research, control simulations were conducted with these two control methods and it was verified that the same phenomenon occurs in the simulations. The simulations were implemented by using MATLAB/Simulink programs.
Furthermore, the experimental machine of this study is the same as the experimental machine of Ref. [4], therefore, the same friction model is used as in Ref. [4]. Equation (14) shows the friction model and the Table 4 shows the parameters of friction.
Here Fdn is friction disturbance, Fsn is maximum static friction force, vtn is table velocity, a is power index to express friction characteristic in a region below Stribeck velocity, vsn is Stribeck velocity, Fvn is viscous friction coefficient, and Fcn is Coulomb friction.
As the control method 1, proportional-position-proportional-integral-velocity (P-PI) control for each axis, as shown in Ref. [4] was used. Therefore, the force references for each axis are shown in Eqs. (15) and (16). Figure 8 shows block diagram of control method 1.
where M1 and M2 are nominal masses of each table, xfb1 and xfb2 are position responses of each table, Kp is position proportional gain, Ki is velocity integral gain, Kv is velocity proportional gain, and xr is position reference, s is Laplacian operator.
In this simulation, position reference and feedback loop gain are set to the same values as in Ref. [4]. The conditions of feedback loop gain are shown in Table 5 and position reference is shown in Fig. 9.
Figure 10 shows results of the simulation and comparison with the experimental results. Figure 10 shows that reaction forces between Tables 1 and 2 occurred also in the simulation. Simulation result has the same characteristics of experimental result. Therefore, under the conditions of control method 1, the control model approximates the actual experimental results.
Fig. 10
Results of simulation and comparison with experimental results in control method 1. a Case1-1, b Case1-2
As the control method 2, a method that suppresses the reaction force, which is shown in Ref. [14] was used. Therefore, force references for each linear motor are shown in Eqs. (17) and (18), where l is distance between Tables 1 and 2, lg is distance between Table 1 and center of the mass, and θ is rotation angle. Other parameters have the same meaning as in control method 1. Control method 2 is based on the P-PI control. Hence, it considers θ but has no control over it, paying closer attention to the work-point position on the top bar of the linear motor slider, which in general is the center-of-mass of the top bar. Figure 11 shows block diagram of control method 2.
The conditions of feedback loop gain are shown in Table 6 and position reference is shown in Fig. 9. In this simulation, if the force reference exceeds 500 N, the simulation stops automatically. Figure 12 shows the results of the simulation and comparison with the experimental results. In Fig. 12, only F1 is shown as a force reference because F1 and F2 are exactly the same. In case 2-1, in both simulation and experiment, the reaction forces between the two tables were suppressed. Moreover, the force reference is substantially the same as the experimental result. In case 2-2, the force reference vibrates. In the simulation, the force reference diverged rapidly, and the simulation stopped because magnitude of the force reference exceeded 500 N. However, in the actual experiment, the force reference vibrated within the range of ± 100 N. To analyze the characteristics of force reference vibration, Fast-Fourier-Transformation was applied, and amplitude spectrum was acquired. Figure 13 shows amplitude spectrum of force reference F1 in case 2-2. According to the amplitude spectrum, it can be seen that each force reference vibrates at the same frequency of 100 Hz. Additionally, based on the position response, a velocity response of actual experiment was calculated by using Euler approximation. Figure 14 shows velocity response in the simulation and in the actual experiment. Figure 14b, d can be seen that vibrations of Vfb1 and Vfb2 are in phase. Therefore, the signal values in Figs. 12 and 14 are different between the experimental results and the simulation results. However, experimental results and simulation results have the same tendency. In Case 1, the slider operates safely, but in Case 2, vibration occurs. In every condition of feedback loop gain, all simulation results in control method 2 are similar to the experimental results.
Table 6
Feedback loop gain for control method 2
Kp
Kv
Ki
Case 2-1
100 1/s
400 1/s
400 1/s
Case 2-2
125 1/s
500 1/s
500 1/s
Fig. 12
Results of simulation and comparison with experimental results in control method 2. a Case2-1, b Case 2-2
Comparison of velocity response of simulation and actual experiment in Case 2-2. a Velocity response of actual machine, b velocity response of actual machine (enlarged), c velocity response of simulation, d velocity response of simulation (enlarged)
In this research, highly precise control model that can reproduce all frequency characteristics and unique characteristics of a large-sized gantry-type linear motor slider was derived. According to comparison of simulations and actual experiments which were implemented with two control methods, the control model well approximates characteristics of a gantry-type linear motor slider. A control method for improving the control performance of large-sized gantry-type linear motor slider can be derived by using this model. Future study topic is verification of validity of the proposed method when characteristics of actual machine change, for example, the movement of the center of gravity in real time.
Acknowledgements
Not applicable.
Competing interests
The authors declare that they have no competing interests.
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