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International Journal of Electrical and Computer Engineering (IJECE)
Vol. 7, No. 5, October 2017, pp. 2374 – 2381
ISSN: 2088-8708 2374
Institute of Advanced Engineering and Science
w w w . i a e s j o u r n a l . c o m
Accurate Symbolic Steady State Modeling of Buck Converter
Eko Setiawan1
, Takuya Hirata2
, and Ichijo Hodaka3
1
Interdisciplinary Graduate School of Agriculture and Engineering, University of Miyazaki, Japan
2
Department of Electronic Mechanical Engineering, National Institute of Technology, Oshima College, Japan
3
Department of Environmental of Robotics, University of Miyazaki, Japan
Article Info
Article history:
Received: Apr 6, 2017
Revised: Jun 9, 2017
Accepted: Jun 23, 2017
Keyword:
Steady state analysis
Fourier series
Switching circuit
Buck converter
ABSTRACT
Steady state analysis is fundamental to any electric and electronic circuit design. Buck
converter is one of most popular power electronics circuit and has been analyzed in various
situations. Although the behavior of buck converters can be understood approximately by
the well-known state space averaging method, little is known in the sense of detailed
behavior or exact solution to equations. In this paper a steady state analysis of buck
converter is proposed which allows the exact calculation of steady state response. Our
exact solution is expressed as a Fourier series. Our result is compared with numerical
calculation to be verified. Our method copes with more complicated problems such as
describing average power and root-mean-square power that are most critical issues in
power electronics circuit.
Copyright c 2017 Institute of Advanced Engineering and Science.
All rights reserved.
Corresponding Author:
Ichijo Hodaka
Department of Environmental Robotics, University of Miyazaki
1-1, Gakuen Kibanadai-nishi, Miyazaki, 889-2192, Japan
Phone: +81 985 587 352
E-mail: hijhodaka[at]cc.miyazaki-u.ac.jp
1. INTRODUCTION
An analysis of steady-state response of a system is important key in circuit design and control, included
dc-dc converter. In convential method, the steady state of dc-dc converter is assumed as the constant value. Many
researches based on state space averaging method and high switching frequency assumption observe steady state
response [1, 2, 3, 4, 5]. The method gives simple way to analyze but some ripples are undescribed clearly. The power
electronic handbook approximate linear ripple to analyze dc-dc converter more accurately [6]. The approximation
may be correct if the switching frequency is high. Since there are some limitation in component, some high
frequency is not always reached.
The importance of accurate steady-state analysis has already noticed in many researches [7, 8, 9, 10, 11,
12]. A significant part of the design of circuits requires the simulation of the steady-state response. Parameters
such as the gain, harmonic distortion and the input and output impedances are studied in the steady-state mode of
operation [7]. Using conventional time-stepping simulations and waiting-time for possible steady state is often not
practical because in most cases the time constants of the modes are much larger than the switching period [8]. In
conventional method of dc-dc converter analysis, steady state ripple values are negligible, compared to the steady
state values themselves. Switching power converters are inherently nonlinear and consequently it is very difficult
to calculate the root-mean-square (RMS) values of the state variable ripple. These RMS values are important in
order to calculate the current stresses of the different power converter devices as well as to filter design in order
to meet the given specifications [9]. Though power electronic handbook [6] shows the RMS calculation using
approximation linear ripple, the result is not absolutely correct due to linear approximation. In order to achieve a
high performance, proper design and control, it is necessary to have an exact model of converter [10, 11]. High
accuracy is one of major features of a good modeling [11].
The dc-dc converter analysis can be classified into two categories, numeric and symbolic analysis. The
numeric analysis is found in [7, 8, 10, 12, 13, 14, 15]. The numeric analysis observes the system response by
inputting parameter values into model. The numeric analysis needs some computation-time to show the output
Journal Homepage: http://iaesjournal.com/online/index.php/IJECE
Institute of Advanced Engineering and Science
w w w . i a e s j o u r n a l . c o m
, DOI: 10.11591/ijece.v7i5.pp2374-2381
IJECE ISSN: 2088-8708 2375
response. Relation between each parameter is not describe in the equation. The relation between parameter and
output is always observed by comparison between parameter change to output change.
The [7] construct impedance or admittance matrix of dc-dc converter. The output response of the converter
is calculated by Newton-Raphson. The steady-state output is solved per fixed time-step (fixed sampling interval).
The accuracy of analysis is dependent on time-step. Fewer sampling point causes less accuracy. On the other side,
more sampling points need more calculation time. The [13] substitute original circuit with periodically switched
linear (PSL) circuit. The PSL can be observed by Fourier series. The paper use 110 as sequence number in Fourier
series summation. The [14] also use Fourier series to simulate steady-state response. Comparing with [13], the [14]
only uses 21 sequences. The [13] applies Fourier series of current switching part. The Fourier series of switching
part substitutes original part to be analyzed by Kirchhoff Voltage and Current Law. The paper uses 180 sequence
number to draw a steady state response of system. The [12] analyzes buck converter in frequency domain due to
high accuracy comparing with conventional time-domain. The paper simulate in three different sequences number
that 0, 10 and 100. The paper shows that 10th sequences order is enough to describe steady state response. In
Fourier series based method, greater number send the accurate steady-state model but it need more calculation.
High order sequence number doesnt bring significant accuracy. Determination of the proper sequence number is
another problem beside the main steady-state analysis problem.
Contrary with numerical analysis, symbolic analysis describes relation between parameter and output in
the equation. The relation between parameter and output can be observed roughly by the equation. The symbolic
analysis is found in [9] and [11]. Symbolic analysis is complicated to be done although it show relation between
parameter and output in equation. The [9] perform steady state symbolic analysis to calculate rms value. The
paper show solution in a matrix form that is more complicated than ordinary equation. The average and rms
calculation include term which is obtained from zero derivative state assumption. Since the ripple is exist and
cannot be neglected, this assumption is contrast with early definition. The [11] solve steady-state equation by
Laplace transform and revert back into time-domain by inverse of Laplace transform. The solution need the known
initial value. The Z-transform is applied due to similarity between initial value and last value in one period. Though
the paper show symbolic analysis, the proses is long enough due to calculation of three transformations (Laplace
transform, Z-transform and inverse of Laplace transform).
In this paper, an alternative method is proposed that accurately predict and analyze the steady state of
switching power converter. The proposed method based on Fourier series since many references show the accuracy
[12, 13, 14]. The recovery function is also proposed to generate analysis without dependent in number of sequences
orders. The paper is subdivided in several sections to present clearly explanation. Section 2 shows the basic idea
of proposed method. Section 3 discusses about implementation of proposed method in buck converter and the
recovery function. Complete steady state output function of dc-dc converter is shown in this section. Section 4
verify proposed steady state function by circuit simulation. Finally, the conclusion of this paper is declared in
Section 5
2. PROPOSED FOURIER SERIES METHOD
Many phenomena studied in electric circuit are periodic in nature when time goes to infinity. These
periodic functions in time t can be expressed as Fourier series as in the following equation [16].
f(t) = γ0 +
n=0
γnejnωt
= ... + γ2ej2ωt
+ γ1ejωt
+ γ0 + γ1ejωt
+ γ2ej2ωt
+ ... (1)
with Fourier coefficients
γ0(f) =
1
T
T
0
f(t)dt, γn(f) =
1
T
T
0
f(t)e−jnωt
dt (2)
where T is the period and ω is the angular frequency defined by ω = 2π
T . In order to help understanding how
Fourier series works, let us give an input square-wave function as follows.
u(t) =
g (0 ≤ t < Td)
0 (Td ≤ t < T)
u(t) = u(t + T) (3)
Fourier coefficients of (3) are calculated as follows.
γ0(u) = gd, γn(u) =
g
jnωT
1 − ejn2πd
(4)
Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)
2376 ISSN: 2088-8708
Then the Fourier series of the equation (3) is written by equation (5).
u(t) = gd +
n=0
g
jn2π
1 − e−jn2πd
ejnωt
(5)
An electric system can be described in a simple block diagram as shown in Figure 1. It has been explained
that a periodic input has possibility to be analyzed with Fourier series. A periodic input for a transfer function
G(s) will generate a periodic output. By knowing its transfer function, the output also can be analyzed into Fourier
series. This paper analyzes steady state output in the equation (6). Buck converter can be modelled as a transfer
function. Then as we explained the above, buck converter can be expressed as the equation (6).
xss(t) = G(0)γ0(u) +
n=0
G(jnω)γn(u)ejnωt
(6)
Figure 1. Block diagram Figure 2. Buck converter circuit
3. BUCK CONVERTER ANALYSIS
Buck converter circuit is shown in Figure 2. Principally, buck converter is driven by two contrary switching
ON and OFF. In continuous conduction mode (CCM), buck converter has only two modes. Each mode can be
arranged as non-switching circuit by assuming switching part connected (ON) or disconnected (OFF). Figure 3
shows the two modes. Let us assume voltage at switching parts is equal to input function u(t) as shown in Figure
4. Input function u(t) can be described as in the equation (3).
(a) Mode-1 (b) Mode-2
Figure 3. Modes of Buck converter
Based on Figure 4, let G(s) be a transfer function from the input voltage u(t) to the output voltage x(t) as
in the following equation.
G(s) =
1
LC
s2 + 1
RC s + 1
LC
(7)
The transfer function (7) has two poles. Here we assume the poles are complex-conjugate pairs (s = ξω ± jηω),
that is,
1
R2C2
−
4
LC
< 0. (8)
With s = jω, the frequency transfer function can be written as in the following equation.
IJECE Vol. 7, No. 5, October 2017: 2374 – 2381
IJECE ISSN: 2088-8708 2377
Figure 4. Equivalent circuit
G(jnω) =
1
LC
(jnω − ξω)2 + (ηω)2
(9)
Moreover, the transfer function at s = 0 is called a DC-gain as follows.
G(0) =
1
LC
02 + 1
RC 0 + 1
LC
= 1 (10)
In the previous section, Fourier series of square-wave function was explained by the equation (5). Then,
Fourier coefficients of the input function (3) were calculated in (4). By assuming that q = jn and substituting (2),
(9), and (10) into (6), the proposed equation of buck converter can be expressed as follows.
xss(t) = gd +
n=0
1
ω2LC
(q − ξ)2 + η2
g
2πq
(1 − e−2πqd
) eqωt
= gd +
n=0
g
2πω2LC
1
(q − ξ)2 + η2
1
q
(1 − e−2πqd
)eqωt
(11)
3.1. Recovery function
The infinite series of equation (11) can be represented as follows.
fsaw(t) = π − ωt, (0 ≤ t < T), fsaw(t) = fsaw(t + T)
fc(t) =
ξ
ξ2 + η2
+ π
eξ(ωt−2π)
cos(ηωt) − eξωt
cos(η(ωt − 2π))
cosh(2πξ) − cos(2πη)
, (0 ≤ t < T), fc(t) = fc(t + T)
fs(t) = π
eξ(ωt−2π)
sin(ηωt) − eξωt
sin(η(ωt − 2π))
cosh(2πξ) − cos(2πη)
−
ξ
ξ2 + η2
, (0 ≤ t < T), fs(t) = fs(t + T)
(12)
Fourier coefficients of recovery functions are calculated by (2). By assuming q = jn, Fourier series of proposed
recovery function is described as follows.
fsaw(t) =
n=0
γn(fsaw)eqωt
fc(t) =
n=0
γn(fc)eqωt
fs(t) =
n=0
γn(fs)eqωt
(13)
where
γn(fsaw) =
1
q
, γ0(fsaw) = 0
γn(fc) =
q − ξ
(q − ξ)2 + η2
, γ0(fc) = 0
γn(fs) =
η
(q − ξ)2 + η2
, γ0(fs) = 0
(14)
Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)
2378 ISSN: 2088-8708
3.2. Time-delay function
Let time-delay function be described as in the following.
˜f(t) = f(t − Th) (15)
where T is periodic time and h is delay constant. Fourier coefficients of time-delay function are simply described
as
γn( ˜f) = e−q2πh
γn(f). (16)
3.3. Proposed steady-state function
We can recover function of time expressed by the exponential and trigonometric functions by using our
recovery functions (13). The proposed steady state buck converter equation can be also solved by the recovery
functions. The summation part of equation (11) can be partially decomposed as follows.
1
(q − ξ)2 + η2
1
q
=
1
(η2 + ξ2)
1
q
+
−q + 2ξ
(q − ξ)2 + η2
=
1
η2 + ξ2
1
q
−
q − ξ
(q − ξ)2 + η2
+
ξ
η
η
(q − ξ)2 + η2
(17)
In the next step, we substitute (17) into (11).
xss(t) = gd+
g
2πω2LC(η2 − ξ2)
n=0
1
q
−
q − ξ
(q − ξ)2 + η2
+
ξ
η
η
(q − ξ)2 + η2
(1−e−2πqd
)eqωt
(18)
Let us assume that
m =
g
2πω2LC(η2 − ξ2)
, µ =
ξ
η
. (19)
By assuming q = jn, the equation (18) may be written as in the following.
xss(t) = gd + m
n=0
1
q
(1 − e−2πqd
)eqωt
− m
n=0
q − ξ
(q − ξ)2 + η2
(1 − e−2πqd
)eqωt
+ mµ
n=0
η
(q − ξ)2 + η2
(1 − e−2πqd
)eqωt
= gd + m






n=0
γn(fsaw)eqωt
fsaw(t)
−
n=0
γn(fsaw)e−2πqd
eqωt
fsaw(t−T d)







− m






n=0
γn(fc)eqωt
fc(t)
−
n=0
γnfce−2πqd
eqωt
fc(t−T d)







+ mµ






n=0
γn(fs)eqωt
fs(t)
−
n=0
γn(fs)e−2πqd
eqωt
fs(t−T d)







(20)
The equation (20) is easy to be understood if we use the recovery functions as (21).
xss(t) = gd + m fsaw(t) − fsaw(t − Td) − m fc(t) − fc(t − Td) + mµ fs(t) − fs(t − Td) (21)
IJECE Vol. 7, No. 5, October 2017: 2374 – 2381
IJECE ISSN: 2088-8708 2379
The proposed equation (21) covers infinite series with the recovery functions. Furthermore, the calculation of the
average and RMS power are traceable by the recovery functions as follows accurately.
Pavg =
1
T
T
0
(xss(t))2
R
dt
Prms =
1
T
T
0
(xss(t))4
R2
dt
(22)
(a) Complete response
(b) Steady state response
Figure 5. Comparison between SPICE and proposed analysis of parameter-1
4. SIMULATION RESULT
This section validates our proposed function (21) result by comparing with SPICE (Simulation Program
with Integrated Circuit Emphasis). Numerical parameter of dc-dc converter is determined as shown in Table 1.
Numerical parameter of resistance (R), inductance (L) and capacitance (C) give complex-conjugate poles.
Numerical calculation utilized mathematical software to plot the proposed steady state response. SPICE simulates
the actual circuit responses. Complete response of capacitor voltage by parameter-1 is shown in Figure 5a. Numer-
ical calculation of proposed method is plotted in solid-line while SPICE result in dashed-line. The magnification of
steady state response is shown in Figure 5b. Comparison between numerical calculation of proposed function and
steady state of SPICE result has similarity in shape and value.
The other complete response of circuit simulation using parameter-2 is shown in Figure 6a and steady
state of SPICE and proposed result is described Figure 6b. Figure 5b and 6b describe that numerical calculation
of proposed methods give consistent result with SPICE result. The proposed method has advantage in obtaining
steady state response without waiting transient time.
Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)
2380 ISSN: 2088-8708
Table 1. Numerical parameter
Variable Parameter-1 Parameter-2
Resistance (R) 6.35 Ω 1.81 Ω
Inductance(L) 100 µH 285 µH
Capacitance (C) 62.7 µF 21.9 µF
Time-period (T) 50 µs 20 µs
Voltage source (g) 10 V 15 V
Duty-ratio (d) 0.5 0.5
Pole (s) -0.0101 ± j0.1 -0.0402 ± j0.0034
5. CONCLUSION
We have shown that the proposed method describes steady-state response directly without calculating
transient response. It gives exact calculation and symbolic complete solution of steady state output. Transition
between each mode is described clearly by proposed method. Recovery function gives an accurate solution of
Fourier series without depending on numerical calculation of summation. Proposed steady state analysis of buck
converter has been clarified by comparing with SPICE. Moreover, proposed method makes calculation of power
traceable.
REFERENCES
[1] R. D. Middlebrook, S. ´Cuk, “A General Unified Approach to Modelling Switching Power Converter Stages,”
IEEE PESC Record, pp. 18-34, 1976.
[2] R. W. Erickson, S. ´Cuk, R. D. Middlebrook, “Large Signal Modeling and Analysis of Switching Regulators,”
IEEE PESC Record, pp. 240-250, 1982.
[3] V. Tran, M. MahD, “Modeling and Analysis of Transformerless High Gain Buck-boost DC-DC Converters,”
Power Electronics and Drive Systems (IJPEDS), Vol. 4, No. 4, pp. 528-535, Dec 2014.
[4] J.S. Renius A, V. Kumar K, A. Fredderics, R. Guru, S.L. Nair, “Modelling of Variable Frequency Synchronous
Buck Converter,” nternational Journal of Power Electronics and Drive System (IJPEDS) Vol. 5, No. 2, pp.
237-243, October 2014.
[5] P. Szcze´sniak, “A Comparison Between Two Average Modelling Techniques of AC-AC Power Converters,”
International Journal of Power Electronics and Drive System (IJPEDS), Vol. 6, No. 1, pp. 32-44, March 2015.
[6] R. W. Erickson, D. Maksimovi´c, Fundamental of Power Electronics, Kluwer Academic Publishers, Netherland,
2001.
[7] S. R. Naidu, D. A. Fernandes, “Technique for Simulating the Steady-State Response of Power Electronic Con-
verter,” IET Power Electronics, Vol. 4, pp. 269-277, 2011.
[8] L. Iannelli, F. Vasca, G. Angelone, “Computation of Steady-State Oscillations in Power Converter Through
Complementary,” IEEE Transactions on Circuits and SystemsI: Regular Papers, Vol. 58, No. 6, pp. 1421-1432.
June 2011.
[9] G. T. Kostakis, S. N. Manias, N. I. Margaris, “A Generalized Method for Calculating the RMS Values of
Switching Power Converters,” IEEE Transactions on Power Electronics, Vol. 15 No 4, pp. 616-625, July 2000.
[10] M. Daryaei, M. Ebrahimi, S. A. Khajehoddin, “Accurate Parametric Steady State Analysis and Design Tool for
DC-DC Power Converters,” IEEE Applied Power Electronics Conference and Exposition (APEC), pp. 2579-
2586, 2016.
[11] H. M. Mahery, E. Babaei, “Mathematical Modeling of Buck-boost DC-DC Converter and Investigation of
Converter Element on Transient and Steady State Responses,” Electrical Power and Energy System 44, pp.
949-963, 2013.
[12] B. Tsai, O. Trescases, B. Francis, “An Investigation of Steady-State Averaging for the Single-Inductor Dual-
Output Buck Converter using Fourier Analysis,” 2010 IEEE 12th Workshop on Control and Modeling for Power
Electronics (COMPEL), June 2010.
[13] R. Trinchero, I. S. Stievano, F. G. Canavero, “Steady-State Analysis of Switching Power Converter via Aug-
mented Time-Invariant Equivalents,” IEEE Transaction on Power Electronics, Vol. 29 No 11, pp. 5657-5661,
Nov 2014.
[14] F. Mis¸oc, M. M. Morcos, J. Lookadoo, “Fourier-Series Models of DC-DC Converters,” IEEE 38th North
American Power Symposium, pp. 193-199, 2006.
[15] R. Trinchero, P. Manfredi, I.S.Stievano, F.G. Canavero, “Steady-State Analysis of Switching Converter via
IJECE Vol. 7, No. 5, October 2017: 2374 – 2381
IJECE ISSN: 2088-8708 2381
(a) Complete response
(b) Steady state response
Figure 6. Comparison between SPICE and proposed analysis of parameter-2
Frequency-Domain Circuit Equivalents,” IEEE Transactions on Circuits and SystemsII: Express Briefs, Vol.
63, No. 8, pp. 748-752, August 2016.
[16] G. Strang, Computational Science and Engineering, Wellesley-Cambridge Press, USA, 2007.
Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)

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Accurate Symbolic Steady State Modeling of Buck Converter

  • 1. International Journal of Electrical and Computer Engineering (IJECE) Vol. 7, No. 5, October 2017, pp. 2374 – 2381 ISSN: 2088-8708 2374 Institute of Advanced Engineering and Science w w w . i a e s j o u r n a l . c o m Accurate Symbolic Steady State Modeling of Buck Converter Eko Setiawan1 , Takuya Hirata2 , and Ichijo Hodaka3 1 Interdisciplinary Graduate School of Agriculture and Engineering, University of Miyazaki, Japan 2 Department of Electronic Mechanical Engineering, National Institute of Technology, Oshima College, Japan 3 Department of Environmental of Robotics, University of Miyazaki, Japan Article Info Article history: Received: Apr 6, 2017 Revised: Jun 9, 2017 Accepted: Jun 23, 2017 Keyword: Steady state analysis Fourier series Switching circuit Buck converter ABSTRACT Steady state analysis is fundamental to any electric and electronic circuit design. Buck converter is one of most popular power electronics circuit and has been analyzed in various situations. Although the behavior of buck converters can be understood approximately by the well-known state space averaging method, little is known in the sense of detailed behavior or exact solution to equations. In this paper a steady state analysis of buck converter is proposed which allows the exact calculation of steady state response. Our exact solution is expressed as a Fourier series. Our result is compared with numerical calculation to be verified. Our method copes with more complicated problems such as describing average power and root-mean-square power that are most critical issues in power electronics circuit. Copyright c 2017 Institute of Advanced Engineering and Science. All rights reserved. Corresponding Author: Ichijo Hodaka Department of Environmental Robotics, University of Miyazaki 1-1, Gakuen Kibanadai-nishi, Miyazaki, 889-2192, Japan Phone: +81 985 587 352 E-mail: hijhodaka[at]cc.miyazaki-u.ac.jp 1. INTRODUCTION An analysis of steady-state response of a system is important key in circuit design and control, included dc-dc converter. In convential method, the steady state of dc-dc converter is assumed as the constant value. Many researches based on state space averaging method and high switching frequency assumption observe steady state response [1, 2, 3, 4, 5]. The method gives simple way to analyze but some ripples are undescribed clearly. The power electronic handbook approximate linear ripple to analyze dc-dc converter more accurately [6]. The approximation may be correct if the switching frequency is high. Since there are some limitation in component, some high frequency is not always reached. The importance of accurate steady-state analysis has already noticed in many researches [7, 8, 9, 10, 11, 12]. A significant part of the design of circuits requires the simulation of the steady-state response. Parameters such as the gain, harmonic distortion and the input and output impedances are studied in the steady-state mode of operation [7]. Using conventional time-stepping simulations and waiting-time for possible steady state is often not practical because in most cases the time constants of the modes are much larger than the switching period [8]. In conventional method of dc-dc converter analysis, steady state ripple values are negligible, compared to the steady state values themselves. Switching power converters are inherently nonlinear and consequently it is very difficult to calculate the root-mean-square (RMS) values of the state variable ripple. These RMS values are important in order to calculate the current stresses of the different power converter devices as well as to filter design in order to meet the given specifications [9]. Though power electronic handbook [6] shows the RMS calculation using approximation linear ripple, the result is not absolutely correct due to linear approximation. In order to achieve a high performance, proper design and control, it is necessary to have an exact model of converter [10, 11]. High accuracy is one of major features of a good modeling [11]. The dc-dc converter analysis can be classified into two categories, numeric and symbolic analysis. The numeric analysis is found in [7, 8, 10, 12, 13, 14, 15]. The numeric analysis observes the system response by inputting parameter values into model. The numeric analysis needs some computation-time to show the output Journal Homepage: http://iaesjournal.com/online/index.php/IJECE Institute of Advanced Engineering and Science w w w . i a e s j o u r n a l . c o m , DOI: 10.11591/ijece.v7i5.pp2374-2381
  • 2. IJECE ISSN: 2088-8708 2375 response. Relation between each parameter is not describe in the equation. The relation between parameter and output is always observed by comparison between parameter change to output change. The [7] construct impedance or admittance matrix of dc-dc converter. The output response of the converter is calculated by Newton-Raphson. The steady-state output is solved per fixed time-step (fixed sampling interval). The accuracy of analysis is dependent on time-step. Fewer sampling point causes less accuracy. On the other side, more sampling points need more calculation time. The [13] substitute original circuit with periodically switched linear (PSL) circuit. The PSL can be observed by Fourier series. The paper use 110 as sequence number in Fourier series summation. The [14] also use Fourier series to simulate steady-state response. Comparing with [13], the [14] only uses 21 sequences. The [13] applies Fourier series of current switching part. The Fourier series of switching part substitutes original part to be analyzed by Kirchhoff Voltage and Current Law. The paper uses 180 sequence number to draw a steady state response of system. The [12] analyzes buck converter in frequency domain due to high accuracy comparing with conventional time-domain. The paper simulate in three different sequences number that 0, 10 and 100. The paper shows that 10th sequences order is enough to describe steady state response. In Fourier series based method, greater number send the accurate steady-state model but it need more calculation. High order sequence number doesnt bring significant accuracy. Determination of the proper sequence number is another problem beside the main steady-state analysis problem. Contrary with numerical analysis, symbolic analysis describes relation between parameter and output in the equation. The relation between parameter and output can be observed roughly by the equation. The symbolic analysis is found in [9] and [11]. Symbolic analysis is complicated to be done although it show relation between parameter and output in equation. The [9] perform steady state symbolic analysis to calculate rms value. The paper show solution in a matrix form that is more complicated than ordinary equation. The average and rms calculation include term which is obtained from zero derivative state assumption. Since the ripple is exist and cannot be neglected, this assumption is contrast with early definition. The [11] solve steady-state equation by Laplace transform and revert back into time-domain by inverse of Laplace transform. The solution need the known initial value. The Z-transform is applied due to similarity between initial value and last value in one period. Though the paper show symbolic analysis, the proses is long enough due to calculation of three transformations (Laplace transform, Z-transform and inverse of Laplace transform). In this paper, an alternative method is proposed that accurately predict and analyze the steady state of switching power converter. The proposed method based on Fourier series since many references show the accuracy [12, 13, 14]. The recovery function is also proposed to generate analysis without dependent in number of sequences orders. The paper is subdivided in several sections to present clearly explanation. Section 2 shows the basic idea of proposed method. Section 3 discusses about implementation of proposed method in buck converter and the recovery function. Complete steady state output function of dc-dc converter is shown in this section. Section 4 verify proposed steady state function by circuit simulation. Finally, the conclusion of this paper is declared in Section 5 2. PROPOSED FOURIER SERIES METHOD Many phenomena studied in electric circuit are periodic in nature when time goes to infinity. These periodic functions in time t can be expressed as Fourier series as in the following equation [16]. f(t) = γ0 + n=0 γnejnωt = ... + γ2ej2ωt + γ1ejωt + γ0 + γ1ejωt + γ2ej2ωt + ... (1) with Fourier coefficients γ0(f) = 1 T T 0 f(t)dt, γn(f) = 1 T T 0 f(t)e−jnωt dt (2) where T is the period and ω is the angular frequency defined by ω = 2π T . In order to help understanding how Fourier series works, let us give an input square-wave function as follows. u(t) = g (0 ≤ t < Td) 0 (Td ≤ t < T) u(t) = u(t + T) (3) Fourier coefficients of (3) are calculated as follows. γ0(u) = gd, γn(u) = g jnωT 1 − ejn2πd (4) Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)
  • 3. 2376 ISSN: 2088-8708 Then the Fourier series of the equation (3) is written by equation (5). u(t) = gd + n=0 g jn2π 1 − e−jn2πd ejnωt (5) An electric system can be described in a simple block diagram as shown in Figure 1. It has been explained that a periodic input has possibility to be analyzed with Fourier series. A periodic input for a transfer function G(s) will generate a periodic output. By knowing its transfer function, the output also can be analyzed into Fourier series. This paper analyzes steady state output in the equation (6). Buck converter can be modelled as a transfer function. Then as we explained the above, buck converter can be expressed as the equation (6). xss(t) = G(0)γ0(u) + n=0 G(jnω)γn(u)ejnωt (6) Figure 1. Block diagram Figure 2. Buck converter circuit 3. BUCK CONVERTER ANALYSIS Buck converter circuit is shown in Figure 2. Principally, buck converter is driven by two contrary switching ON and OFF. In continuous conduction mode (CCM), buck converter has only two modes. Each mode can be arranged as non-switching circuit by assuming switching part connected (ON) or disconnected (OFF). Figure 3 shows the two modes. Let us assume voltage at switching parts is equal to input function u(t) as shown in Figure 4. Input function u(t) can be described as in the equation (3). (a) Mode-1 (b) Mode-2 Figure 3. Modes of Buck converter Based on Figure 4, let G(s) be a transfer function from the input voltage u(t) to the output voltage x(t) as in the following equation. G(s) = 1 LC s2 + 1 RC s + 1 LC (7) The transfer function (7) has two poles. Here we assume the poles are complex-conjugate pairs (s = ξω ± jηω), that is, 1 R2C2 − 4 LC < 0. (8) With s = jω, the frequency transfer function can be written as in the following equation. IJECE Vol. 7, No. 5, October 2017: 2374 – 2381
  • 4. IJECE ISSN: 2088-8708 2377 Figure 4. Equivalent circuit G(jnω) = 1 LC (jnω − ξω)2 + (ηω)2 (9) Moreover, the transfer function at s = 0 is called a DC-gain as follows. G(0) = 1 LC 02 + 1 RC 0 + 1 LC = 1 (10) In the previous section, Fourier series of square-wave function was explained by the equation (5). Then, Fourier coefficients of the input function (3) were calculated in (4). By assuming that q = jn and substituting (2), (9), and (10) into (6), the proposed equation of buck converter can be expressed as follows. xss(t) = gd + n=0 1 ω2LC (q − ξ)2 + η2 g 2πq (1 − e−2πqd ) eqωt = gd + n=0 g 2πω2LC 1 (q − ξ)2 + η2 1 q (1 − e−2πqd )eqωt (11) 3.1. Recovery function The infinite series of equation (11) can be represented as follows. fsaw(t) = π − ωt, (0 ≤ t < T), fsaw(t) = fsaw(t + T) fc(t) = ξ ξ2 + η2 + π eξ(ωt−2π) cos(ηωt) − eξωt cos(η(ωt − 2π)) cosh(2πξ) − cos(2πη) , (0 ≤ t < T), fc(t) = fc(t + T) fs(t) = π eξ(ωt−2π) sin(ηωt) − eξωt sin(η(ωt − 2π)) cosh(2πξ) − cos(2πη) − ξ ξ2 + η2 , (0 ≤ t < T), fs(t) = fs(t + T) (12) Fourier coefficients of recovery functions are calculated by (2). By assuming q = jn, Fourier series of proposed recovery function is described as follows. fsaw(t) = n=0 γn(fsaw)eqωt fc(t) = n=0 γn(fc)eqωt fs(t) = n=0 γn(fs)eqωt (13) where γn(fsaw) = 1 q , γ0(fsaw) = 0 γn(fc) = q − ξ (q − ξ)2 + η2 , γ0(fc) = 0 γn(fs) = η (q − ξ)2 + η2 , γ0(fs) = 0 (14) Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)
  • 5. 2378 ISSN: 2088-8708 3.2. Time-delay function Let time-delay function be described as in the following. ˜f(t) = f(t − Th) (15) where T is periodic time and h is delay constant. Fourier coefficients of time-delay function are simply described as γn( ˜f) = e−q2πh γn(f). (16) 3.3. Proposed steady-state function We can recover function of time expressed by the exponential and trigonometric functions by using our recovery functions (13). The proposed steady state buck converter equation can be also solved by the recovery functions. The summation part of equation (11) can be partially decomposed as follows. 1 (q − ξ)2 + η2 1 q = 1 (η2 + ξ2) 1 q + −q + 2ξ (q − ξ)2 + η2 = 1 η2 + ξ2 1 q − q − ξ (q − ξ)2 + η2 + ξ η η (q − ξ)2 + η2 (17) In the next step, we substitute (17) into (11). xss(t) = gd+ g 2πω2LC(η2 − ξ2) n=0 1 q − q − ξ (q − ξ)2 + η2 + ξ η η (q − ξ)2 + η2 (1−e−2πqd )eqωt (18) Let us assume that m = g 2πω2LC(η2 − ξ2) , µ = ξ η . (19) By assuming q = jn, the equation (18) may be written as in the following. xss(t) = gd + m n=0 1 q (1 − e−2πqd )eqωt − m n=0 q − ξ (q − ξ)2 + η2 (1 − e−2πqd )eqωt + mµ n=0 η (q − ξ)2 + η2 (1 − e−2πqd )eqωt = gd + m       n=0 γn(fsaw)eqωt fsaw(t) − n=0 γn(fsaw)e−2πqd eqωt fsaw(t−T d)        − m       n=0 γn(fc)eqωt fc(t) − n=0 γnfce−2πqd eqωt fc(t−T d)        + mµ       n=0 γn(fs)eqωt fs(t) − n=0 γn(fs)e−2πqd eqωt fs(t−T d)        (20) The equation (20) is easy to be understood if we use the recovery functions as (21). xss(t) = gd + m fsaw(t) − fsaw(t − Td) − m fc(t) − fc(t − Td) + mµ fs(t) − fs(t − Td) (21) IJECE Vol. 7, No. 5, October 2017: 2374 – 2381
  • 6. IJECE ISSN: 2088-8708 2379 The proposed equation (21) covers infinite series with the recovery functions. Furthermore, the calculation of the average and RMS power are traceable by the recovery functions as follows accurately. Pavg = 1 T T 0 (xss(t))2 R dt Prms = 1 T T 0 (xss(t))4 R2 dt (22) (a) Complete response (b) Steady state response Figure 5. Comparison between SPICE and proposed analysis of parameter-1 4. SIMULATION RESULT This section validates our proposed function (21) result by comparing with SPICE (Simulation Program with Integrated Circuit Emphasis). Numerical parameter of dc-dc converter is determined as shown in Table 1. Numerical parameter of resistance (R), inductance (L) and capacitance (C) give complex-conjugate poles. Numerical calculation utilized mathematical software to plot the proposed steady state response. SPICE simulates the actual circuit responses. Complete response of capacitor voltage by parameter-1 is shown in Figure 5a. Numer- ical calculation of proposed method is plotted in solid-line while SPICE result in dashed-line. The magnification of steady state response is shown in Figure 5b. Comparison between numerical calculation of proposed function and steady state of SPICE result has similarity in shape and value. The other complete response of circuit simulation using parameter-2 is shown in Figure 6a and steady state of SPICE and proposed result is described Figure 6b. Figure 5b and 6b describe that numerical calculation of proposed methods give consistent result with SPICE result. The proposed method has advantage in obtaining steady state response without waiting transient time. Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)
  • 7. 2380 ISSN: 2088-8708 Table 1. Numerical parameter Variable Parameter-1 Parameter-2 Resistance (R) 6.35 Ω 1.81 Ω Inductance(L) 100 µH 285 µH Capacitance (C) 62.7 µF 21.9 µF Time-period (T) 50 µs 20 µs Voltage source (g) 10 V 15 V Duty-ratio (d) 0.5 0.5 Pole (s) -0.0101 ± j0.1 -0.0402 ± j0.0034 5. CONCLUSION We have shown that the proposed method describes steady-state response directly without calculating transient response. It gives exact calculation and symbolic complete solution of steady state output. Transition between each mode is described clearly by proposed method. Recovery function gives an accurate solution of Fourier series without depending on numerical calculation of summation. Proposed steady state analysis of buck converter has been clarified by comparing with SPICE. Moreover, proposed method makes calculation of power traceable. REFERENCES [1] R. D. Middlebrook, S. ´Cuk, “A General Unified Approach to Modelling Switching Power Converter Stages,” IEEE PESC Record, pp. 18-34, 1976. [2] R. W. Erickson, S. ´Cuk, R. D. Middlebrook, “Large Signal Modeling and Analysis of Switching Regulators,” IEEE PESC Record, pp. 240-250, 1982. [3] V. Tran, M. MahD, “Modeling and Analysis of Transformerless High Gain Buck-boost DC-DC Converters,” Power Electronics and Drive Systems (IJPEDS), Vol. 4, No. 4, pp. 528-535, Dec 2014. [4] J.S. Renius A, V. Kumar K, A. Fredderics, R. Guru, S.L. Nair, “Modelling of Variable Frequency Synchronous Buck Converter,” nternational Journal of Power Electronics and Drive System (IJPEDS) Vol. 5, No. 2, pp. 237-243, October 2014. [5] P. Szcze´sniak, “A Comparison Between Two Average Modelling Techniques of AC-AC Power Converters,” International Journal of Power Electronics and Drive System (IJPEDS), Vol. 6, No. 1, pp. 32-44, March 2015. [6] R. W. Erickson, D. Maksimovi´c, Fundamental of Power Electronics, Kluwer Academic Publishers, Netherland, 2001. [7] S. R. Naidu, D. A. Fernandes, “Technique for Simulating the Steady-State Response of Power Electronic Con- verter,” IET Power Electronics, Vol. 4, pp. 269-277, 2011. [8] L. Iannelli, F. Vasca, G. Angelone, “Computation of Steady-State Oscillations in Power Converter Through Complementary,” IEEE Transactions on Circuits and SystemsI: Regular Papers, Vol. 58, No. 6, pp. 1421-1432. June 2011. [9] G. T. Kostakis, S. N. Manias, N. I. Margaris, “A Generalized Method for Calculating the RMS Values of Switching Power Converters,” IEEE Transactions on Power Electronics, Vol. 15 No 4, pp. 616-625, July 2000. [10] M. Daryaei, M. Ebrahimi, S. A. Khajehoddin, “Accurate Parametric Steady State Analysis and Design Tool for DC-DC Power Converters,” IEEE Applied Power Electronics Conference and Exposition (APEC), pp. 2579- 2586, 2016. [11] H. M. Mahery, E. Babaei, “Mathematical Modeling of Buck-boost DC-DC Converter and Investigation of Converter Element on Transient and Steady State Responses,” Electrical Power and Energy System 44, pp. 949-963, 2013. [12] B. Tsai, O. Trescases, B. Francis, “An Investigation of Steady-State Averaging for the Single-Inductor Dual- Output Buck Converter using Fourier Analysis,” 2010 IEEE 12th Workshop on Control and Modeling for Power Electronics (COMPEL), June 2010. [13] R. Trinchero, I. S. Stievano, F. G. Canavero, “Steady-State Analysis of Switching Power Converter via Aug- mented Time-Invariant Equivalents,” IEEE Transaction on Power Electronics, Vol. 29 No 11, pp. 5657-5661, Nov 2014. [14] F. Mis¸oc, M. M. Morcos, J. Lookadoo, “Fourier-Series Models of DC-DC Converters,” IEEE 38th North American Power Symposium, pp. 193-199, 2006. [15] R. Trinchero, P. Manfredi, I.S.Stievano, F.G. Canavero, “Steady-State Analysis of Switching Converter via IJECE Vol. 7, No. 5, October 2017: 2374 – 2381
  • 8. IJECE ISSN: 2088-8708 2381 (a) Complete response (b) Steady state response Figure 6. Comparison between SPICE and proposed analysis of parameter-2 Frequency-Domain Circuit Equivalents,” IEEE Transactions on Circuits and SystemsII: Express Briefs, Vol. 63, No. 8, pp. 748-752, August 2016. [16] G. Strang, Computational Science and Engineering, Wellesley-Cambridge Press, USA, 2007. Accurate Symbolic Steady State Modeling of Buck Converter (Eko Setiawan)