Chapter 6: The Laplace Transform. Chih-Wei Liu
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1 Chapter 6: The Laplace Transform Chih-Wei Liu
2 Outline Introduction The Laplace Transform The Unilateral Laplace Transform Properties of the Unilateral Laplace Transform Inversion of the Unilateral Laplace Transform Solving Differential Equations with Initial Conditions Laplace Transform Methods in Circuit Analysis Properties of the Bilateral Laplace Transform Properties of the Region of convergence Inversion of the bilateral Laplace Transform
3 Outline The Transfer Function Causality and Stability Determining Frequency Response from Poles & Zeros 3
4 Introduction The Laplace transform (LT) provides a broader characterization of continuous-time LTI systems and their interaction with signals than is possible with Fourier transform Signal that is not absolutely integral Laplace transform Two varieties of LT: Fourier transform Unilateral or one-sided Bilateral or two-sided The unilateral Laplace transform (ULT) is for solving differential equations with initial conditions. The bilateral Laplace transform (BLT) offers insight into the nature of system characteristics such as stability, causality, and frequency response. 4
5 A General Complex Exponential e st Complex exponential e st with complex frequency s=+j st t t e e cos t je sin t. Re{s}=: exponential damping factor Im{s}=: frequency of the cosine and sine factor t e < < t e e t 4 e t 4 exponentially damped cosine exponentially damped sine e st is an eigenfunction of the LTI system 5
6 Eigenfunction Property of e st Transfer function x(t) = e st LTI system, h(t) s H s h e d y(t) = x(t) h(t) y( t) h( t) x( t) h( ) x( t ) d h( ) e s( t ) d H(s) is the eigenvalue of the eigenfunction e st Polar form of H(s): H() s j H s e s e e st st H ( s) h( ) e s d H(s) amplitude of H(s); (s) phase of H(s) Then y t H s e e j s st Let s = + j 6 t jt j t y t H j e e t cos sin H j e t j j H j e t j The LTI system changes the amplitude of the input by H( + j ) and shifts the phase of the sinusoidal components by ( + j ).
7 The Laplace Transform x t L X s Definition: The Laplace transform of x(t): Definition: The inverse Laplace transform of X(s): st X s x t e dt x t 1 j j j st X s e ds 7 A representation of arbitrary signals as a weighted superposition of eigenfunctions e st with s=+j. We obtain H j j t hte dt t jt Hence 1 t jt hte H je d hte e dt t FT h( t) e H ( j) Laplace transform is the FT of h(t)e t h( t) s = + j ds = jd 1 1 j j H ( H ( s) e j) e st ds ( j) t d
8 Convergence of Laplace Transform LT is the FT of x(t) e t A necessary condition for convergence of the LT is the absolute integrability of x(t) e t : t x t e dt The range of for which the Laplace transform converges is termed the region of convergence (ROC). Convergence example: 1. Fourier transform of x(t)=e t u(t) does not exist, since x(t) is not absolutely integrable.. But x(t) e t =e (1)t u(t) is absolutely integrable, if >1, i.e. ROC, so the Laplace transform of x(t), which is the Fourier transform of x(t)e t, does exist. e t x(t) e t 8
9 The s-plane, Poles, and Zeros To represent s graphically in terms of complex plane s = + j Horizontal axis of s-plane = real part of s; vertical axis of s-plane = imaginary part of s. j pole; zero Relation between FT and LT: X j X s the Fourier transform is given by the LT evaluated along the imaginary axis 9 The j-axis divides the s-plane in half: left-half and right-half s-plane Laplace transform X(s): X s bms b s b N s a s asa M M1 M1 N1 N 1 1 X s M bm s c 1 N s d 1 c = zeros of X(s); d = poles of X(s)
10 Example 6.1 Determine the Laplace transform of x(t) = e at u(t), and depict the ROC and locations of poles and zeros in the s-plane. Assume that a is real. <Sol.> at 1. First find the LT of x(t): st s at 1 s at s a X s e u t e dt e dt e. To evaluate the limit value, we use s = + j to re-write X(s): 1 at jt X s e e ja 3. ROC: >a or Re(s)>a, and X ( s) 1 j a 1 j a ( 1) 1, s a Re( s) a if >a, then e (a)t goes to zero at t j 1
11 j Example <Sol.> Determine the Laplace transform of y(t) = e at u(t), and depict the ROC and locations of poles and zeros in the s-plane. Assume that a is real. 1. First find the LT of y(t):. To evaluate the limit value, we use s = + j to re-write Y(s): 3. ROC: <a or Re(s)<a, and if <a, then e (a)t goes to zero at t a s a s a j a j s Y ) Re(, 1 1 ) (1 1 ) ( ) ( ) ( 1 ) ( ) ( a s t a s st at e a s dt e dt e t u e s Y ) ( 1 ) ( t j t a e e a j s Y
12 Concluding Remars Examples 6.1 & 6. reveal that the same Laplace transform but different ROCs for the different signals x(t) and y(t) This ambiguity occurs in general with signals that are one sided. To see why, let x(t)=g(t)u(t) and y(t)= g(t)u( t). We may thus write st X s gte dt st where Gs, t gte dt Gs, Gs, And, st st Y s g t e dt g t e dt Gs, Gs, We conclude that X(s) = Y(s) whenever G(s, ) = G(s, ). The value of s for which the integral represented by G(s, ) converges differ from those for which the integral represented by G(s, ) converges, and thus the ROCs are different The ROC must be specified for the Laplace transform to be unique!!! 1
13 Outline Introduction The Laplace Transform The Unilateral Laplace Transform Properties of the Unilateral Laplace Transform Inversion of the Unilateral Laplace Transform Solving Differential Equations with Initial Conditions Laplace Transform Methods in Circuit Analysis Properties of the Bilateral Laplace Transform Properties of the Region of convergence Inversion of the bilateral Laplace Transform 13
14 The Unilateral (or One-Sided) LT We may assume that the signals involved are causal, that is, zero for t <. The unilateral Laplace transform (ULT) of a signal x(t) is defined by st X s x t e dt x t u L The lower limit of implies that we do include discontinuities and impulses X s Note that ULT and LT are equivalent for signals that are causal. e at ULT u( t) 1 s a equivalent to e at LT 1 u( t) with ROC Re{ s} s a a Since one-sided, do not specify ROC The ambiguity of LT is removed in ULT 14
15 Properties of ULT Properties of ULT are similar to those of the FT u Here we assume that xt X s y t Linearity: ax t by t Lu ax s by s L and u L Y s Scaling: L 1 s u xat X for a a a Time Shift: Lu s for all such that x t e X s x t u t x t u t 15 This property applies only if the shift does not move a nonzero t component of signal to t <, or does not move a nonzero t < portion of the signal to t :
16 Properties of ULT s-domain Shift: Lu st e x t X s s Convolution: u * L x t y t X s Y s Differentiation in the s-domain: tx t u L d ds X s Example 6.3: 16 * 3t Find the unilateral Laplace transform of <Sol.> Since 3t L 1 u e u t s 3 and xt eut tut u t u L tu t 1 s u L 1/ s Apply the s-domain differentiation property, we have Now, from the convolution property, we obtain 3t * Lu X( s x t e u t tu t X s ) 1 3) s 1 s s 3 ( s
17 Example 6.4 RC Circuit Find the Laplace transform of the output of the RC circuit for the input x(t) = te t u(t). <Sol.> 1 t RC 1. The impulse response of the RC circuit is ht e ut RC Then H ( s) 5 RC 1 s 1 src Using RC =. s H ( s) s 5 RC d u. Next, we use the s-domain differentiation property tx t L X s ds Then d 1 1 X ( s) ds s ( s ) 3. We apply the convolution property to obtain the LT of the output y(t): F Y s 5 s s 5 17
18 Properties of ULT Differentiation in the Time-Domain: Integration by part d dt L d u x t x t e dt dt dt d x u st st t Lst x t e s x t e = dt d x t sx s x dt Lu The general form for the differentiation property d dt n n xt u L d n1 n n sxs xt n 1 s xt n dt dt t t d s x t s x n1 n 1 n1 dt t x(t)e -st approaches zero as t d n 18
19 Properties of ULT Integration Property: where 1 1 t x L X s u xd s s x x d is the area under x(t) from t = to t =. Initial- and Final-Value Theorem: x lim sx s s lim sx s x s (1) () 19 Recall lim sx ( s) s s d dt lim sx s x( t) e x( ) st lim s x dt sx ( s) x( d dt x( t) e lim ( ) ( ) lim d sx s x x( t) e s s dt st st ) dt dt Then d dt x( t) dt dx( t) x( ) lim sx ( s) x( s ) x( )
20 Remars For initial-value theorem: This theorem does not apply to rational functions X(s) in which the order of the numerator polynomial is greater than or equal to that of the denominator polynomial For final-value theorem This theorem applies only if all the poles of X(s) are in the left half of the s-plane, with at most a single pole at s= Example 6.6 7s 1 Determine the initial and final values of a signal x(t) whose ULT is X s <Sol.> ss 1. Initial value:. Final value: 7s1 7s1 7s1 7s1 x lim s lim 7 xlim s lim 5 s s s s s s s s s s Note that X(s) is the Laplace transform of xt ut e ut t () 5 () ()
21 Inversion of the ULT Direct inversion of the LT (ILT) requires a contour integration We shall determine the ILT using the one-to-one relationship between a signal and its ULT 1
22 Inversion by Partial-Fraction Expansion The inverse transform can be obtained by expressing X(s) as a sum of terms for which we already nown the time function Suppose X s B s A s M M1 bms bm 1s bs 1 b N N1 s an 1s as 1 a M < N If M N, we may use long division to express X(s) as X s c s X s 1. Using the differentiation property and the pair u t L 1 We obtain MN MN Lu c t c s MN. Factor the denominator polynomial as a product of pole factors to obtain X s p p1 bs Bp s bp s bsb N A s s d P < N
23 Inversion by Partial-Fraction Expansion X s Case I: If all poles d are distinct: X s p p1 bs Bp s bp s bsb N A s s d N 1 A s d Ae dt u t Lu A s d Case II: If a pole d i is repeated r times: Ai A 1 i A ir,,, s d s d sd i i i r Apply differentiation in the s-domain: n1 At dt L A u e u t n 1! s d n 3
24 Example 6.7 Find the inverse Laplace transform of X s s <Sol.> Use a partial-fraction expansion of X(s) to write Solving for A 1, A, and A 3, we obtain 4 X s 1) The pole of the first term is at s=-1, so t L 1 u e u t s 1 ) The second term has pole at s = -; thus, t L 1 3s 4 1s u e u t s 3) The double pole in the last term is also at s = -; hence, te t u t Lu s A1 A A3 X s s1 s s 1 1 s1 s s t t t x t e u t e u t te u t
25 Example 6.8 Find the inverse unilateral Laplace transform of <Sol.> s s s s s s s s s s 1s 1 3 s 9s 1 3 s X s 3 s 9s 4s1 s 3s 4 s3 X s s 3s 3s 4 X s 1 s3 s 1 s 4 1 t 4t xt t3 teuteut 5
26 Conjugate Poles C e If the coefficients in the denominator are real, then all the complex poles occur in complex-conjugate pairs. Combine complex-conjugate poles to obtain real-valued expansion coefficients 1. Suppose that + j and j mae up a pair of complex-conjugate poles. Then t 1 6 A1 A s j s j. Combine conjugate poles: + j and j. Then BsB BsB s j s j s A 1 and A must be complex conjugates of each other it s hard to solve A 1 and A from real-valued coefficients 1 1 C s C 1 1 where both B 1 and B are real valued. in term of the perfect square BsB where C 1 =B 1 and C =(B + α)/ω s s s ULT C1( s ) cos( t) u( t) ( s ) C e t ULT C sin( t) u( t) ( s )
27 Example 6.9 Find the inverse Laplace transform of <Sol.> s 3 s Then 7 ( s 1)( s X s A Bs 1 B s 1 s 1 1 X s s ) ( s 1)(( s 1) 4s 6 A X s s1 s1 s 1 1 s 4s 6 s 3 1) write the quadratic s + s + in terms of the perfect square s1 1 B s 4 B B s 4 B 4s 6 s1 1 BsB s1 1 1 X s s s 1 s 1 1 s s s s t t cos 4 t sin x t eu t e t u t e t u t
28 Outline Introduction The Laplace Transform The Unilateral Laplace Transform Properties of the Unilateral Laplace Transform Inversion of the Unilateral Laplace Transform Solving Differential Equations with Initial Conditions Laplace Transform Methods in Circuit Analysis Properties of the Bilateral Laplace Transform Properties of the Region of convergence Inversion of the bilateral Laplace Transform 8
29 Example 6.6: Solving Differential Equations with Initial Conditions d x t sx s x dt L Recall u The initial condition Use the Laplace transform to find the voltage across the capacitor, y(t), for the RC circuit in response to the applied voltage x(t) = (3/5)e -t u(t) and initial condition y( - )=-. <Sol.> Using Kirchhoff s voltage law, we have the differential equation d 1 1 y t y t x t dt RC RC 9 RC =. s d y t y t x t dt Ys 5X s y sy s y Y s X s L 3/5 u xt () X( s) s Y s s s5 s5 s s5 y( - )=- Ys 1 s 5 F 3 s s5 s5 t 5t 3 y t e u t e u t
30 Solving Differential Equations with Initial Conditions 3 From the general differential equation: N N1 d d d N N 1 N1 1 y t a y t a y t a y t dt dt dt M M1 d d d M M1 M1 1 bm x t b x t b x t b x t dt dt dt Assume that the input is zero for t <. Taing the unilateral Laplace transform of both sides, we obtain AsY s Cs Bs Xs where N N 1 As s an 1s a1sa Bs X s Cs M M 1 B s bms bm 1s bs 1 b Ys A s A s N 1 l 1 Cs as y l t 1 l dt t d Initial conditions n f Y s Y s Forced response due to input with Natural response due to I.C. with zero input zero I.C. The Laplace transform offers a clear separation between the natural response to initial conditions and the forced response with the input
31 Example 6.11 Use the unilateral Laplace transform to determine the output of the system described by the differential equation d d d in response to the input x(t) = u(t). Assume that y 1 and d y t dt t Identity the forced response of the system, y (f) (t), and the natural response y (n) (t). <Sol.> 31 y t 5 y t 6y t x t 6x t dt dt dt 1. Apply ULT on the both sides of the differential equations, we obtain: d dt s 5s6Ys y t sy 5y s6x s Y ( s) Y Y f s ( f ) t ( s) ( n) ( s) Y Y s s 6 s 3 s s sy y t 5y s 6 X s dt t s s s s and f 3 t t y t u t e u t e u t Y n s d s 7 s s 3 n t 3t 5 4 y t e u t e u t
32 Outline Introduction The Laplace Transform The Unilateral Laplace Transform Properties of the Unilateral Laplace Transform Inversion of the Unilateral Laplace Transform Solving Differential Equations with Initial Conditions Laplace Transform Methods in Circuit Analysis Properties of the Bilateral Laplace Transform Properties of the Region of convergence Inversion of the bilateral Laplace Transform 3
33 Bilateral Laplace Transform (BLT) The BLT involves the values of the signal for both t and t < L st BLT is well suited problems involving x t X s x t e dt noncausal signals and systems Assume that xt ( ) X( s) with ROC Rx yt () Y( s) with ROC Ry ROC should be given Linearity: Example 6.14 ax() t by() t L ax( s) by( s) with ROC Rx Ry The ROC may be larger than Rx Ry if a pole and a zero cancel in ax(s) + by(s). t x t e u t L X s with ROC Res and s t 3t 1 L y t e u t e u t Y s with s s 3 Then X 1 ROC Re s ( s 3) 1 1 3t ( s) Y ( s) x( t) y( t) e u( t) with ROC Re( s) 3 ( s )( s 3) s 3 If 33the intersection of ROCs is an empty set, the LT of ax(t)+by(t) does not exist
34 Properties of BLT Time Shift: st L x t e X s Since the BLT is evaluated over both positive and negative t, the ROC is unchanged by a time shift. Differentiation in the Time Domain: d x t L sx s dt with ROC at least R x The ROC associated with sx(s) may be larger than R x if X(s) has a single pole at s = on the ROC boundary Integration with respect to Time: t x d L X s s with ROC R Re s Integration corresponds to division by s. Since this introduces a pole at s = and we are integrating to the right, the ROC must lie to the right of s = x 34
35 Example 6.15 Find the Laplace transform of <Sol.> 1. We now from Ex. 6.1 that e t u t. The time-shift property implies that 1 e ut e s 3 3 t L s d x t e u t dt 3t 3 L 1 with s 3 3. Apply the time-differentiation property twice, we obtain with ROC Res 3 ROC Res 3 d t L s x t e u t X s e dt s 3 3 s with ROC Res 3 35
36 Properties of the ROC 36 Recall that the BLT is not unique unless the ROC is specified. The ROC is related to he characteristics of a signal x(t) indeed. (1) For rational LTs, the ROC cannot contain any poles Suppose d is a pole of X(s), then X(d)= () The ROC consists of strips parallel to the j-axis in the s-plane. Convergence of the BLT for a signal x(t) implies that t I x t e dt for some values of. The set of with finite I() determines the ROC of BLT. ROC consists of strips parallel to the j-axis in the s-plane. (3) The ROC for a finite-duration and bounded x(t) is the entire s-plane b t I Ae dt a A b e t, a I() is finite for all finite values of Ab a,
37 Properties of the ROC (4) Convergence of the BLT for a signal x(t) implies that t I x t e dt for some values of. Let s separate I() into two one-sided parts, i.e. positive- and negative-time sections: I I I t where I xt e dt and t I x t e dt In order for I() to be finite, both I () and I () must be finite. This implies that x(t) must be bounded in some sense. Suppose we can bound x(t) for both I () and I () by finding the smallest p s.t. p t n, and largest n s.t. xt Ae t, t xt Ae t A signal x(t) that satisfies these bounds is said to be of exponential order. x(t) grows no faster than e p t for positive t and e n t for negative t 37
38 Properties of the ROC Using the exponential order bounds on x(t), we may write I I ( ) ( ) pt t ( p ) t Ae e dt e p Ae t n e t A dt e n A ( ) t (4) If x(t) is right-sided, and if the line Re{s} = p is in the ROC, then all values of s for which Re{s} > p will also be in the ROC. (5) If x(t) is left-sided, and if the line Re{s} = n is in the ROC, then all values of s for which Re{s} < n will also be in the ROC. (6) If x(t) is two-sided, the ROC is of the form p < < n. if p > n, then there are no values of for which the BLT converges. n I + () is finite whenever > p I () is finite whenever < n 38
39 Illustration Examples: j n j p p j p p n n
40 Example 6.16 t t t t Consider the two signals x t e ut e ut x t e and ut e ut 1 Identify the ROC associated with the bilateral Laplace transform of each signal. <Sol.> 1. We chec the absolute integrability of x 1 (t) e t by writing I x t e dt t 1 1 1t t e dt e dt t e e 1 The first converges for < 1, while the second term converges for >. Hence, both terms converge for < < 1. This is the intersection of the ROC for each term. The ROC for each term and the intersection of the ROCs, which is shown as the doubly shaded region, are depicted in Fig (a). t 4
41 . For the second signal,, we have ( ) I x t e dt t t x t e u t e u t t 1 t 1t e dt e dt 1 1 e e 1 t 1 The first converges for < and the second term converges for > 1. Here, there is no value of for which both terms converge, so the intersection is empty. As illustrated in Fig. 6.15(b), the bilateral Laplace transform of x (t) does not exist. t j j 41
42 Inversion of the BLT Similar to the inversion of the ULT but the ROC is necessary to determine a unique inverse transform. Suppose B s M M1 b X s Ms bm 1s bs 1 b N N1 A s s an 1s as 1 a MN MN MN Lu c t cs If M N, then we use long division to express X s c s X s By partial-fraction expansion in terms of non-repeated poles: M < N the LT of the impulse and its derivatives converge everywhere in the s-plane ~ X ( s) N 1 A s d ~ Note that the ROC of X(s) is the same as the ROC of X(s) 4
43 Inversion of BLT ~ Two possibilities for the inverse BLT of X(s) 1. Right-sided dt L A A e u t with ROC Re( s) d s d. Left-sided L A with ROC Re( ) s d dt A e u t s d The ROC of a right-side exponential signal lies to the right of the pole, while the ROC of a left-sided exponential signal lies to the left of the pole. Example s 7 Find the inverse bilateral Laplace transform of X s s1 s1 s with ROC 1 Res 1 <Sol.> 1 1 Use the partial-fraction expansion X s s1 s1 s j 43 right-sided left-sided t t t x t e u t eu t e u t
44 Inversion of BLT By partial-fraction expansion in terms of repeated poles ~ Two possibilities for the inverse BLT of X(s) 1. Right-sided. Left-sided For pairs of complex-conjugate poles Two possibilities for the inverse BLT 1. Right-sided n1 At e n 1! dt u t n1 At dt e ut n 1! Ce cos t 1 t u t A s d n If the ROC lies to the right of the pole d If the ROC lies to the left of the pole d C 1 s s If the ROC lies to the right of s = j,. Left-sided t 1 Ce cos t u t If the ROC lies to the left of s = j, 44
45 Some Remars Causality If the signal is nown to be causal, then we choose the right-sided inverse transform of each term. (i.e. the unilateral Laplace transform) Stability A stable signal is absolutely integrable and thus has a Fourier transform; stability and the existence of Fourier transform (i.e. Re(s)=) are equivalent conditions In both cases, the ROC includes the jω-axis in the s-plane, or Re(s) =. The inverse LT of a stable signal is obtained by comparing the poles locations with jω-axis. If a pole lies to the left/right of the jω-axis, then the right/left-sided inverse transform is chosen (the ROC should include the j-axis) 45
46 Outline The Transfer Function Causality and Stability Determining Frequency Response from Poles & Zeros 46
47 The Transfer Function x(t) x(t) = e st LTI system, h(t) y(t) = x(t) h(t) y(t) = H(s)e st s Recall that the transfer function H(s) of an LTI system is H s h e d If we tae the bilateral Laplace transform of y(t), then Y Ys Hs X s s Hs This definition applies only at X s values of s for which X(s) From differential equation: N M d d a y t b x t dt dt After Substituting e st for x(t) and e st H(s) for y(t), we obtain rational transfer function N d d a e H s b e dt M st st dt H s M N bs H s as M b s c N s d Knowledge 47 of the poles d, zeros c, and factor b b / a completely determine the system M N 1 1
48 Causality and Stability The impulse response h(t) is the inverse LT of the transfer function H(s) Causality j right-sided inverse LT j Stability the ROC includes the j-axis in the s-plane j j 48
49 Causal and Stable LTI System To obtain a unique inverse transform of H(s), we must now the ROC or have other nowledge(s) of the impulse response The relationships between the poles, zeros, and system characteristics can provide some additional nowledges Systems that are stable and causal must have all their poles in the left half of the s-plane: j 49
50 Example 6.1 A system has the transfer function H s 1 s 3 s Find the impulse response, (a) assuming that the system is stable; (b) assuming that the system is causal; (c) can this system be both stable and causal? <Sol.> (a) This system has poles at s = 3 and s =. Stable the ROC contains j-axis. the pole at s=3 contributes a right-sided term; the pole at s= contributes a left-sided term. (b) This system has poles at s = 3 and s =. Causal right-sided 3t t h t e u t e u t h( t) e 3t u( t) e t u( t) (c) This system has poles at s = 3 and s = this system cannot be both stable and causal 5
51 Inverse System Given an LTI system with impulse response h(t), the impulse response of inv h t * h t t the inverse system, h inv (t), satisfies the condition inv H s Hs 1 or inv 1 H s Hs the poles of the inverse system H inv (s) are the zeros of H(s), and vice versa a stable and causal inverse system exists only if all of the zeros of H(s) are in the left half of the s-plane. A (stable and causal) H(s) has all of its poles and zeros in the left half of the s-plane H(s) is minimum phase. A nonminimum-phase system cannot have a stable and causal inverse system. 51
52 Example 6. Consider an LTI system described by differential equation d d d yt3yt xt xtxt dt dt dt Find the transfer function of the inverse system. Is it a stable and causal inverse system? <Sol.> First find the system s transfer function H(s): H s inv s H s s H s s s s s 1 Y s s s X s s 3 The inverse system has pole at s =1 and s =-. H inv (s) cannot be both stable and causal. 5
53 Determining Frequency Response from Poles & Zeros Control system 53
54 Summary The Laplace transform represents continuous-time signals as weighted superpositions of complex exponentials The transfer function is the Laplace transform of the impulse response The unilatreal Laplace transform applies to causal signals (or onesided signals) The bilateral Laplace transform applies to two-sided signals; it is not unique unless the ROC is specified. The Laplace transform is most often used in the transient and stability analysis of system The Fourier transform is usually employed as a signal representation tool and in solving system problems in which steady-state characteristics are of interest.
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