EE 508 Lecture 11. The Approximation Problem. Classical Approximations the Chebyschev and Elliptic Approximations



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Transcription:

EE 508 Lecture The Approximation Problem Classical Approximations the Chebyschev and Elliptic Approximations

Review from Last Time Butterworth Approximations Analytical formulation: All pole approximation Magnitude response is maximally flat at ω=0 Goes to 0 at ω= Assumes value at ω= Assumes value of at ω=0 Characterized by {n,ε} Emphasis almost entirely on performance at single frequency "On the Theory of Filter Amplifiers", Wireless Engineer (also called Experimental Wireless and the Radio Engineer), Vol. 7, 930, pp. 536-54. TLP j ω

Review from Last Time Poles of T BW (s) Butterworth Approximation Im Im for n even for n odd n n Re n n Re / n pk sin k j cos k n n n k=0,,... pn / n j0 / n pk sin k j cos k n n k=0,... n-3

Review from Last Time Butterworth Approximation What is the Q of the highest Q pole for the BW approximation? Highest Q Pole Im / n p0 sin j cos j n n n n Re Q MAX Q MAX n sin cos n n n n n sin sin Q MAX sin n

Review from Last Time Butterworth Approximation Order needs to be rather high to get steep transition Figure from Passive and Activ Network Analysis and Synthesis, Budak

Review from Last Time Butterworth Approximation sin n Figure from Passive and Activ Network Analysis and Synthesis, Budak Phase is quite linear in passband (benefit unrelated to design requirements)

Review from Last Time Butterworth Approximation Summary Widely Used Analytical Approximation Characterized by {ε,n} Maximally flat at ω=0 Almost all emphasis placed on characteristics at single frequency (ω=0) Transition not very steep (requires large order for steep transition) Pole Q is quite low Pass-band phase is quite linear (no emphasis was placed on phase!) Poles lie on a circle Simple closed-form analytical expressions for poles and T(jω)

Approximations Magnitude Squared Approximating Functions H A (ω ) Inverse Transform - H A (ω ) T A (s) Collocation Least Squares Approximations Pade Approximations Other Analytical Optimizations Numerical Optimization Canonical Approximations Butterworth Chebyschev Elliptic Bessel Thompson TLP j ω

Pafnuty Lvovich Chebyshev Born May 6, 8 Died December 8,894 Nationality Russian FieldsMathematician

Type I Chebyshev Approximations Analytical formulation: All pole approximation Magnitude response bounded between and in the pass band Assumes the value of at ω= Goes to 0 at ω= Assumes extreme values maximum no times in [0 ] Characterized by {n,ε} Based upon Chebyshev Polynomials Chebyshev polynomials were first presented in: P. L. Chebyshev (854) "Théorie des mécanismes connus sous le nom parallelogrammes," Mémoires des Savants étrangers présentes à l'academie de Saint-Pétersbourg, vol. 7, pages 539-586. T LP j ω

T LP j Type II Chebyshev Approximations (not so common) Analytical formulation: Magnitude response bounded between 0 and in the stop band Assumes the value of at ω= ω Value of at ω=0 Assumes extreme values maximum times in [ ] Characterized by {n,ε} Based upon Chebyshev Polynomials

Chebyshev Polynomials The Chebyshev polynomials are characterized by the property that the polynomial assumes the extremum values of 0 and a maximum number of times in the interval [0,] and go to for x large. In polynomial form they can be expressed as C 0 (x)= C (x)=x C n+ (x)=xc n (x) - C n- (x) Or, equivalently, in trigonometric form as cos n arccos x x [,] Cn x cosh n arccosh x x n cosh n arccos h x x Figure from Wikipedia

Chebyshev Polynomials The first 9 CC polynomials: C 0 3 4 5 6 7 8 x C x x C x x 3 C x 4x 3x 4 C x 8x 8x 5 3 C x 6x 0x 5x 6 4 C x 3x 48x 8x 7 5 3 C x 64x x 56x 7x 8 6 4 C x 8x 56x 60x 3x Figure from Wikipedia Even-indexed polynomials are functions of x Odd-indexed polynomials are product of x and function of x Square of all polynomials are function of x (i.e. an even function of x)

Type H ω= + ω BW n Butterworth H ω= + F ω n A General Form Observation: F n (ω ) close to in the pass band and gets very large in stop-band The square of the Chebyshev polynomials have this property H ω= + C ω CC n This is the magnitude squared approximating function of the Type CC approximation

Type H ω= + C ω CC n Poles of H CC (ω) lie on an ellipse with none on the real axis Im Re

Type H ω= + C ω CC n Im Im Inverse Mapping Re Re Poles of T CC (s)

Type Im k k sinh arcsinh cosh arcsinh n n Re Ellipse Intersect Points for select n and ε

Type Im Re Poles of T CC (s) π π pk sin +k sinh arcsinh j cos +k cosh arcsinh n n n n Properties of the ellipse j pk k k k k sinh arcsinh cosh arcsinh n n k=0.n-

Type TCC ω Even order TCC ω Odd order ω ω T CC (0) alternates between and with index number Substantial pass band ripple Sharp transitions from pass band to stop band

Type Fig from Allen and Huelsman Sharp transitions from pass band to stop band

Type From Budak Text CC transition is much steeper than BW transition

Comparison of BW and CC Responses CC slope at band edge much steeper than that of BW n Slope ( ) n [ Slope ( )] CC BW Corresponding pole Q of CC much higher than that of BW Lower-order CC filter can often meet same band-edge transition as a given BW filter Both are widely used Cost of implementation of BW and CC for same order is about the same

Type From Budak Text Analytically, it can be shown that, at the band-edge d TBW j d d TCC j d n n 3 3 CC slope is n times steeper than that of the BW slope

Type From Budak Text CC phase is much more nonlinear than BW phase

Type Im π π pk sin +k sinh arcsinh j cos +k cosh arcsinh n n n n Maximum pole Q of CC approximation can be obtained by considering pole with index k=0 Re π π p0 sin sinh arcsinh j cos cosh arcsinh n n n n p 0= Recall Q MAX Q j MAX,CC π cos n π sin sinh sinh n n arc

Type Comparison of maximum pole Q of CC approximation with that of BW approximation Q MAX,BW sin n Q MAX,CC π cos n π sin sinh sinh n n arc Q MAX,CC π cos n QMAX,BW sinh sinh n arc Example compare the Q s for n=0 and ε= Q BW =3.9 Q CC =35.9 For large n, the CC filters have a very high pole Q!

Type H ω= + ω BW n Butterworth Another General Form H ω= + HCC ω= + Fn /ω C n H ω= + F ω ω n A General Form Note: The second general form is not limited to use of the Chebyshev polynomials

Type HCC ω= + C n ω Equal-ripple in stop band Monotone in pass band Both poles and zeros present Poles of Type II CC are reciprocal of poles of Type I Zeros of Type II are inverse of the zeros of the CC Polynomials p k π π sin +k sinh arcsinh j cos +k cosh arcsinh n n n n zk j π k- cos n

Type HCC ω= + C n ω TCC ω Odd order TCC ω Even order

Type HCC ω= + C n ω TCC ω Transition region not as steep as for Type Considerably less popular

Type Im HCC ω= + C n ω Im Re Re Pole Q expressions identical since poles are reciprocals Maximum pole Q is just as high as for Type

End of Lecture