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12015-9-171Zhongguo Liu_Biomedical Engineering_Shandong Univ. Biomedical Signal processing Chapter 7 Filter Design Techniques Zhongguo Liu Biomedical.

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2 12015-9-171Zhongguo Liu_Biomedical Engineering_Shandong Univ. Biomedical Signal processing Chapter 7 Filter Design Techniques Zhongguo Liu Biomedical Engineering School of Control Science and Engineering, Shandong University

3 2 Chapter 7 Filter Design Techniques  7.0 Introduction  7.1 Design of Discrete-Time IIR Filters From Continuous-Time Filters  7.2 Design of FIR Filters by Windowing  7.3 Examples of FIR Filters Design by the Kaiser Window Method  7.4 Optimum Approximations of FIR Filters  7.5 Examples of FIR Equiripple Approximation  7.6 Comments on IIR and FIR Discrete- Time Filters

4 3 Filter Design Techniques 7.0 Introduction

5 4  Frequency-selective filters pass only certain frequencies  Any discrete-time system that modifies certain frequencies is called a filter.  We concetrate on design of causal Frequency-selective filters

6 5 Stages of Filter Design  The specification of the desired properties of the system.  The approximation of the specifications using a causal discrete-time system.  The realization of the system.  Our focus is on second step  Specifications are typically given in the frequency domain.

7 6 Frequency-Selective Filters  Ideal lowpass filter

8 7 Frequency-Selective Filters  Ideal highpass filter

9 8 Frequency-Selective Filters  Ideal bandpass filter

10 9 Frequency-Selective Filters  Ideal bandstop filter

11 10  If input is bandlimited and sampling frequency is high enough to avoid aliasing, then overall system behave as a continuous-time system: Linear time-invariant discrete-time system continuous-time specifications are converted to discrete time specifications by:

12 11 Example 7.1 Determining Specifications for a Discrete-Time Filter  Specifications of the continuous-time filter:  1. passband  2. stopband

13 12 Example 7.1 Determining Specifications for a Discrete-Time Filter  Specifications of the continuous-time filter:  1. passband  2. stopband

14 13 Example 7.1 Determining Specifications for a Discrete-Time Filter Specifications of the discrete-time filter in

15 14 Filter Design Constraints  Designing IIR filters is to find the approximation by a rational function of z.  The poles of the system function must lie inside the unit circle(stability, causality).  Designing FIR filters is to find the polynomial approximation.  FIR filters are often required to be linear- phase.

16 15 Filter Design Techniques 7.1 Design of Discrete-Time IIR Filters From Continuous-Time Filters

17 16 7.1 Design of Discrete-Time IIR Filters From Continuous-Time Filters  The traditional approach to the design of discrete-time IIR filters involves the transformation of a continuous-time filter into a discrete filter meeting prescribed specification.

18 17 Three Reasons 1.The art of continuous-time IIR filter design is highly advanced, and since useful results can be achieved, it is advantageous to use the design procedures already developed for continuous-time filters.

19 18 Three Reasons 2.Many useful continuous-time IIR design method have relatively simple closed form design formulas. Therefore, discrete-time IIR filter design methods based on such standard continuous-time design formulas are rather simple to carry out.

20 19 Three Reasons 3.The standard approximation methods that work well for continuous-time IIR filters do not lead to simple closed-form design formulas when these methods are applied directly to the discrete-time IIR case.

21 20 Steps of DT filter design by transforming a prototype continuous-time filter  The specifications for the continuous- time filter are obtained by a transformation of the specifications for the desired discrete-time filter.  Find the system function of the continuous-time filter.  Transform the continuous-time filter to derive the system function of the discrete-time filter.

22 21 Constraints of Transformation  to preserve the essential properties of the frequency response, the imaginary axis of the s-plane is mapped onto the unit circle of the z-plane.

23 22 Constraints of Transformation  In order to preserve the property of stability, If the continuous system has poles only in the let half of the s-plane, then the discrete-time filter must have poles only inside the unit circle.

24 23 7.1.1 Filter Design by Impulse Invariance  The impulse response of discrete-time system is defined by sampling the impulse response of a continuous-time system. Relationship of frequencies

25 24 relation between frequencies S plane Z plane - Relationship of frequencies

26 25 Aliasing in the Impulse Invariance

27 26 periodic sampling T : sample period; fs=1/T:sample rate Ωs=2π/T:sample rate Review

28 27 Time domain : Complex frequency domain : Laplace transform Relation between Laplace Transform and Z-transform Review

29 28 Fourier Transform frequency domain : Laplace transform Fourier Transform is the Laplace transform when s have the value only in imaginary axis, s=jΩ Since So

30 29 For discrete-time signal , 令: z-transform of discrete- time signal Laplace transform the Laplace transform

31 30 so :  Laplace transform Laplace transform continuous time signal z-transform z-transform discrete-time signal let :

32 31 DTFT : Discrete Time Fourier Transform S plane Z plane -

33 32 plane

34 33  If input is bandlimited and f s >2f max, : discrete-time filter design by impulse invariance

35 34 relation between frequencies S plane Z plane - Relationship of frequencies

36 35 periodic sampling T : sample period; fs=1/T:sample rate Ωs=2π/T:sample rate Review

37 36 proof of T : sample period; fs=1/T:sample rate;Ωs=2π/T:sample rate Review s(t) 为冲击串序列,周期为 T ,可展开傅立叶级数

38 37 periodic sampling

39 38 discrete-time filter design by impulse invariance

40 39 Steps of DT filter design by transforming a prototype continuous-time filter  Obtain the specifications for continuous- time filter by transforming the specifications for the desired discrete-time filter.  Find the system function of the continuous- time filter.  Transform the continuous-time filter to derive the system function of the discrete- time filter.

41 40 Transformation from discrete to continuous  In the impulse invariance design procedure, the transformation is  Assuming the aliasing involved in the transformation is neglected, the relationship of transformation is

42 41 Steps of DT filter design by transforming a prototype continuous-time filter  Obtain the specifications for continuous- time filter by transforming the specifications for the desired discrete-time filter.  Find the system function of the continuous- time filter.  Transform the continuous-time filter to derive the system function of the discrete- time filter.

43 42 Continuous-time IIR filters  Butterworth filters  Chebyshev Type I filters  Chebyshev Type II filters  Elliptic filters

44 43 Steps of DT filter design by transforming a prototype continuous-time filter  Obtain the specifications for continuous- time filter by transforming the specifications for the desired discrete-time filter.  Find the system function of the continuous- time filter.  Transform the continuous-time filter to derive the system function of the discrete- time filter.

45 44 Transformation from continuous to discrete

46 45 Example 7.2 Impulse Invariance with a Butterworth Filter  Specifications for the discrete-time filter:  Assume the effect of aliasing is negligible

47 46 Example 7.2 Impulse Invariance with a Butterworth Filter

48 47 Example 7.2 Impulse Invariance with a Butterworth Filter

49 48 Example 7.2 Impulse Invariance with a Butterworth Filter Plole pairs:

50 49 Example 7.2 Impulse Invariance with a Butterworth Filter Plole pairs:

51 50 Example 7.2 Impulse Invariance with a Butterworth Filter

52 51 Basic for Impulse Invariance  To chose an impulse response for the discrete-time filter that is similar in some sense to the impulse response of the continuous-time filter.  If the continuous-time filter is bandlimited, then the discrete-time filter frequency response will closely approximate the continuous-time frequency response.  The relationship between continuous-time and discrete-time frequency is linear; consequently, except for aliasing, the shape of the frequency response is preserved.

53 52 7.1.2 Bilinear Transformation  Bilinear transformation can avoid the problem of aliasing.  Bilinear transformation maps onto  Bilinear transformation:

54 53 7.1.2 Bilinear Transformation

55 54 7.1.2 Bilinear Transformation

56 55 7.1.2 Bilinear Transformation

57 56 relation between frequency response of H c (s), H(z)

58 57 Comments on the Bilinear Transformation  It avoids the problem of aliasing encountered with the use of impulse invariance.  It is nonlinear compression of frequency axis. S plane Z plane -

59 58 Comments on the Bilinear Transformation  The design of discrete-time filters using bilinear transformation is useful only when this compression can be tolerated or compensated for, as the case of filters that approximate ideal piecewise-constant magnitude-response characteristics.

60 59 Bilinear Transformation of

61 60 Comparisons of Impulse Invariance and Bilinear Transformation  The use of bilinear transformation is restricted to the design of approximations to filters with piecewise-constant frequency magnitude characteristics, such as highpass, lowpass and bandpass filters.  Impulse invariance can also design lowpass filters. However, it cannot be used to design highpass filters because they are not bandlimited.

62 61 Comparisons of Impulse Invariance and Bilinear Transformation  Bilinear transformation cannot design filter whose magnitude response isn’t piecewise constant, such as differentiator. However, Impulse invariance can design an bandlimited differentiator.

63 62  Butterworth Filter,  Chebyshev Approximation,  Elliptic Approximation 7.1.3 Example of Bilinear Transformation

64 63 Example 7.3 Bilinear Transformation of a Butterworth Filter

65 64 Example 7.3 Bilinear Transformation of a Butterworth Filter

66 65 Locations of Poles Plole pairs:

67 66 Example 7.3 Bilinear Transformation of a Butterworth Filter Plole pairs:

68 67 Ex. 7.3 frequency response of discrete-time filter

69 68 Example 7.4 Butterworth Approximation (Hw)

70 69 Example 7.4 frequency response

71 70 Chebyshev filters C Chebyshev filter (type I) 1 Chebyshev polynomial Chebyshev filter (type II) 1

72 71 Example 7.5 Chebyshev Type I, II Approximation Type I Type II

73 72 Example 7.5 frequency response of Chebyshev Type I Type II

74 73 E elliptic filters Elliptic filter 1 Jacobian elliptic function

75 74 Example 7.6 Elliptic Approximation

76 75 Example 7.6 frequency response of Elliptic

77 76 *Comparison of Butterworth, Chebyshev, elliptic filters: Example -Given specification -Order Butterworth Filter : N=14. ( max flat) Chebyshev Filter : N=8. ( Cheby 1, Cheby 2) Elliptic Filter : N=6 ( equiripple) B C E

78 77 -Pole-zero plot (analog) -Pole-zero plot (digital) BC1C2E BC1C2E (14)(8)

79 78 -Magnitude -Group delay B C1 C2 E B C1 C2 E

80 79 7.2 Design of FIR Filters by Windowing  FIR filters are designed based on directly approximating the desired frequency response of the discrete- time system.  Most techniques for approximating the magnitude response of an FIR system assume a linear phase constraint.

81 80 Window Method  An ideal desired frequency response  Many idealized systems are defined by piecewise-constant frequency response with discontinuities at the boundaries. As a result, these systems have impulse responses that are noncausal and infinitely long.

82 81 Window Method  The most straightforward approach to obtaining a causal FIR approximation is to truncate the ideal impulse response.

83 82 Windowing in Frequency Domain  Windowed frequency response  The windowed version is smeared version of desired response

84 83 Window Method  If

85 84 Choice of Window  is as short as possible in duration. This minimizes computation in the implementation of the filter.  approximates an impulse.

86 85 Window Method  then would look like, except where changes very abruptly.  If is chosen so that is concentrated in a narrow band of frequencies around

87 86 Rectangular Window  for the rectangular window has a generalized linear phase.  As M increases, the width of the “main lobe” decreases.  While the width of each lobe decreases with M, the peak amplitudes of the main lobe and the side lobes grow such that the area under each lobe is a constant.

88 87 Rectangular Window  will oscillate at the discontinuity.  The oscillations occur more rapidly, but do not decrease in magnitude as M increases.  The Gibbs phenomenon can be moderated through the use of a less abrupt truncation of the Fourier series.

89 88 Rectangular Window  By tapering the window smoothly to zero at each end, the height of the side lobes can be diminished.  The expense is a wider main lobe and thus a wider transition at the discontinuity.

90 89 7.2 Design of FIR Filters by Windowing Method  To design an ilowpass FIR Filters Review

91 90 7.2.1 Properties of Commonly Used Windows  Rectangular  Bartlett (triangular)

92 91 7.2.1 Properties of Commonly Used Windows  Hanning  Hamming

93 92 7.2.1 Properties of Commonly Used Windows  Blackman

94 93 7.2.1 Properties of Commonly Used Windows

95 94 Frequency Spectrum of Windows (a) Rectangular, (b) Bartlett, (c) Hanning, (d) Hamming, (e) Blackman, (M=50) (a)-(e) attenuation of sidelobe increases, width of mainlobe increases.

96 95 7.2.1 Properties of Commonly Used Windows biggest , high oscillations at discontinuity smallest , the sharpest transition Table 7.1

97 96 7.2.2 Incorporation of Generalized Linear Phase  In designing FIR filters, it is desirable to obtain causal systems with a generalized linear phase response.  The above five windows are all symmetric about the point,i.e.,

98 97 7.2.2 Incorporation of Generalized Linear Phase  Their Fourier transforms are of the form

99 98 7.2.2 Incorporation of Generalized Linear Phase

100 99 Frequency Domain Representation

101 100 Example 7.7 Linear-Phase Lowpass Filter  The desired frequency response is

102 101 magnitude frequency response

103 102 7.2.1 Properties of Commonly Used Windows smallest , the sharpest transition biggest , high oscillations at discontinuity

104 103 7.2.3 The Kaiser Window Filter Design Method Trade side-lobe amplitude for main-lobe width

105 104 Figure 7.24 As  increases, attenuation of sidelobe increases, width of mainlobe increases. As M increases, attenuation of sidelobe is preserved, width of mainlobe decreases. M=20 (a) Window shape, M=20, (b) Frequency spectrum, M=20, (c) beta=6  =6

106 105 Table 7.1 Transition width is a little less than mainlobe width

107 106  Increasing M wile holding  constant causes the main lobe to decrease in width, but does not affect the amplitude of the side lobe. Comparison  If the window is tapered more, the side lobe of the Fourier transform become smaller, but the main lobe become wider. M=20  =6 M=20

108 107 Filter Design by Kaiser Window

109 108 Filter Design by Kaiser Window M=20

110 109 Example 7.8 Kaiser Window Design of a Lowpass Filter

111 110 Example 7.8 Kaiser Window Design of a Lowpass Filter

112 111 Example 7.8 Kaiser Window Design of a Lowpass Filter

113 112 Ex. 7.8 Kaiser Window Design of a Lowpass Filter

114 113 7.3 Examples of FIR Filters Design by the Kaiser Window Method  The ideal highpass filter with generalized linear phase

115 114 Example 7.9 Kaiser Window Design of a Highpass Filter  Specifications:  By Kaiser window method

116 115 Example 7.9 Kaiser Window Design of a Highpass Filter  Specifications:  By Kaiser window method

117 116 7.3.2 Discrete-Time Differentiator

118 117 Example 7.10 Kaiser Window Design of a Differentiator  Since kaiser’s formulas were developed for frequency responses with simple magnitude discontinuities, it is not straightforward to apply them to differentiators.  Suppose

119 118 Group Delay  Phase:  Group Delay:

120 119 Group Delay  Phase:  Group Delay:  Noninteger delay

121 120 7.4 Optimum Approximations of FIR Filters  Goal: Design a ‘best’ filter for a given M  In designing a causal type I linear phase FIR filter, it is convenient first to consider the design of a zero phase filter.  Then insert a delay sufficient to make it causal.

122 121 7.4 Optimum Approximations of FIR Filters

123 122 7.4 Optimum Approximations of FIR Filters  Designing a filter to meet these specifications is to find the (L+1) impulse response values  In Packs-McClellan algorithm, is fixed, and is variable.  Packs-McClellan algorithm is the dominant method for optimum design of FIR filters.

124 123 7.4 Optimum Approximations of FIR Filters

125 124 7.4 Optimum Approximations of FIR Filters

126 125 7.4 Optimum Approximations of FIR Filters

127 126 Minimax criterion  Within the frequency interval of the passband and stopband, we seek a frequency response that minimizes the maximum weighted approximation error of

128 127 Other criterions

129 128  Let denote the closet subset consisting of the disjoint union of closed subsets of the real axis x. Alternation Theorem  is an r th-order polynomial.  denotes a given desired function of x that is continuous on  is a positive function, continuous on  The weighted error is  The maximum error is defined as

130 129 Alternation Theorem  A necessary and sufficient condition that be the unique rth-order polynomial that minimizes is that exhibit at least (r+2) alternations; i.e., there must exist at least (r+2) values in such that  and such that for

131 130 Example 7.11 Alternation Theorem and Polynomials  Each of these polynomials is of fifth order.  The closed subsets of the real axis x referred to in the theorem are the regions

132 131 7.4.1 Optimal Type I Lowpass Filters  For Type I lowpass filter  The desired lowpass frequency response  Weighting function

133 132 7.4.1 Optimal Type I Lowpass Filters  The weighted approximation error is  The closed subset is or

134 133 7.4.1 Optimal Type I Lowpass Filters  The alternation theorem states that a set of coefficients will correspond to the filter representing the unique best approximation to the ideal lowpass filter with the ratio fixed at K and with passband and stopband edge and if and only if exhibits at least (L+2) alternations on, i.e., if and only if alternately equals plus and minus its maximum value at least (L+2) times.  Such approximations are called equiripple approximations.

135 134 7.4.1 Optimal Type I Lowpass Filters  The alternation theorem states that the optimum filter must have a minimum of (L+2) alternations, but does not exclude the possibility of more than (L+2) alternations.  In fact, for a lowpass filter, the maximum possible number of alternations is (L+3).

136 135 7.4.1 Optimal Type I Lowpass Filters  Because all of the filters satisfy the alternation theorem for L=7 and for the same value of, it follows that and/or must be different for each,since the alternation theorem states that the optimum filter under the conditions of the theorem is unique.

137 136 Property for type I lowpass filters from the alternation theorem  The maximum possible number of alternations of the error is (L+3)  Alternations will always occur at and  All points with zero slop inside the passband and all points with zero slop inside stopband will correspond to alternations; i.e., the filter will be equiripple, except possibly at and

138 137 7.4.2 Optimal Type II Lowpass Filters  For Type II causal FIR filter:  The filter length (M+1) is even, ie, M is odd  Impulse response is symmetric  The frequency response is

139 138 7.4.2 Optimal Type II Lowpass Filters

140 139 7.4.2 Optimal Type II Lowpass Filters  For Type II lowpass filter,

141 140 7.4.3 The Park-McClellan Algorithm  From the alternation theorem, the optimum filter will satisfy the set of equation

142 141 7.4.3 The Park-McClellan Algorithm  Guessing a set of alternation frequencies and

143 142 7.4.3 The Park-McClellan Algorithm

144 143 7.4.3 The Park-McClellan Algorithm  For equiripple lowpass approximation  Filter length: (M+1)

145 144 7.5 Examples of FIR Equiripple Approximation 7.5.1 Lowpass Filter

146 145 Comments  M=26, Type I filter  The minimum number of alternations is (L+2)=(M/2+2)=15  7 alternations in passband and 8 alternations in stopband  The maximum error in passband and stopband are 0.0116 and 0.0016, which exceed the specifications.

147 146 7.5.1 Lowpass Filter  M=27,, Type II filter, zero at z=-1  The maximum error in passband and stopband are 0.0092 and 0.00092, which exceed the specifications.  The minimum number of alternations is (L+2)=(M-1)/2+2=15  7 alternations in passband and 8 alternations in stopband

148 147 Comparison  Kaiser window method require M=38 to meet or exceed the specifications.  Park-McClellan method require M=27  Window method produce approximately equal maximum error in passband and stopband.  Park-McClellan method can weight the error differently.

149 148 7.6 Comments on IIR and FIR Discrete-Time Filters  What type of system is best, IIR or FIR?  Why give so many different design methods?  Which method yields the best result?

150 149 7.6 Comments on IIR and FIR Discrete-Time Filters Closed- Form Formulas Generalized Linear Phase Order IIRYesNoLow FIRNoYesHigh

151 150 7.2.1 Properties of Commonly Used Windows  Their Fourier transforms are concentrated around  They have a simple functional form that allows them to be computed easily.  The Fourier transform of the Bartlett window can be expressed as a product of Fourier transforms of rectangular windows.  The Fourier transforms of the other windows can be expressed as sums of frequency-shifted Fourier transforms of rectangular windows.(Problem7.34)

152 151 Homework  Simulate the frequency response (magnitude and phase) for Rectangular, Bartlett, Hanning, Hamming, and Blackman window with M=21 and M=51

153 152 2015-9-17 152 Zhongguo Liu_Biomedical Engineering_Shandong Univ. Chapter 5 HW  7.2, 7.4, 7.15, 上一页下一页 返 回


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