Chapter 4: Sampling of Continuous-Time Signals

Slides:



Advertisements
Similar presentations
Signals and Systems Fall 2003 Lecture #13 21 October The Concept and Representation of Periodic Sampling of a CT Signal 2. Analysis of Sampling.
Advertisements

Husheng Li, UTK-EECS, Fall  An ideal low pass filter can be used to obtain the exact original signal.
Digital Signal Processing – Chapter 11 Introduction to the Design of Discrete Filters Prof. Yasser Mostafa Kadah
President UniversityErwin SitompulSMI 7/1 Dr.-Ing. Erwin Sitompul President University Lecture 7 System Modeling and Identification
Chapter 8: The Discrete Fourier Transform
1.The Concept and Representation of Periodic Sampling of a CT Signal 2.Analysis of Sampling in the Frequency Domain 3.The Sampling Theorem — the Nyquist.
4.4.3 Interpolation Using Unchanged Key Values It is often necessary to retain the values from the input sequence y(m) in the interpolated x(n). without.
Overview of Sampling Theory
Multirate Digital Signal Processing
EECS 20 Chapter 10 Part 11 Sampling and Reconstruction Last time we Viewed aperiodic functions in terms of frequency components via Fourier transform Gained.
Science is organized knowledge. Wisdom is organized life.
Continuous-time Signal Sampling Prof. Siripong Potisuk.
Leo Lam © Signals and Systems EE235. Transformers Leo Lam ©
SAMPLING & ALIASING. OVERVIEW Periodic sampling, the process of representing a continuous signal with a sequence of discrete data values, pervades the.
Lecture 4: Sampling [2] XILIANG LUO 2014/10. Periodic Sampling  A continuous time signal is sampled periodically to obtain a discrete- time signal as:
Sampling of Continuous-Time Signals
First semester King Saud University College of Applied studies and Community Service 1301CT.
PULSE MODULATION.
FT Representation of DT Signals:
Echivalarea sistemelor analogice cu sisteme digitale Prof.dr.ing. Ioan NAFORNITA.
… Representation of a CT Signal Using Impulse Functions
The sampling of continuous-time signals is an important topic It is required by many important technologies such as: Digital Communication Systems ( Wireless.
Dr Martin Hendry, Dept of Physics and Astronomy University of Glasgow, UK Astronomical Data Analysis I 11 lectures, beginning autumn 2008.
Discrete-Time and System (A Review)
EE421, Fall 1998 Michigan Technological University Timothy J. Schulz 08-Sept, 98EE421, Lecture 11 Digital Signal Processing (DSP) Systems l Digital processing.
Chapter 5 Frequency Domain Analysis of Systems. Consider the following CT LTI system: absolutely integrable,Assumption: the impulse response h(t) is absolutely.
DTFT And Fourier Transform
1 Chapter 8 The Discrete Fourier Transform 2 Introduction  In Chapters 2 and 3 we discussed the representation of sequences and LTI systems in terms.
Signals and Systems Prof. H. Sameti Chapter 7: The Concept and Representation of Periodic Sampling of a CT Signal Analysis of Sampling in the Frequency.
Random signals. Histogram of the random signal Continuous Time Sinusoidal signals.
1 Signals & Systems Spring 2009 Week 3 Instructor: Mariam Shafqat UET Taxila.
Chapter 2: Discrete time signals and systems
The Wavelet Tutorial: Part3 The Discrete Wavelet Transform
Sampling Theorems. Periodic Sampling Most signals are continuous in time. Example: voice, music, images ADC and DAC is needed to convert from continuous-time.
Fourier Series Summary (From Salivahanan et al, 2002)
Digital Signal Processing
Chapter 5 Frequency Domain Analysis of Systems. Consider the following CT LTI system: absolutely integrable,Assumption: the impulse response h(t) is absolutely.
1 Chapter 5 Ideal Filters, Sampling, and Reconstruction Sections Wed. June 26, 2013.
Notice  HW problems for Z-transform at available on the course website  due this Friday (9/26/2014) 
Zhongguo Liu_Biomedical Engineering_Shandong Univ. Chapter 8 The Discrete Fourier Transform Zhongguo Liu Biomedical Engineering School of Control.
Prof. Brian L. Evans Dept. of Electrical and Computer Engineering The University of Texas at Austin Lecture 4 EE 345S Real-Time.
Leo Lam © Signals and Systems EE235 Leo Lam.
1 Signals and Systems Lecture 23 DT Processing of CT Signals Digital Differentiator and Half-Sample Delay DT Decimation and Interpolation.
Leo Lam © Signals and Systems EE235. Leo Lam © Fourier Transform Q: What did the Fourier transform of the arbitrary signal say to.
Sampling of Continuous-Time Signals Quote of the Day Optimist: "The glass is half full." Pessimist: "The glass is half empty." Engineer: "That glass is.
Lecture 3: The Sampling Process and Aliasing 1. Introduction A digital or sampled-data control system operates on discrete- time rather than continuous-time.
Continuous-time Signal Sampling
© 2010 The McGraw-Hill Companies Communication Systems, 5e Chapter 6: Sampling and pulse modulation A. Bruce Carlson Paul B. Crilly (modified by J. H.
Discrete-Time Processing of Continuous-Time Signals Quote of the Day Do not worry about your difficulties in Mathematics. I can assure you mine are still.
Chapter 2 Ideal Sampling and Nyquist Theorem
Lecture 1.4. Sampling. Kotelnikov-Nyquist Theorem.
1 Chapter 8 The Discrete Fourier Transform (cont.)
Chapter 4 Dynamical Behavior of Processes Homework 6 Construct an s-Function model of the interacting tank-in-series system and compare its simulation.
Chapter 4 Dynamical Behavior of Processes Homework 6 Construct an s-Function model of the interacting tank-in-series system and compare its simulation.
7.0 Sampling 7.1 The Sampling Theorem
Sampling rate conversion by a rational factor
Zhongguo Liu Biomedical Engineering
لجنة الهندسة الكهربائية
Changing the Sampling Rate
The sampling of continuous-time signals is an important topic
Sampling and the Discrete Fourier Transform
Chapter 8 The Discrete Fourier Transform
Reconstruction of Bandlimited Signal From Samples
Signals and Systems Chapter 7: Sampling
Chapter 2 Ideal Sampling and Nyquist Theorem
Chapter 8 The Discrete Fourier Transform
Signals and Systems Revision Lecture 2
Chapter 9 Advanced Topics in DSP
Chapter 3 Sampling.
DIGITAL CONTROL SYSTEM WEEK 3 NUMERICAL APPROXIMATION
Presentation transcript:

Chapter 4: Sampling of Continuous-Time Signals Department of Computer Eng. Sharif University of Technology Discrete-time signal processing Chapter 4: Sampling of Continuous-Time Signals Content and Figures are from Discrete-Time Signal Processing, 2e by Oppenheim, Shafer and Buck, ©1999-2000 Prentice Hall Inc.

Chapter 4: Sampling of Continuous-Time Signals 4.1 Periodic Sampling In this method x[n] obtained from xc(t) according to the relation : The sampling operation is generally not invertible i.e., given the output x[n] it is not possible in general to reconstruct xc(t). Although we remove this ambiguity by restricting xc(t). Chapter 4: Sampling of Continuous-Time Signals 1

Sampling with a Periodic Impulse Train Figure(a) is not a representation of any physical circuits, but it is convenient for gaining insight in both the time and frequency domain. (a) Overall system (b) xs(t) for two sampling rates (c) Output for two sampling rates Chapter 4: Sampling of Continuous-Time Signals 2

4.2 Frequency Domain Representation of Sampling Let us now consider the Fourier transform of xs(t): If and Chapter 4: Sampling of Continuous-Time Signals 3

Frequency Domain Representation of Sampling By applying the continuous-time Fourier transform to equation We obtain consequently Chapter 4: Sampling of Continuous-Time Signals 4

Exact Recovery of Continuous-Time from Its Samples (a) represents a band limited Fourier transform of xc(t) Whose highest nonzero frequency is . (b) represents a periodic impulse train with frequency. (c) shows the output of impulse modulator in the case Chapter 4: Sampling of Continuous-Time Signals 5

Exact Recovery of Continuous-Time from Its Samples In this case don’t overlap therefore xc(t) can be recovered from xs(t) with an ideal low pass filter with gain T and cutoff frequency It means = Chapter 4: Sampling of Continuous-Time Signals 6

Chapter 4: Sampling of Continuous-Time Signals Aliasing Distortion (a) represents a band limited Fourier transform of xc(t) Whose highest nonzero frequency is . (b) represents a periodic impulse train with frequency. (c) shows the output of impulse modulator in the case Chapter 4: Sampling of Continuous-Time Signals 7

Chapter 4: Sampling of Continuous-Time Signals Aliasing Distortion In this case the copies of overlap and is not longer recoverable by lowpass filtering therefore the reconstructed signal is related to original continuous-time signal through a distortion referred to as aliasing distortion. Chapter 4: Sampling of Continuous-Time Signals 8

Example: The effect of aliasing in the sampling of cosine signal Suppose Chapter 4: Sampling of Continuous-Time Signals 9

Nyquist Sampling Theorem Sampling theorem describes precisely how much information is retained when a function is sampled, or whether a band-limited function can be exactly reconstructed from its samples. Sampling Theorem: Suppose that is band-limited to a frequency interval , i.e., Then xc(t) can be exactly reconstructed from equidistant samples where is the sampling period, is the sampling frequency (samples/second), is for radians/second. Chapter 4: Sampling of Continuous-Time Signals 10

Chapter 4: Sampling of Continuous-Time Signals Oversampled Suppose that is band-limited: Then if is sufficiently small, appears as: Condition: Chapter 4: Sampling of Continuous-Time Signals 11

Chapter 4: Sampling of Continuous-Time Signals Critically Sampled Critically sampled: According to the Sampling Theorem, in general the signal cannot be reconstructed from samples at the rate . This is because of errors will occur if , the folded frequencies will add at Consider the case: and note that for Chapter 4: Sampling of Continuous-Time Signals 12

Undersampled (aliased) If sampling theorem condition is not satisfied The frequencies are folded - summed. This changes the shape of the spectrum. There is no process whereby the added frequencies can be discriminated - so the process is not reversible. Thus, the original (continuous) signal cannot be reconstructed exactly. Information is lost, and false (alias) information is created. If a signal is not strictly band-limited, sampling can still be done at twice the effective band-limited. Chapter 4: Sampling of Continuous-Time Signals 13

4.3 Reconstruction of a Bandlimited Signal from Its Samples Figure(a) represents an ideal reconstruction system. Ideal reconstruction filter has the gain of T and cutoff frequency we choice . This choice is appropriate for any relationship between and . Chapter 4: Sampling of Continuous-Time Signals 14

Reconstruction of a Bandlimited Signal from Its Samples Therefore Chapter 4: Sampling of Continuous-Time Signals 15

Reconstruction of a Bandlimited Signal from Its Samples For all integer values of m. independent from the sampling period T. Therefore the resulting signal is an exact reconstruction of xc(t) at the sampling times. the fact that, if there is no aliasing, the low pass filter interpolates the correct reconstruction between the samples, and if there is aliasing, it can’t interpolate them correctly. Chapter 4: Sampling of Continuous-Time Signals 16

Chapter 4: Sampling of Continuous-Time Signals Ideal D/C Converter The properties of the ideal D/C converter are most easily seen in the frequency domain. Chapter 4: Sampling of Continuous-Time Signals 17

4.4 Discrete-Time Processing of Continuous-Time Signals A major application of discrete-time systems is in the processing of continuous-time signals. We know from the previous sections Chapter 4: Sampling of Continuous-Time Signals 18

4.4.1 LTI Discrete-Time systems In the LTI systems we have IF then Chapter 4: Sampling of Continuous-Time Signals 19

4.4.1 LTI Discrete-Time systems In general if the discrete-time system is LTI and if the sampling frequency is above the Nyquist rate associated with the band width of the input xc(t), then the overall system will be equivalent to a LTI continuous-time system with an effective frequency response given by: Chapter 4: Sampling of Continuous-Time Signals 20

Chapter 4: Sampling of Continuous-Time Signals Example: Ideal Continuous-Time Lowpass Filtering Using a Discrete-Time Lowpass Filter Chapter 4: Sampling of Continuous-Time Signals 21

Chapter 4: Sampling of Continuous-Time Signals Example: Ideal Continuous-Time Lowpass Filtering Using a Discrete-Time Lowpass Filter Chapter 4: Sampling of Continuous-Time Signals 22

Chapter 4: Sampling of Continuous-Time Signals Example: Discrete-Time Implementation of an Ideal Continuous-Time Bandlimited Differentiator The ideal continuous-time differentiator system is For processing bandlimited signals, it is sufficient that Therefore the corresponding discrete-time system has frequency response Chapter 4: Sampling of Continuous-Time Signals 23

Chapter 4: Sampling of Continuous-Time Signals Example: Discrete-Time Implementation of an Ideal Continuous-Time Bandlimited Differentiator If this system has the input Chapter 4: Sampling of Continuous-Time Signals 24

Chapter 4: Sampling of Continuous-Time Signals 4.4.2 Impulse Invariance If the desired continuous-time system has bandlimited frequency response then how to choose so that In this case the discrete-time system is said to be an impulse-invariant version of the continuous time system. Chapter 4: Sampling of Continuous-Time Signals 25

Example: A discrete-time lowpass filter obtained by impulse invariance We want to obtain an ideal lowpass discrete-time filter with cutoff frequency . we can do this by sampling a continuous-time ideal lowpass filter with cutoff frequency Chapter 4: Sampling of Continuous-Time Signals 26

4.6 Changing the sampling rate using discrete-time processing We have seen that a continuous-time signal can be represented by a discrete-time signal. It is often necessary to change the sampling rate of x[n] and obtain a new discrete-time signal such that One approach is to reconstruct and then resample it with period , but it is of interest to consider methods that involve only discrete time operations. Chapter 4: Sampling of Continuous-Time Signals 27

4.6.1 Sampling rate reduction by an integer factor Discrete-time sampler or compressor If then is an exact representation of Downsampling: the operation of reducing the sampling rate (including any filtering). Chapter 4: Sampling of Continuous-Time Signals 28

Chapter 4: Sampling of Continuous-Time Signals Frequency domain relation between the input and output of the compressor Chapter 4: Sampling of Continuous-Time Signals 29

Downsampling without Aliasing Chapter 4: Sampling of Continuous-Time Signals 30

Downsampling with aliasing Chapter 4: Sampling of Continuous-Time Signals 31

Downsampling with prefiltering to avoid aliasing Chapter 4: Sampling of Continuous-Time Signals 32

4.6.2 Increasing the sampling rate by an integer factor We will refer to the operation of increasing the sampling rate upsampling The system on the left is called a sampling rate expander. Its output is The system on the right is a lowpass discrete-time filter with cutoff frequency and gain L. Chapter 4: Sampling of Continuous-Time Signals 33

Increasing the sampling rate by an integer factor This system is an interpolator because of it fills in the missing samples. Chapter 4: Sampling of Continuous-Time Signals 34

Increasing the Sampling Rate By an Integer Factor If the input sequence was obtained by sampling without aliasing then is correct for all n, And is obtained by oversampling of . Chapter 4: Sampling of Continuous-Time Signals 35

Chapter 4: Sampling of Continuous-Time Signals Linear Interpolation In practice ideal lowpass filters can not be implemented exactly. In some cases, simple interpolation procedure are adequate. Since linear interpolation is often used. Chapter 4: Sampling of Continuous-Time Signals 36

4.6.3 Changing the Sampling Rate by a Noninteger Factor By combining decimation and interpolation it is possible to change the sampling rate by a noninteger factor. The interpolation and decimation filter can be combined together. Chapter 4: Sampling of Continuous-Time Signals 37

Changing the Sampling Rate by a Noninteger Factor Chapter 4: Sampling of Continuous-Time Signals 38