Presentation is loading. Please wait.

Presentation is loading. Please wait.

Review for Exam I ECE460 Spring, 2012.

Similar presentations


Presentation on theme: "Review for Exam I ECE460 Spring, 2012."— Presentation transcript:

1 Review for Exam I ECE460 Spring, 2012

2 Dirichlet Conditions Fourier Transform Fourier Series
x(t) has a finite number of minima and maxima in any interval on the real line x(t) has a finite number of discontinuities over any interval on the real line Fourier Series x(t) has a finite number of minima and maxima over one period x(t) has a finite number of discontinuities over one period

3 Fourier Series (Periodic Functions)
Exponential Form Real Coefficient Trigonometric Form Complex Coefficient Trigonometric Form

4 Common Fourier Transform Pairs

5 Fourier Transform Properties

6 Sampling Theorem Able to reconstruct any bandlimited signal from its samples if we sample fast enough. If X(f) is band limited with bandwidth W then it is possible to reconstruct x(t) from samples

7 Example Linear Time-Invariant Causality Stability Filter
Properties of a System: Linear Time-Invariant Causality Stability

8 Narrowband Signals Given:

9 Bandpass Signals & Systems
Frequency Domain: Low-pass Equivalents: Let Giving To solve, work with low-pass parameters (easier mathematically), then switch back to bandpass via

10 Analog Modulation Amplitude Modulation (AM) Message Signal:
Sinusoidal Carrier: AM (DSB) DSB – SC SSB Started with DSB-SC signal and filtered to one sideband Used ideal filter: Vestigial

11 Analog Modulation Angle Modulation Definitions: FM (sinusoidal signal)

12 Combinatorics Sampling with replacement and ordering
Sampling without replacement and with ordering Sampling without replacement and without ordering Sampling with replacement and without ordering Bernouli Trials Conditional Probabilities

13 Random Variables Cumulative Distribution Function (CDF)
Probability Distribution Function (PDF) Probability Mass Function (PMF) Key Distributions Bernoulli Random Variable Uniform Random Variable Gaussian (Normal) Random Variable

14 Functions of a Random Variable
General: Statistical Averages Mean Variance

15 Multiple Random Variables
Joint CDF of X and Y Joint PDF of X and Y Conditional PDF of X Expected Values Correlation of X and Y Covariance of X and Y - what is ρX,Y

16 Jointly Gaussian R.V.’s X and Y are jointly Gaussian if Matrix Form: Function:

17 Random Processes Notation:
Understand integration across time or ensembles Mean Autocorrelation Auto-covariance Power Spectral Density Stationary Processes Strict Sense Stationary Wide-Sense Stationary (WSS) Cyclostationary Ergodic

18 Transfer Through a Linear System
Mean of Y(t) where X(t) is wss Cross-correlation function RXY(t1,t2) Autocorrelation function RY(t1,t2) Spectral Analysis

19 Energy & Power Processes
For a sample function For Random Variables we have Then the energy and power content of the random process is

20 Zero-Mean White Gaussian Noise
A zero mean white Gaussian noise, W(t), is a random process with For any n and any sequence t1, t2, …, tn the random variables W(t1), W(t2), …, W(tn), are jointly Gaussian with zero mean and covariances

21 Bandpass Processes X(t) is a bandpass process Filter X(t) using a Hilbert Transform: and define If X(t) is a zero-mean stationary bandpass process, then Xc(t) and Xs(t) will be zero-mean jointly stationary processes: Giving


Download ppt "Review for Exam I ECE460 Spring, 2012."

Similar presentations


Ads by Google