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Lecture on Communication Theory Chapter 4. Random Processes 4.1 Introduction 1. Deterministic signals: the class of signals that may be modeled as completely specified functions of time. 2. Random signals: it is not possible to predict its precise value in advance. ex) thermal noise 3. Random variable: A function whose domain is a sample space and whose range is some set of real numbers. – obtained by observing a random process at a fixed instant of time. 4. Random process: ensemble (family) of sample functions, ensemble of random variables. 4.2 Probability Theory 1. Random experiment 를 위한 요구 사항 1) Repeatable under identical conditions 2) Outcome is unpredictable 3) For a large number of trials of the experiment, the outcomes exhibit statistical regularity, i.e., a definite average pattern of outcomes is observed for a large number of trials. CNU Dept. of Electronics 1 D. J. Kim Lecture on Communication Theory 2. Relative-Frequency Approach 1) Relative frequency N (A) 0 n 1 n 2) Statistical regularity Probability of event A. N (A) P(A) lim n n n 3. Axioms of Probability. 1) 용어 a) Sample points sk: kth outcome of experiment b) Sample space S: totality of sample points c) Sure event: entire sample space S d) : null or impossible event e) Elementary event: a single sample point 2) Definition of probability a) A sample space S of elementary events b) A class of events that are subsets of S. c) A probability measure P() assigned to each event A in the class , which has the following properties: ( i ) P(s) 1 Axioms of Probability (i i) 0 P(A) 1 (iii) If A B is the union of two mutually execlusive events in the class , then P(A B) P(A) P(B) CNU Dept. of Electronics 2 D. J. Kim Lecture on Communication Theory 3) Property 1. P(A) 1 P(A) 4) Property 2. If M mutually the exclusive events A1, A 2 , , A M have the exclusive property A1 A 2 A M S then P(A1 ) P(A 2 ) P(A M ) 1 5) Property 3. P(A B) P(A) P(B) - P(AB) 4. Conditional Probability 1) Conditional Probability of given A (given A means that event A has occurred) P(AB) P(A) where P(AB) joint probabilit y of A & B P(B | A) P(AB) P(B | A)P(A) P(A | B)P(B) P(A | B)P(B) ; Bayes' rule P(A) 2) Statistically independent P(AB) P(A)P(B) ex1) BSC (Binary Symmetric Channel) P(B | A) Discrete memoryless channel 1-p [0] A0 p [1] CNU A1 Dept. of Electronics p 1-p 3 B0 [0] B1 [1] D. J. Kim Lecture on Communication Theory . Priori prob. P(A 0 ) p0 , P(A 1 ) p 1, 여기에서 p1 p2 1 Conditional prob. or likelihood P(B1| A 0 ) P(B 0 | A 1 ) p; [0]송신[1]수신확률 P(B 0 | A 0 ) P(B1 | A 1 ) 1 p; [0]송신[0]수신확률 Output prob. P(B 0 ) (1 p)p 0 pp 1 P(B1 ) pp 0 (1 p)p 1 Posteriori prob. P(A 0 | B0 ) P(A 1| B1 ) P(B0 |A 0 )P(A 0 ) (1 p)p 0 ; [0]수신[0]송신확률 P(B0 ) (1 p)p 0 pp 1 P(B1|A1 )P(A 1 ) (1 p)p 1 ; [1]수신[1]송신확률 P(B1 ) pp 0 (1 p)p1 4.3 Random variables 1.개요 1) Random variable: A function whose domain is a sample space and whose range is some set of real numbers 2) Discrete r. v. : X(k), k번째 sample ex)주사위 range {1,,6} Continuous r. v. : X ex) 8시~ 8시 10분 버스도착시간 3) Cumulative distribution function (cdf) or distribution fct. FX(x) = P(X x) a) 0 FX(x) 1 b) if x1 < x2, FX(x1) FX(x2), monotone-nondecreasing fct. CNU Dept. of Electronics 4 D. J. Kim Lecture on Communication Theory 4) pdf (probability density fct.) fX (x) d FX (x) dx FX (x) f X (ξ )dξ x f X (x)dx 1 P(x1 X x 2 ) x 2 f X (x)dx x 1 pdf: nonnegative fct., total area = 1 ex2) CNU Dept. of Electronics 5 D. J. Kim Lecture on Communication Theory 2. Several random variables (2 random variables) 1) Joint distribution fct. FX,Y (x, y) P(X x, Y y) 2) Joint pdf ∂ 2FX,Y (x, y) fX,Y (x, y) ∂ x∂ y - - fX,Y (ξ ,η ) dξ dη 1 3) Total area FX (x) - - fX,Y (ξ ,η ) dξ d x fX (x) - fX,Y (x,η ) dη ; marginal density 4) Conditional prob. density fct. (given that X = fixed x) f (x, y) If fX (x) 0 fY (y | x) X,Y 0 fX (x) fY (y | x)dy 1 If X,Y are statistically independent fY(y|x) = fY(y) Statistically independent fX,Y(x,y) = fX(x)fY(y) 4.4 Statistical Average 1. Mean or expected value 1) Continuous μ X E[X] xf X (x)dx ex) 1 10 0 CNU Dept. of Electronics 10 1 1 2 E[X] xdx x 5 10 20 0 10 6 D. J. Kim Lecture on Communication Theory 2) Discrete Nn (k) x k p(k) k k n 1 11 ex) 주사위 E[X] (1 2 3 4 5 6) 6 3 E[X] xk 2. Function of r. v. Y=g(X) X, Y : r. v. E[Y] E[g(X)] g(x)f X (x)dx ex) Y g(X) cos(X) 1 -π x π where f X (x) 2π otherwise 0 π 1 1 E[Y] π cosx dx sinx 0 2π 2π π π 3. Moments 1) n-th moments E[X n ] x n f X (x)dx n 1 E[X] μ x mean n 2 E[X 2 ] 2) Central moments mean square value of X E[(X μ X ) n ] (x μ X ) n f X (x)dx n 2, σ 2X var[X] E[(X μ X ) 2 ] where σ X is standard deviation CNU Dept. of Electronics 7 D. J. Kim Lecture on Communication Theory X2의 meaning: randomness, effective width of fX(x) 그 이유는 Chebyshev inequality을 통해서 알 수 있다. 2 P( X - μ X σ ε ) X2 ; Chebyshev inequality ε σ X E[(X μ X )2 ] E[X 2 ] 2μ XE(X) μ X E[X 2 ] μ X 2 2 2 If μ X 0, σ X E[X 2 ] 2 2 σ X : variance, E[X 2 ] : mean square value 4. Characteristic function Characteristic function X(v) fX(x) φ X (v) E[exp(jvx)] f X (x)exp(jvx)dx f X (x) 1 φ X (v)exp(-jvx)dv 2π ex4) Gaussian Random Variable (x μ X ) 2 1 x f X (x) exp 2 2πσ X 2σ X 1 2 φ X (v) exp jvμ X v 2σ X 2 x2 1 If μ X 0, f X (x) exp 2 2πσ X 2 σ X v 2σ X 2 φ X x exp 2 central moments 1 3 5 (n 1)σ X n for n even E[(x μ X ) ] for n odd 0 n CNU Dept. of Electronics 8 D. J. Kim Lecture on Communication Theory 5. Joint moments Joint moments E[X i Y j ] x i y j fX,Y (x, y)dxdy Correlatio n E[XY] xyfX,Y (x, y)dxdy Covariance cov[XY] E[(X E[X])(Y E[Y])] E[XY] μ Xμ Y Correlati on coefficien t cov[XY] ρ σ Xσ Y X and Y are uncorrelat ed cov [XY] 0 E[XY] 0 X and Y are orthogonal E[X] = 0 or E[Y] = 0 uncorrelated X, Y are orthogonal O uncorrelated X, Y are statistically independent X CNU Dept. of Electronics 9 D. J. Kim Lecture on Communication Theory 4.5 Transformations of Random variables: Y=g(X) 1. Monotone transformations: one-to-one Y y X x fY (y) fX (x) f (x) X dy/dx dg/dx xg1(y) 2. Many-to-one transformations fY (y) k fY (x) dg/dx k x g1(y) k where xk = solution of g(x) = y CNU Dept. of Electronics 10 D. J. Kim Lecture on Communication Theory 4.6 Random processes or schocastic process r. v. {X}: Outcomes of a random experiment is mapped into a number r. p. {X(t)} or {X(t,s)}: Outcomes of a random experiment is mapped into a waveform that is fct. of time indexed ensemble (family) of r. v. Sample function sample space xj(t) = X(t,sj) {x1(t),x2(t),,xn(t)} {x1(tk),x2(tk),xn(tk)} = {X(tk,s1),X(tk,s2)X(tk,sn)} constitutes a random variable r. p. 의 예) X(t) = A cos (2fct+), Random Binary Wave, gaussian noise CNU Dept. of Electronics 11 D. J. Kim Lecture on Communication Theory 4.7 Stationary 1. r. p. X(t) is stationary in the strict sense – If FX(t1τ ),,X(t k τ ) (x1 , x k ) FX(t1)X(t k ) (x1 , x k ) for all time shift , all k and all possible t1,,tk. < observation > 1) k = 1, FX(t)(x) = FX(t+)(x) = FX(x) for all t & . 1st order distribution fct. of a stationary r. p. is independent of time 2) k = 2 & = -t, FX(t 1),X(t 2 ) (x1, x 2 ) FX(0), X(t 2 -t1) (x1, x 2 ) for all t1& t2 2nd order distribution fct. of a stationary r. p. depends only on the differences between the observation time 2. Two r. p. X(t),Y(t) are jointly stationary if the joint distribution functions of r. v. X(t1),,X(tk) and Y(t1’), ,Y(tk’) are invariant with respect to the location of the origin t = 0 for all k and j, and all choices of observation times t1,,tk and t1’, ,tk’. ex6) CNU Dept. of Electronics 12 D. J. Kim Lecture on Communication Theory probability of the joint event A={ai < X(ti) bi} i=1, 2, 3 P(A) FX(t ),X(t ),X(t ) (b1, b 2 , b3 ) FX(t 1 2 3 ),X(t ),X(t ) (a1, a 2 , a 3 ) 1 2 3 4.8 Mean, Correlation, and Covariance functions 1. Mean of r. p. μ X (t) E[X(t)] xf x(t) (x)dx, x : r. v. For stationary r. p. μ X (t) μ X constant, for all t 2. Autocorrelation fct. of r. p. X(t) R X (t1, t 2 ) E[X(t1 )X(t 2 )] x1x 2 fX(t )X(t ) (x1, x 2 )dx 1dx 2 1 2 For stationary r. p. RX(t1,t2) = RX(t2-t1) CNU Dept. of Electronics 13 D. J. Kim Lecture on Communication Theory 3. Autocovariance fct. of stationary r. p. X(t) CX(t1,t2)=E[(X(t1) - X)(X(t2) - X)] =RX(t2 - t1) - X2 4. Wide-sense stationary μ X (t) μ X constant , for all t R X (t1 , t 2 ) R X (t 2 t1 ) for all t1 and t 2 strict-sense stationary o x wide sense stationary 5. Properties of the Autocorrelation Function Autocorrelation fct. of stationary process X(t) RX()=E[X(t+)X(t)] for all t Properties a) Mean-square value by setting = 0 RX(0) = E[X2(t)] b) RX(): even fct. RX() = RX(-) c) RX() has its maximum at = 0, RX() RX(0) pf. of c) E[(X(t τ ) X(t)) 2 ] 0 E[X 2 (t τ )] 2E[X(t τ )X(t)] E[X 2 (t)] 0 2R X (0) 2R X (τ ) 0 R X (0) R X (τ ) R X (0) CNU Dept. of Electronics 14 D. J. Kim Lecture on Communication Theory Physical meaning of RX() “Interdependence “ of X(t) and X(t+) Decorrelation time 0: for > 0, RX() < 0.01RX(0) ex7) Sinusoidal wave with Random phase X(t) Acos(2π f c t Θ ) 1 where fΘ (θ ) 2π 0 R X (τ ) E[X(t τ )X(t)] π θ π otherwise E[A 2 cos(2π f c t 2π f cτ Θ )cos(2π f c t Θ )] CNU Dept. of Electronics A2 cos(2π f cτ ) 2 15 D. J. Kim Lecture on Communication Theory ex8) Random Binary Wave 1 P( A) P(-A) 2 EX(t) 0 1 , 0 td T fTd (t d ) T 0, otherwise RX(0) = E[X(t)X(t)] = A2 RX(T) = E[X(t)X(t+T)] = 0 CNU Dept. of Electronics 16 D. J. Kim Lecture on Communication Theory 6. Cross-correlation Functions r. p. X(t) with RX(t,u) r. p. Y(t) with autocorrelation RY(t,u) Cross-correlation fct. of X(t) and Y(t) RXY(t,u) = E[X(t)Y(u)] RYX(t,u) = E[Y(t)X(u)] Correlation Matrix of r. p. X(t) and Y(t) R (t,u) R XY (t,u) R(t, u) X R YX (t,u) R Y (t,u) If X(t) and Y(t) are each w. s. s. and jointly w. s. s. R X (τ ) R XY (τ ) R(τ ) R YX (τ ) R Y (τ ) where = t-u 여기서 RXY() RXY(-) i.e. not even fct. RXY(0) is not maximum RXY() = RYX(-) CNU Dept. of Electronics 17 D. J. Kim Lecture on Communication Theory ex9) Quadrature - Modulated Processes X1(t) and X2(t) from w. s. s. r. p. X(t) X1(t)=X(t)cos(2fct + ) 1 0 Θ 2π X2(t)=X(t)sin(2fct + ) where Θ 2π 0 is independent of X(t) Cross-correlation fct. R12() = E[X1(t)X2(t-)] = E[X1(t)X2(t-)]E[cos(2fct+)sin(2f1t-2fc +)] 1 = R X ( )sin(2π f C ) 2 R12(0)=E[X1(t)X2(t)]=0 orthogonal 4.9 Ergodicity Expectatio n or ensemble average of r. p. X(t) average " across the process" Time average or long -term sample average average " along the process" For sample function x(t) of w. s. s. r. p. x(t) with -T t T – Time average (dc value) μ X (T) CNU 1 T x(t)dt T 2T Dept. of Electronics 18 D. J. Kim Lecture on Communication Theory – Mean of time average X(T) μ X (T) unbiased estimate of ensemble -averaged mean μ X Thus μ X ; mean of r. p. x(t) 2T T μ X dx 1 T 2T T E[x(t)]dt E[μ X (T)] 1 T 1. w. s. s. r. p. X(t) is ergodic in the mean μ X (T) μ X lim T If var[μ X (T)] 0 lim T 2. w. s. s. r. p. X(t) is ergodic in the autocorrelation fct. R X (τ , T) R X (τ ) lim T If var[R X (τ , T)] 0 lim T 1 where RX(,T) = x(t τ )x(t)dt 2T T = time averaged autocorrelation fct. of sample fct. x(t) from w. s. s. r. p. x(t) T 4.10 Transmission of a r. p. through a linear filter 구해보면 w.s.s r.p w.s.s r.p FX(t 1 )X(t k ) (x1 xk ) FY(t1 )Y(t k ) (y1, yk ) 구할 수 없다 CNU Dept. of Electronics 19 D. J. Kim Lecture on Communication Theory 1. Mean of Y(t) μ Y (t) E[Y(t)] E[ h(τ 1 )X(t τ 1 )dτ 1 ] h(τ 1 )E[X(t τ 1 )]dτ 1 h(τ 1 )μ X (t τ 1 )dτ 1 μ X h(τ 1 )dτ 1 μ Y μ X H(0) w. s. s. X(t) X(t), Y(t) are w. s. s. 2. Autocorrelation fct. R Y (t, u) E[Y(t)Y(u) ] E[ h(τ 1 )X(t τ 1 )dτ 1 h(τ 2 )X(u τ 2 )dτ 2 ] dτ 1h(τ 1 ) dτ 2 h(τ 2 )R X (t τ 1 , u τ 2 ) dτ 1h(τ 1 ) dτ 2 h(τ 2 )R X (τ τ 1 τ 2 ) where τ t u w. s. s. X(t) Y(t) is also w. s. s. Mean square value E[Y2(t)]=RY(0) E[Y2 (t)] h(τ 1 )h(τ 2 )R X (τ 2 τ 1 )dτ 1dτ 2 constant CNU Dept. of Electronics 20 D. J. Kim Lecture on Communication Theory 4.11 Power Spectral density 1. Mean square value of Y(t)를 p. s. d. 로 표현 h1(1) H(f) Power spectral density or power spectrum of w. s. s. r. v. X(t) S X (f) R X (τ )exp( j2π fτ )dτ Mean square value of Y(t) [watt/Hz] E[Y 2 (t)] [ H(f)exp(j2π fτ 1 )df]h(τ 2 )R X (τ 2 τ 1 )dτ 1dτ 2 dfH(f) - dτ 2 h(τ 2 ) - R X (τ 2 -τ 1 )exp(j2π fτ 1 )dτ 1 (Let τ τ 2 -τ 1 ) dfH(f) - dτ 2 h(τ 2 )exp(j2π fτ 2 ) - R X (τ )exp(-j2π fτ )dτ - H(f) SX (f)df 2 ∴ E[Y 2 (t)] (2Δ f)SX (f C ) Freq. density of average power in r. p. X(t) CNU Dept. of Electronics 21 D. J. Kim Lecture on Communication Theory 2. Properties of the Power Spectral Density 1) Einstein - Wiener- Khintchine relations SX (f) R X (τ )exp( j2π fτ )dτ R X (τ ) SX (f)exp(j2π fτ )df where, X(t) : w. s. s. r. p. 2) Property 1. For w. s. s. r. p., SX (0) R X (τ )dτ 3) Property 2. Mean square value of w. s. s. r. p. E[X2 (t)] R X (0) S X (f)df 4) Property 3. For w. s. s. r. p., SX(f) 0 for all f. 5) Property 4. SX(-f) = SX(f): even fct. RX(-) = RX() 6) Property 5. The p. s. d., appropriately normalized, has the properties usually associated with a probability density fct. S (f) PX (f) X SX (f)df 7) rms bandwidth of w. s. s. r. p. X(t) Wrms ( f p X (f)df ) CNU 2 Dept. of Electronics 1 2 22 D. J. Kim Lecture on Communication Theory ex10) Sinusoidal wave with Random Phase R. p. X(t) = A cos (2fC(t) + ) where is uniform r. v. over [-, ] A2 cos(2π f C t) 2 A2 SX (f) [δ (f f C ) δ (f f C )] 4 R X (τ ) ex11) Random Binary wave with +A & -A τ 2 A (1 ) τ T R X (τ ) T 0 τ T τ )exp(-j2π fτ )dτ T A 2 Tsinc 2 (fT) SX (f) T A 2 (1 T CNU Dept. of Electronics 23 D. J. Kim Lecture on Communication Theory Energy spectral density of a rectangular pulse g(t) Eg (f) A 2T 2sinc 2 (fT) S X (f) Eg (f) T ex12) Mixing of a r. p. with a sinusoidal process. Y(t) X(t)cos(2π f C t Θ) w.s.s r.p r.v and independen t of X(t) 1 R Y (τ ) R X (τ )cos(2π f Cτ ) 2 1 SY (f) SX (f f C ) SX (f f C ) 4 3. Relation among the Power Spectral Density of the Input and Output Random Process SY (f) R Y (τ )exp( j2π fτ )dτ h(τ 1 )h(τ 2 )R X (τ τ 1 τ 2 )exp( j2π fτ )dτ 1dτ 2 dτ ( let τ τ 1 τ 2 τ 0 i.e.τ τ 0 τ 1 τ 2 ) SY (f) H(f)H (f)SX (f) SY (f) H(f) SX (f) 2 CNU Dept. of Electronics 24 D. J. Kim Lecture on Communication Theory ex13) Comb filter H(f) 1 - exp(-j2π fT) 1 - cos (2π fT) jsin(2π fT) H(f) 1 - cos(2π fT) sin 2 (2π fT) 2 2 21 - cos(2π fT) 4sin 2 (π fT) SY (f) 4sin 2 (π fT)S X (f) For small f , i. e., π fT 1 , sin(π fT) π fT SY (f) 4π 2 f 2 T 2SX (f) differentiator CNU Dept. of Electronics 25 D. J. Kim Lecture on Communication Theory 4. Relation among the Power Spectral Density and the Amplitude Spectrum of a Sample Function Sample fct. x(t) of w. s. s. & ergodic r. p. X(t) with SX(f) X(f,T): FT of truncated sample fct. x(t) X(f, t) -T x(t)exp(-j2π ft)dt T obtain R X (τ ) using time -average formula R X (τ ) lim T 1 T x(t τ )x(t)dt 2T T 1 2 E X(f, T) T 2T 2 1 T lim E T x(t)exp( j2π ft)dt T 2T SX (f) lim Conclusion) Sample function 으로부터 SX(f)를 구할 수 있다. 5. Cross Spectral Density A measure of the freq. interrelationship between 2 random process R XY (τ ) SXY (τ ) R YX (τ ) SYX (τ ) R XY (τ ) R YX (τ ) SXY (f) SYX (f) SYX (f) CNU Dept. of Electronics 26 D. J. Kim Lecture on Communication Theory ex14) – X(t) and Y(t) has zero mean, w. s. s. r. p. – Consider Z(t) = X(t)+Y(t) – Auto correlation of Z(t) R Z (t, u) E[Z(t)Z(u) ] R X (t, u) R XY (t, u) R YX (t, u) R Y (t, u) (let τ t - u) R Z (τ ) R X (τ ) R XY (τ ) R YX (τ ) R Y (τ ) SZ (f) SX (f) SXY (f) SYX (f) SY (f) when X(t) and Y(t) are uncorrelated SZ (f) SX (f) SY (f) ex15) X(t), Y(t); Jointly w. s. s. r. p. X(t) h1(t) V(t) Y(t) h2(t) Z(t) where h1, h2 are stable, linear, time-invariant filter Cross correlation fct. of V(t) and Z(t) R VZ (τ ) h 1 (τ 1 )h1 (τ 2 )R XY (τ τ 1 τ 2 )dτ 1dτ 2 SVZ (f) H1 (f)H 2 (f)SXY (f) CNU Dept. of Electronics 27 D. J. Kim Lecture on Communication Theory CNU Dept. of Electronics 28 D. J. Kim Lecture on Communication Theory 4.12 Gaussian Process 1. Definition Process X(t) is a Gaussian process if every linear functional of X(t) is a Gaussian r. v. Y Tg(t)X(t)dt 0 g(t) : some fct., Y : r. v. If the r. v. Y is a Gaussian distributed r. v. for every g(t), then X(t) is a Gaussian process 여기서 (y μ Y ) 2 1 f Y (y) exp 2 2πσ Y 2σ Y normalized (μ Y 0,σ Y 1) Gaussian distributi on : N(0,1) 2 y2 1 f Y (y) exp 2π 2 CNU Dept. of Electronics 29 D. J. Kim Lecture on Communication Theory 2. Virtues of Gaussian process 1) Gaussian process has many properties that make analytic results possible 2) Random processes produced by physical phenomena are often such that a Gaussian model is appropriate. 3. Central Limit Theorem 1) Let Xi, I = 1, 2, , N be a set of r. v. that satisfies a) The Xi are statistically independent b) The Xi have the same p. d. f. with mean X and variance X2 Xi : set of independently and identically distributed (i. i. d.) r. vs. Now Normalized r. v. Yi 1 (Xi μ X ) , i 1,2, , N. σX E[Yi ] 0 var[Yi ] 1 1 N define r. v. VN Yi N i1 < Central limit theorem > The probability distribution of VN approaches a normalized Gaussian distribution N(0,1) in the limit as N approaches infinity. 즉 Normalized r. v. 이 많이 모여서 하나의 r. v. 을 만들면 이는 N(0,1) 이 된다. CNU Dept. of Electronics 30 D. J. Kim Lecture on Communication Theory 4. Properties of Gaussian Process 1) Property 1. X(t) Gaussian P. h(t) stable, linear Y(t) Gaussian P. If a Gaussian process X(t) is applied to a stable linear filter, then the random process Y(t) developed at the output of the filter is also Gaussian. 2) Property 2. Consider the set of r. v. or samples X(t1), X(t2), , X(tn) obtained by observing a r. p. X(t) at times t1, t2, , tn. If the process X(t) is Gaussian, then this set of r. vs. are jointly Gaussian for any n, with their n-fold joint p. d. f. being completely determined by specifying the set of means μ X(ti ) E[X(t i )] , i 1,2, , n and the set of auto covariance functions C X (t k , t i ) E[(X(t k ) μ X(tk ) )(X(ti ) μ X(ti ) ) 3) Property 3. If random variables X(t1), X(t2), , X(tn) from Gaussian process X(t) are uncorrelated, i. e. E[(X(t k ) μ X(tk ) )(X(t i ) μ X(ti ) )] 0, i k then these random variables are statistically independent 4.13 Noise External: e. g. atmospheric, galactic, man-made noise Internal: e. g. spontaneous fluctuation of I or V in electric circuits shot, themal noise CNU Dept. of Electronics 31 D. J. Kim Lecture on Communication Theory Channel Test Model Attenuation Multipath Modulation White Noise Impulse Noise Demod Micro-Reflections Hum Amplitude Multipath Mod. Modulation 120Hz+ Harmonics h1(t) H1(f) Ingress (Shortwave rad.or CB,ham) Phase Noise and Freq. Offset f(x) Non Linearity (Amp clipping laser) Common Path Distortion Products (Nonlinear device) H2(f) Plant Response (Group delay) Burst Noise Impulse Thermal Noise Noise 전기제품 on/off Co-channel Interference Adjacent Channel Interference < H. W > Chap 4, 4.6, 4.15, 4.23 CNU Dept. of Electronics 32 D. J. Kim