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Second-order description

Practical and incomplete statistics

Mean
The mean function of a random process X t is defined as the expected value of X t for all t 's.
μ X t X t x x f X t x continuous k x k p X t x k discrete
Autocorrelation
The autocorrelation function of the random process X t is defined as
R X t 2 t 1 X t 2 X t 1 x 2 x 1 x 2 x 1 f X t 2 X t 1 x 2 x 1 continuous k l x l x k p X t 2 X t 1 x l x k discrete

Fact

If X t is second-order stationary, then R X t 2 t 1 only depends on t 2 t 1 .

R X t 2 t 1 X t 2 X t 1 x 1 x 2 x 2 x 1 f X t 2 X t 1 x 2 x 1
R X t 2 t 1 x 1 x 2 x 2 x 1 f X t 2 - t 1 X 0 x 2 x 1 R X t 2 t 1 0

If R X t 2 t 1 depends on t 2 t 1 only, then we will represent the autocorrelation with only one variable τ t 2 t 1

R X τ R X t 2 t 1 R X t 2 t 1

    Properties

  1. R X 0 0
  2. R X τ R X τ
  3. R X τ R X 0

X t 2 f 0 t Θ ω and Θ is uniformly distributed between 0 and 2 . The mean function

μ X t X t 2 f 0 t Θ θ 0 2 2 f 0 t θ 1 2 0

The autocorrelation function

R X t τ t X t + τ X t 2 f 0 t τ Θ 2 f 0 t Θ 1 2 2 f 0 τ 1 2 2 f 0 2 t τ 2 Θ 1 2 2 f 0 τ 1 2 θ 0 2 2 f 0 2 t τ 2 θ 1 2 1 2 2 f 0 τ
Not a function of t since the second term in the right hand side of the equality in [link] is zero.

Toss a fair coin every T seconds. Since X t is a discrete valued random process, the statistical characteristics can be captured by the pmf and the mean function is written as

μ X t X t 1 2 -1 1 2 1 0
R X t 2 t 1 k k l l x k x l p X t 2 X t 1 x k x l 1 1 1 2 -1 -1 1 2 1
when n T t 1 n 1 T and n T t 2 n 1 T
R X t 2 t 1 1 1 1 4 -1 -1 1 4 -1 1 1 4 1 -1 1 4 0
when n T t 1 n 1 T and m T t 2 m 1 T with n m
R X t 2 t 1 1 n T t 1 n 1 T n T t 2 n 1 T 0
A function of t 1 and t 2 .

Wide Sense Stationary
A process is said to be wide sense stationary if μ X is constant and R X t 2 t 1 is only a function of t 2 t 1 .
Fact

If X t is strictly stationary, then it is wide sense stationary. The converse is not necessarily true.

Autocovariance
Autocovariance of a random process is defined as
C X t 2 t 1 X t 2 μ X t 2 X t 1 μ X t 1 R X t 2 t 1 μ X t 2 μ X t 1

The variance of X t is Var X t C X t t

Two processes defined on one experiment ( [link] ).

Crosscorrelation
The crosscorrelation function of a pair of random processes is defined as
R X Y t 2 t 1 X t 2 Y t 1 y x x y f X t 2 Y t 1 x y
C X Y t 2 t 1 R X Y t 2 t 1 μ X t 2 μ Y t 1
Jointly Wide Sense Stationary
The random processes X t and Y t are said to be jointly wide sense stationary if R X Y t 2 t 1 is a function of t 2 t 1 only and μ X t and μ Y t are constant.

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Source:  OpenStax, Principles of digital communications. OpenStax CNX. Jul 29, 2009 Download for free at http://cnx.org/content/col10805/1.1
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