In real world systems we are affected by disturbances and measurement noise. Since they are unpredictable, we consider them as random processes. We need a way of describing them effectively.


Estimating the Power Spectral Density

Terminology

Deterministic process

Completely predictable

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Random process - Uncertain, not completely predictable, and can be characterized using statistical properties


Autocorrelation

  • Here, it is defined as

Autocovariance

The autocovariance function for a random process is defined by

The autocovariance of white noise,

Aka is a Positive-Definite Matrix

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These quantities are equal if the process has zero mean.


Chapter 12 - Linear Prediction and Optimum Linear Filters

There are no periodic components in if and only if

Distribution Functions

This is the syllabus for TMA4245 - Statistics


Probability Distrubution Function (Cummulative)


Probability Density Function


Expected Value


Moments


Central Moments


Correlation