Notes
Outline
Noise: An Introduction
Adapted from a presentation in:
Transmission Systems for Communications,
Bell Telephone Laboratories, 1970, Chapter 7
Noise: An Introduction
What is noise?
Waveforms with incomplete information
Analysis: how?
What can we determine?
Example: sine waves of unknown phase
Energy Spectral Density
Probability distribution function: P(v)
Probability density function: p(v)
Averages
Common probability density functions
Gaussian
Exponential
Noise in the real-world
Noise Measurement
Energy and Power Spectral densities
Background Material
Probability
Discrete
Continuous
The Frequency Domain
Fourier Series
Fourier Transform
Noise
Definition
Any undesired signal that interferes with the reproduction of a desired signal
Categories
Deterministic: predictable, often periodic, noise
often generated by machines
Random: unpredictable noise, generated by a
“stochastic” process in nature or by machines
Random Noise
Unpredictable
“Distribution” of values
Frequency spectrum: distribution of energy
(as a function of frequency)
We cannot know the details of the waveform only its “average” behavior
Noise analysis Introduction:
a sine wave of unknown phase
Single-frequency interference
n(t) = A sin(
wnt + f)
A and
wn are known, but f is not known
We cannot know its value at time “t”
Energy Spectral Density
Here the “Energy Spectral Density” is just the magnitude squared of the Fourier transform of n(t)
since all of the energy is concentrated at wn and each half of the energy is at ± w since the Fourier transform is based on the complex exponential not sine and cosine.
Probability Distribution
The “distribution” of the ‘noise” values
Consider the probability that at any time t the voltage is less than or equal to a particular value “v”
 The probabilities at some values are easy
P(-A) = 0
P(A) = 1
P(0) = ˝
The actual equation is: P(vn) = ˝ + (1/p)arcsin(vn/A)
Probability Distribution
continued
The actual equation is: P(vn) = ˝ + (1/p)arcsin(v/A)
Note that the noise spends more time near the extremes and less time near zero.  Think of a pendulum:
It stops at the extremes and is moving slowly near them
It move fastest at the bottom and therefore spends less time there.
Another useful function is the derivative of P(vn): the
“Probability Density Function”, p(vn)   (note the lower case p)
Probability Density Function
The area under a portion of this curve is the probability that the voltage lies in that region.
This PDF is zero for
|vn| > A
Averages
Time Average of signals
“Ensemble” Average
Assemble a large number of examples of the noise signal.
(the set of all examples is the “ensemble”)
At any particular time (t0) average the set of values of  vn(t0)
to get the “Expected Value” of vn
When the time and ensemble averages give the same value
(they usually do), the noise process is said to be “Ergodic”
Averages (2)
Now calculate the ensemble average of our sinusoidal “noise”
Which is obviously zero
(odd symmetry, balance point, etc.
as it should since this noise the has no DC component.)
Averages (3)
E[vn] is also known as the “First Moment” of p(vn)
We can also calculate other important moments of p(vn).  The “Second Central Moment” or “Variance” (s2) is:



Which for our sinusoidal noise is:
Averages (4)
Integrating this requires “Integration by parts
Averages (5)
Continuing
Which corresponds to the power of our sine wave noise
Note: s (without the “squared”) is called the “Standard Deviation” of the noise and corresponds to the RMS value of the noise
Common Probability Density Functions:
The Gaussian Distribution
Central Limit Theorem
The probability density function for a random variable that is the result of adding the effects of many small contributors tends to be Gaussian as the number of contributors gets large.
Common Probability Density Functions:
The Exponential Distribution
Occurs naturally in discrete “Poison Processes”
Time between occurrences
Telephone calls
Packets
Common Noise Signals
Thermal Noise
Shot Noise
1/f Noise
Impulse Noise
Thermal Noise
From the Brownian motion of electrons in a resistive material.
pn(f) = kT is the power spectrum where:
k = 1.3805 * 10-23 (Boltzmann’s constant) and
T is the absolute temperature (°Kelvin)
This is a “white” noise (“flat” spectrum)
From a color analogy
White light has all colors at equal energy
The probability distribution is Gaussian
Thermal Noise (2)
A more accurate model (Quantum Theory)
Which corrects for the high frequency roll off
(above 4000 GHz at room temperature)
The power in the noise is simply
Pn = k*T*BW Watts  or
Pn = -174 + 10*log10(BW) in dBm
(decibels relative to a milliwatt)
Note: dB = 10*log10 (P/Pref ) = 20*log10 (V/Vref )
Shot Noise
From the irregular flow of electrons
Irms = 2*q*I*f  where:
q = 1.6 * 10-19 the charge on an electron
This noise is proportional to the signal level
(not temperature)
It is also white (flat spectrum) and Gaussian
1/f Noise
Generated by:
irregularities in semiconductor doping
contact noise
Models many naturally occurring signals
“speech”
Textured silhouettes (Mountains, clouds, rocky walls, forests, etc.)
pn(f) =A / f a  (0.8 < a < 1.5)
Impulse Noise
Random energy spikes, clicks and pops
Common sources
Lightning
Vehicle ignition systems
This is a white noise, but NOT Gaussian
Adding multiple sources - more impulse noise
An exception to the “Central Limit Theorem”
Noise Measurement
The Human Ear
Average Performance
The Cochlea
Hearing Loss
Noise Level
A-Weighted
C-Weighted
Hearing Performance
(an average, good, ear)
Frequency response is a function of sound level
0 dB here is the threshold of hearing
Higher intensities yield flatter response
The Cochlea
A fluid-filled spiral vibration sensor
Spatial filter:
Low frequencies travel the full length
High frequencies only affect the near end
Cillia: hairs put out signals when moved
Hearing damage occurs when these are injured
Those at the near end are easily damaged (high frequency hearing loss)
Noise Intensity Levels:
The A- Weighted Filter
Corresponds to the sensitivity of the ear at the threshold of hearing; used to specify OSHA safety levels (dBA)
An A-Weighting Filter
Below is an active filter that will accurately perform A-Weighting for sound measurements
Thanks to: Rod Elliott at http://sound.westhost.com/project17.htm
Noise Intensity Levels:
The C- Weighted Filter
Corresponds to the sensitivity of the ear at normal listening levels; used to specify noise in telephone systems (dBC)
Energy Spectral Density (ESD)
Energy Spectral Density (ESD)
and Linear Systems
Therefore the ESD of the output of a linear system is obtained by multiplying the ESD of the input by |H(w)|2
Power Spectral Density (PSD)
Functions that exist for all time have an infinite energy so we define power as:
Power Spectral Density (PSD-2)
As before, the function in the integral is a density.  This time it’s the PSD
Both the ESD and PSD functions are real and even functions