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Noise: An Introduction Adapted from a presentation in: Transmission Systems for Communications, Bell Telephone Laboratories, 1970, Chapter 7 5/24/2017 Noise: An Introduction 1 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 5/24/2017 Noise: An Introduction 2 Background Material • Probability – Discrete – Continuous • The Frequency Domain – Fourier Series – Fourier Transform 5/24/2017 Noise: An Introduction 3 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 5/24/2017 Noise: An Introduction 4 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 5/24/2017 Noise: An Introduction 5 Noise analysis Introduction: a sine wave of unknown phase • Single-frequency interference n(t) = A sin(nt + ) A and n are known, but is not known • We cannot know its value at time “t” 1.5 1 0.5 n1 0 -1.5 -1 -0.5 n2 0 0.5 1 1.5 2 2.5 n3 -0.5 -1 t = .17 -1.5 5/24/2017 Noise: An Introduction 6 Energy Spectral Density Here the “Energy Spectral Density” is just the magnitude squared of the Fourier transform of n(t) N 2 A2 n n 4 since all of the energy is concentrated at n and each half of the energy is at ± since the Fourier transform is based on the complex exponential not sine and cosine. 1.2 0.25(n) 0.25n 1 0.8 0.6 0.4 0.2 0 -1.5 5/24/2017 -1 -0.5 0 0.5 Noise: An Introduction 1 1.5 7 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” Pv Pnt v • n The probabilities at some values are easy – P(-A) = 0 – P(A) = 1 – P(0) = ½ • The actual equation is: P(vn) = ½ + (1/)arcsin(vn/A) 1.2 1 0.8 Shown for A=1 0.6 0.4 0.2 0 -1.5 5/24/2017 -1 -0.5 0 0.5 Noise: An Introduction 1 1.5 8 Probability Distribution continued • The actual equation is: P(vn) = ½ + (1/)arcsin(v/A) 1.2 1 0.8 Shown for A=1 0.6 0.4 0.2 0 -1.5 -1 -0.5 0 0.5 1 1.5 • 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) 5/24/2017 Noise: An Introduction 9 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 d p(vn ) Pvn dv 1 p ( vn ) 2 2 A vn 2.5 2 1.5 1 0.5 0 -1.5 5/24/2017 -1 -0.5 0 Noise: An Introduction 0.5 1 1.5 10 Averages • Time Average of signals 1 T2 n T nt dt T 2 • “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) 1 K or E(vn ) p(v)dv for the infinite set vn E (v) vl K l 1 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” 5/24/2017 Noise: An Introduction 11 Averages (2) • Now calculate the ensemble average of our sinusoidal “noise” E (vn ) v * p(v)dv E (vn ) v A v 2 2 0.5 dv • Which is obviously zero (odd symmetry, balance point, etc. as it should since this noise the has no DC component.) 5/24/2017 Noise: An Introduction 12 Averages (3) • E[vn] is also known as the “First Moment” of p(vn) E (vn ) v * p(v)dv • We can also calculate other important moments of p(vn). The “Second Central Moment” or “Variance” (2) is: E v vn 2 v v * p(v)dv 2 2 n Which for our sinusoidal noise is: 2 5/24/2017 v2 A2 v 2 0.5 Noise: An Introduction dv 13 Averages (4) Integrating this requires “Integration by parts U * dV U *V VdU 2 let v2 A2 v U v and dV v 5/24/2017 A v A 1 0 2 dv A v 2 Then dU dv and V 2 2 0.5 v 2 0.5 A 2 2 0.5 v2 A 0.5 and A 1 A A Noise: An Introduction 2 v 2 0.5 dv 14 Averages (5) Continuing 2 A A 1 A 2 v2 0.5 dv A A v sin 1 2 A A 2 A2 2 2 2 A2 2 Which corresponds to the power of our sine wave noise Note: (without the “squared”) is called the “Standard Deviation” of the noise and corresponds to the RMS value of the noise 5/24/2017 Noise: An Introduction 15 Common Probability Density Functions: The Gaussian Distribution 1 pv 2 v v 2 2 2 Gaussian Disrtibution = 0.5, Mean = 0.5 1 0.8 0.6 0.4 0.2 0 -2 -1.5 -1 -0.5 0 0.5 1 1.5 2 2.5 • 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. 5/24/2017 Noise: An Introduction 16 Common Probability Density Functions: The Exponential Distribution pv * v for v 0 , 0 for v 0 Exponential Disrtibution = 1 1.2 1 0.8 0.6 0.4 0.2 0 -1 -0.5 0 0.5 1 1.5 2 2.5 3 • Occurs naturally in discrete “Poison Processes” – Time between occurrences • Telephone calls • Packets 5/24/2017 Noise: An Introduction 17 Common Noise Signals • • • • Thermal Noise Shot Noise 1/f Noise Impulse Noise 5/24/2017 Noise: An Introduction 18 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 5/24/2017 Noise: An Introduction 19 Thermal Noise (2) • A more accurate model (Quantum Theory) pn f h* f h* f kT 1 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 ) 5/24/2017 Noise: An Introduction 20 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 5/24/2017 Noise: An Introduction 21 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 (0.8 < < 1.5) 5/24/2017 Noise: An Introduction 22 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” 5/24/2017 Noise: An Introduction 23 Noise Measurement • The Human Ear – Average Performance – The Cochlea – Hearing Loss • Noise Level – A-Weighted – C-Weighted 5/24/2017 Noise: An Introduction 24 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 5/24/2017 Noise: An Introduction 25 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) 5/24/2017 Noise: An Introduction 26 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) 5/24/2017 Noise: An Introduction 27 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 5/24/2017 Noise: An Introduction 28 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) 5/24/2017 Noise: An Introduction 29 Energy Spectral Density (ESD) E t f 2 t dt is the Energy in a time waveform, 1 j t but f t F d is the Inverse Fourier Transform 2 1 E f t F j t d dt Substituti ng for one f t t 2 1 j t E F f t dt d Interchang ing the order of integratio n t 2 but the inner integral is almost the Fourier Transform (except for the "-" jt ) 1 * the complex conjugate E F F d but F F 2 1 2 2 E F d so Fω is the " Energy Spectral Density" 2 5/24/2017 Noise: An Introduction 30 Energy Spectral Density (ESD) and Linear Systems X() H() Y() = X() H() 1 Ey Y df changing to f eliminates the f 2 Ey Ey f f 2 H * X df so if H and X are uncorrelat ed 2 H * X df 2 2 Therefore the ESD of the output of a linear system is obtained by multiplying the ESD of the input by |H()|2 5/24/2017 Noise: An Introduction 31 Power Spectral Density (PSD) • Functions that exist for all time have an infinite energy so we define power as: lim 1 T2 2 P T f t dt this is energy/tim e t T 2 T T Define fT t f t for t and zero elsewhere 2 2 ET FT df which does exist and the Power is : 2 2 lim 1 lim FT df P ET t T t T 5/24/2017 Noise: An Introduction 32 Power Spectral Density (PSD-2) • As before, the function in the integral is a density. This time it’s the PSD 2 lim FT PSD t T • Both the ESD and PSD functions are real and even functions 5/24/2017 Noise: An Introduction 33