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Biomedical Instrumentation Signals and Noise Chapter 5 in Introduction to Biomedical Equipment Technology By Joseph Carr and John Brown Types of Signals Signals can be represented in time or frequency domain Types of Time Domain Signals Static = unchanging over long period of time essentially a DC signal Quasistatic = nearly unchanging where the signal changes so slowly that it appears static Periodic Signal = Signal that repeats itself on a regular basis ie sine or triangle wave Repetitive Signal = quasi periodic but not precisely periodic because f(t) /= f(t + T) where t = time and T = period ie is ECG or arterial pressure wave Transient Signal = one time event which is very short compared to period of waveform Types of Signals: A. Static = non-changing signal B. Quasi Static = practically non-changing signal C. Periodic = cyclic pattern where one cycle is exactly the same as the next cycle D. Repetitive = shape of the cycle is similar but not identical (many BME signals ECG, blood pressure) E. Single-Event Transient = one burst of activity F. Repetitive Transient or Quasi Transient = a few bursts of activity Fourier Series All continuous periodic signals can be represented as a collection of harmonics of fundamental sine waves summed linearly. • These frequencies make up the Fourier Series Definition • • Fourier = F ( ) 1 2 f (t )e jt dt 1 Inverse Fourier = f (t ) 2 jt F ( ) e d Eg. v = Vm sin(2ωt) v = instantaneous amplitude of sin wave Vm = Peak amplitude of sine wave ω = angular frequency = 2π f T = time (sec) Fourier Series found using many frequency selective filters or using digital signal processing algorithm known as FFT = Fast Fourier Transform 1 0.8 0.6 1 0.4 0.2 Magnitude 0 -0.2 -0.4 -0.6 -0.8 -1 0 0.1 0.2 0.3 0.4 0.5 Time (Sec) 0.6 0.7 0.8 0.9 1 Time (sec) 1 sec Sine Wave in time domain f(t) = sin(23t) 0 1 2 3 4 5 6 7 8 Frequency (Hz) Every Signal can be described as a series of sinusoids Signal with DC Component y(t ) 1 4 3 sin( 2t ) 2 3 sin( 2 3t ) Time vs Frequency Relationship Signals that are infinitely continuous in the frequency domain (nyquist pulse) are finite in the time domain Signals that are infinitely continuous in the time domain are finite in the frequency domain Mathematically, you cannot have a finite time and frequency limited signal Time vs Frequency Spectrum & Bandwidth Spectrum • Absolute bandwidth • width of spectrum Effective bandwidth • • • range of frequencies contained in signal Often just bandwidth Narrow band of frequencies containing most of the energy Used by Engineers to gain the practical bandwidth of a signal DC Component • Component of zero frequency Biomedical Examples of Signals ECG vs Blood Pressure • • Pressure Waveform has a slow rise time then ECG thus need less harmonics to represent the signal Pressure waveform can be represented in with 25 harmonics whereas ECG needs 70-80 harmonics ECG Biomedical Examples of Signals Square wave theoretically has infinite number of harmonics however approximately 100 harmonics approximates signal well Time (sec) Odd or Even Function Even function when f(t) = f(-t) Odd function –f(t) = f(-t) Analog to Digital Conversion Digital Computers cannot accept Analog Signal so you need to perform and Analog to digital Conversion (A/D conversion) Sampled signals are not precisely the same as original. • The better the sampling frequency the better the representation of the signal Two types of error with digitalization. • Sampling Error • Quantization Error Sampling Rate Sample Rate must follow Nyquist’s theorem. • Sample rate must be at least 2 times the maximum frequency. Quantization Error When you digitize the signal you do so with levels based on the number of bits in your DAC (data acquisition board) • Example is of a 4 bit 24 or 16 level board • Most boards12 are at least 12 bits or 2 = 4096 levels • The “staircase” effect is call the quantization noise or digitization noise Quantization Noise Quantization noise = difference from where analog signal actually is to where the digitization records the signal Quantization Noise 20 levels Red = magnitude Black = timing interval 4 levels Red = magnitude Black = timing interval Nyquist Sampling Theorem Error in Signals 1 Sec 30 samples / 1 sec = 30 Hertz Signal that is digitized into computer 1 Sec 10 samples / 1 sec = 10 Hertz Signal that is digitized into computer Spectral Information: Sampling when Fs > 2Fm Sampling is a form of amplitude modulation • Spectral Information appears not only around fundamental frequency of carrier but also at harmonic spaced at intervals Fs (Sampling Frequency) -Fs-Fm -Fs -Fs+ Fm -Fm 0 Fm Fs-Fm Fs Fs+ Fm Spectral Information: Sampling when Fs < 2Fm Aliasing occurs when Fs< 2Fm where you begin to see overlapping in frequency domain. -Fm 0 Fm Problem: if you try to filter the signal you will not get the original signal • Solution use a LPF with a cutoff frequency to • pass only maximum frequencies in waveform Fm not Fs Set sampling Frequency Fs >=2Fm Shows how very fast sampled frequency if sampled incorrectly can be a slower frequency signal Noise Every electronic component has noise • thermal noise • shot noise • distribution noise (or partition noise) Thermal Noise Thermal noise due to agitation of electrons Present in all electronic devices and transmission media Cannot be eliminated Function of temperature Particularly significant for satellite communication thermal noise thermal noise is caused by the thermal motion of the charge carriers; as a result the random electromotive force appears between the ends of resistor; Johnson Noise, or Thermal Noise, or Thermal Agitation Noise Also referred to as white noise because of gaussian spectral density. 2 Vn 4kTRB where • Vn = noise Voltage (V) • k = Boltzman’s constant • Boltzman’s constant = 1.38 x 10 • T = temperature in Kelvin • R = resistance in ohms (Ώ) • B = Bandwidth in Hertz (Hz) -23Joules/Kelvin Eg. of Thermal Noise • Given R = 1Kohm • Given B = 2 KHz to 3 KHz = 1 KHz • Assume: T = 290K (room Temperature) • Vn2 = 4KTRB units V2 • Vn2= (4) (1.38 x 10 –23J/K) (290K) (1 Kohm) • •V (1KHz) = 1.6 x 10-14 V2 –7 V = 0.126 uV n = 1.26 x10 Eg of Thermal Noise • V = 4 (R/1Kohm) ½ units nV/(Hz)1/2 • Given R = 1 MW find noise • V = 4 (1 x 106 / 1x 103) ½ units nV/ (Hz) ½ • = 126 nV/ (Hz) ½ • Given BW = 1000 Hz find V with units of V • V = 126 nV/ (Hz) ½ * (1000 Hz)1/2 = 400 nV = 0.4 n n n n uV Shot noise Shot noise appears because the current through the electron tube (diode, triode etc.) consists of the separate pulses caused by the discontinuous electrons; • This effect is similar to the specific sound when the buckshot is poured out on the floor and the separate blows unite into the continuous noise; Shot Noise Shot Noise: noise from DC current flowing in any conductor 2 In • • • • • 2qIB where In = noise current (amps) q = elementary electric charge = 1.6 x 10-19 Coulombs I = Current (amp) B = Bandwidth in Hertz (Hz) I n 2qIB Eg: Shot Noise Given I = 10 mA Given B = 100 Hz to 1200 Hz = 1100 Hz In2= 2q I B = = 2 (1.6 x 10 –19Coulomb) ( 10 X10 –3A)(1100 Hz) = 3.52 x10 –18 A2 In = (3.52 x10–18 A2) ½ = 1.88 nA Noise cont Flicker Noise also known as Pink Noise or 1/f noise is the lower frequency < 1000Hz phenomenon and is due to manufacturing defects • A wide class of electronic devices demonstrate so called flicker effect or wobble (=trembling), its intensity depends on frequency as 1/f, ~1, in the wide band of frequencies; • For example, flicker effect in the electron tubes is caused by the electron emission from some separate spots of the cathode surface, these spots slowly vary in time; at the frequencies of about 1 kHz the level of this noise can be some orders higher then thermal noise. distribution noise Distribution noise (or partition noise) appears in the multi-electrode devices because the distribution of the charge carriers between the electrodes bear the statistical features; Signal to Noise Ratio = SNR SNR = Signal/ Noise • Minimum signal level detectable at the output of an amplifier is the level that appears above noise. Signal to Noise Ratio = SNR Noise Power Pn • Pn = kTB, where •Pn =noise power in watts •k = Boltzman’s constant • Boltzman’s constant = 1.38 x 10 -23Joules/Kelvin • T = temperature in Kelvin • B = Bandwidth in Hertz (Hz) Internal and External Noise Internal Noise External Noise Total Noise Calculation Internal Noise Internal Noise: Caused by thermal currents in semiconductor material resistances and is the difference between output noise level and input noise level External Noise External Noise: Noise produced by signal sources also called source noise; cause by thermal agitation currents in signal source External Noise Total Noise Calculation = square root of sum of squares Vne = (Vn2+(InRs)2) ½ necessary because otherwise positive and negative noise would cancel and mathematically show less noise that what is actually present Noise Factor Noise Factor = ratio of noise from real resistance to thermal noise of an ideal resistor Noise Factor Fn = Pno/Pni evaluated at T = 290oK (room temperature) where • Pno = noise power output and • Pni = noise power input Noise Factor Pni =kTBG where • G = Gain; • T = Standard Room temperature = 290oK • K = Boltzmann’s Constant = 1.38 x10-23J/oK • B = Bandwidth (Hz) Noise Factor Pno = kTBG + ΔN where • ΔN = noise added to system by network or amplifier kTBG N Fn kTBG N kTBG Noise Figure Noise Figure : Measure of how close is an amplifier to an ideal amplifier NF = 10 log (Fn) where • NF = Noise Figure (dB) • Fn = noise factor (previous slide) Noise Figure Friis Noise Equation: Use when you have a cascade of amplifiers where the signal and noise are amplified at each stage and each component introduces its own noise. • Use Friis Noise Equation to calculated total Noise Fn 1 F2 1 F3 1 FN F1 ... G1 G1G2 G1G2 ...Gn1 • Where FN = total noise • Fn = noise factor at stage n ; • G(n-1) = Gain at stage n-1 Example: Given a 2 stage amplifier where A1 has a gain of 10 and a noise factor of 12 and A2 has a gain of 5 and a noise factor of 6. FN • 6 1 12 12.5 10 Note that the book has a typo in equation 5-27 where Gn should be G(n-1) Noise Reduction Strategies 1. Keep source resistance and amplifier input resistance low (High resistance with increase thermal noise) 2. Keep Bandwidth at a minimum but make sure you satisfy Nyquist’s Sampling Theory 3. Prevent external noise with proper ground, shielding, filtering 4. Use low noise at input stage (Friis Equation) 5. For some semiconductor circuits use the lowest DC power supply Feedback Control Derivation Vo G1 E Vin + E Σ G1 + β Vo E Vin Vo Vo G1Vin Vo Vo G1Vin G1Vo Vo G1Vo G1Vin Vo 1 G1 G1Vin Vo G1 Vin 1 G1 Use of Feedback to reduce Noise Vn = Noise Vin + Σ + V1 B Vo V1G1 + G1 Σ V2 G2 V2G2 Vo Β V 1 Vin Vo V 2 V 1G1 Vn V 2 Vin Vo G1 Vn Vo V 2G 2 Use of Feedback to reduce Noise Vn = Noise Vin + Σ + V1 B Vo V1G1 + G1 Σ V2 G2 V2G2 Vo Β Vo Vin Vo G1 Vn G 2 Vo G1G 2Vin G1G 2 Vo G 2Vn Vo G1G 2 Vo G1G 2Vin G 2Vn Vo 1 G1G 2 G1G 2Vin G 2Vn Use of Feedback to reduce Noise Derivation: Vn = Noise Vin + Σ + V1 B Vo V1G1 + G1 Σ V2 G2 Β Thus Vn is reduced by Gain G1 Note Book forgot V in equation 5-35 Vo V2G2 Vo G1G 2Vin G 2Vn 1 G1G 2 G1G 2Vin G 2Vn G1 Vo 1 G1G 2 G1 1 G1G 2 Vo Vn G1G 2 V 1 G1G 2 in G1 Noise Reduction by Signal Averaging Un processed SNR Sn =20 log (Vin/Vn) Processed SNR Ave Sn = 20 log (Vin/Vn/ N1/2) • Where • SNR Sn = unprocessed SNR • SNR Ave Sn = time averaged SNR • N = # repetitions of signals • Vin = Voltage of Signal • Vn = Voltage of Noise Processing Gain = Ave Sn – Sn in dB Noise Reduction by Signal Averaging Ex: EEG signal of 5 uV with 100 uV of random noise • Find the unprocessed SNR, processed SNR with 1000 repetitions and the processing Gain Noise Reduction by Signal Averaging Unprocessed SNR Processing SNR • Sn = 20 log (Vin/Vn) = 20 log (5uV/100uV) = -26dB • Ave Sn = 20 log (Vin/Vn/N1/2) = 20 log (5u/100u / (1000)1/2) = 4 dB Processing gain = 4 – (- 26) = 30 dB Review Types of Signals (Static, Quasi Static, Periodic, Repetitive, Single-Event Transient, Quasi Transient) Time vs Frequency • • • Fourier Bandwidth Alaising Sampled signals: Quantization, Sampling and Aliasing Review Noise:Johnson, Shot, Friis Noise Noise Factor vs Noise Figure Reduction of Noise via • • • 5 different Strategies {keep resistor values low, low BW, proper grounding, keep 1st stage amplifier low (Friis Equation), semiconductor circuits use the lowest DC power supply} Feedback Signal Averaging Homework Read Chapter 6 Chapter 3 Problems: #16, 17, 21 Chapter 4 Questions and Problems: # 5, 18, 19, 21, 22 Chapter 5 Homework Problems: 4, 6, 7, 8, 10, 11, 12, 13