Skip to main content

Why is Time-bandwidth Product (TBP) Important?



Time-Bandwidth Product (TBP)

The time-bandwidth product (TBP) is defined as:

TBP = ฮ”f ฮ”t
  • ฮ”f (Bandwidth): The frequency bandwidth of the signal, representing the range of frequencies over which the signal is spread.
  • ฮ”t (Time duration): The duration for which the signal is significant, i.e., the time interval during which the signal is non-zero.

The TBP is a measure of the "spread" of the signal in both time and frequency domains. A higher TBP means the signal is both spread over a larger time period and occupies a wider frequency range.

 

 

To calculate the period of a signal with finite bandwidth, Heisenberg’s uncertainty principle plays a vital role where the time-bandwidth product indicates the processing gain of the signal.

We apply spread spectrum techniques in wireless communication for various reasons, such as interference resilience, security, robustness in multipath, etc. But in spread spectrum techniques, we compromise some bandwidth. 

The time-bandwidth product for Gaussian-shaped pulses is 0.44 (approx.).

If the time-bandwidth product of a signal is >> 1, then the signal bandwidth (B) is much greater than what is required for transmitting the data rate (Rb​). . So, in this case, we are unable to utilize the whole available bandwidth. For this case, spectrum efficiency will be less.

To your knowledge, the product of the variance of time and variance of bandwidth for a Gaussian signal is 0.25, and for a triangular-shaped signal, it is 0.3. 


Example

 Time-Bandwidth Product for a raise cosine filter

Let’s assume we have designed a raised cosine filter with a roll-off factor of 0.25. The symbol rate for transmission is 100 symbols per second, and the number of samples per symbol is 10. Also, assume the filter span is 2, meaning the duration is up to 2 symbol times.

 

Bandwidth Calculation for a raised cosine filter:

The bandwidth of the raised cosine filter is calculated as:

Bandwidth = (Symbol Rate × (1 + Roll-off Factor)) / 2

Bandwidth = (100 × (1 + 0.25)) / 2 = 62.5 Hz

 

Time Duration for the Raise Cosine Filter if filer span = 2:

The time duration for the filter is:

Filter Duration = Filter Span × One Symbol Duration

Filter Duration = 2 × 0.01 = 0.02 seconds

Time-Bandwidth Product (TBP):

Now, the time-bandwidth product (TBP) is:

TBP = 0.02 × 62.5 = 1.25

 

Time Duration for the Raise Cosine Filter if filer span = 6:

If the filter span is 6, then the time-bandwidth product will be:

Now, TBP = 0.06 × 62.5 = 3.75

 

Conclusion: The raised cosine filter reduces the effect of intersymbol interference (ISI) during signal transmission. Increasing the bandwidth helps mitigate ISI to a greater extent, but it also increases the time-bandwidth product, making the system less bandwidth-efficient.

 

MATLAB Code for Time-Bandwidth product of a Raise Cosine Filter

%The code is devloped by SalimWireless.Com

clc;
clear;
close all;

% Parameters
beta = 0.25; % Roll-off factor (moderate, 0.25 for balance)
span = 2; % Filter span in symbols (moderate duration)
sps = 10; % Samples per symbol (higher ensures smooth waveform)
symbolRate = 1e2; % Symbol rate in Hz

% Generate the Raised Cosine Filter
rcFilter = rcosdesign(beta, span, sps, 'sqrt');

% Plot the Impulse Response
t = (-span/2 : 1/sps : span/2) * (1/symbolRate);
figure;
subplot(3,1,1);
plot(t, rcFilter, 'LineWidth', 1.5);
title('Raised Cosine Filter Impulse Response');
xlabel('Time (s)');
ylabel('Amplitude');
grid on;

% Analyze Frequency Response
[H, F] = freqz(rcFilter, 1, 1024, sps * symbolRate);
subplot(3,1,2);
plot(F, abs(H), 'LineWidth', 1.5);
title('Raised Cosine Filter Frequency Response');
xlabel('Frequency (Hz)');
ylabel('Magnitude');
grid on;

% Time-Bandwidth Product Calculation
timeDuration = span * (1 / symbolRate); % Filter time duration
bandwidth = (1 + beta) * (symbolRate / 2); % Bandwidth in Hz
TBP = timeDuration * bandwidth; % Time-Bandwidth Product

% Display Results
disp(['Time Duration (s): ', num2str(timeDuration)]);
disp(['Bandwidth (Hz): ', num2str(bandwidth)]);
disp(['Time-Bandwidth Product: ', num2str(TBP)]);

% Simulate Filtered Signal
numSymbols = 100; % Number of symbols to transmit
data = randi([0 1], numSymbols, 1) * 2 - 1; % Random binary data (BPSK)
upsampledData = upsample(data, sps); % Upsample data
txSignal = conv(upsampledData, rcFilter, 'same'); % Filtered signal

% Plot Transmitted Signal
subplot(3,1,3);
plot(txSignal(1:200), 'LineWidth', 1.5); % Plot first few samples
title('Filtered Transmitted Signal');
xlabel('Sample Index');
ylabel('Amplitude');
grid on;


Output

 

 

 

 

 

Time Duration (s): 0.02
Bandwidth (Hz): 62.5
Time-Bandwidth Product: 1.25
 

Copy the MATLAB Code above from here

 

 

 MATLAB Code for the Time-Bandwidth Product of Gaussian Noise

%The code is devloped by SalimWireless.Com

clc;
clear;
close all;

% Step 1: Generate Gaussian pulse
t = 0:0.01:1; % Time vector
sigma = 1; % Standard deviation
gaussian_pulse = exp(-t.^2 / (2 * sigma^2));

% Step 2: Calculate RMS time duration
power_signal = gaussian_pulse.^2;
rms_time = sqrt(sum(t.^2 .* power_signal) / sum(power_signal));

% Step 3: Calculate Frequency Bandwidth
Fs = 100; % Sampling frequency
N = length(gaussian_pulse);
f = (-N/2:N/2-1) * (Fs / N); % Frequency vector
G_f = fftshift(fft(gaussian_pulse)); % Fourier transform

power_spectrum = abs(G_f).^2;
rms_freq = sqrt(sum(f.^2 .* power_spectrum) / sum(power_spectrum));

% Step 4: Compute TBP
TBP_rms = rms_time * rms_freq;

% Display results
disp(['RMS Time Duration (Delta t): ', num2str(rms_time)]);
disp(['RMS Frequency Bandwidth (Delta f): ', num2str(rms_freq)]);
disp(['Time-Bandwidth Product (TBP): ', num2str(TBP_rms)]);

Output

RMS Time Duration (Delta t): 0.50383
RMS Frequency Bandwidth (Delta f): 0.98786
Time-Bandwidth Product (TBP): 0.49772

 

Copy the MATLAB Code above from here

 

 

Further Reading 

People are good at skipping over material they already know!

View Related Topics to







Admin & Author: Salim

s

  Website: www.salimwireless.com
  Interests: Signal Processing, Telecommunication, 5G Technology, Present & Future Wireless Technologies, Digital Signal Processing, Computer Networks, Millimeter Wave Band Channel, Web Development
  Seeking an opportunity in the Teaching or Electronics & Telecommunication domains.
  Possess M.Tech in Electronic Communication Systems.


Contact Us

Name

Email *

Message *

Popular Posts

BER vs SNR for M-ary QAM, M-ary PSK, QPSK, BPSK, ...

๐Ÿ“˜ Overview of BER and SNR ๐Ÿงฎ Online Simulator for BER calculation of m-ary QAM and m-ary PSK ๐Ÿงฎ MATLAB Code for BER calculation of M-ary QAM, M-ary PSK, QPSK, BPSK, ... ๐Ÿ“š Further Reading ๐Ÿ“‚ View Other Topics on M-ary QAM, M-ary PSK, QPSK ... ๐Ÿงฎ Online Simulator for Constellation Diagram of m-ary QAM ๐Ÿงฎ Online Simulator for Constellation Diagram of m-ary PSK ๐Ÿงฎ MATLAB Code for BER calculation of ASK, FSK, and PSK ๐Ÿงฎ MATLAB Code for BER calculation of Alamouti Scheme ๐Ÿงฎ Different approaches to calculate BER vs SNR What is Bit Error Rate (BER)? The abbreviation BER stands for bit error rate, which indicates how many corrupted bits are received (after the demodulation process) compared to the total number of bits sent in a communication process. It is defined as,  In mathematics, BER = (number of bits received in error / total number of transmitted bits)  On the other hand, SNR ...

Comparing Baseband and Passband Implementations of ASK, FSK, and PSK

๐Ÿ“˜ Overview ๐Ÿงฎ Baseband and Passband Implementations of ASK, FSK, and PSK ๐Ÿงฎ Difference betwen baseband and passband ๐Ÿ“š Further Reading ๐Ÿ“‚ Other Topics on Baseband and Passband ... ๐Ÿงฎ Baseband modulation techniques ๐Ÿงฎ Passband modulation techniques   Baseband modulation techniques are methods used to encode information signals onto a baseband signal (a signal with frequencies close to zero), allowing for efficient transmission over a communication channel. These techniques are fundamental in various communication systems, including wired and wireless communication. Here are some common baseband modulation techniques: Amplitude Shift Keying (ASK) [↗] : In ASK, the amplitude of the baseband signal is varied to represent different symbols. Binary ASK (BASK) is a common implementation where two different amplitudes represent binary values (0 and 1). ASK is simple but susceptible to noise...

Constellation Diagrams of ASK, PSK, and FSK

๐Ÿ“˜ Overview of Energy per Bit (Eb / N0) ๐Ÿงฎ Online Simulator for constellation diagrams of ASK, FSK, and PSK ๐Ÿงฎ Theory behind Constellation Diagrams of ASK, FSK, and PSK ๐Ÿงฎ MATLAB Codes for Constellation Diagrams of ASK, FSK, and PSK ๐Ÿ“š Further Reading ๐Ÿ“‚ Other Topics on Constellation Diagrams of ASK, PSK, and FSK ... ๐Ÿงฎ Simulator for constellation diagrams of m-ary PSK ๐Ÿงฎ Simulator for constellation diagrams of m-ary QAM BASK (Binary ASK) Modulation: Transmits one of two signals: 0 or -√Eb, where Eb​ is the energy per bit. These signals represent binary 0 and 1.    BFSK (Binary FSK) Modulation: Transmits one of two signals: +√Eb​ ( On the y-axis, the phase shift of 90 degrees with respect to the x-axis, which is also termed phase offset ) or √Eb (on x-axis), where Eb​ is the energy per bit. These signals represent binary 0 and 1.  BPSK (Binary PSK) Modulation: Transmits one of two signals...

MATLAB Code for Pulse Amplitude Modulation (PAM) and Demodulation

๐Ÿ“˜ Overview & Theory of Pulse Amplitude Moduation (PAM) ๐Ÿงฎ MATLAB Code for Pulse Amplitude Modulation and Demodulation of Analog Signal and Digital Signal ๐Ÿงฎ Simulation results for comparison of PAM, PWM, PPM, DM, and PCM ๐Ÿ“š Further Reading ๐Ÿ“‚ Other Topics on Pulse Amplitude Modulation ... ๐Ÿงฎ MATLAB Code for Pulse Amplitude Modulation and Demodulation of an Analog Signal (2) ๐Ÿงฎ MATLAB Code for Pulse Amplitude Modulation and Demodulation of Digital data ๐Ÿงฎ Other Pulse Modulation Techniques (e.g., PWM, PPM, DM, and PCM)   Pulse Amplitude Modulation (PAM) & Demodulation of an Analog Message Signal MATLAB Script clc; clear all; close all; fm= 10; % frequency of the message signal fc= 100; % frequency of the carrier signal fs=1000*fm; % (=100KHz) sampling frequency (where 1000 is the upsampling factor) t=0:1/fs:1; % sampling rate of (1/fs = 100 kHz) m=1*cos(2*pi*fm*t); % Message signal with per...

Comparisons among ASK, PSK, and FSK | And the definitions of each

๐Ÿ“˜ Comparisons among ASK, FSK, and PSK ๐Ÿงฎ Online Simulator for calculating Bandwidth of ASK, FSK, and PSK ๐Ÿงฎ MATLAB Code for BER vs. SNR Analysis of ASK, FSK, and PSK ๐Ÿ“š Further Reading ๐Ÿ“‚ View Other Topics on Comparisons among ASK, PSK, and FSK ... ๐Ÿงฎ Comparisons of Noise Sensitivity, Bandwidth, Complexity, etc. ๐Ÿงฎ MATLAB Code for Constellation Diagrams of ASK, FSK, and PSK ๐Ÿงฎ Online Simulator for ASK, FSK, and PSK Generation ๐Ÿงฎ Online Simulator for ASK, FSK, and PSK Constellation ๐Ÿงฎ Some Questions and Answers Modulation ASK, FSK & PSK Constellation MATLAB Simulink MATLAB Code Comparisons among ASK, PSK, and FSK    Comparisons among ASK, PSK, and FSK   Simulator for Calculating Bandwidth of ASK, FSK, and PSK The baud rate represents the number of symbols transmitted per second. Both baud rate and bit rate a...

Constellation Diagrams of M-ary QAM | M-ary Modulation

๐Ÿ“˜ Overview of QAM ๐Ÿงฎ MATLAB Code for m-ary QAM (4-QAM, 16-QAM, 32-QAM, ...) ๐Ÿงฎ Online Simulator for M-ary QAM Constellations ๐Ÿ“š Further Reading ๐Ÿ“‚ Other Topics on Constellation Diagrams of QAM configurations ... ๐Ÿงฎ MATLAB Code for 4-QAM ๐Ÿงฎ MATLAB Code for 16-QAM ๐Ÿงฎ MATLAB Code for m-ary QAM (4-QAM, 16-QAM, 32-QAM, ...) ๐Ÿงฎ Simulator for constellation diagrams of m-ary PSK ๐Ÿงฎ Simulator for constellation diagrams of m-ary QAM ๐Ÿงฎ Overview of Energy per Bit (Eb / N0) ๐Ÿงฎ Online Simulator for constellation diagrams of ASK, FSK, and PSK ๐Ÿงฎ Theory behind Constellation Diagrams of ASK, FSK, and PSK ๐Ÿงฎ MATLAB Codes for Constellation Diagrams of ASK, FSK, and PSK QAM Unlike this, the M-ary PSK signal is modulated with a different phase-shifted version of the carrier signal and varying amplitude levels. Let me give an example for better comprehension. QAM = ASK +...

Coherence Bandwidth and Coherence Time

๐Ÿงฎ Coherence Bandwidth ๐Ÿงฎ Coherence Time ๐Ÿงฎ Coherence Time Calculator ๐Ÿงฎ Relationship between Coherence Time and Delay Spread ๐Ÿงฎ MATLAB Code to find Relationship between Coherence Time and delay Spread ๐Ÿ“š Further Reading   Coherence Bandwidth Coherence bandwidth is a concept in wireless communication and signal processing that relates to the frequency range over which a wireless channel remains approximately constant in terms of its characteristics. coherence bandwidth is  The inverse of Doppler spread delay time, or any spread delay time due to fading in general.  The coherence bandwidth is related to the delay spread of the channel, which is a measure of the time it takes for signals to traverse the channel. The two are related by the following formulae: Coherence bandwidth = 1/(delay spread time) Or, Coherence Bandwidth = 1/(root-mean-square delay spread time) (Coherence bandwidth in Hertz) For instance, the coherence bandwidth is...

UGC NET Electronic Science Previous Year Question Papers

Home / Engineering & Other Exams / UGC NET 2022: Previous Year Question Papers ...   NET | GATE | ESE | UGC-NET (Electronics Science, Subject code: 88 ) UGC Net Electronic Science Questions Paper With Answer Key Download Pdf [December 2024] UGC Net Electronic Science Questions Paper With Answer Key Download Pdf [June 2024] UGC Net Electronic Science Questions Paper With Answer Key Download Pdf [December 2023] UGC Net Electronic Science Questions Paper With Answer Key Download Pdf [June 2023] UGC Net Electronic Science Questions Paper With Answer Key Download Pdf [December 2022]  UGC Net Electronic Science Questions Paper With Answer Key Download Pdf [June 2022]   UGC Net Electronic Science Questions Paper With Answer Key Download Pdf [December 2021] UGC Net Electronic Science Questions With Answer Key Download Pdf [June 2020] UGC Net Electronic Science Questions With Answer Key Download Pdf [December 2019] UGC Net Electronic Science Questions With Answer...