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DSB-SC Online Simulator

DSB-SC Modulation & Demodulation Message Frequency (Hz) Carrier Frequency (Hz) Cutoff Frequency (Hz) Sampling Frequency (Hz) Generate & Demodulate Message Signal Carrier Signal Modulated Signal (DSB-SC) Demodulated Signal

Bilateral Laplace Transform

Bilateral Laplace Transform Mathematical concept used in signal processing and system analysis The bilateral Laplace transform (also called the two-sided Laplace transform ) is a form of Laplace transform where integration is taken over all time, from \( -\infty \) to \( +\infty \). Definition For a function \(x(t)\), the bilateral Laplace transform is \[ X(s) = \int_{-\infty}^{\infty} x(t)e^{-st} dt \] where: \(x(t)\) = time-domain function \(X(s)\) = Laplace transform \(s = \sigma + j\omega\) (a complex variable) Comparison with the usual Laplace transform Type Formula Integration Range Unilateral Laplace Transform \(X(s)=\int_{0}^{\infty}x(t)e^{-st}dt\) \(0 \rightarrow \infty\) Bilateral Laplace Transform \(X(s)=\int_{-\infty}^{\infty}x(t)e^{-st}dt\) \(-\infty \rightarrow \infty\) Unilateral: used for solving differential equations and systems with initial conditions. Bilateral: use...

Single Phase vs Three Phase Wiring Explained

Single Phase and Three Phase Wiring Explained Understanding Electrical Power Systems Contents Single Phase Supply Three Phase Supply Frequently Asked Questions 1. Single Phase Supply Yes. A single-phase electrical supply normally needs two wires to work.  The two essential wires Live (Phase / Hot) – carries the voltage from the source. Neutral – completes the circuit and returns current to the source. Electric current flows from live → through the appliance → back through neutral . Without both wires, the circuit is incomplete and the device will not operate. Optional third wire Many installations also include a third wire called Earth (Ground) for safety. Live (L) Neutral (N) Earth (E) The earth wire is mainly used for safety and protection from electric shock . Typical Single Phase System Voltage: About 230 V Minimum Wires: 2 (Live + Neutral) Safer Wiring: 3 (Live + Neutral + Earth) 2. Th...

5G phased arrays (with MATLAB)

For practical 5G phased arrays , the beamforming effect is generated primarily by antenna spacing.  1. How 5G phased arrays work 5G base stations use multi-element antenna arrays (often 8×8, 16×16, or even more elements for Massive MIMO). Each antenna element transmits the same signal , but the phase of each element is controlled electronically . The physical spacing between antennas —usually ~0.5λ (half-wavelength) to λ—creates inherent phase differences when the signal reaches a user at an angle. φ total,n = φ steering,n - (2Ï€/λ) n d sin(θ) Where: n = antenna index d = antenna spacing θ = angle of the target φ steering,n = electronic phase shift applied to steer the beam The steering phase compensates for the inherent phase from spacing to direct the beam toward the desired angle. 2. Why not use a single antenna with time delays? Software time delays can emulate phased ar...

Golden Band in Wireless Communications

Golden Band in Wireless Communications The term “Golden Band” is commonly used in wireless communications to refer to a radio frequency range that offers an excellent balance between coverage and data capacity .  1. What is the Golden Band? The Golden Band typically refers to the mid-band spectrum around 3–4 GHz , especially the 3.3–3.8 GHz range , which is widely used in modern mobile networks. Example bands often called golden: 3.3 GHz 3.5 GHz 3.7 GHz These frequencies are heavily used in 5G NR deployments worldwide. 2. Why is it called “Golden”? Because it sits between low-band and high-band frequencies , giving the best compromise: Band Type Frequency Coverage Speed Low band < 1 GHz Excellent Low Golden band (mid-band) ...

AI-RAN, RIS, ISAC and Spectrum Coexistence

AI-RAN, RIS, ISAC and Spectrum Coexistence AI-RAN, RIS, ISAC, and Spectrum Coexistence are major technologies being developed for advanced 5G and future 6G networks . These technologies aim to improve spectrum efficiency, signal quality, and wireless communication performance. 1. AI-RAN (Artificial Intelligence Radio Access Network) Concept AI-RAN integrates artificial intelligence directly into the Radio Access Network (RAN) to optimize wireless communication in real time. The RAN includes: Base stations Antennas Beamforming systems User scheduling Power control Instead of fixed algorithms, AI dynamically learns optimal decisions. Optimization Model The network tries to maximize system performance: $$ \max_{\mathbf{x}} R(\mathbf{x}) $$ Where: \(R\) = network throughput \(\mathbf{x}\) = control parameters Example control variables: $$ \mathbf{x} = \{P, W, f, B\} $$ \(P\) = transmit power \(W\) = beamforming weights \(f\) = frequency ...

MATLAB for AI-Driven Spectrum Sharing

  MATLAB Code clc; clear; close all ; %% Step 1: Define Parameters M = 3; % Number of transmitters N = 200; % Number of time samples SNR = 10; % Baseline SNR (dB) P_max = 1; % Maximum transmit power I_th = 0.1; % Interference threshold (arbitrary unit) fprintf( 'Step 1: Parameters initialized\n' ); %% Step 2: Generate Original Signals t = 1:N; s = zeros(M,N); frequencies = [0.05 0.08 0.12]; % normalized frequency for each transmitter for k = 1:M s(k,:) = exp(1j*2*pi*frequencies(k)*t); % narrowband signals end figure; plot(real(s.')); title( 'Original Transmitter Signals (Real Part)' ); xlabel( 'Time samples' ); ylabel( 'Amplitude' ); %% Step 3: Define Random Channel Matrix H = (randn(M) + 1j*randn(M))/sqrt(2); % channel gains h_mk % Each row = receiver, each column = transmitter %% Step 4: Simulate Received Signals n = (randn(M,N) + 1j*randn(M,N))/sqrt(2); % noise n = n * 10...

AI-Driven Spectrum Sharing (with MATLAB)

1. Concept of AI-Driven Spectrum Sharing AI-driven spectrum sharing uses artificial intelligence / machine learning to manage spectrum dynamically and efficiently: Multiple users or systems share the same frequency band. AI algorithms predict spectrum usage, interference patterns, and optimal allocation . The system adapts power, beamforming, or frequency allocation in real time based on learned patterns. Goal: Maximize throughput, minimize interference, and improve spectrum utilization without human intervention. 2. Mathematical Model Suppose: \(M\) transmitters share the same band. \(s_k(t)\) is the signal from transmitter \(k\). Channel from transmitter \(k\) to receiver \(m\): \(h_{mk}\). Noise at receiver \(m\): \(n_m(t)\). Received signal: $$ y_m(t) = \sum_{k=1}^{M} h_{mk} s_k(t) + n_m(t) $$ Interference at receiver \(m\): $$ I_m = \sum_{k \ne m} |h_{mk}|^2 P_k $$ AI agent uses this data to predict interference patterns and decide optimal po...

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