27.11.2023, 00:23
Signals And Systems Fundamentals
Published 12/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 10.31 GB | Duration: 37h 18m
Learn Signals and Systems Fundamentals from Scratch and Master the theoretical foundations required to process signals
What you'll learn
Understand the fundamentals of the systems sub-area within the field of electrical engineering so as to get excited about the area
Understand and apply the continuous time Fourier transform, discrete time Fourier transform, Laplace transform, and z-Transform, to the analysis and description
Apply the concepts of Fourier series representations to analyze continuous and discrete time periodic signals.
To take advanced courses in the signals and systems area as well as applying the obtained knowledge into practical applications
Requirements
Desire to learn the subject of signals and systems
Knowledge of the Basics to electrical and computer engineering concepts
Description
Course Description of Signals and Systems FundamentalsThe course provides students with a comprehensive detailed introduction to the analysis of continuous and discrete-time signals and systems.Linear time-invariant systemsSignals Convolution and CorrelationFourier series representations of periodic signalsContinuous time and discrete time Fourier transformsLaplace transformZ-transform conceptFast Fourier transform (FFT) The COURSE GOALS are basically to provide an introduction to sophomores in the field of electrical engineering to the fundamental concepts in the sub-area of signals and systems. This course will be one of five fundamentals courses required of all electrical engineering majors. Another goal is to prepare students to take some more advanced courses in the area of signals and systems, namely in signal and image processing, and networks, communication and control.COURSE OBJECTIVES: When a student completes this course, s/he should be able to: Understand the fundamentals of the systems sub-area within the field of electrical engineering so as to get excited about the area. Understand linear time invariant systems. Apply the concepts of Fourier series representations to analyze continuous and discrete time periodic signals. Understand and apply the continuous time Fourier transform, discrete time Fourier transform, Laplace transform, and z-Transform, to the analysis and description of LTI continuous and discrete-time systems. To take advanced courses in the systems area.DETAILED COURSE TOPICS:1. Signals and Systems: Continuous-time and discrete-time signals; commonly encountered signals; unit impulse and unit step functions; sampling and aliasing; continuous-time and discrete-time systems; basic properties.2. Linear Time-Invariant (LTI) Systems: The convolution sum; the convolution integral; properties; difference and differential equations.3. Fourier Series Representation of Periodic Signals: Continuous and discrete-time periodic signals; properties of continuous and discrete-time Fourier series; Fourier series and LTIsystems.4. Continuous-Time Fourier Transform: Properties; convolution and multiplication properties.5. Discrete-Time Fourier Transform: Properties; convolution and multiplication properties.6. Laplace Transform: Region of convergence; inverse Laplace transform; properties; analysis of LTI systems using the Laplace transform.7. z-Transform: Region of convergence; inverse z-transform; properties; analysis of LTI systems using the z-transform.COMPUTER USAGE: Programming assignments using MATLAB on PCs to reinforce concepts learned in class.HOMEWORK ASSIGNMENTS: Homeworks to reinforce the concepts learned in class .REQUIRED TEXT: A. V. Oppenheim and A. S. Willsky (with S. H. Nawab), Signals and Systems , Prentice Hall, 2 nd edition, 1997.PREREQUISITES BY TOPIC: Basic introduction to electrical engineering concepts
Overview
Section 1: Introduction and review of pre-requisite concepts in signal and systems
Lecture 1 Fourier transform of rectangular pulse
Lecture 2 Autocorrelation function and Power Spectral Density
Lecture 3 Frequency response and impulse response
Lecture 4 Impulse response and causality
Lecture 5 Relation between Laplace transform Fourier transform z-transform DTFT DFT & FFT
Lecture 6 Why cant an ideal filter be implemented in practice
Lecture 7 Time domain sampling - analytical representation
Section 2: Signals and Systems
Lecture 8 L1 Real sinusoidal and exponential signals
Lecture 9 L2 Complex exponential unit impulse and unit step signals
Lecture 10 L3 Complex exponential unit impulse and unit step functions
Lecture 11 L4 Periodic signals even and odd signals.mp4
Lecture 12 L5 Transformation of Independent variable - continuous time.mp4
Lecture 13 L6 Transformation of independent variable- Continuous time and discrete time exa
Lecture 14 L7 Transformation of independent variable - Discrete Time example.mp4
Lecture 15 L8 Relationship between Unit impulse and unit step functions Introduction to sys
Lecture 16 L9 System properties - memory invertibility and causality.mp4
Lecture 17 L10 System properties - Stability Time Invariance and Linearity.mp4
Lecture 18 L11 Linearity and linear systems with examples.mp4
Lecture 19 L12 LTI systems - impulse response and convolution.mp4
Lecture 20 L13 Convolution in Discrete Time.mp4
Lecture 21 L14 Convolution continuous time.mp4
Lecture 22 L15 Properties of LTI systemsconvolution.mp4
Lecture 23 L15 Properties of LTI systemsconvolution.mp4
Lecture 24 L17 Unit step response and introduction to Fourier series.mp4
Lecture 25 L18 Fourier series motivation and theory.mp4
Lecture 26 L19 Fourier series - Exponential form and sine-cosine form.mp4
Lecture 27 L20 Dirichlets conditions and properties of Fourier series.mp4
Lecture 28 L21 Fourier series of discrete time periodic signals.mp4
Lecture 29 Fourier series coefficient calculations
Lecture 30 Geometric representation of signals
Lecture 31 Gram Schmidt orthogonalization
Section 3: Digital Communication Fundamentals
Lecture 32 Introduction to Digital Communication
Lecture 33 Sampling reconstruction & Aliasing
Lecture 34 Quantization quantization noise signal to quantization noise power ratio
Lecture 35 Quantization SNR and PCM
Lecture 36 PCM word size and Baseband signaling - Line codes
Lecture 37 Processing gain in DPCM and Delta Modulation
Lecture 38 Slope overload in Delta Modulation
Lecture 39 Gaussian noise
Lecture 40 White Gaussian Noise
Lecture 41 Signal detection in the presence of AWGN - Binary Unipolar
Lecture 42 Error probability with binary polar signaling
Lecture 43 Error probability for M-ary signaling with M = 4
Lecture 44 Error probability with M-ary signaling over AWGN channel
Lecture 45 '
Lecture 46 Spectrum - Fourier analysis
Computer Engineering Students,Electrical Engineering Students,Telecommunication Engineering Students,Signal app developers and programmers
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