signals and systems problems on LTI systems ECE
This course provides a comprehensive introduction to the analysis and characterization of signals and systems. It serves as a foundational course for fields such as communications, control systems, and signal processing.
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Description
This course provides a comprehensive introduction to the analysis and characterization of signals and systems. It serves as a foundational course for fields such as communications, control systems, and signal processing.
Course Objectives:
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Understand the basic properties and classifications of signals and systems.
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Analyze linear time-invariant (LTI) systems using time-domain and frequency-domain methods.
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Apply Fourier, Laplace, and Z-transforms to signal and system analysis.
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Develop problem-solving skills in both continuous-time and discrete-time domains.
Topics Covered:
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Classification of Signals (Continuous-time, Discrete-time, Periodic, Aperiodic)
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Basic Signal Operations and Properties
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Classification and Properties of Systems
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Linear Time-Invariant (LTI) Systems
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Convolution and Impulse Response
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Fourier Series and Fourier Transform
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Laplace Transform and System Analysis
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Z-Transform and Discrete-Time System Analysis
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Sampling Theorem and Reconstruction
Learning Outcomes:
By the end of the course, students will be able to:
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Represent and manipulate various types of signals.
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Analyze LTI systems in time and frequency domains.
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Use mathematical tools for system characterization.
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Interpret the effects of systems on signals using transforms.
Prerequisites:
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Basic Calculus
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Differential Equations
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Introductory Linear Algebra (recommended)
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Address:
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Tamil Nadu
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