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NOC - Partial Differential Equations for Engineers - Solution

Offered By: NIOS via YouTube

Tags

Differential Equations Courses Coordinate Systems Courses Partial Differential Equations Courses Engineering Mathematics Courses Separation of Variables Courses

Course Description

Overview

Explore a comprehensive 9-hour course on partial differential equations tailored for engineers. Delve into application-oriented problems, generalized 3D problems, and coordinate systems including spherical polar and cylindrical. Master solutions for hyperbolic, elliptical, and parabolic PDEs, with focus on multi-dimensional scenarios. Learn separation of variables in rectangular coordinate systems, properties of adjoint operators, and the generalized Sturm-Liouville problem. Understand the principle of linear superposition, PDE classification, and gain a solid introduction to partial differential equations.

Syllabus

Examples of Application Oriented Problems (Contd.).
Examples of Application Oriented Problems.
Example of Generalized 3 Dimensional Problem.
Spherical Polar Coordinate System (Contd.).
Spherical Polar Coordinate System.
Cylindrical Coordinate System -3 Dimensional Problem.
Solution of Hyperbolic PDE.
Solution of Elliptical PDE.
Solution of 4 Dimensional Parabolic Problem (Contd.).
Solution of 4 Dimensional Parabolic Problem.
Solution of 3 Dimensional Parabolic Problem.
Separation of variables : Rectangular Coordinate systems.
Properties of Adjoint Operator.
Generalized sturm - Louiville problem.
Adjoint operator.
Principle of Linear Superposition.
Classification of PDE.
Introduction to PDE.


Taught by

Ch 30 NIOS: Gyanamrit

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