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Chapter 2 Simultaneous Linear Equations

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Title: Chapter 2 Simultaneous Linear Equations


1
Chapter 2Simultaneous Linear Equations
2
2.1 Linear systems
  • A system of m linear equations in n variables is
    a set of m equations, each of which is linear in
    the same n variables
  • A solution is a set of scalars x1 , x2 , , xn
    that when substituted in the system satisfies the
    given equations.
  • A linear system can possess exactly one solution,
    an infinite number of solutions, or no solution.
  • A linear system is called consistent if it has at
    least one solution and inconsistent if it has no
    solution.
  • A linear system can be written in matrix form Ax
    b (see details on the board)
  • A linear system is called homogenous if b0

3
2.1 Linear systems (HW example) Modeling a
real-life situation as a linear model
  • A manufacturer produces desks and bookcases.
  • Desks d require 5 hours of cutting time and 10
    hours of assembling time.
  • Bookcases b require 15 minutes of cutting time
    and one hour of assembling time.
  • Each day, the manufacturer has available 200
    hours for cutting and 500 hours for assembling.
  • The manufacturer wants to know how many desks and
    bookcases should be scheduled for completion each
    day to utilize all available workpower.
  • Show that this problem is equivalent to solving
    two equations in the two unknowns d and b .

4
2.2 Solutions by Substitution
  • Take the first equation and solve for x1 in terms
    of x2 , , xn and then substitute the value of
    x1 into all the other equations, thus eliminating
    it from those equations. This new form is the
    first derived set.
  • Working with the first derived set, solve the
    second equation for x2 in terms of x3 , , xn and
    then substitute this value of x2 into the third,
    fourth, etc. equations, thus eliminating it.
  • Do this process recursively with other variables.
  • The resulting system can be solved by back
    substitution.
  • An example on the board.
  • We will consider in more details more advanced
    methods which use matrices.

5
Augmented matrix of a linear system
  • The matrix derived from the coefficients and
    constant terms of a system of linear equations is
    called the augmented matrix of the system.
  • The matrix containing only the coefficients of
    the system is called the coefficient matrix of
    the system.
  • System Augmented Matrix
    Coefficient Matrix

const.
y
z
x
6
Elementary row operations
  • (E1) Interchange any two rows.
  • (E2) Multiply any row by a nonzero scalar.
  • (E3) Add a multiple of a row to another row.
  • Two matrices are said to be row-equivalent
  • if one can be obtained from the other by a finite
    sequence of elementary row operations.
  • Row-equivalent systems have the same set of
    solutions.

7
Gaussian Elimination
  • Write the augmented matrix of the system.
  • Use elementary row operations to transform it to
    an equivalent row-reduced form.
  • (this is most often accomplished by using (E3)
    with each diagonal element to create zeros in all
    columns directly below it, beginning with the
    first column)
  • The system associated with row-reduced matrix can
    be solved easily by back-substitution.

8
Gaussian Elimination Example 1
  • Linear System Associated Augmented matrix

R2R1?R2
?(?2)
R3R2?R3
0.5R3?R3
?0.5
9
Gaussian Elimination Example 2
  • A system with no solution
  • Solve the system

0 ?2 ???The original system of linear
equationsis inconsistent.
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