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Newton-Raphson Method 8/12/2010 1
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Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

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Page 1: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Newton-Raphson Method

8/12/2010 1

Page 2: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Newton-Raphson Method

Page 3: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Newton-Raphson Method

)(xf

)f(x - = xx

i

iii

1

f(x)

f(xi)

f(xi-1)

xi+2 xi+1 xi X

ii xfx ,

Figure 1 Geometrical illustration of the Newton-Raphson method.

3

Page 4: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Derivation

4

f(x)

f(xi)

xi+1 xi

X

B

C A

)(

)(1

i

iii

xf

xfxx

1

)()('

ii

ii

xx

xfxf

AC

ABtan(

Figure 2 Derivation of the Newton-Raphson method.

Page 5: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Algorithm for Newton-Raphson Method

5

Page 6: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Step 1

)(xf Evaluate symbolically.

6

Page 7: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Step 2

i

iii

xf

xf - = xx

1

Use an initial guess of the root, , to estimate the new value of the root, , as

ix

1ix

7

Page 8: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Step 3

0101

1 x

- xx =

i

iia

Find the absolute relative approximate error asa

8

Page 9: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Step 4

Compare the absolute relative approximate error with the pre-specified relative error tolerance .

Also, check if the number of iterations has exceeded the maximum number of iterations allowed. If so, one needs to terminate the algorithm and notify the user.

s

Is ?

Yes

No

Go to Step 2 using new estimate of the root.

Stop the algorithm

sa

http://numericalmethods.eng.usf.edu9

Page 10: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1

You are working for ‘DOWN THE TOILET COMPANY’ that makes floats for ABC commodes. The floating ball has a specific gravity of 0.6 and has a radius of 5.5 cm. You are asked to find the depth to which the ball is submerged when floating in water.

Figure 3 Floating ball problem.10

Page 11: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

The equation that gives the depth x in meters to which the ball is submerged under water is given by

423 1099331650 -.+x.-xxf

Use the Newton’s method of finding roots of equations to find a) the depth ‘x’ to which the ball is submerged under water. Conduct three

iterations to estimate the root of the above equation. b) The absolute relative approximate error at the end of each iteration, andc) The number of significant digits at least correct at the end of each iteration.

11

Figure 3 Floating ball problem.

Page 12: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

12

423 1099331650 -.+x.-xxf

To aid in the understanding of how this method works to find the root of an equation, the graph of f(x) is shown to the right,

where

Solution

Figure 4 Graph of the function f(x)

Page 13: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

13

x-xxf

.+x.-xxf -

33.03'

1099331650

2

423

Let us assume the initial guess of the root of is . This is a reasonable guess (discuss why

and are not good choices) as the extreme values of the depth x would be 0 and the diameter (0.11 m) of the ball.

0xfm05.00 x

0x m11.0x

Solve for xf '

Page 14: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

14

06242.0

01242.00.05

109

10118.10.05

05.033.005.03

10.993305.0165.005.005.0

'

3

4

2

423

0

001

xf

xfxx

Iteration 1The estimate of the root is

Page 15: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

15

Figure 5 Estimate of the root for the first iteration.

Page 16: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

16

%90.19

10006242.0

05.006242.0

1001

01

x

xxa

The absolute relative approximate error at the end of Iteration 1 isa

The number of significant digits at least correct is 0, as you need an absolute relative approximate error of 5% or less for at least one significant digits to be correct in your result.

Page 17: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

17

06238.0

104646.406242.0

1090973.8

1097781.306242.0

06242.033.006242.03

10.993306242.0165.006242.006242.0

'

5

3

7

2

423

1

112

xf

xfxx

Iteration 2The estimate of the root is

Page 18: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

18

Figure 6 Estimate of the root for the Iteration 2.

Page 19: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

19

%0716.0

10006238.0

06242.006238.0

1002

12

x

xxa

The absolute relative approximate error at the end of Iteration 2 isa

The maximum value of m for which is 2.844. Hence, the number of significant digits at least correct in the answer is 2.

m

a

2105.0

Page 20: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

20

06238.0

109822.406238.0

1091171.8

1044.406238.0

06238.033.006238.03

10.993306238.0165.006238.006238.0

'

9

3

11

2

423

2

223

xf

xfxx

Iteration 3The estimate of the root is

Page 21: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

21

Figure 7 Estimate of the root for the Iteration 3.

Page 22: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Example 1 Cont.

22

%0

10006238.0

06238.006238.0

1002

12

x

xxa

The absolute relative approximate error at the end of Iteration 3 isa

The number of significant digits at least correct is 4, as only 4 significant digits are carried through all the calculations.

Page 23: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Advantages and Drawbacks of Newton Raphson Method

23

Page 24: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Advantages

Converges fast (quadratic convergence), if it converges.

Requires only one guess

24

Page 25: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Drawbacks

25

1. Divergence at inflection pointsSelection of the initial guess or an iteration value of the root that is close to the inflection point of the function may start diverging away from the root in the Newton-Raphson method.

For example, to find the root of the equation .

The Newton-Raphson method reduces to .

Table 1 shows the iterated values of the root of the equation.

The root starts to diverge at Iteration 6 because the previous estimate of 0.92589 is close to the inflection point of .

Eventually after 12 more iterations the root converges to the exact value of

xf

0512.013

xxf

2

33

113

512.01

i

iii

x

xxx

1x

.2.0x

Page 26: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Drawbacks – Inflection Points

Iteration Number

xi

0 5.0000

1 3.6560

2 2.7465

3 2.1084

4 1.6000

5 0.92589

6 −30.119

7 −19.746

18 0.200026

0512.013

xxf

Figure 8 Divergence at inflection point for

Table 1 Divergence near inflection point.

Page 27: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

2. Division by zeroFor the equation

the Newton-Raphson method reduces to

For , the denominator will equal zero.

Drawbacks – Division by Zero

27

0104.203.0 623 xxxf

ii

iiii

xx

xxxx

06.03

104.203.02

623

1

02.0or 0 00 xx Figure 9 Pitfall of division by zero or near a zero number

Page 28: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Results obtained from the Newton-Raphson method may oscillate about the local maximum or minimum without converging on a root but converging on the local maximum or minimum.

Eventually, it may lead to division by a number close to zero and may diverge.

For example for the equation has no real roots.

Drawbacks – Oscillations near local maximum and minimum

28

02 2 xxf

3. Oscillations near local maximum and minimum

Page 29: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

Drawbacks – Oscillations near local maximum and minimum

29

-1

0

1

2

3

4

5

6

-2 -1 0 1 2 3

f(x)

x

3

4

2

1

-1.75 -0.3040 0.5 3.142

Figure 10 Oscillations around local minima for . 2 2 xxf

Iteration

Number

0

1

2

3

4

5

6

7

8

9

–1.0000

0.5

–1.75

–0.30357

3.1423

1.2529

–0.17166

5.7395

2.6955

0.97678

3.00

2.25

5.063

2.092

11.874

3.570

2.029

34.942

9.266

2.954

300.00

128.571

476.47

109.66

150.80

829.88

102.99

112.93

175.96

Table 3 Oscillations near local maxima and mimima in Newton-Raphson method.

ix ixf %a

Page 30: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

4. Root JumpingIn some cases where the function is oscillating and has a number of roots, one may choose an initial guess close to a root. However, the guesses may jump and converge to some other root.

For example

Choose

It will converge to

instead of -1.5

-1

-0.5

0

0.5

1

1.5

-2 0 2 4 6 8 10

x

f(x)

-0.06307 0.5499 4.461 7.539822

Drawbacks – Root Jumping

30

0 sin xxf

xf

539822.74.20 x

0x

2831853.62 x Figure 11 Root jumping from intended location of root for

. 0 sin xxf

Page 31: Newton-Raphson Method - AAST - Computer … 25 1. Divergence at inflection points Selection of the initial guess or an iteration value of the root that is close to the inflection point

END of Presentation