PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In...

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PARTIAL DERIVATIVES PARTIAL DERIVATIVES 11

Transcript of PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In...

Page 1: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

PARTIAL DERIVATIVESPARTIAL DERIVATIVES

11

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PARTIAL DERIVATIVES

11.6Directional Derivatives

and the Gradient Vector

In this section, we will learn how to find:

The rate of changes of a function of

two or more variables in any direction.

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INTRODUCTION

This weather map shows a contour map

of the temperature function T(x, y)

for:

The states of California and Nevada at 3:00 PM on a day in October.

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INTRODUCTION

The level curves, or isothermals,

join locations with the same

temperature.

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The partial derivative Tx is the rate of change

of temperature with respect to distance if

we travel east from Reno.

Ty is the rate of change if we travel north.

INTRODUCTION

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However, what if we want to know the rate

of change when we travel southeast (toward

Las Vegas), or in some other direction?

INTRODUCTION

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In this section, we introduce a type of

derivative, called a directional derivative,

that enables us to find:

The rate of change of a function of two or more variables in any direction.

DIRECTIONAL DERIVATIVE

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DIRECTIONAL DERIVATIVES

Recall that, if z = f(x, y), then the partial

derivatives fx and fy are defined as:

0 0 0 00 0

0

0 0 0 00 0

0

( , ) ( , )( , ) lim

( , ) ( , )( , ) lim

xh

yh

f x h y f x yf x y

h

f x y h f x yf x y

h

Equations 1

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DIRECTIONAL DERIVATIVES

They represent the rates of change of z

in the x- and y-directions—that is, in

the directions of the unit vectors i and j.

Equations 1

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DIRECTIONAL DERIVATIVES

Suppose that we now wish to find the rate

of change of z at (x0, y0) in the direction of

an arbitrary unit vector u = <a, b>.

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DIRECTIONAL DERIVATIVES

To do this, we consider the surface S

with equation z = f(x, y) [the graph of f ]

and we let z0 = f(x0, y0).

Then, the point P(x0, y0, z0) lies on S.

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DIRECTIONAL DERIVATIVES

The vertical plane that passes through P

in the direction of u intersects S in

a curve C.

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DIRECTIONAL DERIVATIVES

The slope of the tangent line T to C

at the point P is the rate of change of z

in the direction

of u.

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DIRECTIONAL DERIVATIVES

Now, let:

Q(x, y, z) be another point on C.

P’, Q’ be the projections of P, Q on the xy-plane.

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DIRECTIONAL DERIVATIVES

Then, the vector is parallel to u.

So,

for some scalar h.

' '��������������P Q

' '

,

P Q h

ha hb

u

��������������

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DIRECTIONAL DERIVATIVES

Therefore,

x – x0 = ha

y – y0 = hb

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DIRECTIONAL DERIVATIVES

So,

x = x0 + ha

y = y0 + hb

0

0 0 0, 0( , ) ( )

z zz

h hf x ha y hb f x y

h

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DIRECTIONAL DERIVATIVE

If we take the limit as h → 0, we obtain

the rate of change of z (with respect to

distance) in the direction of u.

This is called the directional derivative of f in the direction of u.

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DIRECTIONAL DERIVATIVE

The directional derivative of f at (x0, y0)

in the direction of a unit vector u = <a, b>

is:

if this limit exists.

Definition 2

0 0

0 0 0 0

0

( , )

( , ) ( , )limh

D f x y

f x ha y hb f x y

h

u

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DIRECTIONAL DERIVATIVES

Comparing Definition 2 with Equations 1,

we see that:

If u = i = <1, 0>, then Di f = fx.

If u = j = <0, 1>, then Dj f = fy.

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DIRECTIONAL DERIVATIVES

In other words, the partial derivatives of f

with respect to x and y are just special

cases of the directional derivative.

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DIRECTIONAL DERIVATIVES

Use this weather map to estimate the value

of the directional derivative of the temperature

function at Reno in

the southeasterly

direction.

Example 1

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DIRECTIONAL DERIVATIVES

The unit vector directed toward

the southeast is:

u = (i – j)/

However, we won’t need to use this expression.

Example 1

2

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DIRECTIONAL DERIVATIVES

We start by drawing a line through Reno

toward the southeast.

Example 1

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DIRECTIONAL DERIVATIVES

We approximate the directional derivative

DuT by:

The average rate of change of the temperature between the points where this line intersects the isothermals T = 50 and T = 60.

Example 1

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DIRECTIONAL DERIVATIVES

The temperature at the point southeast

of Reno is T = 60°F.

The temperature

at the point

northwest of Reno

is T = 50°F.

Example 1

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DIRECTIONAL DERIVATIVES

The distance between these points

looks to be about 75 miles.

Example 1

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DIRECTIONAL DERIVATIVES

So, the rate of change of the temperature

in the southeasterly direction is:

Example 1

60 50

7510

75

0.13 F/mi

D T

u

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DIRECTIONAL DERIVATIVES

When we compute the directional

derivative of a function defined by

a formula, we generally use the following

theorem.

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DIRECTIONAL DERIVATIVES

If f is a differentiable function of x and y,

then f has a directional derivative in

the direction of any unit vector u = <a, b>

and

Theorem 3

( , ) ( , ) ( , )x yD f x y f x y a f x y b u

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DIRECTIONAL DERIVATIVES

If we define a function g of the single

variable h by

then, by the definition of a derivative,

we have the following equation.

Proof

0 0( ) ( , ) g h f x ha y hb

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DIRECTIONAL DERIVATIVES

Proof—Equation 4

0

0 0 0 0

0

0 0

'(0)

( ) (0)lim

( , ) ( , )lim

( , )

h

h

g

g h g

hf x ha y hb f x y

h

D f x y

u

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DIRECTIONAL DERIVATIVES

On the other hand, we can write:

g(h) = f(x, y)

where: x = x0 + ha

y = y0 + hb

Proof

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DIRECTIONAL DERIVATIVES

Hence, the Chain Rule (Theorem 2

in Section 10.5) gives:

'( )

( , ) ( , )x y

f dx f dyg h

x dh y dh

f x y a f x y b

Proof

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DIRECTIONAL DERIVATIVES

If we now put h = 0,

then x = x0

y = y0

and

0 0 0 0'(0) ( , ) ( , ) x yg f x y a f x y b

Proof—Equation 5

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DIRECTIONAL DERIVATIVES

Comparing Equations 4 and 5,

we see that:

Proof

0 0

0 0 0 0

( , )

( , ) ( , )x y

D f x y

f x y a f x y b u

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DIRECTIONAL DERIVATIVES

Suppose the unit vector u makes

an angle θ with the positive x-axis, as

shown.

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DIRECTIONAL DERIVATIVES

Then, we can write

u = <cos θ, sin θ>

and the formula in Theorem 3

becomes:

Equation 6

( , ) ( , ) cos ( , )sinx yD f x y f x y f x y u

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DIRECTIONAL DERIVATIVES

Find the directional derivative Duf(x, y)

if: f(x, y) = x3 – 3xy + 4y2

u is the unit vector given by angle θ = π/6

What is Duf(1, 2)?

Example 2

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DIRECTIONAL DERIVATIVES

Formula 6 gives:

Example 2

2 12

212

( , ) ( , ) cos ( , )sin6 6

3(3 3 ) ( 3 8 )

2

3 3 3 8 3 3

x yD f x y f x y f x y

x y x y

x x y

u

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DIRECTIONAL DERIVATIVES

Therefore,

Example 2

212(1,2) 3 3(1) 3(1) 8 3 3 (2)

13 3 3

2

D fu

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DIRECTIONAL DERIVATIVES

The directional derivative Du f(1, 2)

in Example 2 represents the rate of

change of z in the direction of u.

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DIRECTIONAL DERIVATIVES

This is the slope of the tangent line to

the curve of intersection of the surface

z = x3 – 3xy + 4y2

and the vertical

plane through

(1, 2, 0) in the

direction of u

shown here.

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THE GRADIENT VECTOR

Notice from Theorem 3 that the directional

derivative can be written as the dot product

of two vectors:

( , ) ( , ) ( , )

( , ), ( , ) ,

( , ), ( , )

x y

x y

x y

D f x y f x y a f x y b

f x y f x y a b

f x y f x y

u

u

Expression 7

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THE GRADIENT VECTOR

The first vector in that dot product

occurs not only in computing directional

derivatives but in many other contexts

as well.

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THE GRADIENT VECTOR

So, we give it a special name:

The gradient of f

We give it a special notation too:

grad f or f , which is read “del f ”

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THE GRADIENT VECTOR

If f is a function of two variables x and y,

then the gradient of f is the vector function f

defined by:

Definition 8

( , ) ( , ), ( , )x yf x y f x y f x y

f f

x x

i j

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THE GRADIENT VECTOR

If f(x, y) = sin x + exy,

then

Example 3

( , ) ,

cos ,

(0,1) 2,0

x y

xy xy

f x y f f

x ye xe

f

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THE GRADIENT VECTOR

With this notation for the gradient vector, we

can rewrite Expression 7 for the directional

derivative as:

This expresses the directional derivative in the direction of u as the scalar projection of the gradient vector onto u.

Equation 9

( , ) ( , )D f x y f x y u u

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THE GRADIENT VECTOR

Find the directional derivative of the function

f(x, y) = x2y3 – 4y

at the point (2, –1) in the direction

of the vector v = 2 i + 5 j.

Example 4

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THE GRADIENT VECTOR

We first compute the gradient vector

at (2, –1):

Example 4

3 2 2( , ) 2 (3 4)

(2, 1) 4 8

f x y xy x y

f

i j

i j

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THE GRADIENT VECTOR

Note that v is not a unit vector.

However, since , the unit vector

in the direction of v is:

Example 4

| | 29v

2 5

| | 29 29 v

u i jv

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THE GRADIENT VECTOR

Therefore, by Equation 9,

we have:

Example 4

(2, 1) (2, 1)

2 5( 4 8 )

29 29

4 2 8 5 32

29 29

D f f

u u

i j i j

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FUNCTIONS OF THREE VARIABLES

For functions of three variables, we can

define directional derivatives in a similar

manner.

Again, Du f(x, y, z) can be interpreted as the rate of change of the function in the direction of a unit vector u.

Page 55: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

The directional derivative of f at (x0, y0, z0)

in the direction of a unit vector u = <a, b, c>

is:

if this limit exists.

THREE-VARIABLE FUNCTION Definition 10

0 0 0

0 0 0 0 0 0

0

( , , )

( , , ) ( , , )limh

D f x y z

f x ha y hb z hc f x y z

h

u

Page 56: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

If we use vector notation, then we can

write both Definitions 2 and 10 of the

directional derivative in a compact form,

as follows.

THREE-VARIABLE FUNCTIONS

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THREE-VARIABLE FUNCTIONS Equation 11

0 00

0

( ) ( )( ) lim

h

f h fD f

h

u

x u xx

where: x0 = <x0, y0> if n = 2

x0 = <x0, y0, z0> if n = 3

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This is reasonable.

The vector equation of the line through x0 in the direction of the vector u is given by x = x0 + t u (Equation 1 in Section 12.5).

Thus, f(x0 + hu) represents the value of f at a point on this line.

THREE-VARIABLE FUNCTIONS

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If f(x, y, z) is differentiable and u = <a, b, c>,

then the same method that was used to

prove Theorem 3 can be used to show

that:

THREE-VARIABLE FUNCTIONS Formula 12

( , , )

( , , ) ( , , ) ( , , )x y z

D f x y z

f x y z a f x y z b f x y z c u

Page 60: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

THREE-VARIABLE FUNCTIONS

For a function f of three variables,

the gradient vector, denoted by or grad f,

is:

f

( , , )

( , , ), ( , , , ), ( , , )x y z

f x y z

f x y z f x y z f x y z

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THREE-VARIABLE FUNCTIONS

For short,

, ,x y zf f f f

f f f

x y z

i j k

Equation 13

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THREE-VARIABLE FUNCTIONS

Then, just as with functions of two variables,

Formula 12 for the directional derivative can

be rewritten as:

( , , ) ( , , )D f x y z f x y z u u

Equation 14

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THREE-VARIABLE FUNCTIONS

If f(x, y, z) = x sin yz, find:

a. The gradient of f

b. The directional derivative of f at (1, 3, 0)

in the direction of v = i + 2 j – k.

Example 5

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THREE-VARIABLE FUNCTIONS

The gradient of f is:

Example 5 a

f (x, y, z)

fx(x, y, z), f

y(x, y, z), f

z(x, y, z)

sin yz,xz cos yz,xycos yz

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THREE-VARIABLE FUNCTIONS

At (1, 3, 0), we have:

The unit vector in the direction

of v = i + 2 j – k is:

Example 5 b

(1,3,0) 0,0,3f

1 2 1

6 6 6 u i j k

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THREE-VARIABLE FUNCTIONS

Hence, Equation 14 gives:

Example 5

(1,3,0) (1,3,0)

1 2 13

6 6 6

1 33

26

D f f

u u

k i j k

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MAXIMIZING THE DIRECTIONAL DERIVATIVE

Suppose we have a function f of two or three

variables and we consider all possible

directional derivatives of f at a given point.

These give the rates of change of f in all possible directions.

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MAXIMIZING THE DIRECTIONAL DERIVATIVE

We can then ask the questions:

In which of these directions does f change fastest?

What is the maximum rate of change?

Page 69: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

The answers are provided by

the following theorem.

MAXIMIZING THE DIRECTIONAL DERIVATIVE

Page 70: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

Suppose f is a differentiable function of

two or three variables.

The maximum value of the directional

derivative Duf(x) is:

It occurs when u has the same direction as the gradient vector

MAXIMIZING DIRECTIONAL DERIV. Theorem 15

| ( ) |f x

( )f x

Page 71: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

From Equation 9 or 14, we have:

where θ is the angle

between and u.

MAXIMIZING DIRECTIONAL DERIV. Proof

| || | cos

| | cos

D f f f

f

u u u

f

Page 72: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

The maximum value of cos θ is 1.

This occurs when θ = 0.

So, the maximum value of Du f is:

It occurs when θ = 0, that is, when u has the same direction as .

MAXIMIZING DIRECTIONAL DERIV. Proof

| |f

f

Page 73: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

a. If f(x, y) = xey, find the rate of change

of f at the point P(2, 0) in the direction

from P to Q(½, 2).

MAXIMIZING DIRECTIONAL DERIV. Example 6

Page 74: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

b. In what direction does f have

the maximum rate of change?

What is this maximum rate of change?

MAXIMIZING DIRECTIONAL DERIV. Example 6

Page 75: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

We first compute the gradient vector:

MAXIMIZING DIRECTIONAL DERIV. Example 6 a

( , ) ,

,

(2,0) 1,2

x y

y y

f x y f f

e xe

f

Page 76: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

The unit vector in the direction of

is .

So, the rate of change of f in the direction

from P to Q is:

MAXIMIZING DIRECTIONAL DERIV. Example 6 a

1.5,2PQ ��������������

3 45 5, u

3 45 5

3 45 5

(2,0) (2,0)

1,2 ,

1( ) 2( ) 1

D f f u

u

Page 77: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

According to Theorem 15, f increases

fastest in the direction of the gradient

vector .

So, the maximum rate of change is:

MAXIMIZING DIRECTIONAL DERIV. Example 6 b

(2,0) 1,2f

(2,0) 1,2 5f

Page 78: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

Suppose that the temperature at a point

(x, y, z) in space is given by

T(x, y, z) = 80/(1 + x2 + 2y2 + 3z2)

where: T is measured in degrees Celsius. x, y, z is measured in meters.

MAXIMIZING DIRECTIONAL DERIV. Example 7

Page 79: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

In which direction does the temperature

increase fastest at the point (1, 1, –2)?

What is the maximum rate of increase?

MAXIMIZING DIRECTIONAL DERIV. Example 7

Page 80: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

MAXIMIZING DIRECTIONAL DERIV.

The gradient of T is:

Example 7

2 2 2 2 2 2 2 2

2 2 2 2

2 2 2 2

160 320

(1 2 3 ) (1 2 3 )

480

(1 2 3 )

160( 2 3 )

(1 2 3 )

T T TT

x y z

x y

x y z x y z

z

x y z

x y zx y z

i j k

i j

k

i j k

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MAXIMIZING DIRECTIONAL DERIV.

At the point (1, 1, –2), the gradient vector

is:

Example 7

160256

58

(1,1, 2) ( 2 6 )

( 2 6 )

T

i j k

i j k

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MAXIMIZING DIRECTIONAL DERIV.

By Theorem 15, the temperature increases

fastest in the direction of the gradient vector

Equivalently, it does so in the direction of –i – 2 j + 6 k or the unit vector (–i – 2 j + 6 k)/ .

Example 7

58(1,1, 2) ( 2 6 )T i j k

41

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MAXIMIZING DIRECTIONAL DERIV.

The maximum rate of increase is the length

of the gradient vector:

Thus, the maximum rate of increase of temperature is:

Example 7

58

58

(1,1, 2) 2 6

41

T

i j k

58 41 4 C/m

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TANGENT PLANES TO LEVEL SURFACES

Suppose S is a surface with

equation

F(x, y, z)

That is, it is a level surface of a function F of three variables.

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TANGENT PLANES TO LEVEL SURFACES

Then, let

P(x0, y0, z0)

be a point on S.

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Then, let C be any curve that lies on

the surface S and passes through

the point P.

Recall from Section 10.1 that the curve C is described by a continuous vector function

r(t) = <x(t), y(t), z(t)>

TANGENT PLANES TO LEVEL SURFACES

Page 87: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

Let t0 be the parameter value

corresponding to P.

That is, r(t0) = <x0, y0, z0>

TANGENT PLANES TO LEVEL SURFACES

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Since C lies on S, any point (x(t), y(t), z(t))

must satisfy the equation of S.

That is,

F(x(t), y(t), z(t)) = k

Equation 16TANGENT PLANES

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If x, y, and z are differentiable functions of t

and F is also differentiable, then we can use

the Chain Rule to differentiate both sides of

Equation 16:

TANGENT PLANES

0F dx F dy F dz

x dt y dt x dt

Equation 17

Page 90: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

However, as

and

Equation 17 can be written in terms

of a dot product as:

TANGENT PLANES

'( ) 0F t r

, ,x y zF F F F

'( ) '( ), '( ), '( )t x t y t z t r

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TANGENT PLANES

In particular, when t = t0,

we have:

r(t0) = <x0, y0, z0>

So, 0 0 0 0( , , ) '( ) 0F x y z t r

Equation 18

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TANGENT PLANES

Equation 18 says:

The gradient vector at P, , is perpendicular to the tangent vector r’(t0) to any curve C on S that passes through P.

0 0 0( , , )F x y z

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TANGENT PLANES

If , it is thus natural to

define the tangent plane to the level surface

F(x, y, z) = k at P(x0, y0, z0) as:

The plane that passes through P and has normal vector

0 0 0( , , ) 0F x y z

0 0 0( , , )F x y z

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TANGENT PLANES

Using the standard equation of a plane

(Equation 7 in Section 12.5), we can write

the equation of this tangent plane as:

0 0 0 0 0 0 0 0

0 0 0 0

( , , )( ) ( , , )( )

( , , )( ) 0

x y

z

F x y z x x F x y z y y

F x y z z z

Equation 19

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NORMAL LINE

The normal line to S at P is

the line:

Passing through P

Perpendicular to the tangent plane

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TANGENT PLANES

Thus, the direction of the normal line

is given by the gradient vector

0 0 0( , , )F x y z

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TANGENT PLANES

So, by Equation 3 in Section 12.5,

its symmetric equations are:

Equation 20

0 0 0

0 0 0 0 0 0 0 0 0( , , ) ( , , ) ( , , )x y z

x x y y z z

F x y z F x y z F x y z

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TANGENT PLANES

Consider the special case in which

the equation of a surface S is of the form

z = f(x, y)

That is, S is the graph of a function f of two variables.

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TANGENT PLANES

Then, we can rewrite the equation as

F(x, y, z) = f(x, y) – z = 0

and regard S as a level surface

(with k = 0) of F.

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TANGENT PLANES

Then,

0 0 0 0 0

0 0 0 0 0

0 0 0

( , , ) ( , )

( , , ) ( , )

( , , ) 1

x x

y y

z

F x y z f x y

F x y z f x y

F x y z

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TANGENT PLANES

So, Equation 19 becomes:

This is equivalent to Equation 2 in Section 10.4

0 0 0 0 0 0

0

( , )( ) ( , )( )

( ) 0

x yf x y x x f x y y y

z z

Page 102: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

TANGENT PLANES

Thus, our new, more general, definition

of a tangent plane is consistent with

the definition that was given for the special

case of Section 10.4

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TANGENT PLANES

Find the equations of the tangent plane

and normal line at the point (–2, 1, –3)

to the ellipsoid

Example 8

2 22 3

4 9

x zy

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TANGENT PLANES

The ellipsoid is the level surface

(with k = 3) of the function

Example 8

2 22( , , )

4 9

x zF x y z y

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TANGENT PLANES

So, we have:

Example 8

23

( , , )2

( , , ) 2

2( , , )

9

( 2,1, 3) 1

( 2,1, 3) 2

( 2,1, 3)

x

y

z

x

y

z

xF x y z

F x y z y

zF x y z

F

F

F

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TANGENT PLANES

Then, Equation 19 gives the equation

of the tangent plane at (–2, 1, –3)

as:

This simplifies to:

3x – 6y + 2z + 18 = 0

Example 8

231( 2) 2( 1) ( 3) 0x y z

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TANGENT PLANES

By Equation 20, symmetric equations

of the normal line are:

23

2 1 3

1 2

x y z

Example 8

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TANGENT PLANES

The figure shows

the ellipsoid,

tangent plane,

and normal line

in Example 8.

Example 8

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SIGNIFICANCE OF GRADIENT VECTOR

We now summarize the ways

in which the gradient vector is

significant.

Page 110: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

We first consider a function f of

three variables and a point P(x0, y0, z0)

in its domain.

SIGNIFICANCE OF GRADIENT VECTOR

Page 111: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

On the one hand, we know from Theorem 15

that the gradient vector gives

the direction of fastest increase of f.

SIGNIFICANCE OF GRADIENT VECTOR

0 0 0( , , )f x y z

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On the other hand, we know that

is orthogonal to the level

surface S of f through P.

SIGNIFICANCE OF GRADIENT VECTOR

0 0 0( , , )f x y z

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These two properties are quite

compatible intuitively.

As we move away from P on the level surface S, the value of f does not change at all.

SIGNIFICANCE OF GRADIENT VECTOR

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So, it seems reasonable that, if we

move in the perpendicular direction,

we get the maximum increase.

SIGNIFICANCE OF GRADIENT VECTOR

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In like manner, we consider a function f

of two variables and a point P(x0, y0)

in its domain.

SIGNIFICANCE OF GRADIENT VECTOR

Page 116: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

Again, the gradient vector

gives the direction of fastest increase

of f.

SIGNIFICANCE OF GRADIENT VECTOR

0 0( , )f x y

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Also, by considerations similar to our

discussion of tangent planes, it can be

shown that:

is perpendicular to the level curve f(x, y) = k that passes through P.

SIGNIFICANCE OF GRADIENT VECTOR

0 0( , )f x y

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Again, this is intuitively plausible.

The values of f remain constant as we move along the curve.

SIGNIFICANCE OF GRADIENT VECTOR

Page 119: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

Now, we consider a topographical map

of a hill.

Let f(x, y) represent the height above

sea level at a point with coordinates (x, y).

SIGNIFICANCE OF GRADIENT VECTOR

Page 120: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

Then, a curve of steepest ascent can be

drawn by making it perpendicular to all of

the contour lines.

SIGNIFICANCE OF GRADIENT VECTOR

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This phenomenon can also be noticed in

this figure in Section 10.1,

where Lonesome

Creek follows

a curve of steepest

descent.

SIGNIFICANCE OF GRADIENT VECTOR

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Computer algebra systems have commands

that plot sample gradient vectors.

Each gradient vector is plotted

starting at the point (a, b).

SIGNIFICANCE OF GRADIENT VECTOR

( , )f a b

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The figure shows such a plot—called

a gradient vector field—for the function

f(x, y) = x2 – y2

superimposed on

a contour map of f.

GRADIENT VECTOR FIELD

Page 124: PARTIAL DERIVATIVES 11. PARTIAL DERIVATIVES 11.6 Directional Derivatives and the Gradient Vector In this section, we will learn how to find: The rate.

As expected,

the gradient vectors:

Point “uphill”

Are perpendicular to the level curves

SIGNIFICANCE OF GRADIENT VECTOR