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Sec on 4.5
    Op miza on Problems
        V63.0121.011: Calculus I
      Professor Ma hew Leingang
             New York University


            April 18, 2011


.
Announcements
   Quiz 5 on Sec ons
   4.1–4.4 April 28/29
   Final Exam Thursday May
   12, 2:00–3:50pm
   I am teaching Calc II MW
   2:00pm and Calc III TR
   2:00pm both Fall ’11 and
   Spring ’12
Objectives

   Given a problem
   requiring op miza on,
   iden fy the objec ve
   func ons, variables, and
   constraints.
   Solve op miza on
   problems with calculus.
Leading by Example
 Example
 What is the rectangle of fixed perimeter with maximum area?
Leading by Example
 Example
 What is the rectangle of fixed perimeter with maximum area?

 Solu on
Leading by Example
 Example
 What is the rectangle of fixed perimeter with maximum area?

 Solu on
     Draw a rectangle.



                          .
Leading by Example
 Example
 What is the rectangle of fixed perimeter with maximum area?

 Solu on
     Draw a rectangle.



                          .
                                 ℓ
Leading by Example
 Example
 What is the rectangle of fixed perimeter with maximum area?

 Solu on
     Draw a rectangle.

                                         w
                          .
                                 ℓ
Solution
 Solu on (Con nued)

     Let its length be ℓ and its width be w. The objec ve func on is
     area A = ℓw.
Solution
 Solu on (Con nued)

     Let its length be ℓ and its width be w. The objec ve func on is
     area A = ℓw.
     This is a func on of two variables, not one. But the perimeter is
     fixed.
Solution
 Solu on (Con nued)

     This is a func on of two variables, not one. But the perimeter is
     fixed.
                                       p − 2w
     Since p = 2ℓ + 2w, we have ℓ =            , so
                                          2
                     p − 2w      1             1
          A = ℓw =          · w = (p − 2w)(w) = pw − w2
                        2        2             2
Solution
 Solu on (Con nued)

                                      p − 2w
     Since p = 2ℓ + 2w, we have ℓ =          , so
                                         2
                    p − 2w      1             1
         A = ℓw =          · w = (p − 2w)(w) = pw − w2
                       2        2             2
     Now we have A as a func on of w alone (p is constant).
Solution
 Solu on (Con nued)

                                      p − 2w
     Since p = 2ℓ + 2w, we have ℓ =          , so
                                         2
                     p − 2w      1             1
          A = ℓw =          · w = (p − 2w)(w) = pw − w2
                        2        2             2
     Now we have A as a func on of w alone (p is constant).
     The natural domain of this func on is [0, p/2] (we want to
     make sure A(w) ≥ 0).
Solution
 Solu on (Con nued)

                                                 1
     We use the Closed Interval Method for A(w) = pw − w2 on
                                                 2
     [0, p/2].
Solution
 Solu on (Con nued)

                                                 1
     We use the Closed Interval Method for A(w) = pw − w2 on
                                                 2
     [0, p/2].
     At the endpoints, A(0) = A(p/2) = 0.
Solution
 Solu on (Con nued)

                                                 1
     We use the Closed Interval Method for A(w) = pw − w2 on
                                                 2
     [0, p/2].
     At the endpoints, A(0) = A(p/2) = 0.
                                       dA   1
     To find the cri cal points, we find    = p − 2w.
                                       dw 2
Solution
 Solu on (Con nued)

                                         dA  1
     To find the cri cal points, we find      = p − 2w.
                                         dw 2
                                1                  p
     The cri cal points are when p − 2w = 0, or w = .
                                2                  4
Solution
 Solu on (Con nued)

                                         dA  1
     To find the cri cal points, we find      = p − 2w.
                                         dw 2
                                    1                      p
     The cri cal points are when p − 2w = 0, or w = .
                                    2                      4
     Since this is the only cri cal point, it must be the maximum. In
                     p
     this case ℓ = as well.
                     4
Solution
 Solu on (Con nued)

                                         dA  1
     To find the cri cal points, we find      = p − 2w.
                                         dw 2
                                    1                      p
     The cri cal points are when p − 2w = 0, or w = .
                                    2                      4
     Since this is the only cri cal point, it must be the maximum. In
                     p
     this case ℓ = as well.
                     4
     We have a square! The maximal area is A(p/4) = p2 /16.
Outline


 The Text in the Box


 More Examples
Strategies for Problem Solving


 1.   Understand the problem
 2.   Devise a plan
 3.   Carry out the plan
 4.   Review and extend

                                    György Pólya
                               (Hungarian, 1887–1985)
The Text in the Box
  1. Understand the Problem. What is known? What is unknown?
     What are the condi ons?
The Text in the Box
  1. Understand the Problem. What is known? What is unknown?
     What are the condi ons?
  2. Draw a diagram.
The Text in the Box
  1. Understand the Problem. What is known? What is unknown?
     What are the condi ons?
  2. Draw a diagram.
  3. Introduce Nota on.
The Text in the Box
  1. Understand the Problem. What is known? What is unknown?
     What are the condi ons?
  2. Draw a diagram.
  3. Introduce Nota on.
  4. Express the “objec ve func on” Q in terms of the other
     symbols
The Text in the Box
  1. Understand the Problem. What is known? What is unknown?
     What are the condi ons?
  2. Draw a diagram.
  3. Introduce Nota on.
  4. Express the “objec ve func on” Q in terms of the other
     symbols
  5. If Q is a func on of more than one “decision variable”, use the
     given informa on to eliminate all but one of them.
The Text in the Box
  1. Understand the Problem. What is known? What is unknown?
     What are the condi ons?
  2. Draw a diagram.
  3. Introduce Nota on.
  4. Express the “objec ve func on” Q in terms of the other
     symbols
  5. If Q is a func on of more than one “decision variable”, use the
     given informa on to eliminate all but one of them.
  6. Find the absolute maximum (or minimum, depending on the
     problem) of the func on on its domain.
Polya’s Method in Kindergarten
           Name    [_
           Problem Solving Strategy
           Draw a Picture
                  Kathy had a box of 8 crayons.
                  She gave some crayons away.
                  She has 5 left.
                  How many crayons did Kathy give away?

            UNDERSTAND
                                                    •
                  What do you want to find out?
                  Draw a line under the question.



                  You can draw a picture
                  to solve the problem.



                                                              What number do I
                                                              add to 5 to get 8?
                                                                 8 -     = 5
                                                    crayons     5 + 3 = 8

            CHECK
                  Does your answer make sense?
                  Explain.
                                                          What number
                  Draw a picture to solve the problem.   do I add to 3
                  Write how many were given away.         to make 10?

                  I. I had 10 pencils.                             ft   ft           ft   A
                     I gave some away.                         13 ill
                                                               i   :i
                                                                             I
                                                                             '•'   I I
                     I have 3 left. How many                       i?        «
                                                                   11        I
The Closed Interval Method
See Section 4.1
 The Closed Interval Method
 To find the extreme values of a func on f on [a, b], we need to:
      Evaluate f at the endpoints a and b
      Evaluate f at the cri cal points x where either f′ (x) = 0 or f is
      not differen able at x.
      The points with the largest func on value are the global
      maximum points
      The points with the smallest/most nega ve func on value are
      the global minimum points.
The First Derivative Test
See Section 4.3
 Theorem (The First Deriva ve Test)
 Let f be con nuous on (a, b) and c a cri cal point of f in (a, b).
       If f′ changes from nega ve to posi ve at c, then c is a local
       minimum.
       If f′ changes from posi ve to nega ve at c, then c is a local
       maximum.
       If f′ does not change sign at c, then c is not a local extremum.
The First Derivative Test
See Section 4.3

 Corollary

     If f′ < 0 for all x < c and f′ (x) > 0 for all x > c, then c is the
     global minimum of f on (a, b).
     If f′ < 0 for all x > c and f′ (x) > 0 for all x < c, then c is the
     global maximum of f on (a, b).
Recall: The Second Derivative Test
See Section 4.3

 Theorem (The Second Deriva ve Test)
 Let f, f′ , and f′′ be con nuous on [a, b]. Let c be in (a, b) with
 f′ (c) = 0.
        If f′′ (c) < 0, then f(c) is a local maximum.
        If f′′ (c) > 0, then f(c) is a local minimum.
Recall: The Second Derivative Test
See Section 4.3
 Theorem (The Second Deriva ve Test)
 Let f, f′ , and f′′ be con nuous on [a, b]. Let c be in (a, b) with
 f′ (c) = 0.
        If f′′ (c) < 0, then f(c) is a local maximum.
        If f′′ (c) > 0, then f(c) is a local minimum.

 Warning
 If f′′ (c) = 0, the second deriva ve test is inconclusive (this does not
 mean c is neither; we just don’t know yet).
Recall: The Second Derivative Test
See Section 4.3

 Corollary

     If f′ (c) = 0 and f′′ (x) > 0 for all x, then c is the global minimum
     of f
     If f′ (c) = 0 and f′′ (x) < 0 for all x, then c is the global maximum
     of f
Which to use when?
       CIM   1DT     2DT
 Pro




 Con
Which to use when?
       CIM             1DT   2DT
 Pro
       – no need for
       inequali es




 Con
Which to use when?
       CIM                     1DT   2DT
 Pro
       – no need for
       inequali es
       – gets global extrema
       automa cally


 Con
Which to use when?
       CIM                     1DT   2DT
 Pro
       – no need for
       inequali es
       – gets global extrema
       automa cally


 Con
       – only for closed
       bounded intervals
Which to use when?
       CIM                     1DT           2DT
 Pro
       – no need for           – works on
       inequali es             non-closed,
       – gets global extrema   non-bounded
       automa cally            intervals


 Con
       – only for closed
       bounded intervals
Which to use when?
       CIM                     1DT                    2DT
 Pro
       – no need for           – works on
       inequali es             non-closed,
       – gets global extrema   non-bounded
       automa cally            intervals
                               – only one deriva ve

 Con
       – only for closed
       bounded intervals
Which to use when?
       CIM                     1DT                    2DT
 Pro
       – no need for           – works on
       inequali es             non-closed,
       – gets global extrema   non-bounded
       automa cally            intervals
                               – only one deriva ve

 Con
       – only for closed       – Uses inequali es
       bounded intervals
Which to use when?
       CIM                     1DT                    2DT
 Pro
       – no need for           – works on
       inequali es             non-closed,
       – gets global extrema   non-bounded
       automa cally            intervals
                               – only one deriva ve

 Con
       – only for closed       – Uses inequali es
       bounded intervals       – More work at
                               boundary than CIM
Which to use when?
       CIM                     1DT                    2DT
 Pro
       – no need for           – works on             – works on
       inequali es             non-closed,            non-closed,
       – gets global extrema   non-bounded            non-bounded
       automa cally            intervals              intervals
                               – only one deriva ve

 Con
       – only for closed       – Uses inequali es
       bounded intervals       – More work at
                               boundary than CIM
Which to use when?
       CIM                     1DT                    2DT
 Pro
       – no need for           – works on             – works on
       inequali es             non-closed,            non-closed,
       – gets global extrema   non-bounded            non-bounded
       automa cally            intervals              intervals
                               – only one deriva ve   – no need for
                                                      inequali es
 Con
       – only for closed       – Uses inequali es
       bounded intervals       – More work at
                               boundary than CIM
Which to use when?
       CIM                     1DT                    2DT
 Pro
       – no need for           – works on             – works on
       inequali es             non-closed,            non-closed,
       – gets global extrema   non-bounded            non-bounded
       automa cally            intervals              intervals
                               – only one deriva ve   – no need for
                                                      inequali es
 Con
       – only for closed       – Uses inequali es     – More deriva ves
       bounded intervals       – More work at
                               boundary than CIM
Which to use when?
       CIM                     1DT                    2DT
 Pro
       – no need for           – works on             – works on
       inequali es             non-closed,            non-closed,
       – gets global extrema   non-bounded            non-bounded
       automa cally            intervals              intervals
                               – only one deriva ve   – no need for
                                                      inequali es
 Con
       – only for closed       – Uses inequali es     – More deriva ves
       bounded intervals       – More work at         – less conclusive than
                               boundary than CIM      1DT
Which to use when?


   If domain is closed and bounded, use CIM.
   If domain is not closed or not bounded, use 2DT if you like to
   take deriva ves, or 1DT if you like to compare signs.
Outline


 The Text in the Box


 More Examples
Another Example
 Example (The Best Fencing Plan)
 A rectangular plot of farmland will be bounded on one side by a
 river and on the other three sides by a single-strand electric fence.
 With 800m of wire at your disposal, what is the largest area you can
 enclose, and what are its dimensions?
Solution
 Solu on
  1. Everybody understand?
Another Example
 Example (The Best Fencing Plan)
 A rectangular plot of farmland will be bounded on one side by a
 river and on the other three sides by a single-strand electric fence.
 With 800m of wire at your disposal, what is the largest area you can
 enclose, and what are its dimensions?
Another Example
 Example (The Best Fencing Plan)
 A rectangular plot of farmland will be bounded on one side by a
 river and on the other three sides by a single-strand electric fence.
 With 800m of wire at your disposal, what is the largest area you can
 enclose, and what are its dimensions?

     Known: amount of fence used
     Unknown: area enclosed
Another Example
 Example (The Best Fencing Plan)
 A rectangular plot of farmland will be bounded on one side by a
 river and on the other three sides by a single-strand electric fence.
 With 800m of wire at your disposal, what is the largest area you can
 enclose, and what are its dimensions?

     Known: amount of fence used
     Unknown: area enclosed
     Objec ve: maximize area
     Constraint: fixed fence length
Solution
 Solu on
  1. Everybody understand?
Solution
 Solu on
  1. Everybody understand?
  2. Draw a diagram.
Diagram
 A rectangular plot of farmland will be bounded on one side by a
 river and on the other three sides by a single-strand electric fence.
 With 800 m of wire at your disposal, what is the largest area you can
 enclose, and what are its dimensions?




                         .
                                   .
Solution
 Solu on
  1. Everybody understand?
  2. Draw a diagram.
Solution
 Solu on
  1. Everybody understand?
  2. Draw a diagram.
  3. Length and width are ℓ and w. Length of wire used is p.
Diagram
 A rectangular plot of farmland will be bounded on one side by a
 river and on the other three sides by a single-strand electric fence.
 With 800 m of wire at your disposal, what is the largest area you can
 enclose, and what are its dimensions?




                         .
                                   .
Diagram
 A rectangular plot of farmland will be bounded on one side by a
 river and on the other three sides by a single-strand electric fence.
 With 800 m of wire at your disposal, what is the largest area you can
 enclose, and what are its dimensions?
                                  ℓ

                      w
                          .
                                   .
Solution
 Solu on
  1. Everybody understand?
  2. Draw a diagram.
  3. Length and width are ℓ and w. Length of wire used is p.
Solution
 Solu on

  4. Q = area = ℓw.
Solution
 Solu on

  4. Q = area = ℓw.
  5. Since p = ℓ + 2w, we have ℓ = p − 2w and so

                  Q(w) = (p − 2w)(w) = pw − 2w2

    The domain of Q is [0, p/2]
Solution
 Solu on

  4. Q = area = ℓw.
  5. Since p = ℓ + 2w, we have ℓ = p − 2w and so

                  Q(w) = (p − 2w)(w) = pw − 2w2

     The domain of Q is [0, p/2]
     dQ                                  p
  6.     = p − 4w, which is zero when w = .
     dw                                  4
Solution
 Solu on

  7. Q(0) = Q(p/2) = 0, but
                (p)  p    p2   p2
              Q   =p· −2·    =    = 80, 000m2
                4    4    16   8
    so the cri cal point is the absolute maximum.
Solution
 Solu on

  7. Q(0) = Q(p/2) = 0, but
                 (p)  p    p2   p2
               Q   =p· −2·    =    = 80, 000m2
                 4    4    16   8
     so the cri cal point is the absolute maximum.
  8. The dimensions of the op mal rectangle are
                       p                 p
                 w=      = 200 m2 and ℓ = = 400 m2
                       4                 2
Your turn
 Example (The shortest fence)
 A 216m2 rectangular pea patch is to be enclosed by a fence and
 divided into two equal parts by another fence parallel to one of its
 sides. What dimensions for the outer rectangle will require the
 smallest total length of fence? How much fence will be needed?
Your turn
 Example (The shortest fence)
 A 216m2 rectangular pea patch is to be enclosed by a fence and
 divided into two equal parts by another fence parallel to one of its
 sides. What dimensions for the outer rectangle will require the
 smallest total length of fence? How much fence will be needed?

 Solu on
 Let the length and width of the pea patch be ℓ and w. The amount of
 fence needed is f = 2ℓ + 3w. Since ℓw = A, a constant, we have
           A
 f(w) = 2 + 3w. The domain is all posi ve numbers.
           w
Diagram


            w


                .
                        ℓ

          f = 2ℓ + 3w       A = ℓw ≡ 216
Solution (Continued)
                                               2A
  We need to find the minimum value of f(w) =      + 3w on (0, ∞).
                                               w
Solution (Continued)
                                          2A
  We need to find the minimum value of f(w) = + 3w on (0, ∞).
                                           w
                                                  √
              df    2A                              2A
      We have    = − 2 + 3 which is zero when w =      .
              dw    w                                3
Solution (Continued)
                                                 2A
  We need to find the minimum value of f(w) =         + 3w on (0, ∞).
                                                  w
                                                           √
                  df      2A                                  2A
      We have        = − 2 + 3 which is zero when w =            .
                 dw       w                                    3
      Since f′′ (w) = 4Aw−3 , which is posi ve for all posi ve w, the
      cri cal point is a minimum, in fact the global minimum.
Solution (Continued)
                                                2A
  We need to find the minimum value of f(w) =       + 3w on (0, ∞).
                                                w
                                          √
                                              2A
      So the area is minimized when w =          = 12 and
                √                              3
           A       3A
      ℓ= =            = 18.
           w        2
Solution (Continued)
                                               2A
  We need to find the minimum value of f(w) =      + 3w on (0, ∞).
                                               w
                                       √
                                          2A
      So the area is minimized when w =      = 12 and
                √                          3
           A       3A
      ℓ= =            = 18.
           w        2
      The amount of fence needed is
        (√ )            √       √
             2A           3A      2A     √      √
      f           =2·        +3       = 2 6A = 2 6 · 216 = 72m
              3            2       3
Try this one
 Example
 An adver sement consists of a rectangular printed region plus 1 in
 margins on the sides and 1.5 in margins on the top and bo om. If
 the total area of the adver sement is to be 120 in2 , what
 dimensions should the adver sement be to maximize the area of
 the printed region?
Try this one
 Example
 An adver sement consists of a rectangular printed region plus 1 in
 margins on the sides and 1.5 in margins on the top and bo om. If
 the total area of the adver sement is to be 120 in2 , what
 dimensions should the adver sement be to maximize the area of
 the printed region?

 Answer
                                  √         √
 The op mal paper dimensions are 4 5 in by 6 5 in.
Solution of the printed region be x and y,
 Let the dimensions
   P the printed area, and A the paper area. We wish
   to maximize P = xy subject to the constraint that
                                                                  1.5 cm
               A = (x + 2)(y + 3) ≡ 120                           Lorem        ipsum
                                                                  dolor sit amet,
                                                                  consectetur
                                                                  adipiscing      elit.




                                                           1 cm


                                                                                    1 cm
                                     120               y          Nam        dapibus

   Isola ng y in A ≡ 120 gives y =       − 3 which                vehicula     mollis.
                                                                  Proin nec tris que
                                     x+2                          mi. Pellentesque
                                                                  quis       placerat
   yields                                                    .    dolor. Praesent


                 (    )                                           1.5 cm
                120      120x                                        x
            P=x     −3 =      − 3x
                x+2      x+2

   The domain of P is (0, ∞).
Solution (Concluded)
    We want to find the absolute maximum value of P.
    dP (x + 2)(120) − (120x)(1)              240 − 3(x + 2)2
        =                            −3=
    dx              (x + 2)2                     (x + 2)2
    There is a single (posi ve) √ cal point when
                                cri
    (x + 2) = 80 =⇒ x = 4 5 − 2.
           2

                              d2 P   −480
    The second deriva ve is 2 =              , which is nega ve all
                              dx    (x + 2)3
    along the domain of P.              ( √        )
    Hence the unique cri cal point x = 4 5 − 2 cm is the
    absolute maximum of P.
Solution (Concluded)
                                      ( √     )
    Hence the unique cri cal point x = 4 5 − 2 cm is the
    absolute maximum of P.
                                   √
    This means the paper width is 4 5 cm.
                        120     √
    the paper length is √ = 6 5 cm.
                       4 5
Summary
                                Name    [_
                                Problem Solving Strategy
                                Draw a Picture
                                       Kathy had a box of 8 crayons.
                                       She gave some crayons away.

   Remember the checklist              She has 5 left.
                                       How many crayons did Kathy give away?

                                 UNDERSTAND


   Ask yourself: what is the
                                                                         •
                                       What do you want to find out?
                                       Draw a line under the question.


   objec ve?                           You can draw a picture
                                       to solve the problem.

   Remember your
   geometry:                                                             crayons
                                                                                   What number do I
                                                                                   add to 5 to get 8?
                                                                                      8 -
                                                                                     5 + 3 = 8
                                                                                              = 5



       similar triangles         CHECK
                                       Does your answer make sense?

       right triangles                 Explain.
                                                                               What number
                                                                              do I add to 3
                                       Draw a picture to solve the problem.
       trigonometric func ons          Write how many were given away.
                                       I. I had 10 pencils.
                                                                               to make 10?

                                                                                        ft   ft            ft   A
                                          I gave some away.                         13 ill
                                                                                    i   :i
                                                                                                  I
                                                                                                  '•'    I I
                                          I have 3 left. How many                       i?        «
                                                                                        11        I

                                          pencils did I give away?                                I
                                                                                                        H 11
                                                                                                        M i l
                                             ~7                                     U U U U> U U

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Calculus I Optimization Problems

  • 1. Sec on 4.5 Op miza on Problems V63.0121.011: Calculus I Professor Ma hew Leingang New York University April 18, 2011 .
  • 2. Announcements Quiz 5 on Sec ons 4.1–4.4 April 28/29 Final Exam Thursday May 12, 2:00–3:50pm I am teaching Calc II MW 2:00pm and Calc III TR 2:00pm both Fall ’11 and Spring ’12
  • 3. Objectives Given a problem requiring op miza on, iden fy the objec ve func ons, variables, and constraints. Solve op miza on problems with calculus.
  • 4. Leading by Example Example What is the rectangle of fixed perimeter with maximum area?
  • 5. Leading by Example Example What is the rectangle of fixed perimeter with maximum area? Solu on
  • 6. Leading by Example Example What is the rectangle of fixed perimeter with maximum area? Solu on Draw a rectangle. .
  • 7. Leading by Example Example What is the rectangle of fixed perimeter with maximum area? Solu on Draw a rectangle. . ℓ
  • 8. Leading by Example Example What is the rectangle of fixed perimeter with maximum area? Solu on Draw a rectangle. w . ℓ
  • 9. Solution Solu on (Con nued) Let its length be ℓ and its width be w. The objec ve func on is area A = ℓw.
  • 10. Solution Solu on (Con nued) Let its length be ℓ and its width be w. The objec ve func on is area A = ℓw. This is a func on of two variables, not one. But the perimeter is fixed.
  • 11. Solution Solu on (Con nued) This is a func on of two variables, not one. But the perimeter is fixed. p − 2w Since p = 2ℓ + 2w, we have ℓ = , so 2 p − 2w 1 1 A = ℓw = · w = (p − 2w)(w) = pw − w2 2 2 2
  • 12. Solution Solu on (Con nued) p − 2w Since p = 2ℓ + 2w, we have ℓ = , so 2 p − 2w 1 1 A = ℓw = · w = (p − 2w)(w) = pw − w2 2 2 2 Now we have A as a func on of w alone (p is constant).
  • 13. Solution Solu on (Con nued) p − 2w Since p = 2ℓ + 2w, we have ℓ = , so 2 p − 2w 1 1 A = ℓw = · w = (p − 2w)(w) = pw − w2 2 2 2 Now we have A as a func on of w alone (p is constant). The natural domain of this func on is [0, p/2] (we want to make sure A(w) ≥ 0).
  • 14. Solution Solu on (Con nued) 1 We use the Closed Interval Method for A(w) = pw − w2 on 2 [0, p/2].
  • 15. Solution Solu on (Con nued) 1 We use the Closed Interval Method for A(w) = pw − w2 on 2 [0, p/2]. At the endpoints, A(0) = A(p/2) = 0.
  • 16. Solution Solu on (Con nued) 1 We use the Closed Interval Method for A(w) = pw − w2 on 2 [0, p/2]. At the endpoints, A(0) = A(p/2) = 0. dA 1 To find the cri cal points, we find = p − 2w. dw 2
  • 17. Solution Solu on (Con nued) dA 1 To find the cri cal points, we find = p − 2w. dw 2 1 p The cri cal points are when p − 2w = 0, or w = . 2 4
  • 18. Solution Solu on (Con nued) dA 1 To find the cri cal points, we find = p − 2w. dw 2 1 p The cri cal points are when p − 2w = 0, or w = . 2 4 Since this is the only cri cal point, it must be the maximum. In p this case ℓ = as well. 4
  • 19. Solution Solu on (Con nued) dA 1 To find the cri cal points, we find = p − 2w. dw 2 1 p The cri cal points are when p − 2w = 0, or w = . 2 4 Since this is the only cri cal point, it must be the maximum. In p this case ℓ = as well. 4 We have a square! The maximal area is A(p/4) = p2 /16.
  • 20. Outline The Text in the Box More Examples
  • 21. Strategies for Problem Solving 1. Understand the problem 2. Devise a plan 3. Carry out the plan 4. Review and extend György Pólya (Hungarian, 1887–1985)
  • 22. The Text in the Box 1. Understand the Problem. What is known? What is unknown? What are the condi ons?
  • 23. The Text in the Box 1. Understand the Problem. What is known? What is unknown? What are the condi ons? 2. Draw a diagram.
  • 24. The Text in the Box 1. Understand the Problem. What is known? What is unknown? What are the condi ons? 2. Draw a diagram. 3. Introduce Nota on.
  • 25. The Text in the Box 1. Understand the Problem. What is known? What is unknown? What are the condi ons? 2. Draw a diagram. 3. Introduce Nota on. 4. Express the “objec ve func on” Q in terms of the other symbols
  • 26. The Text in the Box 1. Understand the Problem. What is known? What is unknown? What are the condi ons? 2. Draw a diagram. 3. Introduce Nota on. 4. Express the “objec ve func on” Q in terms of the other symbols 5. If Q is a func on of more than one “decision variable”, use the given informa on to eliminate all but one of them.
  • 27. The Text in the Box 1. Understand the Problem. What is known? What is unknown? What are the condi ons? 2. Draw a diagram. 3. Introduce Nota on. 4. Express the “objec ve func on” Q in terms of the other symbols 5. If Q is a func on of more than one “decision variable”, use the given informa on to eliminate all but one of them. 6. Find the absolute maximum (or minimum, depending on the problem) of the func on on its domain.
  • 28. Polya’s Method in Kindergarten Name [_ Problem Solving Strategy Draw a Picture Kathy had a box of 8 crayons. She gave some crayons away. She has 5 left. How many crayons did Kathy give away? UNDERSTAND • What do you want to find out? Draw a line under the question. You can draw a picture to solve the problem. What number do I add to 5 to get 8? 8 - = 5 crayons 5 + 3 = 8 CHECK Does your answer make sense? Explain. What number Draw a picture to solve the problem. do I add to 3 Write how many were given away. to make 10? I. I had 10 pencils. ft ft ft A I gave some away. 13 ill i :i I '•' I I I have 3 left. How many i? « 11 I
  • 29. The Closed Interval Method See Section 4.1 The Closed Interval Method To find the extreme values of a func on f on [a, b], we need to: Evaluate f at the endpoints a and b Evaluate f at the cri cal points x where either f′ (x) = 0 or f is not differen able at x. The points with the largest func on value are the global maximum points The points with the smallest/most nega ve func on value are the global minimum points.
  • 30. The First Derivative Test See Section 4.3 Theorem (The First Deriva ve Test) Let f be con nuous on (a, b) and c a cri cal point of f in (a, b). If f′ changes from nega ve to posi ve at c, then c is a local minimum. If f′ changes from posi ve to nega ve at c, then c is a local maximum. If f′ does not change sign at c, then c is not a local extremum.
  • 31. The First Derivative Test See Section 4.3 Corollary If f′ < 0 for all x < c and f′ (x) > 0 for all x > c, then c is the global minimum of f on (a, b). If f′ < 0 for all x > c and f′ (x) > 0 for all x < c, then c is the global maximum of f on (a, b).
  • 32. Recall: The Second Derivative Test See Section 4.3 Theorem (The Second Deriva ve Test) Let f, f′ , and f′′ be con nuous on [a, b]. Let c be in (a, b) with f′ (c) = 0. If f′′ (c) < 0, then f(c) is a local maximum. If f′′ (c) > 0, then f(c) is a local minimum.
  • 33. Recall: The Second Derivative Test See Section 4.3 Theorem (The Second Deriva ve Test) Let f, f′ , and f′′ be con nuous on [a, b]. Let c be in (a, b) with f′ (c) = 0. If f′′ (c) < 0, then f(c) is a local maximum. If f′′ (c) > 0, then f(c) is a local minimum. Warning If f′′ (c) = 0, the second deriva ve test is inconclusive (this does not mean c is neither; we just don’t know yet).
  • 34. Recall: The Second Derivative Test See Section 4.3 Corollary If f′ (c) = 0 and f′′ (x) > 0 for all x, then c is the global minimum of f If f′ (c) = 0 and f′′ (x) < 0 for all x, then c is the global maximum of f
  • 35. Which to use when? CIM 1DT 2DT Pro Con
  • 36. Which to use when? CIM 1DT 2DT Pro – no need for inequali es Con
  • 37. Which to use when? CIM 1DT 2DT Pro – no need for inequali es – gets global extrema automa cally Con
  • 38. Which to use when? CIM 1DT 2DT Pro – no need for inequali es – gets global extrema automa cally Con – only for closed bounded intervals
  • 39. Which to use when? CIM 1DT 2DT Pro – no need for – works on inequali es non-closed, – gets global extrema non-bounded automa cally intervals Con – only for closed bounded intervals
  • 40. Which to use when? CIM 1DT 2DT Pro – no need for – works on inequali es non-closed, – gets global extrema non-bounded automa cally intervals – only one deriva ve Con – only for closed bounded intervals
  • 41. Which to use when? CIM 1DT 2DT Pro – no need for – works on inequali es non-closed, – gets global extrema non-bounded automa cally intervals – only one deriva ve Con – only for closed – Uses inequali es bounded intervals
  • 42. Which to use when? CIM 1DT 2DT Pro – no need for – works on inequali es non-closed, – gets global extrema non-bounded automa cally intervals – only one deriva ve Con – only for closed – Uses inequali es bounded intervals – More work at boundary than CIM
  • 43. Which to use when? CIM 1DT 2DT Pro – no need for – works on – works on inequali es non-closed, non-closed, – gets global extrema non-bounded non-bounded automa cally intervals intervals – only one deriva ve Con – only for closed – Uses inequali es bounded intervals – More work at boundary than CIM
  • 44. Which to use when? CIM 1DT 2DT Pro – no need for – works on – works on inequali es non-closed, non-closed, – gets global extrema non-bounded non-bounded automa cally intervals intervals – only one deriva ve – no need for inequali es Con – only for closed – Uses inequali es bounded intervals – More work at boundary than CIM
  • 45. Which to use when? CIM 1DT 2DT Pro – no need for – works on – works on inequali es non-closed, non-closed, – gets global extrema non-bounded non-bounded automa cally intervals intervals – only one deriva ve – no need for inequali es Con – only for closed – Uses inequali es – More deriva ves bounded intervals – More work at boundary than CIM
  • 46. Which to use when? CIM 1DT 2DT Pro – no need for – works on – works on inequali es non-closed, non-closed, – gets global extrema non-bounded non-bounded automa cally intervals intervals – only one deriva ve – no need for inequali es Con – only for closed – Uses inequali es – More deriva ves bounded intervals – More work at – less conclusive than boundary than CIM 1DT
  • 47. Which to use when? If domain is closed and bounded, use CIM. If domain is not closed or not bounded, use 2DT if you like to take deriva ves, or 1DT if you like to compare signs.
  • 48. Outline The Text in the Box More Examples
  • 49. Another Example Example (The Best Fencing Plan) A rectangular plot of farmland will be bounded on one side by a river and on the other three sides by a single-strand electric fence. With 800m of wire at your disposal, what is the largest area you can enclose, and what are its dimensions?
  • 50. Solution Solu on 1. Everybody understand?
  • 51. Another Example Example (The Best Fencing Plan) A rectangular plot of farmland will be bounded on one side by a river and on the other three sides by a single-strand electric fence. With 800m of wire at your disposal, what is the largest area you can enclose, and what are its dimensions?
  • 52. Another Example Example (The Best Fencing Plan) A rectangular plot of farmland will be bounded on one side by a river and on the other three sides by a single-strand electric fence. With 800m of wire at your disposal, what is the largest area you can enclose, and what are its dimensions? Known: amount of fence used Unknown: area enclosed
  • 53. Another Example Example (The Best Fencing Plan) A rectangular plot of farmland will be bounded on one side by a river and on the other three sides by a single-strand electric fence. With 800m of wire at your disposal, what is the largest area you can enclose, and what are its dimensions? Known: amount of fence used Unknown: area enclosed Objec ve: maximize area Constraint: fixed fence length
  • 54. Solution Solu on 1. Everybody understand?
  • 55. Solution Solu on 1. Everybody understand? 2. Draw a diagram.
  • 56. Diagram A rectangular plot of farmland will be bounded on one side by a river and on the other three sides by a single-strand electric fence. With 800 m of wire at your disposal, what is the largest area you can enclose, and what are its dimensions? . .
  • 57. Solution Solu on 1. Everybody understand? 2. Draw a diagram.
  • 58. Solution Solu on 1. Everybody understand? 2. Draw a diagram. 3. Length and width are ℓ and w. Length of wire used is p.
  • 59. Diagram A rectangular plot of farmland will be bounded on one side by a river and on the other three sides by a single-strand electric fence. With 800 m of wire at your disposal, what is the largest area you can enclose, and what are its dimensions? . .
  • 60. Diagram A rectangular plot of farmland will be bounded on one side by a river and on the other three sides by a single-strand electric fence. With 800 m of wire at your disposal, what is the largest area you can enclose, and what are its dimensions? ℓ w . .
  • 61. Solution Solu on 1. Everybody understand? 2. Draw a diagram. 3. Length and width are ℓ and w. Length of wire used is p.
  • 62. Solution Solu on 4. Q = area = ℓw.
  • 63. Solution Solu on 4. Q = area = ℓw. 5. Since p = ℓ + 2w, we have ℓ = p − 2w and so Q(w) = (p − 2w)(w) = pw − 2w2 The domain of Q is [0, p/2]
  • 64. Solution Solu on 4. Q = area = ℓw. 5. Since p = ℓ + 2w, we have ℓ = p − 2w and so Q(w) = (p − 2w)(w) = pw − 2w2 The domain of Q is [0, p/2] dQ p 6. = p − 4w, which is zero when w = . dw 4
  • 65. Solution Solu on 7. Q(0) = Q(p/2) = 0, but (p) p p2 p2 Q =p· −2· = = 80, 000m2 4 4 16 8 so the cri cal point is the absolute maximum.
  • 66. Solution Solu on 7. Q(0) = Q(p/2) = 0, but (p) p p2 p2 Q =p· −2· = = 80, 000m2 4 4 16 8 so the cri cal point is the absolute maximum. 8. The dimensions of the op mal rectangle are p p w= = 200 m2 and ℓ = = 400 m2 4 2
  • 67. Your turn Example (The shortest fence) A 216m2 rectangular pea patch is to be enclosed by a fence and divided into two equal parts by another fence parallel to one of its sides. What dimensions for the outer rectangle will require the smallest total length of fence? How much fence will be needed?
  • 68. Your turn Example (The shortest fence) A 216m2 rectangular pea patch is to be enclosed by a fence and divided into two equal parts by another fence parallel to one of its sides. What dimensions for the outer rectangle will require the smallest total length of fence? How much fence will be needed? Solu on Let the length and width of the pea patch be ℓ and w. The amount of fence needed is f = 2ℓ + 3w. Since ℓw = A, a constant, we have A f(w) = 2 + 3w. The domain is all posi ve numbers. w
  • 69. Diagram w . ℓ f = 2ℓ + 3w A = ℓw ≡ 216
  • 70. Solution (Continued) 2A We need to find the minimum value of f(w) = + 3w on (0, ∞). w
  • 71. Solution (Continued) 2A We need to find the minimum value of f(w) = + 3w on (0, ∞). w √ df 2A 2A We have = − 2 + 3 which is zero when w = . dw w 3
  • 72. Solution (Continued) 2A We need to find the minimum value of f(w) = + 3w on (0, ∞). w √ df 2A 2A We have = − 2 + 3 which is zero when w = . dw w 3 Since f′′ (w) = 4Aw−3 , which is posi ve for all posi ve w, the cri cal point is a minimum, in fact the global minimum.
  • 73. Solution (Continued) 2A We need to find the minimum value of f(w) = + 3w on (0, ∞). w √ 2A So the area is minimized when w = = 12 and √ 3 A 3A ℓ= = = 18. w 2
  • 74. Solution (Continued) 2A We need to find the minimum value of f(w) = + 3w on (0, ∞). w √ 2A So the area is minimized when w = = 12 and √ 3 A 3A ℓ= = = 18. w 2 The amount of fence needed is (√ ) √ √ 2A 3A 2A √ √ f =2· +3 = 2 6A = 2 6 · 216 = 72m 3 2 3
  • 75. Try this one Example An adver sement consists of a rectangular printed region plus 1 in margins on the sides and 1.5 in margins on the top and bo om. If the total area of the adver sement is to be 120 in2 , what dimensions should the adver sement be to maximize the area of the printed region?
  • 76. Try this one Example An adver sement consists of a rectangular printed region plus 1 in margins on the sides and 1.5 in margins on the top and bo om. If the total area of the adver sement is to be 120 in2 , what dimensions should the adver sement be to maximize the area of the printed region? Answer √ √ The op mal paper dimensions are 4 5 in by 6 5 in.
  • 77. Solution of the printed region be x and y, Let the dimensions P the printed area, and A the paper area. We wish to maximize P = xy subject to the constraint that 1.5 cm A = (x + 2)(y + 3) ≡ 120 Lorem ipsum dolor sit amet, consectetur adipiscing elit. 1 cm 1 cm 120 y Nam dapibus Isola ng y in A ≡ 120 gives y = − 3 which vehicula mollis. Proin nec tris que x+2 mi. Pellentesque quis placerat yields . dolor. Praesent ( ) 1.5 cm 120 120x x P=x −3 = − 3x x+2 x+2 The domain of P is (0, ∞).
  • 78. Solution (Concluded) We want to find the absolute maximum value of P. dP (x + 2)(120) − (120x)(1) 240 − 3(x + 2)2 = −3= dx (x + 2)2 (x + 2)2 There is a single (posi ve) √ cal point when cri (x + 2) = 80 =⇒ x = 4 5 − 2. 2 d2 P −480 The second deriva ve is 2 = , which is nega ve all dx (x + 2)3 along the domain of P. ( √ ) Hence the unique cri cal point x = 4 5 − 2 cm is the absolute maximum of P.
  • 79. Solution (Concluded) ( √ ) Hence the unique cri cal point x = 4 5 − 2 cm is the absolute maximum of P. √ This means the paper width is 4 5 cm. 120 √ the paper length is √ = 6 5 cm. 4 5
  • 80. Summary Name [_ Problem Solving Strategy Draw a Picture Kathy had a box of 8 crayons. She gave some crayons away. Remember the checklist She has 5 left. How many crayons did Kathy give away? UNDERSTAND Ask yourself: what is the • What do you want to find out? Draw a line under the question. objec ve? You can draw a picture to solve the problem. Remember your geometry: crayons What number do I add to 5 to get 8? 8 - 5 + 3 = 8 = 5 similar triangles CHECK Does your answer make sense? right triangles Explain. What number do I add to 3 Draw a picture to solve the problem. trigonometric func ons Write how many were given away. I. I had 10 pencils. to make 10? ft ft ft A I gave some away. 13 ill i :i I '•' I I I have 3 left. How many i? « 11 I pencils did I give away? I H 11 M i l ~7 U U U U> U U