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Vector Calculus CHAPTER 9.5 ~ 9.9
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Ch9.5~9.9_2 Contents 9.5 Directional Derivatives 9.5 Directional Derivatives 9.6 Tangent Planes and Normal Lines 9.6 Tangent Planes and Normal Lines 9.7 Divergence and Curl 9.7 Divergence and Curl 9.8 Lines Integrals 9.8 Lines Integrals 9.9 Independence of Path 9.9 Independence of Path
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Ch9.5~9.9_3 9.5 Directional Derivative Introduction See Fig 9.26.
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Ch9.5~9.9_4 The Gradient of a Function Define the vector differential operator as then (1) (2) are the gradients of the functions.
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Ch9.5~9.9_5 Example 1 Compute Solution
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Ch9.5~9.9_6 Example 2 If F(x, y, z) = xy 2 + 3x 2 – z 3, find the gradient at (2, –1, 4). Solution
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Ch9.5~9.9_7 The directional derivative of z = f(x, y) in the direction of a unit vector u = cos i + sin j is (4) provided the limit exists. DEFINITION 9.5 Directional Derivatives
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Ch9.5~9.9_8 Fig 9.27
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Ch9.5~9.9_9 Proof Let x, y and be fixed, then g(t) = f(x + t cos , y + t sin ) is a function of one variable. If z = f(x, y) is a differentiable function of x and y, and u = cos i + sin j, then (5) THEOREM 9.6 Computing a Directional Derivative
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Ch9.5~9.9_10 First Second by chain rule
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Ch9.5~9.9_11 Here the subscripts 1 and 2 refer to partial derivatives of f(x + t cos , y + t sin ) w.s.t. (x + t cos ) and (y + t sin ). When t = 0, x + t cos and y + t sin are simply x and y, then (7) becomes (8) Comparing (4), (6), (8), we have
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Ch9.5~9.9_12 Example 3 Find the directional derivative of f(x, y) = 2x 2 y 3 + 6xy at (1, 1) in the direction of a unit vector whose angle with the positive x-axis is /6. Solution
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Ch9.5~9.9_13 Example 3 (2) Now, = /6, u = cos i + sin j becomes Then
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Ch9.5~9.9_14 Example 4 Consider the plane perpendicular to xy-plane and passes through P(2, 1), Q(3, 2). What is the slope of the tangent line to the curve of intersection of this plane and f(x, y) = 4x 2 + y 2 at (2, 1, 17) in the direction of Q. Solution We want D u f(2, 1) in the direction given by, and form a unit vector
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Ch9.5~9.9_15 Example 4 (2) Now then the requested slope is
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Ch9.5~9.9_16 Functions of Three Variables where , , are the direction angles of the vector u measured relative to the positive x, y, z axis. But as before, we can show that (9)
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Ch9.5~9.9_17 Since u is a unit vector, from (10) in Sec 7.3 that In addition, (9) shows
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Ch9.5~9.9_18 Example 5 Find the directional derivative of F(x, y, z) = xy 2 – 4x 2 y + z 2 at (1, –1, 2) in the direction 6i + 2j + 3k. Solution Since we have
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Ch9.5~9.9_19 Example 5 (2) Since ‖ 6i + 2j + 3k ‖ = 7, then u = (6/7)i + (2/7)j + (3/7)k is a unit vector. It follows from (9) that
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Ch9.5~9.9_20 Maximum Value of the Direction Derivative From the fact that where is the angle between and u. Because then
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Ch9.5~9.9_21 In other words, The maximum value of the direction derivative is and it occurs when u has the same direction as (when cos = 1), (10) and The minimum value of the direction derivative is and it occurs when u has opposite direction as (when cos = −1) (11)
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Ch9.5~9.9_22 Example 6 In Example 5, the maximum value of the directional derivative at (1, −1, 2) is and the minimum value is.
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Ch9.5~9.9_23 Gradient points in Direction of Most Rapid Increase of f Put another way, (10) and (11) state The gradient vector points in the direction in which f increase most rapidly, whereas points in the direction of the most rapid decrease of f.
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Ch9.5~9.9_24 Example 7 Each year in L.A. there is a bicycle race up to the top of a hill by a road known to be the steepest in the city. To understand why a bicyclist with a modicum of sanity will zigzag up the road, let us suppose the graph of shown in Fig 9.28(a) is a mathematical model of the hill. The gradient of f is
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Ch9.5~9.9_25 Example 7 (2) where r = – xi – yj is a vector pointing to the center of circular base. Thus the steepest ascent up the hill is a straight road whose projection in the xy-plane is a radius of the circular base. Since a bicyclist will zigzag a direction u other than to reduce this component. See Fig 9.28.
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Ch9.5~9.9_26 Fig 9.28
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Ch9.5~9.9_27 Example 8 The temperature in a rectangular box is approximated by If a mosquito is located at ( ½, 1, 1), in which the direction should it fly up to cool off as rapidly as possible?
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Ch9.5~9.9_28 Example 8 (2) Solution The gradient of T is Therefore, To cool off most rapidly, it should fly in the direction −¼k, that is, it should dive for the floor of the box, where the temperature is T(x, y, 0) = 0
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Ch9.5~9.9_29 9.6 Tangent Plane and Normal Lines Geometric Interpretation of the Gradient : Functions of Two Variables Suppose f(x, y) = c is the level curve of z = f(x, y) passes through P(x 0, y 0 ), that is, f(x 0, y 0 ) = c. If x = g(t), y = h(t) such that x 0 = g(t 0 ), y 0 = h(t 0 ), then the derivative of f w.s.t. t is (1) When we introduce
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Ch9.5~9.9_30 then (1) becomes When at t = t 0, we have (2) Thus, if, is orthogonal to at P(x 0, y 0 ). See Fig 9.30.
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Ch9.5~9.9_31 Fig 9.30
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Ch9.5~9.9_32 Example 1 Find the level curves of f(x, y) = −x 2 + y 2 passing through (2, 3). Graph the gradient at the point. Solution Since f(2, 3) = 5, we have −x 2 + y 2 = 5. Now See Fig 9.31.
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Ch9.5~9.9_33 Fig 9.31
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Ch9.5~9.9_34 Geometric Interpretation of the Gradient : Functions of Three Variables Similar concepts to two variables, the derivative of F(f(t), g(t), h(t)) = c implies (3) In particular, at t = t 0, (3) is (4) See Fig 9.32.
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Ch9.5~9.9_35 Fig 9.32
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Ch9.5~9.9_36 Example 2 Find the level surfaces of F(x, y, z) = x 2 + y 2 + z 2 passing through (1, 1, 1). Graph the gradient at the point. Solution Since F(1, 1, 1) = 3 , then x 2 + y 2 + z 2 = 3 See Fig 9.33.
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Ch9.5~9.9_37 Fig 9.33
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Ch9.5~9.9_38 Let P(x 0, y 0, z 0 ) is a point on the graph of F(x, y, z) = c, where F is not 0. The tangent plane at P is a plane through P and is perpendicular to F evaluated at P. DEFINITION 9.6 Tangent Plane
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Ch9.5~9.9_39 That is,. See Fig 9.34. Let P(x 0, y 0, z 0 ) is a point on the graph of F(x, y, z) = c, where F is not 0. Then an equation of this tangent plane at P is F x (x 0, y 0, z 0 )(x – x 0 ) + F y (x 0, y 0, z 0 )(y – y 0 ) + F z (x 0, y 0, z 0 )(z – z 0 ) = 0 (5) THEOREM 2.1 Criterion for an Extra Differential
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Ch9.5~9.9_40 Fig 9.34
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Ch9.5~9.9_41 Example 3 Find the equation of the tangent plane to x 2 – 4y 2 + z 2 = 16 at (2, 1, 4). Solution F(2, 1, 4) = 16, the did graph passes (2, 1, 4). Now F x (x, y, z) = 2x, F y (x, y, z) = – 8y, F z (x, y, z)= 2z, then From (5) we have the equation: 4(x – 2) – 8(y – 1) + 8(z – 4) = 0 or x – 2y + 2z = 8.
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Ch9.5~9.9_42 Surfaces Given by z = f(x, y) When the equation is given by z = f(x, y), then we can set F = z – f(x, y) or F = f(x, y) – z.
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Ch9.5~9.9_43 Example 4 Find the equation of the tangent plane to z = ½x 2 + ½ y 2 + 4 at (1, –1, 5). Solution Let F(x, y, z) = ½x 2 + ½ y 2 – z + 4. This graph did pass (1, –1, 5), since F(1, –1, 5) = 0. Now F x = x, F y = y, F z = –1, then From (5), the desired equation is (x + 1) – (y – 1) – (z – 5) = 0 or –x + y + z = 7
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Ch9.5~9.9_44 Fig 9.35
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Ch9.5~9.9_45 Normal Line Let P(x 0, y 0, z 0 ) is on the graph of F(x, y, z) = c, where F 0. The line containing P that is parallel to F(x 0, y 0, z 0 ) is called the normal line to the surface at P.
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Ch9.5~9.9_46 Example 5 Find parametric equations for the normal line to the surface in Example 4 at (1, –1, 5). Solution A direction vector for the normal line at (1, –1, 5) is F(1, –1, 5) = i – j – k then the desired equations are x = 1 + t, y = –1– t, z = 5 – t
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Ch9.5~9.9_47 9.7 Divergence and Curl Vector Functions F(x, y) = P(x, y)i+ Q(x, y)j F(x, y, z) = P(x, y, z)i + Q(x, y, z)j + R(x, y, z)k
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Ch9.5~9.9_48 Fig 9.37 (a) ~ (b)
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Ch9.5~9.9_49 Fig 9.37 (c) ~ (d)
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Ch9.5~9.9_50 Example 1 Graph F(x, y) = – yi + xj Solution Since let For and k = 2, we have (i) x 2 + y 2 = 1 : at (1, 0), (0, 1), (–1, 0), (0, –1), the corresponding vectors j, –i,– j, i have the same length 1.
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Ch9.5~9.9_51 Example 1 (2) (ii) x 2 + y 2 = 2 : at (1, 1), (–1, 1), (–1, –1), (1, –1), the corresponding vectors – i + j, – i – j, i – j, i + j have the same length. (iii) x 2 + y 2 = 4 : at (2, 0), (0, 2), (–2, 0), (0, –2), the corresponding vectors 2j, –2i, –2j, 2i have the same length 2. See Fig 9.38.
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Ch9.5~9.9_52 Example 1 (3)
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Ch9.5~9.9_53 In practice, we usually use this form: (1) The curl of a vector field F = Pi + Qj + Rk is the vector field DEFINITION 9.7 Curl
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Ch9.5~9.9_54 Observe that we can also use this form: (4) The divergence of a vector field F = Pi + Qj + Rk is the scalar function DEFINITION 9.8 Divergence
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Ch9.5~9.9_55 Example 2 If F = (x 2 y 3 – z 4 )i + 4x 5 y 2 zj – y 4 z 6 k, find curl F and div F 。 Solution
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Ch9.5~9.9_56 Example 2 (2)
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Ch9.5~9.9_57 Please prove If f is a scalar function with continuous second partial derivatives, then (5) If F is a vector field with continuous second partial derivatives, then (6)
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Ch9.5~9.9_58 Physical Interpretations See Fig 9.41. The curl F is a measure of tendency of the fluid to turn the device about its vertical axis w. If curl F = 0, then the flow of the fluid is said to be irrotational. Also see Fig 9.42.
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Ch9.5~9.9_59 Fig 9.41
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Ch9.5~9.9_60 Fig 9.42
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Ch9.5~9.9_61 From definition 9.8 we saw that div F near a point is the flux per unit volume. (i) If div F(P) > 0: source for F. (ii) If div F(P) < 0: sink for F. (iii) If div F(P) = 0: no sources or sinks near P. Besides, If F = 0: incompressible or solenoidal. See Fig 9.43.
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Ch9.5~9.9_62 Fig 9.43
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Ch9.5~9.9_63 9.8 Line Integrals Terminology In Fig 9.46, we show four new terminologies. Fig 9.46.
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Ch9.5~9.9_64 Line Integral in the Plane If C is a smooth curve defined by x = f(t), y = g(t), a t b. Since dx = f’(t) dt, dy = g’(t) dt, and (which is called the differential of arc length), then we have (1) (2) (3)
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Ch9.5~9.9_65 Example 1 Evaluate (a) (b) (c) on the ¼ circle C defined by Fig 9.47:
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Ch9.5~9.9_66 Example 1 (2) Solution (a)
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Ch9.5~9.9_67 Example 1 (3) (b)
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Ch9.5~9.9_68 Example 1 (4) (c)
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Ch9.5~9.9_69 Method of Evaluation If the curve C is defined by y = f(x), a x b, then we have dy = f ’(x) dx and Thus (4) (5) (6) Note: If C is composed of two smooth curves C 1 and C 2, then
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Ch9.5~9.9_70 Notation: In many applications, we have we usually write as or(7) A line integral along a close curve:
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Ch9.5~9.9_71 Example 2 Evaluate where C: Solution See Fig 9.48. Using dy = 3x 2 dx,
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Ch9.5~9.9_72 Fig 9.48
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Ch9.5~9.9_73 Example 3 Evaluate, where C: Solution
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Ch9.5~9.9_74 Example 4 Evaluate, where C is shown in Fig 9.49(a). Solution Since C is piecewise smooth, we express the integral as See Fig 9.49(b).
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Ch9.5~9.9_75 Fig 9.49
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Ch9.5~9.9_76 Example 4 (2) (i) On C 1, we use x as a parameter. Since y = 0, dy = 0, (ii) On C 2, we use y as a parameter. Since x = 2, dx = 0,
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Ch9.5~9.9_77 (iii) On C 3, we use x as a parameter. Since y = x 2, dy = 2x dx, Hence, Example 4 (3)
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Ch9.5~9.9_78 Note: See Fig 9.50, where −C denote the curve having opposite orientation, then Equivalently, (8) For example, in (a) of Example 1,
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Ch9.5~9.9_79 Fig 9.50
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Ch9.5~9.9_80 Lines Integrals in Space
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Ch9.5~9.9_81 Method to Evaluate Line Integral in Space If C is defined by then we have Similar method can be used for
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Ch9.5~9.9_82 and We usually use the following form
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Ch9.5~9.9_83 Example 5 Evaluate, where C is Solution Since we have we get
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Ch9.5~9.9_84 Another Notation Let r(t) = f(t)i + g(t)j, then dr(t)/dt = f’(t)i + g’(t)j = (dx/dt)i + (dy/dt)j Now if F(x, y) = P(x, y)i + Q(x, y)j thus (10) When on a space (11) where F(x, y, z) = Pi + Qj + Rk dr = dx i + dy j + dz k,
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Ch9.5~9.9_85 Work If A and B are the points (f(a), g(a)) and (f(b), g(b)). Suppose C is divided into n subarcs of lengths ∆s k. On each subarc F(x * k, y * k ) is a constant force. See Fig 5.91(a). If, as shown in Figure 9.51(b), the length of the vector is an approximation to the length of the kth subarc, then the approximate work done by F over the subarc is
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Ch9.5~9.9_86 The work done by F along C is as the line integral or(12) Since we let dr = Tds, where T = dr / ds is a unit tangent to C. (13) The work done by a force F along a curve C is due entirely to the tangential component of F.
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Ch9.5~9.9_87 Fig 9.51
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Ch9.5~9.9_88 Example 6 Find the work done by (a) F(x, y) = xi + yj (b) F = (¾ i + ½ j) along the curve C traced by r(t) = cos ti + sin tj, from t = 0 to t = . Solution (a) dr(t) = (− sin ti + cos tj) dt, then
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Ch9.5~9.9_89 Fig 9.52
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Ch9.5~9.9_90 Example 6 (2) (b) See Fig 9.53.
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Ch9.5~9.9_91 Fig 9.53
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Ch9.5~9.9_92 Note: Let dr = T ds, where T = dr / ds, then Circulation of F around C Circulation
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Ch9.5~9.9_93 Fig 9.54
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Ch9.5~9.9_94 9.9 Independence of Path Differential For two variables: For three variables:
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Ch9.5~9.9_95 Path Independence A line integral whose value is the same for every curve or path connecting A and B.
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Ch9.5~9.9_96 Example 1 has the same value on each path between (0, 0) and (1, 1) shown in Fig 9.65. Recall that
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Ch9.5~9.9_97 Fig 9.65
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Ch9.5~9.9_98 Suppose there exists a (x, y) such that d = Pdx + Qdy, that is, Pdx + Qdy is an exact differential. Then depends on only the endpoints A and B, and THEOREM 9.8 Fundamental Theorem for Line Integrals
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Ch9.5~9.9_99 THEOREM 9.8 Proof Let C be a smooth curve: The endpoints are (f(a), g(a)) and (f(b), g(b)), then
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Ch9.5~9.9_100 Two facts (i) This is also valid for piecewise smooth curves. (ii) The converse of this theorem is also true. is independent of path iff P dx + Q dy is an exact differential.(1) Notation for a line integral independent of path:
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Ch9.5~9.9_101 Example 2 Since d(xy) = y dx + x dy, y dx + x dy is an exact differential. Hence is independent of path. Especially, if the endpoints are (0, 0) and (1, 1), we have
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Ch9.5~9.9_102 Simply Connected Region in the Plane Refer to Fig 9.66. Besides, a simply connected region is open if it contains no boundary points.
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Ch9.5~9.9_103 Fig 9.66
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Ch9.5~9.9_104 Let P and Q have continuous first partial derivatives in an open simply connected region. Then is independent of the path C if and only if for all (x, y) in the region. THEOREM 9.9 Test for Path Independence
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Ch9.5~9.9_105 Example 3 Show that is not independent of path C. Solution We have P = x 2 – 2y 3 and Q = x + 5y, then and Since, we complete the proof.
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Ch9.5~9.9_106 Example 4 Show that is independent of any path between (−1, 0) and (3, 4). Evaluate. Solution We have P = y 2 – 6xy + 6 and Q = 2xy – 3x 2, then and This is an exact differential.
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Ch9.5~9.9_107 Example 4 (2) Suppose there exists a such that Integrating the first, we have then we have, g(y) = C.
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Ch9.5~9.9_108 Example 4 (3) Since d(y 2 x – 3x2y + 6x + C) = d(y2x – 3x2y + 6x), we simply use then
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Ch9.5~9.9_109 Another Approach We know y = x + 1 is one of the paths connecting (−1, 0) and (3, 4). Then
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Ch9.5~9.9_110 Conservative Vector Fields If a vector field is independent of path, we have where F = Pi + Qj is a vector field and In other words, F is the gradient of . Since F = , F is said to be a gradient field and the is called the potential function of F. Besides, we all call this kind of vector field to be conservative.
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Ch9.5~9.9_111 Example 5 Show that F = (y 2 + 5)i + (2xy – 8)j is a gradient field. Find a potential function for F. Solution Since then we have
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Ch9.5~9.9_112 Let P, Q, and R have continuous first partial derivatives in an open simply connected region of space. Then is independent of the path C if and only if THEOREM 9.10 Test for Path Independence
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Ch9.5~9.9_113 Example 6 Show that is independent of path between (1, 1, 1) and (2, 1, 4). Solution Since it is independent of path.
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Ch9.5~9.9_114 Example 6 (2) Suppose there exists a function , such that Integrating the first w.s.t. x, then It is the fact thus
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Ch9.5~9.9_115 Example 6 (3) Now and we have and h(z) = – z + C. Disregarding C, we get (2)
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Ch9.5~9.9_116 Example 6 (4) Finally,
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Ch9.5~9.9_117 From example 6, we know that F is a conservative vector field, and can be written as F = . Remember in Sec 9.7, we have = 0, thus F is a conservative vector field iff F = 0
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