3 Copyright © Cengage Learning. All rights reserved. Applications of Differentiation.

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3 Copyright © Cengage Learning. All rights reserved. Applications of Differentiation

Differentials Copyright © Cengage Learning. All rights reserved. 3.9

3 Understand the concept of a tangent line approximation. Compare the value of the differential, dy, with the actual change in y, Δy. Estimate a propagated error using a differential. Find the differential of a function using differentiation formulas. Objectives

4 Tangent Line Approximations

5 Consider a function f that is differentiable at c. The equation for the tangent line at the point (c, f(c)) is given by y – f(c) = f'(c)(x – c) and is called the tangent line approximation (or linear approximation) of f at c. Because c is a constant, y is a linear function of x. Tangent Line Approximations

6 Example 1 – Using a Tangent Line Approximation Find the tangent line approximation of f(x) = 1 + sin x at the point (0, 1).Then use a table to compare the y-values of the linear function with those of f(x) on an open interval containing x = 0. Solution: The derivative of f is f'(x) = cos x. First derivative

7 So, the equation of the tangent line to the graph of f at the point (0, 1) is y – f(0) = f'(0)(x – 0) y – 1 = (1)(x – 0) y = 1 + x. Example 1 – Solution cont'd

8 The table compares the values of y given by this linear approximation with the values of f(x) near x = 0. Notice that the closer x is to 0, the better the approximation is. cont'd Example 1 – Solution

9 This conclusion is reinforced by the graph shown in Figure Figure 3.65 cont'd Example 1 – Solution

10 Differentials

11 When the tangent line to the graph of f at the point (c, f(c)) y = f(c) + f'(c)(x – c) is used as an approximation of the graph of f, the quantity x – c is called the change in x, and is denoted by Δx, as shown in Figure Differentials Figure 3.66

12 When Δx is small, the change in y (denoted by Δy) can be approximated as shown. Δy = f(c + Δx) – f(c) ≈ f'(c)Δx For such an approximation, the quantity Δx is traditionally denoted by dx, and is called the differential of x. The expression f'(x)dx is denoted by dy, and is called the differential of y. Differentials

13 Differentials

14 Example 2 – Comparing Δy and dy Let y = x 2. Find dy when x = 1 and dx = Compare this value with Δy for x = 1 and Δx = Solution: Because y = f(x) = x 2, you have f'(x) = 2x, and the differential dy is given by dy = f'(x)dx = f'(1)(0.01) = 2(0.01)= Now, using Δx = 0.01, the change in y is Δy = f(x + Δx) – f(x) = f(1.01) – f(1) = (1.01) 2 – 1 2 =

15 Example 2 – Solution Figure 3.67 shows the geometric comparison of dy and Δy. Figure 3.67 cont'd

16 Error Propagation

17 If you let x represent the measured value of a variable and let x + Δx represent the exact value, then Δx is the error in measurement. Finally, if the measured value x is used to compute another value f(x), the difference between f(x +Δx) and f(x) is the propagated error. Error Propagation

18 Example 3 – Estimation of Error The measured radius of a ball bearing is 0.7 inch, as shown in Figure If the measurement is correct to within 0.01 inch, estimate the propagated error in the volume V of the ball bearing. Figure 3.68

19 The formula for the volume of a sphere is, where r is the radius of the sphere. So, you can write and To approximate the propagated error in the volume, differentiate V to obtain and write Example 3 – Solution

20 Example 3 – Solution So, the volume has a propagated error of about 0.06 cubic inch.

21 The ratio is called the relative error. The corresponding percent error is approximately 4.29%. Error Propagation

22 Calculating Differentials

23 Each of the differentiation rules can be written in differential form. Calculating Differentials

24 Example 4 – Finding Differentials The notation in Example 4 is called the Leibniz notation for derivatives and differentials, named after the German mathematician Gottfried Wilhelm Leibniz.

25 Differentials can be used to approximate function values. To do this for the function given by y = f(x), use the formula which is derived from the approximation Δy = f(x + Δx) – f(x) ≈ dy. The key to using this formula is to choose a value for x that makes the calculations easier. Calculating Differentials

26 Example 7 – Approximating Function Values Use differentials to approximate Solution: Using you can write Now, choosing x = 16 and dx = 0.5, you obtain the following approximation.

27 Example 7 – Solution The tangent line approximation to at x = 16 is the line For x-values near 16, the graphs of f and g are close together, as shown in Figure Figure 3.69 cont'd