DERIVATIVES 3. We have seen that a curve lies very close to its tangent line near the point of tangency. DERIVATIVES.

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Presentation transcript:

DERIVATIVES 3

We have seen that a curve lies very close to its tangent line near the point of tangency. DERIVATIVES

In fact, by zooming in toward a point on the graph of a differentiable function, we noticed that the graph looks more and more like its tangent line. DERIVATIVES

3.9 Linear Approximations and Differentials In this section, we will learn about: Linear approximations and differentials and their applications. DERIVATIVES

The idea is that it might be easy to calculate a value f(a) of a function, but difficult (or even impossible) to compute nearby values of f.  So, we settle for the easily computed values of the linear function L whose graph is the tangent line of f at (a, f(a)). LINEAR APPROXIMATIONS

In other words, we use the tangent line at (a, f(a)) as an approximation to the curve y = f(x) when x is near a.  An equation of this tangent line is y = f(a) + f’(a)(x - a) LINEAR APPROXIMATIONS

The approximation f(x) ≈ f(a) + f’(a)(x – a) is called the linear approximation or tangent line approximation of f at a. Equation 1 LINEAR APPROXIMATION

The linear function whose graph is this tangent line, that is, L(x) = f(a) + f’(a)(x – a) is called the linearization of f at a. Equation 2 LINEARIZATION

Find the linearization of the function at a = 1 and use it to approximate the numbers Are these approximations overestimates or underestimates? Example 1 LINEAR APPROXIMATIONS

The derivative of f(x) = (x + 3) 1/2 is: So, we have f(1) = 2 and f’(1) = ¼. Example 1 LINEAR APPROXIMATIONS

Putting these values into Equation 2, we see that the linearization is: Example 1 LINEAR APPROXIMATIONS

The corresponding linear approximation is: (when x is near 1) In particular, we have: and Example 1 LINEAR APPROXIMATIONS

The linear approximation is illustrated here. We see that:  The tangent line approximation is a good approximation to the given function when x is near 1.  Our approximations are overestimates, because the tangent line lies above the curve. Example 1 LINEAR APPROXIMATIONS

Of course, a calculator could give us approximations for The linear approximation, though, gives an approximation over an entire interval. Example 1 LINEAR APPROXIMATIONS

Look at the table and the figure.  The tangent line approximation gives good estimates if x is close to 1.  However, the accuracy decreases when x is farther away from 1. LINEAR APPROXIMATIONS

Linear approximations are often used in physics.  In analyzing the consequences of an equation, a physicist sometimes needs to simplify a function by replacing it with its linear approximation. APPLICATIONS TO PHYSICS

The derivation of the formula for the period of a pendulum uses the tangent line approximation for the sine function. APPLICATIONS TO PHYSICS

Another example occurs in the theory of optics, where light rays that arrive at shallow angles relative to the optical axis are called paraxial rays. APPLICATIONS TO PHYSICS

The results of calculations made with these approximations became the basic theoretical tool used to design lenses. APPLICATIONS TO PHYSICS

The ideas behind linear approximations are sometimes formulated in the terminology and notation of differentials. DIFFERENTIALS

If y = f(x), where f is a differentiable function, then the differential dx is an independent variable.  That is, dx can be given the value of any real number. DIFFERENTIALS

The differential dy is then defined in terms of dx by the equation dy = f’(x)dx  So, dy is a dependent variable—it depends on the values of x and dx.  If dx is given a specific value and x is taken to be some specific number in the domain of f, then the numerical value of dy is determined. Equation 3 DIFFERENTIALS

The geometric meaning of differentials is shown here.  Let P(x, f(x)) and Q(x + ∆x, f(x + ∆x)) be points on the graph of f.  Let dx = ∆x. DIFFERENTIALS

The corresponding change in y is: ∆y = f(x + ∆x) – f(x)  The slope of the tangent line PR is the derivative f’(x).  Thus, the directed distance from S to R is f’(x)dx = dy. DIFFERENTIALS

Therefore,  dy represents the amount that the tangent line rises or falls (the change in the linearization).  ∆y represents the amount that the curve y = f(x) rises or falls when x changes by an amount dx. DIFFERENTIALS

Compare the values of ∆y and dy if y = f(x) = x 3 + x 2 – 2x + 1 and x changes from: a. 2 to 2.05 b. 2 to 2.01 Example 3 DIFFERENTIALS

We have: f(2) = – 2(2) + 1 = 9 f(2.05) = (2.05) 3 + (2.05) 2 – 2(2.05) + 1 = ∆y = f(2.05) – f(2) = In general, dy = f’(x)dx = (3x 2 + 2x – 2) dx Example 3 a DIFFERENTIALS

When x = 2 and dx = ∆x = 0.05, this becomes: dy = [3(2) 2 + 2(2) – 2]0.05 = 0.7 Example 3 a DIFFERENTIALS

We have: f(2.01) = (2.01) 3 + (2.01) 2 – 2(2.01) + 1 = ∆y = f(2.01) – f(2) = When dx = ∆x = 0.01, dy = [3(2) 2 + 2(2) – 2]0.01 = 0.14 Example 3 b DIFFERENTIALS

Notice that:  The approximation ∆y ≈ dy becomes better as ∆x becomes smaller in the example.  dy was easier to compute than ∆y. DIFFERENTIALS

For more complicated functions, it may be impossible to compute ∆y exactly.  In such cases, the approximation by differentials is especially useful. DIFFERENTIALS

In the notation of differentials, the linear approximation can be written as: f(a + dx) ≈ f(a) + dy DIFFERENTIALS

For instance, for the function in Example 1, we have: DIFFERENTIALS

If a = 1 and dx = ∆x = 0.05, then and  This is just as we found in Example 1. DIFFERENTIALS

Our final example illustrates the use of differentials in estimating the errors that occur because of approximate measurements. DIFFERENTIALS

The radius of a sphere was measured and found to be 21 cm with a possible error in measurement of at most 0.05 cm. What is the maximum error in using this value of the radius to compute the volume of the sphere? Example 4 DIFFERENTIALS

If the radius of the sphere is r, then its volume is V = 4/3πr 3.  If the error in the measured value of r is denoted by dr = ∆r, then the corresponding error in the calculated value of V is ∆V. Example 4 DIFFERENTIALS

This can be approximated by the differential dV = 4πr 2 dr When r = 21 and dr = 0.05, this becomes: dV = 4π(21) ≈ 277  The maximum error in the calculated volume is about 277 cm 3. Example 4 DIFFERENTIALS

Although the possible error in the example may appear to be rather large, a better picture of the error is given by the relative error. DIFFERENTIALS Note

Relative error is computed by dividing the error by the total volume:  Thus, the relative error in the volume is about three times the relative error in the radius. RELATIVE ERROR Note

In the example, the relative error in the radius is approximately dr/r = 0.05/21 ≈ and it produces a relative error of about in the volume.  The errors could also be expressed as percentage errors of 0.24% in the radius and 0.7% in the volume. Note RELATIVE ERROR