t dt ds Then, in the last class, we showed that F(s) = <2s/3, 1 2s/3, s/3> is arclength parametrization. Therefore,

Similar documents
3. The three points (2, 4, 1), (1, 2, 2) and (5, 2, 2) determine a plane. Which of the following points is in that plane?

What you will learn today

d f(g(t), h(t)) = x dt + f ( y dt = 0. Notice that we can rewrite the relationship on the left hand side of the equality using the dot product: ( f

Practice problems. 1. Given a = 3i 2j and b = 2i + j. Write c = i + j in terms of a and b.

Mathematically, the path or the trajectory of a particle moving in space in described by a function of time.

Updated: August 24, 2016 Calculus III Section Math 232. Calculus III. Brian Veitch Fall 2015 Northern Illinois University

Without fully opening the exam, check that you have pages 1 through 11.

Solution 2. ((3)(1) (2)(1), (4 3), (4)(2) (3)(3)) = (1, 1, 1) D u (f) = (6x + 2yz, 2y + 2xz, 2xy) (0,1,1) = = 4 14

Announcements. Topics: To Do:

f xx (x, y) = 6 + 6x f xy (x, y) = 0 f yy (x, y) = y In general, the quantity that we re interested in is

12.7 Tangent Planes and Normal Lines

INTRODUCTION TO LINE INTEGRALS

Practice problems from old exams for math 233

Directional Derivatives. Directional Derivatives. Directional Derivatives. Directional Derivatives. Directional Derivatives. Directional Derivatives

Tangent & normal vectors The arc-length parameterization of a 2D curve The curvature of a 2D curve

Tutorial 4. Differential Geometry I - Curves

13.2 LIMITS AND CONTINUITY

MATH 2023 Multivariable Calculus

302 CHAPTER 3. FUNCTIONS OF SEVERAL VARIABLES. 4. Function of several variables, their domain. 6. Limit of a function of several variables

Inverse and Implicit functions

MATH11007 NOTES 12: PARAMETRIC CURVES, ARCLENGTH ETC.

Goals: Course Unit: Describing Moving Objects Different Ways of Representing Functions Vector-valued Functions, or Parametric Curves

Kevin James. MTHSC 206 Section 15.6 Directional Derivatives and the Gra

MA 243 Calculus III Fall Assignment 1. Reading assignments are found in James Stewart s Calculus (Early Transcendentals)

Lagrange multipliers October 2013

9/30/2014 FIRST HOURLY PRACTICE VIII Math 21a, Fall Name:

Name: Class: Date: 1. Use Lagrange multipliers to find the maximum and minimum values of the function subject to the given constraint.

6. Find the equation of the plane that passes through the point (-1,2,1) and contains the line x = y = z.

Differential Geometry MAT WEEKLY PROGRAM 1-2

14.6 Directional Derivatives and the Gradient Vector

MATH11007 NOTES 15: PARAMETRIC CURVES, ARCLENGTH ETC.

Lagrange multipliers 14.8

Volumes of Solids of Revolution Lecture #6 a

Quiz 6 Practice Problems

Multivariate Calculus Review Problems for Examination Two

Lecture 15. Lecturer: Prof. Sergei Fedotov Calculus and Vectors. Length of a Curve and Parametric Equations

Practice problems from old exams for math 233 William H. Meeks III December 21, 2009

Math 348 Differential Geometry of Curves and Surfaces

Surfaces and Partial Derivatives

3. The domain of a function of 2 or 3 variables is a set of pts in the plane or space respectively.

Chapter 15: Functions of Several Variables

1 Vector Functions and Space Curves

Polar (BC Only) They are necessary to find the derivative of a polar curve in x- and y-coordinates. The derivative

Calculators ARE NOT Permitted On This Portion Of The Exam 28 Questions - 55 Minutes

Chapter 11. Parametric Equations And Polar Coordinates

Functions of Several Variables

14.5 Directional Derivatives and the Gradient Vector

Math 113 Calculus III Final Exam Practice Problems Spring 2003

True/False. MATH 1C: SAMPLE EXAM 1 c Jeffrey A. Anderson ANSWER KEY

= f (a, b) + (hf x + kf y ) (a,b) +

MATH 1020 WORKSHEET 10.1 Parametric Equations

MAT175 Overview and Sample Problems

Background for Surface Integration

Due: Fri Sep :00 PM MDT Question

Multivariate Calculus: Review Problems for Examination Two

Lesson 4: Gradient Vectors, Level Curves, Maximums/Minimums/Saddle Points

Surfaces and Integral Curves

1 MATH 253 LECTURE NOTES for FRIDAY SEPT. 23,1988: edited March 26, 2013.

4 Visualization and. Approximation

Math 126C: Week 3 Review

Surfaces and Partial Derivatives

Math 5BI: Problem Set 2 The Chain Rule

ds dt ds 1 dt 1 dt v v v dt ds and the normal vector is given by N

13.1. Functions of Several Variables. Introduction to Functions of Several Variables. Functions of Several Variables. Objectives. Example 1 Solution

9/30/2014 FIRST HOURLY PRACTICE VII Math 21a, Fall Name:

Chapter 15 Vector Calculus

Lecture 34: Curves defined by Parametric equations

Differentiability and Tangent Planes October 2013

10/4/2011 FIRST HOURLY PRACTICE VI Math 21a, Fall Name:

Quiz problem bank. Quiz 1 problems. 1. Find all solutions (x, y) to the following:

Lecture 6: Chain rule, Mean Value Theorem, Tangent Plane

REVIEW I MATH 254 Calculus IV. Exam I (Friday, April 29) will cover sections

Direction Fields; Euler s Method

Chapter 5 Partial Differentiation

A1:Orthogonal Coordinate Systems

Worksheet 2.2: Partial Derivatives

PURE MATHEMATICS 212 Multivariable Calculus CONTENTS. Page. 1. Assignment Summary... i 2. Summary Assignments...2

MA 114 Worksheet #17: Average value of a function

Without fully opening the exam, check that you have pages 1 through 11.

MATH 31A HOMEWORK 9 (DUE 12/6) PARTS (A) AND (B) SECTION 5.4. f(x) = x + 1 x 2 + 9, F (7) = 0

Review 1. Richard Koch. April 23, 2005

Dr. Allen Back. Aug. 27, 2014

Measuring Lengths The First Fundamental Form

Let and be a differentiable function. Let Then be the level surface given by

WW Prob Lib1 Math course-section, semester year

MATH 261 EXAM I PRACTICE PROBLEMS

Math 136 Exam 1 Practice Problems

f(x) = C. (1) f(x,y) = C implies that x 2 + y 2 = C 0. (2)

Grad operator, triple and line integrals. Notice: this material must not be used as a substitute for attending the lectures

Linear Transformations

CALCULUS III SM221/P Final Exam Page 1 of Monday 15 December 2008 Alpha Code Section

Math 2260 Exam #1 Practice Problem Solutions

Lab 2B Parametrizing Surfaces Math 2374 University of Minnesota Questions to:

5/27/12. Objectives 7.1. Area of a Region Between Two Curves. Find the area of a region between two curves using integration.

Functions of Two variables.

MAT203 OVERVIEW OF CONTENTS AND SAMPLE PROBLEMS

2. Find the muzzle speed of a gun whose maximum range is 24.5 km.

MATH 2400, Analytic Geometry and Calculus 3

CS130 : Computer Graphics Curves. Tamar Shinar Computer Science & Engineering UC Riverside

Continuity and Tangent Lines for functions of two variables

Transcription:

13.4. Curvature Curvature Let F(t) be a vector values function. We say it is regular if F (t)=0 Let F(t) be a vector valued function which is arclength parametrized, which means F t 1 for all t. Then, we can check the change of this unit vector. We call it curvature. Let T(t) = F (t). Then Example 1) F(t) = <2t, 1-2t, t> t dt ds Then, in the last class, we showed that F(s) = <2s/3, 1 2s/3, s/3> is arclength parametrization. Therefore, T t F t dt = <2/3, -2/3, 1/3> and hence = <0,0,0>, k(s) = 0. F t ds Remind that we never uses the arclength parametrization directly. What we need is the definition of the arclength function s, Now, apply the chain rule on (1) Therefore, More precisely, from T(t) = F (t)/ F (t), Example 2) Let F(t) = <-r cos t, r sin t>. Then F (t) = <r sin t, r cos t> and tangent vector T(t) = <sin t, cos t>. Therefore,

k(t) = <cos t, -sin t > / <r sin t, r cos t > = 1/r. Remark, we may consider then a point on the curve with curvature k looks like a circle with radius 1/k. If the curvature at purple point is k, then the curve at that points look like a red circle with radius 1/k. Theorem. (Curvature formula) If F(t) is regular (F (t) is always nonzero vector), then 1) T and T are orthogonal. Consider derivative of dot product of T itself. Then, T.T = T = 1. Thus, (T.T) = 0. On the other hand, by product rule on dot product, (T.T) = T.T + T.T = 2T.T. Therefore, T.T = 0 and hence T and T are orthogonal.

2) By 1), T and T are orthogonal and hence they will make a right rectangle. Thus T T T T T t F t From F (t) = F (t) T(t), F (t) = F (t) T(t) + F (t) T (t) 3) F t F t F t T t F t T t F t T t F t 2 T t T t 4) Finally, t T T F t F t F t F t 3. Example. (curvature of a graph) If F(t) = <t, f(t), 0>, then Proof) F (t) = <1, f (t), 0>, f (t) = <0, f (t), 0> and hence F (t) x F (t) = <0, 0, f (t)> Example) F t < t,t 2, t 3 >. Let s find the curvature. F t <1, 2t, 3t 2 >, F t <0, 2, 6t>. Thus, F F <6t 2, 6t, 2> and F t 1 4t 2 9t 4. Therefore, t 36t 4 36 t 2 4 1 16t 4 81 t 8 3

Black trace of F(t). Orange Tangent vector. Yellow Normal vector Red x,y,z axis. Blue xy projection(y = x^2), Purple xy- projection (z = x^3) Normal vector We checked the curvature on previous subsection. Now, we define the normal vector, which is the direction of acceleration, or the direction of the center of circle which fits at given point.

Definition. Let F(t) be a parametrization of a curve. Then, we define a normal vector at F(t) to be N t T t \ T t Example. (Helix) Let F t < sint, cos t, t>. Then F t < cos t, sint, 1>, F t 2, T t 1\ 2 < cos t, sint, 1> So, T t 1 \ 2 < sint, cos t, 0>, N t < sint, cos t, 0>

13.5 Motion in three-space Let s recall that we will consider that a vector-valued function F t represents the position of a particle at time t. Then, as we did, V t F t, sp t F t, A t F t (Check that any lower case function means a scalar-valued function and Upper case function means a vector valued function.) Example. Let F t t i t 3 j lnt k Find the acceleration. Solution. It requires to find the second derivative of given function Thus, F t <1, 3t 2, 1 t >, F t <0, 6t, 1 t 2 > A t Example. The term unit circular motion : F t R< cos t, sin t> motion on a circle with radius R and angular speed w. Let s calculate the acceleration. V t F t R < sin t, cos t>, A t F t R 2 < cos t, sin t> F t R, V t R, A t R 2 A t V t 2 F t Example. From fundamental Theorem of Calculus, we can find the velocity and position function from acceleration function. Let A t <2,12t,0>, V 0 <7,0,0>, F 0 <2,0,9>. Then, 0 t A u du V t V 0, 0 t V u du F t F 0 Thus, we can find V t <2t 7, 6t 2, 0>, F t <t 2 7t 2, 2t 3, 9> Exanmple. Let s start from how to determine the functions. A bullet fired to the sky with the angle 60 degree and initial speed v 0. Then, what the vector-valued function representing the bullet s motion?

We know the initial speed and direction, which represent the initial velocity. Also, we know the starting point and hence initial position. Also, there is only force acting on the bullet, which is gravity. So, we have information A t <0, g>, V 0 <v 0 cos 3, v 0 sin 3 >, F 0 <0,0> By integrating twice, we get V t <2t 7, 6t 2, 0>, F t <t 2 7t 2, 2t 3, 9> Understanding acceleration vector We have some relation between tangent vector, normal vector and acceleration vector. Let s do some differentiation. And V t F t F t T t A t F t T t F t T t N t T T t t, t T t F t Combining these two lines to get A t F t T t t F t 2 N t Recall that the tangent vector and the normal vector are orthogonal. Thus, the acceleration vector is in the plane whose orthogonal system consists of the tangent and the normal vectors. So, we decompose the acceleration vector into two pieces, A t a T T t a N N t and call the coefficient of the tangent vector as tangential components and the coefficient of the normal vector as normal component of acceleration vector. Using previous works, we can find those component using the dot product a T A t T t A t V t V t, a N A t N t A t V t V t More precisely for the second equality, A V V A T V A T T A N N T V A N N T A V V a N

From the fact that T,N are a unit vector, we can find A t 2 a T 2 a N 2 Example. Let F t <t 2, 2t, lnt>. Then, F t <2t, 2, 1 t >, F t <2,0, 1 t 2 > By previous result, we can decompose F t <2,0, 1 t 2 > 4t 1 t 3 4t 2 4 1 t 2 T t 4 t 36 4 t 16 2 4t 2 4 1 t 2 N t

*Osculating circle. Let C be a curve described by a vector valued function F(t) and P = F(a) be a point on it. We consider that it looks like a circle with radius 1/k near point. Then, which circle is most similar? We call such circle osculating circle. Then it is a circle whose radius is 1/k and the center lies on the line defined by the point P and the direction vector N. Thus, the center of osculating circle is F(a) + 1/k N(a).

14.1 Functions of Two variables Usually a function is decided by lot of factor. Now, we will consider a function (Not vector valued) and do differentiations with respect to different variables Example. Let f x,y x y 1.Then, it is a function of two variable, is defined for all x,y values. For this function, we can consider the graph, which is a set of points (x,y,z) satisfying z f x,y x y 1. In other words, the graph is the set of points x,y,z z x y 1 x,y,x y 1 Definition. Let F(x,y) be a function of two variables. Then, the graph of z=f(x,y) is a set of points (x,y,f(x,y)) in 3D space. We say the Horizontal trace at height c is the intersection with the graph and horizontal plane z=c. HT(F,c) = {(x,y,c) f(x,y) = c} We also define the vertical trace in the plane x=a (plane y=b, respectively) is the intersection with the graph and vertical plane x=a (plane y=b, respectively). VT(F,x=a) = {(a,y,z) f(a,y) = z} VT(F,y=b) = {(x,b,z) f(x,b) = z} Example : Let f x,y x 2 y 2. Then, the graph is a set of points (x,y,x^2 y^2). The horizontal trace at 1 is the set of points (x,y,1) satisfying x^2 y^2 = 1. Thus, it is a hyperbola in the plane z=1. The vertical trace in x=1 is the set of points (1,y,x) satisfying 1-v^2 = z, which is a parabola in the plan x=1. Example. Let f(x,y) = x+y +4. Then, the graph of this function is a line. Consider any trace. Then, it will fix any of x,y or z values, which generates a line. More ideally, the trace is a intersection with the graph and plan. Thus, trace of a plane is the intersection of two plan, which is a line, whole plane or empty set. Now, give another name on vertical trace. We call the level curve of f(x,y) is the projection of the horizontal trace to xy-plane. The contour map is the set of level curve with contour interval m. For example, the contour map of f(x,y) with contour inverval 2 is the union of level curves f(x,y)=0,2,4,6, which looks like real map of US.

14.2 Limit and continuity in several variables Limit of function : lim f X Q means that we expect that f(x) goes closer to Q if X approaches to X P P with any pass possible. It s like a putting. If you aim the hole correctly, then the ball should dive into the hole. Mathematically, we define the limit as follows: define an open disk and a punctured disk. Then, we say D P,r Q P Q <r, D P,r D P,r \ P lim X P f X Q if for any > 0, there is a >0 such that f R Q < for all R D P, Example : Let f x,y x 2 y 2. Then, lim x,y 0,0 f x,y 0 : for > 0, let. Then, R O < x 2 y 2 < x 2 y 2 < 2 And hence f R O < x 2 y 2 2 0 x 2 y 2 < 2 y 2 Example : Let g x,y x 2 y. Then, 2 lim x,y 0,0 approaches to ½. If we follow other curve (2t,t), then g goes to 1/3. g x,y does not exist. If we follow (t,t) curve, then g Prop. Limit Laws 1. lim f x,y g x,y lim f x,y lim g x,y x,y P x,y P x,y P 2. lim f x,y g x,y lim f x,y lim g x,y x,y P x,y P x,y P 3. lim k f x,y k lim f x,y x,y P x,y P

f x,y 4. lim x,y P g x,y lim x,y lim x,y P f x,y P g x,y Continuity : we say that a function is continuous at P if the expected value at P by limit is exactly the function value. lim f X f P X P Example. f x,y x 2 y 2 is continuous at (0,0) since f(0,0) = 0 and the limit is also 0 be previous example.

14.3 Partial derivatives We might define the derivative of given two-variable-function as follows; f x,y lim h 1 h 2 0,0 f x h 1, y h 2 h 1 2 h 2 2 f x,y However, the problem is that it is quite hard to find the above limit. Thus, we cannot define the derivative of given function. Example. Define f(x,y) = x+ 2y. Then, if we choose a path to origin (t,0), the above limit goes to 1. But, if we choose another path to origin (0,t), then the above limit goes to 2 so that the limit does not exist. We can observe that the above limit varies up to the path approaching to the origin. More precisely, it highly depends on the tangent direction of given path at the origin. Then, how to define differentiable function? The basic idea is that chose two canonical directions in 2D planes; vertical and horizontal directions, find these two directional derivatives and check whether these two derivatives can accommodates all possible directional derivatives. Definition. (Partial derivatives) Let f(x,y) be a function of two variables. We define the partial derivative of f with respect to x (x, respectively) to be f x f x lim h 0 f x h,y h f x,y, f y f y lim h 0 f x,y h h f x,y Remark. The partial derivative of f with respect to x is gained when we consider the other variable y as constant and differentiate f with x variable. Example. Let f(x,y) = x + 2y. Then f x 1, f y 2 If g x,y 3x 2 y 3, g x 3y 3 2x, g y 3x 2 3y 2 Tangent plane of the graph of f(x,y) Think about graph of f(x,y). Let P = (a,b,f(a,b)) be a point in the graph. Now, consider two curves containing P, (a+t, b, f(a+t,b)) and (a,b+s, f(a,b+s)).

Now, try to find the tangent line of these two curves at P. Then, we expect to have a plane containing these two tangent lines. Later, we will define that f(x,y) is differentiable at P if any curve in the graph and containing P has the tangent line in the tangent plane decided by two special tangent lines.

Relation with contour map. We can estimate the partial derivative values from contour map since it might work as a table of map. The vertical red line means that we will fix the x values to find partial derivative w.r.t y variable. And horizontal red line means specific function values at some y values. So, it looks like that we have a table of one variable function, f(a,y). Higher order partial derivative. We might define the higher order partial derivatives; f xx f x x, f xy f x f y y x, f f f yx y x x y, f f yy y y Theorem. If f xy, f yx are continuous on an open disk, then they are same.

14.4. Differentiability, Linear Approximation and Tangent Plane Previously, we check the brief idea of building the tangent plane of a graph of function at a point. Definition (Linearization of the function) Let f(x,y) be a function of two variables. We define a linear function L x,y f a,b f x a,b x a f y a,b y b And call it the linearization of f(x,y) near (a,b). It means, we will consider the tangent plane is the graph of function. Definition.( Local linearity) We say f(x,y) is locally linear if f x,y L x,y x,y x a 2 y b 2, e x,y 0 as x,y a,b

Definition (Differentiability) We say that f(x,y) is differentiable if 1) f x, f y exist (don t need to be continuous) 2) f is locally linear Theorem. f(x,y) is differentiable at P if f x, f y are continuous near P.