EGR2013 Tutorial 8. Linear Algebra. Powers of a Matrix and Matrix Polynomial

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1 EGR1 Tutorial 8 Linear Algebra Outline Powers of a Matrix and Matrix Polynomial Vector Algebra Vector Spaces Powers of a Matrix and Matrix Polynomial If A is a square matrix, then we define the nonnegative integer power of A to be A = I n A = AA A If A is invertible, then we define the negative integer powers to be A = ( A ) = A A A n 1 n If A is a square matrix, we have a matrix polynomial in A as Example 1 n pa ( ) = ai + aa 1 + aa + + aa n If A is a n-th order square matrix and A =, evaluate Solution: A = ( I ) 1 A. I A = I 1 I A = ( I A)( I + A+ A + + A ) = I ( I A) = I + A+ A + + A 1 1 1

2 Definition of Vectors We often use two inds of quantities, namely scalars and vectors. A scalar is a quantity that is determined by its magnitude; A vector is a quantity that is determined by both its magnitude and its direction. Equality of Vectors: two vectors a and b are equal, if they have the same length and the same direction. Representations: in Cartesian coordinate system, the vector can be described using real numbers. If the given vector a has an initial point P1( x1, y1, z 1) and a terminal point P( x, y, z ), then the vector a can be described as a= PP = [ x x, y y, z z ] And the norm a = a + a + a. Another representation of vectors is a= [ a1 a a] = a1i+ aj+ a, where i, j, are the standard unit vectors in the positive directions of the axes in a Cartesian coordinate system. Basic Properties of Vectors: Zero vector has length and no direction. Negative vector a has the length a and the direction is opposite to that of a. Unit vector is a vector of norm 1 Vector Addition and Scalar Multiplication a= [ a a a ] and b= [ b1 b b] are two vectors, then If a± b= [ a1± b1 a ± b a ± b] a = [ a1 a a] Basic Properties: a+b=b+a (a+b)+c=a+(b+c) a+=+a=a a+(-a)= (a+b)=a+b (+l)a=a+la (la)=(l)a a= 1a=a (-1)a=-a

3 Inner Product or Dot Product Definition: if a and b are two vectors and θ is the angle between a and b, then the dot product or Euclidean inner product i is defined by i = cosθ = Angle between two vectors: The angle θ between the vectors is cosθ = i. Orthogonality: The inner product of two vectors is zero if and only if these vectors are perpendicular. Properties of the Dot Product: Schwarz inequality: i Triangle inequality: i a+ b Orthogonal Projection: Orhtogonal projection of a vector a in the direction of a vector b is defined by p= proj b a = i b b Example If vector a is perpendicular to any vector, show a is a zero vector. a is perpendicular to any vector for any vector β, ai β = especially, if β = a, thus aa= i a = therefore, a is a zero vector. Zero vector is perpendicular to any vector.

4 Example Show vector c and vector (aic)b-(bi c)a are orthogonal vectors. [(aic)b-(bic)a] ic =[(aic)b] ic-[(bic)a] ic =(aic)(bic)-(bic)(aic) = Thus c and (aic)b-(bi c)a are orthogonal vectors. Vector Product or Cross Product Definitions: if a and b are two vectors, then the cross product or vector product v= a b= [ v v v ] is a vector The vector v can be obtained from the expansion by the first row of the symbolical third-order determinant i j a a a a a a 1 1 v= a1 a a = i- j+ b b b1 b b1 b b1 b b The length of the vector v is given as a b = a bsinθ The direction of the vector v is perpendicular to both a and b. Example 4 If two vectors a and b, a = 1, b = and = i 1, Evaluate a b Solution: =cosθ i. i cosθ = = 5 4 sinθ = 5 a b = a b sinθ = 16 4

5 Example 5 Given a b=c d,a c=b d, show a-d is parallel to b-c. If a-d is parallel to b-c, then (a-d) (b-c) should be. (a-d) (b-c)=a b+d c-d b-a c =a b-c d + b d-a c= therefore, vector a-d is parallel to vector b-c. Scalar Triple Product If a, b and c are three vectors, then the scalar triple product is defined by a a a a(b i c)=b b b c c c The solute of the scalar triple product is the volume of the parallelepiped with a, b and c as edge vectors. Example 6 Given three vectors a=i+4j-4, b=-5i+5j+ and c=-6i+j+5, show these three vector are in the plane. Because the solute of the scalar triple product is the volume of the parallelepiped, if the volume is zero, we can say the edge vectors are in the same plane. Thus, a1 a a a(b i c)=b1 b b = = 5-19= c c c Therefore, vectors a, b and c are in the same plane. If i =, then vector a is perpendicular to vector b; If a b=, then vector a is parallel to vector b; If a(b i c)=, then vectors a, b and c are in the same plane. 5

6 Vector Spaces In a nonempty set V, we define two algebraic operations: (1) vector addition: α, β V α + β V () scalar multiplication: α, V R α V For vector addition: a+b=b+a (a+b)+c=a+(b+c) there is an object in V, such that +a=a for all a in V for each a in V, there is an object a in V, such that a+(-a)= For scalar multiplication: (a+b)=a+b (+l)a=a+la (la)=(l)a for every a in V, 1a=a If V follows all the axioms ove, then V is called a vector space. Example 6 Let V = R and we define the addition and scalar multiplication in V for two vectors a= [ a1 a] and b= [ b1 b] and a scalar as follows: a+ b= [ a a ] + [ b b ] = [ a + b ] a = [ a a ] = [ a ] 1 1 First, α, β V α + β V and α V, R α V are satisfied. [ a a ] + [??] = [ a a ] But there is no zero vector in V, such that 1 1 So set V is not a vector space with stated operations. 6

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